<?xml version="1.0" encoding="ISO-8859-1"?><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance">
<front>
<journal-meta>
<journal-id>0366-5232</journal-id>
<journal-title><![CDATA[Caldasia]]></journal-title>
<abbrev-journal-title><![CDATA[Caldasia]]></abbrev-journal-title>
<issn>0366-5232</issn>
<publisher>
<publisher-name><![CDATA[Instituto de Ciencias Naturales, Facultad de Ciencias-Universidad Nacional de Colombia]]></publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id>S0366-52322010000200009</article-id>
<title-group>
<article-title xml:lang="en"><![CDATA[MODELLING THE POTENTIAL DISTRIBUTION OF TREE SPECIES ON A NATIONAL SCALE IN COLOMBIA: APPLICATION TO PALICOUREA ANGUSTIFOLIA KUNTH AND PALICOUREA GUIANENSIS AUBL.]]></article-title>
<article-title xml:lang="es"><![CDATA[Modelación de la distribución potencial de especies arbóreas a escala nacional en Colombia: una aplicación para Palicourea angustifolia Kunth y Palicourea guianensis Aubl]]></article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname><![CDATA[ARMENTERAS]]></surname>
<given-names><![CDATA[DOLORS]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[MULLIGAN]]></surname>
<given-names><![CDATA[MARK]]></given-names>
</name>
<xref ref-type="aff" rid="A02"/>
</contrib>
</contrib-group>
<aff id="A01">
<institution><![CDATA[,Universidad Nacional de Colombia Departamento de Biología ]]></institution>
<addr-line><![CDATA[Bogotá D. C.]]></addr-line>
<country>Colombia</country>
</aff>
<aff id="A02">
<institution><![CDATA[,King's College London Department of Geography Environmental Monitoring and Modelling Research Group]]></institution>
<addr-line><![CDATA[London Strand]]></addr-line>
<country>UK</country>
</aff>
<pub-date pub-type="pub">
<day>30</day>
<month>12</month>
<year>2010</year>
</pub-date>
<pub-date pub-type="epub">
<day>30</day>
<month>12</month>
<year>2010</year>
</pub-date>
<volume>32</volume>
<numero>2</numero>
<fpage>355</fpage>
<lpage>380</lpage>
<copyright-statement/>
<copyright-year/>
<self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_arttext&amp;pid=S0366-52322010000200009&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_abstract&amp;pid=S0366-52322010000200009&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_pdf&amp;pid=S0366-52322010000200009&amp;lng=en&amp;nrm=iso"></self-uri><abstract abstract-type="short" xml:lang="en"><p><![CDATA[The results in this study illustrate the methods of using the existing species' present records and environmental data to produce a niche-based model based on Mahalanobis distances, and also to predict the distribution of a number of tree species in order to apply it on a national scale to a tropical country such as Colombia. The technique applied is based on the Mahalanobis distance, a generalised squared distance statistic. We used environmental data integrated into a GIS, and a georeferenced collection of localities of Palicourea angustifolia and Palicourea guianensis to produce and test the predictive models. We used record data for Warszewiczia coccinea to validate the model. The two Palicourea species show largely complementary potential ranges. P. angustifolia shows a clear Andean distribution with a presence in lower and upper mountain areas but not in the highlands or in the inter-Andean valleys. P. guianensis was predicted throughout most of the lowland areas of Colombia including lowland Amazonian forests, and most of the tropical savannas of Orinoquia. The model predicted an overlapping distribution of the two species of 93.9 km2. The Mahalanobian approach contributes to the development of biogeographically oriented modelling that makes the best use of the available data in data-scarce regions (such as most of the tropics). The technique provides key information about the environmental niche of the species being modelled, and allows comparisons between the species. The prediction achieved for the two species was considered satisfactory.]]></p></abstract>
<abstract abstract-type="short" xml:lang="es"><p><![CDATA[Este estudio presenta una metodología para usar datos existentes actuales ambientales y de presencia de especies para producir un modelo de nicho ecológico basado en las distancias de Mahalanobis -un estadístico de distancia generalizada ajustada- y también para predecir la distribución de especies arbóreas a escala nacional en un país neotropical como es Colombia. Se utilizan datos ambientales integrados en un Sistema de Información Geográfica, y una serie localidades georeferenciadas de registros biológicos de Palicourea angustifolia y de Palicourea guianensis para producir y probar los modelos predictivos desarrollados. Las dos especies de Palicourea demuestran una distribución complementaria. P. angustifolia tiene una distribución claramente andina con presencia en áreas de montaña bajas y medias, pero no en la alta montaña ni en los valles inter-Andinos. Los resultados de la predicción de distribución para P. guianensis indican presencia en tierras bajas, incluyendo bosques amazónicos, y algunas zonas de la Orinoquia. La predicción del modelo indicó que existe un sobrelapamiento en la distribución de las dos especies con una superficie de 93.9 km2. El uso de la prueba de Mahalanobian contribuye al desarrollo d ela ciencia de la biogeografía ya que permite modelar patrones de distribución en regiones con poca o escasa información. La técnica presentada aquí proporciona información importante sobre el nicho ambiental de la especie que es modelada, y permite comparaciones de patrones de distribución entre especies. Para concluir, los modelos de ambas especies aquí estudiadas pueden considerarse como satisfactorios.]]></p></abstract>
<kwd-group>
<kwd lng="en"><![CDATA[Colombia]]></kwd>
<kwd lng="en"><![CDATA[GIS]]></kwd>
<kwd lng="en"><![CDATA[Mahalanobis distance]]></kwd>
<kwd lng="en"><![CDATA[ecological niche]]></kwd>
<kwd lng="en"><![CDATA[Palicourea]]></kwd>
<kwd lng="en"><![CDATA[predictive distributions model]]></kwd>
<kwd lng="es"><![CDATA[Colombia]]></kwd>
<kwd lng="es"><![CDATA[SIG]]></kwd>
<kwd lng="es"><![CDATA[distancia Mahalanobis]]></kwd>
<kwd lng="es"><![CDATA[nicho ecologico]]></kwd>
<kwd lng="es"><![CDATA[Palicourea sp.]]></kwd>
<kwd lng="es"><![CDATA[modelo predictivo de distribución]]></kwd>
</kwd-group>
</article-meta>
</front><body><![CDATA[  <font size="2" face="verdana">      <p><font size="4">        <center>     <b>MODELLING THE POTENTIAL DISTRIBUTION OF TREE SPECIES ON A NATIONAL SCALE      IN COLOMBIA: APPLICATION TO <i>PALICOUREA ANGUSTIFOLIA</i> KUNTH AND <i>PALICOUREA      GUIANENSIS</i> AUBL.</b>    </center>   </font></p> <font size="3">      <center>       <p><b>Modelaci&oacute;n de la distribuci&oacute;n potencial de especies arb&oacute;reas      a escala nacional en Colombia: una aplicaci&oacute;n para <i>Palicourea angustifolia</i>      Kunth y <i>Palicourea guianensis</i> Aubl</b></p> </center> </font>      <p><b>DOLORS ARMENTERAS</b>    <br>   <b>MARK MULLIGAN</b>    <br>   Departamento de Biolog&iacute;a, Universidad Nacional de Colombia, Apartado    7495, Bogot&aacute; D. C., Colombia. <a href="mailto:darmenterasp@unal.edu.co">darmenterasp@unal.edu.co</a>      <p>Environmental Monitoring and Modelling Research Group, Department of Geography,    King's College London, Strand, London WC2R 2LS (UK). <a href="mailto:mark.mulligan@kcl.ac.uk">mark.mulligan@kcl.ac.uk    </a>      <p><b>ABSTRACT</b>      ]]></body>
<body><![CDATA[<p>The results in this study illustrate the methods of using the existing species'    present records and environmental data to produce a niche-based model based    on Mahalanobis distances, and also to predict the distribution of a number of    tree species in order to apply it on a national scale to a tropical country    such as Colombia. The technique applied is based on the Mahalanobis distance,    a generalised squared distance statistic. We used environmental data integrated    into a GIS, and a georeferenced collection of localities of <i>Palicourea angustifolia</i>    and <i>Palicourea guianensis</i> to produce and test the predictive models.    We used record data for <i>Warszewiczia coccinea</i> to validate the model.    The two <i>Palicourea</i> species show largely complementary potential ranges.    <i>P. angustifolia</i> shows a clear Andean distribution with a presence in    lower and upper mountain areas but not in the highlands or in the inter-Andean    valleys. P. guianensis was predicted throughout most of the lowland areas of    Colombia including lowland Amazonian forests, and most of the tropical savannas    of Orinoquia. The model predicted an overlapping distribution of the two species    of 93.9 km2. The Mahalanobian approach contributes to the development of biogeographically    oriented modelling that makes the best use of the available data in data-scarce    regions (such as most of the tropics). The technique provides key information    about the environmental niche of the species being modelled, and allows comparisons    between the species. The prediction achieved for the two species was considered    satisfactory. </p>     <p><b>Key words.</b> Colombia, GIS, Mahalanobis distance, ecological niche, <i>Palicourea</i>,    predictive distributions model.      <p><b>RESUMEN</b></p>     <p>Este estudio presenta una metodolog&iacute;a para usar datos existentes actuales    ambientales y de presencia de especies para producir un modelo de nicho ecol&oacute;gico    basado en las distancias de Mahalanobis -un estad&iacute;stico de distancia    generalizada ajustada- y tambi&eacute;n para predecir la distribuci&oacute;n    de especies arb&oacute;reas a escala nacional en un pa&iacute;s neotropical    como es Colombia. Se utilizan datos ambientales integrados en un Sistema de    Informaci&oacute;n Geogr&aacute;fica, y una serie localidades georeferenciadas    de registros biol&oacute;gicos de <i>Palicourea angustifolia</i> y de <i>Palicourea    guianensis</i> para producir y probar los modelos predictivos desarrollados.    Las dos especies de <i>Palicourea</i> demuestran una distribuci&oacute;n complementaria.    <i>P. angustifolia</i> tiene una distribuci&oacute;n claramente andina con presencia    en &aacute;reas de monta&ntilde;a bajas y medias, pero no en la alta monta&ntilde;a    ni en los valles inter-Andinos. Los resultados de la predicci&oacute;n de distribuci&oacute;n    para P. guianensis indican presencia en tierras bajas, incluyendo bosques amaz&oacute;nicos,    y algunas zonas de la Orinoquia. La predicci&oacute;n del modelo indic&oacute;    que existe un sobrelapamiento en la distribuci&oacute;n de las dos especies    con una superficie de 93.9 km2. El uso de la prueba de Mahalanobian contribuye    al desarrollo d ela ciencia de la biogeograf&iacute;a ya que permite modelar    patrones de distribuci&oacute;n en regiones con poca o escasa informaci&oacute;n.    La t&eacute;cnica presentada aqu&iacute; proporciona informaci&oacute;n importante    sobre el nicho ambiental de la especie que es modelada, y permite comparaciones    de patrones de distribuci&oacute;n entre especies. Para concluir, los modelos    de ambas especies aqu&iacute; estudiadas pueden considerarse como satisfactorios.        <br> </p>     <p><b>Palabras clave. </b>Colombia, SIG, distancia Mahalanobis, nicho ecologico,    <i>Palicourea</i> sp., modelo predictivo de distribuci&oacute;n.      <p> Recibido: 31/03/2009    <br>   Aceptado:28/07/2010    <br> </p>     <p><b>INTRODUCTION</b></p>     ]]></body>
<body><![CDATA[<p>Predictive distribution models are an important tool for understanding factors    that control species distributions, and have been broadly used in biogeography,    ecology, conservation planning, and natural resources management (Busby, 1986,    1988; Box et al. 1993; Anderson et al. 2003; Farber &amp; Kadmon, 2003). Such    models have been developed for temperate areas (Carpenter et al. 1993; Franklin,    1995; Austin &amp; Meyers, 1996; Bolliger et al. 2000; Felicisimo et al. 2002;    Scott et al. 2002); however, tropical regions, where the areas harbouring the    highest biodiversity remain, have rarely been the subject of such studies, specially    South America. It is in the tropics, and specially in the sparsely inventoried    neotropics, that these models can be of a major value, and have their greatest    potential (Stockwell &amp; Peters, 1999; Anderson et al. 2003, Hern&aacute;ndez    et al. 2006; Hijmans &amp; Graham, 2006). </p>     <p>Rapid assessments of biological diversity and its geographical distribution    are required to develop sound conservation policies, but particularly for a    basis from which to start monitoring biodiversity change toward the 2010 biodiversity    target of reduced rates of biodiversity loss agreed at COP 7 of the Convention    on Biological Diversity (CBD, 2000). However, monitoring requires a baseline    inventory, and a full inventory is practically impossible to achieve in biologically    rich countries with significant wilderness areas, such as Colombia. Information    is incomplete and tends to be biased toward accessible sites and specific taxa    (Bojorquez et al., 1993). The great expense of new inventories requires the    full utilisation of the limited physical and biological data that already exist    in order to design the optimal strategy for further inventory.</p>     <p>Primary biological inventory data exist in the tropics, in the best of cases,    as georeferenced coordinates from localities where scientists from museums,    universities, or herbaria have collected specimens for their study. Most of    this data are held in museums and herbaria around the world, and if repatriated    and organised as a georeferenced record, it can provide a considerable database    for better understanding of species distributions (see webs of INBIO in Costa    Rica and CONABIO in Mexico). This information is usually in the form of a record    of observation and rarely contains data indicating either absence or abundance    at collection sites, specially in poorly sampled tropical regions (Peterson    &amp; Cohoon, 1999; Anderson et al. 2003). Most of the current modelling approaches    require both presence and absence of data for their estimation. Moreover, many    of these have been applied using mostly climatic data (Busby, 1988; Carpenter    et al. 1993; Jones et al. 1997; Smith et al. 1997; Peterson &amp; Cohoon, 1999;    Robertson et al. 2001; Wilds et al. 2000;), despite the fact that spatially    detailed landscape data (elevation, slope gradient, slope aspect, soils, geology,    land cover) are now widely available at coarse spatial resolutions, and are    clearly important in determining species distributions (Vel&aacute;zquez et    al. 1996; P&eacute;rez.Vega et al. 2008). </p>     <p>Techniques which can be applied using only presence records are much less developed    (Robertson et al. 2001; Carpenter et al. 1993; Gower, 1971; Anderson et al.    2003). In this study we present the application of a technique for mapping potential    species distributions that utilises presence data for the prediction, and that    is based on the Mahalanobis distance or generalised squared distance statistic    (Clark et al. 1993; Knick &amp; Dyer, 1997; Knick &amp; Rotenberry, 1998). One    of the most important advantages of this technique is undoubtedly the ability    to cope with the presence of data only, thus making no a priori assumptions    about the distribution of the species, and also avoiding the use of potential    false negatives (Dunn &amp; Duncann, 2000). In addition, the approach developed    here allows the implementation of environmental variables' input from    multiple sources of continuous, categorical, or Boolean data (Bar-Hen &amp;    Daudin, 1995). Further, the possible different scales of measurement of input    variables do not have any effect since the Mahalanobis statistic is dimensionless,    being a function of standardised variables (Clark, et al. 1993; Knick &amp;    Rotenberry, 1998). Neither does it assume a normal distribution of the data,    a normality that for most of the species is not satisfied (Austin &amp; Smith,    1989). Nevertheless, its properties are best known when the assumption of multinormality    is correct (Knick &amp; Dyer, 1997). Last, the model developed here is firmly    grounded in the niche theory that suggests the existence of optimal environmental    conditions for species (Hutchinson, 1959; MacArthur, 1968; Whitaker, 1975).</p>     <p>Facilitating a strategic, cost-effective, and rapid inventory of Colombian    biodiversity requires tools that use existing data to help focus on those areas    in which the greatest diversity can be observed (and conserved) for the least    cost, and to identify regions in which high diversity and rapid environmental    change are in conflict. Given the rate of land use change and other forms of    development in the Colombian countryside, and the lack of human and economic    resources for wholescale inventory, some rapid science-based techniques for    prioritisation of inventory and management activities are essential. Modelling    species distributions has the potential to provide a much more spatially comprehensive    assessment at the national scale than traditional point, plot, and transect-based    studies, but will never be as reliable as field measurement, only more practical    over large areas, or when there are reduced funding and other resources constraints.    The main assumptions behind the modelling undertaken here are that:</p>     <p>--- the principles of the species' fundamental niche    theory (Hutchinson, 1957) are correct.     <br>   --- on the national scale, environmental factors such as climate    and topography control the distribution of species, and are more important than    more local ecological factors (such as competition). The heterogeneity and variability    of Colombian climates and landscapes features can be described adequately for    the purposes of species distribution modelling at a 1km grain and using globally    available datasets.    <br>   --- tree species distributions (under natural land cover)    are controlled by these climatic and landscape drivers over other ecological    interactions.</p>     <p><b>THE STUDY AREA</b></p>     <p>Colombia has a continental area of approximately 114 million hectares, representing    0.7% of the world's land surface. Colombia is geographically a variable    country. The western part is mostly mountainous (45% of the territory) with    the Andes which comprises of three cordilleras. However, most of the country    is lowland plains located below 500 m. Due to its altitudinal variability determined    by the presence of the three longitudinal mountain ranges, there is a diversity    of climates. A diversity of geological and soil units are also associated with    these cordilleras and their variable climates.</p>     ]]></body>
<body><![CDATA[<p>Although its flora and fauna are only partially inventoried, Colombia is thought    to contain 10% of the world's biodiversity (in terms of vertebrate &amp;    plant species) making it one of the most biologically diverse regions in the    world (IAvH, 1998; IAvH, 1998a). Colombia hosts a great variety of ecosystems    including forests, savannah, arid ecosystems, and wetlands, and 50% of the area    is still under natural cover.</p>     <p><b>METHODOLOGY</b></p>     <p>The objective of this research was to develop and apply in Colombia a methodology    that successfully uses existing species' presence records and environmental    data in a niche- based model to predict the distribution of the tree species.    The general methodological approach of this research is summarised in <a href="#figura1">Fig.    1</a>, as a combination of environmental and biological species data collection,    computer-based spatial modelling of environmental parameters, and a multivariate    modelling procedure developed to predict species distributions.</p>     <p>    <center>   <img src="img/revistas/cal/v32n2/v32n2a9fig1.gif"><a name="figura1"></a>  </center>     <p>        <center>     <b>Figure 1.</b> General methodological approach .    </center></p>     <p><b>Environmental data</b></p>     <p>Ten environmental variables from a countrywide GIS dataset at the resolution    of 1km2 (Armenteras, 2003) were analysed to construct the potential distribution    model for the species. These consisted of seven continuous variables: mean,    maximum, and minimum monthly temperatures (&ordm;C), mean annual precipitation    (mm), mean annual solar radiation (W m-2), annual potential evapotranspiration    (mm), slope gradient (%), and three categorical variables: soil type, geology    class, and slope aspect class. Climatic variables were modelled (Armenteras,    2003) by interpolating from point meteorological station datasets (Jones, 1991).    SOLARFLUX (Rich et al. 1995) was used for modelling solar radiation receipt,    and the Thornthwaite method provided the annual potential evapotranspiration    (Armenteras, 2003). Slope gradient and slope aspect class were derived from    the GTOPO30 DEM (USGS, 1996). Soil information was obtained from the Colombian    Agustin Codazzi National Geographic Institute (IGAC). The soil map was constructed    from regional and local studies all over Colombia and generalised at 1:1.500.000    into a national soil map by IGAC (1982). Geological information came from the    South American Land Cover characteristics database of the EROS Data Center DAAC    (USGS, 1996). All of the above factors have been shown to be indicators of potential    physiological processes in trees such as growth and establishment (<a href="#tabla1">Table    1</a>). Slope gradient is also an indicator of the variation of climatic properties    within a cell since it is a measure of the within-cell range of elevation.     <br>     ]]></body>
<body><![CDATA[<p><b>Species data</b></p>     <p>The available biological data on species distribution was compiled from national    and international collections and museums including the collection at the Humboldt    Institute Herbarium (CB); Missouri Botanical Garden (MO); Herbario Jard&iacute;n    Bot&aacute;nico &quot;Joaquin Antonio Uribe&quot; in Medell&iacute;n (JAUM);    Instituto de Investigaci&oacute;n Cient&iacute;fica del Valle del Cauca (INCIVA);    New York Botanical Garden (NYBG); Herbario Amazonico Colombiano (COAH); the    Herbario Nacional Colombiano (COL) at the Instituto de Ciencias Naturales (ICN)    and Herbario Alfonso Fernandez Perez (HAFP). Many records were georeferenced    by the original collector often using 1:500.000 topographic maps (IGAC, 1970-1085),    while others were georeferenced according to the collection site name using    cartography available for the site. All records were converted to the same coordinate    system for this study: Geographic, decimal degrees, WGS 1984 Datum and integrated    with the ARCVIEW GIS (ESRI Inc., 1998).</p>     <p>We focused on modelling the distribution of species of the family Rubiaceae    because they are well-studied, are ecologically and taxonomically diverse with    high species richness, and abundant in many ecosystems. Rubiaceae are amongst    the families with the highest number of species in Andean and humid tropical    forests in Latin America (Taylor, 1999; IAvH, 1999a). Rubiaceae are also well-understood    taxonomically (Taylor, 1999; IAvH, 1999a) and are ecologically important: most    of the species of Rubiaceae, specially of the genera <i>Psychotria</i> and <i>Palicourea</i>,    are important sources of food for animals (IAvH, 1999a). This family has been    relatively well-sampled geographically (Lozano, 1994; Anderson, 1995; IAvH,    1999a; Taylor, 1999, Rangel-Churrio, 1995, 2000: Rangel-Churrio et al. 1997).    Finally, new data becomes available with almost every new field expedition being    undertaken in Colombia. </p>     <p>To develop the predictive distribution model, we focused on two of the species    that had more than 50 presence records: <i>angustifolia</i> Kunth 1818 (Rubiaceae)    and <i>Palicourea guianensis</i> Aubl.1775. The first species belongs to the    subgenus Montanae, and is generally found at higher elevations between 1,000-3,500    m (Taylor, 1997a, b). The second species belongs to the subgenus Palicourea,    and is a widespread lowland species (Taylor, 1997a, b) generally found at lower    elevations of 0-1,200 (1,500) m. We also used collection information for    another lowland species of this family, <i>Warszewiczia coccinea</i>, to be    used for validation purposes of the results.    <br>       <br>   <b>Modelling approach</b></p>     <p>The approach used for the construction of potential distribution models is    based on the Mahalanobis statistic (De Maesschalck et al. 2000), and has the    following underlying assumption: given a set of environmental variables and    a set of known species' locations, a training set can be built to define    a multivariate space (m) that best describes the areas where a given species    (j) is found and which may thus represent the &quot;ideal conditions&quot;    for the species. The results can then be used to identify areas of the country    where the environmental conditions are most similar to those of the &quot;ideal&quot;    multivariate space for the species. </p>     <p>The Mahalanobis distance for mapping the potential habitat of species has been    used successfully by Clark et al. (1993) and Knick &amp; Dyer (1997). The Mahalanobis    statistic can be used when there is only presence data, whereas other multivariate    methods such as logistic regression or discriminant analysis require data on    areas where the species is known to be present and also absent (Dunn &amp; Duncan,    2000). In addition, Mahalanobis distances are the sum of the squares of uncorrelated    standardised variables; this means that assumptions of multivariate normality    do not have to be met (Clark et al. 1993). Indeed, the method corrects for correlation    between the different variables which are compensated for by an estimated covariance    matrix (C) used to create new uncorrelated variables (Hand, 1981; Duda, 1997).    The Mahalanobis statistic is also dimensionless since it is a function of standardised    variables (Hand, 1981; Duda, 1997). Mathematically, the Mahalanobis distance    from a vector x to a mean vector m is defined as: r2 = (x-m)' C-1 (x-m),    where C is the covariance matrix for a set of observed vectors and has been    explained in earlier studies (Duda, 1997; Farber &amp; Kadmon, 1993), and so    we will not discuss it in detail here. For a given species, the vector m represents    its &quot;optimum environmental conditions&quot;. An index of similarity for    a site can be obtained by calculating the distance from those sites which are    characteristic to the vector m using the Mahalanobis statistic. </p>     <p>To estimate the Mahalanobis distances, C and m have to be calculated by performing    a step-by-step matrix algebra amongst map layers containing environmental parameter    information. We used an Avenue routine in ARCVIEW that automates this step and    also assigns a Mahalanobis distance to every 1 x 1 km2 grid cell in the study    area. Areas with higher similarity have a smaller distance than those that differ    more from the environmental characteristics of the presence data locations.  </p>     <p>To model tree species distribution using this approach, the available presence    data for the species were split into training and testing datasets (<a href="#figura2">Figure    2</a>) using three different ratios of parameterisation to validation data chosen    based on different percentages of total dataset to understand the effect of    the parameterisation dataset size on the simulation quality better . <a href="#tabla2">Table    2</a> summarises the number of records used for running a predictive model,    and also the records set aside for validation purposes for each species. The    three ratios were used to construct ten random sets of presence records resulting    in a total of thirty different model sets (ten for each ratio) per species.    For validation purposes, absence for a species was inferred using the localities    with no known record for it but where two other species of the same family had    been collected: for example, absence data for <i>Palicourea angustifolia</i>    equals those localities with recorded presence of <i>Palicourea guianensis</i>    and <i>Warszewiczia coccinea</i> and no presence of <i>P. angustifolia</i>.    The number of absence records used was fifty-one for <i>P. angustifolia</i>.</p>     ]]></body>
<body><![CDATA[<p>    <center>   <img src="img/revistas/cal/v32n2/v32n2a9fig2.gif"><a name="figura2"></a>  </center>     <p>      <center>            <p><b>Figure 2.</b> An example of the distribution of training and testing points      to develop the model.</p> </center>     <p> <b>Table 2.</b> Numbers of presence records used for training and testing    for each species </center> </p>     <center>   <img src="img/revistas/cal/v32n2/v32n2a9tab2.gif"><a name="tabla2"></a>  </center>        <p> To reduce the dimensionality of the model, to minimise parameter redundancy    and select the most meaningful variables, we performed bivariate correlation    analyses for the species <i>P. angustifolia</i> (<a href="#tabla3">Table 3</a>    and <a href="#tabla4">table 4</a>) using significance levels of 0.05. For continuous    variables (mean, maximum, minimum temperatures, mean precipitation and potential    evapotranspiration), the correlations between these variables were analysed    at localities with presence of the species. For continuous variables, a test    of colinearity between each variable pair was performed. Only those variables    which were not significantly collinear were incorporated into the model. If    two variables were collinear, the controlling factor that has a more direct    control on plant physiology and plant growth was chosen over the other variable,    for example, temperature is collinear with elevation since elevation is a control    of temperature. Temperature is a control of plant growth (see <a href="#tabla1">Table    1</a>). Elevation is only a control on plant growth because of its impact on    temperature (and other variables). Thus temperature is preferred to elevation    (Vel&aacute;zquez 1994). The same process was undertaken for <i>P. guianensis</i></p>     <p>        <center>     <b>Table 1.</b> Known associations between climatic and landscape properties      and plant processes affecting species' distributions.    </center> </p>     ]]></body>
<body><![CDATA[<center>   <img src="img/revistas/cal/v32n2/v32n2a9tab1.gif"><a name="tabla1"></a>  </center>     <p>Initially, preliminary testing was undertaken by producing predicted maps based    on the Mahalanobis distance for <i>P. angustifolia</i>. We used ten different    combinations of environmental parameters to identify the best fitted model for    the species. The Mahalanobis distances were computed from the thirty different    training datasets prepared earlier (3 parameterisation to validation ratios    x 10 repetitions of randomly selected presence records). These resulted in a    total of 300 predicted maps that represented a large dataset for further analysis.  </p>     <p>       <center>     <b>Table 3.</b> Results of bivariate correlations between continuous variables      at 55 localities with presence of species <i>Palicourea angustifolia</i>.    </center> </p>     <center>       <p><img src="img/revistas/cal/v32n2/v32n2a9tab3.gif"><a name="tabla3"></a>    </p>       <p>    <center>       <b>Table 4.</b> Results of bivariate correlations between discrete variables        and localities with presence and absence of species <i>Palicourea angustiolia</i>.      </center> </p>     <center>   <img src="img/revistas/cal/v32n2/v32n2a9tab4.gif"><a name="tabla4"></a>  </center></p> </center>     <p> For predictive distribution models, accuracy assessment is usually carried    out through the construction of an error matrix (a cross tabulation of the number    of correctly and incorrectly classified observations) from which several measures    of model performance are derived (Stockwell &amp; Noble, 1992; Fielding &amp;    Bell, 1997; Stockwell &amp; Peterson, 2002b; Anderson et al. 2002a, 2003; Farber    &amp; Kadmon, 2003). Each one of the 300 predictive maps was independently validated    with the testing datasets, and the results were summarised in an error matrix    containing four measures of accuracy used commonly in this type of research:    sensitivity, specificity, overall accuracy, and the Kappa statistic (Fielding    &amp; Bell, 1997; Farber &amp; Kadmon, 2003).<font size="2" face="verdana">    </font></p> </font><font size="2" face="verdana">     ]]></body>
<body><![CDATA[<p>Sensitivity is defined as the probability of correctly predicting a presence    and specificity is of correctly predicting an absence. As aforementioned, we    used records of the two other species for this study (<i>P. guianensis</i> and    <i>Warszewiczia coccinea</i>) as absence sites to be included in the validation    dataset. For the purpose of this study and for practical reasons we assumed    that where there have been collection missions (focused on the same family)    but no reports of the P. angustifolia, this species can be considered as absent    from those localities.</p>     <p>We also undertook a preliminary survey of the Mahalanobis distance to be used    as a threshold (d) beyond which a site is not considered as potentially suitable    for the species. This threshold is used to determine the accuracy of the model.    However it has to be taken into account that as the value of d increases, so    does the the probability of including not only suitable sites but also potentially    nonsuitable sites. We used the 90th percentile threshold after preliminary analyses    (Armenteras, 2003). <a href="#tabla6">Table 6</a> summarises the results obtained    for each of the environmental parameter combinations. The combination of variables    that provided higher predictive success was selected for further analysis.</p>     <p><b>RESULTS</b></p>     <p>From the results in <a href="#tabla3">Table 3</a> and <a href="#tabla4">table    4</a>, it can be observed that evapotranspiration and minimum and maximum temperature    are highly correlated to mean temperature, and thus mean temperature was selected    for further use in the distribution models and the other three variables were    discarded. Although evapotranspiration was also a strong physiological control,    the variable was not considered because it was a secondary data derived from    the temperature dataset. For precipitation, although the results indicate a    significant correlation of precipitation with mean temperature, the variable    is sufficiently different from temperature in its physiological impact to make    it worthy of inclusion. Regarding categorical variables, slope aspect does not    seem to be an important variable for the species (i.e., no correlation at all    with presence of the species was found), hence it was not used further. Slope    aspect is usually only important for driving solar radiation loads at sites    away from the equator where N-S radiation differences become very large.    Slope aspect (like slope gradient) is also notoriously difficult to quantify    from coarse resolution topographic data; hence it was removed from consideration.</p>     <p>Accuracy measures were obtained for all the models and all model runs (<a href="#tabla5">Table    5</a>). A threshold of the 90th percentile to the mean Mahalanobis distances    of the training dataset was used for validation purposes, that is, areas within    the 90th percentile to the mean mahalanobis distance were considered as suitable    sites for the species. <a href="#tabla5">Table 5</a> summarises the results    obtained for each one of the combinations of environmental parameters. Model    5 which uses: mean temperature, solar radiation, soil types, and slope gradient    shows the highest predictive success for both species. <a href="#tabla6">Table    6</a> presents the corresponding accuracy assessments for the two species.</p>     <p>       <center>     <b>Table 5.</b>Summary of accuracy measures of ten distribution models for Palicourea angustifolia.    <br>     The standard deviation values are in parenthesis.   </center> </p>     <center>   <img src="img/revistas/cal/v32n2/v32n2a9tab5.gif"><a name="tabla5"></a>  </center>     <p>      ]]></body>
<body><![CDATA[<p>       <center>     <b>Table 6.</b> Summary of accuracy measurements of the predicted distribution      models for two species of Rubiaceae    </center> </p>     <center>   <img src="img/revistas/cal/v32n2/v32n2a9tab6.gif"><a name="tabla6"></a>  </center></p>     <p><b>Predictive distribution models</b></p>     <p>After demonstrating that the preliminary model validated well with an accuracy    of over 0.8 for both species, we modelled the species' potential geographic    distribution using the whole available dataset of presence records. The resulting    map can be seen in <a href="#figura3">Fig. 3</a> &amp; <a href="#figura4">fig.    4</a>.</p>     <p>        <center>     <img src="img/revistas/cal/v32n2/v32n2a9fig3.gif"><a name="figura3"></a>    </center>     <p>      <center>       <p><b>Figure 3.</b> Model of predicted potential distribution for <i>Palicourea      angustifolia</i> in Colombia. </p>       ]]></body>
<body><![CDATA[<p>          <center>       <img src="img/revistas/cal/v32n2/v32n2a9fig4.gif"><a name="figura4"></a>      </center>       <p>          <center>       <b>Figure 4.</b> Model of predicted potential distribution for <i>Palicourea        guianensis</i> in Colombia.      </center>   </p> </center>     <br> <i>P. angustifolia</i> and <i>P. guianensis</i> show largely complementary potential  ranges (<a href="#figura3">Fig. 3</a> &amp; <a href="#figura4">fig. 4</a>). <i>P.  angustifolia</i> shows a clear Andean distribution with presence in lower and  upper mountain areas but neither in the highlands nor in the inter-Andean valleys.  The model also predicts the potential distribution of the species in both the  upper mountain areas of Sierra Nevada de Santa Marta and the Serrania de La Macarena.  A total of 308,768 km2 are predicted as potentially suitable area for <i>P. angustifolia</i>.  On the other hand, <i>P. guianensis</i> was predicted throughout most of the lowland  areas of Colombia including lowland Amazonian forests, and most of the tropical  savannas of Orinoquia. Predicted as unsuitable for the species are the few highland  areas in the Amazon such as around the Araracuara formation and the hill complex  of Mitu. In general terms, the species was not predicted in the wetter lowland  areas of the Pacific region or in the most arid enclaves of la Guajira, although  some lowland areas of the Sierra Nevada de Santa Marta are predicted as potentially  suitable for the species. A large area of 1,004,777 km2 is predicted as potentially  suitable for <i>P. guianensis</i>.</p>      <p>However, when analyzing the Mahalanobis distances observed from the 55 records    used to construct the model for P. angustifolia, 5 of them (<a href="#tabla7">Table    7</a>) have a Mahalanobis distance much higher than the 90% percentile used    for model validation purposes. This means that they fall precisely in the predicted    absence pixels. However, if we look in detail at each of these records, all    of them are within 1-2 pixels (km) of larger areas predicted as presence    areas (<a href="#figura5">Fig. 5</a>). A similar situation occurred with 5 out    of 60 records of <i>P. guianensis</i> (<a href="#tabla7">Table 7</a>, also occurring    within 2 km ) pixels predicted by the model as sites of species presence for    its model.</p>     <p>        <center>     <font size="2" face="verdana"><img src="img/revistas/cal/v32n2/v32n2a9fig5.gif"></font><a name="figura5"></a>    </center>     <p>      <center>       ]]></body>
<body><![CDATA[<p><b>Figure 5.</b> Location and specimen number of five presence records of      <i>P. angustifolia</i> (a,b,c from Missouri Botanical Garden, d from HAFP      database) predicted as absence. Pixel size is 1 km2.    <br>   </p></p>       <center>     <b>Table 7.</b> Presence records predicted as absence by their respective      model and its identification attributes.    </center></p>       <center>     <img src="img/revistas/cal/v32n2/v32n2a9tab7.gif"><a name="tabla7"></a>    </center> </center></p>     <p>We undertook a final analysis of these two species, looking for areas in which    the predicted distribution of the two species overlaps. <a href="#figura6">Figure    6</a> illustrates the geographic extent (93.983 km2) of areas predicted suitable    for species co-occurrence. This area of potential overlap between the two species    represents 30.4% of the potential distribution of P. angustifolia and 9% of    P. guianensis and the environmental characteristics of this are indicate a mean    annual temperature around 23.8 degrees Celsius, 624.5Wm-2day of solar radiation    and around 232 mm of mean monthly precipitation (see more details in <a href="#tabla8">Table    8</a>).</p>     <p>       <center>     <b>Table 8.</b> Environmental characteristics at overlap areas predicted as      potentially suitable for both <i>Palicourea angustifolia</i> and <i>Palicourea      guianensis</i>.    </center> </p>     <center>   <img src="img/revistas/cal/v32n2/v32n2a9tab8.gif"><a name="tabla8"></a>  </center></p>     <p>        <center>     <img src="img/revistas/cal/v32n2/v32n2a9fig6.gif"><a name="figura6"></a>    </center>     ]]></body>
<body><![CDATA[<p>        <center>     <b>Figure 6.</b> Overlap areas of potential distribution of both <i>Palicourea      angustifolia</i> and <i>Palicourea guianensis</i>.    <br>   </center> </p>     <p><b>DISCUSSION</b></p>     <p>This study focused on developing and testing an alternative methodology that    may help optimising the use of the existing species' presence records    and environmental data within the framework of a a niche-based model of species    distribution to predict the range of tree species occurrence in a relatively    simple and efficient manner in tropical countries</p>     <p><b>Species data for distribution modelling</b></p>     <p>A limited number of records were available for building the predictive distribution    models. Out of the 3000 records collected, only 3 species of Rubiaceae had over    50 records available for modelling, and even these 3 species had to go through    a database purge of their localities, having specimens repeated, localities    incompletely, inaccurately reported or poorly georeferenced, and typing errors.    Also, errors in the accuracy of the geographic coordinates of the species data    were impossible to determine. Many samples were georeferenced from museum label    descriptions, and these were often rather generally located, specially the older    records, not to mention the known bias of collection sites, the lack of a sampling    design, and the different origins of the data.</p>     <p>Another important source of error, particularly for those working in the tropics    is the determination of the species. This was minimised by choosing the genera    Palicourea, on which there is extensive systematic recent work (Taylor, 1996,    1997a, 1997b, 1999, &amp; 2000). </p>     <p>Despite the deficiencies inherent in the use of primary inventory data, the    model developed provides very useful information on the species distribution    in relation to environmental controls.    <br> </p>     ]]></body>
<body><![CDATA[<p><b>Species distribution models</b> </p>     <p>The technique developed here for mapping potential species distribution offers    a number of advantages over other classical modelling techniques (Stockwell    &amp; Peters, 1999; Anderson et al. 2003). One of the most important is undoubtedly    the ability to cope with presence-only data, thus not making any a priori assumption    about the distribution of the species, and also avoiding the use of potential    false negatives (Dunn &amp; Duncann, 2000). However, we did use surrogate absence    data in this case for validation purposes, but validation can be undertaken    by other means (i.e., field inventories). The approach applied here allows the    use of environmental variables from multiple sources and in continuous, categorical,    or Boolean form (Bar-Hen &amp; Daudin, 1995). Further, different measurement    scales of input variables are not problematic since the Mahalanobis statistic    is dimensionless, being a function of standardised variables (Clark et al. 1993;    Knick &amp; Rotenberry, 1998). Finally, the technique does not assume a normal    distribution of the data, which, for most species, is not satisfied (Austin    &amp; Smith, 1989). </p>     <p>The model developed here is based on niche theory (Hutchinson, 1959; MacArthur,    1968; Whitaker, 1975), which has a strong background in ecological theory. However,    it is important to clearly differentiate the fundamental versus the realised    niche of species (Hutchinson, 1959) and to understand further that the predictions    developed here represent neither of these, but rather a subset of the fundamental    niche which is limited to the distribution of the species within the environments    present (and studied) in Colombia. The approach is also limited due to the fact    that only a few environmental variables are considered and others may be just    as important but without readily available data such as for example historical    or paleoclimatic data. No vegetation data, potential or current, has been incorporated    in the model and neither has the current state of the ecosystems been considered,    including deforestation, or other threats. Also no subgrid scale variability    is taken into account which, at a spatial resolution of 1 km over heterogeneous    mountain terrain means that the environmental properties distributed here and    those experienced by individual trees on the ground may be quite different.</p>     <p>When many variables are involved, the Mahalanobis approach requires some kind    of a priori manual data reduction to identify the most important input parameters    for the model specially where there is significant correlation between the variables    (Knick &amp; Rotenberry, 1997; De Maesschalck et al. 2000; Wilds et al. 2000)  </p>     <p><b>Data reduction</b></p>     <p>The most parsimonious model at a given level of prediction accuracy is always    the best model (Mulligan &amp; Wainwright, 2003). The data reduction results    (<a href="#tabla3">Table 3</a> and <a href="#tabla4">table 4</a>) lead to a    considerable reduction of possible variables to be used in the model. Temperature    variables were clearly collinear, since they are all modelled from linear regressions    between station meteorological data and elevation. Similarly, potential evapotranspiration    was derived from temperature using the Thornthwaite methodology (Section 3.3)    in which temperature is a key variable. It turns out that no extra important    information was provided through modelling these secondary variables since mean    temperature remained as the best predictor. Temperature and precipitation were    highly correlated at presence sites of <i>P. angustifolia</i> (probably because    both are functions of elevation, though temperature is a nonlinear function).    Due to the importance of precipitation in the physiology and distribution of    species (Begon et al. 1990; Richerson &amp; Lum, 1980; Brown &amp; Gibson, 1983;    Turner et al. 1988; Wright et al. 1993; Gaston, 2000), we did not rule out the    incorporation of this data, alongside temperature, in the preliminary tests    of the algorithm performance. </p>     <p>The predictive accuracy of the models in which we incorporated the precipitation    data was substantially lower than more limited combinations of variables (<a href="#tabla3">Table    3</a> &amp; <a href="#tabla4">table 4</a>) such as mean temperature, solar radiation,    soil type, and slope gradient. The Slope aspect was not incorporated into the    modelling approach due to its tested irrelevance to the distribution of <i>P.    angustifolia</i>. This is likely due to the fact that representation of the    slope aspect experienced by trees in the field is rather difficult at a 1 km    grain, and the same probably holds true for slope gradient.</p>     <p>Harrel et al. (1996) suggest that the number of final predictors in modelling    should be m/10, where m is the total number of observations. In this analysis,    and considering that the number of presence records is 55 for P. angustifolia    and 60 for P. guianensis, 5 variables would be suggested, and 4 to 6 were tested    with the best model resulting from 4 variables (<a href="#tabla5">Table 5</a>).   </p> </p>     <p><b>Errors and accuracy</b></p>     <p>Several questions arise when looking at the issue of accuracy assessment. The    first is that although the importance of understanding error in models is clear    (Rykiel, 1996; Boone &amp; Krohn, 2002; Elith et al. 2002; Guisan &amp; Zimmermann    2000; Guisan et al. 2002), there is still some extent of subjectivity in the    interpretation of model accuracy, specially for species' distribution    models (Guisan &amp; Zimmermann, 2000). Different measures of model performance    have been proposed (Rykiel, 1996; Fielding &amp; Bell, 1997; Guisan &amp; Zimmermann,    2000; Anderson et al. 2003). For any given threshold, there are locations with    values below it where the species is present (true positives) and absent (false    positives). Similarly, there are sites that the model predicts as unsuitable    (above the threshold) that are occupied (false negatives) and where the species    is absent (true negatives). We chose to use error matrices and four measures    of accuracy that required absence data (not required for the prediction, but    useful in validation). </p>     ]]></body>
<body><![CDATA[<p>This leads to the question of how accurate it was to use other species'    localities records as absence sites for the species that were modelled. In herbarium    and collection datasets, &quot;real&quot; absence data does not exist, and    this was partly the justification for undertaking a modelling approach which    can use only presence data. However, wherever clearly related species are collected    during the same collection missions by the same collectors, sites where <i>P.    angustifolia</i> had not been collected but where P. guianensis had been, could    be considered absence sites for <i>P.angustifolia</i>. Some 11 sites had collection    records of both species at the same time suggesting that the species do overlap    in distribution (7 out of 9 are located in overlapping distribution areas).    This reaffirms the fact that the definition of absence sites for validation    purposes was appropriate. One of the specimens collected for <i>P. angustifolia</i>    ( NO. 1275705, MO) was not predicted by the model to be present in the locality    collected (<a href="#tabla7">Table 7</a>). This might suggest either the lack    of inclusion of an important variable in the modelling exercise or some kind    of interpolation error in the GIS databases, significant unmeasured subgrid    variability in the environmental variables, or georeferencing error in the records.    This record, which is less than 2 pixels away (2 km) from areas that were modelled    as overlapping distribution areas for the species, seems to suggest the latter    as a possibility. The other specimen of <i>P. angustifolia</i> (NO. 2469, HAFP)    has a distance of over 15 km to the overlapping area. Both the localities which    were incorrectly predicted in the model for <i>P. angustifolia</i>, were correctly    predicted in the distribution model for P. guianensis. However, the localities    where the P. angustifolia HAFP specimen is recorded has an elevation of 160    m, which is outside the natural range of the species. Arguably this might be    probably a collection/measurement error, a typing error, or a species determination    error. In general, observation or measurement errors lead to reduced predictability    of models (Boone and Krohn, 2002)</p>     <p><b>Geographic distribution</b></p>     <p>Despite the propagation of measurement and systematic errors, effective prediction    of test localities for both species could be achieved in all 3 significant models.    Judgement by experts also gave a positive assessment of the resulting distribution    patterns corresponding fairly well to the knowledge of the species and recorded    records (C.M.Taylor, E. Calderon, pers. comm; Jimenez 2002, Rangel 1995, 2000).    <i>P. angustifolia</i> shows a clear Andean distribution with presence in lower    and upper montane areas but neither in the highlands nor in the inter-Andean    valleys. The best fitted model also predicts the potential distribution of the    species in both the upper mountain areas of Sierra Nevada de Santa Marta and    the Serrania de La Macarena. Taylor (1997a, b) states that this species belongs    to the subgenus Montanae, a notion that is in agreement with the modelling results    obtained for this species.</p>     <p>On the other hand, <i>P. guianensis</i> was predicted throughout most lowland    areas of Colombia including the lowland Amazon forests and most of the tropical    savannas of Orinoquia. The few highland areas in the Amazon such as around the    Araracuara formation and the hill complex of Mitu were unsuitable for the species.    This species is a widespread lowland species (Taylor, 1997a,b). Taylor (1997a,    b) classifies this species to the subgenus <i>Palicourea</i> and describes it    as generally found at lower elevations, 0-1,200 (1,500) m, throughout    the range of the genus. Again, this is consistent with the prediction of the    obtained in this modelling effort.</p>     <p><b>CONCLUSIONS</b></p>     <p>Modelling of species' responses to static or changing environmental conditions    has become an increasingly important part of modern ecology and biogeography.    This kind of modelling can save time and money in the formulation and execution    of biological inventories, a task which Colombia, along with other countries,    is carrying out in fulfilment of its obligations to the Convention on Biological    Diversity. Particularly in the tropics, modelling can provide a quicker and    potentially more reliable approximation for identifying areas with high biological    diversity when lack of resources or time constraints are in place, and complement    small-area field inventory that might take longer to achieve. By limiting and    approximate habitat niche of a species (with limitation since not all ecological    or phylogenetic aspects are included), it is possible to predict its distribution-at    least for environmentally determined, structural organisms like trees. However,    the originality of the present approach lies in the fact that not only it is    based on the concept of ecological niche, but in contrast to many statistical    techniques, it needs only presence data sets. This property is very important    because most currently available data for the tropical taxa are still of this    kind. The focus on presence data is partly due to the fact that until recently    the emphasis was to obtain site inventories instead of regional statistical    analysis, so data were collected in a nonstratified or without concerns to sampling    desing, in terms of spatial coverage.</p>     <p>The Mahanalobis technique provides key information about the niche of the species    being modelled and allows comparisons on species distributions. Further, the    methodology is well-suited for application in conservation biology i.e. the    use of this kinf od models may have many applications such as the quick prediction    of invasive species potential distribution or finding the best locations to    reintroduce individuals of endangered species, the prioritisation of direct    inventory efforts toward areas with high presence probability of a species,    prediction of species' redistribution due to climate change. Further along    the trophic chain, these models can help predict the distribution of animals    that use these trees as a source of food, bearing in mind that are not indicative    of healthy or viable populations at all, or perhaps most importantly in terms    of Colombia's commitments to the CBD, to identify gaps for conservation    priorities.</p>     <p>The approach adopted here, however, is rather simple. A more comprehensive    model of the potential distribution of species would involve considering competitive    interactions between species and the effects of disturbance or population dynamics.    Also, the present approach assumes that the species have a unimodal response    to environmental conditions. Further, this modelling approach relies on the    assumption that the general form of species' response to environmental    gradients is an optimum where the species is most likely to occur; the likelihood    of occurrence decreases with distance from that optimum. However, also it has    to be taken into account the factg taht this approach does not take into account    interaction or changes in the interlinkages amongst factors, that is, parameter    interaction would need to be incorporated in the future. In addition, the climatic    fields used here are representative for canopy-level tree species only, whereas    subcanopy species will experience a much altered microclimate. Nevertheless,    the current need of tropical countries like Colombia is to have at least a basis    from which to optimise available data to facilitate better geographical targeting    of inventory and the spatially explicit prioritisation of conservation at the    national scale. By building upon the techniques described here, we hope to provide    a basis for the rapid identification of species-rich areas and areas in which    particular species may be threatened or be best conserved,. This will contribute    toward the national biodiversity conservation and management strategy.</p>     <p><b>ACKNOWLEDGMENTS</b></p>     <p>Many thanks go to all the different collections from which we obtained key    information for this research: CB, Cesar Barbosa collection at Humboldt Institute    Herbarium; MO, Missouri Botanical Garden; JAUM, Herbario Jard&iacute;n Bot&aacute;nico    &quot;Joaquin Antonio Uribe&quot; de Medell&iacute;n; INCIVA, Instituto de    Investigaci&oacute;n Cient&iacute;fica del Valle del Cauca; NYBG, New York Botanical    Garden; COAH, Herbario Amazonico Colombiano; HAFP and Herbario de Alfonso Fernandez    Perez, from Fundaci&oacute;n Universitaria de Popayan, Herbarion Nacional Colombiano    at the ICN Instituto de Ciencias Naturales. We wish to thank all of them and    the people who made possible the access to these valuable records and specially    to the HAFP director, Dairon Cardenas. We specially want to thank Dr. Charlotte    Taylor, for not only allowing us access to the Missouri Botanical Garden database    and herbarium, but also for her comments on all our inquiries regarding Rubiaceae.    Our thanks to both the Humboldt Biological Resources Research Institute and    the UK DfID British Council LINK programme for their financial contribution.    We are thankful to Dr Fernando Gast for all his efforts, comments and supervision    during the postgraduate work in past years that lead to this publication and    finally many thanks to the three reviewers whose comments made possible the    improvement of this paper and its final publication.</p>     ]]></body>
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