Serviços Personalizados
Journal
Artigo
Indicadores
Citado por SciELO
Acessos
Links relacionados
Citado por Google
Similares em
SciELO
Similares em Google
Compartilhar
Revista de investigación e innovación en ciencias de la salud
versão On-line ISSN 2665-2056
Resumo
MURILLO-ZAMORA, Efrén. Data-driven Subclassification of Treated Hypertensive Adults: Implications for Personalized Management. Rev. Investig. Innov. Cienc. Salud [online]. 2026, vol.8, n.1, e477. Epub 17-Out-2025. ISSN 2665-2056. https://doi.org/10.46634/riics.477.
Introduction.
Hypertension control remains a public health challenge worldwide, with variability in management outcomes. This study aimed to identify blood pressure control phenotypes among Mexican adults with previously diagnosed hypertension.
Methods.
We analyzed individuals (n = 1,308) aged 20 years and older with physician-confirmed hypertension. Controlled hypertension was defined as systolic/diastolic blood pressure < 130/80 mmHg, assessed via triplicate measurements. We used Principal Component Analysis (PCA) to reduce dimensionality and Gaussian Mixture Model (GMM) clustering on PCA-transformed data identified phenotypes.
Results.
GMM clustering identified 8 phenotypes, with cluster sizes ranging from 22 (1.7%) to 325 (24.8%) individuals. Cluster 3, integrated mainly by older women (mean age 66.5 years), long-term hypertension (> 10 years), and high socioeconomic status, was the largest cluster and showed better control. In contrast, Cluster 7 (𝑛 = 142) was mainly constituted by patients with low socioeconomic status and uncontrolled blood pressure. PCA variable contributions highlighted adherence to physical activity (9.07%), dietary modifications (7.24%), sex (7.14%), and type 2 diabetes (6.64%) as dominant factors in principal component 1 (PC1), whereas age explained 89.2% of PC2 variance.
Conclusions.
The presented results suggest heterogeneous hypertension control patterns influenced by demographic, clinical, and behavioral factors. Targeted interventions for high-risk phenotypes, particularly younger patients and those with poor adherence, could enhance blood pressure management strategies in Mexico. The integration of PCA and GMM offers a robust framework for phenotyping complex health conditions in population-based studies.
Palavras-chave : Hypertension; blood pressure; cluster analysis; principal component analysis; Mexico.












