An agglomerative hierarchical clustering approach to identify coexisting bacteria in groups of bacterial vaginosis patients

Author:

Hernández-Gómez Henry Jesús1,Canul-Reich Juana1,Hernández-Ocaña Betania1,de la Cruz Hernández Erick2

Affiliation:

1. Academic Division of Sciences and Information Technologies, Juarez Autonomous University of Tabasco, Cunduacán-Jalpa KM highway. 1 Col. The Esmeralda, Cunduacán, Tabasco, Mexico

2. Comalcalco Multidisciplinary Academic Division, Juarez Autonomous University of Tabasco, Ranchería South 4th. Section. Comalcalco, Tabasco, Mexico

Abstract

Polymicrobial syndromes such as Bacterial Vaginosis (BV), where there is a great diversity of microorganisms and causal connotations, turn it into a disease with complex dynamics in the bacteria’s coexistence in groups of patients. The main aim of this study was to explore a dataset of patients with BV to determine a more informed number of groups to create for further analysis of bacteria’s coexistence. The Agglomerative Hierarchical Clustering (AHC) algorithm was applied to a BV dataset from an urban population in southeastern Mexico consisting of 201 patient records with 59 patient attributes and three classes (BV-positive, BV-negative, BV-indeterminate). In the clustering results obtained, it is possible to identify different remarkable groups of patients. The most prevalent coexisting bacteria among patients with BV were Atopobium + Gardnerella vaginalis with 37.50%, Atopobium + Megasphaera with 15.68% in the first experiment. Whereas, in the second experiment, the coexisting bacteria were Atopobium + Megasphaera + Mycoplasma hominis with 33.33% and Atopobium + Gardnerella vaginalis + Mycoplasma hominis with 25%. Finally, we provided evidence that via the AHC algorithm, it was possible to identify an optimal number of clusters with high intra-similarity and inter-dissimilarity. Furthermore, this approach allowed us to create a clustering model that helps analyze the complex dynamics between bacteria in groups of patients with BV.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Theoretical Computer Science

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