Tanatomicrobioma e Inteligencia Artificial: la Microbiología Forense de Hoy

Autores/as

DOI:

https://doi.org/10.24265/horizmed.2025.v25n3.15

Palabras clave:

Microbiología Forense , Cambios Post Mortem , Inteligencia Artificial , Aprendizaje Profundo, Cadáver

Resumen

La microbiología forense permite, entre otras aplicaciones, la estimación del intervalo post mortem (PMI), la identificación de individuos y la localización de escenas del crimen mediante el análisis de microbiomas y la geolocalización de restos biológicos. La inteligencia artificial (IA), junto con las nuevas técnicas de secuenciación, ha revolucionado este campo, mejorando significativamente la precisión y la rapidez de los análisis forenses. En la presente investigación se llevó a cabo una revisión sistemática, siguiendo las directrices PRISMA. Se consultaron bases de datos como PubMed, Scopus, Web of Science y Google Scholar, utilizando palabras clave relacionadas con microbiología forense, IA y PMI. Se aplicaron criterios de inclusión, como la publicación de los estudios en inglés o español y sin restricción temporal, y de exclusión, como duplicidad de publicaciones o estudios que no abordaban el análisis del tanatomicrobioma mediante herramientas de IA. Tras el proceso de búsqueda y selección, se analizaron 20 artículos publicados entre 2016 y 2024. Los hallazgos revelan que algunos modelos de aprendizaje automático, como Random Forest (RF) y las Redes Neuronales Convolucionales (CNN), permiten estimaciones relativamente precisas del PMI. Los estudios recientes enfocados en el tanatomicrobioma se perfilan como una herramienta prometedora en el ámbito forense, debido a que este microbioma es único e individualizante, lo que lo convierte en un recurso útil en las distintas etapas de la identificación humana y en los procesos de geolocalización dentro de investigaciones criminales. Sin embargo, se resalta la necesidad de realizar estudios con un mayor número de muestras y de explorar la participación de otros microorganismos, además de las bacterias, con el fin de ampliar y enriquecer el panorama de investigación en esta área emergente.

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2025-09-11

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Baltazar Ramos JI, Cosme García L, Denis Rodriguez E. Tanatomicrobioma e Inteligencia Artificial: la Microbiología Forense de Hoy . Horiz Med [Internet]. 11 de septiembre de 2025 [citado 14 de septiembre de 2025];25(3):e3758. Disponible en: https://www.horizontemedico.usmp.edu.pe/index.php/horizontemed/article/view/3758

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