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Environmental Predictors Impact Microbial-based Postmortem Interval (PMI) Estimation Models within Human Decomposition Soils

NCJ Number
309791
Journal
PLoS ONE Dated: October 2024
Date Published
October 2024
Annotation

This study investigates whether environmental predictors impact microbial-based postmortem interval (PMI) estimation models within human decomposition soils.

Abstract

This study, building upon current research by evaluating the inclusion of environmental data on microbial-based postmortem interval (PMI) estimates from decomposition soil samples, demonstrated some level of predictability in soil microbial succession during human decomposition. However, error rates were high when considering a moderate population of donors. Microbial succession has been suggested to supplement established PMI estimation methods for human remains. Due to limitations of entomological and morphological PMI methods, microbes are an intriguing target for forensic applications as they are present at all stages of decomposition. Previous machine learning models from soil necrobiome data have produced PMI error rates from two and a half to six days; however, these models are built solely on amplicon sequencing of biomarkers (e.g., 16S, 18S rRNA genes) and do not consider environmental factors that influence the presence and abundance of microbial decomposers. Random forest regression models were built to predict PMI using relative taxon abundances obtained from different biological markers (bacterial 16S, fungal ITS, 16S-ITS combined) and taxonomic levels (phylum, class, order, OTU), both with and without environmental predictors (ambient temperature, soil pH, soil conductivity, and enzyme activities) from 19 deceased human individuals that decomposed on the soil surface (Tennessee, USA). Model performance was evaluated by calculating the mean absolute error (MAE). MAE ranged from 804 to 997 accumulated degree hours (ADH) across all models. 16S models outperformed ITS models (p = 0.006), while combining 16S and ITS did not improve upon 16S models alone (p = 0.47). Inclusion of environmental data in PMI prediction models had varied effects on MAE depending on the biological marker and taxonomic level conserved. Specifically, inclusion of the measured environmental features reduced MAE for all ITS models, but improved 16S models at higher taxonomic levels (phylum and class). (Published Abstract Provided)

Date Published: October 1, 2024