Abstract

BackgroundThe postmortem microbiome can provide valuable information to a death investigation and to the human health of the once living. Microbiome sequencing produces, in general, large multi-dimensional datasets that can be difficult to analyze and interpret. Machine learning methods can be useful in overcoming this analytical challenge. However, different methods employ distinct strategies to handle complex datasets. It is unclear whether one method is more appropriate than others for modeling postmortem microbiomes and their ability to predict attributes of interest in death investigations, which require understanding of how the microbial communities change after death and may represent those of the once living host.Methods and findingsPostmortem microbiomes were collected by swabbing five anatomical areas during routine death investigation, sequenced and analyzed from 188 death cases. Three machine learning methods (boosted algorithms, random forests, and neural networks) were compared with respect to their abilities to predict case attributes: postmortem interval (PMI), location of death, and manner of death. Accuracy depended on the method used, the numbers of anatomical areas analyzed, and the predicted attribute of death.ConclusionsAll algorithms performed well but with distinct features to their performance. Xgboost often produced the most accurate predictions but may also be more prone to overfitting. Random forest was the most stable across predictions that included more anatomic areas. Analysis of postmortem microbiota from more than three anatomic areas appears to yield limited returns on accuracy, with the eyes and rectum providing the most useful information correlating with circumstances of death in most cases for this dataset.

Highlights

  • The microbiome is comprised of all the microbes within a host, space, or community that represent complex consortia of many species [1]

  • Machine learning and the postmortem microbiome this document are those of the authors and do not necessarily represent the official position or policies of the U.S Department of Justice

  • The composition and role of microbial consortia that endogenously and exogenously comprise the human microbiome has been extensively studied for human health [2,3]

Read more

Summary

Introduction

The microbiome is comprised of all the microbes within a host, space, or community that represent complex consortia of many species [1]. This study showed data with potential application in forensic science, and demonstrated that there were microbial signatures associated with health status of the once living hosts, but only within a two-day postmortem interval These data may be valuable resources for understanding the antemortem health from individuals where antemortem samples are difficult to obtain. Different methods employ distinct strategies to handle complex datasets It is unclear whether one method is more appropriate than others for modeling postmortem microbiomes and their ability to predict attributes of interest in death investigations, which require understanding of how the microbial communities change after death and may represent those of the once living host

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call