Address for correspondence: Neeharika Srivastava, Associate Professor, Department of Forensic Science, Galgotias University, Greater Noida, Uttar Pradesh,, India E-mail: neeharika2585@gmail.com
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Prasadh T, Tiwari H, Bhatnagar T, et al. Thanatomicrobiome and its Influence in Determination of Time Since Death: A Review. Indian J Forensic Med Pathol. 2025;18(2 Suppl):260-269.
Timeline
Received : June 28, 2024
Accepted : June 27, 2025
Published : June 30, 2025
Abstract
The thanatomicrobiome (thanatos, Greek for death) is a relatively new term and is the study of the microbes colonizing the blood, lymph, internal organs and orifices after death. Forensic investigations depend heavily on the postmortem interval (PMI), which measures the amount of time since death. Conventional approaches to
PMI estimation frequently depend on both macroscopic and microscopic alterations in cadavers, which can be inaccurate and subject to several influences. A promising approach for PMI estimate has surfaced in recent years: the thanatomicrobiome, which is the community of bacteria that remain in the human body after death.
This study aims to investigate the thanatomicrobiome signatures present in various visceral samples collected postmortem and assess their potential for accurate PMI estimation. Using high-throughput sequencing methods like metagenomics, microbial communities from various visceral samples taken from cadavers at
certain times after death can create reliable thanatomicrobiome signatures for PMI estimation, law enforcement organisations and forensic professionals may be able to more precisely ascertain the time of death. This could improve the precision and dependability of forensic investigations. This article ensures a future in the advance forensic microbiology as a tool for forensic casework and contributing to the broader field of forensic science.
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Data Sharing Statement
There are no additional data available. All raw data and code are available upon request.
Funding
This research received no funding.
Author Contributions
All authors contributed significantly to the work and approve its publication.
Ethics Declaration
This article does not involve any human or animal subjects, and therefore does not require ethics approval.
Acknowledgements
We would like to express our gratitude to the patients, their families, and all those who have contributed to this study.
Conflicts of Interest
No conflicts of interest.
About this article
Cite this article
Prasadh T, Tiwari H, Bhatnagar T, et al. Thanatomicrobiome and its Influence in Determination of Time Since Death: A Review. Indian J Forensic Med Pathol. 2025;18(2 Suppl):260-269.
This license enables reusers to distribute, remix, adapt, and build upon the material in any medium or format for noncommercial purposes only, and only so long as attribution is given to the creator.
This license enables reusers to distribute, remix, adapt, and build upon the material in any medium or format for noncommercial purposes only, and only so long as attribution is given to the creator.