Giles Stephanie, Errickson David, Harrison Karl, Márquez-Grant Nicholas
Cranfield Forensic Institute, Cranfield University, Bedford Campus, MK43 0AL, United Kingdom.
Cranfield Forensic Institute, Cranfield University, Bedford Campus, MK43 0AL, United Kingdom.
Forensic Sci Int. 2023 Jan;342:111536. doi: 10.1016/j.forsciint.2022.111536. Epub 2022 Dec 7.
Bayesian Belief Networks (BBNs) can be applied to solve inverse problems such as the post-mortem interval (PMI) by a simple and logical graphical representation of conditional dependencies between multiple taphonomic variables and the observable decomposition effect. This study is the first cross-comparison retrospective study of human decomposition across three different geographical regions. To assess the effect of the most influential taphonomic variables on the decomposition rate (as measured by the Total Decomposition Score (TDS)), decomposition data was examined from the Forensic Anthropology Research Facility at the University of Tennessee (n = 312), the Allegheny County Office of the Medical Examiner in Pittsburgh, US (n = 250), and the Crime Scene Investigation department at Southwest Forensics in the UK (n = 81). Two different BBNs for PMI estimations were created from the US and the UK training data. Sensitivity analysis was performed to identify the most influential parameters of TDS variance, with weaker variables (e.g., age, sex, clothing) being excluded during model refinement. The accuracy of the BBNs was then compared by additional validation cases: US (n = 28) and UK (n = 10). Both models conferred predictive power of the PMI and accounted for the unique combination of taphonomic variables affecting decomposition. Both models had a mean posterior probability of 86% (US) and 81% (UK) in favor of the experimental hypothesis (that the PMI was on, or less than, the prior last known alive date). Neither the US nor the UK datasets represented any cases below 'moderate' support for the value of PMI evidence. By applying coherent probabilistic reasoning to PMI estimations, one logical solution is provided to model the complexities of human decomposition that can quantify the combined effect of several uncertainties surrounding the PMI estimation. This approach communicates the PMI with an associated degree of confidence and provides predictive power on unknown PMI cases.
贝叶斯信念网络(BBNs)可通过对多个尸体变化变量与可观察到的分解效应之间的条件依赖性进行简单且合乎逻辑的图形表示,来应用于解决诸如死后间隔时间(PMI)等逆问题。本研究是首次对三个不同地理区域的人类尸体分解进行交叉比较的回顾性研究。为评估最具影响力的尸体变化变量对分解速率(以总分解得分(TDS)衡量)的影响,研究人员检查了田纳西大学法医人类学研究设施(n = 312)、美国匹兹堡阿勒格尼县法医办公室(n = 250)以及英国西南法医局犯罪现场调查部门(n = 81)的分解数据。利用美国和英国的训练数据创建了两个不同的用于PMI估计的BBNs。进行敏感性分析以确定TDS方差的最具影响力参数,在模型优化过程中排除了影响力较弱的变量(如年龄、性别、衣物)。然后通过额外的验证案例比较BBNs的准确性:美国(n = 28)和英国(n = 10)。两个模型都赋予了PMI预测能力,并考虑了影响分解的尸体变化变量的独特组合。两个模型支持实验假设(即PMI处于或小于先前最后已知存活日期)的平均后验概率分别为86%(美国)和81%(英国)。美国和英国的数据集均未呈现对PMI证据价值“中等”以下支持的任何案例。通过将连贯概率推理应用于PMI估计,提供了一种逻辑解决方案来模拟人类尸体分解的复杂性,该复杂性可量化围绕PMI估计的几个不确定性的综合影响。这种方法以相关的置信度传达PMI,并为未知PMI案例提供预测能力。