Kaszubinski Sierra F, Pechal Jennifer L, Smiles Katelyn, Schmidt Carl J, Jordan Heather R, Meek Mariah H, Benbow M Eric
Department of Integrative Biology, Michigan State University, East Lansing, MI, United States.
Department of Entomology, Michigan State University, East Lansing, MI, United States.
Front Microbiol. 2020 Sep 4;11:555347. doi: 10.3389/fmicb.2020.555347. eCollection 2020.
The postmortem microbiome plays an important functional role in host decomposition after death. Postmortem microbiome community successional patterns are specific to body site, with a significant shift in composition 48 h after death. While the postmortem microbiome has important forensic applications for postmortem interval estimation, it also has the potential to aid in manner of death (MOD) and cause of death (COD) determination as a reflection of antemortem health status. To further explore this association, we tested beta-dispersion, or the variability of microbiomes within the context of the "Anna Karenina Principle" (AKP). The foundational principle of AKP is that stressors affect microbiomes in unpredictable ways, which increases community beta-dispersion. We hypothesized that cases with identified M/CODs would have differential community beta-dispersion that reflected antemortem conditions, specifically that cardiovascular disease and/or natural deaths would have higher beta-dispersion compared to other deaths (e.g., accidents, drug-related deaths). Using a published microbiome data set of 188 postmortem cases (five body sites per case) collected during routine autopsy in Wayne County (Detroit), MI, we modeled beta-dispersion to test for M/COD associations . Logistic regression models of beta-dispersion and case demographic data were used to classify M/COD. We demonstrated that beta-dispersion, along with case demographic data, could distinguish among M/COD - especially cardiovascular disease and drug related deaths, which were correctly classified in 79% of cases. Binary logistic regression models had higher correct classifications than multinomial logistic regression models, but changing the defined microbial community (e.g., full vs. non-core communities) used to calculate beta-dispersion overall did not improve model classification or M/COD. Furthermore, we tested our analytic approach on a case study that predicted suicides from other deaths, as well as distinguishing MOD (e.g., homicides vs. suicides) within COD (e.g., gunshot wound). We propose an analytical workflow that combines postmortem microbiome indicator taxa, beta-dispersion, and case demographic data for predicting MOD and COD classifications. Overall, we provide further evidence the postmortem microbiome is linked to the host's antemortem health condition(s), while also demonstrating the potential utility of including beta-dispersion (a non-taxon dependent approach) coupled with case demographic data for death determination.
死后微生物群落在宿主死后分解过程中发挥着重要的功能作用。死后微生物群落的演替模式因身体部位而异,死后48小时其组成会发生显著变化。虽然死后微生物群在死后间隔时间估计方面具有重要的法医应用价值,但它也有可能作为生前健康状况的反映,有助于确定死亡方式(MOD)和死因(COD)。为了进一步探究这种关联,我们在“安娜·卡列尼娜原则”(AKP)的背景下测试了β-离散度,即微生物群的变异性。AKP的基本原理是应激源以不可预测的方式影响微生物群,这会增加群落的β-离散度。我们假设,已确定M/COD的病例会有不同的群落β-离散度,反映生前状况,具体而言,与其他死亡情况(如事故、药物相关死亡)相比,心血管疾病和/或自然死亡会有更高的β-离散度。利用密歇根州底特律韦恩县常规尸检期间收集的188例死后病例(每例五个身体部位)的已发表微生物群数据集,我们对β-离散度进行建模,以测试M/COD关联。使用β-离散度和病例人口统计学数据的逻辑回归模型对M/COD进行分类。我们证明,β-离散度以及病例人口统计学数据可以区分M/COD,尤其是心血管疾病和药物相关死亡,在79%的病例中被正确分类。二元逻辑回归模型的正确分类率高于多项逻辑回归模型,但总体上改变用于计算β-离散度的定义微生物群落(如完整群落与非核心群落)并不能改善模型分类或M/COD。此外,我们在一个案例研究中测试了我们的分析方法,该研究预测自杀与其他死亡情况,并在死因(如枪伤)内区分MOD(如杀人与自杀)。我们提出了一种分析工作流程,将死后微生物群指示分类群、β-离散度和病例人口统计学数据结合起来,用于预测MOD和COD分类。总体而言,我们提供了进一步的证据,证明死后微生物群与宿主生前健康状况相关,同时也证明了将β-离散度(一种非分类群依赖方法)与病例人口统计学数据结合用于死亡判定的潜在效用。