Faris A M, Wang H-H, Tarone A M, Grant W E
Department of Entomology, Texas A&M University, TAMU 2475, College Station, TX 77843-2475 (
Department of Wildlife & Fisheries Sciences, Texas A&M University, TAMU 2258, College Station, TX 77843-2258 (
J Med Entomol. 2016 Sep 1;53(5):1117-1130. doi: 10.1093/jme/tjw070.
Estimates of insect age can be informative in death investigations and, when certain assumptions are met, can be useful for estimating the postmortem interval (PMI). Currently, the accuracy and precision of PMI estimates is unknown, as error can arise from sources of variation such as measurement error, environmental variation, or genetic variation. Ecological models are an abstract, mathematical representation of an ecological system that can make predictions about the dynamics of the real system. To quantify the variation associated with the pre-appearance interval (PAI), we developed an ecological model that simulates the colonization of vertebrate remains by Cochliomyia macellaria (Fabricius) (Diptera: Calliphoridae), a primary colonizer in the southern United States. The model is based on a development data set derived from a local population and represents the uncertainty in local temperature variability to address PMI estimates at local sites. After a PMI estimate is calculated for each individual, the model calculates the maximum, minimum, and mean PMI, as well as the range and standard deviation for stadia collected. The model framework presented here is one manner by which errors in PMI estimates can be addressed in court when no empirical data are available for the parameter of interest. We show that PAI is a potential important source of error and that an ecological model is one way to evaluate its impact. Such models can be re-parameterized with any development data set, PAI function, temperature regime, assumption of interest, etc., to estimate PMI and quantify uncertainty that arises from specific prediction systems.
昆虫年龄的估计在死亡调查中可能具有参考价值,并且在满足某些假设时,可用于估计死后间隔时间(PMI)。目前,由于测量误差、环境变化或基因变异等变异来源可能会产生误差,PMI估计的准确性和精确性尚不清楚。生态模型是生态系统的一种抽象数学表示,可以对真实系统的动态进行预测。为了量化与出现前间隔时间(PAI)相关的变异,我们开发了一种生态模型,该模型模拟了美国南部主要尸食性昆虫——蛆症金蝇(Fabricius)(双翅目:丽蝇科)对脊椎动物尸体的定殖过程。该模型基于从当地种群获得的发育数据集,并考虑了当地温度变化的不确定性,以估计当地地点的PMI。在为每个个体计算PMI估计值后,该模型会计算最大、最小和平均PMI,以及所收集虫态的范围和标准差。当没有感兴趣参数的实证数据时,本文提出的模型框架是一种在法庭上解决PMI估计误差的方法。我们表明,PAI是一个潜在的重要误差来源,而生态模型是评估其影响的一种方法。这种模型可以用任何发育数据集、PAI函数、温度状况、感兴趣的假设等重新参数化,以估计PMI并量化特定预测系统产生的不确定性。