Division of digital and biometric traces, Netherlands Forensic Institute, the Netherlands.
Division of human biological traces, Netherlands Forensic Institute, the Netherlands.
Forensic Sci Int Genet. 2021 May;52:102455. doi: 10.1016/j.fsigen.2020.102455. Epub 2021 Jan 15.
Messenger RNA (mRNA) profiling can identify body fluids present in a stain, yielding information on what activities could have taken place at a crime scene. To account for uncertainty in such identifications, recent work has focused on devising statistical models to allow for probabilistic statements on the presence of body fluids. A major hurdle for practical adoption is that evidentiary stains are likely to contain more than one body fluid and current models are ill-suited to analyse such mixtures. Here, we construct a likelihood ratio (LR) system that can handle mixtures, considering the hypotheses H: the sample contains at least one of the body fluids of interest (and possibly other body fluids); H: the sample contains none of the body fluids of interest (but possibly other body fluids). Thus, the LR-system outputs an LR-value for any combination of mRNA profile and set of body fluids of interest that are given as input. The calculation is based on an augmented dataset obtained by in silico mixing of real single body fluid mRNA profiles. These digital mixtures are used to construct a probabilistic classification method (a 'multi-label classifier'). The probabilities produced are subsequently used to calculate an LR, via calibration. We test a range of different classification methods from the field of machine learning, ways to preprocess the data and multi-label strategies for their performance on in silico mixed test data. Furthermore, we study their robustness to different assumptions on background levels of the body fluids. We find logistic regression works as well as more flexible classifiers, but shows higher robustness and better explainability. We test the system's performance on lab-generated mixture samples, and discuss practical usage in case work.
信使 RNA(mRNA)分析可以识别存在于痕迹中的体液,提供有关在犯罪现场可能发生的活动的信息。为了说明此类鉴定的不确定性,最近的工作重点是设计统计模型,以便对体液的存在做出概率陈述。实际采用的一个主要障碍是证据痕迹可能包含一种以上的体液,而当前的模型不适合分析这种混合物。在这里,我们构建了一个似然比(LR)系统,可以处理混合物,考虑以下假设:H:样本中至少含有一种感兴趣的体液(可能还有其他体液);H:样本中不含有任何感兴趣的体液(但可能含有其他体液)。因此,对于作为输入给出的任何 mRNA 谱和感兴趣的体液集的组合,LR 系统都会输出一个 LR 值。该计算基于通过对真实单一体液 mRNA 谱的计算机混合获得的扩充数据集。这些数字混合物用于构建概率分类方法(“多标签分类器”)。随后,通过校准使用产生的概率来计算 LR。我们从机器学习领域测试了一系列不同的分类方法、数据预处理方法和多标签策略,以了解它们在计算机混合测试数据上的性能。此外,我们研究了它们对不同体液背景水平假设的稳健性。我们发现逻辑回归与更灵活的分类器一样有效,但显示出更高的稳健性和更好的可解释性。我们在实验室生成的混合物样本上测试了该系统的性能,并讨论了在实际工作中的使用情况。