Lefèvre Thomas, Lepresle Aude, Chariot Patrick
Department of Forensic Science and Medicine, Hôpital Jean-Verdier (AP-HP), F-93140, Bondy, France,
Int J Legal Med. 2015 Sep;129(5):1163-72. doi: 10.1007/s00414-015-1164-8. Epub 2015 Mar 18.
The search for complex, nonlinear relationships and causality in data is hindered by the availability of techniques in many domains, including forensic science. Linear multivariable techniques are useful but present some shortcomings. In the past decade, Bayesian approaches have been introduced in forensic science. To date, authors have mainly focused on providing an alternative to classical techniques for quantifying effects and dealing with uncertainty. Causal networks, including Bayesian networks, can help detangle complex relationships in data. A Bayesian network estimates the joint probability distribution of data and graphically displays dependencies between variables and the circulation of information between these variables. In this study, we illustrate the interest in utilizing Bayesian networks for dealing with complex data through an application in clinical forensic science. Evaluating the functional impairment of assault survivors is a complex task for which few determinants are known. As routinely estimated in France, the duration of this impairment can be quantified by days of 'Total Incapacity to Work' ('Incapacité totale de travail,' ITT). In this study, we used a Bayesian network approach to identify the injury type, victim category and time to evaluation as the main determinants of the 'Total Incapacity to Work' (TIW). We computed the conditional probabilities associated with the TIW node and its parents. We compared this approach with a multivariable analysis, and the results of both techniques were converging. Thus, Bayesian networks should be considered a reliable means to detangle complex relationships in data.
在包括法医学在内的许多领域,由于技术的可用性,对数据中复杂的非线性关系和因果关系的探索受到了阻碍。线性多变量技术很有用,但也存在一些缺点。在过去十年中,贝叶斯方法已被引入法医学领域。迄今为止,作者们主要专注于为量化效应和处理不确定性提供一种替代传统技术的方法。因果网络,包括贝叶斯网络,可以帮助理清数据中的复杂关系。贝叶斯网络估计数据的联合概率分布,并以图形方式显示变量之间的依赖性以及这些变量之间的信息流通。在本研究中,我们通过临床法医学中的一个应用来说明利用贝叶斯网络处理复杂数据的意义。评估袭击幸存者的功能损伤是一项复杂的任务,目前已知的决定因素很少。在法国,通常按照“完全丧失工作能力天数”(“ITT”)来量化这种损伤的持续时间。在本研究中,我们使用贝叶斯网络方法来确定损伤类型、受害者类别和评估时间是“完全丧失工作能力”(TIW)的主要决定因素。我们计算了与TIW节点及其父节点相关的条件概率。我们将这种方法与多变量分析进行了比较,两种技术的结果趋于一致。因此,贝叶斯网络应被视为理清数据中复杂关系的可靠手段。