A mechanics-informed machine learning framework for traumatic brain injury prediction in police and forensic investigations.

Yuyang Wei, Jeremy Oldroyd, Phoebe Haste, Jayaratnam Jayamohan, Michael Jones, Nicholas Casey, Jose-Maria Peña, Sonya Baylis, Stan Gilmour, Antoine Jérusalem
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Abstract

Police forensic investigations are not immune to our society's ubiquitous search for better predictive ability. In the particular and very topical case of Traumatic Brain Injury (TBI), police forensic investigations aim at evaluating whether a given impact or assault scenario led to the clinically observed TBI. This question is traditionally answered by means of forensic biomechanics and neurosurgical expertise which cannot provide a fully objective probabilistic measure. To this end, we propose here a numerical framework-based solution coupling biomechanical simulations of a variety of injurious impacts to machine learning training of police reports provided by the UK's Thames Valley Police and the National Crime Agency's National Injury Database. In this approach, the biomechanical predictions of mechanical metrics such as strain and stress distributions are interpreted by the machine learning model by additionally considering assault specific metadata to predict brain injury outcomes. The framework, only taking as input information typically available in police reports, reaches prediction accuracies exceeding 94% for skull fracture, 79% for loss of consciousness and intracranial haemorrhage, and is able to identify the best predictive features for each targeted injury. Overall, the proposed framework offers new avenues for the prediction, directly from police reports, of any TBI related symptom as required by forensic law enforcement investigations.

用于警察和法医调查中创伤性脑损伤预测的机械信息机器学习框架。
我们的社会无处不在地寻求更好的预测能力,警方的法医调查也不能幸免。在创伤性脑损伤(TBI)的特殊和非常热门的情况下,警方法医调查的目的是评估是否一个给定的冲击或攻击场景导致临床观察到的TBI。这个问题传统上是通过法医生物力学和神经外科专业知识来回答的,它们不能提供一个完全客观的概率测量。为此,我们在此提出了一个基于数值框架的解决方案,将各种伤害影响的生物力学模拟与英国泰晤士河谷警察局和国家犯罪局国家伤害数据库提供的警察报告的机器学习培训相结合。在这种方法中,机械指标(如应变和应力分布)的生物力学预测由机器学习模型通过额外考虑攻击特定元数据来预测脑损伤结果来解释。该框架仅将警方报告中通常可用的信息作为输入信息,对颅骨骨折的预测准确率超过94%,对意识丧失和颅内出血的预测准确率超过79%,并且能够确定每种目标损伤的最佳预测特征。总的来说,拟议的框架为直接根据警方报告预测法医执法调查所需的任何与脑损伤相关的症状提供了新的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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