Mandel Micha, Israelsohn Azulay Osnat, Zidon Yigal, Tsach Tsadok, Cohen Yaron
Department of Statistics, The Hebrew University of Jerusalem, Mount Scopus, Jerusalem, 9190501, Israel.
Israel National Police Division of Identification and Forensic Science, Bar Lev Haim 1, Jerusalem, 91906, Israel.
J Forensic Sci. 2018 Jul;63(4):1269-1274. doi: 10.1111/1556-4029.13711. Epub 2017 Dec 5.
Classification of particles as gunshot residues (GSRs) is conducted using a semiautomatic approach in which the system first classifies particles based on an automatic elemental analysis, and then, examiners manually analyze particles having compositions which are characteristic of or consistent with GSRs. Analyzing all the particles in the second stage is time consuming with many particles classified by the initial automated system as being potentially GSRs excluded as such by the forensic examiner. In this paper, a new algorithm is developed to improve the initial classification step. The algorithm is based on a binary tree that was trained on almost 16,000 particles from 43 stubs used to sample hands of suspects. The classification algorithm was tested on 5,900 particles from 23 independent stubs and performed very well in terms of false positive and false negative rates. A routine use of the new algorithm can reduce significantly the analysis time of GSRs.
将颗粒分类为枪击残留物(GSRs)采用半自动方法进行,在该方法中,系统首先基于自动元素分析对颗粒进行分类,然后,检验人员手动分析具有GSRs特征或与之相符的成分的颗粒。在第二阶段分析所有颗粒非常耗时,因为许多被初始自动化系统分类为潜在GSRs的颗粒被法医检验人员排除。本文开发了一种新算法来改进初始分类步骤。该算法基于一棵二叉树,该二叉树是在用于对嫌疑人手部进行采样的43个存根上的近16000个颗粒上进行训练的。分类算法在来自23个独立存根的5900个颗粒上进行了测试,在误报率和漏报率方面表现非常出色。新算法的常规使用可以显著减少GSRs的分析时间。