New perspectives of forensic pathology through machine learning approach on autopsy data: a pilot study.

Q2 Medicine
F Cordasco, M A Sacco, S Gualtieri, P Tarzia, G Pulpito, I Aquila
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引用次数: 0

Abstract

Background: The analysis, interpretation and storage of information is entrusted to the individual expert, who bases his judgments on the knowledge resulting from the experience. The aim of this experimental study is to analyse and introduce a new line of research applicable to forensic pathology, based on the use of artificial intelligence techniques as a possible tool for data collection and analysis.

Methods: The sample analysed is represented by judicial autop-sies performed at the University of Catanzaro from 01/01/2020 to 31/12/2021. For each case were performed: study of medical records; autopsy; histological examinations; toxicological analysis of blood samples. Continuous variables were presented as means ± standard deviations, and categorical variables were expressed as percentages. A random forest regression model was conducted, as a machine learning approach, to estimate the importance of individual solid organ weight variables in predicting cause of death.

Conclusions: This study aimed to evaluate autopsy data to aid in the description and study of forensic cases, using a machine learning approach. To date, this study appears to be the first to evaluate the weight of organs in predicting a cause of death. Artificial intelligence techniques are an optimal solution in solving forensic dilemmas. The results of this study demonstrate that routine data can be submitted using machine learning techniques in order to identify key elements of procedures that provide more information in relation to the predic-tion of cause of death.

通过尸检数据的机器学习方法开辟法医病理学的新视角:一项试点研究。
背景:信息的分析、解释和存储由专家个人负责,而专家的判断则以经验知识为基础。本实验研究的目的是分析和介绍一种适用于法医病理学的新研究方法,其基础是使用人工智能技术作为数据收集和分析的可能工具:分析的样本是卡坦扎罗大学在 2020 年 1 月 1 日至 2021 年 12 月 31 日期间进行的司法解剖。对每个病例都进行了病历研究、尸体解剖、组织学检查和血液样本毒理学分析。连续变量以平均值 ± 标准差表示,分类变量以百分比表示。作为一种机器学习方法,采用随机森林回归模型来估算各个实体器官重量变量在预测死因方面的重要性:本研究旨在利用机器学习方法评估尸检数据,以帮助法医案件的描述和研究。迄今为止,这项研究似乎是首次评估器官重量在预测死因中的作用。人工智能技术是解决法医难题的最佳方案。这项研究的结果表明,可以使用机器学习技术提交常规数据,以确定程序的关键要素,从而为死因预测提供更多信息。
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来源期刊
Clinica Terapeutica
Clinica Terapeutica PHARMACOLOGY & PHARMACY-
CiteScore
2.50
自引率
0.00%
发文量
124
审稿时长
6-12 weeks
期刊介绍: La Clinica Terapeutica è una rivista di Clinica e Terapia in Medicina e Chirurgia, fondata nel 1951 dal Prof. Mariano Messini (1901-1980), Direttore dell''Istituto di Idrologia Medica dell''Università di Roma “La Sapienza”. La rivista è pubblicata come “periodico bimestrale” dalla Società Editrice Universo, casa editrice fondata nel 1945 dal Comm. Luigi Pellino. La Clinica Terapeutica è indicizzata su MEDLINE, INDEX MEDICUS, EMBASE/Excerpta Medica.
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