分析一氧化碳中毒后苍白球坏死的人工智能算法。

IF 2.7 4区 医学 Q3 TOXICOLOGY Human & Experimental Toxicology Pub Date : 2023-01-01 DOI:10.1177/09603271231190906
Ming-Jen Chan, Ching-Chih Hu, Wen-Hung Huang, Ching-Wei Hsu, Tzung-Hai Yen, Cheng-Hao Weng
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引用次数: 0

摘要

苍白球坏死(GPN)是一氧化碳(CO)中毒患者典型的神经影像学特征之一。目前的临床指南建议对有意识障碍的一氧化碳中毒患者进行神经影像学检查,而不是常规筛查,这可能会导致未诊断的GPN。我们旨在开发一种人工智能算法来预测CO中毒患者的GPN。我们纳入了2000年至2019年间长庚医院的CO中毒患者的神经图像。我们在入院第一天收集了41个临床和实验室参数,用于算法开发。我们使用了五重交叉验证,并应用了几种机器学习算法。随机森林分类器(RFC)在我们的队列中提供了最好的预测性能。261例CO中毒患者中,52例出现GPN。使用基于RFC的人工智能模型的人工智能算法实现了准确率=79.2±2.6%,灵敏度=77.7%,精度得分=81.9±3.4%,F1得分=73.2±1.8%。接收器工作特性下的面积约为0.64。前五个加权变量是血小板计数、羧基血红蛋白、格拉斯哥昏迷量表、肌酸酐和血红蛋白。我们基于RFC的算法是第一个预测CO中毒患者GPN的算法,并提供了公平的预测能力。需要进一步的研究来验证我们的发现。
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An artificial intelligence algorithm for analyzing globus pallidus necrosis after carbon monoxide intoxication.

Globus pallidus necrosis (GPN) is one of typical neurological imaging features in patients with carbon monoxide (CO) poisoning. Current clinical guideline recommends neurological imaging examination for CO-intoxicated patients with conscious disturbance rather than routine screening, which may lead to undiagnosed GPN. We aimed to develop an artificial intelligence algorithm for predicting GPN in CO intoxication patients. We included CO intoxication patients with neurological images between 2000 and 2019 in Chang Gung Memorial Hospital. We collected 41 clinical and laboratory parameters on the first day of admission for algorithm development. We used fivefold cross validation and applied several machine learning algorithms. Random forest classifier (RFC) provided the best predictive performance in our cohort. Among the 261 patients with CO intoxication, 52 patients presented with GPN. The artificial intelligence algorithm using the RFC-based AI model achieved an accuracy = 79.2 ± 2.6%, sensitivity = 77.7%, precision score = 81.9 ± 3.4%, and F1 score = 73.2 ± 1.8%. The area under receiver operating characteristic was approximately 0.64. Top five weighted variables were Platelet count, carboxyhemoglobin, Glasgow Coma scale, creatinine, and hemoglobin. Our RFC-based algorithm is the first to predict GPN in patients with CO intoxication and provides fair predictive ability. Further studies are needed to validate our findings.

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来源期刊
CiteScore
5.70
自引率
3.60%
发文量
128
审稿时长
2.3 months
期刊介绍: Human and Experimental Toxicology (HET), an international peer reviewed journal, is dedicated to publishing preclinical and clinical original research papers and in-depth reviews that comprehensively cover studies of functional, biochemical and structural disorders in toxicology. The principal aim of the HET is to publish timely high impact hypothesis driven scholarly work with an international scope. The journal publishes on: Structural, functional, biochemical, and molecular effects of toxic agents; Studies that address mechanisms/modes of toxicity; Safety evaluation of novel chemical, biotechnologically-derived products, and nanomaterials for human health assessment including statistical and mechanism-based approaches; Novel methods or approaches to research on animal and human tissues (medical and veterinary patients) investigating functional, biochemical and structural disorder; in vitro techniques, particularly those supporting alternative methods
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