医学
逻辑回归
机器学习
改良兰金量表
人工神经网络
人工智能
随机森林
可预测性
冲程(发动机)
深度学习
内科学
缺血性中风
统计
计算机科学
缺血
工程类
机械工程
数学
作者
JoonNyung Heo,Jihoon G. Yoon,Hyungjong Park,Young Dae Kim,Hyo Suk Nam,Ji Hoe Heo
出处
期刊:Stroke
[Lippincott Williams & Wilkins]
日期:2019-03-20
卷期号:50 (5): 1263-1265
被引量:614
标识
DOI:10.1161/strokeaha.118.024293
摘要
Background and Purpose- The prediction of long-term outcomes in ischemic stroke patients may be useful in treatment decisions. Machine learning techniques are being increasingly adapted for use in the medical field because of their high accuracy. This study investigated the applicability of machine learning techniques to predict long-term outcomes in ischemic stroke patients. Methods- This was a retrospective study using a prospective cohort that enrolled patients with acute ischemic stroke. Favorable outcome was defined as modified Rankin Scale score 0, 1, or 2 at 3 months. We developed 3 machine learning models (deep neural network, random forest, and logistic regression) and compared their predictability. To evaluate the accuracy of the machine learning models, we also compared them to the Acute Stroke Registry and Analysis of Lausanne (ASTRAL) score. Results- A total of 2604 patients were included in this study, and 2043 (78%) of them had favorable outcomes. The area under the curve for the deep neural network model was significantly higher than that of the ASTRAL score (0.888 versus 0.839; P<0.001), while the areas under the curves of the random forest (0.857; P=0.136) and logistic regression (0.849; P=0.413) models were not significantly higher than that of the ASTRAL score. Using only the 6 variables that are used for the ASTRAL score, the performance of the machine learning models did not significantly differ from that of the ASTRAL score. Conclusions- Machine learning algorithms, particularly the deep neural network, can improve the prediction of long-term outcomes in ischemic stroke patients.
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