基于Alopex算法的神经网络对心肌梗死患者长期生命状态的估计

W. Kostis, C. Yi, E. Micheli-Tzanakou
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引用次数: 0

摘要

一个大型数据库(心肌梗死数据采集系统,MIDAS)包括1986年和1987年在新泽西州发生的所有49,250例心肌梗死,随访时间长达5年,用于神经网络的开发和测试。由于数据库中包含的信息不足以100%准确地预测所有患者的生命状态,因此开发了一种能够根据给定时间段内死亡的概率对患者进行分类的神经网络,而不是对给定患者在未来给定时间的死亡或存活进行分类。还开发了一种算法,以适应相同的输入向量与不同的输出(重要状态)相关联的情况,并开发了一种线性输出调整方法来描述每个预测的置信度。神经网络能够学习,并成功地预测了6个月时的生命状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of long-term vital status of patients after myocardial infarction using a neural network based on the Alopex algorithm
A large database (Myocardial Infarction Data Acquisition System, or MIDAS) including all 49,250 myocardial infarctions that occurred in the state of New Jersey in 1986 and 1987 with follow-up as long as five years was used in the development and testing of the neural networks. Since the information included in the database was not sufficient to allow the exact prediction of vital status in all patients with 100% accuracy, a neural network able to categorize patients according to the probability of dying within a given period of time rather than predicting categorically whether a given patient will be dead or alive at a given time in the future was developed. An algorithm to accommodate cases where identical input vectors were associated with different outputs (vital status) and a method of linear output adjustment to describe the degree of confidence of each prediction were also developed. The neural network was able to learn and was successful in predicting vital status at six months.<>
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