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用于预测院内心肺复苏后生存失败的人工神经网络

Artificial neural networks for predicting failure to survive following in-hospital cardiopulmonary resuscitation.

作者信息

Ebell M H

机构信息

Department of Family Medicine, Wayne State University, Detroit, MI 48201.

出版信息

J Fam Pract. 1993 Mar;36(3):297-303.

PMID:8454976
Abstract

BACKGROUND

Neural networks are an artificial intelligence technique that uses a set of nonlinear equations to mimic the neuronal connections of biological systems. They have been shown to be useful for pattern recognition and outcome prediction applications, and have the potential to bring artificial intelligence techniques to the personal computers of practicing physicians, assisting them with a variety of medical decisions. It is proposed that such an artificial neural network can be trained, using information available at the time of admission to the hospital, to predict failure to survive following in-hospital cardiopulmonary resuscitation (CPR).

METHODS

The age, sex, heart rate, and 21 other clinical variables were collected on a consecutive series of 218 adult patients undergoing CPR at a 295-bed public acute-care hospital. The data set was divided into two groups. A neural network was trained to predict failure to survive to discharge following CPR, using one group as the training set and the other as the testing set. The procedure was then reversed, and the results of the two networks were combined to form an aggregate network.

RESULTS

The trained aggregate neural network had a sensitivity of 52.1% and a positive predictive value of 97% for the prediction of failure to survive following CPR. The relative risk of actually failing to survive to discharge following CPR for a patient predicted not to survive was 11.3 (95% CI 3.3 to 38.2).

CONCLUSIONS

Predicting failure to survive following CPR is but one possible application of neural network technology. It demonstrates how this technique can assist physicians in medical decision making. Future work should attempt to improve the positive predictive value of the neural network, to consider combining it with an expert system, and to compare it with other predictive tools. Once validated, the network can be distributed as a separate application for use by practicing physicians.

摘要

背景

神经网络是一种人工智能技术,它使用一组非线性方程来模拟生物系统的神经元连接。已证明其在模式识别和结果预测应用中很有用,并且有潜力将人工智能技术引入执业医师的个人电脑中,协助他们做出各种医疗决策。有人提出,可以利用患者入院时可获得的信息训练这样一个人工神经网络,以预测住院期间心肺复苏(CPR)后无法存活的情况。

方法

在一家拥有295张床位的公立急症医院,对连续接受CPR的218例成年患者收集了年龄、性别、心率和其他21个临床变量。数据集被分为两组。使用一组作为训练集,另一组作为测试集,训练一个神经网络来预测CPR后无法存活至出院的情况。然后颠倒程序,将两个网络的结果合并形成一个综合网络。

结果

训练后的综合神经网络对CPR后无法存活的预测敏感性为52.1%,阳性预测值为97%。预测不能存活的患者CPR后实际未能存活至出院的相对风险为11.3(95%可信区间3.3至38.2)。

结论

预测CPR后无法存活只是神经网络技术的一种可能应用。它展示了该技术如何协助医生进行医疗决策。未来的工作应尝试提高神经网络的阳性预测值,考虑将其与专家系统相结合,并与其他预测工具进行比较。一旦得到验证,该网络可以作为一个单独的应用程序分发供执业医师使用。

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