Ouyang N, Ikeda M, Yamauchi K
Department of Medical Information & Medical Records, Nagoya University Hospital, Japan.
Med Biol Eng Comput. 1997 Sep;35(5):556-60. doi: 10.1007/BF02525541.
A feed-forward neural network with back-propagation algorithm is used to distinguish anterior wall myocardial infarction (AI) and non-infarction based on analysis of computerised electrocardiograms. Data used in the study are from 132 patients diagnosed as having AI by automated electrocardiograph analysis. Their ECGs show an abnormal Q-wave (or QS complex) or small R progression in leads V1 and V2. However, 66 of them are diagnosed as old AI from the history, physical examination, echocardiogram and other laboratory data, whereas the other 66 are not. The network is trained with the data from half of the AI and non-infarction patients; respectively. The diagnostic accuracy rate is then tested with the remaining 66 patients (33 infarction, 33 non-infarction) who have not been exposed to the network. The neural network correctly identifies 90.2% of the patients with AI and 93.3% of the patients without infarction. The neural network is capable of diagnosing anterior wall myocardial infarction better than a computer electrocardiograph.
基于计算机化心电图分析,采用带有反向传播算法的前馈神经网络来区分前壁心肌梗死(AI)和非梗死情况。该研究中使用的数据来自132例经自动心电图分析诊断为患有AI的患者。他们的心电图在V1和V2导联显示异常Q波(或QS波群)或R波进展小。然而,根据病史、体格检查、超声心动图和其他实验室数据,其中66例被诊断为陈旧性AI,而另外66例则不是。该网络分别用一半AI患者和非梗死患者的数据进行训练。然后用其余66例未接触过该网络的患者(33例梗死,33例非梗死)测试诊断准确率。神经网络正确识别出90.2%的AI患者和93.3%的非梗死患者。该神经网络在诊断前壁心肌梗死方面比计算机心电图仪表现更好。