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Diagnostic information extractin from automated ECG analysis in anterior myocardial infarction using neural networks

机译:基于神经网络的前心肌梗死自动化心电图分析的诊断信息提取

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The diagnostic algorithm in currently available automated ECG analysis mainly uses the "if-then" rule, according to which it is diffiult to extract ambiguous medical information from ECG data sufficiently enough to make an accurate diagnosis. There is a large number of patients who are falsely diagnosed a having cardiac diseases by automated ECG analysis, despite of the fact that they do not actually suffer from the diseases. The authors have devised a new differentiation technique by applying neural networks to ECG diagnosis of anterior myocardial infarctin,which is high in both sensitivity and specificity. in this study, we evaluated the performance of this neural network system in differentiating cases with anterior myocardial infarction from those without the disease, using patients who had been classified into the category of "abnormal" by automated ECG analysis and were later found on reexamination by cardiologists to be included in the category of "not abnormal." The system correctly differentiated between the two categories with a recognition rate of 91.9
机译:当前可用的自动化ECG分析中的诊断算法主要使用“IF-DEL”规则,根据该规则,它是从ECG数据中提取暧昧的医疗信息,足以准确诊断。尽管它们实际上并未患有疾病,但仍有大量患者通过自动化的心电图分析被自动化的ECG分析患有心脏病。作者通过将神经网络应用于前心肌梗死的ECG诊断,设计了一种新的差异化技术,这在敏感性和特异性都很高。在这项研究中,我们评估了这种神经网络系统的性能在患有未经疾病的前期心肌梗塞的情况下,使用自动化的心电图分析分类为“异常”类别的患者,并在重新审查中发现心脏病学家包含在“不正常”的类别中。系统正确地区分了两类,识别率为91.9

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