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A neural network approach to coronary heart disease risk assessment based on short-term measurement of RR intervals

机译:基于RR间隔的短期测量的神经网络方法用于冠心病风险评估

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Using short-term heart rate variability (HRV) measurements, this study investigates the relationship between respiratory sinus arrhythmia (RSA) and Coronary Heart Disease (CHD) risk in asymptomatic patients who nevertheless exhibit CHD risk factors. The aim is to train an artificial neutral network (ANN) to recognise HRV patterns related to CHD risk via a Poincare plot encoding. The ANN correctly classified 6 out of 9 'high' 6 out of 9 'medium', and 6 out of 9 'low' risk test cases. It is expected that this result can be improved by increasing the number of input neurons and by using different preprocessing techniques. This study showed that an ANN approach can be successful in detecting individuals at varying risk of CHD based on short-term HRV measurements under controlled breathing.
机译:使用短期心率变异性(HRV)测量,本研究调查了仍表现出CHD危险因素的无症状患者的呼吸道窦性心律不齐(RSA)与冠心病(CHD)风险之间的关系。目的是训练一个人工神经网络(ANN),以通过Poincare图编码识别与冠心病风险相关的HRV模式。 ANN正确地将9个“中”中的6个中的6个“中”中的6个和9个“低”风险中的6个正确分类。预期可以通过增加输入神经元的数量和使用不同的预处理技术来改善此结果。这项研究表明,基于在受控呼吸下进行的短期HRV测量,ANN方法可以成功地检测出处于各种CHD风险中的个体。

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