基于神经网络递归规则提取算法的计算机辅助心脏病诊断

Manomita Chakraborty, S. K. Biswas
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摘要

近几十年来,致命性心脏病(HD)或心血管疾病(CVD)的死亡率在世界范围内急剧上升。HD是一种非常危险的疾病,在人群中普遍存在,如果及早发现是可以治疗的。但在大多数情况下,这种疾病直到变得严重时才被诊断出来。因此,有必要开发一种有效的系统,能够准确诊断HD,并提供疾病的潜在原因[危险因素(RFs)]的简明描述,以便将来HD可以通过管理主要RFs来控制。最近,研究人员正在使用各种机器学习算法来诊断HD,其中神经网络(NN)因其高性能而吸引了大量的人。但神经网络的主要障碍是它的黑箱性质,即它无法解释决策。因此,作为这个陷阱的解决方案,规则提取算法可以非常有效,因为它们可以从具有高预测精度的神经网络中提取可解释的决策规则。许多基于神经的规则提取算法已经成功地应用于各种医学诊断问题。本研究评估了HD诊断的规则提取算法的性能,特别是那些从神经网络递归地构建规则的算法。因为它们对规则的子空间进行细分直到精度提高,所以递归算法以提供高精度的可解释决策而闻名。实验结果验证了递归规则提取算法在HD诊断中的有效性。随着主要rf的显著数据范围,达到了82.59%的最高精度。
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Computer-Aided Heart Disease Diagnosis Using Recursive Rule Extraction Algorithms from Neural Networks
Mortality rate due to fatal heart disease (HD) or cardiovascular disease (CVD) has increased drastically over the world in recent decades. HD is a very hazardous problem prevailing among people which is treatable if detected early. But in most of the cases, the disease is not diagnosed until it becomes severe. Hence, it is requisite to develop an effective system which can accurately diagnosis HD and provide a concise description for the underlying causes [risk factors (RFs)] of the disease, so that in future HD can be controlled only by managing the primary RFs. Recently, researchers are using various machine learning algorithms for HD diagnosis, and neural network (NN) is one among them which has attracted tons of people because of its high performance. But the main obstacle with a NN is its black-box nature, i.e., its incapability in explaining the decisions. So, as a solution to this pitfall, the rule extraction algorithms can be very effective as they can extract explainable decision rules from NNs with high prediction accuracies. Many neural-based rule extraction algorithms have been applied successfully in various medical diagnosis problems. This study assesses the performance of rule extraction algorithms for HD diagnosis, particularly those that construct rules recursively from NNs. Because they subdivide a rule’s subspace until the accuracy improves, recursive algorithms are known for delivering interpretable decisions with high accuracy. The recursive rule extraction algorithms’ efficacy in HD diagnosis is demonstrated by the results. Along with the significant data ranges for the primary RFs, a maximum accuracy of 82.59% is attained.
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