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A new method to medical diagnosis: Artificial immune recognition system (AIRS) with fuzzy weighted pre-processing and application to ECG arrhythmia

机译:一种新的医学诊断方法:带有模糊加权预处理的人工免疫识别系统(AIRS)及其在ECG心律失常中的应用

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Changes in the normal rhythm of a human heart may result in different cardiac arrhythmias, which may be immediately fatal or cause irreparable damage to the heart sustained over long periods of time. The ability to automatically identify arrhythmias from ECG recordings is important for clinical diagnosis and treatment. Artificial immune systems (AISs) is a new but effective branch of artificial intelligence. Among the systems proposed in this field so far, artificial immune recognition system (AIRS), which was proposed by A. Watkins, has showed an effective and intriguing performance on the problems it was applied. Previously, AIRS was applied a range of problems including machine-learning benchmark problems and medical classification problems like breast cancer, diabets, liver disorders classification problems. The conducted medical classification task was performed for ECG arrhythmia data taken from UCI repository of machine-learning. Firsly, ECG dataset is normalized in the range of [0,1] and is weighted with fuzzy weighted pre-processing. Then, weighted input values obtained from fuzzy weighted pre-processing is classified by using AIRS classifier system. In this study, fuzzy weighted pre-processing, which can be improved by ours, is a new method and firstly, it is applied to ECG dataset. Classifier system consists of three stages: 50-50% of traing-test dataset, 70-30% of traing-test dataset and 80-20% of traing-test dataset, subsequently, the obtained classification accuries: 78.79, 75.00 and 80.77%.
机译:人心脏正常节律的变化可能导致不同的心律失常,这可能立即致命或长时间长时间对心脏造成不可挽回的损害。从ECG记录中自动识别心律不齐的能力对于临床诊断和治疗很重要。人工免疫系统(AISs)是人工智能的一个新的但有效的分支。迄今为止,在该领域提出的系统中,由A. Watkins提出的人工免疫识别系统(AIRS)在其应用问题上显示了有效而有趣的性能。以前,AIRS被应用了一系列问题,包括机器学习基准问题和医学分类问题,例如乳腺癌,糖尿病,肝病分类问题。对从UCI机器学习库中获取的ECG心律失常数据执行了医疗分类任务。首先,ECG数据集在[0,1]范围内进行归一化,并使用模糊加权预处理对其进行加权。然后,使用AIRS分类器系统对从模糊加权预处理获得的加权输入值进行分类。在这项研究中,我们可以改进的模糊加权预处理是一种新方法,首先将其应用于ECG数据集。分类器系统由三个阶段组成:训练测试数据集的50-50%,训练测试数据集的70-30%和训练测试数据集的80-20%,随后,获得的分类精度为:78.79、75.00和80.77% 。

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