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利用基于教学优化算法的混合功能模糊小波神经网络进行医学疾病诊断。

Utilizing hybrid functional fuzzy wavelet neural networks with a teaching learning-based optimization algorithm for medical disease diagnosis.

机构信息

Department of Software Engineering, Computer and Mathematics Science College, University of Mosul, Mosul, Iraq.

College of Science, University of Mosul, Mosul, Iraq.

出版信息

Comput Biol Med. 2019 Sep;112:103348. doi: 10.1016/j.compbiomed.2019.103348. Epub 2019 Jul 7.

Abstract

Accurate medical disease diagnosis is considered to be an important classification problem. The main goal of the classification process is to determine the class to which a certain pattern belongs. In this article, a new classification technique based on a combination of The Teaching Learning-Based Optimization (TLBO) algorithm and Fuzzy Wavelet Neural Network (FWNN) with Functional Link Neural Network (FLNN) is proposed. In addition, the TLBO algorithm is utilized for training the new hybrid Functional Fuzzy Wavelet Neural Network (FFWNN) and optimizing the learning parameters, which are weights, dilation and translation. To evaluate the performance of the proposed method, five standard medical datasets were used: Breast Cancer, Heart Disease, Hepatitis, Pima-Indian diabetes and Appendicitis. The efficiency of the proposed method is evaluated using 5-fold cross-validation and 10-fold cross-validation in terms of mean square error (MSE), classification accuracy, running time, sensitivity, specificity and kappa. The experimental results show that the efficiency of the proposed method for the medical classification problems is 98.309%, 91.1%, 91.39%, 88.67% and 93.51% for the Breast Cancer, Heart Disease, Hepatitis, Pima-Indian diabetes and Appendicitis datasets, respectively, in terms of accuracy after 30 runs for each dataset with low computational complexity. In addition, it has been observed that the proposed method has efficient performance compared with the performance of other methods found in the related previous studies.

摘要

准确的医学疾病诊断被认为是一个重要的分类问题。分类过程的主要目标是确定某个模式所属的类别。在本文中,提出了一种新的分类技术,该技术基于教学学习优化(TLBO)算法和模糊小波神经网络(FWNN)与功能链接神经网络(FLNN)的组合。此外,TLBO 算法用于训练新的混合功能模糊小波神经网络(FFWNN)和优化学习参数,即权重、扩张和平移。为了评估所提出方法的性能,使用了五个标准医学数据集:乳腺癌、心脏病、肝炎、皮马印第安糖尿病和阑尾炎。使用 5 折交叉验证和 10 折交叉验证,从均方误差(MSE)、分类准确性、运行时间、灵敏度、特异性和 Kappa 等方面评估了所提出方法的效率。实验结果表明,在所提出的方法中,对于乳腺癌、心脏病、肝炎、皮马印第安糖尿病和阑尾炎数据集,在每个数据集的 30 次运行后,准确性分别为 98.309%、91.1%、91.39%、88.67%和 93.51%,计算复杂度低。此外,与相关先前研究中发现的其他方法的性能相比,观察到所提出的方法具有高效的性能。

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