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Optimal weighted feature vector and deep belief network for medical data classification

机译:用于医疗数据分类的最佳加权特征向量和深度信仰网络

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摘要

Medical data classification is the process of transforming descriptions of medical diagnoses and procedures into universal medical code numbers. The diagnoses and procedures are usually taken from a variety of sources within the healthcare record, such as the transcription of the physician's notes, laboratory results, radiologic results and other sources. However, there exist many frequency distribution problems in these domains. Hence, this paper intends to develop an advanced and precise medical data classification approach for diabetes and breast cancer dataset. With the knowledge of the features and challenges persisting with the state-of-the-art classification methods, deep learning-based medical data classification methodology is proposed here. It is well known that deep learning networks learn directly from the data. In this paper, the medical data is dimensionally reduced using Principle Component Analysis (PCA). The dimensionally reduced data are transformed by multiplying by a weighting factor, which is optimized using Whale Optimization Algorithm (WOA), to obtain the maximum distance between the features. As a result, the data are transformed into a label-distinguishable plane under which the Deep Belief Network (DBN) is adopted to perform the deep learning process, and the data classification is performed. Further, the proposed WOA-based DBN (WOADBN) method is compared with the Neural Network (NN), DBN, Generic Algorithm-based NN (GANN), GADBN, Particle Swarm Optimization (PSONN), PSO-based DBN (PSODBN), WOA-based NN (WOANN) techniques and the results are obtained, which shows the superiority of proposed algorithm over conventional methods.
机译:医疗数据分类是将医疗诊断和程序转换为通用医疗代码的过程的过程。诊断和程序通常从医疗记录中的各种来源中获取,例如医生的注释,实验室结果,放射学结果和其他来源的转录。但是,这些域中存在许多频率分布问题。因此,本文旨在为糖尿病和乳腺癌数据集发育先进和精确的医学数据分类方法。凭借持续存在最先进的分类方法的特征和挑战,提出了基于深度学习的医学数据分类方法。众所周知,深度学习网络直接从数据学习。在本文中,使用原理分析(PCA),医疗数据尺寸减少。尺寸减小的数据通过乘以加权因子来改变,这通过鲸瓦优化算法(WOA)进行了优化,以获得所述特征之间的最大距离。结果,将数据转换为标签可区分平面,在该标签可区分平面下,采用深度信念网络(DBN)执行深度学习过程,并且执行数据分类。此外,将所提出的基于WOA的DBN(WOODBN)方法与神经网络(NN),DBN,基于通用算法的NN(GANN),GADBN,粒子群优化(PSONN),基于PSO的DBN(PSODBN)进行比较,基于WOA的NN(WOANN)技术和结果,其示出了通过传统方法的提出算法的优越性。

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