Gastric Disorder Analysis Using Hybrid Optimization with Machine Learning

G. Gurumoorthy, S. Ganesh Vaidyanathan
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Abstract

The stomach and all of its appendages, which include the oesophagus, duodenum, small intestine, and large intestine, amongst others, all play a crucial function within this system. Stomach dysrhythmias, which are linked to problems with the movement of gastrointestinal contents, affect a significant number of individuals all over the globe. These problems include inappropriate digestion (dyspepsia), nausea (vomiting sensation) for no apparent reason, vomiting, abdominal pain, stomach ulcers, gastroesophageal reflux disease, and other disorders. During the process of finding the anomalies, it is possible that a number of techniques, including as imaging, endoscopy, electrogastrogram, and clinical analysis, will be used. Electrogastrography signals, also known as electrogastrograms (EGG), were captured using surface Ag/AgCl electrodes that were put over the stomach in 20 healthy persons before the data was gathered and pre-processed. The datasets were produced from these signals (8 Females and 12 Males). In addition to this, the datasets were obtained from 10 individuals who were suffering from various stomach illnesses (3 Females and 8 Males). In the stage known as “pre-processing,” which needs the obtained dataset to be treated in advance, any noise that was present in the signal is removed. In order to rid the data of any noise and increase the overall quality of the input data, a technique that is known as the Wiener filter is used. A technique known as Hybrid Grey Wolf Optimization with Particle Swarm Optimization is utilized in the process of feature selection. This algorithm is responsible for removing any extraneous data from the features that have been collected from the signal. The procedure is sped up as a result of this. The classifiers get the qualities that have been chosen as their input in order to carry out an analysis of the many stomach disorders, such as primary gastric lymphoma, gastrointestinal stromal tumour (GIST), and neuroendocrine tumor. This enables the classifiers to do the analysis (carcinoid). The Multi-class Feed Forward Neural Network Classifier (MCFFN) is used to carry out the classification process. This classifier provides the stages along with the classes. The accuracy, sensitivity, and specificity of the classification process are taken into account in the calculation of performance measures.
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基于混合优化和机器学习的胃疾病分析
胃和它的附属物,包括食道、十二指肠、小肠和大肠等,在这个系统中都起着至关重要的作用。胃节律障碍与胃肠道内容物的运动问题有关,影响着全球相当多的个体。这些问题包括消化不良(消化不良)、无明显原因的恶心(呕吐感)、呕吐、腹痛、胃溃疡、胃食管反流病和其他疾病。在发现异常的过程中,可能会使用许多技术,包括成像,内窥镜检查,胃电图和临床分析。胃电图信号,也称为胃电图(EGG),是在收集和预处理数据之前,使用表面Ag/AgCl电极在20名健康人的胃上捕获的。数据集是由这些信号(8个雌性和12个雄性)产生的。除此之外,数据集来自10名患有各种胃病的人(3名女性和8名男性)。在被称为“预处理”的阶段,需要提前处理获得的数据集,去除信号中存在的任何噪声。为了去除数据中的任何噪声并提高输入数据的整体质量,使用了一种称为维纳滤波器的技术。在特征选择过程中采用了混合灰狼优化和粒子群优化技术。该算法负责从信号中收集的特征中去除任何无关的数据。因此,程序加快了。分类器获得已选择的质量作为其输入,以便对许多胃疾病进行分析,如原发性胃淋巴瘤,胃肠道间质瘤(GIST)和神经内分泌肿瘤。这使得分类器能够进行分析(类癌)。采用多类前馈神经网络分类器(MCFFN)进行分类。这个分类器提供了阶段和类。在计算绩效指标时,要考虑分类过程的准确性、敏感性和特异性。
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