Stomach Disorder Detection and Analysis using Hybrid Learning Vector Quantization with African Buffalo Optimization Algorithm

Mohammed Baljon
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Abstract

The human digestive system's electrical activity may be recorded noninvasively by Electrogastrography (EGG). Electrogastrograms are recordings of the electrical activity produced by the stomach muscles. EGG Several gastrointestinal disorders may be diagnosed and their severity measured using EGG signal properties. The literature has several contributions to the categorization of EGG signals. The majority of them make use of either the EGG's frequency or time data. The wide variety of EGG signals is a challenge for current automated categorization methods. Therefore, this study's objective is to develop a lightweight classifier that achieves high classification accuracy while using little processing resources. To acquire normal and abnormal EGG signals at a reasonable cost, a three-electrode measuring device is created here, with classification performed by a hybrid of Linear Vector Quantization and the African Buffalo Search Algorithm (HLVQ-ASO). The results show that the information richness of recorded EGG signals from healthy persons is greater for EGG signals captured using a surface electrode with a contact diameter of 19 mm as compared to 16 mm. To demonstrate their validity and degree of classification accuracy, the results computed using the suggested classifiers are compared with the current classifiers like Artificial Neural Network, Multimodal Support Vector Machine (MSVM), and Improved Convolutional Neural Network (CNN). Additionally, the HLVQ-ASO-based classification method is effective in differentiating between normal and diabetic EGG signals, found a sensitivity of 97% and a specificity of 98.8%. For a dataset of 500 samples, the classification accuracy is 97%.
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利用混合学习矢量量化与非洲水牛优化算法进行胃病检测与分析
人体消化系统的电活动可通过胃电图(EGG)进行无创记录。胃电图是对胃部肌肉产生的电活动的记录。EGG 可通过 EGG 信号特性诊断出几种胃肠道疾病并测量其严重程度。文献对 EGG 信号的分类做出了一些贡献。其中大部分利用了 EGG 的频率或时间数据。脑电信号种类繁多,这对目前的自动分类方法是一个挑战。因此,本研究的目标是开发一种轻量级分类器,在使用少量处理资源的同时实现较高的分类准确率。为了以合理的成本获取正常和异常脑电信号,本研究创建了一个三电极测量装置,并采用线性矢量量化和非洲水牛搜索算法(HLVQ-ASO)混合算法进行分类。结果表明,使用接触直径为 19 毫米的表面电极采集的健康人 EGG 信号的信息丰富度高于使用接触直径为 16 毫米的表面电极采集的 EGG 信号。为了证明建议分类器的有效性和分类准确度,我们将使用建议分类器计算的结果与人工神经网络、多模态支持向量机(MSVM)和改进型卷积神经网络(CNN)等现有分类器进行了比较。此外,基于 HLVQ-ASO 的分类方法能有效区分正常和糖尿病脑电信号,灵敏度为 97%,特异度为 98.8%。对于 500 个样本的数据集,分类准确率为 97%。
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