Electrocardiogram Analysis for Kratom Users Utilizing Deep Residual Learning Network and Machine Learning

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Kasikrit Damkliang;Jularat Chumnaul;Dania Cheaha;Somchai Sriwiriyajan;Ekkasit Kumarnsit
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Abstract

Kratom (Mitragyna speciosa Korth) is a common tropical plant found in Southeast Asia. Its leaves possess medicinal properties and are used to treat various ailments. However, the effects of kratom extract in terms of biological domains are still concerning. Although considerable studies have been conducted on the effects of kratom usage over the last few years, no study using in silico analysis of kratom users’ electrocardiogram (ECG) has been reported to date. This study aims to examine the long-term effects of kratom consumption using the ECG signals and deep learning (DL) network and machine learning techniques. Raw ECG signals were used as input for training and detecting abnormalities, and a deep residual learning network (DRLN) model was implemented to develop a feature extractor from single-lead datasets; the extracted features were used to train conventional machine learning classifiers. The confounding ECG abnormality factors, namely, age, sex, smoking, alcohol consumption, and exercise, were analyzed for association using the chi-square test. The main results of our study showed that kratom usage is not associated with ECG abnormalities. However, the ECG signal was affected more by gender than by the other factors; it exhibited the highest sensitivity and specificity (score = 0.63). While this study is limited to ECG abnormalities, the results indicate that long-term usage of kratom for its health benefits may be considered a safe and natural practice.
利用深度残差学习网络和机器学习分析桔梗使用者的心电图
桔梗(Mitragyna speciosa Korth)是东南亚常见的热带植物。它的叶子具有药用价值,可用于治疗各种疾病。然而,桔梗提取物在生物领域的影响仍然令人担忧。虽然在过去几年中对使用 kratom 的影响进行了大量研究,但迄今为止还没有关于使用 kratom 的心电图(ECG)进行硅学分析的研究报告。本研究旨在利用心电信号、深度学习(DL)网络和机器学习技术来研究服用 kratom 的长期影响。原始心电信号被用作训练和检测异常的输入,深度残差学习网络(DRLN)模型被用来开发单导联数据集的特征提取器;提取的特征被用来训练传统的机器学习分类器。使用卡方检验分析了年龄、性别、吸烟、饮酒和运动等心电图异常混杂因素的关联性。研究的主要结果表明,服用桔梗与心电图异常无关。然而,心电图信号受性别的影响比受其他因素的影响更大;它表现出最高的灵敏度和特异性(得分 = 0.63)。虽然这项研究仅限于心电图异常,但研究结果表明,长期服用桔梗对健康有益,可被视为一种安全、自然的做法。
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CiteScore
3.70
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