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基于机器分类器的声门图信号的非侵入式甲状腺检测。

Non-invasive thyroid detection based on electroglottogram signal using machine learning classifiers.

机构信息

Department of Biomedical Engineering, college of Engineering and Technology, SRM Institute of Science and Technology, Kattankulathur, Tamil Nadu, India.

Department of Electronics and Communication Engineering, College of Engineering and Technology, SRM Institute of Science and Technology, Kattankulathur, Tamil Nadu, India.

出版信息

Proc Inst Mech Eng H. 2021 Oct;235(10):1128-1145. doi: 10.1177/09544119211028070. Epub 2021 Jun 27.

Abstract

Thyroid is a butterfly shaped gland located in the neck region. Hormones are secreted by the thyroid gland that is responsible for various functions that maintain metabolism of the body. The variance in secretion of the hormones causes disorders such as Hyperthyroidism or Hypothyroidism. Electroglottography signal is a bio signal which represents the impedance that exist between the glottis regions. The study aims at design and development of an hardware circuit for the acquisition of Electroglottogram signal from normal and thyroid subjects is proposed followed by feature extraction from the acquired bio signal is performed. Further, machine learning classifiers were used to classify the normal and thyroid individuals. This modality of acquisition is non-invasive. Performance evaluation is done by testing various classifiers to study the accuracy. The classifiers tested were Random Forest, Random Tree, Bayes Net, Multilayer Perceptron, Simple Logistic classifier, and One-R classifier. Classifiers such as Random Forest, Random Tree, and Multilayer Perceptron showed high accuracy. The accuracy estimated by these classifiers was tested and its ROC curves with AUC scores were derived. The highest accuracy was reported for Simple Logistic classifier which was about 95.1%. Random Forest and Random Tree reported 93.5% and 91.9% respectively. Similarly, Multilayer Perceptron and Bayes Net gave 93.5% and 91.9%. The One-R classifier algorithm reported the lowest accuracy of 90.3% among the studied classifier algorithms. The ROC-AUC score for the classifiers were also reported to be more than 0.9 which is considered more promising and supports the acquisition and processing methodology. Hence the proposed technique can be efficiently used to diagnose thyroid non-invasively.

摘要

甲状腺是位于颈部区域的蝴蝶状腺体。甲状腺分泌的激素负责维持身体新陈代谢的各种功能。激素分泌的变化会导致甲状腺功能亢进或甲状腺功能减退等疾病。声门电图信号是一种生物信号,代表声门区域之间存在的阻抗。本研究旨在设计和开发一种用于从正常和甲状腺患者中获取声门电图信号的硬件电路,并对所获取的生物信号进行特征提取。进一步,使用机器学习分类器对正常和甲状腺个体进行分类。这种采集方式是非侵入性的。通过测试各种分类器来评估性能,以研究准确性。测试的分类器包括随机森林、随机树、贝叶斯网络、多层感知机、简单逻辑分类器和 One-R 分类器。随机森林、随机树和多层感知机等分类器表现出较高的准确性。通过这些分类器估计的准确性进行了测试,并得出了其 ROC 曲线和 AUC 分数。简单逻辑分类器的准确性最高,约为 95.1%。随机森林和随机树分别报告了 93.5%和 91.9%。同样,多层感知机和贝叶斯网络的准确性分别为 93.5%和 91.9%。One-R 分类器算法报告的准确性最低,为 90.3%,在研究的分类器算法中。还报告了分类器的 ROC-AUC 分数超过 0.9,这被认为更有前途,并支持采集和处理方法。因此,所提出的技术可以有效地用于甲状腺的非侵入性诊断。

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