A CNN-Based Autoencoder and Machine Learning Model for Identifying Betel-Quid Chewers Using Functional MRI Features

被引:5
作者
Ho, Ming-Chou [1 ,2 ]
Shen, Hsin-An [3 ]
Chang, Yi-Peng Eve [4 ]
Weng, Jun-Cheng [3 ,5 ,6 ,7 ]
机构
[1] Chung Shan Med Univ, Dept Psychol, Taichung 40201, Taiwan
[2] Chung Shan Med Univ Hosp, Clin Psychol Room, Taichung 40201, Taiwan
[3] Chang Gung Univ, Bachelor Program Artificial Intelligence, Dept Med Imaging & Radiol Sci, Taoyuan 33302, Taiwan
[4] Columbia Univ, Dept Counseling & Clin Psychol, New York, NY 10027 USA
[5] Chang Gung Univ, Inst Radiol Res, Med Imaging Res Ctr, Taoyuan 33302, Taiwan
[6] Chang Gung Mem Hosp Linkou, Taoyuan 33302, Taiwan
[7] Chang Gung Mem Hosp, Dept Psychiat, Chiayi 61363, Taiwan
关键词
betel quid; resting-state functional MRI (rs-fMRI); autoencoder; logistic regression; RESTING-STATE FMRI; DISORDERS IDENTIFICATION TEST; DEPENDENCE; CONNECTIVITY; AMPLITUDE;
D O I
10.3390/brainsci11060809
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Betel quid (BQ) is one of the most commonly used psychoactive substances in some parts of Asia and the Pacific. Although some studies have shown brain function alterations in BQ chewers, it is virtually impossible for radiologists' to visually distinguish MRI maps of BQ chewers from others. In this study, we aimed to construct autoencoder and machine-learning models to discover brain alterations in BQ chewers based on the features of resting-state functional magnetic resonance imaging. Resting-state functional magnetic resonance imaging (rs-fMRI) was obtained from 16 BQ chewers, 15 tobacco- and alcohol-user controls (TA), and 17 healthy controls (HC). We used an autoencoder and machine learning model to identify BQ chewers among the three groups. A convolutional neural network (CNN)-based autoencoder model and supervised machine learning algorithm logistic regression (LR) were used to discriminate BQ chewers from TA and HC. Classifying the brain MRIs of HC, TA controls, and BQ chewers by conducting leave-one-out-cross-validation (LOOCV) resulted in the highest accuracy of 83%, which was attained by LR with two rs-fMRI feature sets. In our research, we constructed an autoencoder and machine-learning model that was able to identify BQ chewers from among TA controls and HC, which were based on data from rs-fMRI, and this might provide a helpful approach for tracking BQ chewers in the future.
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页数:12
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