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Multiple-Kernel Support Vector Machine for Predicting Internet Gaming Disorder Using Multimodal Fusion of PET, EEG, and Clinical Features.
Jeong, Boram; Lee, Jiyoon; Kim, Heejung; Gwak, Seungyeon; Kim, Yu Kyeong; Yoo, So Young; Lee, Donghwan; Choi, Jung-Seok.
Afiliação
  • Jeong B; Department of Statistics, Ewha Womans University, Seoul, South Korea.
  • Lee J; Department of Psychiatry, Samsung Medical Center, Seoul, South Korea.
  • Kim H; Department of Nuclear Medicine, SMG-SNU Boramae Medical Center, Seoul, South Korea.
  • Gwak S; Institute of Radiation Medicine, Medical Research Center, Seoul National University, Seoul, South Korea.
  • Kim YK; Department of Statistics, Ewha Womans University, Seoul, South Korea.
  • Yoo SY; Department of Nuclear Medicine, SMG-SNU Boramae Medical Center, Seoul, South Korea.
  • Lee D; Department of Psychiatry, SMG-SNU Boramae Medical Center, Seoul, South Korea.
  • Choi JS; Department of Statistics, Ewha Womans University, Seoul, South Korea.
Front Neurosci ; 16: 856510, 2022.
Article em En | MEDLINE | ID: mdl-35844227
ABSTRACT
Internet gaming disorder (IGD) has become an important social and psychiatric issue in recent years. To prevent IGD and provide the appropriate intervention, an accurate prediction method for identifying IGD is necessary. In this study, we investigated machine learning methods of multimodal neuroimaging data including Positron Emission Tomography (PET), Electroencephalography (EEG), and clinical features to enhance prediction accuracy. Unlike the conventional methods which usually concatenate all features into one feature vector, we adopted a multiple-kernel support vector machine (MK-SVM) to classify IGD. We compared the prediction performance of standard machine learning methods such as SVM, random forest, and boosting with the proposed method in patients with IGD (N = 28) and healthy controls (N = 24). We showed that the prediction accuracy of the optimal MK-SVM using three kinds of modalities was much higher than other conventional machine learning methods, with the highest accuracy being 86.5%, the sensitivity 89.3%, and the specificity 83.3%. Furthermore, we deduced that clinical variables had the highest contribution to the optimal IGD prediction model and that the other two modalities were also indispensable. We found that more efficient integration of multimodal data through kernel combination could contribute to better performance of the prediction model. This study is a novel attempt to integrate each method from different sources and suggests that integrating each method, such as self-administrated reports, PET, and EEG, improves the prediction of IGD.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article