Jeong Boram, Lee Jiyoon, Kim Heejung, Gwak Seungyeon, Kim Yu Kyeong, Yoo So Young, Lee Donghwan, Choi Jung-Seok
Department of Statistics, Ewha Womans University, Seoul, South Korea.
Department of Psychiatry, Samsung Medical Center, Seoul, South Korea.
Front Neurosci. 2022 Jun 30;16:856510. doi: 10.3389/fnins.2022.856510. eCollection 2022.
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 ( = 28) and healthy controls ( = 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.
近年来,网络成瘾障碍(IGD)已成为一个重要的社会和精神问题。为了预防IGD并提供适当的干预措施,需要一种准确的识别IGD的预测方法。在本研究中,我们研究了包括正电子发射断层扫描(PET)、脑电图(EEG)在内的多模态神经影像数据的机器学习方法以及临床特征,以提高预测准确性。与通常将所有特征连接成一个特征向量的传统方法不同,我们采用多核支持向量机(MK-SVM)对IGD进行分类。我们将支持向量机(SVM)、随机森林和提升等标准机器学习方法的预测性能与所提出的方法在IGD患者(n = 28)和健康对照者(n = 24)中进行了比较。我们发现,使用三种模态的最优MK-SVM的预测准确率远高于其他传统机器学习方法,最高准确率为86.5%,灵敏度为89.3%,特异性为83.3%。此外,我们推断临床变量对最优IGD预测模型的贡献最大,而其他两种模态也不可或缺。我们发现通过核组合更有效地整合多模态数据有助于预测模型获得更好的性能。本研究是整合不同来源的每种方法的一次新尝试,并表明整合自我管理报告、PET和EEG等每种方法可改善对IGD的预测。