Wen Yang, Zhou Chuan, Chen Leiting, Deng Yu, Cleusix Martine, Jenni Raoul, Conus Philippe, Do Kim Q, Xin Lijing
Key Laboratory of Digital Media Technology of Sichuan Province, School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu, Sichuan, China.
Animal Imaging and Technology Core, Center for Biomedical Imaging, Ecole Polytechnique Fédérale de Lausanne, Lausanne, Switzerland.
Front Psychiatry. 2023 Jan 10;13:1075564. doi: 10.3389/fpsyt.2022.1075564. eCollection 2022.
Recent efforts have been made to apply machine learning and deep learning approaches to the automated classification of schizophrenia using structural magnetic resonance imaging (sMRI) at the individual level. However, these approaches are less accurate on early psychosis (EP) since there are mild structural brain changes at early stage. As cognitive impairments is one main feature in psychosis, in this study we apply a multi-task deep learning framework using sMRI with inclusion of cognitive assessment to facilitate the classification of patients with EP from healthy individuals.
Unlike previous studies, we used sMRI as the direct input to perform EP classifications and cognitive estimations. The proposed deep learning model does not require time-consuming volumetric or surface based analysis and can provide additionally cognition predictions. Experiments were conducted on an in-house data set with 77 subjects and a public ABCD HCP-EP data set with 164 subjects.
We achieved 74.9 ± 4.3% five-fold cross-validated accuracy and an area under the curve of 71.1 ± 4.1% on EP classification with the inclusion of cognitive estimations.
We reveal the feasibility of automated cognitive estimation using sMRI by deep learning models, and also demonstrate the implicit adoption of cognitive measures as additional information to facilitate EP classifications from healthy controls.
最近人们努力将机器学习和深度学习方法应用于利用个体水平的结构磁共振成像(sMRI)对精神分裂症进行自动分类。然而,这些方法在早期精神病(EP)中的准确性较低,因为早期阶段大脑结构变化较轻。由于认知障碍是精神病的一个主要特征,在本研究中,我们应用了一个多任务深度学习框架,该框架使用sMRI并纳入认知评估,以促进将EP患者与健康个体进行分类。
与以往研究不同,我们使用sMRI作为直接输入来进行EP分类和认知估计。所提出的深度学习模型不需要耗时的基于体积或表面的分析,并且可以提供额外的认知预测。在一个有77名受试者的内部数据集和一个有164名受试者的公共ABCD HCP-EP数据集上进行了实验。
在纳入认知估计的情况下,我们在EP分类上实现了74.9±4.3%的五折交叉验证准确率和71.1±4.1%的曲线下面积。
我们揭示了深度学习模型使用sMRI进行自动认知估计的可行性,并且还证明了将认知测量作为额外信息来促进从健康对照中对EP进行分类的隐性应用。