Machine Learning of Schizophrenia Detection with Structural and Functional Neuroimaging

被引:22
|
作者
Shi, Dafa [1 ]
Li, Yanfei [1 ]
Zhang, Haoran [1 ]
Yao, Xiang [1 ]
Wang, Siyuan [1 ]
Wang, Guangsong [1 ]
Ren, Ke [1 ]
机构
[1] Xiamen Univ, Xiangan Hosp, Dept Radiol, Xiamen 361002, Peoples R China
关键词
RESTING STATE FMRI; GLOBAL SIGNAL; BRAIN ABNORMALITIES; PARKINSONS-DISEASE; CONNECTIVITY; DIAGNOSIS; NETWORK; CLASSIFICATION; DISORDER; DYSFUNCTION;
D O I
10.1155/2021/9963824
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Schizophrenia (SZ) is a severe psychiatric illness, and it affects around 1% of the general population; however, its reliable diagnosis is challenging. Functional MRI (fMRI) and structural MRI (sMRI) are useful techniques for investigating the functional and structural abnormalities of the human brain, and a growing number of studies have reported that multimodal brain data can improve diagnostic accuracy. Machine learning (ML) is widely used in the diagnosis of neuroscience and neuropsychiatry diseases, and it can obtain high accuracy. However, the conventional ML which concatenated the features into a longer feature vector could not be sufficiently effective to combine different features from different modalities. There are considerable controversies over the use of global signal regression (GSR), and few studies have explored the role of GSR in ML in diagnosing neurological diseases. The current study utilized fMRI and sMRI data to implement a new method named multimodal imaging and multilevel characterization with multiclassifier (M3) to classify SZs and healthy controls (HCs) and investigate the influence of GSR in SZ classification. We found that when we used Brainnetome 246 atlas and without performed GSR, our method obtained a classification accuracy of 83.49%, with a sensitivity of 68.69%, a specificity of 93.75%, and an AUC of 0.8491, respectively. We also got great classification performances with different processing methods (with/without GSR and different brain parcellation schemes). We found that the accuracy and specificity of the models without GSR were higher than that of the models with GSR. Our findings indicate that the M3 method is an effective tool to distinguish SZs from HCs, and it can identify discriminative regions to detect SZ to explore the neural mechanisms underlying SZ. The global signal may contain important neuronal information; it can improve the accuracy and specificity of SZ detection.
引用
收藏
页数:12
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