Predicting the diagnosis of various mental disorders in a mixed cohort using blood-based multi-protein model: a machine learning approach

被引:0
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作者
Suzhen Chen
Gang Chen
Yinghui Li
Yingying Yue
Zixin Zhu
Lei Li
Wenhao Jiang
Zhongxia Shen
Tianyu Wang
Zhenghua Hou
Zhi Xu
Xinhua Shen
Yonggui Yuan
机构
[1] ZhongDa Hospital,Department of Psychosomatics and Psychiatry, School of Medicine
[2] Southeast University,School of Medicine
[3] Southeast University,Jiangsu Provincial Key Laboratory of Critical Care Medicine
[4] Nanjing Medical University,Department of Sleep Medicine
[5] Southeast University,Department of Psychiatry
[6] The Fourth People’s Hospital of Lianyungang,undefined
[7] The Third People’s Hospital of Huzhou,undefined
关键词
Mental disorder; Linear discriminant analysis; Multi-classification; Diagnostic model; Machine learning model; Blood-based multi-protein model;
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摘要
The lack of objective diagnostic methods for mental disorders challenges the reliability of diagnosis. The study aimed to develop an easily accessible and useable objective method for diagnosing major depressive disorder (MDD), schizophrenia (SZ), bipolar disorder (BPD), and panic disorder (PD) using serum multi-protein. Serum levels of brain-derived neurotrophic factor (BDNF), VGF (non-acronymic), bicaudal C homolog 1 (BICC1), C-reactive protein (CRP), and cortisol, which are generally recognized to be involved in different pathogenesis of various mental disorders, were measured in patients with MDD (n = 50), SZ (n = 50), BPD (n = 55), and PD along with 50 healthy controls (HC). Linear discriminant analysis (LDA) was employed to construct a multi-classification model to classify these mental disorders. Both leave-one-out cross-validation (LOOCV) and fivefold cross-validation were applied to validate the accuracy and stability of the LDA model. All five serum proteins were included in the LDA model, and it was found to display a high overall accuracy of 96.9% when classifying MDD, SZ, BPD, PD, and HC groups. Multi-classification accuracy of the LDA model for LOOCV and fivefold cross-validation (within-study replication) reached 96.9 and 96.5%, respectively, demonstrating the feasibility of the blood-based multi-protein LDA model for classifying common mental disorders in a mixed cohort. The results suggest that combining multiple proteins associated with different pathogeneses of mental disorders using LDA may be a novel and relatively objective method for classifying mental disorders. Clinicians should consider combining multiple serum proteins to diagnose mental disorders objectively.
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页码:1267 / 1277
页数:10
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