Morphometric Integrated Classification Index: A Multisite Model-Based, Interpretable, Shareable and Evolvable Biomarker for Schizophrenia

Author:

Xie Yingying12,Ding Hao123,Du Xiaotong12,Chai Chao12ORCID,Wei Xiaotong12,Sun Jie12,Zhuo Chuanjun4,Wang Lina4,Li Jie4,Tian Hongjun5,Liang Meng123,Zhang Shijie6,Yu Chunshui123,Qin Wen12ORCID

Affiliation:

1. Department of Radiology, Tianjin Medical University General Hospital , Tianjin , China

2. Tianjin Key Lab of Functional Imaging, Tianjin Medical University General Hospital , Tianjin , China

3. School of Medical Imaging, Tianjin Medical University , Tianjin , China

4. Department of Psychiatry Functional Neuroimaging Laboratory, Tianjin Mental Health Center, Tianjin Anding Hospital , Tianjin , China

5. Tianjin Fourth Central Hospital , Tianjin , China

6. Department of Pharmacology, Tianjin Medical University , Tianjin , China

Abstract

Abstract Background and Hypothesis Multisite massive schizophrenia neuroimaging data sharing is becoming critical in understanding the pathophysiological mechanism and making an objective diagnosis of schizophrenia; it remains challenging to obtain a generalizable and interpretable, shareable, and evolvable neuroimaging biomarker for schizophrenia diagnosis. Study Design A Morphometric Integrated Classification Index (MICI) was proposed as a potential biomarker for schizophrenia diagnosis based on structural magnetic resonance imaging data of 1270 subjects from 10 sites (588 schizophrenia patients and 682 normal controls). An optimal XGBoost classifier plus sample-weighted SHapley Additive explanation algorithms were used to construct the MICI measure. Study Results The MICI measure achieved comparable performance with the sample-weighted ensembling model and merged model based on raw data (Delong test, P > 0.82) while outperformed the single-site models (Delong test, P < 0.05) in either the independent-sample testing datasets from the 9 sites or the independent-site dataset (generalizable). Besides, when new sites were embedded in, the performance of this measure was gradually increasing (evolvable). Finally, MICI was strongly associated with the severity of schizophrenia brain structural abnormality, with the patients’ positive and negative symptoms, and with the brain expression profiles of schizophrenia risk genes (interpretable). Conclusions In summary, the proposed MICI biomarker may provide a simple and explainable way to support clinicians for objectively diagnosing schizophrenia. Finally, we developed an online model share platform to promote biomarker generalization and provide free individual prediction services (http://micc.tmu.edu.cn/mici/index.html).

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Tianjin Key Project for Chronic Diseases Prevention

Science&Technology Development Fund of Tianjin Education Commission for Higher Education

Tianjin Applied Basic Research Diversified Investment Foundation

Publisher

Oxford University Press (OUP)

Subject

Psychiatry and Mental health

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