Can we accurately classify schizophrenia patients from healthy controls using magnetic resonance imaging and machine learning? A multi-method and multi-dataset study

被引:49
|
作者
Winterburn, Julie L. [1 ,2 ,3 ]
Voineskos, Aristotle N. [3 ,4 ,5 ,6 ]
Devenyi, Gabriel A. [1 ,12 ]
Plitman, Eric [6 ,7 ]
de la Fuente-Sandoval, Camilo [8 ,9 ]
Bhagwat, Nikhil [1 ,2 ,3 ]
Graff-Guerrero, Ariel [4 ,5 ,6 ,7 ]
Knight, Jo [5 ,6 ,10 ,11 ]
Chakravarty, M. Mallar [1 ,2 ,12 ,13 ]
机构
[1] McGill Univ, Douglas Mental Hlth Inst, Computat Brain Anat Lab, Montreal, PQ, Canada
[2] Univ Toronto, Inst Biomat & Biomed Engn, Toronto, ON, Canada
[3] Ctr Addict & Mental Hlth, Campbell Family Mental Hlth Res Inst, Res Imaging Ctr, Kimel Family Translat Imaging Genet Res Lab, Toronto, ON, Canada
[4] Ctr Addict & Mental Hlth, Geriatr Mental Hlth Div, Toronto, ON, Canada
[5] Univ Toronto, Dept Psychiat, Toronto, ON, Canada
[6] Univ Toronto, Inst Med Sci, Toronto, ON, Canada
[7] Ctr Addict & Mental Hlth, Res Imaging Ctr, Multimodal Imaging Grp, Toronto, ON, Canada
[8] Inst Nacl Neurol & Neurocirug, Lab Expt Psychiat, Mexico City, DF, Mexico
[9] Inst Nacl Neurol & Neurocirug, Neuropsychiat Dept, Mexico City, DF, Mexico
[10] Univ Lancaster, Data Sci Inst, Bailrigg, England
[11] Univ Lancaster, Med Sch, Bailrigg, England
[12] McGill Univ, Dept Psychiat, Montreal, PQ, Canada
[13] McGill Univ, Biol & Biomed Engn, Montreal, PQ, Canada
基金
加拿大健康研究院; 加拿大自然科学与工程研究理事会;
关键词
Structural magnetic resonance imaging; Machine learning; Classification; Schizophrenia; Voxel-based morphometry; Cortical thickness; VOXEL-BASED MORPHOMETRY; PATTERN-CLASSIFICATION; 1ST-EPISODE PSYCHOSIS; CORTICAL THICKNESS; BRAIN; BIOMARKERS; STRIATUM; RISK;
D O I
10.1016/j.schres.2017.11.038
中图分类号
R749 [精神病学];
学科分类号
100205 ;
摘要
Machine learning is a powerful tool that has previously been used to classify schizophrenia (SZ) patients from healthy controls (HC) using magnetic resonance images. Each study, however, uses different datasets, classification algorithms, and validation techniques. Here, we perform a critical appraisal of the accuracy of machine learning methodologies used in SZ/HC classifications studies by comparing three machine learning algorithms (logistic regression [LR], support vector machines [SVMs], and linear discriminant analysis [LDA]) on three independent datasets (435 subjects total) using two tissue density estimates and cortical thickness (CT). Performance is assessed using 10-fold cross-validation, as well as a held-out validation set. Classification using CT outperformed tissue densities, but there was no clear effect of dataset. LR, SVMs, and LDA each yielded the highest accuracies for a different feature set and validation paradigm, but most accuracies were between 55 and 70%, well below previously reported values. The highest accuracy achieved was 73.5% using CT data and an SVM. Taken together, these results illustrate some of the obstacles to constructing effective disease classifiers, and suggest that tissue densities and Cr may not be sufficiently sensitive for SZ/HC classification given current available methodologies and sample sizes. (C) 2017 Elsevier B.V. All rights reserved.
引用
收藏
页码:3 / 10
页数:8
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