Abstract

Machine learning has increasingly been applied to classification of schizophrenia in neuroimaging research. However, direct replication studies and studies seeking to investigate generalizability are scarce. To address these issues, we assessed within‐site and between‐site generalizability of a machine learning classification framework which achieved excellent performance in a previous study using two independent resting‐state functional magnetic resonance imaging data sets collected from different sites and scanners. We established within‐site generalizability of the classification framework in the main data set using cross‐validation. Then, we trained a model in the main data set and investigated between‐site generalization in the validated data set using external validation. Finally, recognizing the poor between‐site generalization performance, we updated the unsupervised algorithm to investigate if transfer learning using additional unlabeled data were able to improve between‐site classification performance. Cross‐validation showed that the published classification procedure achieved an accuracy of 0.73 using majority voting across all selected components. External validation found a classification accuracy of 0.55 (not significant) and 0.70 (significant) using the direct and transfer learning procedures, respectively. The failure of direct generalization from one site to another demonstrates the limitation of within‐site cross‐validation and points toward the need to incorporate efforts to facilitate application of machine learning across multiple data sets. The improvement in performance with transfer learning highlights the importance of taking into account the properties of data when constructing predictive models across samples and sites. Our findings suggest that machine learning classification result based on a single study should be interpreted cautiously.

Highlights

  • Schizophrenia is a serious mental disorder that imposes a significant burden on society around the world (Charlson, Baxter, Cheng, Shidhaye, & Whiteford, 2016)

  • To assess betweensite generalizability, the predictive model is trained on a data set from one site and applied to an independent data set collected in a separate site using external validation

  • Using internal validation is practical considering the difficulty in collecting data from different sites, but it could lead to an overestimation of performance due to overfitting of the predictive model to one specific data set, compared with external validation which considers generalizability across different data sets (Woo, Chang, Lindquist, & Wager, 2017)

Read more

Summary

| INTRODUCTION

Schizophrenia is a serious mental disorder that imposes a significant burden on society around the world (Charlson, Baxter, Cheng, Shidhaye, & Whiteford, 2016). Accumulated studies have utilized machine learning as a tool to analyze rsfMRI data, investigate the underlying neural mechanisms, recognize specific brain patterns, and classify patients with schizophrenia from healthy controls at the individual level with accuracies ranging from 65 to 95% (Arbabshirani, Kiehl, Pearlson, & Calhoun, 2013; Cao et al, 2018; Cheng, Newman, et al, 2015; Cheng, Palaniyappan, et al, 2015; Du et al, 2012; Venkataraman et al, 2012) Most of these studies have only assessed generalizability using internal validation methods.

| Participants
| RESULTS
| DISCUSSION
| Limitation
Findings
| CONCLUSION

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.