Image-encoded biological and non-biological variables may be used as shortcuts in deep learning models trained on multisite neuroimaging data

Author:

Souza Raissa123ORCID,Wilms Matthias2456,Camacho Milton123,Pike G Bruce12,Camicioli Richard7,Monchi Oury28910,Forkert Nils D12410ORCID

Affiliation:

1. Department of Radiology, Cumming School of Medicine, University of Calgary , Calgary, AB T2N 4N1, Canada

2. Hotchkiss Brain Institute, University of Calgary , Calgary, AB T2N 4N1, Canada

3. Biomedical Engineering Graduate Program, University of Calgary , Calgary, AB T2N 4N1, Canada

4. Alberta Children’s Hospital Research Institute, University of Calgary , Calgary, AB T2N 4N1, Canada

5. Department of Pediatrics, University of Calgary , Calgary, AB T2N 4N1, Canada

6. Department of Community Health Sciences, University of Calgary , Calgary, AB T2N 4N1, Canada

7. Department of Medicine (Neurology), Neuroscience and Mental Health Institute, University of Alberta , Edmonton, AB T6G 2E1, Canada

8. Department of Radiology, Radio-Oncology and Nuclear Medicine, Université de Montréal , Montréal, QC H3C 3J7, Canada

9. Centre de Recherche, Institut Universitaire de Gériatrie de Montréal , Montréal, QC H3W 1W4, Canada

10. Department of Clinical Neurosciences, Cumming School of Medicine, University of Calgary , Calgary, AB T2N 4N1, Canada

Abstract

Abstract Objective This work investigates if deep learning (DL) models can classify originating site locations directly from magnetic resonance imaging (MRI) scans with and without correction for intensity differences. Material and Methods A large database of 1880 T1-weighted MRI scans collected across 41 sites originally for Parkinson’s disease (PD) classification was used to classify sites in this study. Forty-six percent of the datasets are from PD patients, while 54% are from healthy participants. After preprocessing the T1-weighted scans, 2 additional data types were generated: intensity-harmonized T1-weighted scans and log-Jacobian deformation maps resulting from nonlinear atlas registration. Corresponding DL models were trained to classify sites for each data type. Additionally, logistic regression models were used to investigate the contribution of biological (age, sex, disease status) and non-biological (scanner type) variables to the models’ decision. Results A comparison of the 3 different types of data revealed that DL models trained using T1-weighted and intensity-harmonized T1-weighted scans can classify sites with an accuracy of 85%, while the model using log-Jacobian deformation maps achieved a site classification accuracy of 54%. Disease status and scanner type were found to be significant confounders. Discussion Our results demonstrate that MRI scans encode relevant site-specific information that models could use as shortcuts that cannot be removed using simple intensity harmonization methods. Conclusion The ability of DL models to exploit site-specific biases as shortcuts raises concerns about their reliability, generalization, and deployability in clinical settings.

Funder

Parkinson Association of Alberta

Hotchkiss Brain Institute

Canadian Consortium on Neurodegeneration in Aging

Canadian Open Neuroscience Platform

Natural Sciences and Engineering Research Council of Canada

Canada Research Chairs

River Fund at Calgary Foundation

Canadian Institutes for Health Research

Tourmaline Chair in Parkinson disease

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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