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Analysing race and sex bias in brain age prediction (2309.10835v1)

Published 19 Sep 2023 in eess.IV, cs.CV, and cs.LG

Abstract: Brain age prediction from MRI has become a popular imaging biomarker associated with a wide range of neuropathologies. The datasets used for training, however, are often skewed and imbalanced regarding demographics, potentially making brain age prediction models susceptible to bias. We analyse the commonly used ResNet-34 model by conducting a comprehensive subgroup performance analysis and feature inspection. The model is trained on 1,215 T1-weighted MRI scans from Cam-CAN and IXI, and tested on UK Biobank (n=42,786), split into six racial and biological sex subgroups. With the objective of comparing the performance between subgroups, measured by the absolute prediction error, we use a Kruskal-Wallis test followed by two post-hoc Conover-Iman tests to inspect bias across race and biological sex. To examine biases in the generated features, we use PCA for dimensionality reduction and employ two-sample Kolmogorov-Smirnov tests to identify distribution shifts among subgroups. Our results reveal statistically significant differences in predictive performance between Black and White, Black and Asian, and male and female subjects. Seven out of twelve pairwise comparisons show statistically significant differences in the feature distributions. Our findings call for further analysis of brain age prediction models.

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References (25)
  1. “Ageing as a risk factor for neurodegenerative disease” In Nature Reviews Neurology 15.10 Nature Publishing Group UK London, 2019, pp. 565–581
  2. “The burden of neurological diseases in Europe: an analysis for the Global Burden of Disease Study 2017” In The Lancet Public Health 5.10 Elsevier, 2020, pp. e551–e567
  3. “Epidemiology of neurological diseases in older adults” In Revue neurologique 176.9 Elsevier, 2020, pp. 642–648
  4. “Machine learning for brain age prediction: Introduction to methods and clinical applications” In EBioMedicine 72 Elsevier, 2021
  5. “Predicting brain age with deep learning from raw imaging data results in a reliable and heritable biomarker” In NeuroImage 163 Elsevier, 2017, pp. 115–124
  6. “Mind the gap: Performance metric evaluation in brain-age prediction” In Human Brain Mapping 43.10 Wiley Online Library, 2022, pp. 3113–3129
  7. “Longitudinal assessment of multiple sclerosis with the brain-age paradigm” In Annals of neurology 88.1 Wiley Online Library, 2020, pp. 93–105
  8. “Multimodal imaging improves brain age prediction and reveals distinct abnormalities in patients with psychiatric and neurological disorders” In Human brain mapping 42.6 Wiley Online Library, 2021, pp. 1714–1726
  9. “Neuroimaging-based brain-age prediction in diverse forms of epilepsy: a signature of psychosis and beyond” In Molecular psychiatry 26.3 Nature Publishing Group UK London, 2021, pp. 825–834
  10. “Brain age predicts mortality” In Molecular psychiatry 23.5 Nature Publishing Group, 2018, pp. 1385–1392
  11. “Cardiometabolic risk factors associated with brain age and accelerate brain ageing” In Human brain mapping 43.2 Wiley Online Library, 2022, pp. 700–720
  12. “Deep learning for brain age estimation: A systematic review” In Information Fusion Elsevier, 2023
  13. “Accurate brain age prediction with lightweight deep neural networks” In Medical image analysis 68 Elsevier, 2021, pp. 101871
  14. “UK biobank: an open access resource for identifying the causes of a wide range of complex diseases of middle and old age” In PLoS medicine 12.3 Public Library of Science, 2015, pp. e1001779
  15. “The Cambridge Centre for Ageing and Neuroscience (Cam-CAN) data repository: Structural and functional MRI, MEG, and cognitive data from a cross-sectional adult lifespan sample” In neuroimage 144 Elsevier, 2017, pp. 262–269
  16. “IXI dataset” Accessed: 2023-06-29, http://brain-development.org/ixi-dataset/
  17. “Recent publications from the Alzheimer’s Disease Neuroimaging Initiative: Reviewing progress toward improved AD clinical trials” In Alzheimer’s & Dementia 13.4 Elsevier, 2017, pp. e1–e85
  18. “Open Access Series of Imaging Studies (OASIS): cross-sectional MRI data in young, middle aged, nondemented, and demented older adults” In Journal of cognitive neuroscience 19.9, 2007, pp. 1498–1507
  19. Daniel C Castro, Ian Walker and Ben Glocker “Causality matters in medical imaging” In Nature Communications 11.1 Nature Publishing Group UK London, 2020, pp. 3673
  20. “Robust brain extraction across datasets and comparison with publicly available methods” In IEEE Transactions on Medical Imaging 30.9 IEEE, 2011, pp. 1617–1634
  21. “N4ITK: improved N3 bias correction” In IEEE Transactions on Medical Imaging 29.6 IEEE, 2010, pp. 1310–1320
  22. “Deep residual learning for image recognition” In Proceedings of the IEEE conference on computer vision and pattern recognition, 2016, pp. 770–778
  23. Edgar Brunner, Arne C Bathke and Frank Konietschke “Rank and pseudo-rank procedures for independent observations in factorial designs” Springer, 2018
  24. “Algorithmic encoding of protected characteristics in chest X-ray disease detection models” In Ebiomedicine 89 Elsevier, 2023
  25. “Brain-age prediction: A systematic comparison of machine learning workflows” In NeuroImage 270 Elsevier, 2023, pp. 119947
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Authors (2)
  1. Carolina Piçarra (3 papers)
  2. Ben Glocker (142 papers)
Citations (9)