Publication | Open Access
Machine Learning with Multi-Site Imaging Data: An Empirical Study on the Impact of Scanner Effects
70
Citations
11
References
2019
Year
EngineeringMachine LearningDigital PathologyScanner EffectsBrain MappingDiagnostic ImagingMulti-site Data HarmonizationImage AnalysisData SciencePattern RecognitionSex ClassificationNeurologyRadiologyNeuroimaging ModalityEmpirical StudyMedical ImagingNeuroinformaticsNeuroimagingMedical Image ComputingBrain ImagingRadiomicsNeuroimaging BiomarkersBiomedical ImagingComputer-aided DiagnosisNeuroscienceMedicineMedical Image AnalysisMulti-site Imaging Data
This is an empirical study to investigate the impact of scanner effects when using machine learning on multi-site neuroimaging data. We utilize structural T1-weighted brain MRI obtained from two different studies, Cam-CAN and UK Biobank. For the purpose of our investigation, we construct a dataset consisting of brain scans from 592 age- and sex-matched individuals, 296 subjects from each original study. Our results demonstrate that even after careful pre-processing with state-of-the-art neuroimaging pipelines a classifier can easily distinguish between the origin of the data with very high accuracy. Our analysis on the example application of sex classification suggests that current approaches to harmonize data are unable to remove scanner-specific bias leading to overly optimistic performance estimates and poor generalization. We conclude that multi-site data harmonization remains an open challenge and particular care needs to be taken when using such data with advanced machine learning methods for predictive modelling.
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