The reliability of a deep learning model in clinical out-of-distribution MRI data: A multicohort study

Gustav Mårtensson(Karolinska Institutet), Daniel Ferreira(Karolinska Institutet), Tobias Granberg(Karolinska University Hospital), Lena Cavallin(Karolinska University Hospital), Ketil Oppedal(Stavanger University Hospital), Alessandro Padovani(Brescia University), Irena Rektorová(Masaryk University), Laura Bonanni(University of Chieti-Pescara), Matteo Pardini(Ospedale Policlinico San Martino), Milica G. Kramberger(University of Ljubljana), John‐Paul Taylor(University of Newcastle Australia), Jakub Hort(Charles University), Jón Snædal(Reykjavík University), Jaime Kulisevsky(Universitat Autònoma de Barcelona), Frédéric Blanc(Centre National de la Recherche Scientifique), Angelo Antonini(University of Padua), Patrizia Mecocci(University of Perugia), Bruno Vellas(Inserm), Magda Tsolaki(Aristotle University of Thessaloniki), Iwona Kłoszewska(Medical University of Lodz), Hilkka Soininen(University of Eastern Finland), Simon Lovestone(Warneford Hospital), Andrew Simmons(Wellcome Centre for Human Neuroimaging), Dag Aarsland(King's College London), Eric Westman(Wellcome Centre for Human Neuroimaging)
Medical Image Analysis
April 30, 2020
Cited by 171Open Access
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Abstract

Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with the potential to function as clinical aid to radiologists. However, DL models in medical imaging are often trained on public research cohorts with images acquired with a single scanner or with strict protocol harmonization, which is not representative of a clinical setting. The aim of this study was to investigate how well a DL model performs in unseen clinical datasets-collected with different scanners, protocols and disease populations-and whether more heterogeneous training data improves generalization. In total, 3117 MRI scans of brains from multiple dementia research cohorts and memory clinics, that had been visually rated by a neuroradiologist according to Scheltens' scale of medial temporal atrophy (MTA), were included in this study. By training multiple versions of a convolutional neural network on different subsets of this data to predict MTA ratings, we assessed the impact of including images from a wider distribution during training had on performance in external memory clinic data. Our results showed that our model generalized well to datasets acquired with similar protocols as the training data, but substantially worse in clinical cohorts with visibly different tissue contrasts in the images. This implies that future DL studies investigating performance in out-of-distribution (OOD) MRI data need to assess multiple external cohorts for reliable results. Further, by including data from a wider range of scanners and protocols the performance improved in OOD data, which suggests that more heterogeneous training data makes the model generalize better. To conclude, this is the most comprehensive study to date investigating the domain shift in deep learning on MRI data, and we advocate rigorous evaluation of DL models on clinical data prior to being certified for deployment.


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