Abstract

Medical imaging is a central part of clinical diagnosis and treatment guidance. Machine learning has increasingly gained relevance because it captures features of disease and treatment response that are relevant for therapeutic decision-making. In clinical practice, the continuous progress of image acquisition technology or diagnostic procedures, the diversity of scanners, and evolving imaging protocols hamper the utility of machine learning, as prediction accuracy on new data deteriorates, or models become outdated due to these domain shifts. We propose a continual learning approach to deal with such domain shifts occurring at unknown time points. We adapt models to emerging variations in a continuous data stream while counteracting catastrophic forgetting. A dynamic memory enables rehearsal on a subset of diverse training data to mitigate forgetting while enabling models to expand to new domains. The technique balances memory by detecting pseudo-domains, representing different style clusters within the data stream. Evaluation of two different tasks, cardiac segmentation in magnetic resonance imaging and lung nodule detection in computed tomography, demonstrate a consistent advantage of the method.

Highlights

  • Medical imaging is a central part of clinical diagnosis and treatment guidance

  • Machine learning is expanding the use of medical imaging data for diagnosis and prognosis

  • We show that an approach that maintains a diverse dynamic memory could adapt models to changing imaging technology, as it coped with domain shifts

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Summary

Introduction

Medical imaging is a central part of clinical diagnosis and treatment guidance. Machine learning has increasingly gained relevance because it captures features of disease and treatment response that are relevant for therapeutic decision-making. The continuous progress of image acquisition technology or diagnostic procedures, the diversity of scanners, and evolving imaging protocols hamper the utility of machine learning, as prediction accuracy on new data deteriorates, or models become outdated due to these domain shifts. Deep learning (DL) algorithms are rapidly gaining relevance in medical imaging, enabling computational segmentation[1,2], classification or detection[3] of anatomical structures and anomalies[4] relevant for diagnosis, prediction, or prognosis In some cases, their capabilities surpass even those of human experts[5,6], making them a central tool in the advancement of using imaging data for diagnosis, and for supporting treatment decisions.

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