The Impact of Scanner Domain Shift on Deep Learning Performance in Medical Imaging: an Experimental Study
Brian Guo, Darui Lu, Gregory Szumel, Rongze Gui, Tingyu Wang, Nicholas, Konz, Maciej A. Mazurowski

TL;DR
This study systematically evaluates how scanner differences affect deep learning performance in medical imaging across X-ray, CT, and MRI, revealing modality-specific performance drops and potential mitigation strategies.
Contribution
It provides the first comprehensive experimental analysis of scanner domain shift effects across multiple imaging modalities and diagnostic tasks.
Findings
Performance drops are most severe in MRI, moderate in X-ray, and small in CT.
Standardized CT acquisition reduces domain shift impact.
Injecting target domain data improves model generalization.
Abstract
Purpose: Medical images acquired using different scanners and protocols can differ substantially in their appearance. This phenomenon, scanner domain shift, can result in a drop in the performance of deep neural networks which are trained on data acquired by one scanner and tested on another. This significant practical issue is well-acknowledged, however, no systematic study of the issue is available across different modalities and diagnostic tasks. Materials and Methods: In this paper, we present a broad experimental study evaluating the impact of scanner domain shift on convolutional neural network performance for different automated diagnostic tasks. We evaluate this phenomenon in common radiological modalities, including X-ray, CT, and MRI. Results: We find that network performance on data from a different scanner is almost always worse than on same-scanner data, and we quantify the…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Digital Radiography and Breast Imaging
