QMLGIVAPMLApr 10, 2019

Scanner Invariant Representations for Diffusion MRI Harmonization

arXiv:1904.05375v2135 citations
Originality Incremental advance
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This addresses the need for harmonizing multi-site imaging data in medical studies, but it is incremental as it builds on existing fairness techniques and deep learning methods.

The paper tackled the problem of site and scanner biases in diffusion-weighted MRI data by proposing a method based on invariant representation, resulting in improvements over a baseline method on independent test data from the MICCAI CDMRI Challenge dataset.

Purpose: In the present work we describe the correction of diffusion-weighted MRI for site and scanner biases using a novel method based on invariant representation. Theory and Methods: Pooled imaging data from multiple sources are subject to variation between the sources. Correcting for these biases has become very important as imaging studies increase in size and multi-site cases become more common. We propose learning an intermediate representation invariant to site/protocol variables, a technique adapted from information theory-based algorithmic fairness; by leveraging the data processing inequality, such a representation can then be used to create an image reconstruction that is uninformative of its original source, yet still faithful to underlying structures. To implement this, we use a deep learning method based on variational auto-encoders (VAE) to construct scanner invariant encodings of the imaging data. Results: To evaluate our method, we use training data from the 2018 MICCAI Computational Diffusion MRI (CDMRI) Challenge Harmonization dataset. Our proposed method shows improvements on independent test data relative to a recently published baseline method on each subtask, mapping data from three different scanning contexts to and from one separate target scanning context. Conclusion: As imaging studies continue to grow, the use of pooled multi-site imaging will similarly increase. Invariant representation presents a strong candidate for the harmonization of these data.

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