LSOR: Longitudinally-Consistent Self-Organized Representation Learning.

TitleLSOR: Longitudinally-Consistent Self-Organized Representation Learning.
Publication TypeJournal Article
Year of Publication2023
AuthorsOuyang J, Zhao Q, Adeli E, Peng W, Zaharchuk G, Pohl KM
JournalMed Image Comput Comput Assist Interv
Volume14220
Pagination279-289
Date Published2023 Oct
Abstract

Interpretability is a key issue when applying deep learning models to longitudinal brain MRIs. One way to address this issue is by visualizing the high-dimensional latent spaces generated by deep learning via self-organizing maps (SOM). SOM separates the latent space into clusters and then maps the cluster centers to a discrete (typically 2D) grid preserving the high-dimensional relationship between clusters. However, learning SOM in a high-dimensional latent space tends to be unstable, especially in a self-supervision setting. Furthermore, the learned SOM grid does not necessarily capture clinically interesting information, such as brain age. To resolve these issues, we propose the first self-supervised SOM approach that derives a high-dimensional, interpretable representation stratified by brain age solely based on longitudinal brain MRIs (i.e., without demographic or cognitive information). Called Longitudinally-consistent Self-Organized Representation learning (LSOR), the method is stable during training as it relies on soft clustering (vs. the hard cluster assignments used by existing SOM). Furthermore, our approach generates a latent space stratified according to brain age by aligning trajectories inferred from longitudinal MRIs to the reference vector associated with the corresponding SOM cluster. When applied to longitudinal MRIs of the Alzheimer's Disease Neuroimaging Initiative (ADNI, ), LSOR generates an interpretable latent space and achieves comparable or higher accuracy than the state-of-the-art representations with respect to the downstream tasks of classification (static vs. progressive mild cognitive impairment) and regression (determining ADAS-Cog score of all subjects). The code is available at https://github.com/ouyangjiahong/longitudinal-som-single-modality.

DOI10.1007/978-3-031-43907-0_27
Alternate JournalMed Image Comput Comput Assist Interv
PubMed ID37961067
PubMed Central IDPMC10642576
Grant ListR01 AA005965 / AA / NIAAA NIH HHS / United States
U01 AA017347 / AA / NIAAA NIH HHS / United States
R01 MH113406 / MH / NIMH NIH HHS / United States
R01 AA017347 / AA / NIAAA NIH HHS / United States
K99 AA028840 / AA / NIAAA NIH HHS / United States
R01 DA057567 / DA / NIDA NIH HHS / United States
R01 AA010723 / AA / NIAAA NIH HHS / United States
R37 AA005965 / AA / NIAAA NIH HHS / United States
R37 AA010723 / AA / NIAAA NIH HHS / United States

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065