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Main Authors: Li, Zhiyuan, Li, Hailong, Ralescu, Anca L., Dillman, Jonathan R., Altaye, Mekibib, Cecil, Kim M., Parikh, Nehal A., He, Lili
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.15064
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author Li, Zhiyuan
Li, Hailong
Ralescu, Anca L.
Dillman, Jonathan R.
Altaye, Mekibib
Cecil, Kim M.
Parikh, Nehal A.
He, Lili
author_facet Li, Zhiyuan
Li, Hailong
Ralescu, Anca L.
Dillman, Jonathan R.
Altaye, Mekibib
Cecil, Kim M.
Parikh, Nehal A.
He, Lili
contents The integration of different imaging modalities, such as structural, diffusion tensor, and functional magnetic resonance imaging, with deep learning models has yielded promising outcomes in discerning phenotypic characteristics and enhancing disease diagnosis. The development of such a technique hinges on the efficient fusion of heterogeneous multimodal features, which initially reside within distinct representation spaces. Naively fusing the multimodal features does not adequately capture the complementary information and could even produce redundancy. In this work, we present a novel joint self-supervised and supervised contrastive learning method to learn the robust latent feature representation from multimodal MRI data, allowing the projection of heterogeneous features into a shared common space, and thereby amalgamating both complementary and analogous information across various modalities and among similar subjects. We performed a comparative analysis between our proposed method and alternative deep multimodal learning approaches. Through extensive experiments on two independent datasets, the results demonstrated that our method is significantly superior to several other deep multimodal learning methods in predicting abnormal neurodevelopment. Our method has the capability to facilitate computer-aided diagnosis within clinical practice, harnessing the power of multimodal data.
format Preprint
id arxiv_https___arxiv_org_abs_2312_15064
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Joint Self-Supervised and Supervised Contrastive Learning for Multimodal MRI Data: Towards Predicting Abnormal Neurodevelopment
Li, Zhiyuan
Li, Hailong
Ralescu, Anca L.
Dillman, Jonathan R.
Altaye, Mekibib
Cecil, Kim M.
Parikh, Nehal A.
He, Lili
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
The integration of different imaging modalities, such as structural, diffusion tensor, and functional magnetic resonance imaging, with deep learning models has yielded promising outcomes in discerning phenotypic characteristics and enhancing disease diagnosis. The development of such a technique hinges on the efficient fusion of heterogeneous multimodal features, which initially reside within distinct representation spaces. Naively fusing the multimodal features does not adequately capture the complementary information and could even produce redundancy. In this work, we present a novel joint self-supervised and supervised contrastive learning method to learn the robust latent feature representation from multimodal MRI data, allowing the projection of heterogeneous features into a shared common space, and thereby amalgamating both complementary and analogous information across various modalities and among similar subjects. We performed a comparative analysis between our proposed method and alternative deep multimodal learning approaches. Through extensive experiments on two independent datasets, the results demonstrated that our method is significantly superior to several other deep multimodal learning methods in predicting abnormal neurodevelopment. Our method has the capability to facilitate computer-aided diagnosis within clinical practice, harnessing the power of multimodal data.
title Joint Self-Supervised and Supervised Contrastive Learning for Multimodal MRI Data: Towards Predicting Abnormal Neurodevelopment
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2312.15064