TL;DR
M3Care is an end-to-end model designed to handle missing modalities in multimodal healthcare data by imputing task-relevant information in the latent space, improving clinical analysis accuracy and providing insights aligned with medical knowledge.
Contribution
The paper introduces M3Care, a novel approach that imputes missing modality information directly in the latent space using a task-guided similarity metric, avoiding unstable generative models.
Findings
M3Care outperforms state-of-the-art baselines on real-world datasets.
The model's insights align with medical knowledge and expert opinions.
It effectively handles missing modalities in multimodal healthcare data.
Abstract
Multimodal electronic health record (EHR) data are widely used in clinical applications. Conventional methods usually assume that each sample (patient) is associated with the unified observed modalities, and all modalities are available for each sample. However, missing modality caused by various clinical and social reasons is a common issue in real-world clinical scenarios. Existing methods mostly rely on solving a generative model that learns a mapping from the latent space to the original input space, which is an unstable ill-posed inverse problem. To relieve the underdetermined system, we propose a model solving a direct problem, dubbed learning with Missing Modalities in Multimodal healthcare data (M3Care). M3Care is an end-to-end model compensating the missing information of the patients with missing modalities to perform clinical analysis. Instead of generating raw missing data,…
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