Diffmv: A Unified Diffusion Framework for Healthcare Predictions with Random Missing Views and View Laziness
Journal:
arXiv
Published Date:
May 17, 2025
Abstract
Advanced healthcare predictions offer significant improvements in patient
outcomes by leveraging predictive analytics. Existing works primarily utilize
various views of Electronic Health Record (EHR) data, such as diagnoses, lab
tests, or clinical notes, for model training. These methods typically assume
the availability of complete EHR views and that the designed model could fully
leverage the potential of each view. However, in practice, random missing views
and view laziness present two significant challenges that hinder further
improvements in multi-view utilization. To address these challenges, we
introduce Diffmv, an innovative diffusion-based generative framework designed
to advance the exploitation of multiple views of EHR data. Specifically, to
address random missing views, we integrate various views of EHR data into a
unified diffusion-denoising framework, enriched with diverse contextual
conditions to facilitate progressive alignment and view transformation. To
mitigate view laziness, we propose a novel reweighting strategy that assesses
the relative advantages of each view, promoting a balanced utilization of
various data views within the model. Our proposed strategy achieves superior
performance across multiple health prediction tasks derived from three popular
datasets, including multi-view and multi-modality scenarios.