cd /news/machine-learning/fusion-is-not-one-size-fits-all-cros… · home topics machine-learning article
[ARTICLE · art-28935] src=arxiv.org ↗ pub= topic=machine-learning verified=true sentiment=· neutral

Fusion is not one-size-fits-all: Cross-Modal Representation Alignment for Time-to-Event Modeling

Researchers introduced a foundation model-driven framework for cross-modal representation alignment between CT imaging and longitudinal EHR data, improving time-to-event prediction across tasks and institutions. Fusion strategies consistently boosted concordance index by 1.5-5.4% over unimodal baselines, with contrastive alignment providing the most robust improvements for pulmonary embolism mortality prediction. The study establishes task-aware multimodal alignment as a necessary design principle for robust generalization in clinical deployment.

read1 min views1 publishedJun 16, 2026

arXiv:2606.15038v1 Announce Type: new Abstract: Accurate time-to-event (TTE) prediction from multimodal clinical data remains challenging due to modality imbalance and distribution shift. We introduce a foundation model-driven framework for cross-modal representation alignment between CT imaging and longitudinal EHR data, designed to generalize across tasks and institutions. CT and EHR modalities are encoded independently using domain-specific foundation models and aligned in a shared latent space through four principled fusion strategies: late fusion, contrastive alignment, cross-attention, and co-attention. We evaluate two clinically distinct TTE tasks: pulmonary embolism (PE) mortality and cardiovascular disease (CVD) outcomes, on large-scale multi-institutional cohorts (PE: N=3,099 train; 1,098 internal; 435 external; CVD: N=2,951 train; 837 internal; 682 external). Fusion consistently improves concordance index by 1.5-5.4% over unimodal baselines when modalities contribute comparably. Overall, contrastive multimodal fusion, particularly with CLMBR representations, provided the most consistent and statistically robust improvements, especially for PE mortality prediction. For MACE, cross-attention (one-hot) achieved the highest internal performance and image-guided co-attention achieved the best external performance. We therefore introduce a generalizable foundation model-based cross-modal alignment framework and provide the first systematic analysis of fusion behavior under modality imbalance in TTE prediction. Our results establish task-aware multimodal alignment as a necessary design principle for robust generalization and scalable clinical deployment.

── more in #machine-learning 4 stories · sorted by recency
── more on @clmbr 3 stories trending now
sponsored brought to you by zahid.host 4,200+ EU-deployed projects
reading about agents? ship yours in a single git push.

Run your AI side-project on zahid.host

EU-based hosting, git-push deploys, automatic HTTPS, no cold starts. Free tier with a custom domain — perfect for shipping the agent you just read about.

$git push zahid main
Live at https://your-agent.zahid.host
Get free account → Pricing
from €0/mo · no card required
LIVE [news/fusion-is-not-one-si…] indexed:0 read:1min 2026-06-16 ·