TabulaTime improved Acute Coronary Syndrome prediction accuracy by 20.5% over CatBoost, with environmental data contributing a further 10.1% gain.
Does the TabulaTime multimodal deep learning framework improve Acute Coronary Syndrome risk prediction accuracy compared to traditional models?
A novel multimodal deep learning framework integrating clinical and environmental data significantly improves the accuracy of Acute Coronary Syndrome risk prediction.
Tasa de eventos absoluta: 0% vs 0%
Acute Coronary Syndromes (ACS), including ST- and non-ST-segment elevation myocardial infarction (STEMI, NSTEMI), remain a leading cause of global mortality. Traditional Cardiovascular Risk Scores (CVRS) provide important insights but mainly rely on clinical data, often neglecting environmental factors (e.g.air pollution, climate) that significantly influence cardiovascular health. Integrating complex time-series environmental and clinical datasets also presents substantial challenges. We propose TabulaTime, a multimodal deep learning framework integrating clinical risk factors with environmental data to enhance ACS risk prediction. TabulaTime delivers three innovations: multimodal integration of time-series environmental and clinical data; PatchRWKV for extracting complex temporal patterns with linear computational complexity; and enhanced interpretability through attention mechanisms. TabulaTime improves prediction accuracy by 20.5% over CatBoost, with environmental data contributing a 10.1% gain. PatchRWKV outperforms state-of-the-art models (MLP-, CNN-, RNN- and Transformer-based models). Feature analysis highlights key clinical and environmental predictors. This approach advances personalised prevention and strengthens public health against cardiovascular risks. • A novel multimodal deep learning framework, TabulaTime, integrates clinical and environmental time-series data to improve Acute Coronary Syndrome (ACS) risk prediction. • We introduce PatchRWKV, an efficient time-series feature extractor with linear complexity that outperforms state-of-the-art models in capturing temporal patterns. • The integration of environmental data improves ACS prediction accuracy by 10.1%, with feature analysis identifying key clinical and pollution-related predictors.
Zhang et al. (Sun,) reported a other. TabulaTime improved Acute Coronary Syndrome prediction accuracy by 20.5% over CatBoost, with environmental data contributing a further 10.1% gain.