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Predicting ICU In-Hospital Mortality Using Adaptive Transformer Layer Fusion

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arxiv 2506.04924 v2 pith:OWIGVM2F submitted 2025-06-05 cs.LG

Predicting ICU In-Hospital Mortality Using Adaptive Transformer Layer Fusion

classification cs.LG
keywords alfiaadaptivefusionclinicallayerperformanceadaptationadapters
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Early identification of high-risk ICU patients is crucial for directing limited medical resources. We introduce ALFIA (Adaptive Layer Fusion with Intelligent Attention), a modular, attention-based architecture that jointly trains LoRA (Low-Rank Adaptation) adapters and an adaptive layer-weighting mechanism to fuse multi-layer semantic features from a BERT backbone. Trained on our rigorous cw-24 (CriticalWindow-24) benchmark, ALFIA surpasses state-of-the-art tabular classifiers in AUPRC while preserving a balanced precision-recall profile. The embeddings produced by ALFIA's fusion module, capturing both fine-grained clinical cues and high-level concepts, enable seamless pairing with GBDTs (CatBoost/LightGBM) as ALFIA-boost, and deep neuro networks as ALFIA-nn, yielding additional performance gains. Our experiments confirm ALFIA's superior early-warning performance, by operating directly on routine clinical text, it furnishes clinicians with a convenient yet robust tool for risk stratification and timely intervention in critical-care settings.

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