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Precision ICU Resource Planning: A Multimodal Model for Brain Surgery Outcomes

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arxiv 2412.15818 v1 pith:2BELERHR submitted 2024-12-20 eess.IV cs.CVq-bio.NC

Precision ICU Resource Planning: A Multimodal Model for Brain Surgery Outcomes

classification eess.IV cs.CVq-bio.NC
keywords dataclinicalmultimodaladmissionapproachesbrainimagingonly
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Although advances in brain surgery techniques have led to fewer postoperative complications requiring Intensive Care Unit (ICU) monitoring, the routine transfer of patients to the ICU remains the clinical standard, despite its high cost. Predictive Gradient Boosted Trees based on clinical data have attempted to optimize ICU admission by identifying key risk factors pre-operatively; however, these approaches overlook valuable imaging data that could enhance prediction accuracy. In this work, we show that multimodal approaches that combine clinical data with imaging data outperform the current clinical data only baseline from 0.29 [F1] to 0.30 [F1], when only pre-operative clinical data is used and from 0.37 [F1] to 0.41 [F1], for pre- and post-operative data. This study demonstrates that effective ICU admission prediction benefits from multimodal data fusion, especially in contexts of severe class imbalance.

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