From Concept to Code: AI- Powered CODE-ICH Transforming Acute Neurocritical Response for Hemorrhagic Strokes
Authors
Affiliations (1)
Affiliations (1)
- Departments of Neurological Surgery, Neurology and Critical Care , Mayo Clinic, 4500 San Pablo Rd, Jacksonville, FL 32224
Abstract
BackgroundIntracerebral hemorrhage (ICH) is among the most devastating forms of stroke, characterized by high early mortality and limited time-sensitive treatment protocols compared to ischemic stroke. The absence of standardized emergency response frameworks and the shortcomings of conventional scoring systems highlight the urgent need for innovation in neurocritical care. ObjectiveThis paper introduces and evaluates the CODE-ICH framework, along with two AI-powered tools HEADS-UP and SAHVAI designed to transform acute ICH management through real-time detection, volumetric analysis, and predictive modeling. MethodsWe describe the development and implementation of HEADS-UP, a cloud-based AI system for early ICH detection in underserved populations, and SAHVAI, a convolutional neural network-based tool for subarachnoid hemorrhage volume quantification. These tools were integrated into a novel paging and workflow system at a comprehensive stroke center to facilitate ultra-early intervention. ResultsSAHVAI achieved 99.8% accuracy in volumetric analysis and provided 2D, 3D, and 4D visualization of hemorrhage progression. HEADS-UP enabled rapid triage and transfer, reducing reliance on subjective interpretation. Together, these tools operationalized the time is brain principle for hemorrhagic stroke and supported proactive, data-driven care in the neuro-intensive care unit (NICU). ConclusionCODE-ICH, HEADS-UP, and SAHVAI represent a paradigm shift in hemorrhagic stroke care, delivering scalable, explainable, and multimodal AI solutions that enhance clinical decision-making, minimize delays, and promote equitable access to neurocritical care.