Detecting Neurovascular Instability from Multimodal Physiological Signals Using Wearable-Compatible Edge AI: A Responsible Computational Framework
Truong Quynh Hoa, Hoang Dinh Cuong, Truong Xuan Khanh

TL;DR
This paper introduces Melaguard, a lightweight multimodal machine learning framework utilizing wearable-compatible signals to detect neurovascular instability, aiming for early stroke risk screening with high accuracy and real-time edge inference.
Contribution
The paper presents a novel Transformer-lite model that fuses multiple physiological signals for early NVI detection, optimized for edge devices and validated across synthetic and clinical datasets.
Findings
Transformer-lite achieves high AUC in synthetic benchmark (0.88)
Outperforms traditional models in clinical cohort (AUC=0.755)
PPG morphology classifies cerebrovascular disease with AUC=0.923
Abstract
We propose Melaguard, a multimodal ML framework (Transformer-lite, 1.2M parameters, 4-head self-attention) for detecting neurovascular instability (NVI) from wearable-compatible physiological signals prior to structural stroke pathology. The model fuses heart rate variability (HRV), peripheral perfusion index, SpO2, and bilateral phase coherence into a composite NVI Score, designed for edge inference (WCET <=4 ms on Cortex-M4). NVI - the pre-structural dysregulation of cerebrovascular autoregulation preceding overt stroke - remains undetectable by existing single-modality wearables. With 12.2 million incident strokes annually, continuous multimodal physiological monitoring offers a practical path to community-scale screening. Three-stage independent validation: (1) synthetic benchmark (n=10,000), AUC=0.88 [0.83-0.92]; (2) clinical cohort PhysioNet CVES (n=172; 84 stroke, 88 control) -…
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Taxonomy
TopicsECG Monitoring and Analysis · Non-Invasive Vital Sign Monitoring · Heart Rate Variability and Autonomic Control
