In-Hospital Stroke Prediction from PPG-Derived Hemodynamic Features
Jiaming Liu, Cheng Ding, Daoqiang Zhang

TL;DR
This study demonstrates that continuous PPG monitoring can predict in-hospital stroke several hours before onset, using a large-scale analysis with machine learning on real-world clinical data.
Contribution
First large-scale analysis showing PPG waveforms can predict stroke hours before onset using machine learning in hospitalized patients.
Findings
PPG contains predictive signatures of stroke hours before onset.
ResNet-1D model achieved high F1-scores for early warning.
Validated approach using real-world clinical datasets.
Abstract
The absence of pre-hospital physiological data in standard clinical datasets fundamentally constrains the early prediction of stroke, as patients typically present only after stroke has occurred, leaving the predictive value of continuous monitoring signals such as photoplethysmography (PPG) unvalidated. In this work, we overcome this limitation by focusing on a rare but clinically critical cohort - patients who suffered stroke during hospitalization while already under continuous monitoring - thereby enabling the first large-scale analysis of pre-stroke PPG waveforms aligned to verified onset times. Using MIMIC-III and MC-MED, we develop an LLM-assisted data mining pipeline to extract precise in-hospital stroke onset timestamps from unstructured clinical notes, followed by physician validation, identifying 176 patients (MIMIC) and 158 patients (MC-MED) with high-quality synchronized…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring · Healthcare Technology and Patient Monitoring · ECG Monitoring and Analysis
