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Predicting Cardiovascular Disease Risk using Photoplethysmography and Deep Learning

Authors :
Weng, Wei-Hung
Baur, Sebastien
Daswani, Mayank
Chen, Christina
Harrell, Lauren
Kakarmath, Sujay
Jabara, Mariam
Behsaz, Babak
McLean, Cory Y.
Matias, Yossi
Corrado, Greg S.
Shetty, Shravya
Prabhakara, Shruthi
Liu, Yun
Danaei, Goodarz
Ardila, Diego
Publication Year :
2023

Abstract

Cardiovascular diseases (CVDs) are responsible for a large proportion of premature deaths in low- and middle-income countries. Early CVD detection and intervention is critical in these populations, yet many existing CVD risk scores require a physical examination or lab measurements, which can be challenging in such health systems due to limited accessibility. Here we investigated the potential to use photoplethysmography (PPG), a sensing technology available on most smartphones that can potentially enable large-scale screening at low cost, for CVD risk prediction. We developed a deep learning PPG-based CVD risk score (DLS) to predict the probability of having major adverse cardiovascular events (MACE: non-fatal myocardial infarction, stroke, and cardiovascular death) within ten years, given only age, sex, smoking status and PPG as predictors. We compared the DLS with the office-based refit-WHO score, which adopts the shared predictors from WHO and Globorisk scores (age, sex, smoking status, height, weight and systolic blood pressure) but refitted on the UK Biobank (UKB) cohort. In UKB cohort, DLS's C-statistic (71.1%, 95% CI 69.9-72.4) was non-inferior to office-based refit-WHO score (70.9%, 95% CI 69.7-72.2; non-inferiority margin of 2.5%, p<0.01). The calibration of the DLS was satisfactory, with a 1.8% mean absolute calibration error. Adding DLS features to the office-based score increased the C-statistic by 1.0% (95% CI 0.6-1.4). DLS predicts ten-year MACE risk comparable with the office-based refit-WHO score. It provides a proof-of-concept and suggests the potential of a PPG-based approach strategies for community-based primary prevention in resource-limited regions.<br />Comment: main: 24 pages (3 tables, 2 figures, 42 references), supplementary: 25 pages (9 tables, 4 figures, 11 references)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.05648
Document Type :
Working Paper