Abstract 10113: Validation of a Deep-Learning-Based Retinal Biomarker in the Prediction of Cardiovascular Disease: Data From UK Biobank — Rachel Marjorie Wei Wen Tseng (2022) | RDL Network
Abstract 10113: Validation of a Deep-Learning-Based Retinal Biomarker in the Prediction of Cardiovascular Disease: Data From UK Biobank
Article 2022 en
Authors
RT
Rachel Marjorie Wei Wen Tseng
TR
Tyler Hyungtaek Rim
ES
Eduard Shantsila
Abstract
2 min read
Introduction: Currently in the United Kingdom, cardiovascular disease (CVD) risk assessment is based on the QRISK3 score, with a benchmark of 10% for 10-year CVD risk determining clinical intervention. Yet, effects on clinical practice are limited and the barriers call for a simple, non-invasive risk stratification tool. Retinal photography is becoming increasingly acceptable as a non-invasive imaging tool for CVD. Previously, we developed a novel CVD risk stratification system based on retinal photographs predicting future CVD risk. This study aimed to further validate our biomarker, Reti-CVD, 1) to detect risk group of ≥10% in 10-year CVD risk and 2 ) enhance risk assessment in individuals with QRISK3 of 7.5%-10% (termed as borderline-QRISK3 group) using the UK Biobank. Methods: RetiCVD scores were calculated and stratified into three risk groups based on optimized cut-off values from the UK Biobank. We used Cox proportional-hazards models to evaluate the ability of RetiCVD to predict CVD events in the general population. C-statistics was used to assess the prognostic value of adding RetiCVD to QRISK3 in borderline-QRISK3 group and three vulnerable subgroups. Results: Among 45,233 participants with no history of CVD, 6.7% had CVD events during the 11-year follow-up. RetiCVD was associated with an increased risk of CVD (adjusted hazard ratio [HR] 1.34 (95% confidence interval [CI], 1.26-1.42) with a 14.7% (95% CI, 13.6-15.9%) 10-year CVD risk in RetiCVD-high-risk group. The 10-year CVD risk of the borderline-QRISK3 group was greater than 10% in RetiCVD-high-risk group (12.8% in non-statin cohort [n=16240], 11.5% in stage 1 hypertension cohort [n=5102], and 14.9% in middle-aged cohort [n=11,474]). C statistics increased by 0.013 (0.010-0.017) in non-statin cohort, 0.017 (0.010-0.024) in stage 1 hypertension cohort, and 0.022 (0.017-0.027) in middle-aged cohort for CVD event prediction after adding RetiCVD to QRISK3. Conclusion: RetiCVD has the potential to identify individuals with ≥10% 10-year CVD risk who are likely to benefit from earlier, upstream preventative CVD interventions. For borderline-QRISK3 individuals, RetiCVD could be used as a risk enhancer tool to help improve discernment accuracy, especially in early vulnerable adult groups.
Rachel Marjorie Wei Wen Tseng, Tyler Hyungtaek Rim, Eduard Shantsila, Joseph Yi, Sungha Park, Sung Soo Kim, Chan Joo Lee, Sahil Thakur, Simon Nusinovici, Qingsheng Peng, Hyeonmin Kim, Geunyoung Lee, Marco Yu, Yih Chung Tham, Ameet Bakhai, Paul Leeson, Professor Gregory Lip, Tien Yin Wong, Ching‐Yu Cheng
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