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Prediction of systemic biomarkers from retinal photographs: development and validation of deep-learning algorithms
165
Zitationen
19
Autoren
2020
Jahr
Abstract
BACKGROUND: The application of deep learning to retinal photographs has yielded promising results in predicting age, sex, blood pressure, and haematological parameters. However, the broader applicability of retinal photograph-based deep learning for predicting other systemic biomarkers and the generalisability of this approach to various populations remains unexplored. METHODS: With use of 236 257 retinal photographs from seven diverse Asian and European cohorts (two health screening centres in South Korea, the Beijing Eye Study, three cohorts in the Singapore Epidemiology of Eye Diseases study, and the UK Biobank), we evaluated the capacities of 47 deep-learning algorithms to predict 47 systemic biomarkers as outcome variables, including demographic factors (age and sex); body composition measurements; blood pressure; haematological parameters; lipid profiles; biochemical measures; biomarkers related to liver function, thyroid function, kidney function, and inflammation; and diabetes. The standard neural network architecture of VGG16 was adopted for model development. FINDINGS: ≤0·14 across all external test sets). INTERPRETATION: Our work provides new insights into the potential use of retinal photographs to predict systemic biomarkers, including body composition indices and serum creatinine, using deep learning in populations with a similar ethnic background. Further evaluations are warranted to validate these findings and evaluate the clinical utility of these algorithms. FUNDING: Agency for Science, Technology, and Research and National Medical Research Council, Singapore; Korea Institute for Advancement of Technology.
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Autoren
Institutionen
- Severance Hospital(KR)
- Singapore National Eye Center(SG)
- Yonsei University(KR)
- Singapore Eye Research Institute(SG)
- Duke-NUS Medical School(SG)
- Gangnam Severance Hospital(KR)
- Capital Medical University(CN)
- Beijing Tongren Hospital(CN)
- University Hospital Heidelberg(DE)
- University Medical Centre Mannheim(DE)
- Heidelberg University(DE)