Abstract

Traditionally, medical discoveries are made by observing associations and then designing experiments to test these hypotheses. However, observing and quantifying associations in images can be difficult because of the wide variety of features, patterns, colors, values, shapes in real data. In this paper, we use deep learning, a machine learning technique that learns its own features, to discover new knowledge from retinal fundus images. Using models trained on data from 284,335 patients, and validated on two independent datasets of 12,026 and 999 patients, we predict cardiovascular risk factors not previously thought to be present or quantifiable in retinal images, such as such as age (within 3.26 years), gender (0.97 AUC), smoking status (0.71 AUC), HbA1c (within 1.39%), systolic blood pressure (within 11.23mmHg) as well as major adverse cardiac events (0.70 AUC). We further show that our models used distinct aspects of the anatomy to generate each prediction, such as the optic disc or blood vessels, opening avenues of further research.

Keywords

Fundus (uterus)Deep learningArtificial intelligenceBlood pressureRetinalMedicineMean absolute errorReceiver operating characteristicOphthalmologyCardiologyComputer scienceMachine learningStatisticsInternal medicineMathematicsMean squared error

MeSH Terms

AgedAged80 and overAlgorithmsCardiovascular DiseasesDeep LearningFemaleFundus OculiHumansImage InterpretationComputer-AssistedMaleMiddle AgedRetinaRisk Factors

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Publication Info

Year
2018
Type
article
Volume
2
Issue
3
Pages
158-164
Citations
1678
Access
Closed

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1678
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61
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Cite This

Ryan Poplin, Avinash V. Varadarajan, Katy Blumer et al. (2018). Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning. Nature Biomedical Engineering , 2 (3) , 158-164. https://doi.org/10.1038/s41551-018-0195-0

Identifiers

DOI
10.1038/s41551-018-0195-0
PMID
31015713
arXiv
1708.09843

Data Quality

Data completeness: 88%