4.7 Article

Predicting sex from retinal fundus photographs using automated deep learning

Journal

SCIENTIFIC REPORTS
Volume 11, Issue 1, Pages -

Publisher

NATURE RESEARCH
DOI: 10.1038/s41598-021-89743-x

Keywords

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Funding

  1. Moorfields Eye Charity, a UK Research & Innovation (UKRI) Future Leaders Fellowship [MR/T019050/1, 190028A, 190016A]
  2. UK National Institute for Health Research (NIHR) Clinician Scientist Award [NIHR-CS-2014-12-023]

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The study demonstrates the development of a deep learning model by clinicians for predicting sex from retinal fundus photographs. The model achieved an accuracy of 86.5% in internal validation and 78.6% in external validation. The importance of model explainability, especially in relation to retinal feature differences, was highlighted in this research.
Deep learning may transform health care, but model development has largely been dependent on availability of advanced technical expertise. Herein we present the development of a deep learning model by clinicians without coding, which predicts reported sex from retinal fundus photographs. A model was trained on 84,743 retinal fundus photos from the UK Biobank dataset. External validation was performed on 252 fundus photos from a tertiary ophthalmic referral center. For internal validation, the area under the receiver operating characteristic curve (AUROC) of the code free deep learning (CFDL) model was 0.93. Sensitivity, specificity, positive predictive value (PPV) and accuracy (ACC) were 88.8%, 83.6%, 87.3% and 86.5%, and for external validation were 83.9%, 72.2%, 78.2% and 78.6% respectively. Clinicians are currently unaware of distinct retinal feature variations between males and females, highlighting the importance of model explainability for this task. The model performed significantly worse when foveal pathology was present in the external validation dataset, ACC: 69.4%, compared to 85.4% in healthy eyes, suggesting the fovea is a salient region for model performance OR (95% CI): 0.36 (0.19, 0.70) p=0.0022. Automated machine learning (AutoML) may enable clinician-driven automated discovery of novel insights and disease biomarkers.

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