An Automated Detection System for Microaneurysms That Is Effective across Different Racial Groups.
George Michael SalehJames WawrzynskiSilvestro CaputoTunde PetoLutfiah Ismail Al TurkSu WangYin HuLyndon Da CruzPhil SmithHongying Lilian TangPublished in: Journal of ophthalmology (2016)
Patients without diabetic retinopathy (DR) represent a large proportion of the caseload seen by the DR screening service so reliable recognition of the absence of DR in digital fundus images (DFIs) is a prime focus of automated DR screening research. We investigate the use of a novel automated DR detection algorithm to assess retinal DFIs for absence of DR. A retrospective, masked, and controlled image-based study was undertaken. 17,850 DFIs of patients from six different countries were assessed for DR by the automated system and by human graders. The system's performance was compared across DFIs from the different countries/racial groups. The sensitivities for detection of DR by the automated system were Kenya 92.8%, Botswana 90.1%, Norway 93.5%, Mongolia 91.3%, China 91.9%, and UK 90.1%. The specificities were Kenya 82.7%, Botswana 83.2%, Norway 81.3%, Mongolia 82.5%, China 83.0%, and UK 79%. There was little variability in the calculated sensitivities and specificities across the six different countries involved in the study. These data suggest the possible scalability of an automated DR detection platform that enables rapid identification of patients without DR across a wide range of races.
Keyphrases
- editorial comment
- diabetic retinopathy
- deep learning
- end stage renal disease
- machine learning
- newly diagnosed
- ejection fraction
- high throughput
- chronic kidney disease
- loop mediated isothermal amplification
- optical coherence tomography
- mental health
- peritoneal dialysis
- endothelial cells
- healthcare
- cross sectional
- patient reported
- single cell