Feasibility and patient acceptability of a novel artificial intelligence-based screening model for diabetic retinopathy at endocrinology outpatient services: a pilot study.
Stuart KeelPei Ying LeeJane ScheetzZhixi LiMark A KotowiczRichard J MacIsaacMingguang HePublished in: Scientific reports (2018)
The purpose of this study is to evaluate the feasibility and patient acceptability of a novel artificial intelligence (AI)-based diabetic retinopathy (DR) screening model within endocrinology outpatient settings. Adults with diabetes were recruited from two urban endocrinology outpatient clinics and single-field, non-mydriatic fundus photographs were taken and graded for referable DR ( ≥ pre-proliferative DR). Each participant underwent; (1) automated screening model; where a deep learning algorithm (DLA) provided real-time reporting of results; and (2) manual model where retinal images were transferred to a retinal grading centre and manual grading outcomes were distributed to the patient within 2 weeks of assessment. Participants completed a questionnaire on the day of examination and 1-month following assessment to determine overall satisfaction and the preferred model of care. In total, 96 participants were screened for DR and the mean assessment time for automated screening was 6.9 minutes. Ninety-six percent of participants reported that they were either satisfied or very satisfied with the automated screening model and 78% reported that they preferred the automated model over manual. The sensitivity and specificity of the DLA for correct referral was 92.3% and 93.7%, respectively. AI-based DR screening in endocrinology outpatient settings appears to be feasible and well accepted by patients.
Keyphrases
- deep learning
- artificial intelligence
- diabetic retinopathy
- machine learning
- optical coherence tomography
- big data
- primary care
- healthcare
- convolutional neural network
- case report
- type diabetes
- chronic kidney disease
- high throughput
- end stage renal disease
- emergency department
- newly diagnosed
- metabolic syndrome
- prognostic factors
- quality improvement
- skeletal muscle
- health insurance