An Outperforming Artificial Intelligence Model to Identify Referable Blepharoptosis for General Practitioners.
Ju-Yi HungKe-Wei ChenChandrashan PereraHsu-Kuang ChiuCherng-Ru HsuDavid MyungAn-Chun LuoChiou-Shann FuhShu-Lang LiaoAndrea Lora KosslerPublished in: Journal of personalized medicine (2022)
The aim of this study is to develop an AI model that accurately identifies referable blepharoptosis automatically and to compare the AI model's performance to a group of non-ophthalmic physicians. In total, 1000 retrospective single-eye images from tertiary oculoplastic clinics were labeled by three oculoplastic surgeons as having either ptosis, including true and pseudoptosis, or a healthy eyelid. A convolutional neural network (CNN) was trained for binary classification. The same dataset was used in testing three non-ophthalmic physicians. The CNN model achieved a sensitivity of 92% and a specificity of 88%, compared with the non-ophthalmic physician group, which achieved a mean sensitivity of 72% and a mean specificity of 82.67%. The AI model showed better performance than the non-ophthalmic physician group in identifying referable blepharoptosis, including true and pseudoptosis, correctly. Therefore, artificial intelligence-aided tools have the potential to assist in the diagnosis and referral of blepharoptosis for general practitioners.