» Authors » Michelle Y T Yip

Michelle Y T Yip

Explore the profile of Michelle Y T Yip including associated specialties, affiliations and a list of published articles. Areas
Snapshot
Articles 6
Citations 234
Followers 0
Related Specialties
Top 10 Co-Authors
Published In
Affiliations
Soon will be listed here.
Recent Articles
1.
Poh S, Sia J, Yip M, Tsai A, Lee S, Tan G, et al.
Ophthalmol Retina . 2024 Jan; 8(7):633-645. PMID: 38280425
Objective: To review recent technological advancement in imaging, surgical visualization, robotics technology, and the use of artificial intelligence in surgical vitreoretinal (VR) diseases. Background: Technological advancements in imaging enhance both...
2.
Li Y, Yip M, Ting D, Ang M
Taiwan J Ophthalmol . 2023 Jul; 13(2):142-150. PMID: 37484621
Myopia as an uncorrected visual impairment is recognized as a global public health issue with an increasing burden on health-care systems. Moreover, high myopia increases one's risk of developing pathologic...
3.
Xie Y, Nguyen Q, Hamzah H, Lim G, Bellemo V, Gunasekeran D, et al.
Lancet Digit Health . 2020 Dec; 2(5):e240-e249. PMID: 33328056
Background: Deep learning is a novel machine learning technique that has been shown to be as effective as human graders in detecting diabetic retinopathy from fundus photographs. We used a...
4.
Bellemo V, Lim Z, Lim G, Nguyen Q, Xie Y, Yip M, et al.
Lancet Digit Health . 2020 Dec; 1(1):e35-e44. PMID: 33323239
Background: Radical measures are required to identify and reduce blindness due to diabetes to achieve the Sustainable Development Goals by 2030. Therefore, we evaluated the accuracy of an artificial intelligence...
5.
Lim G, Bellemo V, Xie Y, Lee X, Yip M, Ting D
Eye Vis (Lond) . 2020 Apr; 7:21. PMID: 32313813
Background: Effective screening is a desirable method for the early detection and successful treatment for diabetic retinopathy, and fundus photography is currently the dominant medium for retinal imaging due to...
6.
Yip M, Lim G, Lim Z, Nguyen Q, Chong C, Yu M, et al.
NPJ Digit Med . 2020 Mar; 3:40. PMID: 32219181
Deep learning (DL) has been shown to be effective in developing diabetic retinopathy (DR) algorithms, possibly tackling financial and manpower challenges hindering implementation of DR screening. However, our systematic review...