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- Campbell, J Peter3
- Chiang, Michael F3
- Kalpathy-Cramer, Jayashree3
- Chan, R V Paul2
- Chen, Jimmy S2
- Ostmo, Susan2
- Singh, Praveer2
- Al-Khaled, Tala1
- Bajimaya, Sanyam1
- Chan, RV Paul1
- Chang, Ken1
- Chuluunbat, Tsengelmaa1
- Chuluunkhuu, Chimgee1
- Cole, Emily1
- Hallak, Joelle1
- Hartnett, M Elizabeth1
- Jonas, Karyn E1
- KC, Sagun1
- MacKeen, Leslie D1
- Moshfeghi, Darius M1
- Munkhuu, Bayalag1
- Owen, Leah A1
- Valikodath, Nita G1
- Wu, Wei-Chi1
Keyword
- Deep learning3
- deep learning3
- DL3
- retinopathy of prematurity3
- ROP3
- Artificial intelligence2
- GAN2
- generative adversarial network2
- i-ROP2
- Retinopathy of prematurity2
- AI1
- BW1
- CNN1
- DR1
- FID1
- Fréchet inception distance1
- GA1
- Generative adversarial network1
- Generative adversarial networks1
- ICROP1
- Imaging and Informatics for Retinopathy of Prematurity1
- Informatics in ROP1
- International Classification of Retinopathy of Prematurity1
- IQR1
- LMIC1
VSI: Artificial Intelligence and Big Data
Ophthalmology Science has published a special virtual issue featuring Big Data & Artificial Intelligence (AI) articles. The collection includes novel methodologies, such as non-traditional statistical approaches that can be applied to Big Data and machine learning/deep learning studies. Our goal for this special issue is to initiate discussions of current challenges and potential strategies to overcome them. Some examples include standardization of datasets, data sharing processes, data privacy, and obstacles for transferring research findings into clinical care. Understanding both the potential and limitations of Big Data and AI approaches through an array of diverse studies and commentaries is the primary goal of this Ophthalmology Science special issue. We are grateful for authors who submitted to this special collection and we thank our guest editors, James D. Brandt, MD (University of California Davis Medical Center), Aaron Yuntai Lee, MD, MSCI (University of Washington), and Cecilia Lee, MD (University of Washington) for sharing their time and expertise.
- Original ArticlesOpen Access
Evaluation of an Artificial Intelligence System for Retinopathy of Prematurity Screening in Nepal and Mongolia
Ophthalmology ScienceVol. 2Issue 4100165Published online: April 25, 2022- Emily Cole
- Nita G. Valikodath
- Tala Al-Khaled
- Sanyam Bajimaya
- Sagun KC
- Tsengelmaa Chuluunbat
- and others
Cited in Scopus: 0To evaluate the performance of a deep learning (DL) algorithm for retinopathy of prematurity (ROP) screening in Nepal and Mongolia. - Research ArticleOpen Access
Synthetic Medical Images for Robust, Privacy-Preserving Training of Artificial Intelligence: Application to Retinopathy of Prematurity Diagnosis
Ophthalmology ScienceVol. 2Issue 2100126Published online: February 11, 2022- Aaron S. Coyner
- Jimmy S. Chen
- Ken Chang
- Praveer Singh
- Susan Ostmo
- R. V. Paul Chan
- and others
Cited in Scopus: 0Developing robust artificial intelligence (AI) models for medical image analysis requires large quantities of diverse, well-chosen data that can prove challenging to collect because of privacy concerns, disease rarity, or diagnostic label quality. Collecting image-based datasets for retinopathy of prematurity (ROP), a potentially blinding disease, suffers from these challenges. Progressively growing generative adversarial networks (PGANs) may help, because they can synthesize highly realistic images that may increase both the size and diversity of medical datasets. - The VSI: Artificial Intelligence and Big Data CollectionOpen Access
Deepfakes in Ophthalmology: Applications and Realism of Synthetic Retinal Images from Generative Adversarial Networks
Ophthalmology ScienceVol. 1Issue 4100079Published online: November 15, 2021- Jimmy S. Chen
- Aaron S. Coyner
- R.V. Paul Chan
- M. Elizabeth Hartnett
- Darius M. Moshfeghi
- Leah A. Owen
- and others
Cited in Scopus: 0Generative adversarial networks (GANs) are deep learning (DL) models that can create and modify realistic-appearing synthetic images, or deepfakes, from real images. The purpose of our study was to evaluate the ability of experts to discern synthesized retinal fundus images from real fundus images and to review the current uses and limitations of GANs in ophthalmology.