TY - JOUR
T1 - Artificial Intelligence for Retinopathy of Prematurity
T2 - Validation of a Vascular Severity Scale against International Expert Diagnosis
AU - Collaborative Community in Ophthalmic Imaging Executive Committee and the Collaborative Community in Ophthalmic Imaging Retinopathy of Prematurity Workgroup
AU - Campbell, J. Peter
AU - Chen, Jimmy S.
AU - Ostmo, Susan
AU - Chiang, Michael F.
AU - Moshfeghi, Darius M.
AU - Nudleman, Eric
AU - Ruambivoonsuk, Paisan
AU - Cherwek, Hunter
AU - Cheung, Carol Y.
AU - Singh, Praveer
AU - Kalpathy-Cramer, Jayashree
AU - Singh, Praveer
AU - Kalpathy-Cramer, Jayashree
AU - Eydelman, Malvina
AU - Chan, R. V.Paul
AU - Capone, Antonio
AU - Berrocal, Audina
AU - Binenbaum, Gil
AU - Blair, Michael
AU - Capone, Antonio
AU - Chan, R. V.Paul
AU - Chen, Yi
AU - Dai, Shuan
AU - Ells, Anna
AU - Fielder, Alistair
AU - Fleck, Brian
AU - Good, William
AU - Hartnett, Mary Elizabeth
AU - Holmstrom, Gerd
AU - Kusaka, Shunji
AU - Kychenthal, Andres
AU - Lepore, Domenico
AU - Lorenz, Birgit
AU - Martinez-Castellanos, Maria Ana
AU - Ozdek, Sengul
AU - Popoola, Dupe
AU - Quinn, Graham
AU - Reynolds, James
AU - Shah, Parag
AU - Shapiro, Michael
AU - Stahl, Andreas
AU - Toth, Cynthia
AU - Vinekar, Anand
AU - Visser, Linda
AU - Wallace, David
AU - Wu, Wei Chi
AU - Zhao, Peiquan
AU - Zin, Andrea
AU - Abramoff, M. Ichael
AU - Schuman, Joel S.
N1 - Publisher Copyright:
© 2022
PY - 2022/7
Y1 - 2022/7
N2 - Purpose: To validate a vascular severity score as an appropriate output for artificial intelligence (AI) Software as a Medical Device (SaMD) for retinopathy of prematurity (ROP) through comparison with ordinal disease severity labels for stage and plus disease assigned by the International Classification of Retinopathy of Prematurity, Third Edition (ICROP3), committee. Design: Validation study of an AI-based ROP vascular severity score. Participants: A total of 34 ROP experts from the ICROP3 committee. Methods: Two separate datasets of 30 fundus photographs each for stage (0–5) and plus disease (plus, preplus, neither) were labeled by members of the ICROP3 committee using an open-source platform. Averaging these results produced a continuous label for plus (1–9) and stage (1–3) for each image. Experts were also asked to compare each image to each other in terms of relative severity for plus disease. Each image was also labeled with a vascular severity score from the Imaging and Informatics in ROP deep learning system, which was compared with each grader's diagnostic labels for correlation, as well as the ophthalmoscopic diagnosis of stage. Main Outcome Measures: Weighted kappa and Pearson correlation coefficients (CCs) were calculated between each pair of grader classification labels for stage and plus disease. The Elo algorithm was also used to convert pairwise comparisons for each expert into an ordered set of images from least to most severe. Results: The mean weighted kappa and CC for all interobserver pairs for plus disease image comparison were 0.67 and 0.88, respectively. The vascular severity score was found to be highly correlated with both the average plus disease classification (CC = 0.90, P < 0.001) and the ophthalmoscopic diagnosis of stage (P < 0.001 by analysis of variance) among all experts. Conclusions: The ROP vascular severity score correlates well with the International Classification of Retinopathy of Prematurity committee member's labels for plus disease and stage, which had significant intergrader variability. Generation of a consensus for a validated scoring system for ROP SaMD can facilitate global innovation and regulatory authorization of these technologies.
AB - Purpose: To validate a vascular severity score as an appropriate output for artificial intelligence (AI) Software as a Medical Device (SaMD) for retinopathy of prematurity (ROP) through comparison with ordinal disease severity labels for stage and plus disease assigned by the International Classification of Retinopathy of Prematurity, Third Edition (ICROP3), committee. Design: Validation study of an AI-based ROP vascular severity score. Participants: A total of 34 ROP experts from the ICROP3 committee. Methods: Two separate datasets of 30 fundus photographs each for stage (0–5) and plus disease (plus, preplus, neither) were labeled by members of the ICROP3 committee using an open-source platform. Averaging these results produced a continuous label for plus (1–9) and stage (1–3) for each image. Experts were also asked to compare each image to each other in terms of relative severity for plus disease. Each image was also labeled with a vascular severity score from the Imaging and Informatics in ROP deep learning system, which was compared with each grader's diagnostic labels for correlation, as well as the ophthalmoscopic diagnosis of stage. Main Outcome Measures: Weighted kappa and Pearson correlation coefficients (CCs) were calculated between each pair of grader classification labels for stage and plus disease. The Elo algorithm was also used to convert pairwise comparisons for each expert into an ordered set of images from least to most severe. Results: The mean weighted kappa and CC for all interobserver pairs for plus disease image comparison were 0.67 and 0.88, respectively. The vascular severity score was found to be highly correlated with both the average plus disease classification (CC = 0.90, P < 0.001) and the ophthalmoscopic diagnosis of stage (P < 0.001 by analysis of variance) among all experts. Conclusions: The ROP vascular severity score correlates well with the International Classification of Retinopathy of Prematurity committee member's labels for plus disease and stage, which had significant intergrader variability. Generation of a consensus for a validated scoring system for ROP SaMD can facilitate global innovation and regulatory authorization of these technologies.
KW - Artificial intelligence
KW - Deep learning
KW - Disease classification
KW - Interobserver agreement
KW - Retinopathy of prematurity
KW - Severity score
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U2 - 10.1016/j.ophtha.2022.02.008
DO - 10.1016/j.ophtha.2022.02.008
M3 - Article
C2 - 35157950
AN - SCOPUS:85126565742
SN - 0161-6420
VL - 129
SP - e69-e76
JO - Ophthalmology
JF - Ophthalmology
IS - 7
ER -