Development and validation of an offline deep learning algorithm to detect vitreoretinal abnormalities on ocular ultrasound

被引:7
作者
Adithya, Venkatesh Krishna [1 ]
Baskaran, Prabu [2 ]
Aruna, S. [2 ]
Mohankumar, Arthi [1 ]
Hubschman, Jean Pierre [3 ]
Shukla, Aakriti Garg [4 ]
Venkatesh, Rengaraj [1 ]
机构
[1] Aravind Eye Hosp, Glaucoma, Pondicherry, India
[2] Aravind Eye Hosp, Retina, Chennai, Tamil Nadu, India
[3] Univ Calif Los Angeles, Retina, Jules Stein Eye Inst, Los Angeles, CA 90024 USA
[4] Wills Eye Hosp & Res Inst, Philadelpia, Philadelpia, PA USA
关键词
Artificial intelligence; deep learning; ophthalmic technicians; retina; ultrasound; vitreo retinal; vitreous; MACULAR DEGENERATION; GLOBAL PREVALENCE; BURDEN;
D O I
10.4103/ijo.IJO_2119_21
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
Purpose: We describe our offline deep learning algorithm (DLA) and validation of its diagnostic ability to identify vitreoretinal abnormalities (VRA) on ocular ultrasound (OUS). Methods: Enrolled participants underwent OUS. All images were classified as normal or abnormal by two masked vitreoretinal specialists (AS, AM). A data set of 4902 OUS images was collected, and 4740 images of satisfactory quality were used. Of this, 4319 were processed for further training and development of DLA, and 421 images were graded by vitreoretinal specialists (AS and AM) to obtain ground truth. The main outcome measures were sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV) and area under receiver operating characteristic (AUROC). Results: Our algorithm demonstrated high sensitivity and specificity in identifying VRA on OUS ([90.8%; 95% confidence interval (CI): 86.1-94.3%] and [97.1% (95% CI: 93.7-98.9%], respectively). PPV and NPV of the algorithm were also high ([97.0%; 95% CI: 93.7-98.9%] and [90.8%; 95% CI: 86.2-94.3%], respectively). The AUROC was high at 0.939, and the intergrader agreement was nearly perfect with Cohen's kappa of 0.938. The model demonstrated high sensitivity in predicting vitreous hemorrhage (100%), retinal detachment (97.4%), and choroidal detachment (100%). Conclusion: Our offline DLA software demonstrated reliable performance (high sensitivity, specificity, AUROC, PPV, NPV, and intergrader agreement) for predicting VRA on OUS. This might serve as an important tool for the ophthalmic technicians who are involved in community eye screening at rural settings where trained ophthalmologists are not available.
引用
收藏
页码:1145 / 1149
页数:5
相关论文
共 12 条
[1]   Automated Grading of Age-Related Macular Degeneration From Color Fundus Images Using Deep Convolutional Neural Networks [J].
Burlina, Philippe M. ;
Joshi, Neil ;
Pekala, Michael ;
Pacheco, Katia D. ;
Freund, David E. ;
Bressler, Neil M. .
JAMA OPHTHALMOLOGY, 2017, 135 (11) :1170-1176
[2]   A Clinician's Guide to Artificial Intelligence: How to Critically Appraise Machine Learning Studies [J].
Faes, Livia ;
Liu, Xiaoxuan ;
Wagner, Siegfried K. ;
Fu, Dun Jack ;
Balaskas, Konstantinos ;
Sim, Dawn A. ;
Bachmann, Lucas M. ;
Keane, Pearse A. ;
Denniston, Alastair K. .
TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2020, 9 (02)
[3]   Development and Validation of a Deep Learning System for Diagnosing Glaucoma Using Optical Coherence Tomography [J].
Kim, Ko Eun ;
Kim, Joon Mo ;
Song, Ji Eun ;
Kee, Changwon ;
Han, Jong Chul ;
Hyun, Seung Hyup .
JOURNAL OF CLINICAL MEDICINE, 2020, 9 (07) :1-14
[4]   Deep learning for detecting retinal detachment and discerning macular status using ultra-widefield fundus images [J].
Li, Zhongwen ;
Guo, Chong ;
Nie, Danyao ;
Lin, Duoru ;
Zhu, Yi ;
Chen, Chuan ;
Wu, Xiaohang ;
Xu, Fabao ;
Jin, Chenjin ;
Zhang, Xiayin ;
Xiao, Hui ;
Zhang, Kai ;
Zhao, Lanqin ;
Yari, Pisong ;
Lai, Weiyi ;
Li, Jianyin ;
Feng, Weibo ;
Li, Yonghao ;
Ting, Daniel Shu Wei ;
Lin, Haotian .
COMMUNICATIONS BIOLOGY, 2020, 3 (01)
[5]   Ocular decompression retinopathy: A review [J].
Mukkamala, Sri Krishna ;
Patel, Amar ;
Dorairaj, Syril ;
McGlynn, Robert ;
Sidoti, Paul A. ;
Weinreb, Robert N. ;
Rusoff, Jade ;
Rao, Sunil ;
Gentile, Ronald C. .
SURVEY OF OPHTHALMOLOGY, 2013, 58 (06) :505-512
[6]   Accuracy of deep learning, a machine-learning technology, using ultra-wide-field fundus ophthalmoscopy for detecting rhegmatogenous retinal detachment [J].
Ohsugi, Hideharu ;
Tabuchi, Hitoshi ;
Enno, Hiroki ;
Ishitobi, Naofumi .
SCIENTIFIC REPORTS, 2017, 7
[7]   ImageNet Large Scale Visual Recognition Challenge [J].
Russakovsky, Olga ;
Deng, Jia ;
Su, Hao ;
Krause, Jonathan ;
Satheesh, Sanjeev ;
Ma, Sean ;
Huang, Zhiheng ;
Karpathy, Andrej ;
Khosla, Aditya ;
Bernstein, Michael ;
Berg, Alexander C. ;
Fei-Fei, Li .
INTERNATIONAL JOURNAL OF COMPUTER VISION, 2015, 115 (03) :211-252
[8]   The prevalence and risk factor for cataract in rural and urban India [J].
Singh, Sumeer ;
Pardhan, Shahina ;
Kulothungan, Vaitheeswaran ;
Swaminathan, Gayathri ;
Ravichandran, Janani Surya ;
Ganesan, Suganeswari ;
Sharma, Tarun ;
Raman, Rajiv .
INDIAN JOURNAL OF OPHTHALMOLOGY, 2019, 67 (04) :477-483
[9]   Medios- An offline, smartphone-based artificial intelligence algorithm for the diagnosis of diabetic retinopathy [J].
Sosale, Bhavana ;
Sosale, Aravind R. ;
Murthy, Hemanth ;
Sengupta, Sabyasachi ;
Naveenam, Muralidhar .
INDIAN JOURNAL OF OPHTHALMOLOGY, 2020, 68 (02) :391-395
[10]  
Szegedy C, 2017, AAAI CONF ARTIF INTE, P4278