Detecting glaucoma from multi-modal data using probabilistic deep learning

被引:11
|
作者
Huang, Xiaoqin [1 ]
Sun, Jian [1 ,2 ]
Gupta, Krati [1 ]
Montesano, Giovanni [3 ,4 ,5 ]
Crabb, David P. [4 ]
Garway-Heath, David F. [5 ]
Brusini, Paolo [6 ]
Lanzetta, Paolo [7 ]
Oddone, Francesco [8 ]
Turpin, Andrew [9 ]
McKendrick, Allison M. [10 ]
Johnson, Chris A. [11 ]
Yousefi, Siamak [1 ,12 ]
机构
[1] Univ Tennessee, Dept Ophthalmol, Hlth Sci Ctr, Memphis, TN 38163 USA
[2] German Ctr Neurodegenerat Dis DZNE, Tubingen, Germany
[3] Univ Milan, ASST St Paolo & Carlo, Milan, Italy
[4] City Univ London, Dept Optometry & Visual Sci, London, England
[5] UCL Inst Ophthalmol, Moorfields Eye Hosp NHS Fdn Trust, NIHR Biomed Res Ctr, London, England
[6] Citta Udine Hlth Ctr, Dept Ophthalmol, Udine, Italy
[7] Univ Udine, Dept Med & Biol Sci, Ophthalmol Unit, Udine, Italy
[8] IRCCS Fdn Bietti, Rome, Italy
[9] Univ Melbourne, Sch Comp & Informat Syst, Melbourne, Vic, Australia
[10] Univ Melbourne, Dept Optometry & Vis Sci, Melbourne, Vic, Australia
[11] Univ Iowa Hosp & Clin, Dept Ophthalmol & Visual Sci, Iowa City, IA USA
[12] Univ Tennessee, Dept Genet Genom & Informat, Hlth Sci Ctr, Memphis, TN 38163 USA
关键词
deep learning; artificial intelligence; glaucoma; fundus photograph; visual field; automated diagnosis; RETINAL NERVE-FIBER; VISUAL-FIELD DEFECTS; DISC RATIO; CUP; CLASSIFIERS; VARIABILITY; AGREEMENT; DIAGNOSIS; LAYER; HEAD;
D O I
10.3389/fmed.2022.923096
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes and eyes with glaucoma from fundus photographs and visual fields. DesignAlgorithm development for discriminating normal and glaucoma eyes using data from multicenter, cross-sectional, case-control study. Subjects and participantsFundus photograph and visual field data from 1,655 eyes of 929 normal and glaucoma subjects to develop and test deep learning models and an independent group of 196 eyes of 98 normal and glaucoma patients to validate deep learning models. Main outcome measuresAccuracy and area under the receiver-operating characteristic curve (AUC). MethodsFundus photographs and OCT images were carefully examined by clinicians to identify glaucomatous optic neuropathy (GON). When GON was detected by the reader, the finding was further evaluated by another clinician. Three probabilistic deep convolutional neural network (CNN) models were developed using 1,655 fundus photographs, 1,655 visual fields, and 1,655 pairs of fundus photographs and visual fields collected from Compass instruments. Deep learning models were trained and tested using 80% of fundus photographs and visual fields for training set and 20% of the data for testing set. Models were further validated using an independent validation dataset. The performance of the probabilistic deep learning model was compared with that of the corresponding deterministic CNN model. ResultsThe AUC of the deep learning model in detecting glaucoma from fundus photographs, visual fields, and combined modalities using development dataset were 0.90 (95% confidence interval: 0.89-0.92), 0.89 (0.88-0.91), and 0.94 (0.92-0.96), respectively. The AUC of the deep learning model in detecting glaucoma from fundus photographs, visual fields, and both modalities using the independent validation dataset were 0.94 (0.92-0.95), 0.98 (0.98-0.99), and 0.98 (0.98-0.99), respectively. The AUC of the deep learning model in detecting glaucoma from fundus photographs, visual fields, and both modalities using an early glaucoma subset were 0.90 (0.88,0.91), 0.74 (0.73,0.75), 0.91 (0.89,0.93), respectively. Eyes that were misclassified had significantly higher uncertainty in likelihood of diagnosis compared to eyes that were classified correctly. The uncertainty level of the correctly classified eyes is much lower in the combined model compared to the model based on visual fields only. The AUCs of the deterministic CNN model using fundus images, visual field, and combined modalities based on the development dataset were 0.87 (0.85,0.90), 0.88 (0.84,0.91), and 0.91 (0.89,0.94), and the AUCs based on the independent validation dataset were 0.91 (0.89,0.93), 0.97 (0.95,0.99), and 0.97 (0.96,0.99), respectively, while the AUCs based on an early glaucoma subset were 0.88 (0.86,0.91), 0.75 (0.73,0.77), and 0.92 (0.89,0.95), respectively. Conclusion and relevanceProbabilistic deep learning models can detect glaucoma from multi-modal data with high accuracy. Our findings suggest that models based on combined visual field and fundus photograph modalities detects glaucoma with higher accuracy. While probabilistic and deterministic CNN models provided similar performance, probabilistic models generate certainty level of the outcome thus providing another level of confidence in decision making.
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页数:13
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