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. 2023 Apr 6;18(4):e0284060. doi: 10.1371/journal.pone.0284060

Table 2. Summary of each included studies.

Study Methodology Datasets Number of images Classes Other diseases Sensitivity Specificity Limitations
Alqudah 2019 [40] 15-layer CNN Duke, Mendeley, Self-built 136187 OCT images 4 CNV, DME, Normal 100% 100%
Bhatia 2019 [41] VGG-16 Duke, Mendeley, Noor, Self-built 5588 OCT images 4 CNV, DME, Normal 94% 90% 1) Ignored bad quality pictures.
Celebi 2022 [42] CapsNet Kaggle dataset, 726 OCT images 2 Normal 100% 99% 1)Did not study other retinal diseases;
2)Ignored bad quality pictures and patients who had other retinal diseases.
Dong 2022 [43] A joint CNN detector using Yolov3 Multicenter Self-built 208758 FP images 11 DR, Glaucoma, Pathological myopia, Retinal vein occlusion, Macula hole, Epiretinal macular membrane, Hypertensive retinopathy, Myelinated fibers, Retinitis pigmentosa, Normal 88% 98% 1)Only small number of retinitis pigmentosa.
Gour 2020 [44] VGG-16 ODIR 331 FP images 8 Cataract, Diabetes, Glaucoma, Hyperattention, Myopia, other abnormalities, Normal 6% 94% 1)The dataset contained 8 types of diseases, but with a small dataset.
He 2022 [45] ResNet-50 Duke, Mendeley 795 OCT images 3 DME, Normal 96% 99% 1)Only contained one other diseases.
Kadry 2021 [46] VGG-16 iChallenge-AMD database, OCTID 3200 FP and 3200 OCT images 2 Non-AMD 88% 85% 1)The definition of non-AMD is not clear.
VGG-19 84% 87%
AlexNet, 88% 85%
ResNet-50 88% 84%
Lee 2017 [47] VGG-16 Self-built 101002 OCT images 2 Normal 90% 91% 1)Included only images from patients who met the study criteria, and the neural network was only trained on these images;
2) This model was trained using images from a single academic center, and the external generalizability is unknown
Ma 2022 [48] ResNet-34 Self-built 73 OCT images 2 Polypoidal choroidal vasculopathy 92% 90% 1) Small dataset
Mathews 2022 [49] A 11-layer lightweight CNN Duke, Mendeley 10907 OCT images 3 DME, Normal 100% 100% 1) This study used drusen macular degeneration for AMD diagnosis;
2)Only contain one other diseases.
Matsuba 2019 [50] A 7-layer CNN Self-built 364 OPTOS images 2 Normal 100% 97% 1) It is difficult to acquire precise images using OPTOS when the transmission of light into the eye is impaired by an intermediate translucent zone;
2) Most AMD patients accept treatment which may cause diagnostic error
3) Did not study other retinal diseases.
Motozawa 2019 [51] An 18-layer CNN Self-built 169 OCT images 2 Normal 99% 100% 1) Excluded low quality images and patients who had other concomitant diseases;
2) Did not study other retinal diseases.
Takhchidi 2021 [52] ResNet-50 Self-built 1200 FP images 2 Normal 90% 86% 1) Did not study other retinal diseases.
Tan 2018 [53] A 14-layer CNN Self-built 1110 FP images 2 Normal 96% 94% 1) Did not study other retinal diseases.
Thomas 2021 [54] A 19-layer CNN Mendeley, Duke, Noor, OCTID 1139 OCT images 2 Normal 99% 100% 1) Did not study other retinal diseases.
Wang 2019 [55] DenseNet-121 Duke, Noor 8315 OCT images 3 DME, Normal 96% in Duke, 95% in Noor 95% in Duke, 95% in Noor 1) Only contained one other diseases.
ResNet-50 97% in Duke, 100% in Noor 100% in Duke, 99% in Noor
ResNext-101 100% in Duke, 99% in Noor 100% in Duke, 95% in Noor
DPN-92 97% in Duke, 100% in Noor 97% in Duke, 99% in Noor
CliqueNet-10 99% in Duke, 93% in Noor 99% in Duke, 98% in Noor
Yoo 2018 [56] VGG-19 Project Macula 83 FP and 83 OCT images 2 Normal 84% 59% 1) Did not study other retinal diseases;
2) Small datasets;
Zapata 2020 [57] A 24-layer CNN Optretina’s tagged dataset 306302 FP images and OCT images 2 Glaucomatous optic neuropathy 83% 89% 1.No clear number of OCT or FP images.