Evaluation of deep convolutional neural networks for glaucoma detection
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ID: 114756
2019
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Abstract
DCNNs may be a useful tool for detecting glaucoma or glaucoma-suspected eyes by use of fundus color images. Proper preprocessing and collection of qualified images are essential to improving the discriminative ability.Reference Key |
s2019japaneseevaluation
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Authors | Phan S;Satoh S;Yoda Y;Kashiwagi K;Oshika T; ;; |
Journal | japanese journal of ophthalmology |
Year | 2019 |
DOI | DOI not found |
URL | |
Keywords |
neural networks
National Center for Biotechnology Information
NCBI
NLM
MEDLINE
humans
pubmed abstract
nih
national institutes of health
national library of medicine
computer*
Retrospective Studies
diagnostic techniques
ophthalmological*
roc curve
pmid:30798379
doi:10.1007/s10384-019-00659-6
sang phan
shin'ichi satoh
japan ocular imaging registry research group
glaucoma / diagnosis*
optic disk / diagnostic imaging*
|
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