Lin et al., 2023 - Google Patents
Development of revised ResNet-50 for diabetic retinopathy detectionLin et al., 2023
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- 12284068463431609549
- Author
- Lin C
- Wu K
- Publication year
- Publication venue
- BMC bioinformatics
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Background Diabetic retinopathy (DR) produces bleeding, exudation, and new blood vessel formation conditions. DR can damage the retinal blood vessels and cause vision loss or even blindness. If DR is detected early, ophthalmologists can use lasers to create tiny burns …
- 206010012689 Diabetic retinopathy 0 title abstract description 65
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