48 research outputs found

    AUTOMATIC METHOD FOR GLAUCOMA CLASSIFICATION USING TEXTURE ANALYSIS, XGBOOST AND GRID SEARCH

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    Glaucoma is an irreversible pathology, generated by increased intraocular pressure. Early detection is critical and can pre- vent total vision loss. Clinical examinations are commonly used to detect the disease. Still, the time and cost of identi- fication is quite high. This paper presents a computational methodology that aims to assist specialists in the discov- ery of glaucoma through Computer Vision techniques. The proposed methodology consists in the application of several texture descriptors combined with a parameter optimiza- tion done through Grid search with the XGBoost classifier. A result was obtained with accuracy of 82.37% and ROC of 82.08%

    ๋”ฅ๋Ÿฌ๋‹์„ ์ด์šฉํ•œ ๋…น๋‚ด์žฅ ์ง„๋‹จ ๋ณด์กฐ ์‹œ์Šคํ…œ

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    ํ•™์œ„๋…ผ๋ฌธ (๋ฐ•์‚ฌ) -- ์„œ์šธ๋Œ€ํ•™๊ต ๋Œ€ํ•™์› : ๊ณต๊ณผ๋Œ€ํ•™ ํ˜‘๋™๊ณผ์ • ๋ฐ”์ด์˜ค์—”์ง€๋‹ˆ์–ด๋ง์ „๊ณต, 2021. 2. ๊น€ํฌ์ฐฌ.๋ณธ ๋…ผ๋ฌธ์—์„œ๋Š” ๋”ฅ ๋Ÿฌ๋‹ ๊ธฐ๋ฐ˜์˜ ์ง„๋‹จ ๋ณด์กฐ ์‹œ์Šคํ…œ์„ ์ œ์•ˆํ•˜์˜€๋‹ค. ์ƒˆ๋กœ์šด ๋ฐฉ๋ฒ•์ด ๋…น๋‚ด์žฅ ๋ฐ์ดํ„ฐ์— ์ ์šฉ๋˜์—ˆ๊ณ  ๊ฒฐ๊ณผ๋ฅผ ํ‰๊ฐ€ํ•˜์˜€๋‹ค. ์ฒซ๋ฒˆ์งธ ์—ฐ๊ตฌ์—์„œ๋Š” ์ŠคํŽ™ํŠธ๋Ÿผ์˜์—ญ ๋น›๊ฐ„์„ญ๋‹จ์ธต์ดฌ์˜๊ธฐ(SD-OCT)๋ฅผ ๋”ฅ ๋Ÿฌ๋‹ ๋ถ„๋ฅ˜ ๊ธฐ๋ฅผ ์ด์šฉํ•ด ๋ถ„์„ํ•˜์˜€๋‹ค. ์ŠคํŽ™ํŠธ๋Ÿผ์˜์—ญ ๋น›๊ฐ„์„ญ๋‹จ์ธต์ดฌ์˜๊ธฐ๋Š” ๋…น๋‚ด์žฅ์œผ๋กœ ์ธํ•œ ๊ตฌ์กฐ์  ์†์ƒ์„ ํ‰๊ฐ€ํ•˜๊ธฐ ์œ„ํ•ด ์‚ฌ์šฉํ•˜๋Š” ์žฅ๋น„์ด๋‹ค. ๋ถ„๋ฅ˜ ์•Œ๊ณ ๋ฆฌ์ฆ˜์€ ํ•ฉ์„ฑ ๊ณฑ ์‹ ๊ฒฝ๋ง์„ ์ด์šฉํ•ด ๊ฐœ๋ฐœ ๋˜์—ˆ์œผ๋ฉฐ, ์ŠคํŽ™ํŠธ๋Ÿผ์˜์—ญ ๋น›๊ฐ„์„ญ๋‹จ์ธต์ดฌ์˜๊ธฐ์˜ ๋ง๋ง‰์‹ ๊ฒฝ์„ฌ์œ ์ธต(RNFL)๊ณผ ํ™ฉ๋ฐ˜๋ถ€ ์‹ ๊ฒฝ์ ˆ์„ธํฌ๋‚ด๋ง์ƒ์ธต (GCIPL) ์‚ฌ์ง„์„ ์ด์šฉํ•ด ํ•™์Šตํ–ˆ๋‹ค. ์ œ์•ˆํ•œ ๋ฐฉ๋ฒ•์€ ๋‘๊ฐœ์˜ ์ด๋ฏธ์ง€๋ฅผ ์ž…๋ ฅ์œผ๋กœ ๋ฐ›๋Š” ์ด์ค‘์ž…๋ ฅํ•ฉ์„ฑ๊ณฑ์‹ ๊ฒฝ๋ง(DICNN)์ด๋ฉฐ, ๋”ฅ ๋Ÿฌ๋‹ ๋ถ„๋ฅ˜์—์„œ ํšจ๊ณผ์ ์ธ ๊ฒƒ์œผ๋กœ ์•Œ๋ ค์ ธ ์žˆ๋‹ค. ์ด์ค‘์ž…๋ ฅํ•ฉ์„ฑ๊ณฑ์‹ ๊ฒฝ๋ง์€ ๋ง๋ง‰์‹ ๊ฒฝ์„ฌ์œ ์ธต ๊ณผ ์‹ ๊ฒฝ์ ˆ์„ธํฌ์ธต ์˜ ๋‘๊ป˜ ์ง€๋„๋ฅผ ์ด์šฉํ•˜์—ฌ ํ•™์Šต ๋์œผ๋ฉฐ, ํ•™์Šต๋œ ๋„คํŠธ์›Œํฌ๋Š” ๋…น๋‚ด์žฅ๊ณผ ์ •์ƒ ๊ตฐ์„ ๊ตฌ๋ถ„ํ•œ๋‹ค. ์ด์ค‘์ž…๋ ฅํ•ฉ์„ฑ๊ณฑ์‹ ๊ฒฝ๋ง์€ ์ •ํ™•๋„์™€ ์ˆ˜์‹ ๊ธฐ๋™์ž‘ํŠน์„ฑ๊ณก์„ ํ•˜๋ฉด์  (AUC)์œผ๋กœ ํ‰๊ฐ€ ๋˜์—ˆ๋‹ค. ๋ง๋ง‰์‹ ๊ฒฝ์„ฌ์œ ์ธต๊ณผ ์‹ ๊ฒฝ์ ˆ์„ธํฌ์ธต ๋‘๊ป˜ ์ง€๋„๋กœ ํ•™์Šต๋œ ์„ค๊ณ„ํ•œ ๋”ฅ ๋Ÿฌ๋‹ ๋ชจ๋ธ์„ ์กฐ๊ธฐ ๋…น๋‚ด์žฅ๊ณผ ์ •์ƒ ๊ตฐ์„ ๋ถ„๋ฅ˜ํ•˜๋Š” ์„ฑ๋Šฅ์„ ํ‰๊ฐ€ํ•˜๊ณ  ๋น„๊ตํ•˜์˜€๋‹ค. ์„ฑ๋Šฅํ‰๊ฐ€ ๊ฒฐ๊ณผ ์ด์ค‘์ž…๋ ฅํ•ฉ์„ฑ๊ณฑ์‹ ๊ฒฝ๋ง์€ ์กฐ๊ธฐ ๋…น๋‚ด์žฅ์„ ๋ถ„๋ฅ˜ํ•˜๋Š”๋ฐ 0.869์˜ ์ˆ˜์‹ ๊ธฐ๋™์ž‘ํŠน์„ฑ๊ณก์„ ์˜๋„“์ด์™€ 0.921์˜ ๋ฏผ๊ฐ๋„, 0.756์˜ ํŠน์ด๋„๋ฅผ ๋ณด์˜€๋‹ค. ๋‘๋ฒˆ์งธ ์—ฐ๊ตฌ์—์„œ๋Š” ๋”ฅ ๋Ÿฌ๋‹์„ ์ด์šฉํ•ด ์‹œ์‹ ๊ฒฝ์œ ๋‘์‚ฌ์ง„์˜ ํ•ด์ƒ๋„์™€ ๋Œ€๋น„, ์ƒ‰๊ฐ, ๋ฐ๊ธฐ๋ฅผ ๋ณด์ •ํ•˜๋Š” ๋ฐฉ๋ฒ•์„ ์ œ์•ˆํ•˜์˜€๋‹ค. ์‹œ์‹ ๊ฒฝ์œ ๋‘์‚ฌ์ง„์€ ๋…น๋‚ด์žฅ์„ ์ง„๋‹จํ•˜๋Š”๋ฐ ์žˆ์–ด ํšจ๊ณผ์ ์ธ ๊ฒƒ์œผ๋กœ ์•Œ๋ ค์ ธ ์žˆ๋‹ค. ํ•˜์ง€๋งŒ, ๋…น๋‚ด์žฅ์˜ ์ง„๋‹จ์—์„œ ํ™˜์ž์˜ ๋‚˜, ์ž‘์€ ๋™๊ณต, ๋งค์ฒด ๋ถˆํˆฌ๋ช…์„ฑ ๋“ฑ์œผ๋กœ ์ธํ•ด ํ‰๊ฐ€๊ฐ€ ์–ด๋ ค์šด ๊ฒฝ์šฐ๊ฐ€ ์žˆ๋‹ค. ์ดˆ ํ•ด์ƒ๋„์™€ ๋ณด์ • ์•Œ๊ณ ๋ฆฌ์ฆ˜์€ ์ดˆ ํ•ด์ƒ๋„ ์ ๋Œ€์ ์ƒ์„ฑ์‹ ๊ฒฝ๋ง์„ ํ†ตํ•ด ๊ฐœ๋ฐœ๋˜์—ˆ๋‹ค. ์›๋ณธ ๊ณ ํ•ด์ƒ๋„์˜ ์‹œ์‹ ๊ฒฝ ์œ ๋‘ ์‚ฌ์ง„์€ ์ €ํ•ด์ƒ๋„ ์‚ฌ์ง„์œผ๋กœ ์ถ•์†Œ๋˜๊ณ , ๋ณด์ •๋œ ๊ณ ํ•ด์ƒ๋„ ์‹œ์‹ ๊ฒฝ์œ ๋‘์‚ฌ์ง„์œผ๋กœ ๋ณด์ • ๋˜๋ฉฐ, ๋ณด์ •๋œ ์‚ฌ์ง„์€ ์‹œ์‹ ๊ฒฝ์—ฌ๋ฐฑ์˜ ๊ฐ€์‹œ์„ฑ๊ณผ ๊ทผ์ฒ˜ ํ˜ˆ๊ด€์„ ์ž˜ ๋ณด์ด๋„๋ก ํ›„์ฒ˜๋ฆฌ ์•Œ๊ณ ๋ฆฌ์ฆ˜์„ ์ด์šฉํ•œ๋‹ค. ์ €ํ•ด์ƒ๋„์ด๋ฏธ์ง€๋ฅผ ๋ณด์ •๋œ ๊ณ ํ•ด์ƒ๋„์ด๋ฏธ์ง€๋กœ ๋ณต์›ํ•˜๋Š” ๊ณผ์ •์„ ์ดˆํ•ด์ƒ๋„์ ๋Œ€์ ์‹ ๊ฒฝ๋ง์„ ํ†ตํ•ด ํ•™์Šตํ•œ๋‹ค. ์„ค๊ณ„ํ•œ ๋„คํŠธ์›Œํฌ๋Š” ์‹ ํ˜ธ ๋Œ€ ์žก์Œ ๋น„(PSNR)๊ณผ ๊ตฌ์กฐ์ ์œ ์‚ฌ์„ฑ(SSIM), ํ‰๊ท ํ‰๊ฐ€์ (MOS)๋ฅผ ์ด์šฉํ•ด ํ‰๊ฐ€ ๋˜์—ˆ๋‹ค. ํ˜„์žฌ์˜ ์—ฐ๊ตฌ๋Š” ๋”ฅ ๋Ÿฌ๋‹์ด ์•ˆ๊ณผ ์ด๋ฏธ์ง€๋ฅผ 4๋ฐฐ ํ•ด์ƒ๋„์™€ ๊ตฌ์กฐ์ ์ธ ์„ธ๋ถ€ ํ•ญ๋ชฉ์ด ์ž˜ ๋ณด์ด๋„๋ก ๊ฐœ์„ ํ•  ์ˆ˜ ์žˆ๋‹ค๋Š” ๊ฒƒ์„ ๋ณด์—ฌ์ฃผ์—ˆ๋‹ค. ํ–ฅ์ƒ๋œ ์‹œ์‹ ๊ฒฝ์œ ๋‘ ์‚ฌ์ง„์€ ์‹œ์‹ ๊ฒฝ์˜ ๋ณ‘๋ฆฌํ•™์ ์ธ ํŠน์„ฑ์˜ ์ง„๋‹จ ์ •ํ™•๋„๋ฅผ ๋ช…ํ™•ํžˆ ํ–ฅ์ƒ์‹œํ‚จ๋‹ค. ์„ฑ๋Šฅํ‰๊ฐ€๊ฒฐ๊ณผ ํ‰๊ท  PSNR์€ 25.01 SSIM์€ 0.75 MOS๋Š” 4.33์œผ๋กœ ๋‚˜ํƒ€๋‚ฌ๋‹ค. ์„ธ๋ฒˆ์งธ ์—ฐ๊ตฌ์—์„œ๋Š” ํ™˜์ž ์ •๋ณด์™€ ์•ˆ๊ณผ ์˜์ƒ(์‹œ์‹ ๊ฒฝ์œ ๋‘ ์‚ฌ์ง„๊ณผ ๋ถ‰์€์ƒ‰์ด ์—†๋Š” ๋ง๋ง‰์‹ ๊ฒฝ์„ฌ์œ ์ธต ์‚ฌ์ง„)์„ ์ด์šฉํ•ด ๋…น๋‚ด์žฅ ์˜์‹ฌ ํ™˜์ž๋ฅผ ๋ถ„๋ณ„ํ•˜๊ณ  ๋…น๋‚ด์žฅ ์˜์‹ฌ ํ™˜์ž์˜ ๋ฐœ๋ณ‘ ์—ฐ์ˆ˜๋ฅผ ์˜ˆ์ธกํ•˜๋Š” ๋”ฅ ๋Ÿฌ๋‹ ๋ชจ๋ธ์„ ๊ฐœ๋ฐœํ•˜์˜€๋‹ค. ์ž„์ƒ ๋ฐ์ดํ„ฐ๋“ค์€ ๋…น๋‚ด์žฅ์„ ์ง„๋‹จํ•˜๊ฑฐ๋‚˜ ์˜ˆ์ธกํ•˜๋Š”๋ฐ ์œ ์šฉํ•œ ์ •๋ณด๋“ค์„ ๊ฐ€์ง€๊ณ  ์žˆ๋‹ค. ํ•˜์ง€๋งŒ, ์–ด๋–ป๊ฒŒ ๋‹ค์–‘ํ•œ ์œ ํ˜•์˜ ์ž„์ƒ์ •๋ณด๋“ค์„ ์กฐํ•ฉํ•˜๋Š” ๊ฒƒ์ด ๊ฐ๊ฐ์˜ ํ™˜์ž๋“ค์— ๋Œ€ํ•ด ์ž ์žฌ์ ์ธ ๋…น๋‚ด์žฅ์„ ์˜ˆ์ธกํ•˜๋Š”๋ฐ ์–ด๋–ค ์˜ํ–ฅ์„ ์ฃผ๋Š”์ง€์— ๋Œ€ํ•œ ์—ฐ๊ตฌ๊ฐ€ ์ง„ํ–‰ ๋œ ์ ์ด ์—†๋‹ค. ๋…น๋‚ด์žฅ ์˜ ์‹ฌ์ž ๋ถ„๋ฅ˜์™€ ๋ฐœ๋ณ‘ ๋…„ ์ˆ˜ ์˜ˆ์ธก์€ ํ•ฉ์„ฑ ๊ณฑ ์ž๋™ ์ธ์ฝ”๋”(CAE)๋ฅผ ๋น„ ์ง€๋„์  ํŠน์„ฑ ์ถ”์ถœ ๊ธฐ๋กœ ์‚ฌ์šฉํ•˜๊ณ , ๊ธฐ๊ณ„ํ•™์Šต ๋ถ„๋ฅ˜ ๊ธฐ์™€ ํšŒ๊ท€๊ธฐ๋ฅผ ํ†ตํ•ด ์ง„ํ–‰ํ•˜์˜€๋‹ค. ์„ค๊ณ„ํ•œ ๋ชจ๋ธ์€ ์ •ํ™•๋„์™€ ํ‰๊ท ์ œ๊ณฑ์˜ค์ฐจ(MSE)๋ฅผ ํ†ตํ•ด ํ‰๊ฐ€ ๋˜์—ˆ์œผ๋ฉฐ, ์ด๋ฏธ์ง€ ํŠน์ง•๊ณผ ํ™˜์ž ํŠน์ง•์€ ์กฐํ•ฉํ–ˆ์„ ๋•Œ ๋…น๋‚ด์žฅ ์˜์‹ฌ ํ™˜์ž ๋ถ„๋ฅ˜์™€ ๋ฐœ๋ณ‘ ๋…„ ์ˆ˜ ์˜ˆ์ธก์˜ ์„ฑ๋Šฅ์ด ์ด๋ฏธ์ง€ ํŠน์ง•๊ณผ ํ™˜์ž ํŠน์ง•์„ ๊ฐ๊ฐ ์ผ์„ ๋•Œ๋ณด๋‹ค ์„ฑ๋Šฅ์ด ์ข‹์•˜๋‹ค. ์ •๋‹ต๊ณผ์˜ MSE๋Š” 2.613์œผ๋กœ ๋‚˜ํƒ€๋‚ฌ๋‹ค. ๋ณธ ์—ฐ๊ตฌ์—์„œ๋Š” ๋”ฅ ๋Ÿฌ๋‹์„ ์ด์šฉํ•ด ๋…น๋‚ด์žฅ ๊ด€๋ จ ์ž„์ƒ ๋ฐ์ดํ„ฐ ์ค‘ ๋ง๋ง‰์‹ ๊ฒฝ์„ฌ์œ ์ธต, ์‹ ๊ฒฝ์ ˆ์„ธํฌ์ธต ์‚ฌ์ง„์„ ๋…น๋‚ด์žฅ ์ง„๋‹จ์— ์ด์šฉ๋˜์—ˆ๊ณ , ์‹œ์‹ ๊ฒฝ์œ ๋‘ ์‚ฌ์ง„์€ ์‹œ์‹ ๊ฒฝ์˜ ๋ณ‘๋ฆฌํ•™์ ์ธ ์ง„๋‹จ ์ •ํ™•๋„๋ฅผ ๋†’์˜€๊ณ , ํ™˜์ž ์ •๋ณด๋Š” ๋ณด๋‹ค ์ •ํ™•ํ•œ ๋…น๋‚ด์žฅ ์˜์‹ฌ ํ™˜์ž ๋ถ„๋ฅ˜์™€ ๋ฐœ๋ณ‘ ๋…„ ์ˆ˜ ์˜ˆ์ธก์— ์ด์šฉ๋˜์—ˆ๋‹ค. ํ–ฅ์ƒ๋œ ๋…น๋‚ด์žฅ ์ง„๋‹จ ์„ฑ๋Šฅ์€ ๊ธฐ์ˆ ์ ์ด๊ณ  ์ž„์ƒ์ ์ธ ์ง€ํ‘œ๋“ค์„ ํ†ตํ•ด ๊ฒ€์ฆ๋˜์—ˆ๋‹ค.This paper presents deep learning-based methods for improving glaucoma diagnosis support systems. Novel methods were applied to glaucoma clinical cases and the results were evaluated. In the first study, a deep learning classifier for glaucoma diagnosis based on spectral-domain optical coherence tomography (SD-OCT) images was proposed and evaluated. Spectral-domain optical coherence tomography (SD-OCT) is commonly employed as an imaging modality for the evaluation of glaucomatous structural damage. The classification model was developed using convolutional neural network (CNN) as a base, and was trained with SD-OCT retinal nerve fiber layer (RNFL) and macular ganglion cell-inner plexiform layer (GCIPL) images. The proposed network architecture, termed Dual-Input Convolutional Neural Network (DICNN), showed great potential as an effective classification algorithm based on two input images. DICNN was trained with both RNFL and GCIPL thickness maps that enabled it to discriminate between normal and glaucomatous eyes. The performance of the proposed DICNN was evaluated with accuracy and area under the receiver operating characteristic curve (AUC), and was compared to other methods using these metrics. Compared to other methods, the proposed DICNN model demonstrated high diagnostic ability for the discrimination of early-stage glaucoma patients in normal subjects. AUC, sensitivity and specificity was 0.869, 0.921, 0.756 respectively. In the second study, a deep-learning method for increasing the resolution and improving the legibility of Optic-disc Photography(ODP) was proposed. ODP has been proven to be useful for optic nerve evaluation in glaucoma. But in clinical practice, limited patient cooperation, small pupil or media opacities can limit the performance of ODP. A model to enhance the resolution of ODP images, termed super-resolution, was developed using Super Resolution Generative Adversarial Network(SR-GAN). To train this model, high-resolution original ODP images were transformed into two counterparts: (1) down-scaled low-resolution ODPs, and (2) compensated high-resolution ODPs with enhanced visibility of the optic disc margin and surrounding retinal vessels which were produced using a customized image post-processing algorithm. The SR-GAN was trained to learn and recognize the differences between these two counterparts. The performance of the network was evaluated using Peak Signal to Noise Ratio (PSNR), Structural Similarity (SSIM), and Mean Opinion Score (MOS). The proposed study demonstrated that deep learning can be applied to create a generative model that is capable of producing enhanced ophthalmic images with 4x resolution and with improved structural details. The proposed method can be used to enhance ODPs and thereby significantly increase the detection accuracy of optic disc pathology. The average PSNR, SSIM and MOS was 25.01, 0.75, 4.33 respectively In the third study, a deep-learning model was used to classify suspected glaucoma and to predict subsequent glaucoma onset-year in glaucoma suspects using clinical data and retinal images (ODP & Red-free Fundus RNFL Photo). Clinical data contains useful information about glaucoma diagnosis and prediction. However, no study has been undertaken to investigate how combining different types of clinical information would be helpful for predicting the subsequent course of glaucoma in an individual patient. For this study, image features extracted using Convolutional Auto Encoder (CAE) along with clinical features were used for glaucoma suspect classification and onset-year prediction. The performance of the proposed model was evaluated using accuracy and Mean Squared Error (MSE). Combing the CAE extracted image features and clinical features improved glaucoma suspect classification and on-set year prediction performance as compared to using the image features and patient features separately. The average MSE between onset-year and predicted onset year was 2.613 In this study, deep learning methodology was applied to clinical images related to glaucoma. DICNN with RNFL and GCIPL images were used for classification of glaucoma, SR-GAN with ODP images were used to increase detection accuracy of optic disc pathology, and CAE & machine learning algorithm with clinical data and retinal images was used for glaucoma suspect classification and onset-year predication. The improved glaucoma diagnosis performance was validated using both technical and clinical parameters. The proposed methods as a whole can significantly improve outcomes of glaucoma patients by early detection, prediction and enhancing detection accuracy.Contents Abstract i Contents iv List of Tables vii List of Figures viii Chapter 1 General Introduction 1 1.1 Glaucoma 1 1.2 Deep Learning for Glaucoma Diagnosis 3 1.4 Thesis Objectives 3 Chapter 2 Dual-Input Convolutional Neural Network for Glaucoma Diagnosis using Spectral-Domain Optical Coherence Tomography 6 2.1 Introduction 6 2.1.1 Background 6 2.1.2 Related Work 7 2.2 Methods 8 2.2.1 Study Design 8 2.2.2 Dataset 9 2.2.3 Dual-Input Convolutional Neural Network (DICNN) 15 2.2.4 Training Environment 18 2.2.5 Statistical Analysis 19 2.3 Results 20 2.3.1 DICNN Performance 20 2.3.1 Grad-CAM for DICNN 34 2.4 Discussion 37 2.4.1 Research Significance 37 2.4.2 Limitations 40 2.5 Conclusion 42 Chapter 3 Deep-learning-based enhanced optic-disc photography 43 3.1 Introduction 43 3.1.1 Background 43 3.1.2 Needs 44 3.1.3 Related Work 45 3.2 Methods 46 3.2.1 Study Design 46 3.2.2 Dataset 46 3.2.2.1 Details on Customized Image Post-Processing Algorithm 47 3.2.3 SR-GAN Network 50 3.2.3.1 Design of Generative Adversarial Network 50 3.2.3.2 Loss Functions 55 3.2.4 Assessment of Clinical Implications of Enhanced ODPs 58 3.2.5 Statistical Analysis 60 3.2.6 Hardware Specifications & Software Specifications 60 3.3 Results 62 3.3.1 Training Loss of Modified SR-GAN 62 3.3.2 Performance of Final Network 66 3.3.3 Clinical Validation of Enhanced ODP by MOS comparison 77 3.3.4 Comparison of DH-Detection Accuracy 79 3.4 Discussion 80 3.4.1 Research Significance 80 3.4.2 Limitations 85 3.5 Conclusion 88 Chapter 4 Deep Learning Based Prediction of Glaucoma Onset Using Retinal Image and Patient Data 89 4.1 Introduction 89 4.1.1 Background 89 4.1.2 Related Work 90 4.2 Methods 90 4.2.1 Study Design 90 4.2.2 Dataset 91 4.2.3 Design of Overall System 94 4.2.4 Design of Convolutional Auto Encoder 95 4.2.5 Glaucoma Suspect Classification 97 4.2.6 Glaucoma Onset-Year Prediction 97 4.3 Result 99 4.3.1 Performance of Designed CAE 99 4.3.2 Performance of Designed Glaucoma Suspect Classification 101 4.3.3 Performance of Designed Glaucoma Onset-Year Prediction 105 4.4 Discussion 110 4.4.1 Research Significance 110 4.4.2 Limitations 110 4.5 Conclusion 111 Chapter 5 Summary and Future Works 112 5.1 Thesis Summary 112 5.2 Limitations and Future Works 113 Bibliography 115 Abstract in Korean 127 Acknowledgement 130Docto

    Explainable artificial intelligence toward usable and trustworthy computer-aided early diagnosis of multiple sclerosis from Optical Coherence Tomography

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    Background: Several studies indicate that the anterior visual pathway provides information about the dynamics of axonal degeneration in Multiple Sclerosis (MS). Current research in the field is focused on the quest for the most discriminative features among patients and controls and the development of machine learning models that yield computer-aided solutions widely usable in clinical practice. However, most studies are conducted with small samples and the models are used as black boxes. Clinicians should not trust machine learning decisions unless they come with comprehensive and easily understandable explanations. Materials and methods: A total of 216 eyes from 111 healthy controls and 100 eyes from 59 patients with relapsing-remitting MS were enrolled. The feature set was obtained from the thickness of the ganglion cell layer (GCL) and the retinal nerve fiber layer (RNFL). Measurements were acquired by the novel Posterior Pole protocol from Spectralis Optical Coherence Tomography (OCT) device. We compared two black-box methods (gradient boosting and random forests) with a glass-box method (explainable boosting machine). Explainability was studied using SHAP for the black-box methods and the scores of the glass-box method. Results: The best-performing models were obtained for the GCL layer. Explainability pointed out to the temporal location of the GCL layer that is usually broken or thinning in MS and the relationship between low thickness values and high probability of MS, which is coherent with clinical knowledge. Conclusions: The insights on how to use explainability shown in this work represent a first important step toward a trustworthy computer-aided solution for the diagnosis of MS with OCT

    Explainable artificial intelligence toward usable and trustworthy computer-aided diagnosis of multiple sclerosis from Optical Coherence Tomography

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    Background: Several studies indicate that the anterior visual pathway provides information about the dynamics of axonal degeneration in Multiple Sclerosis (MS). Current research in the field is focused on the quest for the most discriminative features among patients and controls and the development of machine learning models that yield computer-aided solutions widely usable in clinical practice. However, most studies are conducted with small samples and the models are used as black boxes. Clinicians should not trust machine learning decisions unless they come with comprehensive and easily understandable explanations. Materials and methods: A total of 216 eyes from 111 healthy controls and 100 eyes from 59 patients with relapsing-remitting MS were enrolled. The feature set was obtained from the thickness of the ganglion cell layer (GCL) and the retinal nerve fiber layer (RNFL). Measurements were acquired by the novel Posterior Pole protocol from Spectralis Optical Coherence Tomography (OCT) device. We compared two black-box methods (gradient boosting and random forests) with a glass-box method (explainable boosting machine). Explainability was studied using SHAP for the black-box methods and the scores of the glass-box method. Results: The best-performing models were obtained for the GCL layer. Explainability pointed out to the temporal location of the GCL layer that is usually broken or thinning in MS and the relationship between low thickness values and high probability of MS, which is coherent with clinical knowledge.Conclusions: The insights on how to use explainability shown in this work represent a first important step toward a trustworthy computer-aided solution for the diagnosis of MS with OCT

    OCTA multilayer and multisector peripapillary microvascular modeling for diagnosing and staging of glaucoma

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    Purpose: To develop and assess an automatic procedure for classifying and staging glaucomatous vascular damage based on optical coherence tomography angiography (OCTA) imaging. Methods: OCTA scans (Zeiss Cirrus 5000 HD-OCT) from a random eye of 39 healthy subjects and 82 glaucoma patients were used to develop a new classification algorithm based on multilayer and multisector information. The averaged circumpapillary retinal nerve fiber layer (RNFL) thickness was also collected. Three models, support vector machine (SVM), random forest (RF), and gradient boosting (xGB), were developed and optimized for classifying between healthy and glaucoma patients, primary open-angle glaucoma (POAG) and normal-tension glaucoma (NTG), and glaucoma severity groups. Results: All the models, the SVM (area under the receiver operating characteristic [AUROC] 0.89 ยฑ 0.06), the RF (AUROC 0.86 ยฑ 0.06), and the xGB (AUROC 0.85 ยฑ 0.07), with 26, 22, and 29 vascular features obtained after feature selection, respectively, presented a similar performance to the RNFL thickness (AUROC 0.85ยฑ 0.06) in classifying healthy and glaucoma patients. The superficial vascular plexus was the most informative layer with the infero temporal sector as the most discriminative region of interest. No significant differentiation was obtained in discriminating the POAG from the NTG group. The xGB model, after feature selection, presented the best performance in classifying the severity groups (AUROC 0.76ยฑ 0.06), outperforming the RNFL (AUROC 0.67ยฑ 0.06). Conclusions: OCTA multilayer and multisector information has similar performance to RNFL for glaucoma diagnosis, but it has an added value for glaucoma severity classification, showing promising results for staging glaucoma progression. Translational Relevance: OCTA, in its current stage, has the potential to be used in clinical practice as a complementary imaging technique in glaucoma management

    Automatic segmentation and classification methods using optical coherence tomography angiography (Octa): A review and handbook

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    Optical coherence tomography angiography (OCTA) is a promising technology for the non-invasive imaging of vasculature. Many studies in literature present automated algorithms to quantify OCTA images, but there is a lack of a review on the most common methods and their comparison considering multiple clinical applications (e.g., ophthalmology and dermatology). Here, we aim to provide readers with a useful review and handbook for automatic segmentation and classification methods using OCTA images, presenting a comparison of techniques found in the literature based on the adopted segmentation or classification method and on the clinical application. Another goal of this study is to provide insight into the direction of research in automated OCTA image analysis, especially in the current era of deep learning
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