Automatic glaucoma diagnosis through medical imaging informatics
Background - Computer-aided diagnosis for screening utilizes computer-based analytical methodologies to process patient information. Glaucoma is the leading irreversible cause of blindness. Due to the lack of an effective and standard screening practice, more than 50% of the cases are undiagnosed, w...
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sg-ntu-dr.10356-819442022-02-16T16:27:59Z Automatic glaucoma diagnosis through medical imaging informatics Liu, Jiang Zhang, Zhuo Wong, Damon Wing Kee Xu, Yanwu Yin, Fengshou Cheng, Jun Tan, Ngan Meng Kwoh, Chee Keong Xu, Dong Tham, Yih Chung Aung, Tin Wong, Tien Yin School of Computer Engineering Patient data Medical Retinal Image Medical imaging informatics Genome information Multiple kernel learning Glaucoma Background - Computer-aided diagnosis for screening utilizes computer-based analytical methodologies to process patient information. Glaucoma is the leading irreversible cause of blindness. Due to the lack of an effective and standard screening practice, more than 50% of the cases are undiagnosed, which prevents the early treatment of the disease. Objective - To design an automatic glaucoma diagnosis architecture automatic glaucoma diagnosis through medical imaging informatics (AGLAIA-MII) that combines patient personal data, medical retinal fundus image, and patient's genome information for screening. Materials and methods - 2258 cases from a population study were used to evaluate the screening software. These cases were attributed with patient personal data, retinal images and quality controlled genome data. Utilizing the multiple kernel learning-based classifier, AGLAIA-MII, combined patient personal data, major image features, and important genome single nucleotide polymorphism (SNP) features. Results and discussion - Receiver operating characteristic curves were plotted to compare AGLAIA-MII's performance with classifiers using patient personal data, images, and genome SNP separately. AGLAIA-MII was able to achieve an area under curve value of 0.866, better than 0.551, 0.722 and 0.810 by the individual personal data, image and genome information components, respectively. AGLAIA-MII also demonstrated a substantial improvement over the current glaucoma screening approach based on intraocular pressure. Conclusions - AGLAIA-MII demonstrates for the first time the capability of integrating patients' personal data, medical retinal image and genome information for automatic glaucoma diagnosis and screening in a large dataset from a population study. It paves the way for a holistic approach for automatic objective glaucoma diagnosis and screening. ASTAR (Agency for Sci., Tech. and Research, S’pore) 2016-08-03T08:54:05Z 2019-12-06T14:43:31Z 2016-08-03T08:54:05Z 2019-12-06T14:43:31Z 2013 Journal Article Liu, J., Zhang, Z., Wong, D. W. K., Xu, Y., Yin, F., Cheng, J., et al. (2013). Automatic glaucoma diagnosis through medical imaging informatics. Journal of the American Medical Informatics Association, 20(6), 1021-1027. https://hdl.handle.net/10356/81944 http://hdl.handle.net/10220/41055 10.1136/amiajnl-2012-001336 23538725 en Journal of the American Medical Informatics Association © The Author(s) (published by Oxford University Press). 7 p. |
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Patient data Medical Retinal Image Medical imaging informatics Genome information Multiple kernel learning Glaucoma |
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Patient data Medical Retinal Image Medical imaging informatics Genome information Multiple kernel learning Glaucoma Liu, Jiang Zhang, Zhuo Wong, Damon Wing Kee Xu, Yanwu Yin, Fengshou Cheng, Jun Tan, Ngan Meng Kwoh, Chee Keong Xu, Dong Tham, Yih Chung Aung, Tin Wong, Tien Yin Automatic glaucoma diagnosis through medical imaging informatics |
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Background - Computer-aided diagnosis for screening utilizes computer-based analytical methodologies to process patient information. Glaucoma is the leading irreversible cause of blindness. Due to the lack of an effective and standard screening practice, more than 50% of the cases are undiagnosed, which prevents the early treatment of the disease. Objective - To design an automatic glaucoma diagnosis architecture automatic glaucoma diagnosis through medical imaging informatics (AGLAIA-MII) that combines patient personal data, medical retinal fundus image, and patient's genome information for screening. Materials and methods - 2258 cases from a population study were used to evaluate the screening software. These cases were attributed with patient personal data, retinal images and quality controlled genome data. Utilizing the multiple kernel learning-based classifier, AGLAIA-MII, combined patient personal data, major image features, and important genome single nucleotide polymorphism (SNP) features. Results and discussion - Receiver operating characteristic curves were plotted to compare AGLAIA-MII's performance with classifiers using patient personal data, images, and genome SNP separately. AGLAIA-MII was able to achieve an area under curve value of 0.866, better than 0.551, 0.722 and 0.810 by the individual personal data, image and genome information components, respectively. AGLAIA-MII also demonstrated a substantial improvement over the current glaucoma screening approach based on intraocular pressure. Conclusions - AGLAIA-MII demonstrates for the first time the capability of integrating patients' personal data, medical retinal image and genome information for automatic glaucoma diagnosis and screening in a large dataset from a population study. It paves the way for a holistic approach for automatic objective glaucoma diagnosis and screening. |
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School of Computer Engineering |
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School of Computer Engineering Liu, Jiang Zhang, Zhuo Wong, Damon Wing Kee Xu, Yanwu Yin, Fengshou Cheng, Jun Tan, Ngan Meng Kwoh, Chee Keong Xu, Dong Tham, Yih Chung Aung, Tin Wong, Tien Yin |
format |
Article |
author |
Liu, Jiang Zhang, Zhuo Wong, Damon Wing Kee Xu, Yanwu Yin, Fengshou Cheng, Jun Tan, Ngan Meng Kwoh, Chee Keong Xu, Dong Tham, Yih Chung Aung, Tin Wong, Tien Yin |
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Liu, Jiang |
title |
Automatic glaucoma diagnosis through medical imaging informatics |
title_short |
Automatic glaucoma diagnosis through medical imaging informatics |
title_full |
Automatic glaucoma diagnosis through medical imaging informatics |
title_fullStr |
Automatic glaucoma diagnosis through medical imaging informatics |
title_full_unstemmed |
Automatic glaucoma diagnosis through medical imaging informatics |
title_sort |
automatic glaucoma diagnosis through medical imaging informatics |
publishDate |
2016 |
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https://hdl.handle.net/10356/81944 http://hdl.handle.net/10220/41055 |
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