Research and applications: Automatic glaucoma diagnosis through medical imaging informatics |
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Authors: | Jiang Liu Zhuo Zhang Damon Wing Kee Wong Yanwu Xu Fengshou Yin Jun Cheng Ngan Meng Tan Chee Keong Kwoh Dong Xu Yih Chung Tham Tin Aung Tien Yin Wong |
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Affiliation: | 1.Department of Ocular Imaging, Institute for Infocomm Research, Singapore, Singapore;2.Department of Neural & Biomedical Technology, Institute for Infocomm Research, Singapore, Singapore;3.Department of Computer Engineering, Nanyang Technological University, Singapore, Singapore;4.Singapore Eye Research Institute, Singapore, Singapore;5.Singapore National Eye Centre, Singapore, Singapore;6.National University Hospital, Singapore, Singapore |
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Abstract: |
BackgroundComputer-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.ObjectiveTo 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 methods2258 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 discussionReceiver 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.ConclusionsAGLAIA-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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Keywords: | medical imaging informatics patient data Medical Retinal Image Genome information multiple kernel learning glaucoma |
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