Machine learning prediction of pathologic myopia using tomographic elevation of the posterior sclera

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作者
Yong Chan Kim
Dong Jin Chang
So Jin Park
In Young Choi
Ye Seul Gong
Hyun-Ah Kim
Hyung Bin Hwang
Kyung In Jung
Hae-young Lopilly Park
Chan Kee Park
Kui Dong Kang
机构
[1] The Catholic University of Korea,Department of Ophthalmology, Incheon St. Mary’s Hospital, College of Medicine
[2] The Catholic University of Korea,Department of Medical Informatics, College of Medicine
[3] The Catholic University of Korea,Department of Ophthalmology, Yeouido St. Mary’s Hospital, College of Medicine
[4] The Catholic University of Korea,Department of Ophthalmology, Seoul St. Mary’s Hospital, College of Medicine
[5] The Catholic University of Korea,Department of Ophthalmology, Incheon St. Mary’s Hospital, College of Medicine
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Qualitative analysis of fundus photographs enables straightforward pattern recognition of advanced pathologic myopia. However, it has limitations in defining the classification of the degree or extent of early disease, such that it may be biased by subjective interpretation. In this study, we used the fovea, optic disc, and deepest point of the eye (DPE) as the three major markers (i.e., key indicators) of the posterior globe to quantify the relative tomographic elevation of the posterior sclera (TEPS). Using this quantitative index from eyes of 860 myopic patients, support vector machine based machine learning classifier predicted pathologic myopia an AUROC of 0.828, with 77.5% sensitivity and 88.07% specificity. Axial length and choroidal thickness, the existing quantitative indicator of pathologic myopia only reached an AUROC of 0.758, with 75.0% sensitivity and 76.61% specificity. When all six indices were applied (four TEPS, AxL, and SCT), the discriminative ability of the SVM model was excellent, demonstrating an AUROC of 0.868, with 80.0% sensitivity and 93.58% specificity. Our model provides an accurate modality for identification of patients with pathologic myopia and may help prioritize these patients for further treatment.
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