A Machine-Learning Model Based on Morphogeometric Parameters for RETICS Disease Classification and GUI Development

被引:8
|
作者
Bolarin, Jose M. [1 ]
Cavas, E. [2 ]
Velazquez, J. S. [2 ]
Alio, J. L. [3 ,4 ]
机构
[1] Technol Ctr IT & Commun CENTIC, Sci Pk Murcia, Murcia 30100, Spain
[2] Tech Univ Cartagena, Dept Struct Construct & Graph Express, Cartagena 30202, Spain
[3] Vissum Corp Alicante, Keratoconus Unit, Alicante 03016, Spain
[4] Miguel Hernandez Univ Elche, Dept Ophthalmol, Alicante 03202, Spain
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 05期
关键词
Scheimpflug; 3D cornea model; early keratoconus; Corrected Distance Visual Acuity (CDVA); SUBCLINICAL KERATOCONUS DETECTION; RISK-ASSESSMENT; SCORING SYSTEM; FELLOW EYES; CORNEAL; SCHEIMPFLUG; ECTASIA; TOMOGRAPHY; DIAGNOSIS; LASIK;
D O I
10.3390/app10051874
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Featured Application This work presents a Graphics User Interface that applies two automated learning models based on machine-procured independent variables to assist ophthalmology professionals in keratoconus disease diagnosis and classification. Abstract This work pursues two objectives: defining a new concept of risk probability associated with suffering early-stage keratoconus, classifying disease severity according to the RETICS (Thematic Network for Co-Operative Research in Health) scale. It recruited 169 individuals, 62 healthy and 107 keratoconus diseased, grouped according to the RETICS classification: 44 grade I; 18 grade II; 15 grade III; 15 grade IV; 15 grade V. Different demographic, optical, pachymetric and eometrical parameters were measured. The collected data were used for training two machine-learning models: a multivariate logistic regression model for early keratoconus detection and an ordinal logistic regression model for RETICS grade assessments. The early keratoconus detection model showed very good sensitivity, specificity and area under ROC curve, with around 95% for training and 85% for validation. The variables that made the most significant contributions were gender, coma-like, central thickness, high-order aberrations and temporal thickness. The RETICS grade assessment also showed high-performance figures, albeit lower, with a global accuracy of 0.698 and a 95% confidence interval of 0.623-0.766. The most significant variables were CDVA, central thickness and temporal thickness. The developed web application allows the fast, objective and quantitative assessment of keratoconus in early diagnosis and RETICS grading terms.
引用
收藏
页数:19
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