Computer Vision Identification of Trachomatous Inflammation-Follicular Using Deep Learning

被引:1
|
作者
Joye, Ashlin S. [1 ,2 ]
Firlie, Marissa G. [3 ]
Wittberg, Dionna M. [2 ]
Aragie, Solomon [4 ]
Nash, Scott D. [5 ]
Tadesse, Zerihun [4 ]
Dagnew, Adane [4 ]
Hailu, Dagnachew [4 ]
Admassu, Fisseha [6 ]
Wondimteka, Bilen [6 ]
Getachew, Habib [6 ]
Kabtu, Endale [6 ]
Beyecha, Social [6 ]
Shibiru, Meskerem [6 ]
Getnet, Banchalem [6 ]
Birhanu, Tibebe [6 ]
Abdu, Seid [6 ]
Tekew, Solomon [6 ]
Lietman, Thomas M. [2 ]
Keenan, Jeremy D. [2 ]
Redd, Travis K. [1 ,2 ]
机构
[1] Oregon Hlth & Sci Univ, Casey Eye Inst, 515 SW Campus Dr, Portland, OR 97239 USA
[2] Univ Calif San Francisco, Francis I Proctor Fdn, San Francisco, CA USA
[3] George Washington Univ, Sch Med & Hlth Sci, Washington, DC USA
[4] Carter Ctr Ethiopia, Addis Ababa, Ethiopia
[5] Carter Ctr, Atlanta, GA USA
[6] Univ Gondar, Dept Ophthalmol, Gondar, Ethiopia
关键词
trachoma; artificial intelligence; deep learning; computer vision; ophthalmology; SYSTEM;
D O I
10.1097/ICO.0000000000003701
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
Purpose:Trachoma surveys are used to estimate the prevalence of trachomatous inflammation-follicular (TF) to guide mass antibiotic distribution. These surveys currently rely on human graders, introducing a significant resource burden and potential for human error. This study describes the development and evaluation of machine learning models intended to reduce cost and improve reliability of these surveys.Methods:Fifty-six thousand seven hundred twenty-five everted eyelid photographs were obtained from 11,358 children of age 0 to 9 years in a single trachoma-endemic region of Ethiopia over a 3-year period. Expert graders reviewed all images from each examination to determine the estimated number of tarsal conjunctival follicles and the degree of trachomatous inflammation-intense. The median estimate of the 3 grader groups was used as the ground truth to train a MobileNetV3 large deep convolutional neural network to detect cases with TF.Results:The classification model predicted a TF prevalence of 32%, which was not significantly different from the human consensus estimate (30%; 95% confidence interval of difference, -2 to +4%). The model had an area under the receiver operating characteristic curve of 0.943, F1 score of 0.923, 88% accuracy, 83% sensitivity, and 91% specificity. The area under the receiver operating characteristic curve increased to 0.995 when interpreting nonborderline cases of TF.Conclusions:Deep convolutional neural network models performed well at classifying TF and detecting the number of follicles evident in conjunctival photographs. Implementation of similar models may enable accurate, efficient, large-scale trachoma screening. Further validation in diverse populations with varying TF prevalence is needed before implementation at scale.
引用
收藏
页码:613 / 618
页数:6
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