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首页> 外文期刊>Indian Journal of Ophthalmology >Application of deep learning and image processing analysis of photographs for amblyopia screening
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Application of deep learning and image processing analysis of photographs for amblyopia screening

机译:深度学习和图像处理分析对弱视筛查的应用

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Purpose: Photo screeners and autorefractors have been used to screen children for amblyopia risk factors (ARF) but are limited by cost and efficacy. We looked for a deep learning and image processing analysis-based system to screen for ARF. Methods: An android smartphone was used to capture images using a specially coded application that modified the camera setting. An algorithm was developed to process images taken in different light conditions in an automated manner to predict the presence of ARF. Deep learning and image processing models were used to segment images of the face. Light settings and distances were tested to obtain the necessary features. Deep learning was thereafter used to formulate normalized risks using sigmoidal models for each ARF creating a risk dashboard. The model was tested on 54 young adults and results statistically analyzed. Results: A combination of low-light and ambient-light images was needed for screening for exclusive ARF. The algorithm had an F-Score of 73.2% with an accuracy of 79.6%, a sensitivity of 88.2%, and a specificity of 75.6% in detecting the ARF. Conclusion: Deep-learning and image-processing analysis of photographs acquired from a smartphone are useful in screening for ARF in children and young adults for a referral to doctors for further diagnosis and treatment.
机译:目的:Photo Screeners和AutoreFractors已被用于筛选儿童弱视危险因素(ARF),但受到成本和功效的限制。我们寻找基于深度学习和图像处理分析的系统,以筛选ARF。方法:使用Android智能手机使用修改相机设置的特殊编码的应用程序来捕获图像。开发了一种算法以以自动方式处理在不同光线条件下拍摄的图像以预测ARF的存在。深度学习和图像处理模型用于段的脸部图像。测试光设置和距离以获得必要的功能。此后,深入学习用于使用Sigmoid模式为每个ARF制定标准化风险,为每个ARF创建风险仪表板。该模型在54名年轻的成年人和结果上进行了统计学分析。结果:筛选专用ARF需要低光和环境光图像的组合。该算法的F分度为73.2%,精度为79.6%,灵敏度为88.2%,检测ARF的特异性为75.6%。结论:从智能手机获取的照片的深度学习和图像处理分析对于筛选儿童和年轻人的ARF,用于推荐医生进一步诊断和治疗。

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