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Improving the Generalizability of Infantile Cataracts Detection via Deep Learning-Based Lens Partition Strategy and Multicenter Datasets

机译:通过深入基于学习的镜头分区策略和多中心数据集来提高婴儿白内障检测的普遍性

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Infantile cataract is the main cause of infant blindness worldwide. Although previous studies developed artificial intelligence (AI) diagnostic systems for detecting infantile cataracts in a single center, its generalizability is not ideal because of the complicated noises and heterogeneity of multicenter slit-lamp images, which impedes the application of these AI systems in real-world clinics. In this study, we developed two lens partition strategies (LPSs) based on deep learning Faster R-CNN and Hough transform for improving the generalizability of infantile cataracts detection. A total of 1,643 multicenter slit-lamp images collected from five ophthalmic clinics were used to evaluate the performance of LPSs. The generalizability of Faster R-CNN for screening and grading was explored by sequentially adding multicenter images to the training dataset. For the normal and abnormal lenses partition, the Faster R-CNN achieved the average intersection over union of 0.9419 and 0.9107, respectively, and their average precisions are both 95%. Compared with the Hough transform, the accuracy, specificity, and sensitivity of Faster R-CNN for opacity area grading were improved by 5.31, 8.09, and 3.29%, respectively. Similar improvements were presented on the other grading of opacity density and location. The minimal training sample size required by Faster R-CNN is determined on multicenter slit-lamp images. Furthermore, the Faster R-CNN achieved real-time lens partition with only 0.25 s for a single image, whereas the Hough transform needs 34.46 s. Finally, using Grad-Cam and t-SNE techniques, the most relevant lesion regions were highlighted in heatmaps, and the high-level features were discriminated. This study provides an effective LPS for improving the generalizability of infantile cataracts detection. This system has the potential to be applied to multicenter slit-lamp images.
机译:婴儿白内障是全世界婴儿失明的主要原因。尽管以前的研究开发了人工智能(AI)用于检测单个中心的婴儿白内障的诊断系统,但其普遍性是不理想的,因为多中心狭缝图像的复杂声音和异质性,这阻碍了这些AI系统的应用实际上 - 世界诊所。在这项研究中,我们开发了基于深度学习的两个镜头分区策略(LPSS),R-CNN和Hough变换,以提高婴儿白内障检测的普遍性。共收集的来自五种眼科诊所的1,643个多中心狭缝图像用于评估LPS的性能。通过将多中心图像顺序添加到训练数据集来探索更快的R-CNN筛选和分级的普遍性。对于正常和异常的镜头分区,速度r-CNN的速度达到了0.9419和0.9107的联盟的平均交叉点,并且它们的平均矫正均为兼容。 95%。与霍夫变换相比,对于不透明度区域分级的更快R-CNN的精度,特异性和灵敏度分别得到5.31,8.09和3.29%。在不透明度密度和位置的其他分级上提出了类似的改进。在多中心狭缝灯图像上确定更快的R-CNN所需的最小训练样本大小。此外,更快的R-CNN实现了仅为0.25秒的实时镜头分区,而霍夫变换需要34.46秒。最后,使用毕业凸轮和T-SNE技术,在热带中突出了最相关的病变区,并且鉴别了高级别特征。本研究提供了一种有效的LP,用于提高婴儿白内障检测的普遍性。该系统具有应用于多中心狭缝灯图像。

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