Department of Artificial Intelligent Convergence, Pukyong National University, Busan, Korea.
Department of Ophthalmology, Kosin University College of Medicine, Busan, Korea.
PLoS One. 2022 Aug 5;17(8):e0269365. doi: 10.1371/journal.pone.0269365. eCollection 2022.
Considering the scarcity of normal and strabismic images, this study proposed a method that combines a meta-learning approach with image processing methods to improve the classification accuracy when meta-learning alone is used for screening strabismus.
The meta-learning approach was first pre-trained on a public dataset to obtain a well-generalized embedding network to extract distinctive features of images. On the other hand, the image processing methods were used to extract the position features of eye regions (e.g., iris position, corneal light reflex) as supplementary features to the distinctive features. Afterward, principal component analysis was applied to reduce the dimensionality of distinctive features for integration with low-dimensional supplementary features. The integrated features were then used to train a support vector machine classifier for performing strabismus screening. Sixty images (30 normal and 30 strabismus) were used to verify the effectiveness of the proposed method, and its classification performance was assessed by computing the accuracy, specificity, and sensitivity through 5,000 experiments.
The proposed method achieved a classification accuracy of 0.805 with a sensitivity (correct classification of strabismus) of 0.768 and a specificity (correct classification of normal) of 0.842, whereas the classification accuracy of using meta-learning alone was 0.709 with a sensitivity of 0.740 and a specificity of 0.678.
The proposed strabismus screening method achieved promising classification accuracy and gained significant accuracy improvement over using meta-learning alone under data scarcity.
鉴于正常和斜视图像的稀缺性,本研究提出了一种方法,将元学习方法与图像处理方法相结合,以提高元学习单独用于斜视筛查时的分类准确性。
元学习方法首先在公共数据集上进行预训练,以获得一个具有良好泛化能力的嵌入网络,从而提取图像的特征。另一方面,图像处理方法用于提取眼部区域的位置特征(例如,虹膜位置、角膜光反射)作为特征的补充特征。之后,应用主成分分析来降低特征的维数,以便与低维的补充特征集成。然后,将集成特征用于训练支持向量机分类器,以进行斜视筛查。使用 60 张图像(30 张正常和 30 张斜视)验证了所提出方法的有效性,并通过 5000 次实验计算准确性、特异性和敏感性来评估其分类性能。
所提出的方法实现了 0.805 的分类准确性,其中敏感性(斜视的正确分类)为 0.768,特异性(正常的正确分类)为 0.842,而单独使用元学习的分类准确性为 0.709,敏感性为 0.740,特异性为 0.678。
在数据稀缺的情况下,所提出的斜视筛查方法实现了有希望的分类准确性,并在单独使用元学习的基础上显著提高了准确性。