Gao Song, Chen Yingjie, Shi Fei, Peng Yuanyuan, Xu Chenan, Chen Zhongyue, Zhu Weifang, Xu Xin, Tang Wei, Tan Zhiwei, Xu Yue, Ren Yaru, Zhang Xiaofeng, Chen Xinjian
MIPAV Lab, School of Electronics and Information Engineering, Soochow University, Suzhou, 215006, China.
These authors contributed equally to this paper.
Biomed Opt Express. 2023 Jan 17;14(2):799-814. doi: 10.1364/BOE.480564. eCollection 2023 Feb 1.
Keratoconus (KC) is a noninflammatory ectatic disease characterized by progressive thinning and an apical cone-shaped protrusion of the cornea. In recent years, more and more researchers have been committed to automatic and semi-automatic KC detection based on corneal topography. However, there are few studies about the severity grading of KC, which is particularly important for the treatment of KC. In this work, we propose a lightweight KC grading network (LKG-Net) for 4-level KC grading (Normal, Mild, Moderate, and Severe). First of all, we use depth-wise separable convolution to design a novel feature extraction block based on the self-attention mechanism, which can not only extract rich features but also reduce feature redundancy and greatly reduce the number of parameters. Then, to improve the model performance, a multi-level feature fusion module is proposed to fuse features from the upper and lower levels to obtain more abundant and effective features. The proposed LKG-Net was evaluated on the corneal topography of 488 eyes from 281 people with 4-fold cross-validation. Compared with other state-of-the-art classification methods, the proposed method achieves 89.55% for weighted recall (W_R), 89.98% for weighted precision (W_P), 89.50% for weighted F1 score (W_F1) and 94.38% for Kappa, respectively. In addition, the LKG-Net is also evaluated on KC screening, and the experimental results show the effectiveness.
圆锥角膜(KC)是一种非炎症性扩张性疾病,其特征是角膜逐渐变薄并出现顶端圆锥状突出。近年来,越来越多的研究人员致力于基于角膜地形图的圆锥角膜自动和半自动检测。然而,关于圆锥角膜严重程度分级的研究很少,而这对于圆锥角膜的治疗尤为重要。在这项工作中,我们提出了一种用于圆锥角膜4级分级(正常、轻度、中度和重度)的轻量级圆锥角膜分级网络(LKG-Net)。首先,我们使用深度可分离卷积设计了一种基于自注意力机制的新型特征提取模块,它不仅可以提取丰富的特征,还能减少特征冗余并大幅减少参数数量。然后,为了提高模型性能,提出了一种多级特征融合模块,用于融合上下层的特征以获得更丰富有效的特征。所提出 的LKG-Net在281人的488只眼睛的角膜地形图上进行了4折交叉验证评估。与其他现有分类方法相比,该方法的加权召回率(W_R)达到89.55%,加权精确率(W_P)达到89.98%,加权F1分数(W_F1)达到89.50%,卡帕值(Kappa)达到94.38%。此外,LKG-Net还在圆锥角膜筛查中进行了评估,实验结果证明了其有效性。