Liao Jinpeng, Zhang Tianyu, Li Chunhui, Huang Zhihong
University of Dundee, School of Science and Engineering, Dundee, United Kingdom.
Biomed Opt Express. 2024 Sep 6;15(10):5723-5738. doi: 10.1364/BOE.529662. eCollection 2024 Oct 1.
Optical coherence tomography (OCT) can be an important tool for non-invasive dermatological evaluation, providing useful data on epidermal integrity for diagnosing skin diseases. Despite its benefits, OCT's utility is limited by the challenges of accurate, fast epidermal segmentation due to the skin morphological diversity. To address this, we introduce a lightweight segmentation network (LS-Net), a novel deep learning model that combines the robust local feature extraction abilities of Convolution Neural Network and the long-term information processing capabilities of Vision Transformer. LS-Net has a depth-wise convolutional transformer for enhanced spatial contextualization and a squeeze-and-excitation block for feature recalibration, ensuring precise segmentation while maintaining computational efficiency. Our network outperforms existing methods, demonstrating high segmentation accuracy (mean Dice: 0.9624 and mean IoU: 0.9468) with significantly reduced computational demands (floating point operations: 1.131 G). We further validate LS-Net on our acquired dataset, showing its effectiveness in various skin sites (e.g., face, palm) under realistic clinical conditions. This model promises to enhance the diagnostic capabilities of OCT, making it a valuable tool for dermatological practice.
光学相干断层扫描(OCT)可以成为无创皮肤病学评估的重要工具,为诊断皮肤疾病提供有关表皮完整性的有用数据。尽管OCT有诸多优点,但其效用受到皮肤形态多样性导致的准确、快速表皮分割挑战的限制。为解决这一问题,我们引入了一种轻量级分割网络(LS-Net),这是一种新颖的深度学习模型,它结合了卷积神经网络强大的局部特征提取能力和视觉Transformer的长期信息处理能力。LS-Net有一个深度卷积Transformer用于增强空间上下文感知,还有一个挤压激励模块用于特征重新校准,在保持计算效率的同时确保精确分割。我们的网络优于现有方法,展现出高分割精度(平均Dice系数:0.9624,平均交并比:0.9468),且计算需求显著降低(浮点运算:1.131 G)。我们在获取的数据集上进一步验证了LS-Net,表明其在实际临床条件下在各种皮肤部位(如面部、手掌)的有效性。该模型有望增强OCT的诊断能力,使其成为皮肤病学实践中的宝贵工具。