Center for MicroElectroMechanical Systems (CMEMs), Informatics Department, University of Minho, Braga, Portugal.
Center for MicroElectroMechanical Systems (CMEMs), Industrial Electronics Department, University of Minho, Guimarães, Portugal.
Med Biol Eng Comput. 2019 Dec;57(12):2683-2692. doi: 10.1007/s11517-019-02051-5. Epub 2019 Nov 14.
Squamous cell carcinoma (SCC) is the most common and malignant laryngeal cancer. An early-stage diagnosis is of crucial importance to lower patient mortality and preserve both the laryngeal anatomy and vocal-fold function. However, this may be challenging as the initial larynx modifications, mainly concerning the mucosa vascular tree and the epithelium texture and color, are small and can pass unnoticed to the human eye. The primary goal of this paper was to investigate a learning-based approach to early-stage SCC diagnosis, and compare the use of (i) texture-based global descriptors, such as local binary patterns, and (ii) deep-learning-based descriptors. These features, extracted from endoscopic narrow-band images of the larynx, were classified with support vector machines as to discriminate healthy, precancerous, and early-stage SCC tissues. When tested on a benchmark dataset, a median classification recall of 98% was obtained with the best feature combination, outperforming the state of the art (recall = 95%). Despite further investigation is needed (e.g., testing on a larger dataset), the achieved results support the use of the developed methodology in the actual clinical practice to provide accurate early-stage SCC diagnosis. Graphical Abstract Workflow of the proposed solution. Patches of laryngeal tissue are pre-processed and feature extraction is performed. These features are used in the laryngeal tissue classification.
鳞状细胞癌 (SCC) 是最常见和恶性的喉癌。早期诊断对于降低患者死亡率和保留喉解剖结构和声带功能至关重要。然而,由于初始喉的改变主要涉及粘膜血管树和上皮组织纹理和颜色,这些改变很小,可能会被人眼忽略,因此可能具有挑战性。本文的主要目的是研究一种基于学习的早期 SCC 诊断方法,并比较使用 (i) 基于纹理的全局描述符(如局部二值模式)和 (ii) 基于深度学习的描述符。这些从喉内窥镜窄带图像中提取的特征使用支持向量机进行分类,以区分健康、癌前和早期 SCC 组织。在基准数据集上进行测试时,使用最佳特征组合获得了 98%的分类召回率,优于现有技术(召回率=95%)。尽管需要进一步研究(例如,在更大的数据集上进行测试),但所获得的结果支持在实际临床实践中使用所开发的方法来提供准确的早期 SCC 诊断。