Xiong Ming, Luo Jia-Wei, Ren Jia, Hu Juan-Juan, Lan Lan, Zhang Ying, Lv Dan, Zhou Xiao-Bo, Yang Hui
Department of Otolaryngology, Head & Neck Surgery, West China Hospital of Sichuan University/West China School of Medicine, Sichuan University, Chengdu, Sichuan, China.
West China Biomedical Big Data Center, West China Hospital of Sichuan University/West China School of Medicine, Sichuan University, Chengdu, Sichuan, China.
Ear Nose Throat J. 2024 Sep 20:1455613241275341. doi: 10.1177/01455613241275341.
Vocal cord leukoplakia is clinically described as a white plaque or patch on the vocal cords observed during macroscopic examination, which does not take into account histological features or prognosis. A clinical challenge in managing vocal cord leukoplakia is to assess the potential malignant transformation of the lesion. This study aims to investigate the potential of deep learning (DL) for the simultaneous segmentation and classification of vocal cord leukoplakia using narrow band imaging (NBI) and white light imaging (WLI). The primary objective is to assess the model's accuracy in detecting and classifying lesions, comparing its performance in WLI and NBI. We applied DL to segment and classify NBI and WLI of vocal cord leukoplakia, and used pathological diagnosis as the gold standard. The DL model autonomously detected lesions with an average intersection-over-union (IoU) >70%. In classification tasks, the model differentiated between lesions in the surgical group with a sensitivity of 93% and a specificity of 94% for WLI, and a sensitivity of 99% and a specificity of 97% for NBI. In addition, the model achieved a mean average precision of 81% in WLI and 92% in NBI, with an IoU threshold >0.5. The model proposed by us is helpful in assisting in accurate diagnosis of vocal cord leukoplakia from NBI and WLI.
声带白斑在临床上被描述为在宏观检查中观察到的声带白色斑块或斑片,这并未考虑组织学特征或预后情况。管理声带白斑的一个临床挑战是评估病变的潜在恶性转化。本研究旨在探讨深度学习(DL)利用窄带成像(NBI)和白光成像(WLI)对声带白斑进行同时分割和分类的潜力。主要目标是评估模型在检测和分类病变方面的准确性,比较其在WLI和NBI中的表现。我们应用深度学习对声带白斑的NBI和WLI进行分割和分类,并将病理诊断作为金标准。深度学习模型自主检测病变的平均交并比(IoU)>70%。在分类任务中,该模型区分手术组病变时,对于WLI,敏感性为93%,特异性为94%;对于NBI,敏感性为99%,特异性为97%。此外,当IoU阈值>0.5时,该模型在WLI中的平均精度为81%,在NBI中的平均精度为92%。我们提出的模型有助于辅助从NBI和WLI中准确诊断声带白斑。