Department of Oral Surgery, Medical University in Wrocław, Wrocław, Poland.
Department of Orthodontics, TU Dresden, Dresden, Germany.
J Healthc Eng. 2020 Sep 13;2020:8831161. doi: 10.1155/2020/8831161. eCollection 2020.
Oral leukoplakia represents the most common oral potentially malignant disorder, so early diagnosis of leukoplakia is important. The aim of this study is to propose an effective texture analysis algorithm for oral leukoplakia diagnosis. Thirty-five patients affected by leukoplakia were included in this study. Intraoral photography of normal oral mucosa and leukoplakia were taken and processed for texture analysis. Two features of texture, run length matrix and co-occurrence matrix, were analyzed. Difference was checked by ANOVA. Factor analysis and classification by the artificial neural network were performed. Results revealed easy possible differentiation leukoplakia from normal mucosa ( < 0.05). Neural network discrimination shows full leukoplakia recognition (sensitivity 100%) and specificity 97%. This objective analysis in the neural network revealed that involving 3 textural features into optical analysis of the oral mucosa leads to proper diagnosis of leukoplakia. Application of texture analysis for leukoplakia is a promising diagnostic method.
口腔白斑病是最常见的口腔潜在恶性疾病,因此早期诊断口腔白斑病很重要。本研究旨在提出一种有效的纹理分析算法用于口腔白斑病的诊断。本研究共纳入 35 例白斑病患者。对正常口腔黏膜和白斑病患者进行口腔内摄影,并进行纹理分析处理。分析了两种纹理特征,即行程长度矩阵和共生矩阵。采用方差分析检查差异。进行因子分析和人工神经网络分类。结果表明,该方法可以轻松区分白斑病和正常黏膜(<0.05)。神经网络的区分显示出对完全性白斑病的识别(敏感性 100%)和特异性 97%。神经网络的客观分析表明,将 3 种纹理特征纳入口腔黏膜光学分析可以正确诊断白斑病。纹理分析在白斑病中的应用是一种很有前途的诊断方法。