Ghatwary Noha, Ahmed Amr, Grisan Enrico, Jalab Hamid, Bidaut Luc, Ye Xujiong
University of Lincoln, Computer Science Department, Brayford Pool, Lincoln, United Kingdom.
Arab Academy for Science and Technology, Computer Engineering Department, Alexandria, Egypt.
J Med Imaging (Bellingham). 2019 Jan;6(1):014502. doi: 10.1117/1.JMI.6.1.014502. Epub 2019 Mar 5.
Barrett's esophagus (BE) is a premalignant condition that has an increased risk to turn into esophageal adenocarcinoma. Classification and staging of the different changes (BE in particular) in the esophageal mucosa are challenging since they have a very similar appearance. Confocal laser endomicroscopy (CLE) is one of the newest endoscopy tools that is commonly used to identify the pathology type of the suspected area of the esophageal mucosa. However, it requires a well-trained physician to classify the image obtained from CLE. An automatic stage classification of esophageal mucosa is presented. The proposed model enhances the internal features of CLE images using an image filter that combines fractional integration with differentiation. Various features are then extracted on a multiscale level, to classify the mucosal tissue into one of its four types: normal squamous (NS), gastric metaplasia (GM), intestinal metaplasia (IM or BE), and neoplasia. These sets of features are used to train two conventional classifiers: support vector machine (SVM) and random forest. The proposed method was evaluated on a dataset of 96 patients with 557 images of different histopathology types. The SVM classifier achieved the best performance with 96.05% accuracy based on a leave-one-patient-out cross-validation. Additionally, the dataset was divided into 60% training and 40% testing; the model achieved an accuracy of 93.72% for the testing data using the SVM. The presented model showed superior performance when compared with four state-of-the-art methods. Accurate classification is essential for the intestinal metaplasia grade, which most likely develops into esophageal cancer. Not only does our method come to the aid of physicians for more accurate diagnosis by acting as a second opinion, but it also acts as a training method for junior physicians who need practice in using CLE. Consequently, this work contributes to an automatic classification that facilitates early intervention and decreases samples of required biopsy.
巴雷特食管(BE)是一种癌前病变,其发展为食管腺癌的风险增加。食管黏膜不同变化(尤其是BE)的分类和分期具有挑战性,因为它们外观非常相似。共聚焦激光内镜显微镜(CLE)是最新的内镜工具之一,常用于识别食管黏膜可疑区域的病理类型。然而,它需要训练有素的医生对从CLE获得的图像进行分类。本文提出了一种食管黏膜的自动分期分类方法。所提出的模型使用一种将分数积分与微分相结合的图像滤波器来增强CLE图像的内部特征。然后在多尺度水平上提取各种特征,将黏膜组织分为四种类型之一:正常鳞状上皮(NS)、胃化生(GM)、肠化生(IM或BE)和肿瘤形成。这些特征集用于训练两个传统分类器:支持向量机(SVM)和随机森林。该方法在一个包含96例患者、557张不同组织病理学类型图像的数据集上进行了评估。基于留一患者交叉验证,SVM分类器以96.05%的准确率取得了最佳性能。此外,将数据集分为60%训练和40%测试;使用SVM时,该模型对测试数据的准确率为93.72%。与四种最先进的方法相比,所提出的模型表现出卓越的性能。准确分类对于最有可能发展为食管癌的肠化生分级至关重要。我们的方法不仅通过提供第二种观点帮助医生进行更准确的诊断,还作为一种培训方法帮助需要CLE使用练习的初级医生。因此,这项工作有助于实现自动分类,促进早期干预并减少所需活检样本。