Alizadeh Mahdi, Maghsoudi Omid Haji, Sharzehi Kaveh, Reza Hemati Hamid, Kamali Asl Alireza, Talebpour Alireza
Department of Bioengineering, Temple University, Philadelphia, PA19121, USA.
Department of Medicine, Section of Gastroenterology, School of Medicine, Temple University, Philadelphia, PA 19140, USA.
J Biomed Res. 2017 Sep 26;31(5):419-427. doi: 10.7555/JBR.31.20160008.
Automatic diagnosis tool helps physicians to evaluate capsule endoscopic examinations faster and more accurate. The purpose of this study was to evaluate the validity and reliability of an automatic post-processing method for identifying and classifying wireless capsule endoscopic images, and investigate statistical measures to differentiate normal and abnormal images. The proposed technique consists of two main stages, namely, feature extraction and classification. Primarily, 32 features incorporating four statistical measures (contrast, correlation, homogeneity and energy) calculated from co-occurrence metrics were computed. Then, mutual information was used to select features with maximal dependence on the target class and with minimal redundancy between features. Finally, a trained classifier, adaptive neuro-fuzzy interface system was implemented to classify endoscopic images into tumor, healthy and unhealthy classes. Classification accuracy of 94.2% was obtained using the proposed pipeline. Such techniques are valuable for accurate detection characterization and interpretation of endoscopic images.
自动诊断工具帮助医生更快、更准确地评估胶囊内镜检查。本研究的目的是评估一种用于识别和分类无线胶囊内镜图像的自动后处理方法的有效性和可靠性,并研究区分正常和异常图像的统计方法。所提出的技术包括两个主要阶段,即特征提取和分类。首先,计算从共生矩阵得出的包含四个统计量(对比度、相关性、均匀性和能量)的32个特征。然后,使用互信息来选择对目标类别具有最大依赖性且特征之间冗余最小的特征。最后,实施一个经过训练的分类器——自适应神经模糊接口系统,将内镜图像分类为肿瘤、健康和不健康类别。使用所提出的流程获得了94.2%的分类准确率。此类技术对于内镜图像的准确检测、特征描述和解释很有价值。