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Evaluation of Image Features and Classification Methods for Barrett's Cancer Detection Using VLE Imaging

机译:利用VLE成像技术评估Barrett癌症的图像特征和分类方法

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Volumetric Laser Endomicroscopy (VLE) is a promising technique for the detection of early neoplasia in Barrett's Esophagus (BE). VLE generates hundreds of high resolution, grayscale, cross-sectional images of the esophagus. However, at present, classifying these images is a time consuming and cumbersome effort performed by an expert using a clinical prediction model. This paper explores the feasibility of using computer vision techniques to accurately predict the presence of dysplastic tissue in VLE BE images. Our contribution is threefold. First, a benchmarking is performed for widely applied machine learning techniques and feature extraction methods. Second, three new features based on the clinical detection model are proposed, having superior classification accuracy and speed, compared to earlier work. Third, we evaluate automated parameter tuning by applying simple grid search and feature selection methods. The results are evaluated on a clinically validated dataset of 30 dysplastic and 30 non-dysplastic VLE images. Optimal classification accuracy is obtained by applying a support vector machine and using our modified Haralick features and optimal image cropping, obtaining an area under the receiver operating characteristic of 0.95 compared to the clinical prediction model at 0.81. Optimal execution time is achieved using a proposed mean and median feature, which is extracted at least factor 2.5 faster than alternative features with comparable performance.
机译:体积激光内窥镜检查(VLE)是一种用于检测Barrett食管(BE)早期肿瘤的有前途的技术。 VLE生成了数百个食管的高分辨率,灰度,横截面图像。然而,目前,对这些图像进行分类是专家使用临床预测模型进行的耗时且繁琐的工作。本文探讨了使用计算机视觉技术准确预测VLE BE图像中增生组织的存在的可行性。我们的贡献是三倍。首先,对广泛应用的机器学习技术和特征提取方法进行基准测试。其次,提出了基于临床检测模型的三个新功能,与早期工作相比,它们具有更好的分类准确性和速度。第三,我们通过应用简单的网格搜索和特征选择方法来评估自动参数调整。在30个发育不良和30个非发育异常VLE图像的临床验证数据集上评估结果。最佳分类精度是通过应用支持向量机并使用我们改进的Haralick特征和最佳图像裁剪获得的,与临床预测模型的0.81相比,接收器工作特性下的面积为0.95。使用建议的均值和中位数特征可实现最佳执行时间,该特征的提取速度比具有可比性能的替代特征至少快2.5倍。

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