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Classification of colon biopsy images based on novel structural features

机译:基于新型结构特征的结肠活检图像分类

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Microscopic analysis of colon biopsy samples is a common medical practice for identifying colon cancer. However, the process is subjective, and leads to significant inter-observerAntra-observer variability. Further, pathologists have to examine many biopsy samples per day, therefore, factors such as expertise and workload of the histopathologists also affect the diagnosis. These limitations of the manual process result in the need of a computer-aided diagnostic system, which can help the histopathologists in accurately determining cancer. Image classification is one of such computer-aided techniques, which can help in efficiently identifying normal and malignant colon biopsy samples without the need of subjective involvement of histopathologists. In this work, we propose a colon biopsy image classification technique, wherein two novel structural feature types, namely, white run-length features and percentage cluster area features have been introduced These features are calculated for each colon biopsy image. The features are reduced using principal component analysis (PCA). The original and the reduced feature sets are then given as input to random forest, rotation forest, and rotation boost classifiers for classification of images into normal and malignant categories. The proposed technique has been evaluated on 174 colon biopsy images, and promising performance has been observed in terms of various well-known performance measures such as accuracy, sensitivity and specificity. The proposed technique has also been proven to be better compared to previously published techniques in the experimental section. Further, performance of the classifiers has been evaluated using ROC curves, and area under the curve (AUC). It has been observed that rotation boost classifier in combination with PCA based feature selection has shown better results in classification compared to other classifiers.
机译:结肠活检样品的显微镜分析是鉴定结肠癌的常见医学实践。然而,该过程是主观的,并导致显着的观察者间的观察者变异性。此外,病理学家必须检查每天许多活组织检查样本,因此,组织病理学家的专业知识和工作量等因素也会影响诊断。手动过程的这些限制导致需要计算机辅助诊断系统,其可以帮助组织病理学家准确确定癌症。图像分类是这样的计算机辅助技术之一,可以有助于有效地识别正常和恶性结肠活检样品,而不需要组织病理学家的主观累积。在这项工作中,我们提出了结肠活组织检查图像分类技术,其中每个结肠活检图像计算出这些特征的两种新颖的结构特征类型,即白色流量长度特征和百分比集群区域特征。使用主成分分析(PCA)减少了特征。然后将原始和缩小的特征集作为随机林,旋转林和旋转升压分类器的输入给出,用于将图像分类为正常和恶性类别。已经在174种结肠活检图像中评估了所提出的技术,并且在各种众所周知的性能措施(例如精度,敏感度和特异性)方面已经观察到了有希望的性能。与实验部分中的先前公布的技术相比,该技术也已被证明是更好的。此外,使用ROC曲线和曲线下的区域(AUC)进行评估分类器的性能。已经观察到,与其他分类器相比,旋转升压分类器与基于PCA的特征选择相比的结果更好地显示了分类。

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