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An adaptive image segmentation process for the classification of lung biopsy images

机译:肺活检图像分类的自适应图像分割过程

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The purpose of this study was to develop a computer-based second opinion diagnostic tool that could read microscope images of lung tissue and classify the tissue sample as normal or cancerous. This problem can be broken down into three areas: segmentation, feature extraction and measurement, and classification. We introduce a kernel-based extension of fuzzy c-means to provide a coarse initial segmentation, with heuristically-based mechanisms to improve the accuracy of the segmentation. The segmented image is then processed to extract and quantify features. Finally, the measured features are used by a Support Vector Machine (SVM) to classify the tissue sample. The performance of this approach was tested using a database of 85 images collected at the Moffitt Cancer Center and Research Institute. These images represent a wide variety of normal lung tissue samples, as well as multiple types of lung cancer. When used with a subset of the data containing images from the normal and adenocarcinoma classes, we were able to correctly classify 78% of the images, with a ROC A_Z of 0.758.
机译:本研究的目的是开发一种基于计算机的第二意见诊断工具,可以读取肺组织的显微镜图像,并将组织样品作为正常或癌症分类。这个问题可以分为三个方面:分段,特征提取和测量,以及分类。我们介绍了基于内核的模糊C-Meance的扩展,以提供粗略的初始分割,具有基于启发式的机制,以提高分割的准确性。然后处理分段图像以提取和量化特征。最后,支持向量机(SVM)使用测量特征来对组织样本进行分类。使用在Moffitt癌症中心和研究所收集的85张图像数据库测试了这种方法的性能。这些图像代表了各种正常的肺组织样本,以及多种类型的肺癌。当与来自正常和腺癌类别的数据的数据子集一起使用时,我们能够正确分类78%的图像,ROC A_Z为0.758。

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