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Computed diagnosis system for lung tumor detection based on PET/CT images

机译:基于PET / CT图像的肺肿瘤检测计算机诊断系统

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The development of positron emission tomography / computed tomography (PET / CT) has shown great success in improving the accuracy of clinic diagnosis of lung cancers. However, it is still difficult to differentiate between some normal tissues with high standard uptake value (such as inflammations) and lung tumors by general methods. The objective of this paper was to identify textural features useful in distinguishing tumor from normal tissue in PET/CT images. A computer aided diagnosis system is developed. Tumors and normal tissues were segmented by optical threshold method. Texture features were computed from every segmented regions of interest (ROI), and then analyzed according to classification of ROIs. Finally, the effectiveness of distinguishing tumor and normal tissue of every feature was compared and analyzed using distance and KNN classifier. The clinic use of the system has potential to improve in the accuracy of discriminating benign and malignant lesions.
机译:正电子发射断层扫描/计算机断层扫描(PET / CT)的发展已显示出在提高肺癌临床诊断准确性方面的巨大成功。但是,仍然难以通过常规方法区分具有高标准摄取值的某些正常组织(例如炎症)和肺部肿瘤。本文的目的是确定有助于区分PET / CT图像中的肿瘤与正常组织的纹理特征。开发了计算机辅助诊断系统。通过光学阈值法对肿瘤和正常组织进行分割。从每个感兴趣的分段区域(ROI)计算纹理特征,然后根据ROI的分类进行分析。最后,使用距离和KNN分类器对区分每个特征的肿瘤和正常组织的有效性进行了比较和分析。该系统在临床上的使用具有提高区分良性和恶性病变的准确性的潜力。

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