三维膀胱癌CT图像纹理分析对放疗规划的指导意义

W. Nailon, A. Redpath, D. McLaren
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引用次数: 5

摘要

目前,没有单一的纹理分析方法可以提供放射治疗应用所需的自动分类精度。提出的方法是为了在计算机断层扫描(CT)图像上对总肿瘤体积(GTV)内的区域和其他临床相关区域进行分类。8例膀胱癌患者在放疗计划阶段及治疗期间定期获取CT信息。对膀胱、直肠内提取的区域和确定为临床相关的区域计算纹理特征(N=27)。采用顺序前向搜索(SFS)方法对特征集进行约简(N=3)。结果表明,对于任何正交CT图像的分类,简化的特征集具有显著的敏感性,并且该方法具有放射治疗应用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Texture analysis of 3D bladder cancer CT images for improving radiotherapy planning
At present no single texture analysis approach can provide automatic classification to the accuracy required for radiotherapy applications. The method presented was developed to classify areas within the gross tumor volume (GTV), and other clinically relevant regions, on computerized tomography (CT) images. For eight bladder cancer patients, CT information was acquired at the radiotherapy planning stage and thereafter at regular intervals during treatment. Textural features (N=27) were calculated on regions extracted within the bladder, rectum and a region identified as clinically relevant. The sequential forward search (SFS) method was used to reduce the feature set (N=3). The results demonstrate the significant sensitivity of the reduced feature set for classification of any orthogonal CT image and the potential of the approach for radiotherapy applications.
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