Quantifying tumour heterogeneity with CT

被引:319
作者
Ganeshan, Balaji [1 ]
Miles, Kenneth A. [1 ]
机构
[1] UCL, Inst Nucl Med, London NW1 2BU, England
关键词
Quantitative; imaging biomarker; tumour; computed tomography; heterogeneity; texture analysis; biology; prognosis; characterization; treatment response and prediction; PULMONARY NODULE CHARACTERIZATION; COMPUTER-AIDED DETECTION; FOCAL LIVER-LESIONS; CELL LUNG-CANCER; TEXTURE ANALYSIS; FRACTAL DIMENSION; CONTRAST ENHANCEMENT; AUTOMATED DETECTION; COLORECTAL POLYPS; POTENTIAL MARKER;
D O I
10.1102/1470-7330.2013.0015
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Heterogeneity is a key feature of malignancy associated with adverse tumour biology. Quantifying heterogeneity could provide a useful non-invasive imaging biomarker. Heterogeneity on computed tomography (CT) can be quantified using texture analysis which extracts spatial information from CT images (unenhanced, contrast-enhanced and derived images such as CT perfusion) that may not be perceptible to the naked eye. The main components of texture analysis can be categorized into image transformation and quantification. Image transformation filters the conventional image into its basic components (spatial, frequency, etc.) to produce derived subimages. Texture quantification techniques include structural-, model- (fractal dimensions), statistical- and frequency-based methods. The underlying tumour biology that CT texture analysis may reflect includes (but is not limited to) tumour hypoxia and angiogenesis. Emerging studies show that CT texture analysis has the potential to be a useful adjunct in clinical oncologic imaging, providing important information about tumour characterization, prognosis and treatment prediction and response.
引用
收藏
页码:140 / 149
页数:10
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