Texture Analysis of CT Images in Head and Neck Tumors Differentiation

Yulduz Khodjibekova, M. Khodjibekov, B. R. Akhmedov, A. Pattokhov, A. S. Nigmatdjanov
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Abstract

Objective: to determine the diagnostic significance of computed tomography texture analysis (CTTA) in differentiating head and neck tumors.Material and methods. The study included 118 patients aged from 4 to 80 years with a verified diagnosis of benign and malignant (37 and 81, respectively) head and neck tumors. CTTA was performed using the LIFEx program, version 6.30. Thirty eight (38) texture indices extracted from routine CT images were tested by regression analysis with creation of logistic texture models with associations of four indices as independent predictors.Results. The possibility of using derived models – probability textural indices for benign and malignant tumors differentiation was established: area under ROC-curve (AUC) 0.854 ± 0.035 (p < 0.001); for differentiation of locally spread from locally limited tumors: AUC 0.840 ± 0.049 (p < 0.001); for differentiation of moderately, poorly, and undifferentiated cancer (G2, G3, G4) from well-differentiated (G1) head and neck cancer: AUC 0.826 ± 0.085 (p < 0.001).Conclusion. CT images texture analysis allows to make non-invasive prognosis of benign or malignant nature of a visualized head and neck tumor, as well as to determine the extent and degree of tumor malignancy.
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头颈部肿瘤分化的CT图像纹理分析
目的:探讨ct织构分析(CTTA)在头颈部肿瘤鉴别中的诊断意义。材料和方法。该研究纳入118例年龄在4至80岁之间,确诊为良性和恶性头颈部肿瘤(分别为37例和81例)的患者。使用版本6.30的LIFEx程序执行CTTA。对常规CT图像中提取的38个纹理指标进行回归分析,并建立logistic纹理模型,以4个指标的相关性作为独立预测因子。建立了应用衍生模型-肿瘤良恶性分化概率纹理指数的可能性:roc曲线下面积(AUC) 0.854±0.035 (p < 0.001);局部扩散与局部局限肿瘤的鉴别:AUC为0.840±0.049 (p < 0.001);中度、低分化和未分化头颈癌(G2、G3、G4)与高分化头颈癌(G1)鉴别的AUC: 0.826±0.085 (p < 0.001)。CT图像纹理分析可以对可见的头颈部肿瘤的良恶性进行无创预后,确定肿瘤的恶性程度和程度。
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审稿时长
36 weeks
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