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Tumor heterogeneity assessed by texture analysis on contrast-enhanced CT in lung adenocarcinoma: association with pathologic grade

机译:通过纹理分析评估增强的CT肺腺癌的肿瘤异质性:与病理分级

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摘要

Objectives To investigate whether texture features on contrast-enhanced computed tomography (CECT) images of lung adenocarcinoma have association with pathologic grade.Methods A cohort of 148 patients with surgically operated adenocarcinoma was retrospectively reviewed. Fifty-four CT features of the primary lung tumor were extracted from CECT images using open-source 3D Slicer software; meanwhile, enhancement homogeneity was evaluated by two radiologists using visual assessment. Multivariate logistic regression analysis was performed to determine significant image indicator of pathologic grade.Results Tumors of intermediate grade were more likely to be never smokers (P=0.020). Enhancement heterogeneity by visual assessment showed no statistical difference between intermediate grade and high grade (P=0.671). Among those 54 features, 29 of them were significantly associated with pathologic grade. Multivariate logistic regression analyses identified F33 (Homogeneity 1) (P=0.005) and F38 (Inverse Variance) (P=0.032) as unique independent image indicators of pathologic grade, and the AUC calculated from this model (AUC=0.834) was higher than clinical model (AUC=0.615) (P=0.0001).Conclusions Our study revealed that texture analysis on CECT images could be helpful in predicting pathologic grade of lung adenocarcinoma.
机译:目的探讨肺腺癌的对比增强断层扫描(CECT)图像上的纹理特征是否与病理学分级有关。方法回顾性分析148例手术切除的腺癌患者。使用开源3D Slicer软件从CECT图像中提取出原发性肺肿瘤的54个CT特征;同时,两名放射科医生使用目测评估了增强的同质性。进行多因素logistic回归分析以确定病理分级的显着图像指标。结果中级肿瘤更可能从不吸烟(P = 0.020)。通过视觉评估增强异质性显示中级和高级之间没有统计学差异(P = 0.671)。在这54个特征中,其中29个与病理分级显着相关。多元逻辑回归分析确定F33(同质性1)(P = 0.005)和F38(逆方差)(P = 0.032)是病理等级的唯一独立影像指标,并且从该模型计算出的AUC(AUC = 0.834)高于临床模型(AUC = 0.615)(P = 0.0001)。结论我们的研究表明CECT图像的纹理分析可能有助于预测肺腺癌的病理分级。

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