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胸部计算机断层扫描序列中的肺纹理:基于影像组学特征与放射治疗剂量及放射性肺炎发生的相关性

Lung texture in serial thoracic computed tomography scans: correlation of radiomics-based features with radiation therapy dose and radiation pneumonitis development.

作者信息

Cunliffe Alexandra, Armato Samuel G, Castillo Richard, Pham Ngoc, Guerrero Thomas, Al-Hallaq Hania A

机构信息

Department of Radiology, The University of Chicago, Chicago, Illinois.

Department of Radiation Oncology, The University of Texas Medical Branch, Galveston, Texas.

出版信息

Int J Radiat Oncol Biol Phys. 2015 Apr 1;91(5):1048-56. doi: 10.1016/j.ijrobp.2014.11.030. Epub 2015 Feb 7.

Abstract

PURPOSE

To assess the relationship between radiation dose and change in a set of mathematical intensity- and texture-based features and to determine the ability of texture analysis to identify patients who develop radiation pneumonitis (RP).

METHODS AND MATERIALS

A total of 106 patients who received radiation therapy (RT) for esophageal cancer were retrospectively identified under institutional review board approval. For each patient, diagnostic computed tomography (CT) scans were acquired before (0-168 days) and after (5-120 days) RT, and a treatment planning CT scan with an associated dose map was obtained. 32- × 32-pixel regions of interest (ROIs) were randomly identified in the lungs of each pre-RT scan. ROIs were subsequently mapped to the post-RT scan and the planning scan dose map by using deformable image registration. The changes in 20 feature values (ΔFV) between pre- and post-RT scan ROIs were calculated. Regression modeling and analysis of variance were used to test the relationships between ΔFV, mean ROI dose, and development of grade ≥2 RP. Area under the receiver operating characteristic curve (AUC) was calculated to determine each feature's ability to distinguish between patients with and those without RP. A classifier was constructed to determine whether 2- or 3-feature combinations could improve RP distinction.

RESULTS

For all 20 features, a significant ΔFV was observed with increasing radiation dose. Twelve features changed significantly for patients with RP. Individual texture features could discriminate between patients with and those without RP with moderate performance (AUCs from 0.49 to 0.78). Using multiple features in a classifier, AUC increased significantly (0.59-0.84).

CONCLUSIONS

A relationship between dose and change in a set of image-based features was observed. For 12 features, ΔFV was significantly related to RP development. This study demonstrated the ability of radiomics to provide a quantitative, individualized measurement of patient lung tissue reaction to RT and assess RP development.

摘要

目的

评估辐射剂量与一组基于数学强度和纹理的特征变化之间的关系,并确定纹理分析识别发生放射性肺炎(RP)患者的能力。

方法和材料

在机构审查委员会批准下,对106例接受食管癌放射治疗(RT)的患者进行回顾性研究。对于每位患者,在放疗前(0 - 168天)和放疗后(5 - 120天)进行诊断性计算机断层扫描(CT),并获取带有相关剂量图的治疗计划CT扫描。在每次放疗前扫描的肺部随机确定32×32像素的感兴趣区域(ROI)。随后通过使用可变形图像配准将ROI映射到放疗后扫描和计划扫描剂量图。计算放疗前后扫描ROI之间20个特征值(ΔFV)的变化。使用回归建模和方差分析来测试ΔFV、平均ROI剂量与≥2级RP发生之间的关系。计算受试者操作特征曲线(AUC)下的面积,以确定每个特征区分有和无RP患者的能力。构建一个分类器来确定2或3个特征组合是否可以改善RP区分。

结果

对于所有20个特征,随着辐射剂量增加观察到显著的ΔFV。12个特征在RP患者中发生了显著变化。单个纹理特征能够以中等性能区分有和无RP的患者(AUC为0.49至0.78)。在分类器中使用多个特征,AUC显著增加(0.59 - 0.84)。

结论

观察到剂量与一组基于图像的特征变化之间的关系。对于12个特征,ΔFV与RP发生显著相关。本研究证明了放射组学能够提供患者肺组织对放疗反应的定量、个性化测量,并评估RP的发生。

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