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CT 图像生物标志物可改善放射诱导性口干和粘性唾液的患者特异性预测。

CT image biomarkers to improve patient-specific prediction of radiation-induced xerostomia and sticky saliva.

机构信息

Department of Radiation Oncology, University of Groningen, University Medical Center Groningen, The Netherlands.

Department of Radiation Oncology, University of Groningen, University Medical Center Groningen, The Netherlands.

出版信息

Radiother Oncol. 2017 Feb;122(2):185-191. doi: 10.1016/j.radonc.2016.07.007. Epub 2016 Jul 25.

DOI:10.1016/j.radonc.2016.07.007
PMID:27459902
Abstract

BACKGROUND AND PURPOSE

Current models for the prediction of late patient-rated moderate-to-severe xerostomia (XER) and sticky saliva (STIC) after radiotherapy are based on dose-volume parameters and baseline xerostomia (XER) or sticky saliva (STIC) scores. The purpose is to improve prediction of XER and STIC with patient-specific characteristics, based on CT image biomarkers (IBMs).

METHODS

Planning CT-scans and patient-rated outcome measures were prospectively collected for 249 head and neck cancer patients treated with definitive radiotherapy with or without systemic treatment. The potential IBMs represent geometric, CT intensity and textural characteristics of the parotid and submandibular glands. Lasso regularisation was used to create multivariable logistic regression models, which were internally validated by bootstrapping.

RESULTS

The prediction of XER could be improved significantly by adding the IBM "Short Run Emphasis" (SRE), which quantifies heterogeneity of parotid tissue, to a model with mean contra-lateral parotid gland dose and XER. For STIC, the IBM maximum CT intensity of the submandibular gland was selected in addition to STIC and mean dose to submandibular glands.

CONCLUSION

Prediction of XER and STIC was improved by including IBMs representing heterogeneity and density of the salivary glands, respectively. These IBMs could guide additional research to the patient-specific response of healthy tissue to radiation dose.

摘要

背景与目的

目前预测放疗后中重度口干症(XER)和粘性唾液症(STIC)的患者自评的模型基于剂量-体积参数以及基线口干症(XER)或粘性唾液症(STIC)评分。本研究旨在通过基于 CT 图像生物标志物(IBMs)的患者特定特征来改善 XER 和 STIC 的预测。

方法

前瞻性收集了 249 例接受根治性放疗或放化疗的头颈部癌症患者的计划 CT 扫描和患者自评结果。潜在的 IBMs 代表了腮腺和颌下腺的几何、CT 强度和纹理特征。使用套索正则化创建多变量逻辑回归模型,并通过自举法进行内部验证。

结果

通过添加“短程强调”(SRE)IBM(一种量化腮腺组织异质性的方法)到包含平均对侧腮腺剂量和 XER 的模型中,XER 的预测可以得到显著改善。对于 STIC,除了 STIC 和颌下腺平均剂量外,还选择了颌下腺的最大 CT 强度 IBM。

结论

通过纳入分别代表唾液腺异质性和密度的 IBMs,XER 和 STIC 的预测得到了改善。这些 IBMs 可以指导针对健康组织对辐射剂量的患者特异性反应的进一步研究。

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