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利用监督机器学习技术定量检测乳腺癌放射治疗所致急性皮肤毒性的热成像生物标志物

Quantitative Thermal Imaging Biomarkers to Detect Acute Skin Toxicity From Breast Radiation Therapy Using Supervised Machine Learning.

机构信息

Department of Radiation Oncology, Sunnybrook Health Sciences Centre, Toronto, Canada; Department of Electrical Engineering and Computer Science, York University, Toronto, Canada.

Department of Radiation Oncology, Sunnybrook Health Sciences Centre, Toronto, Canada; Evaluative Clinical Sciences Platform, Sunnybrook Research Institute, Toronto, Canada.

出版信息

Int J Radiat Oncol Biol Phys. 2020 Apr 1;106(5):1071-1083. doi: 10.1016/j.ijrobp.2019.12.032. Epub 2020 Jan 23.

Abstract

PURPOSE

Radiation-induced dermatitis is a common side effect of breast radiation therapy (RT). Current methods to evaluate breast skin toxicity include clinical examination, visual inspection, and patient-reported symptoms. Physiological changes associated with radiation-induced dermatitis, such as inflammation, may also increase body-surface temperature, which can be detected by thermal imaging. Quantitative thermal imaging markers were identified and used in supervised machine learning to develop a predictive model for radiation dermatitis.

METHODS AND MATERIALS

Ninety patients treated for adjuvant whole-breast RT (4250 cGy/f = 16) were recruited for the study. Thermal images of the treated breast were taken at 4 intervals: before RT, then weekly at f = 5, f = 10, and f = 15. Parametric thermograms were analyzed and yielded 26 thermal-based features that included surface temperature (°C) and texture parameters obtained from (1) gray-level co-occurrence matrix, (2) gray-level run-length matrix, and (3) neighborhood gray-tone difference matrix. Skin toxicity was evaluated at the end of RT using the Common Terminology Criteria for Adverse Events (CTCAE) guidelines (Ver.5). Binary group classes were labeled according to a CTCAE cut-off score of ≥2, and thermal features obtained at f = 5 were used for supervised machine learning to predict skin toxicity. The data set was partitioned for model training, independent testing, and validation. Fifteen patients (∼17% of the whole data set) were randomly selected as an unseen test data set, and 75 patients (∼83% of the whole data set) were used for training and validation of the model. A random forest classifier with leave-1-patient-out cross-validation was employed for modeling single and hybrid parameters. The model performance was reported using receiver operating characteristic analysis on patients from an independent test set.

RESULTS

Thirty-seven patients presented with adverse skin effects, denoted by a CTCAE score ≥2, and had significantly higher local increases in skin temperature, reaching 36.06°C at f = 10 (P = .029). However, machine-learning models demonstrated early thermal signals associated with skin toxicity after the fifth RT fraction. The cross-validated model showed high prediction accuracy on the independent test data (test accuracy = 0.87) at f = 5 for predicting skin toxicity at the end of RT.

CONCLUSIONS

Early thermal markers after 5 fractions of RT are predictive of radiation-induced skin toxicity in breast RT.

摘要

目的

放射性皮炎是乳腺癌放射治疗(RT)的常见副作用。目前评估乳房皮肤毒性的方法包括临床检查、目视检查和患者报告的症状。与放射性皮炎相关的生理变化,如炎症,也可能会增加体表温度,这可以通过热成像来检测。本研究使用定量热成像标记物,并通过监督机器学习来开发一种用于预测放射性皮炎的预测模型。

方法与材料

本研究共招募了 90 名接受辅助性全乳 RT(4250 cGy/f = 16)的患者。在治疗前、治疗后第 5、10 和 15 次(f = 5、f = 10 和 f = 15)时拍摄治疗乳房的热图像。对参数热谱进行分析,得出 26 个基于热的特征,包括从(1)灰度共生矩阵、(2)灰度行程长度矩阵和(3)邻域灰度差矩阵获得的表面温度(°C)和纹理参数。在 RT 结束时使用不良事件通用术语标准(CTCAE)指南(版本 5)评估皮肤毒性。根据 CTCAE 截断评分≥2 对二元组类进行标记,并使用 f = 5 时获得的热特征进行监督机器学习,以预测皮肤毒性。数据集被分割用于模型训练、独立测试和验证。随机选择 15 名患者(约占整个数据集的 17%)作为未见测试数据集,其余 75 名患者(约占整个数据集的 83%)用于模型的训练和验证。使用带有留一患者交叉验证的随机森林分类器进行单参数和混合参数建模。使用来自独立测试集的患者的接收者操作特征分析报告模型性能。

结果

37 名患者出现皮肤不良反应,CTCAE 评分≥2,皮肤温度局部升高明显,f = 10 时达到 36.06°C(P =.029)。然而,机器学习模型在第五次 RT 后显示出与皮肤毒性相关的早期热信号。在 f = 5 时,交叉验证模型对独立测试数据的预测准确率较高(测试准确率=0.87),可预测 RT 结束时的皮肤毒性。

结论

RT 后 5 次剂量后的早期热标记物可预测乳腺癌 RT 引起的皮肤毒性。

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