Cilla Savino, Romano Carmela, Macchia Gabriella, Boccardi Mariangela, Pezzulla Donato, Buwenge Milly, Castelnuovo Augusto Di, Bracone Francesca, Curtis Amalia De, Cerletti Chiara, Iacoviello Licia, Donati Maria Benedetta, Deodato Francesco, Morganti Alessio Giuseppe
Medical Physics Unit, Gemelli Molise Hospital, Campobasso, Italy.
Radiation Oncology Unit, Gemelli Molise Hospital, Campobasso, Italy.
Front Oncol. 2023 Jan 6;12:1044358. doi: 10.3389/fonc.2022.1044358. eCollection 2022.
Radiation-induced skin toxicity is a common and distressing side effect of breast radiation therapy (RT). We investigated the use of quantitative spectrophotometric markers as input parameters in supervised machine learning models to develop a predictive model for acute radiation toxicity.
One hundred twenty-nine patients treated for adjuvant whole-breast radiotherapy were evaluated. Two spectrophotometer variables, i.e. the melanin (I) and erythema (I) indices, were used to quantitatively assess the skin physical changes. Measurements were performed at 4-time intervals: before RT, at the end of RT and 1 and 6 months after the end of RT. Together with clinical covariates, melanin and erythema indices were correlated with skin toxicity, evaluated using the Radiation Therapy Oncology Group (RTOG) guidelines. Binary group classes were labeled according to a RTOG cut-off score of ≥ 2. The patient's dataset was randomly split into a training and testing set used for model development/validation and testing (75%/25% split). A 5-times repeated holdout cross-validation was performed. Three supervised machine learning models, including support vector machine (SVM), classification and regression tree analysis (CART) and logistic regression (LR), were employed for modeling and skin toxicity prediction purposes.
Thirty-four (26.4%) patients presented with adverse skin effects (RTOG ≥2) at the end of treatment. The two spectrophotometric variables at the beginning of RT (I and I), together with the volumes of breast (PTV2) and boost surgical cavity (PTV1), the body mass index (BMI) and the dose fractionation scheme (FRAC) were found significantly associated with the RTOG score groups (p<0.05) in univariate analysis. The diagnostic performances measured by the area-under-curve (AUC) were 0.816, 0.734, 0.714, 0.691 and 0.664 for IM, IE, PTV2, PTV1 and BMI, respectively. Classification performances reported precision, recall and F1-values greater than 0.8 for all models. The SVM classifier using the RBF kernel had the best performance, with accuracy, precision, recall and F-score equal to 89.8%, 88.7%, 98.6% and 93.3%, respectively. CART analysis classified patients with I ≥ 99 to be associated with RTOG ≥ 2 toxicity; subsequently, PTV1 and PTV2 played a significant role in increasing the classification rate. The CART model provided a very high diagnostic performance of AUC=0.959.
Spectrophotometry is an objective and reliable tool able to assess radiation induced skin tissue injury. Using a machine learning approach, we were able to predict grade RTOG ≥2 skin toxicity in patients undergoing breast RT. This approach may prove useful for treatment management aiming to improve patient quality of life.
放射性皮肤毒性是乳腺癌放射治疗(RT)常见且令人苦恼的副作用。我们研究了使用定量分光光度标记作为监督机器学习模型的输入参数,以建立急性放射毒性的预测模型。
对129例接受辅助性全乳放疗的患者进行评估。使用两个分光光度计变量,即黑色素(I)和红斑(I)指数,定量评估皮肤的物理变化。在4个时间点进行测量:放疗前、放疗结束时以及放疗结束后1个月和6个月。黑色素和红斑指数与临床协变量一起,根据放射治疗肿瘤学组(RTOG)指南评估与皮肤毒性的相关性。二元组类别根据RTOG截止评分≥2进行标记。患者数据集随机分为用于模型开发/验证和测试的训练集和测试集(75%/25%分割)。进行了5次重复的留出法交叉验证。使用三种监督机器学习模型,包括支持向量机(SVM)、分类与回归树分析(CART)和逻辑回归(LR)进行建模和皮肤毒性预测。
34例(26.4%)患者在治疗结束时出现皮肤不良反应(RTOG≥2)。放疗开始时的两个分光光度变量(I和I),连同乳房体积(PTV2)和增强手术腔体积(PTV1)、体重指数(BMI)和剂量分割方案(FRAC),在单因素分析中与RTOG评分组显著相关(p<0.05)。通过曲线下面积(AUC)测量的诊断性能,IM、IE、PTV2、PTV1和BMI分别为0.816、0.734、0.714、0.691和0.664。所有模型的分类性能报告的精确率、召回率和F1值均大于0.8。使用RBF核的SVM分类器性能最佳,准确率、精确率、召回率和F分数分别为89.8%、88.7%、98.6%和93.3%。CART分析将I≥99的患者分类为与RTOG≥2毒性相关;随后PTV1和PTV起在提高分类率方面发挥了重要作用。CART模型的AUC诊断性能非常高,为0.959。
分光光度法是一种能够评估放射性皮肤组织损伤的客观可靠工具。使用机器学习方法,我们能够预测接受乳腺放疗患者的RTOG≥2级皮肤毒性。这种方法可能对旨在改善患者生活质量的治疗管理有用。