Department of Radiation Oncology, School of Medicine, Shandong University, Jinan, China; Department of Radiation Oncology, Shandong Cancer Hospital and Institute, Shandong First Medical University and Shandong Academy of Medical Sciences, Jinan, China.
Department of Radiation Oncology, Shandong Cancer Hospital and Institute, Shandong First Medical University and Shandong Academy of Medical Sciences, Jinan, China.
Int J Radiat Oncol Biol Phys. 2019 Dec 1;105(5):1074-1085. doi: 10.1016/j.ijrobp.2019.08.024. Epub 2019 Aug 25.
We initially aimed to ascertain the application value of inflammatory indexes in predicting severe acute radiation pneumonitis (SARP). Furthermore, a novel nomogram and risk classification system integrating clinicopathologic, dosimetric, and biological parameters were built to provide individualized risk assessment and accurate prediction of SARP in patients with esophageal cancer who received radiation therapy.
All data were retrospectively collected from 416 esophageal cancer patients in 2 participating institutes. A novel nomogram was constructed that forecasted SARP based on logistic regression analyses. The concordance index, calibration curves, and decision curve analyses were used by both internal and external validation to demonstrate discriminatory and predictive capacity. Moreover, a corresponding risk classification system was generated by recursive partitioning analysis.
The Subjective Global Assessment score, pulmonary fibrosis score, planning target volume/total lung volume, mean lung dose, and ratio of change regarding systemic immune inflammation index at 4 weeks in the course of treatment were independent predictors of SARP and finally incorporated into our nomogram. The concordance index of nomogram for SARP prediction was 0.852, which showed superior discriminatory power (range, 0.604-0.712). Calibration curves indicated favorable consistency between the nomogram prediction and the actual outcomes. Decision curve analyses exhibited satisfactory clinical utility. A risk classification system was established to perfectly divide patients into 3 different risk groups, which were low-risk group (6.1%, score 0-158), intermediate-risk group (37.3%, score 159-280), and high-risk group (78.9%, score >280).
The Subjective Global Assessment score, pulmonary fibrosis score, planning target volume/total lung volume, mean lung dose, and ratio of change regarding systemic immune inflammation index at 4 weeks were potential valuable markers in predicting SARP. The developed nomogram and corresponding risk classification system with superior prediction ability for SARP could assist in patient counseling and provide guidance when making treatment decisions.
我们最初旨在确定炎症指标在预测严重急性放射性肺炎(SARP)中的应用价值。此外,构建了一个新的列线图和风险分类系统,该系统整合了临床病理、剂量学和生物学参数,旨在为接受放射治疗的食管癌患者提供个体化的 SARP 风险评估和准确预测。
所有数据均从 2 个参与机构的 416 名食管癌患者中回顾性收集。基于逻辑回归分析构建了一个新的列线图,用于预测 SARP。内部和外部验证均使用一致性指数、校准曲线和决策曲线分析来证明其区分能力和预测能力。此外,通过递归分区分析生成了相应的风险分类系统。
治疗过程中主观整体评估评分、肺纤维化评分、计划靶区/全肺体积、平均肺剂量和治疗 4 周时全身免疫炎症指数变化率是 SARP 的独立预测因素,并最终纳入我们的列线图。列线图预测 SARP 的一致性指数为 0.852,具有较高的区分能力(范围为 0.604-0.712)。校准曲线表明列线图预测与实际结果具有良好的一致性。决策曲线分析表明该列线图具有良好的临床实用性。建立了一个风险分类系统,可以将患者完美地分为 3 个不同的风险组,低危组(6.1%,评分 0-158)、中危组(37.3%,评分 159-280)和高危组(78.9%,评分>280)。
主观整体评估评分、肺纤维化评分、计划靶区/全肺体积、平均肺剂量和治疗 4 周时全身免疫炎症指数变化率是预测 SARP 的潜在有价值的标志物。该列线图和相应的风险分类系统具有较好的 SARP 预测能力,可辅助患者咨询,并为治疗决策提供指导。