Department of Radiation Oncology, Klinikum rechts der Isar, Technical University of Munich (TUM), Ismaninger Straße 22, 81675, Munich, Germany.
Partner Site Munich, Deutsches Konsortium für Translationale Krebsforschung (DKTK), Munich, Germany.
Strahlenther Onkol. 2018 Sep;194(9):824-834. doi: 10.1007/s00066-018-1294-2. Epub 2018 Mar 20.
Current prognostic models for soft tissue sarcoma (STS) patients are solely based on staging information. Treatment-related data have not been included to date. Including such information, however, could help to improve these models.
A single-center retrospective cohort of 136 STS patients treated with radiotherapy (RT) was analyzed for patients' characteristics, staging information, and treatment-related data. Therapeutic imaging studies and pathology reports of neoadjuvantly treated patients were analyzed for signs of response. Random forest machine learning-based models were used to predict patients' death and disease progression at 2 years. Pre-treatment and treatment models were compared.
The prognostic models achieved high performances. Using treatment features improved the overall performance for all three classification types: prediction of death, and of local and systemic progression (area under the receiver operatoring characteristic curve (AUC) of 0.87, 0.88, and 0.84, respectively). Overall, RT-related features, such as the planning target volume and total dose, had preeminent importance for prognostic performance. Therapy response features were selected for prediction of disease progression.
A machine learning-based prognostic model combining known prognostic factors with treatment- and response-related information showed high accuracy for individualized risk assessment. This model could be used for adjustments of follow-up procedures.
目前软组织肉瘤(STS)患者的预后模型仅基于分期信息。迄今为止,尚未纳入与治疗相关的数据。然而,包含这些信息可以帮助改善这些模型。
对 136 例接受放疗(RT)治疗的 STS 患者的单中心回顾性队列进行了分析,以评估患者的特征、分期信息和与治疗相关的数据。对新辅助治疗患者的治疗影像学研究和病理报告进行了分析,以确定治疗反应的迹象。使用基于随机森林机器学习的模型来预测患者在 2 年内的死亡和疾病进展情况。比较了治疗前和治疗后的模型。
预后模型的性能表现优异。使用治疗特征可以提高所有三种分类类型的整体性能:死亡、局部和全身进展的预测(接受者操作特征曲线下面积分别为 0.87、0.88 和 0.84)。总的来说,与 RT 相关的特征,如计划靶区和总剂量,对预后性能具有重要意义。治疗反应特征被选择用于疾病进展的预测。
结合已知预后因素与治疗和反应相关信息的基于机器学习的预后模型,对于个体化风险评估具有较高的准确性。该模型可用于调整随访程序。