Rueten-Budde A J, van Praag V M, van de Sande M A J, Fiocco M
Mathematical Institute, Leiden University, Niels Bohrweg 1, 2333 CA, Leiden, the Netherlands.
Department of Orthopaedic Surgery, Leiden University Medical Center, Albinusdreef 2, 2333 ZA, Leiden, the Netherlands.
Surg Oncol. 2018 Dec;27(4):695-701. doi: 10.1016/j.suronc.2018.09.003. Epub 2018 Sep 7.
There is increasing interest in personalized prediction of disease progression for soft tissue sarcoma patients. Currently, available prediction models are limited to predictions from time of surgery or diagnosis. This study updates predictions of overall survival at different times during follow-up by using the concept of dynamic prediction.
Information from 2232 patients with high-grade extremity soft tissue sarcoma, who underwent surgery at 14 specialized sarcoma centers, was used to develop a dynamic prediction model. The model provides updated 5-year survival probabilities from different prediction time points during follow-up. Baseline covariates as well as time-dependent covariates, such as status of local recurrence and distant metastases, were included in the model. In addition, the effect of covariates over time was investigated and modelled accordingly in the prediction model.
Surgical margin and tumor histology show a significant time-varying effect on overall survival. The effect of margin is strongest shortly after surgery and diminishes slightly over time. Development of local recurrence and distant metastases during follow-up have a strong effect on overall survival and updated predictions must account for their occurrence.
The presence of time-varying effects, as well as the effect of local recurrence and distant metastases on survival, suggest the importance of updating predictions during follow-up. This newly developed dynamic prediction model which updates survival probabilities over time can be used to make better individualized treatment decisions based on a dynamic assessment of a patient's prognosis.
软组织肉瘤患者疾病进展的个性化预测越来越受到关注。目前,可用的预测模型仅限于从手术或诊断时间开始的预测。本研究通过使用动态预测的概念更新随访期间不同时间点的总生存预测。
来自14个专业肉瘤中心接受手术的2232例高级别肢体软组织肉瘤患者的信息用于开发动态预测模型。该模型提供随访期间不同预测时间点更新的5年生存概率。模型中纳入了基线协变量以及随时间变化的协变量,如局部复发和远处转移的状态。此外,研究了协变量随时间的影响,并在预测模型中相应地进行建模。
手术切缘和肿瘤组织学对总生存显示出显著的随时间变化的影响。切缘的影响在手术后不久最强,随时间略有减弱。随访期间局部复发和远处转移的发生对总生存有强烈影响,更新的预测必须考虑到它们的发生。
随时间变化的影响以及局部复发和远处转移对生存的影响表明随访期间更新预测的重要性。这种新开发的随时间更新生存概率的动态预测模型可用于基于对患者预后的动态评估做出更好的个体化治疗决策。