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An optimal posttreatment surveillance strategy for cancer survivors based on an individualized risk-based approach

Guan‐Qun Zhou, Chen‐Fei Wu, Bin Deng, Tian-Sheng Gao, Jia‐Wei Lv, Li Lin, Fo‐Ping Chen, Jia Kou, Zhao-Xi Zhang, Xiaodan Huang, Zi‐Qi Zheng, Jun Ma, Jinhui Liang, Ying Sun

2020Nature Communications48 citationsDOIOpen Access PDF

Abstract

The optimal post-treatment surveillance strategy that can detect early recurrence of a cancer within limited visits remains unexplored. Here we adopt nasopharyngeal carcinoma as the study model to establish an approach to surveillance that balances the effectiveness of disease detection versus costs. A total of 7,043 newly-diagnosed patients are grouped according to a clinic-molecular risk grouping system. We use a random survival forest model to simulate the monthly probability of disease recurrence, and thereby establish risk-based surveillance arrangements that can maximize the efficacy of recurrence detection per visit. Markov decision-analytic models further validate that the risk-based surveillance outperforms the control strategies and is the most cost-effective. These results are confirmed in an external validation cohort. Finally, we recommend the risk-based surveillance arrangement which requires 10, 11, 13 and 14 visits for group I to IV. Our surveillance strategies might pave the way for individualized and economic surveillance for cancer survivors.

Topics & Concepts

CohortMedicineDiseaseMarkov decision processCancerComputer scienceIntensive care medicineInternal medicineMarkov processStatisticsMathematicsHead and Neck Cancer StudiesEsophageal Cancer Research and TreatmentLung Cancer Treatments and Mutations
An optimal posttreatment surveillance strategy for cancer survivors based on an individualized risk-based approach | Litcius