估算晚期小细胞肺癌长期总生存期的挑战:基于验证的案例研究

IF 2.1 Q3 HEALTH CARE SCIENCES & SERVICES
ClinicoEconomics and Outcomes Research Pub Date : 2024-02-28 eCollection Date: 2024-01-01 DOI:10.2147/CEOR.S448975
Sukhvinder Johal, Lance Brannman, Victor Genestier, Hélène Cawston
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引用次数: 0

摘要

研究目的该研究旨在探索一线广泛期小细胞肺癌(ES-SCLC)基于免疫疗法治疗的总生存期(OS)推断方法,并强调其面临的挑战:将标准参数生存模型、样条模型、地标模型、混合和非混合治愈模型以及马尔可夫模型拟合到PD-L1抑制剂durvalumab联合铂类化疗(NCT03043872)的CASPIAN 3期随机试验的2年数据中。将推断结果与同一试验的最新3年数据进行比较,并评估长期估计值的可信度:结果:所有使用的模型都合理地拟合了观察到的卡普兰-梅耶(K-M)生存数据。与 CASPIAN 更新数据拟合度最高的模型是混合治愈模型。相比之下,地标分析模型对生存期的拟合最不准确。不同模型的估计平均OS差别很大,对于度伐卢单抗加依托泊苷和铂,从1.41(地标模型)到4.81(混合治愈模型)不等;对于依托泊苷和铂,从1.01(地标模型)到2.00(混合治愈模型)不等:虽然大多数模型都能很好地拟合 K-M 数据,但重要的是在评估统计拟合优度的同时,还要考虑长期预测的临床合理性。更复杂的治愈模型在 3 年时显示出最佳预测能力,可能更好地代表了免疫疗法的基本作用方法;然而,对模型的临床合理性和治愈假设的考虑还需要进一步的研究和验证。我们的研究结果表明,在选择最合适的长期生存建模方法时,尤其是在考虑使用更复杂的模型时,从临床角度出发具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges with Estimating Long-Term Overall Survival in Extensive Stage Small-Cell Lung Cancer: A Validation-Based Case Study.

Objective: The study aimed to explore methods and highlight the challenges of extrapolating the overall survival (OS) of immunotherapy-based treatment in first-line extensive stage small-cell lung cancer (ES-SCLC).

Methods: Standard parametric survival models, spline models, landmark models, mixture and non-mixture cure models, and Markov models were fitted to 2-year data of the CASPIAN Phase 3 randomised trial of PD-L1 inhibitor durvalumab added to platinum-based chemotherapy (NCT03043872). Extrapolations were compared with updated 3-year data from the same trial and the plausibility of long-term estimates assessed.

Results: All models used provided a reasonable fit to the observed Kaplan-Meier (K-M) survival data. The model which provided the best fit to the updated CASPIAN data was the mixture cure model. In contrast, the landmark analysis provided the least accurate fit to model survival. Estimated mean OS differed substantially across models and ranged from (in years) 1.41 (landmark model) to 4.81 (mixture cure model) for durvalumab plus etoposide and platinum and from 1.01 (landmark model) to 2.00 (mixture cure model) for etoposide and platinum.

Conclusion: While most models may provide a good fit to K-M data, it is crucial to assess beyond the statistical goodness-of-fit and consider the clinical plausibility of the long-term predictions. The more complex cure models demonstrated the best predictive ability at 3 years, potentially providing a better representation of the underlying method of action of immunotherapy; however, consideration of the models' clinical plausibility and cure assumptions need further research and validation. Our findings underscore the significance of adopting a clinical perspective when selecting the most appropriate approach to model long-term survival, particularly when considering the use of more complex models.

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来源期刊
ClinicoEconomics and Outcomes Research
ClinicoEconomics and Outcomes Research HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.70
自引率
0.00%
发文量
83
审稿时长
16 weeks
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