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贝叶斯分层变点方法在建模异种移植实验中肿瘤生长曲线中的应用。

Bayesian hierarchical changepoint methods in modeling the tumor growth profiles in xenograft experiments.

机构信息

Biostatistics Unit, University of Michigan Comprehensive Cancer Center, Ann Arbor, Michigan 48109, USA.

出版信息

Clin Cancer Res. 2011 Mar 1;17(5):1057-64. doi: 10.1158/1078-0432.CCR-10-1935. Epub 2010 Dec 3.

Abstract

PURPOSE

The standard approach of using tumor doubling time to assess growth delay may not accurately represent tumor response, especially if the growth rates are not constant. Therefore, we developed a method to compare the antitumor activities of different treatments in xenograft experiments that uses the entire growth curve to estimate nonconstant growth rates.

EXPERIMENTAL DESIGN

A Bayesian hierarchical changepoint (BHC) method was used to model logarithmically transformed tumor volumes (TV). Each tumor was assumed to have a growth profile, represented by a prenadir regression rate, a regression period, a nadir volume, and a postnadir regrowth rate. Confidence intervals were calculated to compare these features between different treatments. We used data from a study assessing the effects of radiation, gemcitabine, and a Chk1/2 inhibitor on MiaPaCa-2 xenografts.

RESULTS

We found that the BHC model provided a good fit to the data and more descriptive features than the tumor doubling approach. This model detected significant tumor regression in the AZD7762 + 1 Gy and GEM + 1 Gy that was not detected when comparing the tumor doubling times. The BHC model also provided evidence that the growth inhibition resulted from a direct tumor effect rather than an indirect effect on the tumor bed, as evidenced by dramatic tumor regression in response to effective treatments and similar postnadir regrowth rates across all treatment groups.

CONCLUSIONS

Compared with the tumor doubling time approach, the BHC model utilizes all data, providing more descriptive features that address mechanisms underlying tumor growth inhibition and maximize the biological information obtained from tumor xenografts studies.

摘要

目的

使用肿瘤倍增时间来评估生长延迟的标准方法可能无法准确表示肿瘤反应,特别是如果生长率不是恒定的。因此,我们开发了一种方法,使用整个生长曲线来估计非恒定生长率,从而比较异种移植实验中不同治疗方法的抗肿瘤活性。

实验设计

使用贝叶斯分层变点(BHC)方法对数转换后的肿瘤体积(TV)进行建模。假设每个肿瘤都有一个生长曲线,由前期下降回归率、下降期、最低点体积和后期再增长率来表示。计算置信区间以比较不同治疗方法之间的这些特征。我们使用了一项评估辐射、吉西他滨和 Chk1/2 抑制剂对 MiaPaCa-2 异种移植影响的研究数据。

结果

我们发现 BHC 模型对数据的拟合度很好,并且比肿瘤倍增方法提供了更多描述性特征。该模型检测到 AZD7762 + 1 Gy 和 GEM + 1 Gy 治疗组中存在显著的肿瘤消退,但当比较肿瘤倍增时间时则无法检测到。BHC 模型还提供了证据表明,生长抑制是由直接的肿瘤效应引起的,而不是对肿瘤床的间接影响,因为在有效治疗后观察到了明显的肿瘤消退,并且所有治疗组的后期再增长率相似。

结论

与肿瘤倍增时间方法相比,BHC 模型利用了所有数据,提供了更具描述性的特征,这些特征可以解决肿瘤生长抑制的潜在机制,并最大限度地从肿瘤异种移植研究中获取生物学信息。

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