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基于模型的联合治疗评估 - 肿瘤学中的放射增敏剂排名。

Model-based assessment of combination therapies - ranking of radiosensitizing agents in oncology.

机构信息

Fraunhofer-Chalmers Research Centre for Industrial Mathematics, Gothenburg, Sweden.

Department of Mathematical Sciences, Chalmers University of Technology and University of Gothenburg, Gothenburg, Sweden.

出版信息

BMC Cancer. 2023 May 6;23(1):409. doi: 10.1186/s12885-023-10899-y.

Abstract

BACKGROUND

To increase the chances of finding efficacious anticancer drugs, improve development times and reduce costs, it is of interest to rank test compounds based on their potential for human use as early as possible in the drug development process. In this paper, we present a method for ranking radiosensitizers using preclinical data.

METHODS

We used data from three xenograft mice studies to calibrate a model that accounts for radiation treatment combined with radiosensitizers. A nonlinear mixed effects approach was utilized where between-subject variability and inter-study variability were considered. Using the calibrated model, we ranked three different Ataxia telangiectasia-mutated inhibitors in terms of anticancer activity. The ranking was based on the Tumor Static Exposure (TSE) concept and primarily illustrated through TSE-curves.

RESULTS

The model described data well and the predicted number of eradicated tumors was in good agreement with experimental data. The efficacy of the radiosensitizers was evaluated for the median individual and the 95% population percentile. Simulations predicted that a total dose of 220 Gy (5 radiation sessions a week for 6 weeks) was required for 95% of tumors to be eradicated when radiation was given alone. When radiation was combined with doses that achieved at least 8 [Formula: see text] of each radiosensitizer in mouse blood, it was predicted that the radiation dose could be decreased to 50, 65, and 100 Gy, respectively, while maintaining 95% eradication.

CONCLUSIONS

A simulation-based method for calculating TSE-curves was developed, which provides more accurate predictions of tumor eradication than earlier, analytically derived, TSE-curves. The tool we present can potentially be used for radiosensitizer selection before proceeding to subsequent phases of the drug discovery and development process.

摘要

背景

为了提高发现有效抗癌药物的机会、缩短开发时间和降低成本,在药物开发过程中尽早根据化合物在人体中的潜在用途对测试化合物进行排名是很有意义的。本文提出了一种使用临床前数据对放射增敏剂进行排名的方法。

方法

我们使用了来自三个异种移植小鼠研究的数据来校准一个模型,该模型考虑了放射治疗与放射增敏剂的联合作用。采用非线性混合效应方法,考虑了个体间变异性和研究间变异性。利用校准后的模型,我们根据抗癌活性对三种不同的共济失调毛细血管扩张症突变抑制剂进行了排名。排名是基于肿瘤静态暴露(TSE)的概念,并主要通过 TSE 曲线来展示。

结果

该模型很好地描述了数据,预测的肿瘤根除数量与实验数据吻合良好。对放射增敏剂的疗效进行了中位数个体和 95%人群百分位数的评估。模拟预测,当单独使用放射治疗时,需要 220Gy 的总剂量(每周 5 次放射治疗,持续 6 周)才能使 95%的肿瘤被根除。当放射治疗与在小鼠血液中达到每种放射增敏剂至少 8[公式:见正文]的剂量联合使用时,预计可以将放射剂量分别降低至 50、65 和 100Gy,同时保持 95%的肿瘤根除率。

结论

开发了一种基于模拟的计算 TSE 曲线的方法,该方法比早期的解析衍生 TSE 曲线更准确地预测肿瘤的根除。我们提出的工具可以在药物发现和开发过程的后续阶段之前,潜在地用于放射增敏剂的选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1457/10164338/612d94ba7649/12885_2023_10899_Fig1_HTML.jpg

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