Dipartimento di Ingegneria Industriale e dell'Informazione, Università degli studi di Pavia, Pavia I-27100, Italy; Merck Institute for Pharmacometrics, Merck Serono S.A., Lausanne, Switzerland, an affiliate of Merck KGaA, Darmstadt, Germany.
Dipartimento di Ingegneria Industriale e dell'Informazione, Università degli studi di Pavia, Pavia I-27100, Italy.
J Theor Biol. 2018 Aug 7;450:1-14. doi: 10.1016/j.jtbi.2018.04.012. Epub 2018 Apr 19.
Host features, such as cell proliferation rates, caloric intake, metabolism and energetic conditions, significantly influence tumor growth; at the same time, tumor growth may have a dramatic impact on the host conditions. For example, in clinics, at certain stages of the tumor growth, cachexia (body weight reduction) may become so relevant to be considered as responsible for around 20% of cancer deaths. Unfortunately, anticancer therapies may also contribute to the development of cachexia due to reduced food intake (anorexia), commonly observed during the treatment periods. For this reason, cachexia is considered one of the major toxicity findings to be evaluated also in preclinical studies. However, although various pharmacokinetic-pharmacodynamic (PK-PD) tumor growth inhibition (TGI) models are currently available, the mathematical modeling of cachexia onset and TGI after an anticancer administration in preclinical experiments is still an open issue. To cope with this, a new PK-PD model, based on a set of tumor-host interaction rules taken from Dynamic Energy Budget (DEB) theory and a set of drug tumor inhibition equations taken from the well-known Simeoni TGI model, was developed. The model is able to describe the body weight reduction, splitting the cachexia directly induced by tumor and that caused by the drug treatment under study. It was tested in typical preclinical studies, essentially designed for efficacy evaluation and routinely performed as a part of the industrial drug development plans. For the first time, both the dynamics of tumor and host growth could be predicted in xenograft mice untreated or treated with different anticancer agents and following different schedules. The model code is freely available for downloading at http://repository.ddmore.eu (model number DDMODEL00000274).
宿主特征,如细胞增殖率、热量摄入、代谢和能量状态,会显著影响肿瘤生长;与此同时,肿瘤生长可能会对宿主状况产生巨大影响。例如,在临床上,在肿瘤生长的某些阶段,恶病质(体重减轻)可能变得非常相关,以至于被认为是导致约 20%癌症死亡的原因。不幸的是,由于治疗期间常见的食欲下降(厌食症),抗癌疗法也可能导致恶病质的发展。出于这个原因,恶病质被认为是临床前研究中需要评估的主要毒性发现之一。然而,尽管目前有各种药代动力学-药效学(PK-PD)肿瘤生长抑制(TGI)模型,但在临床前实验中,抗癌药物给药后恶病质发病和 TGI 的数学建模仍然是一个未解决的问题。为了解决这个问题,开发了一种新的 PK-PD 模型,该模型基于一组从动态能量预算(DEB)理论中获取的肿瘤-宿主相互作用规则和一组从著名的 Simeoni TGI 模型中获取的药物肿瘤抑制方程。该模型能够描述体重减轻,将肿瘤直接引起的恶病质与正在研究的药物治疗引起的恶病质分开。它在典型的临床前研究中进行了测试,这些研究主要用于疗效评估,并作为工业药物开发计划的一部分进行。首次可以预测未处理或用不同抗癌药物处理并采用不同方案的异种移植小鼠中肿瘤和宿主生长的动态。模型代码可在 http://repository.ddmore.eu(模型编号 DDMODEL00000274)上免费下载。