Frieboes Hermann B, Edgerton Mary E, Fruehauf John P, Rose Felicity R A J, Worrall Lisa K, Gatenby Robert A, Ferrari Mauro, Cristini Vittorio
School of Health Information Sciences, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Cancer Res. 2009 May 15;69(10):4484-92. doi: 10.1158/0008-5472.CAN-08-3740. Epub 2009 Apr 14.
Nearly 30% of women with early-stage breast cancer develop recurrent disease attributed to resistance to systemic therapy. Prevailing models of chemotherapy failure describe three resistant phenotypes: cells with alterations in transmembrane drug transport, increased detoxification and repair pathways, and alterations leading to failure of apoptosis. Proliferative activity correlates with tumor sensitivity. Cell-cycle status, controlling proliferation, depends on local concentration of oxygen and nutrients. Although physiologic resistance due to diffusion gradients of these substances and drugs is a recognized phenomenon, it has been difficult to quantify its role with any accuracy that can be exploited clinically. We implement a mathematical model of tumor drug response that hypothesizes specific functional relationships linking tumor growth and regression to the underlying phenotype. The model incorporates the effects of local drug, oxygen, and nutrient concentrations within the three-dimensional tumor volume, and includes the experimentally observed resistant phenotypes of individual cells. We conclude that this integrative method, tightly coupling computational modeling with biological data, enhances the value of knowledge gained from current pharmacokinetic measurements, and, further, that such an approach could predict resistance based on specific tumor properties and thus improve treatment outcome.
近30%的早期乳腺癌女性会出现复发性疾病,这归因于对全身治疗的耐药性。当前化疗失败的模型描述了三种耐药表型:跨膜药物转运改变的细胞、解毒和修复途径增加的细胞,以及导致细胞凋亡失败的改变。增殖活性与肿瘤敏感性相关。控制增殖的细胞周期状态取决于局部氧气和营养物质的浓度。尽管由于这些物质和药物的扩散梯度导致的生理耐药性是一种公认的现象,但很难准确量化其在临床上可利用的作用。我们建立了一个肿瘤药物反应的数学模型,该模型假设了将肿瘤生长和消退与潜在表型联系起来的特定功能关系。该模型纳入了三维肿瘤体积内局部药物、氧气和营养物质浓度的影响,并包括单个细胞的实验观察到的耐药表型。我们得出结论,这种将计算建模与生物学数据紧密结合的综合方法,提高了从当前药代动力学测量中获得的知识的价值,而且,这种方法可以根据特定的肿瘤特性预测耐药性,从而改善治疗结果。