Jayachandran Devaraj, Rundell Ann E, Hannemann Robert E, Vik Terry A, Ramkrishna Doraiswami
School of Chemical Engineering, Purdue University, West Lafayette, Indiana, United States of America.
Weldon School of Biomedical Engineering, Purdue University, West Lafayette, Indiana, United States of America.
PLoS One. 2014 Oct 13;9(10):e109623. doi: 10.1371/journal.pone.0109623. eCollection 2014.
Acute Lymphoblastic Leukemia, commonly known as ALL, is a predominant form of cancer during childhood. With the advent of modern healthcare support, the 5-year survival rate has been impressive in the recent past. However, long-term ALL survivors embattle several treatment-related medical and socio-economic complications due to excessive and inordinate chemotherapy doses received during treatment. In this work, we present a model-based approach to personalize 6-Mercaptopurine (6-MP) treatment for childhood ALL with a provision for incorporating the pharmacogenomic variations among patients. Semi-mechanistic mathematical models were developed and validated for i) 6-MP metabolism, ii) red blood cell mean corpuscular volume (MCV) dynamics, a surrogate marker for treatment efficacy, and iii) leukopenia, a major side-effect. With the constraint of getting limited data from clinics, a global sensitivity analysis based model reduction technique was employed to reduce the parameter space arising from semi-mechanistic models. The reduced, sensitive parameters were used to individualize the average patient model to a specific patient so as to minimize the model uncertainty. Models fit the data well and mimic diverse behavior observed among patients with minimum parameters. The model was validated with real patient data obtained from literature and Riley Hospital for Children in Indianapolis. Patient models were used to optimize the dose for an individual patient through nonlinear model predictive control. The implementation of our approach in clinical practice is realizable with routinely measured complete blood counts (CBC) and a few additional metabolite measurements. The proposed approach promises to achieve model-based individualized treatment to a specific patient, as opposed to a standard-dose-for-all, and to prescribe an optimal dose for a desired outcome with minimum side-effects.
急性淋巴细胞白血病,通常称为ALL,是儿童时期主要的癌症形式。随着现代医疗支持的出现,近年来5年生存率令人印象深刻。然而,由于在治疗期间接受了过量且过度的化疗剂量,ALL长期幸存者面临着几种与治疗相关的医学和社会经济并发症。在这项工作中,我们提出了一种基于模型的方法,用于个性化治疗儿童ALL的6-巯基嘌呤(6-MP),并考虑纳入患者之间的药物基因组变异。我们开发并验证了半机制数学模型,用于:i)6-MP代谢;ii)红细胞平均体积(MCV)动态变化,这是治疗效果的替代标志物;iii)白细胞减少症,这是一种主要的副作用。由于临床数据有限,我们采用了基于全局敏感性分析的模型简化技术来减少半机制模型产生的参数空间。将简化后的敏感参数用于将平均患者模型个性化到特定患者,以最小化模型不确定性。模型与数据拟合良好,并以最少的参数模拟了患者中观察到的不同行为。该模型用从文献和印第安纳波利斯的莱利儿童医院获得的真实患者数据进行了验证。通过非线性模型预测控制,使用患者模型为个体患者优化剂量。通过常规测量全血细胞计数(CBC)和一些额外的代谢物测量,我们的方法在临床实践中的实施是可行的。与一刀切的标准剂量不同,所提出的方法有望实现针对特定患者的基于模型的个性化治疗,并以最小的副作用为实现预期结果开出最佳剂量。