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首页> 外文期刊>BMC Bioinformatics >Combination therapy design for maximizing sensitivity and minimizing toxicity
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Combination therapy design for maximizing sensitivity and minimizing toxicity

机译:组合疗法设计可最大程度地提高灵敏度并最大程度地减少毒性

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Background Design of personalized targeted therapies involve modeling of patient sensitivity to various drugs and drug combinations. Majority of studies evaluate the sensitivity of tumor cells to targeted drugs without modeling the effect of the drugs on normal cells. In this article, we consider the individual modeling of drug responses to tumor and normal cells and utilize them to design targeted combination therapies that maximize sensitivity over tumor cells and minimize toxicity over normal cells. Results The problem is formulated as maximizing sensitivity over tumor cell models while maintaining sensitivity below a threshold over normal cell models. We utilize the constrained structure of tumor proliferation models to design an accelerated lexicographic search algorithm for generating the optimal solution. For comparison purposes, we also designed two suboptimal search algorithms based on evolutionary algorithms and hill-climbing based techniques. Results over synthetic models and models generated from Genomics of Drug Sensitivity in Cancer database shows the ability of the proposed algorithms to arrive at optimal or close to optimal solutions in significantly lower number of steps as compared to exhaustive search. We also present the theoretical analysis of the expected number of comparisons required for the proposed Lexicographic search that compare favorably with the observed number of computations. Conclusions The proposed algorithms provide a framework for design of combination therapy that tackles tumor heterogeneity while satisfying toxicity constraints.
机译:个性化靶向疗法的背景设计涉及对患者对各种药物和药物组合的敏感性进行建模。大多数研究评估了肿瘤细胞对靶向药物的敏感性,而没有模拟药物对正常细胞的作用。在本文中,我们考虑了对肿瘤和正常细胞的药物反应的个体建模,并利用它们来设计针对性的联合疗法,以使对肿瘤细胞的敏感性最大化,对正常细胞的毒性最小化。结果问题被表述为最大化对肿瘤细胞模型的敏感性,同时将敏感性保持在正常细胞模型的阈值以下。我们利用肿瘤扩散模型的约束结构来设计加速词典搜索算法,以生成最佳解决方案。为了进行比较,我们还基于进化算法和基于爬山技术设计了两种次优搜索算法。超过合成模型和从癌症数据库中的药物敏感性基因组学生成的模型的结果表明,与详尽搜索相比,提出的算法能够以明显更少的步骤数达到最佳解决方案或接近最佳解决方案。我们还提出了理论上对拟议词典搜索所需的预期比较数的分析,该预期与观察到的计算数相比具有优势。结论所提出的算法为组合疗法的设计提供了框架,该组合疗法在满足毒性约束的同时解决了肿瘤异质性。

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