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Toward developing a metastatic breast cancer treatment strategy that incorporates history of response to previous treatments

机译:朝向开发转移性乳腺癌治疗策略,该致策略包含对先前治疗的反应历史

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Information regarding response to past treatments may provide clues concerning the classes of drugs most or least likely to work for a particular metastatic or neoadjuvant early stage breast cancer patient. However, currently there is no systematized knowledge base that would support clinical treatment decision-making that takes response history into account. To model history-dependent response data we leveraged a published in vitro breast cancer viability dataset (84 cell lines, 90 therapeutic compounds) to calculate the odds ratios (log (OR)) of responding to each drug given knowledge of (intrinsic/prior) response to all other agents. This OR matrix assumes (1) response is based on intrinsic rather than acquired characteristics, and (2) intrinsic sensitivity remains unchanged at the time of the next decision point. Fisher’s exact test is used to identify predictive pairs and groups of agents (BH p 1). In vitro conditional response patterns clustered compounds into five predictive classes: (1) DNA damaging agents, (2) Aurora A kinase and cell cycle checkpoint inhibitors; (3) microtubule poisons; (4) HER2/EGFR inhibitors; and (5) PIK3C catalytic subunit inhibitors. The apriori algorithm implementation made further predictions including a directional association between resistance to HER2 inhibition and sensitivity to proteasome inhibitors. Investigating drug sensitivity conditioned on observed sensitivity or resistance to prior drugs may be pivotal in informing clinicians deciding on the next line of breast cancer treatments for patients who have progressed on their current treatment. This study supports a strategy of treating patients with different agents in the same class where an associated sensitivity was observed, likely after one or more intervening treatments.
机译:关于过去治疗的回应的信息可以提供关于最多或最不可能为特定转移或新辅助早期乳腺癌患者提供的药物类别的线索。但是,目前没有系统化的知识库,可以支持考虑响应历史的临床治疗决策。为了模拟历史依赖性响应数据,我们利用发表的体外乳腺癌活力数据集(84个细胞系,90例治疗化合物)来计算响应每个药物的响应(内在/先前)对所有其他代理商的回应。该或矩阵假定(1)响应基于内在的而不是获取的特性,并且(2)在下一个决定点时内在灵敏度保持不变。 Fisher的确切测试用于识别预测对和代理组(BH P 1)。体外条件反应模式聚集化合物分为五种预测等级:(1)DNA损伤剂,(2)极光激酶和细胞周期检查点抑制剂; (3)微管毒药; (4)HER2 / EGFR抑制剂; (5)PIK3C催化亚基抑制剂。 APRiori算法实施进一步预测,包括抗性与HER2抑制和对蛋白酶体抑制剂敏感性之间的定向关联。调查药物敏感性对观察到的敏感性或对现有药物的耐药性可能是关注于向临床医生确定在目前治疗的患者的下一系列乳腺癌治疗中。本研究支持在同一类别中治疗不同剂的患者,其中可能在一个或多个干预治疗后观察到相关的敏感性。

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