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Role of genetic heterogeneity and epistasis in bladder cancer susceptibility and outcome: A learning classifier system approach

机译:遗传异质性和上位性在膀胱癌易感性和预后中的作用:一种学习分类器方法

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Background and objective: Detecting complex patterns of association between genetic or environmental risk factors and disease risk has become an important target for epidemiological research. In particular, strategies that provide multifactor interactions or heterogeneous patterns of association can offer new insights into association studies for which traditional analytic tools have had limited success. Materials and methods: To concurrently examine these phenomena, previous work has successfully considered the application of learning classifier systems (LCSs), a flexible class of evolutionary algorithms that distributes learned associations over a population of rules. Subsequent work dealt with the inherent problems of knowledge discovery and interpretation within these algorithms, allowing for the characterization of heterogeneous patterns of association. Whereas these previous advancements were evaluated using complex simulation studies, this study applied these collective works to a 'real-world' genetic epidemiology study of bladder cancer susceptibility. Results and discussion: We replicated the identification of previously characterized factors that modify bladder cancer risk-namely, single nucleotide polymorphisms from a DNA repair gene, and smoking. Furthermore, we identified potentially heterogeneous groups of subjects characterized by distinct patterns of association. Cox proportional hazard models comparing clinical outcome variables between the cases of the two largest groups yielded a significant, meaningful difference in survival time in years (survivorship). A marginally significant difference in recurrence time was also noted. These results support the hypothesis that an LCS approach can offer greater insight into complex patterns of association. Conclusions: This methodology appears to be well suited to the dissection of disease heterogeneity, a key component in the advancement of personalized medicine.
机译:背景与目的:检测遗传或环境危险因素与疾病风险之间复杂的关联模式已成为流行病学研究的重要目标。特别是,提供多因素交互作用或异质关联模式的策略可以提供对关联研究的新见解,而传统分析工具在这些关联研究中取得的成功有限。材料和方法:为了同时检查这些现象,先前的工作已经成功地考虑了学习分类器系统(LCS)的应用,LCS是一种灵活的进化算法,可以将学习的关联分布在规则的总体上。随后的工作处理了这些算法中知识发现和解释的内在问题,从而可以表征异构的关联模式。尽管使用复杂的模拟研究评估了这些先前的进步,但本研究将这些集体研究应用于“现实世界”的膀胱癌易感性基因流行病学研究。结果与讨论:我们重复鉴定了先前表征的因素,这些因素可改变罹患膀胱癌的风险,即DNA修复基因的单核苷酸多态性和吸烟。此外,我们确定了潜在的异质性受试者群体,其特征在于不同的关联模式。 Cox比例风险模型比较了两组最大病例之间的临床结果变量,得出以年为单位的生存时间(生存率)存在显着且有意义的差异。还注意到在复发时间上有微小的差异。这些结果支持以下假设:LCS方法可以提供对复杂关联模式的更深入了解。结论:这种方法似乎非常适合于解剖疾病异质性,这是个性化医学发展的关键组成部分。

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