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Sampling Defective Pathways in Phenotype Prediction Problems via the Fisher's Ratio Sampler

机译:通过Fisher比率采样器对表型预测问题中的缺陷路径进行采样

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In this paper, we introduce the Fisher's ratio sampler that serves to unravel the defective pathways in highly underdetermined phenotype prediction problems. This sampling algorithm first selects the most discriminatory genes, that are at the same time differentially expressed, and samples the high discriminatory genetic networks with a prior probability that it is proportional to their individual Fisher's ratio. The number of genes of the different networks is randomly established taking into account the length of the minimum-scale signature of the phenotype prediction problem which is the one that contains the most discriminatory genes with the maximum predictive power. The likelihood of the different networks is established via leave-one-out-cross-validation. Finally, the posterior analysis of the most frequently sampled genes serves to establish the defective biological pathways. This novel sampling algorithm is much faster and simpler than Bayesian Networks. We show its application to a microarray dataset concerning a type of breast cancers with very bad prognosis (TNBC). In these kind of cancers, the breast cancer cells have tested negative for hormone epidermal growth factor receptor 2 (HER-2), estrogen receptors (ER). and progesterone receptors (PR). This lack causes that common treatments like hormone therapy and drugs that target estrogen, progesterone, and HER-2 are ineffective. We believe that the genetic pathways that are identified via the Fisher's ratio sampler, which are mainly related to signaling pathways, provide new insights about the molecular mechanisms that are involved in this complex disease. The Fisher's ratio sampler can be also applied to the genetic analysis of other complex diseases.
机译:在本文中,我们介绍了费舍尔比率采样器,该函数用于解开表位预测问题中不确定的缺陷途径。该采样算法首先选择同时具有差异性的最具区分性的基因,然后以与它们各自的费舍尔比率成正比的先验概率对高区分性的遗传网络进行采样。考虑到表型预测问题的最小尺度特征的长度,随机建立不同网络的基因数目,该表型预测问题是包含具有最大预测能力的最具歧视性的基因的表型预测问题。不同的网络的可能性是通过留一法交叉验证来确定的。最后,对最常采样的基因进行后验分析可建立有缺陷的生物学途径。这种新颖的采样算法比贝叶斯网络更快,更简单。我们将其应用于涉及预后非常差的乳腺癌(TNBC)类型的微阵列数据集。在这类癌症中,乳腺癌细胞的激素表皮生长因子受体2(HER-2),雌激素受体(ER)呈阴性。和孕激素受体(PR)。这种缺乏导致通常的治疗方法(如激素疗法和针对雌激素,孕酮和HER-2的药物)无效。我们认为,通过费舍尔比率采样器确定的遗传途径(主要与信号传导途径相关),为涉及这种复杂疾病的分子机制提供了新的见解。 Fisher比率采样器还可用于其他复杂疾病的遗传分析。

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