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Epistasis Analysis Using an Improved Fuzzy C-Means-Based Entropy Approach

机译:使用改进的模糊C型熵熵方法进行简化分析

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摘要

Epistasis detection is vital to determining disease susceptibility in the human genome. With rapid advances in technology, multifactor dimensionality reduction (MDR) has become an effective algorithm for epistasis detection. Classification of high-risk (H) and low-risk (L) groups in MDR operations is a key topic, but it has not been thoroughly investigated. In this paper, we propose an improved fuzzy c-means-based entropy (FCME) approach to address the limitations of binary classification. For this approach, the degree of membership in MDR, referred to as FCMEMDR, was used. The FCME approach and MDR measure were integrated to enable more precise differentiation between similar frequencies of multifactor genotypes in the cases of possible epistasis. We used the MDR measures of correct classification rate and likelihood ratio. Numerous simulated datasets were applied, and the experimental results revealed two measures of FCMEMDR with higher detection rates than those of other MDR-based algorithms. Our analysis of binary and fuzzy classifications in MDR operations may offer insights into the problem of uncertainty in H/L classification. Two measures of FCMEMDR detected significant instances of epistasis associated with coronary artery disease in the Wellcome Trust Case Control Consortium dataset. FCMEMDR is freely available at https://gitlab.com/yudalinemail/fcmemdr.
机译:Epistasis检测对于确定人类基因组中的疾病易感性至关重要。随着技术的快速进步,多因素维数减少(MDR)已成为超越后期检测的有效算法。 MDR操作中高风险(H)和低风险(L)组的分类是一个关键主题,但它没有得到全面调查。在本文中,我们提出了一种改进的模糊C型熵(FCME)方法来解决二进制分类的局限性。对于这种方法,使用了MDR中称为FCMEMDR的MDR中的成员资格程度。 FCME方法和MDR测量被整合,以在可能的超声囊的情况下实现多因素基因型类似频率之间的更精确分化。我们使用了正确的分类率和似然比的MDR测量。应用了许多模拟数据集,实验结果揭示了两种措施的FCMEMDR,检测率较高,比其他MDR为基础的算法。我们对MDR操作中的二元和模糊分类分析可能会对H / L分类的不确定性问题提供见解。两种措施FCMEMDR检测了Wellcome Trust Cate Consortium DataSet中冠状动脉疾病相关的显着性外观。 FcMemdr在https://gitlab.com/yudalinemail/fcmemdr自由使用。

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