多因子降维法
上位性
模糊逻辑
降维
维数之咒
二进制数
计算机科学
人工智能
数据挖掘
二元分类
模糊集
错误发现率
机器学习
统计
数学
支持向量机
生物
遗传学
基因型
算术
基因
单核苷酸多态性
作者
Cheng‐Hong Yang,Han-Pang Huang,Ming‐Feng Hou,Li‐Yeh Chuang,Yu-Da Lin
标识
DOI:10.1109/tcbb.2022.3144303
摘要
Epistasis detection is vital for understanding disease susceptibility in genetics. Multiobjective multifactor dimensionality reduction (MOMDR) was previously proposed to detect epistasis. MOMDR was performed using binary classification to distinguish the high-risk (H) and low-risk (L) groups to reduce multifactor dimensionality. However, the binary classification does not reflect the uncertainty of the H and L classification. In this study, we proposed an empirical fuzzy MOMDR (EFMOMDR) to address the limitations of binary classification using the degree of membership through an empirical fuzzy approach. The EFMOMDR can simultaneously consider two incorporated fuzzy-based measures, including correct classification rate and likelihood rate, and does not require parameter tuning. Simulation studies revealed that EFMOMDR has higher 7.14% detection success rates than MOMDR, indicating that the limitations of binary classification of MOMDR have been successfully improved by empirical fuzzy. Moreover, EFMOMDR was used to analyze coronary artery disease in the Wellcome Trust Case Control Consortium dataset.
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