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通过机器学习与熵方法的整合在基因组研究中揭示三阶相互作用。

Revealing third-order interactions through the integration of machine learning and entropy methods in genomic studies.

作者信息

Yaldız Burcu, Erdoğan Onur, Rafatov Sevda, Iyigün Cem, Aydın Son Yeşim

机构信息

Department of Health Informatics, Graduate School of Informatics, METU, Ankara, Turkey.

Department of Industrial Engineering, METU, Ankara, Turkey.

出版信息

BioData Min. 2024 Jan 30;17(1):3. doi: 10.1186/s13040-024-00355-3.

Abstract

BACKGROUND

Non-linear relationships at the genotype level are essential in understanding the genetic interactions of complex disease traits. Genome-wide association Studies (GWAS) have revealed statistical association of the SNPs in many complex diseases. As GWAS results could not thoroughly reveal the genetic background of these disorders, Genome-Wide Interaction Studies have started to gain importance. In recent years, various statistical approaches, such as entropy-based methods, have been suggested for revealing these non-additive interactions between variants. This study presents a novel prioritization workflow integrating two-step Random Forest (RF) modeling and entropy analysis after PLINK filtering. PLINK-RF-RF workflow is followed by an entropy-based 3-way interaction information (3WII) method to capture the hidden patterns resulting from non-linear relationships between genotypes in Late-Onset Alzheimer Disease to discover early and differential diagnosis markers.

RESULTS

Three models from different datasets are developed by integrating PLINK-RF-RF analysis and entropy-based three-way interaction information (3WII) calculation method, which enables the detection of the third-order interactions, which are not primarily considered in epistatic interaction studies. A reduced SNP set is selected for all three datasets by 3WII analysis by PLINK filtering and prioritization of SNP with RF-RF modeling, promising as a model minimization approach. Among SNPs revealed by 3WII, 4 SNPs out of 19 from GenADA, 1 SNP out of 27 from ADNI, and 4 SNPs out of 106 from NCRAD are mapped to genes directly associated with Alzheimer Disease. Additionally, several SNPs are associated with other neurological disorders. Also, the genes the variants mapped to in all datasets are significantly enriched in calcium ion binding, extracellular matrix, external encapsulating structure, and RUNX1 regulates estrogen receptor-mediated transcription pathways. Therefore, these functional pathways are proposed for further examination for a possible LOAD association. Besides, all 3WII variants are proposed as candidate biomarkers for the genotyping-based LOAD diagnosis.

CONCLUSION

The entropy approach performed in this study reveals the complex genetic interactions that significantly contribute to LOAD risk. We benefited from the entropy-based 3WII as a model minimization step and determined the significant 3-way interactions between the prioritized SNPs by PLINK-RF-RF. This framework is a promising approach for disease association studies, which can also be modified by integrating other machine learning and entropy-based interaction methods.

摘要

背景

基因型水平的非线性关系对于理解复杂疾病性状的遗传相互作用至关重要。全基因组关联研究(GWAS)已揭示了许多复杂疾病中 SNP 的统计关联。由于 GWAS 结果无法彻底揭示这些疾病的遗传背景,全基因组相互作用研究开始变得重要起来。近年来,已提出各种统计方法,如基于熵的方法,用于揭示变异之间的这些非加性相互作用。本研究提出了一种新颖的优先级排序工作流程,该流程在 PLINK 过滤后集成了两步随机森林(RF)建模和熵分析。PLINK-RF-RF 工作流程之后是基于熵的三向相互作用信息(3WII)方法,以捕捉晚发性阿尔茨海默病中基因型之间非线性关系产生的隐藏模式,从而发现早期和鉴别诊断标志物。

结果

通过整合 PLINK-RF-RF 分析和基于熵的三向相互作用信息(3WII)计算方法,开发了来自不同数据集的三个模型,该方法能够检测上位性相互作用研究中未主要考虑的三阶相互作用。通过 PLINK 过滤和使用 RF-RF 建模对 SNP 进行优先级排序,通过 3WII 分析为所有三个数据集选择了一个简化 的 SNP 集,有望作为一种模型最小化方法。在 3WII 揭示的 SNP 中,来自 GenADA 的

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/749b/10826120/2da69610e2e2/13040_2024_355_Fig1_HTML.jpg

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