Chuang Li-Yeh, Lane Hsien-Yuan, Lin Yu-Da, Lin Ming-Teng, Yang Cheng-Hong, Chang Hsueh-Wei
Department of Chemical Engineering & Institute of Biotechnology and Chemical Engineering, I-Shou University, Kaohsiung 84001, Taiwan.
Institute of Clinical Medical Science, China Medical University, Taichung 40402, Taiwan ; Department of Psychiatry, China Medical University Hospital, Taichung 40402, Taiwan.
Ann Gen Psychiatry. 2014 May 21;13:15. doi: 10.1186/1744-859X-13-15. eCollection 2014.
Facial emotion perception (FEP) can affect social function. We previously reported that parts of five tested single-nucleotide polymorphisms (SNPs) in the MET and AKT1 genes may individually affect FEP performance. However, the effects of SNP-SNP interactions on FEP performance remain unclear.
This study compared patients with high and low FEP performances (n = 89 and 93, respectively). A particle swarm optimization (PSO) algorithm was used to identify the best SNP barcodes (i.e., the SNP combinations and genotypes that revealed the largest differences between the high and low FEP groups).
The analyses of individual SNPs showed no significant differences between the high and low FEP groups. However, comparisons of multiple SNP-SNP interactions involving different combinations of two to five SNPs showed that the best PSO-generated SNP barcodes were significantly associated with high FEP score. The analyses of the joint effects of the best SNP barcodes for two to five interacting SNPs also showed that the best SNP barcodes had significantly higher odds ratios (2.119 to 3.138; P < 0.05) compared to other SNP barcodes. In conclusion, the proposed PSO algorithm effectively identifies the best SNP barcodes that have the strongest associations with FEP performance.
This study also proposes a computational methodology for analyzing complex SNP-SNP interactions in social cognition domains such as recognition of facial emotion.
面部情绪感知(FEP)会影响社交功能。我们之前报道过,MET和AKT1基因中五个经测试的单核苷酸多态性(SNP)部分可能分别影响FEP表现。然而,SNP-SNP相互作用对FEP表现的影响仍不清楚。
本研究比较了FEP表现高和低的患者(分别为n = 89和93)。使用粒子群优化(PSO)算法来识别最佳SNP条码(即,揭示高FEP组和低FEP组之间最大差异的SNP组合和基因型)。
对单个SNP的分析显示,高FEP组和低FEP组之间无显著差异。然而,对涉及两到五个SNP不同组合的多个SNP-SNP相互作用的比较表明,PSO生成的最佳SNP条码与高FEP评分显著相关。对两到五个相互作用SNP的最佳SNP条码的联合效应分析还表明,与其他SNP条码相比,最佳SNP条码具有显著更高的优势比(2.119至3.138;P < 0.05)。总之,所提出的PSO算法有效地识别了与FEP表现关联最强的最佳SNP条码。
本研究还提出了一种计算方法,用于分析社会认知领域(如面部情绪识别)中复杂的SNP-SNP相互作用。