| Literature DB >> 32241265 |
Xiaoyu Cai1, Lo-Bin Chang1, Jordan Potter2, Chi Song3.
Abstract
BACKGROUND: With the development of next generation sequencing (NGS) technology and genotype imputation methods, statistical methods have been proposed to test a set of genomic variants together to detect if any of them is associated with the phenotype or disease. In practice, within the set, there is an unknown proportion of variants truly causal or associated with the disease. There is a demand for statistical methods with high power in both dense and sparse scenarios, where the proportion of causal or associated variants is large or small respectively.Entities:
Keywords: Adaptive fisher; Combine p-values; Common variants; Dense signal; Genome-wide association study; Rare variants; Sparse signal
Mesh:
Year: 2020 PMID: 32241265 PMCID: PMC7118831 DOI: 10.1186/s12920-020-0684-3
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Fig. 1Power curves for binary trait. Comparison of empirical powers for binary trait. a Power against varying number of loci K in the dense scenario with effect proportion π=20% and effect size δ=0.2. K∈{50,100,...,450,500}. b Power against varying number of loci K in the sparse scenario with effect proportion π=2% and effect size δ=1. K∈{50,100,...,450,500}
Fig. 2Power curves for continuous trait. Comparison of empirical powers for continuous trait. a Power against varying number of loci K in the dense scenario with effect proportion π=20% and effect size δ=0.1. K∈{50,100,...,450,500}. b Power against varying number of loci K in the sparse scenario with effect proportion π=2% and effect size δ=0.5. K∈{50,100,...,450,500}
Summary of the Most Significant Genes in the GAIN Schizophrenia Data Analysis
| Gene | wAF | wAF | aSPU | SKAT | SKAT-O | Related Disease | Function |
|---|---|---|---|---|---|---|---|
| FAM69A | 1.20 ×10−5 | 4.00 ×10−5 | 1.70 ×10−5 | 6.31 ×10−6 | 6.41 ×10−6 | SCZ [ | Protein binding. |
| MS [ | |||||||
| Parkinson’s Disease [ | |||||||
| NUDT12 | 6.00 ×10−5 | 5.99 ×10−3 | 4.80 ×10−5 | 4.29 ×10−3 | 6.58 ×10−3 | Depressive Symptoms [ | Regulates the concentrations of individual |
| nucleotides and of nucleotide ratios. | |||||||
| RPL5 | 6.00 ×10−5 | 9.00 ×10−5 | 1.00 ×10−4 | 3.57 ×10−5 | 2.76 ×10−5 | MS [ | Ribosomal protein, binds 5s RNA. |
| HPGDS | 8.00 ×10−5 | 6.00 ×10−4 | 1.50 ×10−4 | 5.16 ×10−5 | 7.89 ×10−5 | SCZ [ | PGH2 to PGD2 conversion enzyme. |
| SMARCAD1 | 1.00 ×10−4 | 1.30 ×10−4 | 1.10 ×10−4 | 6.06 ×10−5 | 1.53 ×10−4 | Heterochromatin organization restoration | |
| epigenetic pattern propagation. | |||||||
| GTF2A1 | 1.20 ×10−4 | 1.00 ×10−3 | 1.70 ×10−4 | 9.90 ×10−5 | 9.98 ×10−5 | BD [ | Transcriptional activation. |
| NRN1L | 1.20 ×10−4 | 3.50 ×10−4 | 6.00 ×10−4 | 2.04 ×10−4 | 2.63 ×10−4 | Psychiatric Diseases[ | Neurite growth, neuronal survival. |
| CERCAM | 1.40 ×10−4 | 6.00 ×10−4 | 1.30 ×10−4 | 1.72 ×10−1 | 1.80 ×10−1 | Probable cell adhesion protein. | |
| SLC35A5 | 1.80 ×10−4 | 5.99 ×10−3 | 2.30 ×10−3 | 4.16 ×10−4 | 3.32 ×10−4 | Autistic Disorder[ | Nucleoside-sugar transporter. |
| STRA13 | 2.00 ×10−4 | 9.00 ×10−5 | 9.00 ×10−5 | 9.81 ×10−5 | 1.07 ×10−4 | SCZ [ | Mitotic progression and chromosome segregation. |
| ESRP2 | 2.90 ×10−4 | 2.60 ×10−4 | 4.30 ×10−4 | 1.85 ×10−4 | 1.97 ×10−4 | An epithelial cell-type-specific splicing regulator. | |
| LCAT | 6.00 ×10−4 | 6.00 ×10−4 | 3.10 ×10−4 | 9.80 ×10−4 | 1.08 ×10−3 | Enzyme in the extracellular metabolism. | |
| KIAA1024L | 1.00 ×10−3 | 6.00 ×10−4 | 1.00 ×10−3 | 8.76 ×10−4 | 6.66 ×10−4 |