| Literature DB >> 21247446 |
John P Hussman1, Ren-Hua Chung, Anthony J Griswold, James M Jaworski, Daria Salyakina, Deqiong Ma, Ioanna Konidari, Patrice L Whitehead, Jeffery M Vance, Eden R Martin, Michael L Cuccaro, John R Gilbert, Jonathan L Haines, Margaret A Pericak-Vance.
Abstract
BACKGROUND: Genome-wide Association Studies (GWAS) have proved invaluable for the identification of disease susceptibility genes. However, the prioritization of candidate genes and regions for follow-up studies often proves difficult due to false-positive associations caused by statistical noise and multiple-testing. In order to address this issue, we propose the novel GWAS noise reduction (GWAS-NR) method as a way to increase the power to detect true associations in GWAS, particularly in complex diseases such as autism.Entities:
Year: 2011 PMID: 21247446 PMCID: PMC3035032 DOI: 10.1186/2040-2392-2-1
Source DB: PubMed Journal: Mol Autism Impact factor: 7.509
Figure 1Comparative classification rates for genome-wide association studies noise reduction (GWAS-NR), joint analysis and Fisher's test. GWAS-NR has area under the curve (AUC) of 0.703 and the joint and Fisher's tests have AUC of 0.64 and 0.615, respectively, for the recessive model. Also GWAS-NR has AUC of 0.899 and the joint and Fisher's tests have AUC of 0.795 and 0.777, respectively, for the multiplicative model. For the dominant model, AUC for GWAS-NR, the joint and Fisher's tests are 0.981, 0.880 and 0.867, respectively. For the additive model, AUC for GWAS-NR, the joint and Fisher's tests are 0.932, 0.822, and 0.807, respectively.
Figure 2Comparative classification rates for genome-wide association studies noise reduction noise reduction (GWAS-NR), joint analysis and Fisher's test with 20% and 50% missing markers. GWAS-NR has area under the curve (AUC) of 0.689 and the joint and Fisher's tests have AUC of 0.622 and 0.598, respectively, for the recessive model. Also GWAS-NR has AUC of 0.883 and the joint and Fisher's tests have AUC of 0.776 and 0.760, respectively, for the multiplicative model. For the dominant model, AUC for GWAS-NR, the joint and Fisher's tests are 0.961, 0.852 and 0.844, respectively. For the additive model, AUC for GWAS-NR, the joint and Fisher's tests are 0.895, 0.785, and 0.775, respectively.
Common functions of autism candidate genes identified by genome-wide association studies-noise reduction (GWAS-NR)
| Gene ontology (GO) term | No. of genes | GO term identification | Examples | |
|---|---|---|---|---|
| Cell adhesion | 76 | 0007155 | 6.29E-13 | CDH8, NCAM2 |
| Biological adhesion | 76 | 0022610 | 6.64E-13 | CDH2, CTNNB1 |
| Cell-cell adhesion | 35 | 0016337 | 6.24E-08 | CTNNA2, AMIGO2 |
| Homophilic cell adhesion | 21 | 0007156 | 1.21E-06 | PTPRM, FAT1 |
| Cell motion | 44 | 0006928 | 6.65E-06 | SEMA5A, FYN |
| Neuron differentiation | 41 | 0030182 | 1.14E-05 | EN2, NRXN1 |
| Enzyme linked receptor protein signalling pathway | 33 | 0007167 | 5.40E-05 | NCK2, FGFR2 |
| Neuron development | 32 | 0048666 | 1.07E-04 | ROBO2, RTN4R |
| Negative regulation of gene expression | 42 | 0010629 | 1.27E-04 | SIX3, CUX2 |
| Axonogenesis | 22 | 0007409 | 1.31E-04 | SEMA6A, SLITRK5 |
| Cell morphogenesis involved in differentiation | 25 | 0000904 | 2.16E-04 | PRKCA, PTK2 |
| Cell motility | 29 | 0048870 | 2.40E-04 | DNER, PPAP2B |
| Localization of cell | 29 | 0051674 | 2.40E-04 | PTEN, NRP2 |
| Negative regulation of transcription | 38 | 0016481 | 3.19E-04 | RBPJ, MEIS2 |
| Cell morphogenesis involved in neuron differentiation | 22 | 0048667 | 3.94E-04 | PARD3, KALRN |
| Transmembrane receptor protein tyrosine kinase signalling | 23 | 0007169 | 3.98E-04 | SOCS2, DOK5 |
| Neuron projection development | 25 | 0031175 | 4.40E-04 | RTN4R, NGF |
| Neuron projection morphogenesis | 22 | 0048812 | 5.07E-04 | PVRL1, CDH4 |
| Regulation of cell projection organization | 13 | 0031344 | 5.33E-04 | SEMA4D, CDC42EP4 |
| Negative regulation of nucleobase, nucleoside, nucleotide, and nucleic acid metabolic process | 40 | 0045934 | 6.79E-04 | BCL6, ZHX2 |
Common binding domains of autism candidate genes identified by genome-wide association studies-noise reduction (GWAS-NR).
| INTERPRO term | No. of genes | INTERPRO identification | |
|---|---|---|---|
| Immunoglobulin I-set | 20 | IPR013098 | 8.97E-06 |
| Cadherin | 16 | IPR002126 | 6.98E-05 |
| Cadherin cytoplasmic region | 7 | IPR000233 | 1.14E-04 |
| Pleckstrin homology | 26 | IPR001849 | 5.03E-04 |
| Immunoglobulin | 21 | IPR013151 | 5.61E-04 |
| Immunoglobulin subtype 2 | 21 | IPR003598 | 6.77E-04 |
| Fibronectin, type III-like fold | 19 | IPR008957 | 1.19E-03 |
| Fibronectin, type III | 19 | IPR003961 | 1.72E-03 |
| Epidermal growth factor (EGF) | 14 | IPR006209 | 3.71E-03 |
| Meprin/A5-protein/PTPmu (MAM) | 5 | IPR000998 | 6.78E-03 |
| Protein-tyrosine phosphatase, receptor/non-receptor type | 7 | IPR000242 | 7.36E-03 |
| Pleckstrin homology-type | 24 | IPR001993 | 7.41E-03 |
| von Willebrand factor, type A | 10 | IPR002035 | 7.41E-03 |
| Immunoglobulin-like | 35 | IPR007110 | 7.57E-03 |
Autism candidate genes with known roles in neurite outgrowth and guidance.
| Function | Candidate gene (by lowest |
|---|---|
| Cadherin-catenin function | CDH8, CDH2, CDH11, CTNNB1, CTNNA2, PKP4, CTNND2, CDH4, CTNND1, CTNNA3 |
| Cell adhesion | NCAM2, CNTN3, OPCML, ODZ4, NID1, CNTN5, F3, PVRL1, PTPRG, PARVA, FLRT2, ODZ2, NRXN1, ITGA9, ELMO1, FUT9, AMIGO2, KIRREL3, CNTNAP2, NTM |
| Ion channel | CACNA1I, CACNA1G |
| Axon guidance | SEMA4D, RTN4R, ROBO2, SEMA5A, PLXDC2, SLITRK5, SEMA6A, RGMA, UNC5D, ALCAM, NTNG2, RTN4RL1, PLXNC1, NRP2 |
| Vesicle transport | STX2, STX16, STXBP5, SYT6 |
| Post-synaptic scaffold | DLGAP2, MAGI1, MAGI2 |
| Signal transduction | DNER, SPRY4, FRK, PRKCA, DOK6, PDE3A, FER, IRS2, SOCS2, SPRY2, FRS3, DOK5, FYN, LZTS1, PTPRD, FGFR2, NRG3, PPP2R2B ALK, RYR2, PALM2-AKAP2, MAP3K7, NTRK3, NGF, PPM1H, GDNF, CXCR4, PTK2, NEDD9, PTPN1, LEPR |
| Phosphatidylinositol signalling | PLA2G6, PIK3C2B, PTEN, PLA2G4A |
| Cell polarity | FAT1, PARD3, PARD6G, DCHS2 |
| Rho-GTPase signalling | NCK2, DOCK1, PREX1, CDC42EP4, RND3, RGNEF, DOCK8, CIT, SRGAP3, KALRN, IQGAP2 |
| Cytoskeletal regulation | SGK1, MYLK, GPR56, APBB1IP, PTPRM, WIPF3, PTPRT, MAP3K8, MICAL2, DGKG, COBL, CALD1 |
| Transcription | PUM2, A2BP1, NKX6-1, SOX14, EN2, EBF1, MAP3K1, FOXG1, NFIC, BCL11A |
Autism candidate genes with roles in synaptic function.
| Function | Candidate gene (by lowest |
|---|---|
| Synaptogenesis | LRRTM4, SYN3 |
| Excitatory/inhibitory balance | KCNIP1, KCNQ1, KCNQ5, KCNJ4, SLC6A13, IQCF1, GABBR2, GRIK4, OAT, KCNN3, GRM3, GCOM1, CACNA2D1, GRM7, ADRB2, KCNH7, KCNIP4, GRIK2, CACNG2, KCNMA1, KCNG1 |
| Synaptic plasticity | RIMS1, PTGER2, SLC24A2, NETO1, PTGS2 |
| Vesicle exocytosis | PTPRN2, AMPH, RAB11B, SYNPR |
| Other | TPH2, CHRNA9, RIMBP2, ATXN1, CHRNB4, NOVA1, SNCAIP, CHRM3 |
Figure 3Simplified schematic illustrating molecular mechanisms of neurite regulation. Extracellular events such as cell contact [79], guidance cues [64], neurotransmitter release [80], and interactions with extracellular matrix components [46] are detected by receptors and cell adhesion molecules at the membrane surface and are transduced via cytoplasmic terminals and multidomain scaffolding proteins [47] to downstream signalling molecules [81-83]. Polarity and directional navigation is achieved by coordinating local calcium concentration [84], Src family kinases [85], cyclic nucleotide activation (cAMP and cGMP) [86], and phosphoinositide signalling molecules which affect the spatial distribution and membrane recruitment of proteins that regulate the neuronal cytoskeleton [87]. Chief among these regulators are the small Rho family GTPases RhoA, Rac and Cdc42, which serve as molecular 'switches' to activate downstream effectors of cytoskeletal remodelling [88]. In developed neurons, this pathway further regulates the formation of actin-dependent microarchitecture such as mushroom-like dendritic spines at the postsynaptic terminals of excitatory and inhibitory synapses [89]. This simplified schematic presents components in an exploded format for tractability, and includes an abridged set of interactions. Additional File 9 presents autism candidate genes identified by GWAS-NR having known roles in neurite regulation. RPTP (receptor protein tyrosine phosphatase); EphR (Eph receptor); FGFR (fibroblast growth factor receptor); EphR (Eph receptor); PLXN (plexin); NRP (neuropilin); Trk (neurotrophin receptor); ECM (extracellular matrix); NetR (netrin receptor); NMDAR (NMDA receptor); mGluR (metabotropic glutamate receptor); AA (arachidonic acid); PLCγ (phospholipase C, gamma); MAGI (membrane associated guanylate kinase homolog); IP3 (inositol 1,4,5-trisphosphate); DAG (diacylglycerol); PIP2 (phosphatidylinositol 4,5-bisphosphate); PIP3 (phosphatidylinositol 3,4,5-trisphosphate); PI3K (phosphoinositide-3-kinase); nNOS (neuronal nitric oxide synthase); NO (nitric oxide); IP3R (inositol trisphosphate receptor); RyR (ryanodine receptor); GEF (guanine exchange factor); GAP (GTPase activating protein); MAPK (mitogen-activated protein kinase); and JNK (c-Jun N-terminal kinase).