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1 association (P=9.33x10(-15) at rs6939340 for joint analysis).
2 notype measures, which can benefit from such joint analysis.
3 nts also showed genomewide significance in a joint analysis.
4 stuzumab-containing arms to be combined in a joint analysis.
5 nd develop an R package JAMIE to perform the joint analysis.
6 Monte Carlo (MCMC) algorithms for performing joint analysis.
7 th additional subjects, for replication or a joint analysis.
8                                              Joint analysis across populations enables the detection
9           Each SNP remained significant in a joint analysis after adjusting for the other (rs1447295
10 tive overall survival (OS) results from this joint analysis along with updates on the disease-free su
11    Over a variety of parameter combinations, joint analysis also led to moderate (5%-10%) increases i
12                                         Both joint analysis and meta-analysis approaches were used.
13                   We discuss methods for the joint analysis and normalization of data from the HumanM
14                          The benefit of this joint analysis approach is demonstrated by both simulati
15                                            A joint analysis approach, with an initial genome-wide ass
16 posed methods are essentially as powerful as joint analysis by directly pooling individual level geno
17        The studies were amended to include a joint analysis comparing groups 1 and A (the control gro
18 tiple phenotype data of various types in the joint analysis (e.g., multiple continuous traits and mix
19                                          The joint analysis enabled determination of transient distan
20                                         Such joint analysis essentially leads to a multivariate analo
21                                 We recommend joint analysis for all two-stage genome-wide association
22  remained significant predictors of MSS in a joint analysis (HR = 2.3, P = 0.03) although, HSP90AB1 (
23                                          Our joint analysis identifies new ESCC susceptibility loci o
24 epidemiological data, we conducted the first joint analysis in which both data types were used to fit
25                                      Through joint analysis including the genome-wide association stu
26          Our simulation studies suggest that joint analysis increases the power to detect linkage of
27 that, in the context of flexible design, the joint analysis is generally more powerful than the repli
28 en segregation analysis is used; P=.006 when joint analysis is used) between a codominant major gene
29                                           By joint analysis of 108 TFs in four human cell types, we f
30 ng approaches through simulation studies and joint analysis of 18 GWAS datasets.
31                                            A joint analysis of 2 large studies of children with verti
32 ied 17 novel risk loci (P < 5 x 10(-8)) in a joint analysis of 26,035 cases and 403,190 controls.
33                                         In a joint analysis of all 4 cohorts, IL-1 receptor 2 (IL1R2)
34  an independent dataset (P = 0.035) and in a joint analysis of all the data (P = 0.001).
35 mework may not be the same as those from the joint analysis of all traits, leading to spurious linkag
36                                       In the joint analysis of all white early-onset CAD cases (N=332
37                                            A joint analysis of all-atom molecular dynamics (MD) calcu
38                                          The joint analysis of both data has showed its superiority i
39 the discovery sample (P=9.02e-07) and in the joint analysis of both stages (P=9.7e-03).
40                                   Hence, the joint analysis of both, functional and non-functional DN
41                                          The joint analysis of brain atrophy measured with magnetic r
42                                          The joint analysis of carriage and CPIs showed that CPI path
43 thdrawal from Hungary in 1242 CE, based on a joint analysis of climatic, environmental, and historica
44 the iCluster algorithm using two examples of joint analysis of copy number and gene expression data,
45                                            A joint analysis of data from 12,360 subjects was performe
46                      Our approach allows for joint analysis of data from both triad and case-control
47 egions linked to the dichotomous trait, then joint analysis of dichotomous and quantitative traits sh
48 an Integrative System), which allows for the joint analysis of different types of genomic aberrations
49 boembolism, results are first presented from joint analysis of estrogen clinical trial and observatio
50                                         In a joint analysis of European American and Hispanic America
51 f the diastereomers is achieved based on the joint analysis of experimental and computational data.
52                                              Joint analysis of five polymorphisms in three FU pathway
53 include the potential for bias introduced by joint analysis of formalin-fixed archival specimens with
54         This system provides a model for the joint analysis of generational and chronological age in
55    We used a seascape genetics approach (the joint analysis of genetic data and oceanographic connect
56                                         This joint analysis of genotype and DNAm demonstrates the pot
57                         Existing methods for joint analysis of GWAS data tend to miss causal SNPs tha
58                Application of graph-GPA to a joint analysis of GWAS datasets for 12 phenotypes shows
59 ol of the type I error and is as powerful as joint analysis of individual participant data.
60 culated summary statistics is as powerful as joint analysis of individual-participant data.
61                                              Joint analysis of LOAD, ALS, and other traits highlights
62 stories on the Chinese Loess Plateau through joint analysis of loess/red clay magnetic parameters wit
63                                            A joint analysis of MSX1 and TGFB3 suggested that there ma
64 metric Bayesian factor model is proposed for joint analysis of multi-platform genomics data.
65  component analysis, an effective method for joint analysis of multimodal imaging data.
66                                              Joint analysis of multiple biparental families offers an
67                          BaalChIP allows the joint analysis of multiple ChIP-seq samples across a sin
68 y risk variants for complex traits through a joint analysis of multiple GWAS datasets by leveraging p
69 opy to develop new statistical approaches to joint analysis of multiple GWAS.
70 aptive Fisher's Combination (AFC) method for joint analysis of multiple phenotypes in association stu
71          There is increasing interest in the joint analysis of multiple phenotypes in genome-wide ass
72 cing (NGS) data; however none of these allow joint analysis of multiple same-patient samples.
73                                Additionally, joint analysis of multiple transcripts by multivariate r
74                    One of these reports, the joint analysis of North Central Cancer Treatment Group N
75  SNPs showing association at P < 10(-4) in a joint analysis of phases 1 and 2 in 4,287 CRC cases and
76 me courses and protein complexes inferred by joint analysis of protein co-expression and protein-prot
77                                         In a joint analysis of simulation and experiment we explore t
78        To address this issue, we performed a joint analysis of single-cell and LFP responses during a
79 ditional information can be inferred via the joint analysis of such genetic sequence data and epidemi
80                               Here, from the joint analysis of surveillance data and holiday timing i
81 itative trait loci (eQTLs) in 13 tissues via joint analysis of SVs, single-nucleotide variants (SNVs)
82                                         In a joint analysis of the combined GWAS and replication resu
83  application of different HSI techniques and joint analysis of the data.
84 70 cases and 286 913 controls, followed by a joint analysis of the discovery and replication stages.
85                                          The joint analysis of the experimental band structure and th
86                                              Joint analysis of the four smoking-related diseases reve
87                                          The joint analysis of the two AA samples demonstrated highly
88                                            A joint analysis of the two experiments offers some scope
89                             How to perform a joint analysis of these data to gain new biological insi
90                                              Joint analysis of these two variants (rs1051730 and rs48
91 the increased information available from the joint analysis of trios of individuals, integrating this
92                               We conducted a joint analysis of two genome-wide association studies of
93                               We performed a joint analysis of two genomewide association studies of
94 rk we develop a statistical approach for the joint analysis of two or more loci.
95                          We demonstrate that joint analysis of V1 and S1 profiles outputs interpretab
96 proaches: collapsed aggregate statistics and joint analysis of variants using the sequence kernel ass
97  power of high-throughput sequencing for the joint analysis of variation in transcription, splicing a
98 gions reached genome-wide significance after joint analysis over all three data sets.
99 nd 2, meta-analysis P (P(M)) = 1.7 x 10(-9), joint analysis P (P(J)) = 1.7 x 10(-9); stages 1, 2 and
100 similar to the other patient groups (overall joint analysis P = 1.0 x 10(-6)).
101 merican patients with anti-dsDNA antibodies (joint analysis P = 4.1 x 10(-5) in anti-dsDNA-positive p
102                            We show that this joint analysis performs better than sample-by-sample met
103 ensities produce different sample genotypes, joint analysis reduces genotype errors and identifies no
104                   In this paper, we employ a joint analysis scheme of experimental data and computati
105 tant predictor of gene expression and that a joint analysis significantly enhanced the prediction of
106 nificantly associated with birth length in a joint analysis (Stages 1 + 2; beta = 0.046, SE = 0.008,
107 d its proximity to the trait locus, we found joint analysis to be as much as 70% more efficient than
108 replication with the stage II data only or a joint analysis using information from both stages.
109 -corrected threshold for significance in the joint analysis was p=2.20x10(-7)
110                              In the combined joint analysis, we confirmed three previously reported l
111                                       In the joint analysis, we replicated 19 previously identified l
112                                       In the joint analysis, which included samples from 4312 patient
113                                         In a joint analysis with a bipolar disorder sample (16,374 af
114 tion studies of ulcerative colitis and their joint analysis with a previously published scan, compris
115                                            A joint analysis with smoking suggested that smoking and c

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