ID

45707

Description

Principal Investigator: John S. Witte, PhD, University of California, San Francisco, CA, USA MeSH: Prostatic Neoplasms https://www.ncbi.nlm.nih.gov/projects/gap/cgi-bin/study.cgi?study_id=phs001221 A genome-wide association study (GWAS) of prostate cancer (PCa) was conducted in Kaiser Permanente (KP) Northern California health plan members (7,783 cases, 38,595 controls; 80.3% non-Hispanic white, 4.9% African-American, 7.0% East Asian, and 7.8% Latino) [PMID: 26034056]. The data for these members were drawn from three KP cohort studies: Research Program in Genes, Environment and Health (RPGEH) ProHealth, and California Men's Health Study (CMHS) (described further under Study History). Four custom arrays were designed for genotyping, one for each of the four major race-ethnicity groups in the RPGEH cohort: African Americans, East Asians, Latinos, and Non-Hispanic Whites. The number of SNPs and SNP content varied by array, with SNP content designed to maximize the genome-wide coverage of low frequency and more common variants specific to the different race-ethnicity groups, including newly identified SNPs from sequencing projects, and SNPs with established associations with disease phenotypes and risk factors [PMIDs: 21565264, 21903159]. Within the total study cohort, n=34,736 completed a consent which permitted deposition of data to NIH. Genotyping followed the same general procedure described in [PMIDs: 26092718, plus additional quality control (QC) steps for the additional men, in order to control for potential batch and kit effects, described in [PMID: 26034056. Briefly, we first repeated the filters described in [PMID: 26092718] for all four arrays (EUR, LAT, EAS, AFR). Then, on an array-wise basis, we removed SNPs with MAF0.01, with a call rate95%, or with Hardy-Weinberg Equilibrium (HWE) p-value in homogeneous groups1x10ˆ-5. Furthermore, on the EUR array, to adjust for potential kit effect, we conducted a GWAS of kit, and removed those kit associated SNPs with p1x10ˆ-6; we also re-genotyped each of the new samples (those not genotyped with the original GERA data) with some of the original GERA data, and removed SNPs with 13/1,268 (1%) mismatches. For the AFR array, to adjust potential plate batch issues, we conducted a GWAS of whether an individual was in the original GERA data vs. in the newly genotyped data and removed those batch-associated SNPs with p0.05 (we used a stronger threshold than that used for the EUR array because there were fewer individuals on the AFR array); we also re-genotyped each of the new samples with the original GERA data and removed SNPs with 2/78 (2.6%). After the QC described above, imputation was performed as described in [PMID: 26034056]. Imputation was performed on an array-wise basis, pre-phasing with SHAPE-IT v2.5 [PMID: 22138821], and imputing from the 1000 Genomes Project October 2014 release as a cosmopolitan reference panel with IMPUTE2 [PMID: 22384356]. In addition to the GWAS described above, a nested exome-wide association study (EWAS) of PCa was also conducted (7,489 cases, 7,323 controls; 78% non-Hispanic white, 9% African-American, 3% East Asian, 6% Latino, 4% Other). A custom EWAS array primarily focused on rare variants was designed for genotyping that complemented the GWAS arrays [PMID: 26034056]. The EWAS array content included missense and loss-of-function mutations, and rare exonic mutations from The Cancer Genome Atlas (TCGA) and dbGaP prostate cancer tumor exomes [PMID: 26544944; PMID: 26544944]. Much of the EWAS array design content overlapped with the probesets on the UK Biobank Affymetrix Axiom array [PMID: 30305743]. Genotyping and QC steps taken to filter out samples exhibiting low quality and variants with low call rates are described in Emami et al., 2020 [biorXiv]. The resulting EWAS array genotypes are provided here.

Lien

dbGaP-study=phs001221

Mots-clés

  1. 16/05/2023 16/05/2023 - Chiara Middel
Détendeur de droits

John S. Witte, PhD, University of California, San Francisco, CA, USA

Téléchargé le

16 mai 2023

DOI

Pour une demande vous connecter.

Licence

Creative Commons BY 4.0

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dbGaP phs001221 ProHealth: Kaiser Permanente GWAS of Prostate Cancer

Subject ID, sex, monozygous twins, family ID, mother ID, father ID, and sex of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.

  1. StudyEvent: SEV1
    1. Eligibility Criteria
    2. Subject ID, subject source, source subject ID, and consent group of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    3. Subject ID, sex, monozygous twins, family ID, mother ID, father ID, and sex of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    4. Subject ID, sample ID, and sample use variable obtained from participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    5. Subject ID, array, African Principal Component, East Asian Principal Component, European Principal Component, and Latin Principal Component of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    6. Subject ID, sex, race, affection status, age, BMI, Gleason Summary Score, histologic grading and differentiation, and SEER general summary stage of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    7. Sample ID, package, analyte type, body site where sample was collected, tumor status of sample, and Reagent Kit of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
pht007158
Description

pht007158

Alias
UMLS CUI [1,1]
C3846158
Family ID
Description

FAMILY_ID

Type de données

text

Alias
UMLS CUI [1,1]
C3669174
Unique subject ID
Description

SUBJECT_ID

Type de données

text

Alias
UMLS CUI [1,1]
C2348585
Mother subject ID
Description

MOTHER

Type de données

text

Alias
UMLS CUI [1,1]
C3669352
UMLS CUI [1,2]
C0030761
Father subject ID
Description

FATHER

Type de données

text

Alias
UMLS CUI [1,1]
C3669177
UMLS CUI [1,2]
C0030761
Sex
Description

SEX

Type de données

text

Alias
UMLS CUI [1,1]
C0079399
Twin ID for monozygotic twins or multiples. A TWIN_ID is not provided for dizygotic twins or multiples.
Description

MZ_TWIN_ID

Type de données

text

Alias
UMLS CUI [1,1]
C0041427
UMLS CUI [1,2]
C2348585
UMLS CUI [1,3]
C0030761

Similar models

Subject ID, sex, monozygous twins, family ID, mother ID, father ID, and sex of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.

  1. StudyEvent: SEV1
    1. Eligibility Criteria
    2. Subject ID, subject source, source subject ID, and consent group of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    3. Subject ID, sex, monozygous twins, family ID, mother ID, father ID, and sex of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    4. Subject ID, sample ID, and sample use variable obtained from participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    5. Subject ID, array, African Principal Component, East Asian Principal Component, European Principal Component, and Latin Principal Component of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    6. Subject ID, sex, race, affection status, age, BMI, Gleason Summary Score, histologic grading and differentiation, and SEER general summary stage of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
    7. Sample ID, package, analyte type, body site where sample was collected, tumor status of sample, and Reagent Kit of participants with or without prostate cancer and involved in the "ProHealth: Kaiser Permanente Genome-wide Association Study of Prostate Cancer" project.
Name
Type
Description | Question | Decode (Coded Value)
Type de données
Alias
Item Group
pht007158
C3846158 (UMLS CUI [1,1])
FAMILY_ID
Item
Family ID
text
C3669174 (UMLS CUI [1,1])
SUBJECT_ID
Item
Unique subject ID
text
C2348585 (UMLS CUI [1,1])
MOTHER
Item
Mother subject ID
text
C3669352 (UMLS CUI [1,1])
C0030761 (UMLS CUI [1,2])
FATHER
Item
Father subject ID
text
C3669177 (UMLS CUI [1,1])
C0030761 (UMLS CUI [1,2])
Item
Sex
text
C0079399 (UMLS CUI [1,1])
Code List
Sex
CL Item
Male (1)
C0086582 (UMLS CUI [1,1])
CL Item
Female (2)
C0086287 (UMLS CUI [1,1])
CL Item
Not applicable (NA)
C1272460 (UMLS CUI [1,1])
CL Item
Unknown (UNK)
MZ_TWIN_ID
Item
Twin ID for monozygotic twins or multiples. A TWIN_ID is not provided for dizygotic twins or multiples.
text
C0041427 (UMLS CUI [1,1])
C2348585 (UMLS CUI [1,2])
C0030761 (UMLS CUI [1,3])

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