Repository logoRepository logo
GRO
  • GRO.data
  • GRO.plan
Help
  • English
  • Deutsch
Log In
New user? Click here to register.Have you forgotten your password?
Publications
Researcher
Organizations
Other
  • Journals
  • Series
  • Events
  • Projects
  • Working Groups

Browsing by Author "Liu, Geoffrey"

Filter results by typing the first few letters
Now showing 1 - 20 of 24
  • Results Per Page
  • Sort Options
  • Some of the metrics are blocked by your 
    consent settings
    Abstract 2292: Lung function and lung cancer risk: a Mendelian randomization study of UK Biobank cohort and the International Lung Cancer Consortium
    (American Association for Cancer Research, 2017)
    Kachuri, Linda
    ;
    Johansson, Mattias
    ;
    Brennan, Paul
    ;
    Haycock, Phillip
    ;
    Liu, Geoffrey
    ;
    Landi, Maria Teresa
    ;
    Christiani, David C.
    ;
    Caporaso, Neil E.
    ;
    Wu, Xifeng
    ;
    Aldrich, Melinda C.
    ;
    Albanes, Demetrius
    ;
    Tardón, Adonina
    ;
    Rennert, Gad
    ;
    Chen, Chu
    ;
    Goodman, Gary E.
    ;
    Doherty, Jennifer A.
    ;
    Bickeböller, Heike  
    ;
    Teare, Dawn
    ;
    Kiemeney, Lambertus A.
    ;
    Bojesen, Stig E.
    ;
    Field, John K.
    ;
    Haugen, Aage
    ;
    Lam, Stephen
    ;
    Marchand, Loic Le
    ;
    Schabath, Matthew B.
    ;
    Andrew, Angeline S.
    ;
    Manjer, Jonas
    ;
    Lazarus, Philip
    ;
    Arnold, Susanne M.
    ;
    Gaborieau, Valérie
    ;
    Martin, Richard
    ;
    Relton, Caroline
    ;
    Smith, George Davey
    ;
    Amos, Christopher I.
    ;
    McKay, James D.
    ;
    Hung, Rayjean J.
  • Some of the metrics are blocked by your 
    consent settings
    Assessing Lung Cancer Absolute Risk Trajectory Based on a Polygenic Risk Model
    (2021)
    Hung, Rayjean J.
    ;
    Warkentin, Matthew T.
    ;
    Brhane, Yonathan
    ;
    Chatterjee, Nilanjan
    ;
    Christiani, David C.
    ;
    Landi, Maria Teresa
    ;
    Caporaso, Neil E.
    ;
    Liu, Geoffrey
    ;
    Johansson, Mattias
    ;
    Albanes, Demetrius
    ;
    Marchand, Loic Le
    ;
    Tardon, Adonina
    ;
    Rennert, Gad
    ;
    Bojesen, Stig E.
    ;
    Chen, Chu
    ;
    Field, John K.
    ;
    Kiemeney, Lambertus A.
    ;
    Lazarus, Philip
    ;
    Zienolddiny, Shanbeth
    ;
    Lam, Stephen
    ;
    Andrew, Angeline S.
    ;
    Arnold, Susanne M.
    ;
    Aldrich, Melinda C.
    ;
    Bickeböller, Heike  
    ;
    Risch, Angela
    ;
    Schabath, Matthew B.
    ;
    McKay, James D.
    ;
    Brennan, Paul
    ;
    Amos, Christopher I.
  • Some of the metrics are blocked by your 
    consent settings
    Association Analysis of Driver Gene–Related Genetic Variants Identified Novel Lung Cancer Susceptibility Loci with 20,871 Lung Cancer Cases and 15,971 Controls
    (2020)
    Wang, Yuzhuo
    ;
    Gorlova, Olga Y.
    ;
    Gorlov, Ivan P.
    ;
    Zhu, Meng
    ;
    Dai, Juncheng
    ;
    Albanes, Demetrius
    ;
    Lam, Stephen
    ;
    Tardon, Adonina
    ;
    Chen, Chu
    ;
    Goodman, Gary E.
    ;
    Bojesen, Stig E.
    ;
    Landi, Maria Teresa
    ;
    Johansson, Mattias
    ;
    Risch, Angela
    ;
    Wichmann, Heunz-Erich
    ;
    Bickeboller, Heike  
    ;
    Christiani, David C.
    ;
    Rennert, Gad
    ;
    Arnold, Susanne M.
    ;
    Brennan, Paul
    ;
    Field, John K.
    ;
    Shete, Sanjay
    ;
    Le Marchand, Loïc
    ;
    Melander, Olle
    ;
    Brunnstrom, Hans
    ;
    Liu, Geoffrey
    ;
    Hung, Rayjean J.
    ;
    Andrew, Angeline S.
    ;
    Kiemeney, Lambertus A.
    ;
    Zienolddiny, Shanbeh
    ;
    Grankvist, Kjell
    ;
    Johansson, Mikael
    ;
    Caporaso, Neil E.
    ;
    Woll, Penella J.
    ;
    Lazarus, Philip
    ;
    Schabath, Matthew B.
    ;
    Aldrich, Melinda C.
    ;
    Stevens, Victoria L.
    ;
    Ma, Hongxia
    ;
    Jin, Guangfu
    ;
    Hu, Zhibin
    ;
    Amos, Christopher I.
    ;
    Shen, Hongbing
  • Some of the metrics are blocked by your 
    consent settings
    Candidate pathway analysis of surfactant proteins identifies CTSH and SFTA2 that influences lung cancer risk
    (2023)
    Luyapan, Jennifer
    ;
    Bossé, Yohan
    ;
    Li, Zhonglin
    ;
    Xiao, Xiangjun
    ;
    Rosenberger, Albert  
    ;
    Hung, Rayjean J
    ;
    Lam, Stephen
    ;
    Zienolddiny, Shanbeh
    ;
    Liu, Geoffrey
    ;
    Kiemeney, Lambertus A
    ;
    Amos, Christopher I
    Abstract Pulmonary surfactant is a lipoprotein synthesized and secreted by alveolar type II cells in lung. We evaluated the associations between 200,139 single nucleotide polymorphisms (SNPs) of 40 surfactant-related genes and lung cancer risk using genotyped data from two independent lung cancer genome-wide association studies. Discovery data included 18,082 cases and 13,780 controls of European ancestry. Replication data included 1,914 cases and 3,065 controls of European descent. Using multivariate logistic regression, we found novel SNPs in surfactant-related genes CTSH [rs34577742 C > T, odds ratio (OR) = 0.90, 95% confidence interval (CI) = 0.89–0.93, P = 7.64 × 10−9] and SFTA2 (rs3095153 G > A, OR = 1.16, 95% CI = 1.10–1.21, P = 1.27 × 10−9) associated with overall lung cancer in the discovery data and validated in an independent replication data—CTSH (rs34577742 C > T, OR = 0.88, 95% CI = 0.80–0.96, P = 5.76 × 10−3) and SFTA2 (rs3095153 G > A, OR = 1.14, 95% CI = 1.01–1.28, P = 3.25 × 10−2). Among ever smokers, we found SNPs in CTSH (rs34577742 C > T, OR = 0.89, 95% CI = 0.85–0.92, P = 1.94 × 10−7) and SFTA2 (rs3095152 G > A, OR = 1.20, 95% CI = 1.14–1.27, P = 4.25 × 10−11) associated with overall lung cancer in the discovery data and validated in the replication data—CTSH (rs34577742 C > T, OR = 0.88, 95% CI = 0.79–0.97, P = 1.64 × 10−2) and SFTA2 (rs3095152 G > A, OR = 1.15, 95% CI = 1.01–1.30, P = 3.81 × 10−2). Subsequent transcriptome-wide association study using expression weights from a lung expression quantitative trait loci study revealed genes most strongly associated with lung cancer are CTSH (PTWAS = 2.44 × 10−4) and SFTA2 (PTWAS = 2.32 × 10−6).
  • Some of the metrics are blocked by your 
    consent settings
    Causal relationships between body mass index, smoking and lung cancer: Univariable and multivariable Mendelian randomization
    (2020)
    Zhou, Wen
    ;
    Liu, Geoffrey
    ;
    Hung, Rayjean J.
    ;
    Haycock, Philip C.
    ;
    Aldrich, Melinda C.
    ;
    Andrew, Angeline S.
    ;
    Arnold, Susanne M.
    ;
    Bickeböller, Heike  
    ;
    Bojesen, Stig E.
    ;
    Brennan, Paul
    ;
    Brunnström, Hans
    ;
    Melander, Olle
    ;
    Caporaso, Neil E.
    ;
    Landi, Maria Teresa
    ;
    Chen, Chu
    ;
    Goodman, Gary E.
    ;
    Christiani, David C.
    ;
    Cox, Angela
    ;
    Field, John K.
    ;
    Johansson, Mikael
    ;
    Kiemeney, Lambertus A.
    ;
    Lam, Stephen
    ;
    Lazarus, Philip
    ;
    Le Marchand, Loïc
    ;
    Rennert, Gad
    ;
    Risch, Angela
    ;
    Schabath, Matthew B.
    ;
    Shete, Sanjay S.
    ;
    Tardón, Adonina
    ;
    Zienolddiny, Shanbeh
    ;
    Shen, Hongbing
    ;
    Amos, Christopher I.
  • Some of the metrics are blocked by your 
    consent settings
    CHRNA5 Risk Variant Predicts Delayed Smoking Cessation and Earlier Lung Cancer Diagnosis-A Meta-Analysis
    (Oxford Univ Press Inc, 2015)
    Chen, Li-Shiun
    ;
    Hung, Rayjean J.
    ;
    Baker, Timothy
    ;
    Horton, Amy
    ;
    Culverhouse, Rob
    ;
    Saccone, Nancy
    ;
    Cheng, Iona
    ;
    Deng, B. O.
    ;
    Han, Younghun
    ;
    Hansen, Helen M.
    ;
    Horsman, Janet
    ;
    Kim, Claire
    ;
    Lutz, Sharon
    ;
    Rosenberger, Albert  
    ;
    Aben, Katja K.
    ;
    Andrew, Angeline S.
    ;
    Breslau, Naomi
    ;
    Chang, Shen-Chih
    ;
    Dieffenbach, Aida Karina
    ;
    Dienemann, Hendrik
    ;
    Frederiksen, Brittni
    ;
    Han, Jiali
    ;
    Hatsukami, Dorothy K.
    ;
    Johnson, Eric O.
    ;
    Pande, Mala
    ;
    Wrensch, Margaret R.
    ;
    McLaughlin, John R.
    ;
    Skaug, Vidar
    ;
    van der Heijden, Henricus F. M.
    ;
    Wampfler, Jason
    ;
    Wenzlaff, Angela
    ;
    Woll, Penella J.
    ;
    Zienolddiny, Shanbeh
    ;
    Bickeboeller, Heike  
    ;
    Brenner, Hermann
    ;
    Duell, Eric J.
    ;
    Haugen, Aage
    ;
    Heinrich, Joachim
    ;
    Hokanson, John E.
    ;
    Hunter, David J.
    ;
    Kiemeney, Lambertus A.
    ;
    Lazarus, Philip
    ;
    Le Marchand, Loic
    ;
    Liu, Geoffrey
    ;
    Mayordomo, Jose I.
    ;
    Risch, Angela
    ;
    Schwartz, Ann G.
    ;
    Teare, Dawn
    ;
    Wu, X.
    ;
    Wiencke, John K.
    ;
    Yang, Ping
    ;
    Zhang, Z.
    ;
    Spitz, Margaret R.
    ;
    Kraft, Peter
    ;
    Amos, Christopher I.
    ;
    Bierut, Laura J.
    Background: Recent meta-analyses show strong evidence of associations among genetic variants in CHRNA5 on chromosome 15q25, smoking quantity, and lung cancer. This meta-analysis tests whether the CHRNA5 variant rs16969968 predicts age of smoking cessation and age of lung cancer diagnosis. Methods: Meta-analyses examined associations between rs16969968, age of quitting smoking, and age of lung cancer diagnosis in 24 studies of European ancestry (n = 29 072). In each dataset, we used Cox regression models to evaluate the association between rs16969968 and the two primary phenotypes (age of smoking cessation among ever smokers and age of lung cancer diagnosis among lung cancer case patients) and the secondary phenotype of smoking duration. Heterogeneity across studies was assessed with the Cochran Q test. All statistical tests were two-sided. Results: The rs16969968 allele (A) was associated with a lower likelihood of smoking cessation (hazard ratio [HR] = 0.95, 95% confidence interval [CI] = 0.91 to 0.98, P =.0042), and the AA genotype was associated with a four-year delay in median age of quitting compared with the GG genotype. Among smokers with lung cancer diagnoses, the rs16969968 genotype (AA) was associated with a four-year earlier median age of diagnosis compared with the low-risk genotype (GG) (HR = 1.08, 95% CI = 1.04 to 1.12, P = 1.1 10(-5)). Conclusion: These data support the clinical significance of the CHRNA5 variant rs16969968. It predicts delayed smoking cessation and an earlier age of lung cancer diagnosis in this meta-analysis. Given the existing evidence that this CHRNA5 variant predicts favorable response to cessation pharmacotherapy, these findings underscore the potential clinical and public health importance of rs16969968 in CHRNA5 in relation to smoking cessation success and lung cancer risk.d: Recent meta-analyses show strong evidence of associations among genetic variants in CHRNA5 on chromosome 15q25, smoking quantity, and lung cancer. This meta-analysis tests whether the CHRNA5 variant rs16969968 predicts age of smoking cessation and age of lung cancer diagnosis.
  • Some of the metrics are blocked by your 
    consent settings
    Comparison of Pathway Analysis Approaches Using Lung Cancer GWAS Data Sets
    (Public Library Science, 2012)
    Fehringer, Gordon
    ;
    Liu, Geoffrey
    ;
    Briollais, Laurent
    ;
    Brennan, P. C.
    ;
    Amos, Christopher I.
    ;
    Spitz, Margaret R.
    ;
    Bickeboeller, Heike  
    ;
    Wichmann, Heinz-Erich
    ;
    Risch, Angela
    ;
    Hung, Rayjean J.
    Pathway analysis has been proposed as a complement to single SNP analyses in GWAS. This study compared pathway analysis methods using two lung cancer GWAS data sets based on four studies: one a combined data set from Central Europe and Toronto (CETO); the other a combined data set from Germany and MD Anderson (GRMD). We searched the literature for pathway analysis methods that were widely used, representative of other methods, and had available software for performing analysis. We selected the programs EASE, which uses a modified Fishers Exact calculation to test for pathway associations, GenGen (a version of Gene Set Enrichment Analysis (GSEA)), which uses a Kolmogorov-Smirnov-like running sum statistic as the test statistic, and SLAT, which uses a p-value combination approach. We also included a modified version of the SUMSTAT method (mSUMSTAT), which tests for association by averaging chi(2) statistics from genotype association tests. There were nearly 18000 genes available for analysis, following mapping of more than 300,000 SNPs from each data set. These were mapped to 421 GO level 4 gene sets for pathway analysis. Among the methods designed to be robust to biases related to gene size and pathway SNP correlation (GenGen, mSUMSTAT and SLAT), the mSUMSTAT approach identified the most significant pathways (8 in CETO and 1 in GRMD). This included a highly plausible association for the acetylcholine receptor activity pathway in both CETO (FDR <= 0.001) and GRMD (FDR = 0.009), although two strong association signals at a single gene cluster (CHRNA3-CHRNA5-CHRNB4) drive this result, complicating its interpretation. Few other replicated associations were found using any of these methods. Difficulty in replicating associations hindered our comparison, but results suggest mSUMSTAT has advantages over the other approaches, and may be a useful pathway analysis tool to use alongside other methods such as the commonly used GSEA (GenGen) approach.
  • Some of the metrics are blocked by your 
    consent settings
    Comprehensive functional annotation of susceptibility variants identifies genetic heterogeneity between lung adenocarcinoma and squamous cell carcinoma
    (2020)
    Qin, Na
    ;
    Li, Yuancheng
    ;
    Wang, Cheng
    ;
    Zhu, Meng
    ;
    Dai, Juncheng
    ;
    Hong, Tongtong
    ;
    Albanes, Demetrius
    ;
    Lam, Stephen
    ;
    Tardon, Adonina
    ;
    Chen, Chu
    ;
    Goodman, Gary
    ;
    Bojesen, Stig E.
    ;
    Landi, Maria Teresa
    ;
    Johansson, Mattias
    ;
    Risch, Angela
    ;
    Wichmann, H-Erich
    ;
    Bickeboller, Heike  
    ;
    Rennert, Gadi
    ;
    Arnold, Susanne
    ;
    Brennan, Paul
    ;
    Field, John K.
    ;
    Shete, Sanjay
    ;
    Le Marchand, Loic
    ;
    Melander, Olle
    ;
    Brunnstrom, Hans
    ;
    Liu, Geoffrey
    ;
    Hung, Rayjean J.
    ;
    Andrew, Angeline
    ;
    Kiemeney, Lambertus A.
    ;
    Zienolddiny, Shan
    ;
    Grankvist, Kjell
    ;
    Johansson, Mikael
    ;
    Caporaso, Neil
    ;
    Woll, Penella
    ;
    Lazarus, Philip
    ;
    Schabath, Matthew B.
    ;
    Aldrich, Melinda C.
    ;
    Stevens, Victoria L.
    ;
    Jin, Guangfu
    ;
    Christiani, David C.
    ;
    Hu, Zhibin
    ;
    Amos, Christopher I.
    ;
    Ma, Hongxia
    ;
    Shen, Hongbing
  • Some of the metrics are blocked by your 
    consent settings
    Elevated Platelet Count Appears to Be Causally Associated with Increased Risk of Lung Cancer: A Mendelian Randomization Analysis
    (2019)
    Zhu, Ying
    ;
    Wei, Yongyue
    ;
    Zhang, Ruyang
    ;
    Dong, Xuesi
    ;
    Shen, Sipeng
    ;
    Zhao, Yang
    ;
    Bai, Jianling
    ;
    Albanes, Demetrius
    ;
    Caporaso, Neil E.
    ;
    Landi, Maria Teresa
    ;
    Zhu, Bin
    ;
    Chanock, Stephen J.
    ;
    Gu, Fangyi
    ;
    Lam, Stephen
    ;
    Tsao, Ming-Sound
    ;
    Shepherd, Frances A.
    ;
    Tardon, Adonina
    ;
    Fernández-Somoano, Ana
    ;
    Fernandez-Tardon, Guillermo
    ;
    Chen, Chu
    ;
    Barnett, Matthew J.
    ;
    Doherty, Jennifer
    ;
    Bojesen, Stig E.
    ;
    Johansson, Mattias
    ;
    Brennan, Paul
    ;
    McKay, James D.
    ;
    Carreras-Torres, Robert
    ;
    Muley, Thomas
    ;
    Risch, Angela
    ;
    Wichmann, Heunz-Erich
    ;
    Bickeboeller, Heike  
    ;
    Rosenberger, Albert  
    ;
    Rennert, Gad
    ;
    Saliba, Walid
    ;
    Arnold, Susanne M.
    ;
    Field, John K.
    ;
    Davies, Michael P.A.
    ;
    Marcus, Michael W.
    ;
    Wu, Xifeng
    ;
    Ye, Yuanqing
    ;
    Le Marchand, Loic
    ;
    Wilkens, Lynne R.
    ;
    Melander, Olle
    ;
    Manjer, Jonas
    ;
    Brunnström, Hans
    ;
    Hung, Rayjean J.
    ;
    Liu, Geoffrey
    ;
    Brhane, Yonathan
    ;
    Kachuri, Linda
    ;
    Andrew, Angeline S.
    ;
    Duell, Eric J.
    ;
    Kiemeney, Lambertus A.
    ;
    van der Heijden, Erik HFM
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Skaug, Vidar
    ;
    Grankvist, Kjell
    ;
    Johansson, Mikael
    ;
    Woll, Penella J.
    ;
    Cox, Angela
    ;
    Taylor, Fiona
    ;
    Teare, Dawn M.
    ;
    Lazarus, Philip
    ;
    Schabath, Matthew B.
    ;
    Aldrich, Melinda C.
    ;
    Houlston, Richard S.
    ;
    McLaughlin, John
    ;
    Stevens, Victoria L.
    ;
    Shen, Hongbing
    ;
    Hu, Zhibin
    ;
    Dai, Juncheng
    ;
    Amos, Christopher I.
    ;
    Han, Younghun
    ;
    Zhu, Dakai
    ;
    Goodman, Gary E.
    ;
    Chen, Feng
    ;
    Christiani, David C.
    Platelets are a critical element in coagulation and inflammation, and activated platelets are linked to cancer risk through diverse mechanisms. However, a causal relationship between platelets and risk of lung cancer remains unclear.
  • Some of the metrics are blocked by your 
    consent settings
    Fine mapping of MHC region in lung cancer highlights independent susceptibility loci by ethnicity
    (2018)
    Ferreiro-Iglesias, Aida
    ;
    Lesseur, Corina
    ;
    McKay, James
    ;
    Hung, Rayjean J.
    ;
    Han, Younghun
    ;
    Zong, Xuchen
    ;
    Christiani, David
    ;
    Johansson, Mattias
    ;
    Xiao, Xiangjun
    ;
    Li, Yafang
    ;
    Qian, David C.
    ;
    Ji, Xuemei
    ;
    Liu, Geoffrey
    ;
    Caporaso, Neil
    ;
    Scelo, Ghislaine
    ;
    Zaridze, David
    ;
    Mukeriya, Anush
    ;
    Kontic, Milica
    ;
    Ognjanovic, Simona
    ;
    Lissowska, Jolanta
    ;
    Szołkowska, Małgorzata
    ;
    Swiatkowska, Beata
    ;
    Janout, Vladimir
    ;
    Holcatova, Ivana
    ;
    Bolca, Ciprian
    ;
    Savic, Milan
    ;
    Ognjanovic, Miodrag
    ;
    Bojesen, Stig Egil
    ;
    Wu, Xifeng
    ;
    Albanes, Demetrios
    ;
    Aldrich, Melinda C.
    ;
    Tardon, Adonina
    ;
    Fernandez-Somoano, Ana
    ;
    Fernandez-Tardon, Guillermo
    ;
    Le Marchand, Loic
    ;
    Rennert, Gadi
    ;
    Chen, Chu
    ;
    Doherty, Jennifer
    ;
    Goodman, Gary
    ;
    Bickeböller, Heike  
    ;
    Wichmann, H-Erich
    ;
    Risch, Angela
    ;
    Rosenberger, Albert  
    ;
    Shen, Hongbing
    ;
    Dai, Juncheng
    ;
    Field, John K.
    ;
    Davies, Michael
    ;
    Woll, Penella
    ;
    Teare, M. Dawn
    ;
    Kiemeney, Lambertus A.
    ;
    van der Heijden, Erik H. F. M.
    ;
    Yuan, Jian-Min
    ;
    Hong, Yun-Chul
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Lam, Stephen
    ;
    Tsao, Ming-Sound
    ;
    Johansson, Mikael
    ;
    Grankvist, Kjell
    ;
    Schabath, Matthew B.
    ;
    Andrew, Angeline
    ;
    Duell, Eric
    ;
    Melander, Olle
    ;
    Brunnström, Hans
    ;
    Lazarus, Philip
    ;
    Arnold, Susanne
    ;
    Slone, Stacey
    ;
    Byun, Jinyoung
    ;
    Kamal, Ahsan
    ;
    Zhu, Dakai
    ;
    Landi, Maria Teresa
    ;
    Amos, Christopher I.
    ;
    Brennan, Paul
  • Some of the metrics are blocked by your 
    consent settings
    Gene–gene interaction of AhRwith and within the Wntcascade affects susceptibility to lung cancer
    (BioMed Central, 2022-01-31)
    Rosenberger, Albert  
    ;
    Muttray, Nils
    ;
    Hung, Rayjean J.
    ;
    Christiani, David C.
    ;
    Caporaso, Neil E.
    ;
    Liu, Geoffrey
    ;
    Bojesen, Stig E.
    ;
    Le Marchand, Loic
    ;
    Albanes, Demetrios
    ;
    Aldrich, Melinda C.
    ;
    Tardon, Adonina
    ;
    Fernández-Tardón, Guillermo
    ;
    Rennert, Gad
    ;
    Field, John K.
    ;
    Davies, Michael P. A.
    ;
    Liloglou, Triantafillos
    ;
    Kiemeney, Lambertus A.
    ;
    Lazarus, Philip
    ;
    Wendel, Bernadette
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Lam, Stephen
    ;
    Schabath, Matthew B.
    ;
    Andrew, Angeline S.
    ;
    Duell, Eric J.
    ;
    Arnold, Susanne M.
    ;
    Goodman, Gary E.
    ;
    Chen, Chu
    ;
    Doherty, Jennifer A.
    ;
    Taylor, Fiona
    ;
    Cox, Angela
    ;
    Woll, Penella J.
    ;
    Risch, Angela
    ;
    Muley, Thomas R.
    ;
    Johansson, Mikael
    ;
    Brennan, Paul
    ;
    Landi, Maria T.
    ;
    Shete, Sanjay S.
    ;
    Amos, Christopher I.
    ;
    Bickeböller, Heike  
    ;
    The INTEGRAL-ILCCO Consortium
    Background Aberrant Wnt signalling, regulating cell development and stemness, influences the development of many cancer types. The Aryl hydrocarbon receptor (AhR) mediates tumorigenesis of environmental pollutants. Complex interaction patterns of genes assigned to AhR/Wnt-signalling were recently associated with lung cancer susceptibility. Aim To assess the association and predictive ability of AhR/Wnt-genes with lung cancer in cases and controls of European descent. Methods Odds ratios (OR) were estimated for genomic variants assigned to the Wnt agonist and the antagonistic genes DKK2, DKK3, DKK4, FRZB, SFRP4 and Axin2. Logistic regression models with variable selection were trained, validated and tested to predict lung cancer, at which other previously identified SNPs that have been robustly associated with lung cancer risk could also enter the model. Furthermore, decision trees were created to investigate variant × variant interaction. All analyses were performed for overall lung cancer and for subgroups. Results No genome-wide significant association of AhR/Wnt-genes with overall lung cancer was observed, but within the subgroups of ever smokers (e.g., maker rs2722278 SFRP4; OR  = 1.20; 95% CI 1.13–1.27; p  = 5.6 × 10–10) and never smokers (e.g., maker rs1133683 Axin2; OR  = 1.27; 95% CI 1.19–1.35; p  = 1.0 × 10–12). Although predictability is poor, AhR/Wnt-variants are unexpectedly overrepresented in optimized prediction scores for overall lung cancer and for small cell lung cancer. Remarkably, the score for never-smokers contained solely two AhR/Wnt-variants. The optimal decision tree for never smokers consists of 7 AhR/Wnt-variants and only two lung cancer variants. Conclusions The role of variants belonging to Wnt/AhR-pathways in lung cancer susceptibility may be underrated in main-effects association analysis. Complex interaction patterns in individuals of European descent have moderate predictive capacity for lung cancer or subgroups thereof, especially in never smokers.
  • Some of the metrics are blocked by your 
    consent settings
    Genetic modifiers of radon-induced lung cancer risk: a genome-wide interaction study in former uranium miners
    (2018)
    Rosenberger, Albert  
    ;
    Hung, Rayjean J.
    ;
    Christiani, David C.
    ;
    Caporaso, Neil E.
    ;
    Liu, Geoffrey
    ;
    Bojesen, Stig E.
    ;
    Le Marchand, Loic
    ;
    Haiman, Ch. A.
    ;
    Albanes, Demetrios
    ;
    Aldrich, Melinda C.
    ;
    Tardon, Adonina
    ;
    Fernández-Tardón, G.
    ;
    Rennert, Gad
    ;
    Field, John K.
    ;
    Kiemeney, B.
    ;
    Lazarus, Philip
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Lam, Stephen
    ;
    Schabath, Matthew B.
    ;
    Andrew, Angeline S.
    ;
    Brunnsstöm, Hans
    ;
    Goodman, Gary E.
    ;
    Doherty, Jennifer A.
    ;
    Chen, Chu
    ;
    Teare, M. Dawn
    ;
    Wichmann, H.-Erich
    ;
    Manz, Judith
    ;
    Risch, Angela
    ;
    Muley, Thomas R.
    ;
    Johansson, Mikael
    ;
    Brennan, Paul
    ;
    Landi, Maria Teresa
    ;
    Amos, Christopher I.
    ;
    Pesch, Beate
    ;
    Johnen, Georg
    ;
    Brüning, Thomas
    ;
    Bickeböller, Heike  
    ;
    Gomolka, Maria
  • Some of the metrics are blocked by your 
    consent settings
    Genetic Risk Can Be Decreased: Quitting Smoking Decreases and Delays Lung Cancer for Smokers With High and Low CHRNA5 Risk Genotypes — A Meta-Analysis
    (2016)
    Chen, Li-Shiun
    ;
    Baker, Timothy
    ;
    Hung, Rayjean J.
    ;
    Horton, Amy
    ;
    Culverhouse, Robert
    ;
    Hartz, Sarah
    ;
    Saccone, Nancy
    ;
    Cheng, Iona
    ;
    Deng, Bo
    ;
    Han, Younghun
    ;
    Hansen, Helen M.
    ;
    Horsman, Janet
    ;
    Kim, Claire
    ;
    Rosenberger, Albert  
    ;
    Aben, Katja K.
    ;
    Andrew, Angeline S.
    ;
    Chang, Shen-Chih
    ;
    Saum, Kai-Uwe
    ;
    Dienemann, Hendrik
    ;
    Hatsukami, Dorothy K.
    ;
    Johnson, Eric O.
    ;
    Pande, Mala
    ;
    Wrensch, Margaret R.
    ;
    McLaughlin, John
    ;
    Skaug, Vidar
    ;
    van der Heijden, Erik H.
    ;
    Wampfler, Jason
    ;
    Wenzlaff, Angela
    ;
    Woll, Penella
    ;
    Zienolddiny, Shanbeh
    ;
    Bickeböller, Heike  
    ;
    Brenner, Hermann
    ;
    Duell, Eric J.
    ;
    Haugen, Aage
    ;
    Brüske, Irene
    ;
    Kiemeney, Lambertus A.
    ;
    Lazarus, Philip
    ;
    Le Marchand, Loic
    ;
    Liu, Geoffrey
    ;
    Mayordomo, Jose
    ;
    Risch, Angela
    ;
    Schwartz, Ann G.
    ;
    Teare, M. Dawn
    ;
    Wu, Xifeng
    ;
    Wiencke, John K.
    ;
    Yang, Ping
    ;
    Zhang, Zuo-Feng
    ;
    Spitz, Margaret R.
    ;
    Amos, Christopher I.
    ;
    Bierut, Laura J.
  • Some of the metrics are blocked by your 
    consent settings
    Genome‐wide association study of INDELs identified four novel susceptibility loci associated with lung cancer risk
    (2020)
    Dai, Juncheng
    ;
    Huang, Mingtao
    ;
    Amos, Christopher I.
    ;
    Hung, Rayjean J.
    ;
    Tardon, Adonina
    ;
    Andrew, Angeline
    ;
    Chen, Chu
    ;
    Christiani, David C.
    ;
    Albanes, Demetrius
    ;
    Rennert, Gadi
    ;
    Fan, Jingyi
    ;
    Goodman, Gary
    ;
    Liu, Geoffrey
    ;
    Field, John K.
    ;
    Grankvist, Kjell
    ;
    Kiemeney, Lambertus A.
    ;
    Le Marchand, Loic
    ;
    Schabath, Matthew B.
    ;
    Johansson, Mattias
    ;
    Aldrich, Melinda C.
    ;
    Johansson, Mikael
    ;
    Caporaso, Neil
    ;
    Lazarus, Philip
    ;
    Lam, Stephan
    ;
    Bojesen, Stig E.
    ;
    Arnold, Susanne
    ;
    Landi, Maria Teresa
    ;
    Risch, Angela
    ;
    Wichmann, H‐Erich
    ;
    Bickeboller, Heike  
    ;
    Brennan, Paul
    ;
    Shete, Sanjay
    ;
    Melander, Olle
    ;
    Brunnstrom, Hans
    ;
    Zienolddiny, Shan
    ;
    Woll, Penella
    ;
    Stevens, Victoria
    ;
    Hu, Zhibin
    ;
    Shen, Hongbing
  • Some of the metrics are blocked by your 
    consent settings
    Genome-wide interaction study of smoking behavior and non-small cell lung cancer risk in Caucasian population
    (2017)
    Li, Yafang
    ;
    Xiao, Xiangjun
    ;
    Han, Younghun
    ;
    Gorlova, Olga
    ;
    Qian, David
    ;
    Leighl, Natasha
    ;
    Johansen, Jakob S
    ;
    Barnett, Matt
    ;
    Chen, Chu
    ;
    Goodman, Gary
    ;
    Cox, Angela
    ;
    Taylor, Fiona
    ;
    Woll, Penella
    ;
    Wichmann, H -Erich
    ;
    Manz, Judith
    ;
    Muley, Thomas
    ;
    Risch, Angela
    ;
    Rosenberger, Albert  
    ;
    Arnold, Susanne M
    ;
    Haura, Eric B
    ;
    Bolca, Ciprian
    ;
    Holcatova, Ivana
    ;
    Janout, Vladimir
    ;
    Kontic, Milica
    ;
    Lissowska, Jolanta
    ;
    Mukeria, Anush
    ;
    Ognjanovic, Simona
    ;
    Orlowski, Tadeusz M
    ;
    Scelo, Ghislaine
    ;
    Swiatkowska, Beata
    ;
    Zaridze, David
    ;
    Bakke, Per
    ;
    Skaug, Vidar
    ;
    Zienolddiny, Shanbeh
    ;
    Duell, Eric J
    ;
    Butler, Lesley M
    ;
    Houlston, Richard
    ;
    Soler Artigas, María
    ;
    Grankvist, Kjell
    ;
    Johansson, Mikael
    ;
    Shepherd, Frances A
    ;
    Marcus, Michael W
    ;
    Brunnström, Hans
    ;
    Manjer, Jonas
    ;
    Melander, Olle
    ;
    Muller, David C
    ;
    Overvad, Kim
    ;
    Trichopoulou, Antonia
    ;
    Tumino, Rosario
    ;
    Liu, Geoffrey
    ;
    Bojesen, Stig E
    ;
    Wu, Xifeng
    ;
    Marchand, Loic Le
    ;
    Albanes, Demetrios
    ;
    Bickeböller, Heike  
    ;
    Aldrich, Melinda C
    ;
    Bush, William S
    ;
    Tardon, Adonina
    ;
    Rennert, Gad
    ;
    Teare, M Dawn
    ;
    Field, John K
    ;
    Kiemeney, Lambertus A
    ;
    Lazarus, Philip
    ;
    Haugen, Aage
    ;
    Lam, Stephen
    ;
    Schabath, Matthew B
    ;
    Andrew, Angeline S
    ;
    Bertazzi, Pier Alberto
    ;
    Pesatori, Angela C
    ;
    Christiani, David C
    ;
    Caporaso, Neil
    ;
    Johansson, Mattias
    ;
    McKay, James D
    ;
    Brennan, Paul
    ;
    Hung, Rayjean J
    ;
    Amos, Christopher I
  • Some of the metrics are blocked by your 
    consent settings
    Immune-mediated genetic pathways resulting in pulmonary function impairment increase lung cancer susceptibility
    (2020)
    Kachuri, Linda
    ;
    Johansson, Mattias
    ;
    Rashkin, Sara R.
    ;
    Graff, Rebecca E.
    ;
    Bossé, Yohan
    ;
    Manem, Venkata
    ;
    Caporaso, Neil E.
    ;
    Landi, Maria Teresa
    ;
    Christiani, David C.
    ;
    Vineis, Paolo
    ;
    Liu, Geoffrey
    ;
    Scelo, Ghislaine
    ;
    Zaridze, David
    ;
    Shete, Sanjay S.
    ;
    Albanes, Demetrius
    ;
    Aldrich, Melinda C.
    ;
    Tardón, Adonina
    ;
    Rennert, Gad
    ;
    Chen, Chu
    ;
    Goodman, Gary E.
    ;
    Doherty, Jennifer A.
    ;
    Bickeböller, Heike  
    ;
    Field, John K.
    ;
    Davies, Michael P.
    ;
    Dawn Teare, M.
    ;
    Kiemeney, Lambertus A.
    ;
    Bojesen, Stig E.
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Lam, Stephen
    ;
    Le Marchand, Loïc
    ;
    Cheng, Iona
    ;
    Schabath, Matthew B.
    ;
    Duell, Eric J.
    ;
    Andrew, Angeline S.
    ;
    Manjer, Jonas
    ;
    Lazarus, Philip
    ;
    Arnold, Susanne
    ;
    McKay, James D.
    ;
    Emami, Nima C.
    ;
    Warkentin, Matthew T.
    ;
    Brhane, Yonathan
    ;
    Obeidat, Ma’en
    ;
    Martin, Richard M.
    ;
    Relton, Caroline
    ;
    Davey Smith, George
    ;
    Haycock, Philip C.
    ;
    Amos, Christopher I.
    ;
    Brennan, Paul
    ;
    Witte, John S.
    ;
    Hung, Rayjean J.
  • Some of the metrics are blocked by your 
    consent settings
    Impact of individual level uncertainty of lung cancer polygenic risk score (PRS) on risk stratification
    (2024-02-05)
    Wang, Xinan
    ;
    Zhang, Ziwei
    ;
    Ding, Yi
    ;
    Chen, Tony
    ;
    Mucci, Lorelei
    ;
    Albanes, Demetrios
    ;
    Landi, Maria T.
    ;
    Caporaso, Neil E.
    ;
    Lam, Stephen
    ;
    Tardon, Adonina
    ;
    Chen, Chu
    ;
    Bojesen, Stig E.
    ;
    Johansson, Mattias
    ;
    Risch, Angela
    ;
    Bickeböller, Heike  
    ;
    Wichmann, H-Erich
    ;
    Rennert, Gadi
    ;
    Arnold, Susanne
    ;
    Brennan, Paul
    ;
    McKay, James D.
    ;
    Field, John K.
    ;
    Shete, Sanjay S.
    ;
    Le Marchand, Loic
    ;
    Liu, Geoffrey
    ;
    Andrew, Angeline S.
    ;
    Kiemeney, Lambertus A.
    ;
    Zienolddiny-Narui, Shan
    ;
    Behndig, Annelie
    ;
    Johansson, Mikael
    ;
    Cox, Angie
    ;
    Lazarus, Philip
    ;
    Schabath, Matthew B.
    ;
    Aldrich, Melinda C.
    ;
    Hung, Rayjean J.
    ;
    Amos, Christopher I.
    ;
    Lin, Xihong
    ;
    Christiani, David C.
    Abstract Background Although polygenic risk score (PRS) has emerged as a promising tool for predicting cancer risk from genome-wide association studies (GWAS), the individual-level accuracy of lung cancer PRS and the extent to which its impact on subsequent clinical applications remains largely unexplored. Methods Lung cancer PRSs and confidence/credible interval (CI) were constructed using two statistical approaches for each individual: (1) the weighted sum of 16 GWAS-derived significant SNP loci and the CI through the bootstrapping method (PRS-16-CV) and (2) LDpred2 and the CI through posteriors sampling (PRS-Bayes), among 17,166 lung cancer cases and 12,894 controls with European ancestry from the International Lung Cancer Consortium. Individuals were classified into different genetic risk subgroups based on the relationship between their own PRS mean/PRS CI and the population level threshold. Results Considerable variances in PRS point estimates at the individual level were observed for both methods, with an average standard deviation (s.d.) of 0.12 for PRS-16-CV and a much larger s.d. of 0.88 for PRS-Bayes. Using PRS-16-CV, only 25.0% of individuals with PRS point estimates in the lowest decile of PRS and 16.8% in the highest decile have their entire 95% CI fully contained in the lowest and highest decile, respectively, while PRS-Bayes was unable to find any eligible individuals. Only 19% of the individuals were concordantly identified as having high genetic risk (> 90th percentile) using the two PRS estimators. An increased relative risk of lung cancer comparing the highest PRS percentile to the lowest was observed when taking the CI into account (OR = 2.73, 95% CI: 2.12–3.50, P-value = 4.13 × 10−15) compared to using PRS-16-CV mean (OR = 2.23, 95% CI: 1.99–2.49, P-value = 5.70 × 10−46). Improved risk prediction performance with higher AUC was consistently observed in individuals identified by PRS-16-CV CI, and the best performance was achieved by incorporating age, gender, and detailed smoking pack-years (AUC: 0.73, 95% CI = 0.72–0.74). Conclusions Lung cancer PRS estimates using different methods have modest correlations at the individual level, highlighting the importance of considering individual-level uncertainty when evaluating the practical utility of PRS.
  • Some of the metrics are blocked by your 
    consent settings
    Informed Genome-Wide Association Analysis With Family History As a Secondary Phenotype Identifies Novel Loci of Lung Cancer
    (Wiley-blackwell, 2015)
    Poirier, Julia G.
    ;
    Brennan, P. C.
    ;
    McKay, James D.
    ;
    Spitz, Margaret R.
    ;
    Bickeboeller, Heike  
    ;
    Risch, Angela
    ;
    Liu, Geoffrey
    ;
    Le Marchand, Loic
    ;
    Tworoger, Shelley
    ;
    McLaughlin, John R.
    ;
    Rosenberger, Albert  
    ;
    Heinrich, Joachim
    ;
    Brueske, Irene
    ;
    Muley, Thomas
    ;
    Henderson, Brian E.
    ;
    Wilkens, Lynne R.
    ;
    Zong, Xuchen
    ;
    Li, Yafang
    ;
    Hao, K. E.
    ;
    Timens, Wim
    ;
    Bosse, Yohan
    ;
    Sin, Don D.
    ;
    Obeidat, Ma’en
    ;
    Amos, Christopher I.
    ;
    Hung, Rayjean J.
    Lung cancer is the leading cause of cancer death worldwide. Although several genetic variants associated with lung cancer have been identified in the past, stringent selection criteria of genome-wide association studies (GWAS) can lead to missed variants. The objective of this study was to uncover missed variants by using the known association between lung cancer and first-degree family history of lung cancer to enrich the variant prioritization for lung cancer susceptibility regions. In this two-stage GWAS study, we first selected a list of variants associated with both lung cancer and family history of lung cancer in four GWAS (3,953 cases, 4,730 controls), then replicated our findings for 30 variants in a meta-analysis of four additional studies (7,510 cases, 7,476 controls). The top ranked genetic variant rs12415204 in chr10q23.33 encoding FFAR4 in the Discovery set was validated in the Replication set with an overall OR of 1.09 (95% CI = 1.04, 1.14, P=1.63x 10(-4)). When combining the two stages of the study, the strongest association was found in rs1158970 at Ch4p15.2 encoding KCNIP4 with an OR of 0.89 (95% CI = 0.85, 0.94, P = 9.64 x 10(-6)). We performed a stratified analysis of rs12415204 and rs1158970 across all eight studies by age, gender, smoking status, and histology, and found consistent results across strata. Four of the 30 replicated variants act as expression quantitative trait loci (eQTL) sites in 1,111 nontumor lung tissues and meet the genome-wide 10% FDR threshold.
  • Some of the metrics are blocked by your 
    consent settings
    Lung Cancer Risk in Never-Smokers of European Descent is Associated With Genetic Variation in the 5p15.33 TERT-CLPTM1Ll Region
    (2019)
    Hung, Rayjean J.
    ;
    Spitz, Margaret R.
    ;
    Houlston, Richard S.
    ;
    Schwartz, Ann G.
    ;
    Field, John K.
    ;
    Ying, Jun
    ;
    Li, Yafang
    ;
    Han, Younghun
    ;
    Ji, Xuemei
    ;
    Chen, Wei
    ;
    Wu, Xifeng
    ;
    Gorlov, Ivan P.
    ;
    Na, Jie
    ;
    de Andrade, Mariza
    ;
    Liu, Geoffrey
    ;
    Brhane, Yonathan
    ;
    Diao, Nancy
    ;
    Wenzlaff, Angela
    ;
    Davies, Michael P. A.
    ;
    Liloglou, Triantafillos
    ;
    Timofeeva, Maria
    ;
    Muley, Thomas
    ;
    Rennert, Hedy
    ;
    Saliba, Walid
    ;
    Ryan, Bríd M.
    ;
    Bowman, Elise
    ;
    Barros-Dios, Juan-Miguel
    ;
    Pérez-Ríos, Mónica
    ;
    Morgenstern, Hal
    ;
    Zienolddiny, Shanbeh
    ;
    Skaug, Vidar
    ;
    Ugolini, Donatella
    ;
    Bonassi, Stefano
    ;
    van der Heijden, Erik H. F. M.
    ;
    Tardon, Adonina
    ;
    Bojesen, Stig E.
    ;
    Landi, Maria Teresa
    ;
    Johansson, Mattias
    ;
    Bickeböller, Heike  
    ;
    Arnold, Susanne
    ;
    Le Marchand, Loic
    ;
    Melander, Olle
    ;
    Andrew, Angeline
    ;
    Grankvist, Kjell
    ;
    Caporaso, Neil
    ;
    Teare, M. Dawn
    ;
    Schabath, Matthew B.
    ;
    Aldrich, Melinda C.
    ;
    Kiemeney, Lambertus A.
    ;
    Wichmann, H.-Erich
    ;
    Lazarus, Philip
    ;
    Mayordomo, Jose
    ;
    Neri, Monica
    ;
    Haugen, Aage
    ;
    Zhang, Zuo-Feng
    ;
    Ruano-Raviña, Alberto
    ;
    Brenner, Hermann
    ;
    Harris, Curtis C.
    ;
    Orlow, Irene
    ;
    Rennert, Gadi
    ;
    Risch, Angela
    ;
    Brennan, Paul
    ;
    Christiani, David C.
    ;
    Amos, Christopher I.
    ;
    Yang, Ping
    ;
    Gorlova, Olga Y.
    Inherited susceptibility to lung cancer risk in never-smokers is poorly understood. The major reason for this gap in knowledge is that this disease is relatively uncommon (except in Asians), making it difficult to assemble an adequate study sample. In this study we conducted a genome-wide association study on the largest, to date, set of European-descent never-smokers with lung cancer.
  • Some of the metrics are blocked by your 
    consent settings
    Mendelian Randomization and mediation analysis of leukocyte telomere length and risk of lung and head and neck cancers
    (2018)
    Kachuri, Linda
    ;
    Saarela, Olli
    ;
    Bojesen, Stig Egil
    ;
    Davey Smith, George
    ;
    Liu, Geoffrey
    ;
    Landi, Maria Teresa
    ;
    Caporaso, Neil E
    ;
    Christiani, David C
    ;
    Johansson, Mattias
    ;
    Panico, Salvatore
    ;
    Overvad, Kim
    ;
    Trichopoulou, Antonia
    ;
    Vineis, Paolo
    ;
    Scelo, Ghislaine
    ;
    Zaridze, David
    ;
    Wu, Xifeng
    ;
    Albanes, Demetrius
    ;
    Diergaarde, Brenda
    ;
    Lagiou, Pagona
    ;
    Macfarlane, Gary J
    ;
    Aldrich, Melinda C
    ;
    Tardón, Adonina
    ;
    Rennert, Gad
    ;
    Olshan, Andrew F
    ;
    Weissler, Mark C
    ;
    Chen, Chu
    ;
    Goodman, Gary E
    ;
    Doherty, Jennifer A
    ;
    Ness, Andrew R
    ;
    Bickeböller, Heike  
    ;
    Wichmann, H-Erich
    ;
    Risch, Angela
    ;
    Field, John K
    ;
    Teare, M Dawn
    ;
    Kiemeney, Lambertus A
    ;
    van der Heijden, Erik H F M
    ;
    Carroll, June C
    ;
    Haugen, Aage
    ;
    Zienolddiny, Shanbeh
    ;
    Skaug, Vidar
    ;
    Wünsch-Filho, Victor
    ;
    Tajara, Eloiza H
    ;
    Ayoub Moysés, Raquel
    ;
    Daumas Nunes, Fabio
    ;
    Lam, Stephen
    ;
    Eluf-Neto, Jose
    ;
    Lacko, Martin
    ;
    Peters, Wilbert H M
    ;
    Le Marchand, Loïc
    ;
    Duell, Eric J
    ;
    Andrew, Angeline S
    ;
    Franceschi, Silvia
    ;
    Schabath, Matthew B
    ;
    Manjer, Jonas
    ;
    Arnold, Susanne
    ;
    Lazarus, Philip
    ;
    Mukeriya, Anush
    ;
    Swiatkowska, Beata
    ;
    Janout, Vladimir
    ;
    Holcatova, Ivana
    ;
    Stojsic, Jelena
    ;
    Mates, Dana
    ;
    Lissowska, Jolanta
    ;
    Boccia, Stefania
    ;
    Lesseur, Corina
    ;
    Zong, Xuchen
    ;
    McKay, James D
    ;
    Brennan, Paul
    ;
    Amos, Christopher I
    ;
    Hung, Rayjean J
  • «
  • 1 (current)
  • 2
  • »

About

About Us
FAQ
ORCID
End User Agreement
Privacy policy
Cookie consent
Imprint

Contact

Team GRO.publications
support-gro.publications@uni-goettingen.de
Matrix Chat: #support_gro_publications
Feedback

Göttingen Research Online

Göttingen Research Online bundles various services for Göttingen researchers:

GRO.data (research data repository)
GRO.plan (data management planning)
GRO.publications (publication data repository)
Logo Uni Göttingen
Logo Campus Göttingen
Logo SUB Göttingen
Logo eResearch Alliance

Except where otherwise noted, content on this site is licensed under a Creative Commons Attribution 4.0 International license.