👤 Lyle Tobin

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5
Articles
2
Name variants
Also published as: Martin D Tobin
articles
Mingming Zhao, Lyle Tobin, Sandeep K Misra +8 more · 2025 · bioRxiv : the preprint server for biology · Cold Spring Harbor Laboratory · added 2026-04-24
Hydroxyl Radical Protein Footprinting (HRPF) is a powerful tool to probe protein higher-order structure, as well as protein-protein and protein-carbohydrate interactions. It is mostly performed
📄 PDF DOI: 10.1101/2024.09.29.615683
DOCK7
Sara M Willems, Daniel J Wright, Felix R Day +74 more · 2017 · Nature communications · Nature · added 2026-04-24
Hand grip strength is a widely used proxy of muscular fitness, a marker of frailty, and predictor of a range of morbidities and all-cause mortality. To investigate the genetic determinants of variatio Show more
Hand grip strength is a widely used proxy of muscular fitness, a marker of frailty, and predictor of a range of morbidities and all-cause mortality. To investigate the genetic determinants of variation in grip strength, we perform a large-scale genetic discovery analysis in a combined sample of 195,180 individuals and identify 16 loci associated with grip strength (P<5 × 10 Show less
📄 PDF DOI: 10.1038/ncomms16015
KANSL1
Louise V Wain, Nick Shrine, Suzanne Miller +38 more · 2015 · The Lancet. Respiratory medicine · Elsevier · added 2026-04-24
Understanding the genetic basis of airflow obstruction and smoking behaviour is key to determining the pathophysiology of chronic obstructive pulmonary disease (COPD). We used UK Biobank data to study Show more
Understanding the genetic basis of airflow obstruction and smoking behaviour is key to determining the pathophysiology of chronic obstructive pulmonary disease (COPD). We used UK Biobank data to study the genetic causes of smoking behaviour and lung health. We sampled individuals of European ancestry from UK Biobank, from the middle and extremes of the forced expiratory volume in 1 s (FEV1) distribution among heavy smokers (mean 35 pack-years) and never smokers. We developed a custom array for UK Biobank to provide optimum genome-wide coverage of common and low-frequency variants, dense coverage of genomic regions already implicated in lung health and disease, and to assay rare coding variants relevant to the UK population. We investigated whether there were shared genetic causes between different phenotypes defined by extremes of FEV1. We also looked for novel variants associated with extremes of FEV1 and smoking behaviour and assessed regions of the genome that had already shown evidence for a role in lung health and disease. We set genome-wide significance at p<5 × 10(-8). UK Biobank participants were recruited from March 15, 2006, to July 7, 2010. Sample selection for the UK BiLEVE study started on Nov 22, 2012, and was completed on Dec 20, 2012. We selected 50,008 unique samples: 10,002 individuals with low FEV1, 10,000 with average FEV1, and 5002 with high FEV1 from each of the heavy smoker and never smoker groups. We noted a substantial sharing of genetic causes of low FEV1 between heavy smokers and never smokers (p=2.29 × 10(-16)) and between individuals with and without doctor-diagnosed asthma (p=6.06 × 10(-11)). We discovered six novel genome-wide significant signals of association with extremes of FEV1, including signals at four novel loci (KANSL1, TSEN54, TET2, and RBM19/TBX5) and independent signals at two previously reported loci (NPNT and HLA-DQB1/HLA-DQA2). These variants also showed association with COPD, including in individuals with no history of smoking. The number of copies of a 150 kb region containing the 5' end of KANSL1, a gene that is important for epigenetic gene regulation, was associated with extremes of FEV1. We also discovered five new genome-wide significant signals for smoking behaviour, including a variant in NCAM1 (chromosome 11) and a variant on chromosome 2 (between TEX41 and PABPC1P2) that has a trans effect on expression of NCAM1 in brain tissue. By sampling from the extremes of the lung function distribution in UK Biobank, we identified novel genetic causes of lung function and smoking behaviour. These results provide new insight into the specific mechanisms underlying airflow obstruction, COPD, and tobacco addiction, and show substantial shared genetic architecture underlying airflow obstruction across individuals, irrespective of smoking behaviour and other airway disease. Medical Research Council. Show less
📄 PDF DOI: 10.1016/S2213-2600(15)00283-0
KANSL1
Daan W Loth, María Soler Artigas, Sina A Gharib +157 more · 2014 · Nature genetics · Nature · added 2026-04-24
Daan W Loth, María Soler Artigas, Sina A Gharib, Louise V Wain, Nora Franceschini, Beate Koch, Tess D Pottinger, Albert Vernon Smith, Qing Duan, Chris Oldmeadow, Mi Kyeong Lee, David P Strachan, Alan L James, Jennifer E Huffman, Veronique Vitart, Adaikalavan Ramasamy, Nicholas J Wareham, Jaakko Kaprio, Xin-Qun Wang, Holly Trochet, Mika Kähönen, Claudia Flexeder, Eva Albrecht, Lorna M Lopez, Kim de Jong, Bharat Thyagarajan, Alexessander Couto Alves, Stefan Enroth, Ernst Omenaas, Peter K Joshi, Tove Fall, Ana Viñuela, Lenore J Launer, Laura R Loehr, Myriam Fornage, Guo Li, Jemma B Wilk, Wenbo Tang, Ani Manichaikul, Lies Lahousse, Tamara B Harris, Kari E North, Alicja R Rudnicka, Jennie Hui, Xiangjun Gu, Thomas Lumley, Alan F Wright, Nicholas D Hastie, Susan Campbell, Rajesh Kumar, Isabelle Pin, Robert A Scott, Kirsi H Pietiläinen, Ida Surakka, Yongmei Liu, Elizabeth G Holliday, Holger Schulz, Joachim Heinrich, Gail Davies, Judith M Vonk, Mary Wojczynski, Anneli Pouta, Asa Johansson, Sarah H Wild, Erik Ingelsson, Fernando Rivadeneira, Henry Völzke, Pirro G Hysi, Gudny Eiriksdottir, Alanna C Morrison, Jerome I Rotter, Wei Gao, Dirkje S Postma, Wendy B White, Stephen S Rich, Albert Hofman, Thor Aspelund, David Couper, Lewis J Smith, Bruce M Psaty, Kurt Lohman, Esteban G Burchard, André G Uitterlinden, Melissa Garcia, Bonnie R Joubert, Wendy L McArdle, A Bill Musk, Nadia Hansel, Susan R Heckbert, Lina Zgaga, Joyce B J van Meurs, Pau Navarro, Igor Rudan, Yeon-Mok Oh, Susan Redline, Deborah L Jarvis, Jing Hua Zhao, Taina Rantanen, George T O'Connor, Samuli Ripatti, Rodney J Scott, Stefan Karrasch, Harald Grallert, Nathan C Gaddis, John M Starr, Cisca Wijmenga, Ryan L Minster, David J Lederer, Juha Pekkanen, Ulf Gyllensten, Harry Campbell, Andrew P Morris, Sven Gläser, Christopher J Hammond, Kristin M Burkart, John Beilby, Stephen B Kritchevsky, Vilmundur Gudnason, Dana B Hancock, O Dale Williams, Ozren Polasek, Tatijana Zemunik, Ivana Kolcic, Marcy F Petrini, Matthias Wjst, Woo Jin Kim, David J Porteous, Generation Scotland, Blair H Smith, Anne Viljanen, Markku Heliövaara, John R Attia, Ian Sayers, Regina Hampel, Christian Gieger, Ian J Deary, H Marike Boezen, Anne Newman, Marjo-Riitta Jarvelin, James F Wilson, Lars Lind, Bruno H Stricker, Alexander Teumer, Timothy D Spector, Erik Melén, Marjolein J Peters, Leslie A Lange, R Graham Barr, Ken R Bracke, Fien M Verhamme, Joohon Sung, Pieter S Hiemstra, Patricia A Cassano, Akshay Sood, Caroline Hayward, Josée Dupuis, Ian P Hall, Guy G Brusselle, Martin D Tobin, Stephanie J London Show less
Forced vital capacity (FVC), a spirometric measure of pulmonary function, reflects lung volume and is used to diagnose and monitor lung diseases. We performed genome-wide association study meta-analys Show more
Forced vital capacity (FVC), a spirometric measure of pulmonary function, reflects lung volume and is used to diagnose and monitor lung diseases. We performed genome-wide association study meta-analysis of FVC in 52,253 individuals from 26 studies and followed up the top associations in 32,917 additional individuals of European ancestry. We found six new regions associated at genome-wide significance (P < 5 × 10(-8)) with FVC in or near EFEMP1, BMP6, MIR129-2-HSD17B12, PRDM11, WWOX and KCNJ2. Two loci previously associated with spirometric measures (GSTCD and PTCH1) were related to FVC. Newly implicated regions were followed up in samples from African-American, Korean, Chinese and Hispanic individuals. We detected transcripts for all six newly implicated genes in human lung tissue. The new loci may inform mechanisms involved in lung development and the pathogenesis of restrictive lung disease. Show less
📄 PDF DOI: 10.1038/ng.3011
HSD17B12
Andrew C Edmondson, Peter S Braund, Ioannis M Stylianou +18 more · 2011 · Circulation. Cardiovascular genetics · added 2026-04-24
Plasma levels of high-density lipoprotein cholesterol (HDL-C) are known to be heritable, but only a fraction of the heritability is explained. We used a high-density genotyping array containing single Show more
Plasma levels of high-density lipoprotein cholesterol (HDL-C) are known to be heritable, but only a fraction of the heritability is explained. We used a high-density genotyping array containing single-nucleotide polymorphisms (SNPs) from HDL-C candidate genes selected on known biology of HDL-C metabolism, mouse genetic studies, and human genetic association studies. SNP selection was based on tagging SNPs and included low-frequency nonsynonymous SNPs. Association analysis in a cohort containing extremes of HDL-C (case-control, n=1733) provided a discovery phase, with replication in 3 additional populations for a total meta-analysis in 7857 individuals. We replicated the majority of loci identified through genome-wide association studies and present on the array (including ABCA1, APOA1/C3/A4/A5, APOB, APOE/C1/C2, CETP, CTCF-PRMT8, FADS1/2/3, GALNT2, LCAT, LILRA3, LIPC, LIPG, LPL, LRP4, SCARB1, TRIB1, ZNF664) and provide evidence that suggests an association in several previously unreported candidate gene loci (including ABCG1, GPR109A/B/81, NFKB1, PON1/2/3/4). There was evidence for multiple, independent association signals in 5 loci, including association with low-frequency nonsynonymous variants. Genetic loci associated with HDL-C are likely to harbor multiple, independent causative variants, frequently with opposite effects on the HDL-C phenotype. Cohorts comprising subjects at the extremes of the HDL-C distribution may be efficiently used in a case-control discovery of quantitative traits. Show less
📄 PDF DOI: 10.1161/CIRCGENETICS.110.957563
FADS1