34 results on '"Gaynor, Sheila M"'
Search Results
2. Investigating Gene-Diet Interactions Impacting the Association Between Macronutrient Intake and Glycemic Traits.
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Westerman, Kenneth E, Walker, Maura E, Gaynor, Sheila M, Wessel, Jennifer, DiCorpo, Daniel, Ma, Jiantao, Alonso, Alvaro, Aslibekyan, Stella, Baldridge, Abigail S, Bertoni, Alain G, Biggs, Mary L, Brody, Jennifer A, Chen, Yii-Der Ida, Dupuis, Joseé, Goodarzi, Mark O, Guo, Xiuqing, Hasbani, Natalie R, Heath, Adam, Hidalgo, Bertha, Irvin, Marguerite R, Johnson, W Craig, Kalyani, Rita R, Lange, Leslie, Lemaitre, Rozenn N, Liu, Ching-Ti, Liu, Simin, Moon, Jee-Young, Nassir, Rami, Pankow, James S, Pettinger, Mary, Raffield, Laura M, Rasmussen-Torvik, Laura J, Selvin, Elizabeth, Senn, Mackenzie K, Shadyab, Aladdin H, Smith, Albert V, Smith, Nicholas L, Steffen, Lyn, Talegakwar, Sameera, Taylor, Kent D, de Vries, Paul S, Wilson, James G, Wood, Alexis C, Yanek, Lisa R, Yao, Jie, Zheng, Yinan, Boerwinkle, Eric, Morrison, Alanna C, Fornage, Miriam, Russell, Tracy P, Psaty, Bruce M, Levy, Daniel, Heard-Costa, Nancy L, Ramachandran, Vasan S, Mathias, Rasika A, Arnett, Donna K, Kaplan, Robert, North, Kari E, Correa, Adolfo, Carson, April, Rotter, Jerome I, Rich, Stephen S, Manson, JoAnn E, Reiner, Alexander P, Kooperberg, Charles, Florez, Jose C, Meigs, James B, Merino, Jordi, Tobias, Deirdre K, Chen, Han, and Manning, Alisa K
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Biomedical and Clinical Sciences ,Nutrition and Dietetics ,Nutrition ,Diabetes ,Human Genome ,Minority Health ,Genetics ,Cardiovascular ,Health Disparities ,Prevention ,Precision Medicine ,Clinical Research ,Metabolic and endocrine ,Good Health and Well Being ,Humans ,Glycated Hemoglobin ,Diet ,Diabetes Mellitus ,Eating ,Guanine Nucleotide Dissociation Inhibitors ,Genome-Wide Association Study ,Medical and Health Sciences ,Endocrinology & Metabolism ,Biomedical and clinical sciences - Abstract
Few studies have demonstrated reproducible gene-diet interactions (GDIs) impacting metabolic disease risk factors, likely due in part to measurement error in dietary intake estimation and insufficient capture of rare genetic variation. We aimed to identify GDIs across the genetic frequency spectrum impacting the macronutrient-glycemia relationship in genetically and culturally diverse cohorts. We analyzed 33,187 participants free of diabetes from 10 National Heart, Lung, and Blood Institute Trans-Omics for Precision Medicine program cohorts with whole-genome sequencing, self-reported diet, and glycemic trait data. We fit cohort-specific, multivariable-adjusted linear mixed models for the effect of diet, modeled as an isocaloric substitution of carbohydrate for fat, and its interactions with common and rare variants genome-wide. In main effect meta-analyses, participants consuming more carbohydrate had modestly lower glycemic trait values (e.g., for glycated hemoglobin [HbA1c], -0.013% HbA1c/250 kcal substitution). In GDI meta-analyses, a common African ancestry-enriched variant (rs79762542) reached study-wide significance and replicated in the UK Biobank cohort, indicating a negative carbohydrate-HbA1c association among major allele homozygotes only. Simulations revealed that >150,000 samples may be necessary to identify similar macronutrient GDIs under realistic assumptions about effect size and measurement error. These results generate hypotheses for further exploration of modifiable metabolic disease risk in additional cohorts with African ancestry.Article highlightsWe aimed to identify genetic modifiers of the dietary macronutrient-glycemia relationship using whole-genome sequence data from 10 Trans-Omics for Precision Medicine program cohorts. Substitution models indicated a modest reduction in glycemia associated with an increase in dietary carbohydrate at the expense of fat. Genome-wide interaction analysis identified one African ancestry-enriched variant near the FRAS1 gene that may interact with macronutrient intake to influence hemoglobin A1c. Simulation-based power calculations accounting for measurement error suggested that substantially larger sample sizes may be necessary to discover further gene-macronutrient interactions.
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- 2023
3. Powerful, scalable and resource-efficient meta-analysis of rare variant associations in large whole genome sequencing studies
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Li, Xihao, Quick, Corbin, Zhou, Hufeng, Gaynor, Sheila M, Liu, Yaowu, Chen, Han, Selvaraj, Margaret Sunitha, Sun, Ryan, Dey, Rounak, Arnett, Donna K, Bielak, Lawrence F, Bis, Joshua C, Blangero, John, Boerwinkle, Eric, Bowden, Donald W, Brody, Jennifer A, Cade, Brian E, Correa, Adolfo, Cupples, L Adrienne, Curran, Joanne E, de Vries, Paul S, Duggirala, Ravindranath, Freedman, Barry I, Göring, Harald HH, Guo, Xiuqing, Haessler, Jeffrey, Kalyani, Rita R, Kooperberg, Charles, Kral, Brian G, Lange, Leslie A, Manichaikul, Ani, Martin, Lisa W, McGarvey, Stephen T, Mitchell, Braxton D, Montasser, May E, Morrison, Alanna C, Naseri, Take, O’Connell, Jeffrey R, Palmer, Nicholette D, Peyser, Patricia A, Psaty, Bruce M, Raffield, Laura M, Redline, Susan, Reiner, Alexander P, Reupena, Muagututi’a Sefuiva, Rice, Kenneth M, Rich, Stephen S, Sitlani, Colleen M, Smith, Jennifer A, Taylor, Kent D, Vasan, Ramachandran S, Willer, Cristen J, Wilson, James G, Yanek, Lisa R, Zhao, Wei, Rotter, Jerome I, Natarajan, Pradeep, Peloso, Gina M, Li, Zilin, and Lin, Xihong
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Biological Sciences ,Genetics ,Biotechnology ,Human Genome ,Generic health relevance ,Good Health and Well Being ,Genome-Wide Association Study ,Whole Genome Sequencing ,Exome Sequencing ,Phenotype ,Lipids ,NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium ,TOPMed Lipids Working Group ,Medical and Health Sciences ,Developmental Biology ,Agricultural biotechnology ,Bioinformatics and computational biology - Abstract
Meta-analysis of whole genome sequencing/whole exome sequencing (WGS/WES) studies provides an attractive solution to the problem of collecting large sample sizes for discovering rare variants associated with complex phenotypes. Existing rare variant meta-analysis approaches are not scalable to biobank-scale WGS data. Here we present MetaSTAAR, a powerful and resource-efficient rare variant meta-analysis framework for large-scale WGS/WES studies. MetaSTAAR accounts for relatedness and population structure, can analyze both quantitative and dichotomous traits and boosts the power of rare variant tests by incorporating multiple variant functional annotations. Through meta-analysis of four lipid traits in 30,138 ancestrally diverse samples from 14 studies of the Trans Omics for Precision Medicine (TOPMed) Program, we show that MetaSTAAR performs rare variant meta-analysis at scale and produces results comparable to using pooled data. Additionally, we identified several conditionally significant rare variant associations with lipid traits. We further demonstrate that MetaSTAAR is scalable to biobank-scale cohorts through meta-analysis of TOPMed WGS data and UK Biobank WES data of ~200,000 samples.
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- 2023
4. A framework for detecting noncoding rare-variant associations of large-scale whole-genome sequencing studies
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Li, Zilin, Li, Xihao, Zhou, Hufeng, Gaynor, Sheila M, Selvaraj, Margaret Sunitha, Arapoglou, Theodore, Quick, Corbin, Liu, Yaowu, Chen, Han, Sun, Ryan, Dey, Rounak, Arnett, Donna K, Auer, Paul L, Bielak, Lawrence F, Bis, Joshua C, Blackwell, Thomas W, Blangero, John, Boerwinkle, Eric, Bowden, Donald W, Brody, Jennifer A, Cade, Brian E, Conomos, Matthew P, Correa, Adolfo, Cupples, L Adrienne, Curran, Joanne E, de Vries, Paul S, Duggirala, Ravindranath, Franceschini, Nora, Freedman, Barry I, Göring, Harald HH, Guo, Xiuqing, Kalyani, Rita R, Kooperberg, Charles, Kral, Brian G, Lange, Leslie A, Lin, Bridget M, Manichaikul, Ani, Manning, Alisa K, Martin, Lisa W, Mathias, Rasika A, Meigs, James B, Mitchell, Braxton D, Montasser, May E, Morrison, Alanna C, Naseri, Take, O’Connell, Jeffrey R, Palmer, Nicholette D, Peyser, Patricia A, Psaty, Bruce M, Raffield, Laura M, Redline, Susan, Reiner, Alexander P, Reupena, Muagututi’a Sefuiva, Rice, Kenneth M, Rich, Stephen S, Smith, Jennifer A, Taylor, Kent D, Taub, Margaret A, Vasan, Ramachandran S, Weeks, Daniel E, Wilson, James G, Yanek, Lisa R, Zhao, Wei, Rotter, Jerome I, Willer, Cristen J, Natarajan, Pradeep, Peloso, Gina M, and Lin, Xihong
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Biological Sciences ,Genetics ,Biotechnology ,Human Genome ,Generic health relevance ,Good Health and Well Being ,Humans ,Genome-Wide Association Study ,Whole Genome Sequencing ,Genome ,Phenotype ,Genetic Variation ,NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium ,TOPMed Lipids Working Group ,Technology ,Medical and Health Sciences ,Developmental Biology ,Biological sciences - Abstract
Large-scale whole-genome sequencing studies have enabled analysis of noncoding rare-variant (RV) associations with complex human diseases and traits. Variant-set analysis is a powerful approach to study RV association. However, existing methods have limited ability in analyzing the noncoding genome. We propose a computationally efficient and robust noncoding RV association detection framework, STAARpipeline, to automatically annotate a whole-genome sequencing study and perform flexible noncoding RV association analysis, including gene-centric analysis and fixed window-based and dynamic window-based non-gene-centric analysis by incorporating variant functional annotations. In gene-centric analysis, STAARpipeline uses STAAR to group noncoding variants based on functional categories of genes and incorporate multiple functional annotations. In non-gene-centric analysis, STAARpipeline uses SCANG-STAAR to incorporate dynamic window sizes and multiple functional annotations. We apply STAARpipeline to identify noncoding RV sets associated with four lipid traits in 21,015 discovery samples from the Trans-Omics for Precision Medicine (TOPMed) program and replicate several of them in an additional 9,123 TOPMed samples. We also analyze five non-lipid TOPMed traits.
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- 2022
5. Genotyping, sequencing and analysis of 140,000 adults from Mexico City
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Ziyatdinov, Andrey, Torres, Jason, Alegre-Díaz, Jesús, Backman, Joshua, Mbatchou, Joelle, Turner, Michael, Gaynor, Sheila M., Joseph, Tyler, Zou, Yuxin, Liu, Daren, Wade, Rachel, Staples, Jeffrey, Panea, Razvan, Popov, Alex, Bai, Xiaodong, Balasubramanian, Suganthi, Habegger, Lukas, Lanche, Rouel, Lopez, Alex, Maxwell, Evan, Jones, Marcus, García-Ortiz, Humberto, Ramirez-Reyes, Raul, Santacruz-Benítez, Rogelio, Nag, Abhishek, Smith, Katherine R., Damask, Amy, Lin, Nan, Paulding, Charles, Reppell, Mark, Zöllner, Sebastian, Jorgenson, Eric, Salerno, William, Petrovski, Slavé, Overton, John, Reid, Jeffrey, Thornton, Timothy A., Abecasis, Gonçalo, Berumen, Jaime, Orozco-Orozco, Lorena, Collins, Rory, Baras, Aris, Hill, Michael R., Emberson, Jonathan R., Marchini, Jonathan, Kuri-Morales, Pablo, and Tapia-Conyer, Roberto
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- 2023
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6. Whole genome sequence association analysis of fasting glucose and fasting insulin levels in diverse cohorts from the NHLBI TOPMed program
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DiCorpo, Daniel, Gaynor, Sheila M, Russell, Emily M, Westerman, Kenneth E, Raffield, Laura M, Majarian, Timothy D, Wu, Peitao, Sarnowski, Chloé, Highland, Heather M, Jackson, Anne, Hasbani, Natalie R, de Vries, Paul S, Brody, Jennifer A, Hidalgo, Bertha, Guo, Xiuqing, Perry, James A, O’Connell, Jeffrey R, Lent, Samantha, Montasser, May E, Cade, Brian E, Jain, Deepti, Wang, Heming, D’Oliveira Albanus, Ricardo, Varshney, Arushi, Yanek, Lisa R, Lange, Leslie, Palmer, Nicholette D, Almeida, Marcio, Peralta, Juan M, Aslibekyan, Stella, Baldridge, Abigail S, Bertoni, Alain G, Bielak, Lawrence F, Chen, Chung-Shiuan, Chen, Yii-Der Ida, Choi, Won Jung, Goodarzi, Mark O, Floyd, James S, Irvin, Marguerite R, Kalyani, Rita R, Kelly, Tanika N, Lee, Seonwook, Liu, Ching-Ti, Loesch, Douglas, Manson, JoAnn E, Minster, Ryan L, Naseri, Take, Pankow, James S, Rasmussen-Torvik, Laura J, Reiner, Alexander P, Reupena, Muagututi’a Sefuiva, Selvin, Elizabeth, Smith, Jennifer A, Weeks, Daniel E, Xu, Huichun, Yao, Jie, Zhao, Wei, Parker, Stephen, Alonso, Alvaro, Arnett, Donna K, Blangero, John, Boerwinkle, Eric, Correa, Adolfo, Cupples, L Adrienne, Curran, Joanne E, Duggirala, Ravindranath, He, Jiang, Heckbert, Susan R, Kardia, Sharon LR, Kim, Ryan W, Kooperberg, Charles, Liu, Simin, Mathias, Rasika A, McGarvey, Stephen T, Mitchell, Braxton D, Morrison, Alanna C, Peyser, Patricia A, Psaty, Bruce M, Redline, Susan, Shuldiner, Alan R, Taylor, Kent D, Vasan, Ramachandran S, Viaud-Martinez, Karine A, Florez, Jose C, Wilson, James G, Sladek, Robert, Rich, Stephen S, Rotter, Jerome I, Lin, Xihong, Dupuis, Josée, Meigs, James B, Wessel, Jennifer, and Manning, Alisa K
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Biological Sciences ,Genetics ,Human Genome ,Biotechnology ,Diabetes ,2.1 Biological and endogenous factors ,Aetiology ,Metabolic and endocrine ,Good Health and Well Being ,Diabetes Mellitus ,Type 2 ,Fasting ,Glucose ,Humans ,Insulin ,National Heart ,Lung ,and Blood Institute (U.S.) ,Nerve Tissue Proteins ,Polymorphism ,Single Nucleotide ,Precision Medicine ,Receptors ,Immunologic ,United States ,Biological sciences ,Biomedical and clinical sciences - Abstract
The genetic determinants of fasting glucose (FG) and fasting insulin (FI) have been studied mostly through genome arrays, resulting in over 100 associated variants. We extended this work with high-coverage whole genome sequencing analyses from fifteen cohorts in NHLBI's Trans-Omics for Precision Medicine (TOPMed) program. Over 23,000 non-diabetic individuals from five race-ethnicities/populations (African, Asian, European, Hispanic and Samoan) were included. Eight variants were significantly associated with FG or FI across previously identified regions MTNR1B, G6PC2, GCK, GCKR and FOXA2. We additionally characterize suggestive associations with FG or FI near previously identified SLC30A8, TCF7L2, and ADCY5 regions as well as APOB, PTPRT, and ROBO1. Functional annotation resources including the Diabetes Epigenome Atlas were compiled for each signal (chromatin states, annotation principal components, and others) to elucidate variant-to-function hypotheses. We provide a catalog of nucleotide-resolution genomic variation spanning intergenic and intronic regions creating a foundation for future sequencing-based investigations of glycemic traits.
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- 2022
7. Author Correction: Genotyping, sequencing and analysis of 140,000 adults from Mexico City
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Ziyatdinov, Andrey, Torres, Jason, Alegre-Díaz, Jesús, Backman, Joshua, Mbatchou, Joelle, Turner, Michael, Gaynor, Sheila M., Joseph, Tyler, Zou, Yuxin, Liu, Daren, Wade, Rachel, Staples, Jeffrey, Panea, Razvan, Popov, Alex, Bai, Xiaodong, Balasubramanian, Suganthi, Habegger, Lukas, Lanche, Rouel, Lopez, Alex, Maxwell, Evan, Jones, Marcus, García-Ortiz, Humberto, Ramirez-Reyes, Raul, Santacruz-Benítez, Rogelio, Nag, Abhishek, Smith, Katherine R., Damask, Amy, Lin, Nan, Paulding, Charles, Reppell, Mark, Zöllner, Sebastian, Jorgenson, Eric, Salerno, William, Petrovski, Slavé, Overton, John, Reid, Jeffrey, Thornton, Timothy A., Abecasis, Gonçalo, Berumen, Jaime, Orozco-Orozco, Lorena, Collins, Rory, Baras, Aris, Hill, Michael R., Emberson, Jonathan R., Marchini, Jonathan, Kuri-Morales, Pablo, and Tapia-Conyer, Roberto
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- 2024
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8. Dynamic incorporation of multiple in silico functional annotations empowers rare variant association analysis of large whole-genome sequencing studies at scale.
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Li, Xihao, Li, Zilin, Zhou, Hufeng, Gaynor, Sheila M, Liu, Yaowu, Chen, Han, Sun, Ryan, Dey, Rounak, Arnett, Donna K, Aslibekyan, Stella, Ballantyne, Christie M, Bielak, Lawrence F, Blangero, John, Boerwinkle, Eric, Bowden, Donald W, Broome, Jai G, Conomos, Matthew P, Correa, Adolfo, Cupples, L Adrienne, Curran, Joanne E, Freedman, Barry I, Guo, Xiuqing, Hindy, George, Irvin, Marguerite R, Kardia, Sharon LR, Kathiresan, Sekar, Khan, Alyna T, Kooperberg, Charles L, Laurie, Cathy C, Liu, X Shirley, Mahaney, Michael C, Manichaikul, Ani W, Martin, Lisa W, Mathias, Rasika A, McGarvey, Stephen T, Mitchell, Braxton D, Montasser, May E, Moore, Jill E, Morrison, Alanna C, O'Connell, Jeffrey R, Palmer, Nicholette D, Pampana, Akhil, Peralta, Juan M, Peyser, Patricia A, Psaty, Bruce M, Redline, Susan, Rice, Kenneth M, Rich, Stephen S, Smith, Jennifer A, Tiwari, Hemant K, Tsai, Michael Y, Vasan, Ramachandran S, Wang, Fei Fei, Weeks, Daniel E, Weng, Zhiping, Wilson, James G, Yanek, Lisa R, NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium, TOPMed Lipids Working Group, Neale, Benjamin M, Sunyaev, Shamil R, Abecasis, Gonçalo R, Rotter, Jerome I, Willer, Cristen J, Peloso, Gina M, Natarajan, Pradeep, and Lin, Xihong
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NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium ,TOPMed Lipids Working Group ,Humans ,Genetic Predisposition to Disease ,Phenotype ,Genome ,Models ,Genetic ,Computer Simulation ,Cholesterol ,LDL ,Genetic Variation ,Genome-Wide Association Study ,Molecular Sequence Annotation ,Whole Genome Sequencing ,Models ,Genetic ,Cholesterol ,LDL ,Biological Sciences ,Medical and Health Sciences ,Developmental Biology - Abstract
Large-scale whole-genome sequencing studies have enabled the analysis of rare variants (RVs) associated with complex phenotypes. Commonly used RV association tests have limited scope to leverage variant functions. We propose STAAR (variant-set test for association using annotation information), a scalable and powerful RV association test method that effectively incorporates both variant categories and multiple complementary annotations using a dynamic weighting scheme. For the latter, we introduce 'annotation principal components', multidimensional summaries of in silico variant annotations. STAAR accounts for population structure and relatedness and is scalable for analyzing very large cohort and biobank whole-genome sequencing studies of continuous and dichotomous traits. We applied STAAR to identify RVs associated with four lipid traits in 12,316 discovery and 17,822 replication samples from the Trans-Omics for Precision Medicine Program. We discovered and replicated new RV associations, including disruptive missense RVs of NPC1L1 and an intergenic region near APOC1P1 associated with low-density lipoprotein cholesterol.
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- 2020
9. Allelic Heterogeneity at the CRP Locus Identified by Whole-Genome Sequencing in Multi-ancestry Cohorts
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Raffield, Laura M, Iyengar, Apoorva K, Wang, Biqi, Gaynor, Sheila M, Spracklen, Cassandra N, Zhong, Xue, Kowalski, Madeline H, Salimi, Shabnam, Polfus, Linda M, Benjamin, Emelia J, Bis, Joshua C, Bowler, Russell, Cade, Brian E, Choi, Won Jung, Comellas, Alejandro P, Correa, Adolfo, Cruz, Pedro, Doddapaneni, Harsha, Durda, Peter, Gogarten, Stephanie M, Jain, Deepti, Kim, Ryan W, Kral, Brian G, Lange, Leslie A, Larson, Martin G, Laurie, Cecelia, Lee, Jiwon, Lee, Seonwook, Lewis, Joshua P, Metcalf, Ginger A, Mitchell, Braxton D, Momin, Zeineen, Muzny, Donna M, Pankratz, Nathan, Park, Cheol Joo, Rich, Stephen S, Rotter, Jerome I, Ryan, Kathleen, Seo, Daekwan, Tracy, Russell P, Viaud-Martinez, Karine A, Yanek, Lisa R, Zhao, Lue Ping, Lin, Xihong, Li, Bingshan, Li, Yun, Dupuis, Josée, Reiner, Alexander P, Mohlke, Karen L, Auer, Paul L, Group, TOPMed Inflammation Working, and Consortium, NHLBI Trans-Omics for Precision Medicine
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Human Genome ,Clinical Research ,Biotechnology ,Genetics ,Aetiology ,2.1 Biological and endogenous factors ,Good Health and Well Being ,Asian People ,Black People ,C-Reactive Protein ,Cohort Studies ,Gene Frequency ,Genetic Predisposition to Disease ,Genome-Wide Association Study ,Humans ,Linkage Disequilibrium ,Polymorphism ,Single Nucleotide ,White People ,Whole Genome Sequencing ,TOPMed Inflammation Working Group ,NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium ,c-reactive protein ,whole-genome sequencing ,Biological Sciences ,Medical and Health Sciences ,Genetics & Heredity - Abstract
Whole-genome sequencing (WGS) can improve assessment of low-frequency and rare variants, particularly in non-European populations that have been underrepresented in existing genomic studies. The genetic determinants of C-reactive protein (CRP), a biomarker of chronic inflammation, have been extensively studied, with existing genome-wide association studies (GWASs) conducted in >200,000 individuals of European ancestry. In order to discover novel loci associated with CRP levels, we examined a multi-ancestry population (n = 23,279) with WGS (∼38× coverage) from the Trans-Omics for Precision Medicine (TOPMed) program. We found evidence for eight distinct associations at the CRP locus, including two variants that have not been identified previously (rs11265259 and rs181704186), both of which are non-coding and more common in individuals of African ancestry (∼10% and ∼1% minor allele frequency, respectively, and rare or monomorphic in 1000 Genomes populations of East Asian, South Asian, and European ancestry). We show that the minor (G) allele of rs181704186 is associated with lower CRP levels and decreased transcriptional activity and protein binding in vitro, providing a plausible molecular mechanism for this African ancestry-specific signal. The individuals homozygous for rs181704186-G have a mean CRP level of 0.23 mg/L, in contrast to individuals heterozygous for rs181704186 with mean CRP of 2.97 mg/L and major allele homozygotes with mean CRP of 4.11 mg/L. This study demonstrates the utility of WGS in multi-ethnic populations to drive discovery of complex trait associations of large effect and to identify functional alleles in noncoding regulatory regions.
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- 2020
10. Connectivity in eQTL networks dictates reproducibility and genomic properties
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Gaynor, Sheila M., Fagny, Maud, Lin, Xihong, Platig, John, and Quackenbush, John
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- 2022
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11. Whole genome sequencing based analysis of inflammation biomarkers in the Trans-Omics for Precision Medicine (TOPMed) consortium.
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Jiang, Min-Zhi, Gaynor, Sheila M, Li, Xihao, Buren, Eric Van, Stilp, Adrienne, Buth, Erin, Wang, Fei Fei, Manansala, Regina, Gogarten, Stephanie M, Li, Zilin, Polfus, Linda M, Salimi, Shabnam, Bis, Joshua C, Pankratz, Nathan, Yanek, Lisa R, Durda, Peter, Tracy, Russell P, Rich, Stephen S, Rotter, Jerome I, and Mitchell, Braxton D
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- 2024
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12. Identifying US County-level characteristics associated with high COVID-19 burden
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Li, Daniel, Gaynor, Sheila M., Quick, Corbin, Chen, Jarvis T., Stephenson, Briana J. K., Coull, Brent A., and Lin, Xihong
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- 2021
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13. Investigating gene-diet interactions impacting the association between macronutrient intake and glycemic traits
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Westerman, Kenneth E., primary, Walker, Maura E., primary, Gaynor, Sheila M., primary, Wessel, Jennifer, primary, DiCorpo, Daniel, primary, Ma, Jiantao, primary, Alonso, Alvaro, primary, Aslibekyan, Stella, primary, Baldridge, Abigail S., primary, Bertoni, Alain G., primary, Biggs, Mary L., primary, Brody, Jennifer A., primary, Chen, Yii-Der Ida, primary, Dupuis, Josee, primary, Goodarzi, Mark O., primary, Guo, Xiuqing, primary, Hasbani, Natalie R., primary, Heath, Adam, primary, Hidalgo, Bertha, primary, Irvin, Marguerite R., primary, Johnson, W. Craig, primary, Kalyani, Rita R., primary, Lange, Leslie, primary, Lemaitre, Rozenn N., primary, Liu, Ching-Ti, primary, Liu, Simin, primary, Moon, Jee-Young, primary, Nassir, Rami, primary, Pankow, James S., primary, Pettinger, Mary, primary, Raffield, Laura, primary, Rasmussen-Torvik, Laura J., primary, Selvin, Elizabeth, primary, Senn, Mackenzie K., primary, Shadyab, Aladdin H., primary, Smith, Albert V., primary, Smith, Nicholas L., primary, Steffen, Lyn, primary, Talegakwar, Sameera, primary, Taylor, Kent D., primary, Vries, Paul S. de, primary, Wilson, James G., primary, Wood, Alexis C., primary, Yanek, Lisa R., primary, Yao, Jie, primary, Zheng, Yinan, primary, Boerwinkle, Eric, primary, Morrison, Alanna C., primary, Fornage, Miriam, primary, Russell, Tracy P., primary, Psaty, Bruce M., primary, Levy, Daniel, primary, Heard-Costa, Nancy L., primary, Ramachandran, Vasan S., primary, Mathias, Rasika A., primary, Arnett, Donna K., primary, Kaplan, Robert, primary, North, Kari E., primary, Correa, Adolfo, primary, Carson, April, primary, Rotter, Jerome I., primary, Rich, Stephen S., primary, Manson, JoAnn E., primary, Reiner, Alexander P., primary, Kooperberg, Charles, primary, Florez, Jose C., primary, Meigs, James B., primary, Merino, Jordi, primary, Tobias, Deirdre K., primary, Chen, Han, primary, and Manning, Alisa K., primary
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- 2023
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14. Comparison of Comorbidity Collection Methods
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Kallogjeri, Dorina, Gaynor, Sheila M., Piccirillo, Marilyn L., Jean, Raymond A., Spitznagel, Edward L., Jr., and Piccirillo, Jay F.
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- 2014
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15. Investigating gene-diet interactions impacting the association between macronutrient intake and glycemic traits
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Westerman, Kenneth E., primary, Walker, Maura E., additional, Gaynor, Sheila M., additional, Wessel, Jennifer, additional, DiCorpo, Daniel, additional, Ma, Jiantao, additional, Alonso, Alvaro, additional, Aslibekyan, Stella, additional, Baldridge, Abigail S., additional, Bertoni, Alain G., additional, Biggs, Mary L., additional, Brody, Jennifer A., additional, Chen, Yii-Der Ida, additional, Dupuis, Joseé, additional, Goodarzi, Mark O., additional, Guo, Xiuqing, additional, Hasbani, Natalie R., additional, Heath, Adam, additional, Hidalgo, Bertha, additional, Irvin, Marguerite R., additional, Johnson, W. Craig, additional, Kalyani, Rita R., additional, Lange, Leslie, additional, Lemaitre, Rozenn N., additional, Liu, Ching-Ti, additional, Liu, Simin, additional, Moon, Jee-Young, additional, Nassir, Rami, additional, Pankow, James S., additional, Pettinger, Mary, additional, Raffield, Laura, additional, Rasmussen-Torvik, Laura J., additional, Selvin, Elizabeth, additional, Senn, Mackenzie K., additional, Shadyab, Aladdin H., additional, Smith, Albert V., additional, Smith, Nicholas L., additional, Steffen, Lyn, additional, Talegakwar, Sameera, additional, Taylor, Kent D., additional, Vries, Paul S. de, additional, Wilson, James G., additional, Wood, Alexis C., additional, Yanek, Lisa R., additional, Yao, Jie, additional, Zheng, Yinan, additional, Boerwinkle, Eric, additional, Morrison, Alanna C., additional, Fornage, Miriam, additional, Russell, Tracy P., additional, Psaty, Bruce M., additional, Levy, Daniel, additional, Head-Costa, Nancy L., additional, Ramachandran, Vasan S., additional, Mathias, Rasika A., additional, Arnett, Donna K., additional, Kaplan, Robert, additional, North, Kari E., additional, Correa, Adolfo, additional, Carson, April, additional, Rotter, Jerome, additional, Rich, Stephen S., additional, Manson, JoAnn E., additional, Reiner, Alexander P., additional, Kooperberg, Charles, additional, Florez, Jose C., additional, Meigs, James B., additional, Merino, Jordi, additional, Tobias, Deirdre K., additional, Chen, Han, additional, and Manning, Alisa K., additional
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- 2022
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16. Leveraging a surrogate outcome to improve inference on a partially missing target outcome.
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McCaw, Zachary R., Gaynor, Sheila M., Sun, Ryan, and Lin, Xihong
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MISSING data (Statistics) , *LOCUS (Genetics) , *FALSE positive error , *CONDITIONAL expectations , *REGRESSION analysis , *EXPECTATION-maximization algorithms - Abstract
Sample sizes vary substantially across tissues in the Genotype‐Tissue Expression (GTEx) project, where considerably fewer samples are available from certain inaccessible tissues, such as the substantia nigra (SSN), than from accessible tissues, such as blood. This severely limits power for identifying tissue‐specific expression quantitative trait loci (eQTL) in undersampled tissues. Here we propose Surrogate Phenotype Regression Analysis (Spray) for leveraging information from a correlated surrogate outcome (eg, expression in blood) to improve inference on a partially missing target outcome (eg, expression in SSN). Rather than regarding the surrogate outcome as a proxy for the target outcome, Spray jointly models the target and surrogate outcomes within a bivariate regression framework. Unobserved values of either outcome are treated as missing data. We describe and implement an expectation conditional maximization algorithm for performing estimation in the presence of bilateral outcome missingness. Spray estimates the same association parameter estimated by standard eQTL mapping and controls the type I error even when the target and surrogate outcomes are truly uncorrelated. We demonstrate analytically and empirically, using simulations and GTEx data, that in comparison with marginally modeling the target outcome, jointly modeling the target and surrogate outcomes increases estimation precision and improves power. [ABSTRACT FROM AUTHOR]
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- 2023
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17. STAAR workflow: a cloud-based workflow for scalable and reproducible rare variant analysis
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Gaynor, Sheila M, primary, Westerman, Kenneth E, additional, Ackovic, Lea L, additional, Li, Xihao, additional, Li, Zilin, additional, Manning, Alisa K, additional, Philippakis, Anthony, additional, and Lin, Xihong, additional
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- 2022
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18. Leveraging a surrogate outcome to improve inference on a partially missing target outcome
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McCaw, Zachary R., primary, Gaynor, Sheila M., additional, Sun, Ryan, additional, and Lin, Xihong, additional
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- 2022
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19. COVID-19 Spread Mapper: a multi-resolution, unified framework and open-source tool
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Shi, Andy, primary, Gaynor, Sheila M, additional, Dey, Rounak, additional, Zhang, Haoyu, additional, Quick, Corbin, additional, and Lin, Xihong, additional
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- 2022
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20. STAAR Workflow: A cloud-based workflow for scalable and reproducible rare variant analysis
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Gaynor, Sheila M., primary, Westerman, Kenneth E., additional, Ackovic, Lea L., additional, Li, Xihao, additional, Li, Zilin, additional, Manning, Alisa K., additional, Philippakis, Anthony, additional, and Lin, Xihong, additional
- Published
- 2021
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21. Additional file 1 of Identifying US County-level characteristics associated with high COVID-19 burden
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Li, Daniel, Gaynor, Sheila M., Quick, Corbin, Chen, Jarvis T., Stephenson, Briana J. K., Coull, Brent A., and Lin, Xihong
- Abstract
Additional file 1: Figure 1. Covariate correlations. Heatmap of Spearman correlations between demographic, racial, socioeconomic, and health covariates. Figure 2. Demographic, racial, and socioeconomic covariate heatmaps. Demographic (yellow, aqua, blue), racial (pink, magenta, purple), and socioeconomic (red, orange) covariate heatmaps. Figure 3. Health covariate heatmaps. Health (white, blue, purple) covariate. Figure 4. Observed and estimated case, death, and case fatality rates. Observed cumulative case fatality rates through 12/21/2020 for all 3,142 US counties. Figure 5. Univariable and multivariable case fatality rate relative risks. Univariable and multivariable relative risks of demographic, socioeconomic, and health comorbidity factors on cumulative COVID-19 case fatality rates through 12/21/20 additionally adjust for state fixed effects and county random effects. Boxes are point estimates and error bars mark 95% confidence intervals. Relative risks are for a one standard deviation increase in a variable (see Additional Table 1), except for the metro/nonmetro categorical variable. Figure 6. Weekly case fatality rates. (A) Line plots of US national weekly case rates and death rates lagged by one week. Solid lines mark similar peaks between weekly case rates and lagged death rates. (B) Heatmaps of county case fatality rates by season. Table 1. List of county-level variables, transformations, and sources. Table 2. Multivariable weekly case fatality rates. Relative risks of county-level variables on weekly case fatality rates (39 repeated measurements per county) by season from 3/23/20-12/21/20 using a one-week and three-week lag for deaths. All results are from a single model that controls for state effects, US census region-specific time varying trends, and additional county overdispersion. Parentheses indicate 95% confidence intervals. Bold indicates confidence interval does not contain 1. Relative risks are for a one standard deviation increase in a variable, except for the metro/nonmetro categorical variable.
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- 2021
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22. Multi-resolution characterization of the COVID-19 pandemic: A unified framework and open-source tool
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Shi, Andy, primary, Gaynor, Sheila M., additional, Quick, Corbin, additional, and Lin, Xihong, additional
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- 2021
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23. Identifying US Counties with High Cumulative COVID-19 Burden and Their Characteristics
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Li, Daniel, primary, Gaynor, Sheila M., additional, Quick, Corbin, additional, Chen, Jarvis T., additional, Stephenson, Briana J.K., additional, Coull, Brent A., additional, and Lin, Xihong, additional
- Published
- 2020
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24. Leveraging a surrogate outcome to improve inference on a partially missing target outcome
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McCaw, Zachary R., primary, Gaynor, Sheila M., additional, Sun, Ryan, additional, and Lin, Xihong, additional
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- 2020
- Full Text
- View/download PDF
25. Phenotypic profile clustering pragmatically identifies diagnostically and mechanistically informative subgroups of chronic pain patients
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Gaynor, Sheila M., primary, Bortsov, Andrey, additional, Bair, Eric, additional, Fillingim, Roger B., additional, Greenspan, Joel D., additional, Ohrbach, Richard, additional, Diatchenko, Luda, additional, Nackley, Andrea, additional, Tchivileva, Inna E., additional, Whitehead, William, additional, Alonso, Aurelio A., additional, Buchheit, Thomas E., additional, Boortz-Marx, Richard L., additional, Liedtke, Wolfgang, additional, Park, Jongbae J., additional, Maixner, William, additional, and Smith, Shad B., additional
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- 2020
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26. Spectral clustering in regression-based biological networks
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Gaynor, Sheila M., primary, Lin, Xihong, additional, and Quackenbush, John, additional
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- 2019
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27. Identification of differentially expressed gene sets using the Generalized Berk–Jones statistic
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Gaynor, Sheila M, primary, Sun, Ryan, additional, Lin, Xihong, additional, and Quackenbush, John, additional
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- 2019
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28. Connectivity of variants in eQTL networks dictates reproducibility and functionality
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Gaynor, Sheila M., primary, Fagny, Maud, additional, Lin, Xihong, additional, Platig, John, additional, and Quackenbush, John, additional
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- 2019
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29. Phenotypic profile clustering pragmatically identifies diagnostically and mechanistically informative subgroups of chronic pain patients.
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Gaynor, Sheila M., Bortsov, Andrey, Bair, Eric, Fillingim, Roger B., Greenspan, Joel D., Ohrbach, Richard, Diatchenko, Luda, Nackley, Andrea, Tchivileva, Inna E., Whitehead, William, Alonso, Aurelio A., Buchheit, Thomas E., Boortz-Marx, Richard L., Liedtke, Wolfgang, Park, Jongbae J., Maixner, William, and Smith, Shad B.
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CHRONIC pain , *TEMPOROMANDIBULAR disorders , *PHENOTYPES , *PAIN management , *PSYCHOLOGICAL distress , *PAIN threshold , *RESEARCH , *RESEARCH methodology , *FACIAL pain , *MEDICAL cooperation , *EVALUATION research , *COMPARATIVE studies , *RESEARCH funding , *CLUSTER analysis (Statistics) , *ANXIETY disorders , *LONGITUDINAL method - Abstract
Abstract: Traditional classification and prognostic approaches for chronic pain conditions focus primarily on anatomically based clinical characteristics not based on underlying biopsychosocial factors contributing to perception of clinical pain and future pain trajectories. Using a supervised clustering approach in a cohort of temporomandibular disorder cases and controls from the Orofacial Pain: Prospective Evaluation and Risk Assessment study, we recently developed and validated a rapid algorithm (ROPA) to pragmatically classify chronic pain patients into 3 groups that differed in clinical pain report, biopsychosocial profiles, functional limitations, and comorbid conditions. The present aim was to examine the generalizability of this clustering procedure in 2 additional cohorts: a cohort of patients with chronic overlapping pain conditions (Complex Persistent Pain Conditions study) and a real-world clinical population of patients seeking treatment at duke innovative pain therapies. In each cohort, we applied a ROPA for cluster prediction, which requires only 4 input variables: pressure pain threshold and anxiety, depression, and somatization scales. In both complex persistent pain condition and duke innovative pain therapies, we distinguished 3 clusters, including one with more severe clinical characteristics and psychological distress. We observed strong concordance with observed cluster solutions, indicating the ROPA method allows for reliable subtyping of clinical populations with minimal patient burden. The ROPA clustering algorithm represents a rapid and valid stratification tool independent of anatomic diagnosis. ROPA holds promise in classifying patients based on pathophysiological mechanisms rather than structural or anatomical diagnoses. As such, this method of classifying patients will facilitate personalized pain medicine for patients with chronic pain. [ABSTRACT FROM AUTHOR]- Published
- 2021
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30. Association of Hormonal Contraceptive Use with Headache and Temporomandibular Pain: The OPPERA Study.
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Gaynor, Sheila M., Fillingim, Roger B., Zolnoun, Denniz A., Greenspan, Joel D., Maixner, William, Slade, Gary D., Ohrbach, Richard, and Bair, Eric
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CONTRACEPTION ,CONFIDENCE intervals ,QUESTIONNAIRES ,DESCRIPTIVE statistics ,HEADACHE ,TEMPOROMANDIBULAR disorders ,ODDS ratio ,LONGITUDINAL method ,SYMPTOMS - Abstract
Aims: To determine the relationship between hormonal contraceptive (HC) use and painful symptoms, particularly those associated with headache and painful temporomandibular disorders (TMD). Methods: Data from the Orofacial Pain: Prospective Evaluation and Risk Assessment (OPPERA) prospective cohort study were used. During the 2.5-year median follow-up period, quarterly health update (QHU) questionnaires were completed by 1,475 women aged 18 to 44 years who did not have TMD, menopause, hysterectomy, or hormone replacement therapy use at baseline. QHU questionnaires evaluated HC use, symptoms of headache and TMD, and pain of ≥ 1 day duration in 12 body regions. Participants who developed TMD symptoms were examined to classify clinical TMD. Headache symptoms were classified based on the International Classification of Headache Disorders 3 (ICHD-3). Associations between HC use and pain symptoms were analyzed using generalized estimating equations and Cox models. Results: HC use, endorsed in 33.7% of QHU questionnaires, was significantly associated with concurrent symptoms of TMD (odds ratio [OR]: 1.20, 95% CI: 1.06 to 1.35) and headache (OR: 1.26, 95% CI: 1.11 to 1.43). HC use was also significantly associated with concurrent pain of ≥ 1 day duration in the head (OR: 1.38, 95% CI: 1.16 to 1.63), face (OR: 1.44, 95% CI: 1.13 to 1.83), and legs (OR: 1.22, 95% CI: 1.01 to 1.47), but not elsewhere. Initiation of HC use was associated with increased odds of subsequent TMD symptoms (OR: 1.37, 95% CI: 1.13 to 1.66) and pain of ≥ 1 day in the head (OR: 1.37, 95% CI: 1.01 to 1.85). Discontinuing HC use was associated with lower odds of subsequent headache (OR: 0.82, 95% CI: 0.67 to 0.99). HC use was not significantly associated with subsequent onset of examiner-classified TMD. Conclusion: These findings imply that HC influences craniofacial pain, and that this pain diminishes after cessation of HC use. [ABSTRACT FROM AUTHOR]
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- 2021
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31. Mediation analysis for common binary outcomes
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Gaynor, Sheila M., primary, Schwartz, Joel, additional, and Lin, Xihong, additional
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- 2018
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32. Mediation analysis for common binary outcomes.
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Gaynor, Sheila M., Schwartz, Joel, and Lin, Xihong
- Abstract
Mediation analysis provides an attractive causal inference framework to decompose the total effect of an exposure on an outcome into natural direct effects and natural indirect effects acting through a mediator. For binary outcomes, mediation analysis methods have been developed using logistic regression when the binary outcome is rare. These methods will not hold in practice when a disease is common. In this paper, we develop mediation analysis methods that relax the rare disease assumption when using logistic regression. We calculate the natural direct and indirect effects for common diseases by exploiting the relationship between logit and probit models. Specifically, we derive closed-form expressions for the natural direct and indirect effects on the odds ratio scale. Mediation models for both continuous and binary mediators are considered. We demonstrate through simulation that the proposed method performs well for common binary outcomes. We apply the proposed methods to analyze the Normative Aging Study to identify DNA methylation sites that are mediators of smoking behavior on the outcome of obstructed airway function. [ABSTRACT FROM AUTHOR]
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- 2019
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33. Whole Genome Sequencing Based Analysis of Inflammation Biomarkers in the Trans-Omics for Precision Medicine (TOPMed) Consortium.
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Jiang MZ, Gaynor SM, Li X, Van Buren E, Stilp A, Buth E, Wang FF, Manansala R, Gogarten SM, Li Z, Polfus LM, Salimi S, Bis JC, Pankratz N, Yanek LR, Durda P, Tracy RP, Rich SS, Rotter JI, Mitchell BD, Lewis JP, Psaty BM, Pratte KA, Silverman EK, Kaplan RC, Avery C, North K, Mathias RA, Faraday N, Lin H, Wang B, Carson AP, Norwood AF, Gibbs RA, Kooperberg C, Lundin J, Peters U, Dupuis J, Hou L, Fornage M, Benjamin EJ, Reiner AP, Bowler RP, Lin X, Auer PL, and Raffield LM
- Abstract
Inflammation biomarkers can provide valuable insight into the role of inflammatory processes in many diseases and conditions. Sequencing based analyses of such biomarkers can also serve as an exemplar of the genetic architecture of quantitative traits. To evaluate the biological insight, which can be provided by a multi-ancestry, whole-genome based association study, we performed a comprehensive analysis of 21 inflammation biomarkers from up to 38,465 individuals with whole-genome sequencing from the Trans-Omics for Precision Medicine (TOPMed) program. We identified 22 distinct single-variant associations across 6 traits - E-selectin, intercellular adhesion molecule 1, interleukin-6, lipoprotein-associated phospholipase A2 activity and mass, and P-selectin - that remained significant after conditioning on previously identified associations for these inflammatory biomarkers. We further expanded upon known biomarker associations by pairing the single-variant analysis with a rare variant set-based analysis that further identified 19 significant rare variant set-based associations with 5 traits. These signals were distinct from both significant single variant association signals within TOPMed and genetic signals observed in prior studies, demonstrating the complementary value of performing both single and rare variant analyses when analyzing quantitative traits. We also confirm several previously reported signals from semi-quantitative proteomics platforms. Many of these signals demonstrate the extensive allelic heterogeneity and ancestry-differentiated variant-trait associations common for inflammation biomarkers, a characteristic we hypothesize will be increasingly observed with well-powered, large-scale analyses of complex traits.
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- 2023
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34. Identifying US Counties with High Cumulative COVID-19 Burden and Their Characteristics.
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Li D, Gaynor SM, Quick C, Chen JT, Stephenson BJK, Coull BA, and Lin X
- Abstract
Identifying areas with high COVID-19 burden and their characteristics can help improve vaccine distribution and uptake, reduce burdens on health care systems, and allow for better allocation of public health intervention resources. Synthesizing data from various government and nonprofit institutions of 3,142 United States (US) counties as of 12/21/2020, we studied county-level characteristics that are associated with cumulative case and death rates using regression analyses. Our results showed counties that are more rural, counties with more White/non-White segregation, and counties with higher percentages of people of color, in poverty, with no high school diploma, and with medical comorbidities such as diabetes and hypertension are associated with higher cumulative COVID-19 case and death rates. We identify the hardest hit counties in US using model-estimated case and death rates, which provide more reliable estimates of cumulative COVID-19 burdens than those using raw observed county-specific rates. Identification of counties with high disease burdens and understanding the characteristics of these counties can help inform policies to improve vaccine distribution, deployment and uptake, prevent overwhelming health care systems, and enhance testing access, personal protection equipment access, and other resource allocation efforts, all of which can help save more lives for vulnerable communities., Significance Statement: We found counties that are more rural, counties with more White/non-White segregation, and counties with higher percentages of people of color, in poverty, with no high school diploma, and with medical comorbidities such as diabetes and hypertension are associated with higher cumulative COVID-19 case and death rates. We also identified individual counties with high cumulative COVID-19 burden. Identification of counties with high disease burdens and understanding the characteristics of these counties can help inform policies to improve vaccine distribution, deployment and uptake, prevent overwhelming health care systems, and enhance testing access, personal protection equipment access, and other resource allocation efforts, all of which can help save more lives for vulnerable communities.
- Published
- 2021
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