Dissecting the polygenic basis of atherosclerosis via disease-associated cell state signatures
暂无分享,去创建一个
Pashupati P. Mishra | T. Lehtimäki | T. Lönnberg | S. Ylä-Herttuala | M. Kaikkonen | J. Laakkonen | H. Liljenbäck | H. Niskanen | Maleeha Maria | E. Aavik | A. Roivainen | T. Örd | J. Virta | M. Kiema | S. Palani | K. Õunap | Aarthi Ravindran | V. Nurminen | Pierre R. Moreau | P. Moreau
[1] C. Hoggart,et al. PRSet: Pathway-based polygenic risk score analyses and software , 2023, PLoS genetics.
[2] Jacob C. Ulirsch,et al. FinnGen provides genetic insights from a well-phenotyped isolated population , 2023, Nature.
[3] Xiao Lin,et al. SOX4 is a novel phenotypic regulator of endothelial cells in atherosclerosis revealed by single-cell analysis , 2022, Journal of advanced research.
[4] Yan V. Sun,et al. Large-scale genome-wide association study of coronary artery disease in genetically diverse populations , 2022, Nature Medicine.
[5] Jacob C. Ulirsch,et al. Discovery and systematic characterization of risk variants and genes for coronary artery disease in over a million participants , 2021, Nature Genetics.
[6] Clint L. Miller,et al. Intersecting single-cell transcriptomics and genome-wide association studies identifies crucial cell populations and candidate genes for atherosclerosis , 2021, medRxiv.
[7] P. Natarajan,et al. Clinical utility of polygenic risk scores for coronary artery disease , 2021, Nature Reviews Cardiology.
[8] Kyle J. Gaulton,et al. A single-cell atlas of chromatin accessibility in the human genome , 2021, Cell.
[9] S. Teichmann,et al. Differential abundance testing on single-cell data using k-nearest neighbor graphs , 2021, Nature Biotechnology.
[10] J. Božić,et al. Role of Matrix Gla Protein in the Complex Network of Coronary Artery Disease: A Comprehensive Review , 2021, Life.
[11] K. Hao,et al. Transcriptome wide association study of coronary artery disease identifies novel susceptibility genes , 2021, bioRxiv.
[12] C. Lindskog,et al. A single–cell type transcriptomics map of human tissues , 2021, Science Advances.
[13] T. Lönnberg,et al. Single-Cell Epigenomics and Functional Fine-Mapping of Atherosclerosis GWAS Loci , 2021, Circulation research.
[14] Y. E. Chen,et al. Single-Cell Transcriptomics Reveals Endothelial Plasticity During Diabetic Atherogenesis , 2021, Frontiers in Cell and Developmental Biology.
[15] S. Ylä-Herttuala,et al. Profiling of Primary and Mature miRNA Expression in Atherosclerosis-Associated Cell Types , 2021, Arteriosclerosis, thrombosis, and vascular biology.
[16] Yan V. Sun,et al. Genome-wide analysis identifies novel susceptibility loci for myocardial infarction. , 2021, European heart journal.
[17] A. Blomme,et al. Regulation of lipid metabolism by the unfolded protein response , 2021, Journal of cellular and molecular medicine.
[18] Ellen M. Schmidt,et al. Open Targets Genetics: An open approach to systematically prioritize causal variants and genes at all published human GWAS trait-associated loci , 2020, bioRxiv.
[19] D. Wolf,et al. Heterogeneity of T Cells in Atherosclerosis Defined by Single-Cell RNA-Sequencing and Cytometry by Time of Flight , 2020, Arteriosclerosis, thrombosis, and vascular biology.
[20] H. Aburatani,et al. Population-specific and trans-ancestry genome-wide analyses identify distinct and shared genetic risk loci for coronary artery disease , 2020, Nature Genetics.
[21] C. Glass,et al. Microanatomy of the Human Atherosclerotic Plaque by Single-Cell Transcriptomics , 2020, Circulation research.
[22] Mingyao Li,et al. Single-Cell Genomics Reveals a Novel Cell State During Smooth Muscle Cell Phenotypic Switching and Potential Therapeutic Targets for Atherosclerosis in Mouse and Human , 2020, Circulation.
[23] Corey M. Williams,et al. Stem Cell Pluripotency Genes Klf4 and Oct4 Regulate Complex SMC Phenotypic Changes Critical in Late-Stage Atherosclerotic Lesion Pathogenesis , 2020, Circulation.
[24] M. Cybulsky,et al. Meta-Analysis of Leukocyte Diversity in Atherosclerotic Mouse Aortas , 2020, Circulation research.
[25] H. Jo,et al. Endothelial Reprogramming by Disturbed Flow Revealed by Single-Cell RNA and Chromatin Accessibility Study , 2020, bioRxiv.
[26] T. Quertermous,et al. Environment-Sensing Aryl Hydrocarbon Receptor Inhibits the Chondrogenic Fate of Modulated Smooth Muscle Cells in Atherosclerotic Lesions , 2020, Circulation.
[27] T. Lassmann,et al. Systematic assessment of tissue dissociation and storage biases in single-cell and single-nucleus RNA-seq workflows , 2019, Genome Biology.
[28] Guangchuang Yu,et al. Gene Ontology Semantic Similarity Analysis Using GOSemSim. , 2020, Methods in molecular biology.
[29] T. Nyman,et al. Legumain is upregulated in acute cardiovascular events and associated with improved outcome - potentially related to anti-inflammatory effects on macrophages. , 2019, Atherosclerosis.
[30] Y. Saeys,et al. NicheNet: modeling intercellular communication by linking ligands to target genes , 2019, Nature Methods.
[31] W. Ciszewski,et al. Transforming growth factor-β receptor internationalization via caveolae is regulated by tubulin-β2 and tubulin-β3 during endothelial-mesenchymal transition. , 2019, The American journal of pathology.
[32] P. Ellinor,et al. Predicting Benefit From Evolocumab Therapy in Patients With Atherosclerotic Disease Using a Genetic Risk Score , 2019, Circulation.
[33] G. Abecasis,et al. Patients With High Genome-Wide Polygenic Risk Scores for Coronary Artery Disease May Receive Greater Clinical Benefit From Alirocumab Treatment in the ODYSSEY OUTCOMES Trial , 2019, Circulation.
[34] Nicolas F. Fernandez,et al. Single-cell immune landscape of human atherosclerotic plaques , 2019, Nature Medicine.
[35] Y. Kamatani,et al. Transethnic meta-analysis of genome-wide association studies identifies three new loci and characterizes population-specific differences for coronary artery disease , 2019, bioRxiv.
[36] Nicholas A Cilfone,et al. Endothelial TGF-β signalling drives vascular inflammation and atherosclerosis , 2019, Nature Metabolism.
[37] Joshua D. Campbell,et al. Decontamination of ambient RNA in single-cell RNA-seq with DecontX , 2019, Genome Biology.
[38] C. Alvarez,et al. CREB3 Transcription Factors: ER-Golgi Stress Transducers as Hubs for Cellular Homeostasis , 2019, Front. Cell Dev. Biol..
[39] Shing Wan Choi,et al. PRSice-2: Polygenic Risk Score software for biobank-scale data , 2019, GigaScience.
[40] Clint L. Miller,et al. Atheroprotective roles of smooth muscle cell phenotypic modulation and the TCF21 disease gene as revealed by single-cell analysis , 2019, Nature Medicine.
[41] Paul J. Hoffman,et al. Comprehensive Integration of Single-Cell Data , 2018, Cell.
[42] J. Vilo,et al. g:Profiler: a web server for functional enrichment analysis and conversions of gene lists (2019 update) , 2019, Nucleic Acids Res..
[43] Ash A. Alizadeh,et al. Determining cell-type abundance and expression from bulk tissues with digital cytometry , 2019, Nature Biotechnology.
[44] I. Amit,et al. Cell composition analysis of bulk genomics using single cell data , 2019, Nature Methods.
[45] Nir Yosef,et al. Functional interpretation of single cell similarity maps , 2018, Nature Communications.
[46] M. Bennett,et al. Disease-relevant transcriptional signatures identified in individual smooth muscle cells from healthy mouse vessels , 2018, Nature Communications.
[47] E. Mathiesen,et al. Gender differences in the association of syndecan-4 with myocardial infarction: The population-based Tromsø Study. , 2018, Atherosclerosis.
[48] P. Donnelly,et al. The UK Biobank resource with deep phenotyping and genomic data , 2018, Nature.
[49] J. Erdmann,et al. A decade of genome-wide association studies for coronary artery disease: the challenges ahead , 2018, Cardiovascular research.
[50] A. Bayés‐Genís,et al. Prognostic value of the Stanniocalcin-2/PAPP-A/IGFBP-4 axis in ST-segment elevation myocardial infarction , 2018, Cardiovascular Diabetology.
[51] Andrew D. Johnson,et al. Multiancestry genome-wide association study of 520,000 subjects identifies 32 loci associated with stroke and stroke subtypes , 2018, Nature Genetics.
[52] Pim van der Harst,et al. Identification of 64 Novel Genetic Loci Provides an Expanded View on the Genetic Architecture of Coronary Artery Disease , 2017, Circulation research.
[53] Kathryn S. Burch,et al. Leveraging polygenic functional enrichment to improve GWAS power , 2017, bioRxiv.
[54] Lars G Fritsche,et al. Efficiently controlling for case-control imbalance and sample relatedness in large-scale genetic association studies , 2017, Nature Genetics.
[55] J. Danesh,et al. Association analyses based on false discovery rate implicate new loci for coronary artery disease , 2017, Nature Genetics.
[56] J. Aerts,et al. SCENIC: Single-cell regulatory network inference and clustering , 2017, Nature Methods.
[57] A. Visel,et al. HAND2 Target Gene Regulatory Networks Control Atrioventricular Canal and Cardiac Valve Development. , 2017, Cell reports.
[58] T. Espevik,et al. Increased levels of legumain in plasma and plaques from patients with carotid atherosclerosis. , 2017, Atherosclerosis.
[59] P. Walter,et al. Targeting IRE1 with small molecules counteracts progression of atherosclerosis , 2017, Proceedings of the National Academy of Sciences.
[60] T. Lehtimäki,et al. Differentially expressed genes and canonical pathway expression in human atherosclerotic plaques – Tampere Vascular Study , 2017, Scientific Reports.
[61] Hongyu Zhao,et al. Leveraging functional annotations in genetic risk prediction for human complex diseases , 2016, bioRxiv.
[62] Charles H. Yoon,et al. Dissecting the multicellular ecosystem of metastatic melanoma by single-cell RNA-seq , 2016, Science.
[63] J. Mesirov,et al. The Molecular Signatures Database Hallmark Gene Set Collection , 2015 .
[64] P. Sapieha,et al. ER Stress and Angiogenesis. , 2015, Cell metabolism.
[65] Yakir A Reshef,et al. Partitioning heritability by functional annotation using genome-wide association summary statistics , 2015, Nature Genetics.
[66] J. Danesh,et al. A comprehensive 1000 Genomes-based genome-wide association meta-analysis of coronary artery disease , 2016 .
[67] Olle Melander,et al. Genetic risk, coronary heart disease events, and the clinical benefit of statin therapy: an analysis of primary and secondary prevention trials , 2015, The Lancet.
[68] Carson C Chow,et al. Second-generation PLINK: rising to the challenge of larger and richer datasets , 2014, GigaScience.
[69] Thomas R. Gingeras,et al. STAR: ultrafast universal RNA-seq aligner , 2013, Bioinform..
[70] M. Daemen,et al. Auto-Antigenic Protein-DNA Complexes Stimulate Plasmacytoid Dendritic Cells to Promote Atherosclerosis , 2012, Circulation.
[71] C. Glass,et al. Simple combinations of lineage-determining transcription factors prime cis-regulatory elements required for macrophage and B cell identities. , 2010, Molecular cell.
[72] W. Schiemann,et al. Fibulin-5 initiates epithelial-mesenchymal transition (EMT) and enhances EMT induced by TGF-beta in mammary epithelial cells via a MMP-dependent mechanism. , 2008, Carcinogenesis.
[73] Clifford A. Meyer,et al. Model-based Analysis of ChIP-Seq (MACS) , 2008, Genome Biology.
[74] Stephen G. Young,et al. A mouse model of human familial hypercholesterolemia: Markedly elevated low density lipoprotein cholesterol levels and severe atherosclerosis on a low-fat chow diet , 1998, Nature Medicine.
[75] Robert V Farese,et al. Phenotypic analysis of mice expressing exclusively apolipoprotein B48 or apolipoprotein B100. , 1996, Proceedings of the National Academy of Sciences of the United States of America.