An integrated signature of extracellular matrix proteins and a diastolic function imaging parameter predicts post-MI long-term outcomes
暂无分享,去创建一个
Hyungwon Choi | R. Doughty | J. Pickering | L. Ling | M. Wenk | P. Benke | B. Burla | R. Troughton | C. Pemberton | A. Pilbrow | S. Tan | M. Chan | A. M. Richards | Qing Zhao | H. Koh | W. Soo | F. Torta
[1] Toshiko Tanaka,et al. Assessment of variability in the plasma 7k SomaScan proteomics assay , 2022, bioRxiv.
[2] G. Figtree,et al. Fibulin-3 Deficiency Protects Against Myocardial Injury Following Ischaemia/ Reperfusion in in vitro Cardiac Spheroids , 2022, Frontiers in Cardiovascular Medicine.
[3] Jason W. Moore,et al. Plasma biomarkers associated with adverse outcomes in patients with calcific aortic stenosis , 2021, European journal of heart failure.
[4] A. Mebazaa,et al. Circulating heart failure biomarkers beyond natriuretic peptides: review from the Biomarker Study Group of the Heart Failure Association (HFA), European Society of Cardiology (ESC) , 2021, European journal of heart failure.
[5] L. Trinquart,et al. New biomarkers from multiomics approaches - improving risk prediction of atrial fibrillation. , 2021, Cardiovascular research.
[6] M. Mayr,et al. Systems biology in cardiovascular disease: a multiomics approach , 2020, Nature Reviews Cardiology.
[7] Hyungwon Choi,et al. MRMkit: automated data processing for large-scale targeted metabolomics analysis. , 2020, Analytical chemistry.
[8] R. McPherson,et al. Multiomics Screening Identifies Molecular Biomarkers Causally Associated With the Risk of Coronary Artery Disease , 2020, Circulation. Genomic and precision medicine.
[9] J. Pickering,et al. Prioritizing Candidates of Post–Myocardial Infarction Heart Failure Using Plasma Proteomics and Single-Cell Transcriptomics , 2020, Circulation.
[10] Zhuo Wang,et al. Fibulin-3 affects vascular endothelial function and is regulated by angiotensin II. , 2020, Microvascular research.
[11] A. Reiner,et al. Comparison of Proteomic Assessment Methods in Multiple Cohort Studies , 2020, Proteomics.
[12] B. V. Van Tassell,et al. Interleukin-1 and the Inflammasome as Therapeutic Targets in Cardiovascular Disease , 2020, Circulation research.
[13] Y. Gao,et al. Mechanism of action of Profilin-1 and Fibulin-3 in vascular remodeling in hypertensive rats. , 2019, European review for medical and pharmacological sciences.
[14] P. León-Mimila,et al. Relevance of Multi-Omics Studies in Cardiovascular Diseases , 2019, Front. Cardiovasc. Med..
[15] Hyungwon Choi,et al. iOmicsPASS: network-based integration of multiomics data for predictive subnetwork discovery , 2019, npj Systems Biology and Applications.
[16] Manuel Mayr,et al. In Aptamers They Trust: Caveats of the SOMAscan Biomarker Discovery Platform From SomaLogic , 2018, Circulation.
[17] J. Januzzi,et al. Established and Emerging Roles of Biomarkers in Heart Failure , 2018, Circulation research.
[18] A. Vlahou,et al. Fibulin-3 Attenuates Phosphate-Induced Vascular Smooth Muscle Cell Calcification by Inhibition of Oxidative Stress , 2018, Cellular Physiology and Biochemistry.
[19] Ping Yang,et al. Effects of the Activin A–Follistatin System on Myocardial Cell Apoptosis through the Endoplasmic Reticulum Stress Pathway in Heart Failure , 2017, International journal of molecular sciences.
[20] Zhongheng Zhang,et al. Multiple imputation with multivariate imputation by chained equation (MICE) package. , 2016, Annals of translational medicine.
[21] Xu Shi,et al. Aptamer-Based Proteomic Profiling Reveals Novel Candidate Biomarkers and Pathways in Cardiovascular Disease , 2016, Circulation.
[22] Mark R Segal,et al. Development and Validation of a Protein-Based Risk Score for Cardiovascular Outcomes Among Patients With Stable Coronary Heart Disease. , 2016, JAMA.
[23] D. Xiang,et al. Fibulin-3 may improve vascular health through inhibition of MMP-2/9 and oxidative stress in spontaneously hypertensive rats , 2016, Molecular medicine reports.
[24] Yu-Fang Jin,et al. Transformative Impact of Proteomics on Cardiovascular Health and Disease: A Scientific Statement From the American Heart Association , 2015, Circulation.
[25] Ellen T. Gelfand,et al. The Genotype-Tissue Expression (GTEx) project , 2013, Nature Genetics.
[26] Guangchuang Yu,et al. clusterProfiler: an R package for comparing biological themes among gene clusters. , 2012, Omics : a journal of integrative biology.
[27] Larry A. Wasserman,et al. The huge Package for High-dimensional Undirected Graph Estimation in R , 2012, J. Mach. Learn. Res..
[28] Stef van Buuren,et al. MICE: Multivariate Imputation by Chained Equations in R , 2011 .
[29] Trevor J. Hastie,et al. The Graphical Lasso: New Insights and Alternatives , 2011, Electronic journal of statistics.
[30] Lei Qi,et al. Sparse High Dimensional Models in Economics. , 2011, Annual review of economics.
[31] M. Pourahmadi. Covariance Estimation: The GLM and Regularization Perspectives , 2011, 1202.1661.
[32] Gary King,et al. MatchIt: Nonparametric Preprocessing for Parametric Causal Inference , 2011 .
[33] Xavier Robin,et al. pROC: an open-source package for R and S+ to analyze and compare ROC curves , 2011, BMC Bioinformatics.
[34] Kazuto Nakamura,et al. Cardiac Myocyte-specific Ablation of Follistatin-like 3 Attenuates Stress-induced Myocardial Hypertrophy* , 2011, The Journal of Biological Chemistry.
[35] Rina Foygel,et al. Extended Bayesian Information Criteria for Gaussian Graphical Models , 2010, NIPS.
[36] Tracy R. Keeney,et al. Aptamer-based multiplexed proteomic technology for biomarker discovery , 2010, PloS one.
[37] L. Ng,et al. Biomarkers in acute myocardial infarction , 2010, BMC medicine.
[38] K. Tsuchida,et al. Activin A and Follistatin-Like 3 Determine the Susceptibility of Heart to Ischemic Injury , 2009, Circulation.
[39] N. Rosenthal,et al. Expression of follistatin-related genes is altered in heart failure. , 2008, Endocrinology.
[40] Jiahua Chen,et al. Extended Bayesian information criteria for model selection with large model spaces , 2008 .
[41] R. Tibshirani,et al. Sparse inverse covariance estimation with the graphical lasso. , 2008, Biostatistics.
[42] R. Testa,et al. Impaired myocardial metabolic reserve and substrate selection flexibility during stress in patients with idiopathic dilated cardiomyopathy. , 2007, American journal of physiology. Heart and circulatory physiology.
[43] A. Okizaki,et al. A compartment model analysis for investigation of myocardial fatty acid metabolism in patients with hypertrophic cardiomyopathy , 2007, Nuclear medicine communications.
[44] Hedi Peterson,et al. g:Profiler—a web-based toolset for functional profiling of gene lists from large-scale experiments , 2007, Nucleic Acids Res..
[45] M. Yuan,et al. Model selection and estimation in the Gaussian graphical model , 2007 .
[46] G. Lip,et al. Plasma Angiopoietin-1, Angiopoietin-2, Angiopoietin Receptor Tie-2, and Vascular Endothelial Growth Factor Levels in Acute Coronary Syndromes , 2004, Circulation.
[47] P. Shannon,et al. Cytoscape: a software environment for integrated models of biomolecular interaction networks. , 2003, Genome research.
[48] C. Otto,et al. Recommendations for quantification of Doppler echocardiography: a report from the Doppler Quantification Task Force of the Nomenclature and Standards Committee of the American Society of Echocardiography. , 2002, Journal of the American Society of Echocardiography : official publication of the American Society of Echocardiography.
[49] J. Seward,et al. The noninvasive assessment of left ventricular diastolic function with two-dimensional and Doppler echocardiography. , 1997, Journal of the American Society of Echocardiography : official publication of the American Society of Echocardiography.
[50] N. Reichek,et al. Recommendations for quantitation of the left ventricle by two-dimensional echocardiography. American Society of Echocardiography Committee on Standards, Subcommittee on Quantitation of Two-Dimensional Echocardiograms. , 1989, Journal of the American Society of Echocardiography : official publication of the American Society of Echocardiography.
[51] N. Higham. COMPUTING A NEAREST SYMMETRIC POSITIVE SEMIDEFINITE MATRIX , 1988 .
[52] A. DeMaria,et al. Recommendations Regarding Quantitation in M-Mode Echocardiography: Results of a Survey of Echocardiographic Measurements , 1978, Circulation.
[53] G. Schwarz. Estimating the Dimension of a Model , 1978 .
[54] R. Doughty,et al. C-Type Natriuretic Peptides in Coronary Disease. , 2017, Clinical chemistry.
[55] Lena Osterhagen,et al. Multiple Imputation For Nonresponse In Surveys , 2016 .
[56] T. Lumley,et al. gplots: Various R Programming Tools for Plotting Data , 2015 .
[57] R Core Team,et al. R: A language and environment for statistical computing. , 2014 .
[58] J. Shao. AN ASYMPTOTIC THEORY FOR LINEAR MODEL SELECTION , 1997 .
[59] P. Freedson,et al. Scientific Statement From the American Heart Association Guide to the Assessment of Physical Activity: Clinical and Research Applications: A , 2015 .