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: TRANSLATING SIGNALS FROM GENOME-WIDE ASSOCIATION STUDIES INTO BIOLOGICAL MECHANISMS OF HYPERTENSION THROUGH KIDNEY -OMICS

Researchers

Presenter

  • Jiang, X

Principal Investigators

  • Eales, J.M

  • Xu, X

  • Akbarov, A

  • Pramanik, S

  • Bogdanski, P

  • Wystrychowski, W

  • Zywiec, J

  • Zukowska-Szczechowska, E

  • Woolf, A.S

  • Samani, N.J

  • Charchar, F.J

  • Tomaszewski, M

Medical Centers

  • Division of Cardiovascular Sciences, University of Manchester

  • Department of Cardiovascular Sciences, University of Leicester, Leicester, UK

  • Department of Obesity and Metabolic Disorders Treatment and Clinical Dietetics, University of Medical Sciences, Poznan, POLAND

  • Department of General, Vascular and Transplantation Surgery, Medical University of Silesia, Katowice, Poland

  • Department of Internal Medicine, Diabetology and Nephrology, Medical University of Silesia, Katowice, POLAND

  • Department of Health Care, Silesian Medical College, Katowice, POLAND

  • Division of Cell Matrix Biology and Regenerative Medicine, University of Manchester, Manchester, UNITED KINGDOM

  • Leicester NIHR Biomedical Research Centre, Glenfield Hospital, Leicester, UNITED KINGDOM

  • School of Health and Life Sciences, Federation University Australia, Ballarat, AUSTRALIA

  • Division of Medicine, Manchester University NHS Foundation Trust, Manchester, UNITED KINGDOM

Locations

  • United Kingdom

  • Poland

  • Australia

Companies

  • N/A

Study Components

Therapeutic Area

  • Oncology (ONC)

  • Cardiovascular (CVS)

  • Nephrology

Disease

  • Renal disease

  • Hypertension

  • Solid malignancies

Biomarkers

  • N/A

Drug/Treatment

  • N/A

Outcome

  • N/A


Study Design

  • N/A

Phase

  • NA

Study Id's

  • N/A

Sponsors

  • N/A

Result

  • N/A