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Genetic Based Analysis of Identifying Predictors of Blood Pressure Response in Hypertensive Patients After Renal Denervation
Many attempts to identify predictors of blood pressure response after renal denervation failed to identify a meaningful determination of blood pressure response. These attempts have been based on demographic parameters, clinical parameters, endocrine inflammatory and other biochemical variables, comorbidities and disease factors. So far the only predictor of blood pressure response is the pre-treatment blood pressure. According to Wilder's law the pre-treatment baseline value is always a determinant for any change due to an intervention, irrespective which biological variable is examined. The investigators propose a genetic approach to identify predictors of blood pressure response after renal denervation. Genetic factors are not subject to changes of clinical parameters, previous or current antihypertensive therapy, hypertension associated organ damages, comorbidities and other potential clinical variables.
Background: Up to now numerous attempts to identify predictors of blood pressure response after renal denervation failed to identify a meaningful and consistent determinant of blood pressure response. These approaches have been based on demographic parameters, clinical parameters, comorbidities and disease factors as well as numerous endocrine inflammatory and other biochemical variables. Only the pre-treatment blood pressure emerged as a predictor of blood pressure response which is no surprise since according to Wilder's law the pre-treatment baseline value is always a determinant for any change due to an intervention, irrespective which biological variable is examined, e.g. blood pressure, LDL cholesterol, HbA1c and so on. The investigators suggest a genetic approach to identify predictors of blood pressure response after renal denervation. The rationale is quite simple: Genetic factors are not subject to changes of clinical parameters, previous or current antihypertensive therapy, hypertension associated organ damages, comorbidities, and other potential clinical variables. By such an approach the investigators previously were very successful to identify several parameters of modulators hypertensive organ damage that could not have been identified by pathophysiological or pharmaceutical maneuvers. THE INVESTIGATORS PREFER TO RUN A GENOM WIDE ASSOCIATION STUDY AND THE PARTNERS IN GLASGOW AND EDINBURGH HAVE THE DEEP KNOWLWEDGE; EXPERIENCE AND CAPACITY TO RUN A NGS (next generation sequencing, so that's the complete genome)) INCLUDING ALL BIOINFORMATICS AND OTHER ANALYSIS Objective: The investigators attempt to identify predictors of blood pressure response to renal denervation by using a GWAS (genome wide association study) approach. This allows to identify various suspected and unexpected polymorphism that are of interest and potentially being strong predictors of blood pressure response. By that approach the investigators will identify novel mechanism of action that are important for blood pressure response (by identifying polymorphism that are beyond the classical thinking how renal denervation may exert blood pressure lowering effects). Study design: In collaboration with the Homburg Group (Prof. Dr. Felix Mahfoud), the investigators will extract DNA from stored samples of patients with uncontrolled treatment resistant hypertension and perform a genome wide association study analysis (GWAS) in two cohorts: no/low responders vs. high/excellent responders. NGS will be applied by the partners in Glasgow and Edinburgh. All patients with renal denervation will be categorized according to their pretreatment adjusted blood pressure response and the investigators will compare the upper quartile vs. the lower quartile of all patients that has been so far studied in Homburg and Erlangen. By excluding those patients with a medium or average blood pressure response, the investigators will have two distinct response patterns: low/no response vs. high/excellent response. By applying standard biostatistics analysis, the investigators will come up with a pattern of polymorphism that are significantly different between the two groups. These identified polymorphisms (or a pattern of it) may be refer, not unexpectedly, to renin angiotensin aldosterone system, sodium and water balance, sympathetic nervous system or other endocrine parameters related to hypertension. In addition to that, the investigators may find significant results of polymorphisms involved in other pathophysiologic pathways not related to hypertension (by our current knowledge) and that the Investigators have not thought about to be related to uncontrolled hypertension. These novel mechanism need to be subsequently further analyzed, but they will offer the opportunity to find novel predictors of blood pressure response.
Age
18 - 85 years
Sex
ALL
Healthy Volunteers
No
Klinik für Innere Medizin III, Kardiologie, Angiologie Und Internistische Intensivmedizin, Saarland University Hospital, Saarland University
Homburg, Saarland, Germany
Clinical Research Center, Department of Nephrology and Hypertension, University of Erlangen-Nuremberg
Erlangen, Germany
Institute of Cardiovascular and Medical Science
Glasgow, Scotland, United Kingdom
Start Date
January 1, 2019
Primary Completion Date
July 23, 2020
Completion Date
December 31, 2023
Last Updated
June 13, 2025
300
ACTUAL participants
Genetic based analysis of identifying predictors of blood pressure in patients after renal denervation
GENETIC
Lead Sponsor
University of Erlangen-Nürnberg Medical School
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