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Hypertension: Prediction of Biofeedback Success

National Institutes of Health (NIH) logo

National Institutes of Health (NIH)

Status and phase

Completed
Phase 1

Conditions

Essential Hypertension

Treatments

Behavioral: Biofeedback

Study type

Interventional

Funder types

NIH

Identifiers

NCT00026065
R01AT000310-02

Details and patient eligibility

About

Hypertension, present in more than 50 million Americans, increases the risk of cardiovascular disease and its associated complications. More persons are turning to alternative medicine to deal with their health problems. Biofeedback may reduce blood pressure and/or allow the reduction of antihypertensive medications in some patients, while having no adverse effects. Yet biofeedback therapy is time-intensive and technician-intensive. Therefore, it is critical to be able to predict which patients with essential hypertension are most likely to lower his/her blood pressure using these techniques. This research proposes to test three different means of predicting whether a hypertensive subject will or will not be successful in lowering his/her blood pressure using biofeedback. Sixty hypertensive subjects will be studied over a three-year period. The results of this study will enable those caring for hypertensive persons to recommend biofeedback in an individualized way, thereby promoting adherence.

Full description

In the next century, our health care system will attempt to manage chronic illness in the largest aging population ever known. Non-adherence to pharmacological therapy and to non-pharmacological therapy will prove very costly. Hypertension, present in more than 50 million Americans, increases the risk of cardiovascular disease and its associated morbidity and mortality. Thus is it critical that adherence to treatment of hypertension be increased. While medications are effective in certain patients, their adverse effects make compliance with treatment difficult to ensure. In addition, more and more persons are turning to alternative medicine to deal with their health problems. Biofeedback offers an alternative to medical treatment, having been shown to reduce both systolic and diastolic blood pressures and/or allow the reduction of antihypertensive medications in some patients, while having no adverse effects. Yet biofeedback therapy is time-intensive and technician-intensive. Therefore, it is critical to be able to predict which patients with essential hypertension are most likely to lower his/her blood pressure using these techniques.

This research proposes to test three different means of predicting whether a hypertensive subject will or will not be successful in lowering his/her blood pressure using biofeedback. Specifically, the first set of predictive criteria to be tested is that proposed by Weaver & McGrady (1995). This model is derived from five variables: heart rate, finger temperature, forehead muscle tension, plasma rennin response to furosemide, and mean arterial pressure response to furosemide. The second prediction model is based on the magnitude of circadian variations in blood pressure as measured by 24-hour ambulatory blood pressure monitoring. The third prediction model is based on locus of control of behavior. A total of 60 hypertensive subjects will be studied over a three-year period. The results of this study will enable those caring for hypertensive persons to recommend treatment (i.e., biofeedback) in an individualized way, thereby promoting adherence.

Sex

All

Ages

21 to 65 years old

Volunteers

Accepts Healthy Volunteers

Inclusion and exclusion criteria

  • essential hypertension
  • stages 1 or 2
  • not taking beta blockers or central acting alpha agonists
  • permission from primary care provider

Trial design

Primary purpose

Diagnostic

Allocation

Non-Randomized

Interventional model

Single Group Assignment

Masking

None (Open label)

Trial contacts and locations

1

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Data sourced from clinicaltrials.gov

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