Digital therapeutics for hypertension, proven effective in the HERB-DH1 trial, enable patients to record and track their daily actions and achievements to improve their lifestyles using an app. However, the association between recording daily behaviours and blood pressure (BP) reduction has not yet been investigated. We conducted a post-hoc analysis to investigate the relationship between them in the HERB-DH1 trial. We defined the counts of daily records of antihypertensive behaviour taken by the patient into the app as daily self-reported behavioural efficacy records (SER). SER was categorised into quartiles, and the trend of changes from baseline to week 12 in morning home systolic blood pressure (SBP), salt intake checklist score, and body weight was assessed. A total of 156 patients with hypertension were included in the analysis. A higher total count of SER was associated with greater SBP reduction (P for trend: 0.049). Patients with a higher SER for salt intake and weight reduction showed reductions in SBP (P for trend: 0.034 and 0.027, respectively). Furthermore, patients with higher salt intake SER exhibited a decrease in the salt intake checklist scores, and patients with greater weight reduction SER experienced a reduction in body weight (P for trend: 0.001 and 0.007, respectively). SER during digital therapeutics is associated with a reduction in morning home SBP in patients with hypertension. Enhancing patients' intrinsic motivation and self-efficacy, as evaluated by the SER, can play an important role in reducing BP by promoting lifestyle improvement. Daily self-reported behavioural efficacy records (SER) defined as the number of patient's app inputs of recall of day-by-day activity of behaviours at the end of the day, is partially affected by self-efficacy and affinity of app, resulting in the effectiveness of digital therapeutics.
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http://dx.doi.org/10.1038/s41440-023-01434-4 | DOI Listing |
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