Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis

Abstract Background Scale-up BP was a quasi-experimental implementation study, following a successful randomised controlled trial of the roll-out of telemonitoring in primary care across Lothian, Scotland. Our primary objective was to assess the effect of telemonitoring on blood pressure (BP) contro...

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Main Authors: Richard A. Parker, Paul Padfield, Janet Hanley, Hilary Pinnock, John Kennedy, Andrew Stoddart, Vicky Hammersley, Aziz Sheikh, Brian McKinstry
Format: Article
Language:English
Published: BMC 2021-02-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:https://doi.org/10.1186/s12874-021-01219-8
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spelling doaj-cece364bb9114b6988d867318dab24e22021-02-14T12:03:06ZengBMCBMC Medical Research Methodology1471-22882021-02-0121111510.1186/s12874-021-01219-8Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysisRichard A. Parker0Paul Padfield1Janet Hanley2Hilary Pinnock3John Kennedy4Andrew Stoddart5Vicky Hammersley6Aziz Sheikh7Brian McKinstry8Usher Institute, University of EdinburghUsher Institute, University of EdinburghSchool of Health and Social Care. Edinburgh Napier UniversityUsher Institute, University of EdinburghEdinburgh Medical School, University of EdinburghUsher Institute, University of EdinburghUsher Institute, University of EdinburghUsher Institute, University of EdinburghUsher Institute, University of EdinburghAbstract Background Scale-up BP was a quasi-experimental implementation study, following a successful randomised controlled trial of the roll-out of telemonitoring in primary care across Lothian, Scotland. Our primary objective was to assess the effect of telemonitoring on blood pressure (BP) control using routinely collected data. Telemonitored systolic and diastolic BP were compared with surgery BP measurements from patients not using telemonitoring (comparator patients). The statistical analysis and interpretation of findings was challenging due to the broad range of biases potentially influencing the results, including differences in the frequency of readings, ‘white coat effect’, end digit preference, and missing data. Methods Four different statistical methods were employed in order to minimise the impact of these biases on the comparison between telemonitoring and comparator groups. These methods were “standardisation with stratification”, “standardisation with matching”, “regression adjustment for propensity score” and “random coefficient modelling”. The first three methods standardised the groups so that all participants provided exactly two measurements at baseline and 6–12 months follow-up prior to analysis. The fourth analysis used linear mixed modelling based on all available data. Results The standardisation with stratification analysis showed a significantly lower systolic BP in telemonitoring patients at 6–12 months follow-up (-4.06, 95% CI -6.30 to -1.82, p < 0.001) for patients with systolic BP below 135 at baseline. For the standardisation with matching and regression adjustment for propensity score analyses, systolic BP was significantly lower overall (− 5.96, 95% CI -8.36 to − 3.55 , p < 0.001) and (− 3.73, 95% CI− 5.34 to − 2.13, p < 0.001) respectively, even after assuming that − 5 of the difference was due to ‘white coat effect’. For the random coefficient modelling, the improvement in systolic BP was estimated to be -3.37 (95% CI -5.41 to -1.33 , p < 0.001) after 1 year. Conclusions The four analyses provide additional evidence for the effectiveness of telemonitoring in controlling BP in routine primary care. The random coefficient analysis is particularly recommended due to its ability to utilise all available data. However, adjusting for the complex array of biases was difficult. Researchers should appreciate the potential for bias in implementation studies and seek to acquire a detailed understanding of the study context in order to design appropriate analytical approaches.https://doi.org/10.1186/s12874-021-01219-8Routine dataImplementation studyQuasi-experimentalTelemonitoringBlood pressure controlHypertension
collection DOAJ
language English
format Article
sources DOAJ
author Richard A. Parker
Paul Padfield
Janet Hanley
Hilary Pinnock
John Kennedy
Andrew Stoddart
Vicky Hammersley
Aziz Sheikh
Brian McKinstry
spellingShingle Richard A. Parker
Paul Padfield
Janet Hanley
Hilary Pinnock
John Kennedy
Andrew Stoddart
Vicky Hammersley
Aziz Sheikh
Brian McKinstry
Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
BMC Medical Research Methodology
Routine data
Implementation study
Quasi-experimental
Telemonitoring
Blood pressure control
Hypertension
author_facet Richard A. Parker
Paul Padfield
Janet Hanley
Hilary Pinnock
John Kennedy
Andrew Stoddart
Vicky Hammersley
Aziz Sheikh
Brian McKinstry
author_sort Richard A. Parker
title Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
title_short Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
title_full Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
title_fullStr Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
title_full_unstemmed Examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
title_sort examining the effectiveness of telemonitoring with routinely acquired blood pressure data in primary care: challenges in the statistical analysis
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2021-02-01
description Abstract Background Scale-up BP was a quasi-experimental implementation study, following a successful randomised controlled trial of the roll-out of telemonitoring in primary care across Lothian, Scotland. Our primary objective was to assess the effect of telemonitoring on blood pressure (BP) control using routinely collected data. Telemonitored systolic and diastolic BP were compared with surgery BP measurements from patients not using telemonitoring (comparator patients). The statistical analysis and interpretation of findings was challenging due to the broad range of biases potentially influencing the results, including differences in the frequency of readings, ‘white coat effect’, end digit preference, and missing data. Methods Four different statistical methods were employed in order to minimise the impact of these biases on the comparison between telemonitoring and comparator groups. These methods were “standardisation with stratification”, “standardisation with matching”, “regression adjustment for propensity score” and “random coefficient modelling”. The first three methods standardised the groups so that all participants provided exactly two measurements at baseline and 6–12 months follow-up prior to analysis. The fourth analysis used linear mixed modelling based on all available data. Results The standardisation with stratification analysis showed a significantly lower systolic BP in telemonitoring patients at 6–12 months follow-up (-4.06, 95% CI -6.30 to -1.82, p < 0.001) for patients with systolic BP below 135 at baseline. For the standardisation with matching and regression adjustment for propensity score analyses, systolic BP was significantly lower overall (− 5.96, 95% CI -8.36 to − 3.55 , p < 0.001) and (− 3.73, 95% CI− 5.34 to − 2.13, p < 0.001) respectively, even after assuming that − 5 of the difference was due to ‘white coat effect’. For the random coefficient modelling, the improvement in systolic BP was estimated to be -3.37 (95% CI -5.41 to -1.33 , p < 0.001) after 1 year. Conclusions The four analyses provide additional evidence for the effectiveness of telemonitoring in controlling BP in routine primary care. The random coefficient analysis is particularly recommended due to its ability to utilise all available data. However, adjusting for the complex array of biases was difficult. Researchers should appreciate the potential for bias in implementation studies and seek to acquire a detailed understanding of the study context in order to design appropriate analytical approaches.
topic Routine data
Implementation study
Quasi-experimental
Telemonitoring
Blood pressure control
Hypertension
url https://doi.org/10.1186/s12874-021-01219-8
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