| Literature DB >> 35105649 |
Julia Mueller1, Amy L Ahern2, Stephen J Sharp2, Rebecca Richards2, Jack M Birch2, Alan Davies3, Simon J Griffin2,4.
Abstract
INTRODUCTION: Diabetes and related metabolic disorders such as obesity and cardiovascular diseases (CVD) are a growing global issue. Equipping individuals with the necessary 'knowledge, skills and confidence to self-manage their health' (ie, patient activation (PAct)) may lead to improvements in health outcomes. It is unclear whether existing evidence allows us to assume a causal relationship. We aim to synthesise and critically appraise evidence on the relationship between PAct and self-management behaviours and clinical outcomes of people living with diabetes and related metabolic disorders. METHODS AND ANALYSIS: The protocol is based on guidance on Preferred Reporting Items for Systematic Review and Meta-analysis Protocols. We will search Medline, Embase, CENTRAL, PsycInfo, Web of Science and CINAHL using search terms related to PAct, diabetes, pre-diabetes, obesity and CVD. Any quantitative study design is eligible provided studies assess the association between PAct and clinical outcomes and/or self-management behaviours of diabetes and related metabolic disorders. Outcomes include behavioural (eg, diet) and clinical (eg, blood pressure) outcomes. Two reviewers will independently screen titles/abstracts and full texts and assess risk of bias using the revised Cochrane risk-of-bias tool for randomised trials or the Risk of Bias Assessment Tool for Nonrandomised Studies (RoBANS).One reviewer will extract data, with independent checking by a second reviewer. We will critically assess the level of evidence available for assuming a causal association between PAct and outcomes. Data permitting, we will use the Hunter-Schmidt random-effects method to meta-analyse correlations across studies. ETHICS AND DISSEMINATION: Ethical approval is not required. The review will be disseminated in the form of a peer-reviewed journal article, at conferences and other presentations. The findings of the review will be of interest to clinical commissioning groups, policymakers and intervention deliverers/developers. PROSPERO REGISTRATION NUMBER: CRD42021230727. © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY. Published by BMJ.Entities:
Keywords: diabetes & endocrinology; health services administration & management; social medicine
Mesh:
Year: 2022 PMID: 35105649 PMCID: PMC8804633 DOI: 10.1136/bmjopen-2021-056293
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Search terms for the systematic review
| Concept | Free text | MeSH |
| Patient activation | “patient* activation*” measure* ADJ5 “patient activation” | |
| Diabetes | Diabet* | exp Diabetes Mellitus, Type 2/or exp Diabetes Mellitus/ or exp Diabetes Mellitus, Type 1 |
| Prediabetes | Pre?diabet* | exp Prediabetic State/ or exp Glucose Intolerance/ |
| Obesity/Overweight | Obes* | exp Obesity/ OR exp Overweight/ OR exp Body Weight/ |
| Heart disease | Heart* OR cardiovascular | exp Heart Diseases/ OR exp Cardiovascular Diseases/ exp Coronary Disease/ OR exp heart failure/ |
Risk of bias tools to be used in the review, depending on study design
| Study design | Risk of bias tool |
| Randomised controlled trial | RoB 2: a revised Cochrane risk-of-bias tool for randomised trials |
| Observational studies | Risk of Bias Assessment Tool for Nonrandomised Studies (RoBANS) |
*RCTs that have been analysed as a cohort study (ie, reporting on the association between PAct and outcomes, regardless of study group allocation) will be assessed using the RoBANS tool. If the data we extract depend on study group allocation, we will use the RoB 2 tool.
PAct, patient activation; RCT, randomised controlled trial.
Categorisation of the suitability of different study designs (coupled with different analyses) to draw conclusions regarding a causal association between PAct and outcomes of diabetes and related metabolic disorders. PAct = Patient Activation
| Possible study designs+analyses | Suitability of study design and analyses | Rationale |
| RCTs with causal mediation analysis to assess whether PAct mediates intervention effects | Strong | RCTs are the only study design that allow causal mediation analysis to identify the mechanisms by which interventions exert their effects |
| Cohort studies/RCTs or other intervention studies that assess the association between PAct and subsequent outcomes | Moderate | RCTs and longitudinal observational studies can provide temporal insights into the association between PAct and outcomes, which gives some indication of causality. |
| RCTs that do not report on the association between PAct and outcomes but that show intervention effects on outcomes AND intervention effects on PAct, AND the intervention explicitly, mainly addresses PAct | Moderate | RCTs provide insight into causal effects of interventions on outcomes. If an intervention explicitly addresses PAct and there is evidence that the intervention influenced both PAct and outcomes, this provides indication for a causal mechanism of PAct on outcomes (though not definitive). |
| Observational cross-sectional studies | Weak | In cross-sectional designs, the time order of effects cannot be determined and therefore causality cannot be inferred. |
| Intervention studies that are not RCTs (eg, pre-post studies) and that do not report on the association between PAct and outcomes but that show changes in outcomes AND changes in PAct. | Weak | Pre-post designs have the strength of temporality to indicate outcomes might be impacted by an intervention, but due to lack of randomisation causality cannot be inferred. |
PAct, patient activation; RCT, randomised controlled trial.
Figure 2Levels of evidence (part 2). To be used in conjunction with table 3 and figure 1. Note: studies including ≤250 participants or studies not providing sample size justifying a smaller sample size are considered ‘small’, studies including >250 participants are considered ‘large’. Findings are considered consistent if at least two thirds (66.6%) of the highest quality studies are reported to have significant results in the same direction.
Figure 1Levels of evidence (part 1). To be used in conjunction with table 3 and figure 2. Note: studies including ≤250 participants or studies not providing sample size justifying a smaller sample size are considered ‘small’, studies including >250 participants are considered ‘large’. Findings are considered consistent if at least two thirds (66.6%) of the highest quality studies are reported to have significant results in the same direction.
Formulae to convert different measures of effect to Pearson’s r, based on Wolf,55 Friedman56 and Hoeve et al57
| Statistic to be converted | Formula for transforming to pearson product moment correlation r | Notes |
| T | | |
| F(df=1) | | Use only for comparing two group means (df=1) dfD: df of the denominator |
| F(df >1) | | dfN: df of the numerator (k-1) dfD: df of the denominator (N-k) |
| χ2 (df=1) | | Use only for 2×2 frequency tables (df=1) |
| χ2 (df >1) | | |
| D | | |
| Φ | (1) χ2 = φ2 * N |
Amendments to the protocol
| Date | Change | Rationale |
| 29 January 2021 | Removed ‘Life expectancy/ total survival’ from the list of outcomes | After discussion within the team, we decided this outcome does not align well with the other included outcomes. The other outcomes give an indication of how well people self-manage their condition, whereas life expectancy/survival is a wider measure that gives less insight into self-management specifically. Moreover, there are unlikely to be many studies with sufficiently long follow-up to provide any meaningful assessment of survival in this context, and even if there was a study with very long follow-up, we would then be relying on an assumption that the patient activation exposures measured at baseline do not change over time. |