| Literature DB >> 28637486 |
Lou Atkins1, Jill Francis2,3, Rafat Islam3, Denise O'Connor4, Andrea Patey3, Noah Ivers5, Robbie Foy6, Eilidh M Duncan7, Heather Colquhoun8, Jeremy M Grimshaw3,9, Rebecca Lawton10, Susan Michie11.
Abstract
BACKGROUND: Implementing new practices requires changes in the behaviour of relevant actors, and this is facilitated by understanding of the determinants of current and desired behaviours. The Theoretical Domains Framework (TDF) was developed by a collaboration of behavioural scientists and implementation researchers who identified theories relevant to implementation and grouped constructs from these theories into domains. The collaboration aimed to provide a comprehensive, theory-informed approach to identify determinants of behaviour. The first version was published in 2005, and a subsequent version following a validation exercise was published in 2012. This guide offers practical guidance for those who wish to apply the TDF to assess implementation problems and support intervention design. It presents a brief rationale for using a theoretical approach to investigate and address implementation problems, summarises the TDF and its development, and describes how to apply the TDF to achieve implementation objectives. Examples from the implementation research literature are presented to illustrate relevant methods and practical considerations.Entities:
Keywords: Guide; Methods; Theoretical Domains Framework
Mesh:
Year: 2017 PMID: 28637486 PMCID: PMC5480145 DOI: 10.1186/s13012-017-0605-9
Source DB: PubMed Journal: Implement Sci ISSN: 1748-5908 Impact factor: 7.327
The Theoretical Domains Framework (v1 [15] and v2 [16]) with definitions and component constructs
| Version 1[ | |
| Domain | Constructs |
| Knowledge | Knowledge |
| Skills | Skills |
| Social/professional role and identity | Identity |
| Beliefs about capabilities | Self-efficacy |
| Beliefs about consequences | Outcome expectancies |
| Motivation and goals | Intention; stability of intention/certainty of intention |
| Memory, attention and decision processes | Memory |
| Environmental context and resources | Resources/material resources (availability and management) |
| Social influences | Social support |
| Emotion | Affect |
| Behavioural regulation | Goal/target setting |
| Nature of the behaviours | Routine/automatic/habit |
| Version 2 | |
| Domain (definition) | Constructs |
| 1. Knowledge | Knowledge (including knowledge of condition/scientific rationale) |
| 2. Skills | Skills |
| 3. Social/professional role and identity | Professional identity |
| 4. Beliefs about capabilities | Self-confidence |
| 5. Optimism | Optimism |
| 6. Beliefs about Consequences | Beliefs |
| 7. Reinforcement | Rewards (proximal/distal, valued/not valued, probable/improbable) |
| 8. Intentions | Stability of intentions |
| 9. Goals | Goals (distal/proximal) |
| 10. Memory, attention and decision processes | Memory |
| 11. Environmental context and resources | Environmental stressors |
| 12. Social influences | Social pressure |
| 13. Emotion | Fear |
| 14. Behavioural regulation | Self-monitoring |
Stages in conducting TDF-based implementation research
| Stage | Detail | Key considerations |
|---|---|---|
| 1. Select and specify the target behaviour/s | Use documentary analysis or empirical research to identify and specify who should do what differently, to increase the uptake of evidence-based practice | May require assessment of the feasibility of measuring the behaviour as an outcome variable |
| 2. Select the study design | May involve semi-structured individual interviews, focus group interviews, questionnaires, structured observations, documentary analysis or consensus processes | Design should fit the research question and will depend on the stage of investigation through exploration and development to intervention and explanation |
| 3. Develop study materials | Although materials from previous studies may be used as templates, materials should be adapted to be appropriate to the specified behaviour/s and context | Requires in-depth understanding of the theoretical content of each domain |
| 4. Decide the sampling strategy | For exploratory studies, a maximum variation approach is appropriate | Key participants are those who will, or should, perform the target behaviour but other stakeholders (e.g. managers, co-workers) may also contribute a valuable perspective |
| 5. Collect the data | Published studies have used audio-recorded interviews (face-to-face or telephone; one-to-one or focus group) or questionnaires (paper-based or online) | Effective interviewing requires standard interviewer competencies and in-depth understanding of the theoretical content of each domain |
| 6. Analyse the data | The objective is to identify the domains that are most relevant to the implementation problem being addressed and to populate those domains with context-relevant and behaviourally specific content | Coding in qualitative studies requires in-depth understanding of the theoretical content of each domain |
| 7. Report findings | For interview studies, report presents tables that include illustrative quotations, specific beliefs identified (with frequencies, if appropriate) and classification into domains | The explanatory text relating to the table of course relates to the study objectives |
Specification of the target behaviour according to the principle of behavioural specificity
| Study title |
| Evaluation of a TDF-informed implementation intervention for the management of acute low back pain in general medical practice |
| Rationale for changing behaviour |
| Management of low back pain in general medical practice is common, but this management is not always concordant with recommended evidence-based guidelines. In particular, x-rays are overused which leads to unnecessary harm due to radiation exposure and possible detection of incidental irrelevant findings, and an intervention of known effectiveness, giving advice to stay active, is underused. |
| Study design and materials |
| Three phase study: |
| Findings and conclusions |
| The TDF allowed for the systematic identification of multiple barriers and facilitators in general medical practice and subsequent mapping to behaviour change techniques. The intervention consisted of interactive workshops designed to improve the knowledge, skills, intentions and clinical decision-making of the general practitioners. The intervention had some influence on GP adherence to an evidence-based guideline for the management of lower back pain at 12 months post-intervention. Overall, the intervention led to small changes in GP intention to practice in a manner consistent with an evidence-based guideline, but it did not result in statistically significant changes in actual behaviour measured via administrative data. |
| Study outputs |
| French et al. [ |
Using a TDF questionnaire to understand an implementation problem; the example of designing hospital patient safety interventions
| Study title |
| The demonstration of a theory-based approach to the design of localized patient safety interventions |
| Rationale for changing behaviour |
| Between 3.7 and 17.7% of patients in hospital are inadvertently harmed either by healthcare professional error or deviations from recommended practice. In this example, the TDF was used to understand behaviours related to implementing a patient safety guideline promoting safe nasogastric feeding. |
| Study design and materials |
| The Influences on Patient Safety Behaviours Questionnaire IPSBQ [ |
| Findings and conclusions |
| Social influences, environmental context and resources, skills and emotion were identified as the most influential domains. Relevant domains were further explored in focus groups and intervention strategies generated using explicit links between theoretical domains and behaviour change techniques [ |
| Study outputs |
| Taylor et al. [ |
Using the TDF to synthesise evidence; the example of barriers to diabetes management in primary care
| Study title |
| Identifying barriers to primary care type 2 diabetes management: qualitative systematic review |
| Rationale for changing behaviour |
| There is broad consensus and a strong evidence base to guide the care of diabetes. Despite encouraging trends in the delivery and outcomes of care for people with diabetes, there remains significant scope for improvement. Most clinical management of diabetes now occurs in primary care. Interventions to enhance the implementation of evidence-based guidelines to improve the care of people with diabetes have shown small to modest effects. To ensure that interventions address barriers to behaviour change and build on known facilitators, it is important to understand primary care clinicians’ beliefs around their day-to-day management of such patients. |
| Study design and materials |
| Systematic review of qualitative studies, including searches of following databases from 1980 to 2013: MEDLINE, EMBASE, CINAHL, PsycINFO and ASSIA. Qualitative studies examining diabetes management in primary care were eligible. Following screening of abstracts and full texts, data were coded to TDF domains and other themes if required. This review focused on behaviours to address clinical targets (including control of blood sugar, cholesterol and blood pressure) and processes of care (including foot examination). Findings were synthesised to identify barriers and facilitators common across or unique to clinical management goals, as well as apparent and potentially unexplored gaps in the literature. |
| Findings and conclusions |
| Out of 32 included studies; 17 address general diabetes care, 11 glycaemic control, three blood pressure, and one cholesterol control. Clinicians struggle to meet evolving treatment targets within limited time and resources and are frustrated with resulting compromises. They lack confidence in knowledge of guidelines and skills, notably initiating insulin and facilitating patient behaviour change. Changing professional boundaries have resulted in uncertainty about where clinical responsibility resides. Accounts are often couched in emotional terms, especially frustrations over patient adherence and anxieties about treatment intensification. |
| Study outputs |
| Rushforth et al. [ |
Using the TDF to understand effect size; the example of post-fracture management of patients at risk of osteoporosis
| Study title |
| Understanding effects in reviews of implementation interventions using the Theoretical Domains Framework |
| Rationale for changing behaviour |
| There is evidence that two behaviours related to post-fracture management of patients at risk of osteoporosis are sub-optimally performed: 1) primary and secondary healthcare professionals scanning bone mineral density and 2) prescribing anti-resorptive therapy (bisphosphonate medication). This study used the TDF to identify which theoretical factors were targeted in a systematic review of interventions to improve quality of care in post-fracture investigation and their relation to observed effect sizes. |
| Study design and materials |
| A behavioural scientist and a clinician independently coded TDF domains in intervention and control groups in 10 interventions identified in a systematic review. For example, part of an intervention describing an ‘algorithm for diagnosis and treatment of osteoporosis’ was coded in the domain memory, attention and decision processes. Pearson’s correlations were used to explore the relationship between intervention effect size and total number of domains identified in reviews. |
| Findings and conclusions |
| The five domains coded most frequently (in order of frequency highest to lowest) were: |
| Study outputs |
| Little et al. [ |
Sampling for maximum variation when using TDF to understand influences on behaviour
| Study title |
| A study of the perceived risks, benefits and barriers to the use of selective decontamination of the digestive tract (SDD) in adult critical care units |
| Rationale for changing behaviour |
| Critically ill patients who require management in an Intensive Care Unit (ICU) are particularly susceptible to hospital acquired infections which are associated with high morbidity and mortality. SDD may reduce these infections and improve mortality but has not been widely adopted into practice. Adoption of SDD would involve a set of protocolised behaviours performed by a range of healthcare professionals, so this investigation sought the views of multiple professional stakeholders. |
| Study design and materials |
| A four-phase study in three regions (the UK, Canada and Australia/New Zealand) of which Phase 2 was a Delphi study. Round 1 of the Delphi study involved one-to-one telephone interviews based on the TDF. Four key clinician groups (ICU physicians, ICU pharmacists, infectious disease clinicians/medical microbiologists, ICU clinical leads/nurse managers) were sampled using databases within each region. The researchers aimed for 10 from each group in each region. Purposive diversity sampling was used to identify a wide range of views, based on the following variables: |
| Findings and conclusions |
| 141 participants were interviewed. Beliefs about Consequences was the most populous domain. “SDD increases antibiotic resistance”, “SDD reduces Ventilator Associated Pneumonia” and “SDD benefits the patients to whom it is delivered” were the most frequently mentioned beliefs, illustrating the problematic balance between potential harms and benefits. |
| Study outputs |
| Cuthbertson et al. [ |
Fig. 1Flow chart illustrating steps to analyse interview transcripts to select a theoretical basis for designing a questionnaire study
Reaching agreement when coding data using TDF and identifying beliefs within domains
| Study title |
| Anaesthesiologists’ and Surgeons’ Perceptions about Routine Pre-operative testing in low risk patients: application of the Theoretical Domains Framework (TDF) to identify factors that influence physicians’ decisions to order pre-operative tests. |
| Rationale for changing behaviour |
| Routine pre-operative tests for anaesthesia management are ordered by both anaesthesiologists and surgeons for healthy patients undergoing low-risk surgery, often without any clinical indication and the subsequent test results are rarely used. Identifying factors that influence why anaesthesiologists’ and surgeons’ order these routine tests for healthy patients undergoing low risk surgery provide more effective targets for intervention development. |
| Study design and materials |
| Interview study–sixteen clinicians (eleven anaesthesiologists and five surgeons) throughout Ontario were recruited. An interview guide based on the TDF was developed to identify beliefs about pre-operative testing practices. Physicians’ statements were content analysed into the relevant theoretical domains. Two researchers coded interview participants’ statements into the relevant theoretical domains. The first pilot interview was coded in tandem to develop the coding strategy and the second was used to ensure the two coders were comfortable with the strategy developed from the first. Subsequent coding of the remaining interviews was completed independently and Fleiss’s Kappa (κ) was calculated for all domains and interviews to assess whether the two researchers coded the same text into the same domain. Within each domain, the primary coder wrote a belief statement that captured the core thought of each utterance. For example, the following utterances were coded under the domains Social Influences: “… if a surgeon ordered it I am somewhat reluctant to cancel one of their tests even though I don’t feel that it’s necessary” & “Sometimes they are ordered and then (we) might be reluctant to cancel some of the tests because I am not privy to their thought process….”. These 2 utterances were from 2 different respondents but reflect the same core thought: I’m reluctant to cancel tests ordered by other physicians. Identical beliefs statements were then grouped together. Statements that centred on same theme or were polar opposites of a theme were also grouped together for the ease of further analysis. For example, the following 3 belief statements from Social Influences grouped under the theme influence of colleagues: The opinions of others do not influence my decision to order routine tests. I’m reluctant to cancel test ordered by other physicians. I order tests I feel are unnecessary because my conservative colleague may be in the operating room on the day of the surgery and want to see the routine test that I would not. |
| Findings and conclusions |
| Seven domains were identified as likely relevant to changing clinicians’ behaviour about pre-operative test ordering for anaesthesia management (Social/professional role and identity, Beliefs about capabilities and Social influences, Environmental context and resources, Beliefs about consequences, Behavioural regulation, Nature of the behaviour). Key beliefs identified within these domains included: conflicting comments about who was responsible for the test-ordering, inability to cancel tests ordered by fellow physicians, and the problem with tests being completed before anaesthesiologists see patients. Anaesthesiologists often ordered tests based on who may be the attending anaesthesiologist on the day of surgery while surgeons ordered tests they thought anaesthesiologists might need. There was also a range of comments about the consequences associated with reducing testing, from negative (delay or cancel patients’ surgeries), to indifference (little or no change in patient outcomes), to positive (save money, avoid unnecessary investigations). |
| Study outputs |
| Patey et al. [ |
Identifying key domains to target in an intervention
| Study title |
| A cross-country comparison of intensive care physicians’ beliefs about their transfusion behaviour: A qualitative study using the theoretical domains framework. |
| Rationale for changing behaviour |
| Transfusion of blood, a scarce and costly resource, is used for treating a variety of medical conditions. There is a wide variation in blood transfusion behaviour across different medical disciplines including intensive care physicians. A restrictive transfusion is, at least, equivalent and possibly superior to a more liberal transfusion. The aim of the study was to elicit beliefs about specified behaviour within each theoretical domain and role of the domain in influencing the behaviour in intensive care units across Canada. |
| Study design and materials |
| Ten intensive care physicians throughout Canada were interviewed. Physicians’ responses were coded into theoretical domains, and specific beliefs were generated for each response. Theoretical domains relevant to behaviour change were identified if they included belief statements that might be potential barriers for changing transfusion behaviour and fulfilled the following criteria: (1) relatively high frequency of specific beliefs, (2) presence of conflicting beliefs, and (3) evidence of strong beliefs that may impact on the behaviour. All three criteria were considered concurrently to judge relevance of the domains. Beliefs within the domains were analysed for psychological constructs and were subsequently used to select psychological theories using the methodology proposed by Francis et al. [ |
| Findings and conclusions |
| Seven theoretical domains populated by 31 specific beliefs were identified as relevant to the target behaviour using all criteria. The relevant theoretical domains were Knowledge, Social/professional role and identity, Beliefs about capabilities, Beliefs about consequences, Motivation and goals, Social influences and Behavioural regulation. For example, Knowledge domain was identified as potentially relevant because majority participants reported the belief that there is not enough evidence to support watching and waiting in all patient populations. Motivation and goals was identified as a key domain because conflicting specific beliefs were elicited (e.g. Watching and waiting conflicts with other goals in opposition to Watching and waiting is compatible with other goals). When the belief that ‘emotion does not affect my decision to transfuse’ was consistently reported, it was concluded that the Emotion domain was not relevant to the transfusion behaviour. For greater detail please see the published article. |
| Study outputs |
| Islam et al. [ |
Fig. 2Linking TDF to the COM-B model [43]
Linking TDF to a theoretical model to maximise coverage of domains under time constraints
| Study title |
| Factors Influencing Variation in Physician Adenoma Detection Rates: a Theory-Based Approach for Performance Improvement. |
| Rationale for changing behaviour |
| Interventions to improve physician adenoma detection rates (ADRs) for colonoscopy have generally not been successful. There is limited understanding of which factors influence variation which might be appropriate targets for intervention. |
| Study design and materials |
| Three focus groups of gastroenterologists and three of endoscopy nurses were conducted at medical centres in Northern California. As participants were available for a limited time (45–60 minutes), an adaptive interviewing method was used. First, participants were asked questions covering the three components of the COM-B model (capability, opportunity and motivation) to identify factors relevant in explaining ADR variation. Then for each relevant COM-B component, participants were asked questions covering the related domains of the TDF. For example, to investigate participants’ capabilities to perform a behaviour, they were asked “would you be more/less likely to do ‘X’ if you had greater physical and/or psychological ability?” If they responded positively, the researcher asked further questions structured by TDF domains representing capability, i.e. knowledge; physical skills; memory, attention and decision processes and behavioural regulation. |
| Findings and conclusions |
| This adaptive interviewing method optimised the time available with higher level COM-B questions acting as a filter to potentially relevant TDF domains. |
| Study outputs |
| Atkins et al. [ |