Abstract
Introduction:
Improving medication safety during transition of care is an international healthcare priority. While existing research reveals that medication-related incidents and associated harms may be common following hospital discharge, there is limited information about their nature and contributory factors at a national level which is crucial to inform improvement strategy.
Aim:
To characterise the nature and contributory factors of medication-related incidents during transition of care from secondary to primary care.
Method:
A retrospective analysis of medication incidents reported to the National Reporting and Learning System (NRLS) in England and Wales between 2015 and 2019. Descriptive analysis identified the frequency and nature of incidents and content analysis of free text data, coded using the Patient Safety Research Group (PISA) classification, examined the contributory factors and outcome of incidents.
Results:
A total of 1121 medication-related incident reports underwent analysis. Most incidents involved patients over 65 years old (55%, n = 626/1121). More than one in 10 (12.6%, n = 142/1121) incidents were associated with patient harm. The drug monitoring (17%) and administration stages (15%) were associated with a higher proportion of harmful incidents than any other drug use stages. Common medication classes associated with incidents were the cardiovascular (n = 734) and central nervous (n = 273) systems. Among 408 incidents reporting 467 contributory factors, the most common contributory factors were organisation factors (82%, n = 383/467) (mostly related to continuity of care which is the delivery of a seamless service through integration, co-ordination, and the sharing of information between different providers), followed by staff factors (16%, n = 75/467).
Conclusion:
Medication incidents after hospital discharge are associated with patient harm. Several targets were identified for future research that could support the development of remedial interventions, including commonly observed medication classes, older adults, increase patient engagement, and improve shared care agreement for medication monitoring post hospital discharge.
Plain language summary
Keywords
Introduction
The transition of care from hospital to community settings has been identified as an area of high risk for medication-related safety incidents, due to change in care location and movement between services, and is currently the focus of international improvement efforts. 1 In March 2017, medication safety at the transfer of care was brought to global attention with the publication of the World Health Organization’s (WHO) Global Patient Safety Challenge: Medication Without Harm, as one of three priorities for action. 1 A systematic review of 54 studies in this field reported that one in two, and one in five (adult and elderly) patients after hospital discharge were affected by medication errors (MEs) and adverse drug events (ADEs), respectively. 2 This confirms the role of MEs and ADEs as a frequent and serious threat to patient safety; however, less is known about their nature and contributory factors.
Recently published studies and reviews have reported initiatives to improve medication safety and reduce ADEs during the transition of care, including pre and post discharge services, such as medication reconciliation, the use of multidisciplinary teams, deprescribing strategies and information technology–based interventions.3–10 However, these studies do not report a consistent impact of these interventions in reducing medication safety challenges post hospital discharge,11,12 which may be attributed to a need for greater theoretical understanding of the contributory factors related to such incidents thereby limiting the design of robust interventional studies. It is therefore crucial to explore in depth the cause of MEs that occurs post hospital discharge to inform the design of robust theory–driven interventions. 13
Previously, the nature and origins of patient safety incidents following hospital discharge have been explored at a national level using incident report reviews, 14 a technique that yields sensitive data to understand causes of incidents and guide improvement. 15 However, available evidence using patient safety incidents post hospital discharge was either not focused on medication safety (such as their severity and contributory factors), or was not conducted at a national level which may support greater generalisability.14,16–18 This study was designed to address these limitations and inform improvement strategies by aiming to present up-to-date and in-depth insights into the nature and contributory factors of medication incidents occurring following hospital discharge and reported to the National Reporting and Learning System (NRLS) across England and Wales.19,20
Methods
The reporting of this study follows the criteria specified in The Reporting of Studies Conducted using Observational Routinely Collected Health Data (RECORD) Statement. 21 The study design was a retrospective multi-methods study, where quantitative descriptive analysis of all incidents was followed by a content analysis of incident report free text narratives to identify contributory factors.
Data source
The research team obtained anonymised medication-related patient safety incident reports pertaining to the transition from secondary to primary care from NHS England/Improvement (NHS E/I). The study was exempt from formal ethical approval due to the anonymised nature of the data. Following the exploratory stage, a five-year period between 2015 and 2019 was selected to capture sufficient data. The data analytics team at NHS E/I then performed the main extraction of data from the NRLS data set for incident category ‘medication’ and the care setting of occurrence ‘general practice’. To compile the data set, NRLS analytics completed a free text search based on the term ‘discharge’, including misspelling and variations in the free text column fields.
Eligibility criteria
The data consisted of medication-related patient safety incidents pertaining to the transition from secondary care to any settings in primary care, reported to the NRLS in England and Wales between 1 January 2015 and 31 December 2019. The incidents were reviewed to ensure they were related to medication and the post hospital discharge stage. Exclusion criteria included patients discharged from outpatient clinics, hospice care, rehabilitation settings or care/nursing homes.
Variables and definition
The term ‘patient safety incident’ was defined in this study as ‘Any unintended or unexpected incident that could have or did lead to harm for one or more patients receiving NHS-funded healthcare’. 22 Throughout this paper, the terms ‘medication-related patient safety incident’ and ‘incident’ are used interchangeably to mean medication-related patient safety incidents that occurred after hospital discharge. For the contributory factors analysis, the term ‘contributory factor(s)’ was defined as ‘any agent thought to have played a part in the origin or development of an incident, or to increase the risk of an incident’. 23 The term ‘monitoring errors’ was defined as ‘either explicit i.e. the hospital indicated monitoring should be undertaken, or implicit i.e. monitoring would be expected in routine practice based on published guidelines’. 24
The NRLS data set consisted of 24 original variables, including descriptive categorical data and unstructured free text data. The variables that were provided as free text data included a description of what happened (IN07), actions preventing reoccurrence (IN10) and apparent cause(s) (IN11). Incident severity data could have been reported as either potential or actual severity by the incident reporter.
Data cleaning and data coding
Initially, incidents not meeting the eligibility criteria were separated in a list which was independently reviewed by two researchers (D.S. and R.N.K.). The research team, including members A.C.S. and R.N.K. experienced in analysing patient safety incident reports, then had frequent concordance meetings to discuss the data and agree on the final list of excluded incidents. Data coding was completed in Microsoft Excel®, 2010 (Microsoft, Redmond, WA, USA). Medication coding was based on medication classifications in the British National Formulary (BNF) chapters. 25
Data were further coded without modification of fields based on existing categories from the NRLS. The exception was the severity of harm, which was re-coded where there was explicit evidence to warrant the need to amend the severity using the classification of patient safety incidents in primary care. 26 This was undertaken to support the capture of actual (rather than potential/uncertain) healthcare-associated harm events, an approach carried out by other researchers evaluating NRLS data. 27 The re-coded severity of harm was used in the results section instead of the severity of harm provided by the incident reporter.
The coding of the descriptive free text data was based on the Patient Safety Research Group (PISA) coding classification. 28 The PISA classification has been used to characterise safety incidents from across the healthcare continuum including primary and secondary care. 29 It has been empirically developed by analysing national patient safety incidents from the NRLS in England and Wales. 28 The PISA classification is inclusive of several coding frameworks aligned to the WHO International Classification of Patient Safety (ICPS) concepts. It has been empirically developed through a constant comparative method from clinician-led analysis of more than 70,000 patient safety incident reports. Previous studies have characterised the nature of patient safety incident data from the NRLS utilising the PISA framework to code the data.30–33
The descriptive free text data were screened and codes were systematically applied from coding frameworks to deconstruct incident report narratives, an approach used by others in the field.19,20 The first step of coding included identification of the primary incident type (PIT), followed by tracking events in the incidents chronologically; backward to identify the contributory factor(s) and forward to identify the outcome(s). The PISA classification includes four main contributory factor codes (including patient factors, staff factors, equipment and organisation factors) and 178 subcodes for the contributory factors, along with five main outcome codes with 153 subcodes. The free text narrative was coded using a two-step process, using main theme codes and subtheme codes, which served as a quality check of the free text data. The coding was explicitly based on the data in the incident narrative, where no assumption was made regarding the incident’s context or patient clinical condition.
Data validation
Twenty per cent of the data (n = 237/1121 incidents) was independently coded by two researchers (R.N.K. and D.S.) to confirm the accuracy of coding and validate the coding framework. This coding included the contributory factors and outcome using the PISA classification, and the severity of harm. The team had frequent concordance meetings with A.C.S. to discuss the results of the independent coding validation process and to agree on the strategy for identification of the primary incident type (PIT), and final coding approach.
Data analysis
Data analysis was completed in Stata® version 14.0 software (StataCorp, College Station, TX, USA). Once coded, quantitative data analysis involved exploratory analysis of all medication-related incidents to find emerging patterns and trends. Descriptive analyses of all reported incidents was applied to describe the nature (and patterns over time) of medication safety incidents. Cross tabulation was completed to compare variables to determine any patterns. If more than one medication was associated with an incident, then each medication was counted in the analysis. Thus, the total number of medications involved was more than the number of incidents.
Analysis of free text incident descriptions was performed to examine the contributory factors for incidents. This free text analysis involved content analysis, where free text was screened to identify data that aligned to PISA coding categories as described earlier. These data were grouped into emerging categories, an approach used by others in the field.19,20
Results
Overview of data set
Of 1324 medication-related incident reports, 203 were subsequently excluded. Reasons for exclusion were incident not hospital discharge-related (n = 131), discharge from clinic (n = 33), repeated incidents (n = 28), discharge from rehabilitation settings (n = 4), discharge from prison (n = 3), discharge from hospice care (n = 3) and discharge from a care/nursing home (n = 1). The final data set included 1121 medication-related incidents. Patient age was inconsistently provided and present in 79% (n = 888/1121) of reports.
Descriptive data
Summary statistics
The majority of reported incidents which included patient age involved patients aged above 65 years (70.4%, n = 626/888). A total of 77.6% of the incidents did not contain sufficient information to code a harm outcome. Following recoding, it was found that almost one-eighth (12.6%, n = 142/1121) of incidents with a reported harm outcome were associated with actual patient harm [low harm (5.1%, n = 58/1121), moderate harm (6.1%, n = 69/1121), severe harm (0.7%, n = 8/1121) and death (0.6%, n = 7/1121)]. Table 1 presents summary statistics for the categorical variables.
Summary statistics of categorical variables from N = 1121 incident reports.
Re-coded severity of harm.
Medication incidents occurred most frequently in the prescribing (42%, n = 479/1121) followed by the administration stage (22.5%, n = 253/1121) and then the monitoring stage (12%, n = 140/n = 1121). The most reported MEs categories were wrong or unclear dose or strength (19%, n = 212/1121), followed by omitted medicine (13%, n = 148/1121) and then wrong drug/medicine (10%, n = 118/1121). Incidents involving patients aged less than 18 years were associated with the highest proportion of incidents occurring at the administration stage compared with other age groups (34%, n = 15/44), whereas incidents involving patients aged between 18 and 65 were associated with the highest proportion occurring at the prescribing stage (49%, n = 107/218). Incidents involving patients aged more than 65 years were associated with the highest proportion of incidents occurring at the monitoring stage (14%, n = 89/626). Incidents affecting patients aged more than 65 years had the highest proportion of incidents occurring due medication omission (15%, n = 93/626).
Medication
The total number of medications involved in the incidents was 1504, with some incidents involving more than one medication. In addition, 53 incident reports had no information about the name of medication(s) involved. Table 2 reports the three most common medication classes associated with medication incidents which were the cardiovascular system (48.8%, n = 734/1504), central nervous system (18%, n = 273/1504) and endocrine system (12%, n = 183/1504). Table 2 also provides the most common specific medications within these common medication classes associated with incidents – antiplatelets (n = 126) followed by factor Xa inhibitors (n = 124), opioids (n = 79), insulin (n = 76), beta-adrenoceptor blockers (n = 76), heparins (n = 71), vitamin K antagonists (n = 67) and diuretics (n = 66). The most common medication classes associated with incidents in the monitoring stages were antithrombotic medications namely warfarin (n = 34), antiplatelets (n = 21) and factor Xa inhibitors (n = 19). Incidents involving heparin (46% n = 32/70) followed by insulin (33%, n = 25/76) were associated with a higher proportion related to the administration stage than other stages (see Table 1 in Supplementary File). The most frequently observed medication classes associated with incidents in patients aged less than 18 years were anti-infective medications (36%, n = 17/47), for patients aged 18–65 years these were cardiovascular medications (40.2%, n = 126/313) and for patients aged more than 65 years, were also cardiovascular medications (53.9%, n = 458/849), respectively.
Medication associated with medication incidents based on BNF chapter.
BNF, British National Formulary.
Outcome data ‘harm severity’
Table 2 in Supplementary File represents the observed differences between the harm severity originally provided in the incident report data and the severity of ‘actual’ harm following recoding. To assess the effect of different variables on harm severity, contingency tables were used. Table 3 in Supplementary File compares the re-coded harm severity stratified by patient age and origin of incidents. In addition, a higher proportion of ‘any harm’ incidents involved patients older than 65 years compared with other age groups.
Table 4 in Supplementary File shows the distribution of re-coded actual harm incident severity according to medication use process stage, and ME categories. The table shows the monitoring (17%) and administration (15%) stages were associated with a higher proportion of harmful incidents compared with the prescribing stage (12%). The table also highlights that for ME types reported at least 60 times, medication omission was associated the greatest proportion of ‘harmful’ incidents (19%, n = 28/148) followed by ‘wrong drug/medicine’ (16%, n = 19/118).
The most common medication group associated with a higher proportion of ‘any harm’ incidents among the top three most-frequent implicated medication classes were medications for the central nervous system (15.3%, n = 42/273), compared with medication for the cardiovascular (13.2%, n = 97/734), and endocrine system (12%, n = 22/183). The medication classes that were associated with patient death were cardiovascular medication (n = 5), nervous system medication (n = 1) and medication for the endocrine system (n = 1).
Incident outcomes
The reported outcome of all included medication safety incidents is presented in Table 3. This includes a total of 1660 with some incidents containing several reported outcomes. From the cohort of identified and reported outcomes, 34% (n = 564/1660) were organisation inconvenience, 27% (n = 455/1660) were an inconvenience to the patient, and 13% (n = 216/1660) were patient clinical harm. The most common outcomes related to organisation inconvenience were phone calls/follow-up (73%, n = 412/564), and the most common outcome related to patient inconvenience was missed dose(s) of medication (23%, n = 107/455). Table 3 presents the breakdown of the top four most-common outcomes in each main category (see Table 5 in Supplementary File for full list).
Frequency of most common medication-related incident outcomes.
The first missed dose outcome refers to when the outcome caused inconvenience to the patient without reported patient harm.
If the patient had a medication with a wrong frequency (more than what is intended), or in the patient had been given a medication that was used before but is no longer needed.
The second missed dose outcome refers to when the patient had a clinical harm as a result.
Inconvenience to patients due to unnecessary treatment was highlighted. These included short medication regimens that were continued for the long term (n = 12), with the most common medications involved being antiplatelets (n = 8), and anticoagulants (n = 3). One incident stated ‘Patient attended for medication review May 2016 – noted been on clopidogrel since ACS in December 2010. Discharge letter recorded to continue clopidogrel for 9 months only. Discussed with patient and medication stopped following review medical records’. Another inconvenience to patients was repeated visits to/from healthcare providers, which was observed in three incidents in which the quantity of liquid antibiotic medication dispensed for the paediatric patients was insufficient at discharge prompting further supplies. One incident stated, ‘This child was discharged from hospital; according to discharge he should be on antibiotics for 2 weeks but was given only one bottle and was advised to ask GP for another’.
Contributory factors
A total of 36% (n = 408/1121) of the reported incidents contained at least one contributory factor explicitly mentioned in the incident free text narrative. Among the incidents with known contributory factors (n = 408) the majority (87%, n = 357/408) had one contributory factor, 10.7% (n = 44) of the incidents reported two factors, 1.4% (n = 6) of incidents contained three factors, and 0.2% (n = 1) incidents had four reported contributory factors. The total number of identified contributory factors were therefore 467 from 408 incidents. The most common types of factors involved in the 51 incidents with multiple contributory factors were organisation factors (65%, n = 72/110), followed by staff factors (30%, n = 33/110). The most common combination of factors in incidents with multiple contributory factors was continuity of care issues between secondary and primary care, and between healthcare and pharmacy (20%, n = 10/51).
Table 4 presents summary statistics for the contributory factors identified from the free text descriptions across all incidents. The most common contributory factors reported were organisation factors (82%, n = 383/467) followed by staff factors (16%, n = 75/467). Almost all organisation factors (98%, n = 377/383) were related to continuity of care (the delivery of a seamless service through integration, co-ordination and the sharing of information between different providers), followed by working conditions (1%, n = 5/383), and protocols/policies/standards/guidelines inadequate, inefficient absent or not available (n = 1/383). The most common continuity of care-related organisation factor was ‘continuity of care between secondary and primary care’ (n = 308) and included issues in the discharge letters such as hard to read discharge letters, contradicting information in discharge letters, delay in sending discharge letters and no discharge letter communication being sent. This was followed by ‘continuity of care issues between wider healthcare and pharmacy services’ (n = 35). A total of 47% (n = 35/75) of staff-related contributory factors were cognitive issues, such as mistakes, followed by task-related issues (44%, n = 33/75). Other staff-related factors included ‘failure to follow protocol’ (n = 14) and ‘wrong professional carrying out the task’ (n = 14). Table 5 provides examples of incident report extracts describing these factors. A total of 13.5% (n = 52/383) incidents involving organisation factors and 16% (n = 12/75) involving staff factors resulted in ‘any harm’ to patients.
Frequency of incidents’ contributory factors.
GP, General Practitioner.
Incident extracts of the most common contributory factors in each category.
GP, General Practitioner; FP10, prescription paper form.
Organisation factors were the major factor affecting the monitoring stage (36%, n = 56/153) (e.g. referrals to the anticoagulation clinic), administration stage (32.8%, n = 87/265) (e.g. medication administration by district nurse), and prescribing stage incidents (28%, n = 142/505) [e.g. prescribing of medication in Monitored Dosage Systems (MDS); blister packs] (see Table 6 in Supplementary File). Examples of ‘continuity of care between secondary and primary care’ incidents includes issues with referrals to anticoagulation clinic after hospital discharge (n = 12). Incident narratives mentioned that local anticoagulation services were not being made aware of patient’s warfarin status (whether to start/stop warfarin) post discharge; other incidents stated there was an absence of arrangement for INR testing and follow-up with the anticoagulation clinic. One incident stated, ‘Patient discharged after DVT on warfarin but no referral to anticoagulation clinic done, only given 3 days warfarin and clexane and told to go to GP for INR testing and onward management’. Other incidents in this category involving community (n = 9) or district nurses (n = 27). Incident narratives reported that nurses were not being made aware that the patient was discharged, and no administration sheet/prescription was sent to the nurse. Insulin administration was the most common medication implicated with these incidents, with one incident stating ‘District nurses stated that they were not aware of the discharge and that they should give the patient this daily injection’. Organisational factors including those relating to both ‘continuity of care between secondary and primary care’ (n = 24) and ‘between healthcare and pharmacy’ (n = 19) were seen to be associated with patients using MDS (otherwise known as compliance aids). Incidents stated that MDS was involved in incidents in a variety of ways, including confusion and errors due to sending a faxed discharge letters to the community pharmacy but not to the general practitioner, and the community pharmacy supplying the patient with ‘old’ medication in an MDS before receiving the updated medication list in a discharge letter, which then resulted in medication getting mixed up as the new medication was dispensed.
Incidents involving central nervous system medication were associated with the highest proportion of those occurring due to staff contributory factors (25%, n = 29/117). These included examples of opioid prescribing based on clinical notes being inappropriately handled by administrative staff, failure to follow relevant safety alert when prescribing metoclopramide and issues with prescriptions related to mental healthcare. Incidents involving cardiovascular and endocrine systems were associated with higher proportion of those occurring due to organisation contributory factors [86% (n = 274/318) and 84% (n = 69/82), respectively].
Discussion
Key results
The results of this study highlight that the time-period following hospital discharge is a high-risk phase of care associated with ME, associated harm and inconvenience to patients and health providers, and reflects the problems catalysing the need for current international and national safety improvement priorities. The findings help characterise the breadth of problems the WHO and NHS safety agendas seek to address by elucidating important contributory factors to these incidents relating mainly to organisational and patient issues, and in doing so identify emerging targets to support the development of remedial interventions. These targets include the older adult population, medication monitoring stage, specific medication classes and the importance of cross-interface working.1,34
We have observed that medications commonly implicated in reported incidents were cardiovascular, endocrine and central nervous systems, with the most common specific medications being antithrombotic medications, insulin, beta-blockers, diuretics and opioids. These results further support the observation raised by others previously that these medication groups are implicated in MEs and related patient harm across multiple stages of the patient healthcare journey.35–41 The medication groups identified from this study may therefore become a focus of attention by researchers and healthcare staff for remedial action. 42 For example, a system to identify medications/patients at high risk of medication safety incidents for review in primary care may be helpful. Prescribing safety indicators could be used following hospital discharge in a more targeted way to help identify patients at risk, including elderly patients prescribed such medication classes without planned monitoring post hospital discharge. These could be incorporated into prescribing indicator tools/interventions.42–45 These indicators/high risk medication data might also be incorporated into pharmaceutical prioritisation tools, 46 which may be used to target post hospital discharge reviews in general practices. Such tools are already used in acute hospital care to identify high risk medications and patient characteristics (e.g. older age) for intervention and prioritisation of pharmacy service provision. 47
This study adds important understanding regarding the underlying origins of MEs and related harm incidents arising post hospital discharge. Organisational issues were the most commonly reported contributory factors and frequently involved lack of co-ordination of care between secondary and primary care, and between healthcare and pharmacy services. This involved poor co-ordination in sending discharge-related documentation with general practices and community pharmacies. It has been observed that community pharmacies may be left out of the loop at care transition 48 despite the valuable role community pharmacies could play in hospital discharge care transitions.49,50 These findings support the recent implementation of electronic interventions to improve timely communication of medication and other information between healthcare providers, 51 such as the NHS Discharge Medicine Service (DMS) which involves sending electronic discharge letters to a named community pharmacy in a timely manner. 51 Implementation science approaches may be a useful lens by which to study the introduction of such organisational interventions,52,53 as more research is needed to understand the contextual impact of organisational interventions focusing on MEs post hospital discharge. A previous systematic review of evidence of interventions in primary care to reduce MEs concluded that organisational and professional interventions had little or no impact on reducing preventable MEs that led to hospital admission, emergency department visits or mortality. 54
The next most commonly identified contributory factor was staff factors (n = 75), with cognitive issues (including mistakes and misinterpreting handwriting) being the most common specific factors under this category. Previous studies have demonstrated the importance of adequate space, time and concentration to complete tasks 55 with our findings highlighting similar issues. While not one of the more commonly reported contributory factors in our study, administrative procedures [such as wrong professional carries out task (e.g. admin staff filling out prescriptions)] have been cited elsewhere as a leading cause of healthcare-associated adverse events in primary care settings.56,57 These and wider findings support focusing on skill mix as an improvement target, with one example of integrating clinical pharmacists in general practices to triage discharge letters and complete medication reconciliations. 58 Yet, the results presented in this study highlighted that in a number of incidents the origins were multifactorial, which highlights the potential need for one or more interventions to address multiple contributory factors.
This study observed wrong/unclear dose or strength and medication omission as the most commonly reported error categories (n = 212/1121), with medication omission also associated with a high proportion of incidents causing actual harm (19%, n = 28/148). The results presented in this study reflect those of Riordan et al. 59 and Ashcroft et al., 60 who also found that medication omission was the most common prescribing error at or post hospital discharge. This study also found that medication incidents were reported most commonly in the prescribing stage (42%, n = 479/1121) followed by the administration stage (22.5%, n = 253/1121). Medication processes implicated with a high proportion of patient harm were the drug monitoring (17%, n = 24/140) and administration stages (15%, n = 39/253). This might be due to the context surrounding this stage of the care journey, where an error in conducting medication monitoring might be unnoticed without adequate follow-up and result in patient harm. The latter suggests that real-time surveillance of risk may help and could be a target for additional safeguarding via prescribing safety indicators for medication monitoring.
Additional novel insights to emerge from this analysis is the wider consequences of medication incidents post-discharge beyond patient harm outcomes, including organisational and patient inconvenience. Our analysis revealed that providers and patients often needed to work across care boundaries to resolve medication issues, taking time and resources away from self-care and other interventions. MEs have already shown to have a significant economic burden attached to them, 61 and this study adds to this narrative. For example, this study found that monitoring errors commonly led to extended courses of medication, sometimes lasting years, when they were intended for a specific short course. However, the financial implication of these incidents was not factored in this analysis, and few previous studies have investigated this cost. 62 In addition, in this study 72 incidents were reported where the patient or relative/carer identified the error, and harm was prevented or mitigated. Comparison of this finding with those of other recent studies confirms that the active involvement of patients and carers can have a positive impact on patient safety.18,63–70 These results further support the incorporation of patient and family engagement in patient safety strategies.34,71
The involvement of MDS prescribing and supply errors in medication safety incidents emerged from the incident reports we analysed. These results align with those observed in a recent report of patient harm due to MDS through analysing incident reports submitted to the NRLS in 2018, which found that prescribing errors were the most common error associated with MDS. 72 These findings suggest that future research is needed to improve medication safety for patients supplied and using MDS post hospital discharge. These findings, while preliminary, suggest that MDS use and the patients whom they are supplied to post discharge might be associated with MEs. Despite their widespread use, there remains a paucity of evidence on the impact of MDS on patient adherence.73,74
Despite the useful data identified from this study, the NRLS data are still under-utilised by health service researchers. 27 There may be scope to further enhance use of incident report data in research with the new system [Learn From Patient Safety Events (LFPSE)], formally launched nationally in August 2022. The LFPSE is expected to be easier to access and report, and collect different types of data than the existing NRLS system.75,76
Strengths and limitations
Key strengths of this study include a systematic approach to coding of the incident reports using a validated framework (PISA classification) that has been used previously by several incident report analysis papers, alongside the use of independent validation of incidents with consensus meetings within the research team. The study also examined incidents over a 5-year period to capture medication*related patient safety incidents after hospital discharge and based our approach on the findings of a preliminary data analysis phase involving 500 incidents to support refinement of our data extraction strategy. However, this study has several limitations. The data lacked complete information on patient age. Inherent limitations associated with incident report research also include a lack of further patient demographic information such as gender and co-morbidities which may enhance the understanding of incident context through other fields such as incident type and incident location were completed in all reports.77,78 A limitation of the data may also relate to the quality of the free text information that is being written to describe the incidents as described above, as we identified only 36% (n = 408/1121) incidents with sufficient free text data to analyse contributory factors. This is in common with earlier research,19,20 and when considered alongside the known underreporting of incidents might limit learning from their occurrence. Furthermore, there is a risk with studies of this nature that misclassification is possible given the interpretation required to code free text data using coding frameworks.
Conclusion
This is the first study to perform an in-depth analysis of the nature and contributory factors underpinning medication-related incidents occurring after hospital discharge in the United Kingdom. The study found that almost one-eighth of included incidents were associated with patient harm and that incident origins were often multifactorial and emerging at organisational and staff levels. The study highlights the importance of adequate skill mix, cross-interface working and accurate and prompt communication of discharge letters post hospital discharge, which highlights and informs the role of interventions in improving communication post hospital discharge, and their impact on medication safety.
Supplemental Material
sj-docx-1-taw-10.1177_20420986231154365 – Supplemental material for Analysis of the nature and contributory factors of medication safety incidents following hospital discharge using National Reporting and Learning System (NRLS) data from England and Wales: a multi-method study
Supplemental material, sj-docx-1-taw-10.1177_20420986231154365 for Analysis of the nature and contributory factors of medication safety incidents following hospital discharge using National Reporting and Learning System (NRLS) data from England and Wales: a multi-method study by Fatema A. Alqenae, Douglas Steinke, Andrew Carson-Stevens and Richard N. Keers in Therapeutic Advances in Drug Safety
Footnotes
References
Supplementary Material
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