Developing new ways of measuring the quality and impact of ambulance service care: the PhOEBE mixed-methods research programme

Q4 Medicine
J. Turner, A. Siriwardena, J. Coster, R. Jacques, A. Irving, A. Crum, H. B. Gorrod, J. Nicholl, V. Phung, Fiona Togher, R. Wilson, A. O’Cathain, A. Booth, D. Bradbury, S. Goodacre, A. Spaight, J. Shewan, R. Pilbery, Daniel Fall, Maggie Marsh, Andrea Broadway-Parkinson, R. Lyons, H. Snooks, M. Campbell
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These quality measures do not reflect the care for the wide range of problems that ambulance services respond to and the Prehospital Outcomes for Evidence Based Evaluation (PhOEBE) programme sought to address this.The aim was to develop new ways of measuring the impact of ambulance service care by reviewing and synthesising literature on prehospital ambulance outcome measures and using consensus methods to identify measures for further development; creating a data set linking routinely collected ambulance service, hospital and mortality data; and using the linked data to explore the development of case-mix adjustment models to assess differences or changes in processes and outcomes resulting from ambulance service care.A mixed-methods study using a systematic review and synthesis of performance and outcome measures reported in policy and research literature; qualitative interviews with ambulance service users; a three-stage consensus process to identify candidate indicators; the creation of a data set linking ambulance, hospital and mortality data; and statistical modelling of the linked data set to produce novel case-mix adjustment measures of ambulance service quality.East Midlands and Yorkshire, England.Ambulance services, patients, public, emergency care clinical academics, commissioners and policy-makers between 2011 and 2015.None.Ambulance performance and quality measures.Ambulance call-and-dispatch and electronic patient report forms, Hospital Episode Statistics, accident and emergency and inpatient data, and Office for National Statistics mortality data.Seventy-two candidate measures were generated from systematic reviews in four categories: (1) ambulance service operations (n = 14), (2) clinical management of patients (n = 20), (3) impact of care on patients (n = 9) and (4) time measures (n = 29). The most common operations measures were call triage accuracy; clinical management was adherence to care protocols, and for patient outcome it was survival measures. Excluding time measures, nine measures were highly prioritised by participants taking part in the consensus event, including measures relating to pain, patient experience, accuracy of dispatch decisions and patient safety. Twenty experts participated in two Delphi rounds to refine and prioritise measures and 20 measures scored ≥ 8/9 points, which indicated good consensus. Eighteen patient and public representatives attending a consensus workshop identified six measures as important: time to definitive care, response time, reduction in pain score, calls correctly prioritised to appropriate levels of response, proportion of patients with a specific condition who are treated in accordance with established guidelines, and survival to hospital discharge for treatable emergency conditions. From this we developed six new potential indicators using the linked data set, of which five were constructed using case-mix-adjusted predictive models: (1) mean change in pain score; (2) proportion of serious emergency conditions correctly identified at the time of the 999 call; (3) response time (unadjusted); (4) proportion of decisions to leave a patient at scene that were potentially inappropriate; (5) proportion of patients transported to the emergency department by 999 emergency ambulance who did not require treatment or investigation(s); and (6) proportion of ambulance patients with a serious emergency condition who survive to admission, and to 7 days post admission. Two indicators (pain score and response times) did not need case-mix adjustment. 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There are opportunities to improve data linkage processes and to further develop, validate and simplify these measures.The National Institute for Health Research Programme Grants for Applied Research programme.","PeriodicalId":32307,"journal":{"name":"Programme Grants for Applied Research","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2019-04-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"16","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Programme Grants for Applied Research","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3310/PGFAR07030","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Medicine","Score":null,"Total":0}
引用次数: 16

Abstract

Ambulance service quality measures have focused on response times and a small number of emergency conditions, such as cardiac arrest. These quality measures do not reflect the care for the wide range of problems that ambulance services respond to and the Prehospital Outcomes for Evidence Based Evaluation (PhOEBE) programme sought to address this.The aim was to develop new ways of measuring the impact of ambulance service care by reviewing and synthesising literature on prehospital ambulance outcome measures and using consensus methods to identify measures for further development; creating a data set linking routinely collected ambulance service, hospital and mortality data; and using the linked data to explore the development of case-mix adjustment models to assess differences or changes in processes and outcomes resulting from ambulance service care.A mixed-methods study using a systematic review and synthesis of performance and outcome measures reported in policy and research literature; qualitative interviews with ambulance service users; a three-stage consensus process to identify candidate indicators; the creation of a data set linking ambulance, hospital and mortality data; and statistical modelling of the linked data set to produce novel case-mix adjustment measures of ambulance service quality.East Midlands and Yorkshire, England.Ambulance services, patients, public, emergency care clinical academics, commissioners and policy-makers between 2011 and 2015.None.Ambulance performance and quality measures.Ambulance call-and-dispatch and electronic patient report forms, Hospital Episode Statistics, accident and emergency and inpatient data, and Office for National Statistics mortality data.Seventy-two candidate measures were generated from systematic reviews in four categories: (1) ambulance service operations (n = 14), (2) clinical management of patients (n = 20), (3) impact of care on patients (n = 9) and (4) time measures (n = 29). The most common operations measures were call triage accuracy; clinical management was adherence to care protocols, and for patient outcome it was survival measures. Excluding time measures, nine measures were highly prioritised by participants taking part in the consensus event, including measures relating to pain, patient experience, accuracy of dispatch decisions and patient safety. Twenty experts participated in two Delphi rounds to refine and prioritise measures and 20 measures scored ≥ 8/9 points, which indicated good consensus. Eighteen patient and public representatives attending a consensus workshop identified six measures as important: time to definitive care, response time, reduction in pain score, calls correctly prioritised to appropriate levels of response, proportion of patients with a specific condition who are treated in accordance with established guidelines, and survival to hospital discharge for treatable emergency conditions. From this we developed six new potential indicators using the linked data set, of which five were constructed using case-mix-adjusted predictive models: (1) mean change in pain score; (2) proportion of serious emergency conditions correctly identified at the time of the 999 call; (3) response time (unadjusted); (4) proportion of decisions to leave a patient at scene that were potentially inappropriate; (5) proportion of patients transported to the emergency department by 999 emergency ambulance who did not require treatment or investigation(s); and (6) proportion of ambulance patients with a serious emergency condition who survive to admission, and to 7 days post admission. Two indicators (pain score and response times) did not need case-mix adjustment. Among the four adjusted indicators, we found that accuracy of call triage was 61%, rate of potentially inappropriate decisions to leave at home was 5–10%, unnecessary transport to hospital was 1.7–19.2% and survival to hospital admission was 89.5–96.4% depending on Clinical Commissioning Group area. We were unable to complete a fourth objective to test the indicators in use because of delays in obtaining data. An economic analysis using indicators (4) and (5) showed that incorrect decisions resulted in higher costs.Creation of a linked data set was complex and time-consuming and data quality was variable. Construction of the indicators was also complex and revealed the effects of other services on outcome, which limits comparisons between services.We identified and prioritised, through consensus processes, a set of potential ambulance service quality measures that reflected preferences of services and users. Together, these encompass a broad range of domains relevant to the population using the emergency ambulance service. The quality measures can be used to compare ambulance services or regions or measure performance over time if there are improvements in mechanisms for linking data across services.The new measures can be used to assess different dimensions of ambulance service delivery but current data challenges prohibit routine use. There are opportunities to improve data linkage processes and to further develop, validate and simplify these measures.The National Institute for Health Research Programme Grants for Applied Research programme.
开发衡量救护车服务护理质量和影响的新方法:PhOEBE混合方法研究方案
救护车服务质量措施侧重于反应时间和少数紧急情况,如心脏骤停。这些质量措施没有反映出救护车服务应对的广泛问题的护理,院前结果基于证据的评估(PhOEBE)计划试图解决这一问题。目的是通过审查和综合院前救护车结果措施的文献,并使用共识方法确定进一步发展的措施,开发衡量救护车服务护理影响的新方法;创建一个数据集,将常规收集的救护车服务、医院和死亡率数据联系起来;并使用相关数据探索病例组合调整模型的发展,以评估救护车服务护理过程和结果的差异或变化。一项混合方法研究,对政策和研究文献中报告的绩效和结果措施进行系统审查和综合;与救护车服务使用者的质性访谈;确定候选指标的三阶段协商一致进程;建立一套连接救护车、医院和死亡率数据的数据集;并对关联数据集进行统计建模,产生新的救护车服务质量的病例组合调整措施。东米德兰兹和约克郡,英格兰。2011年至2015年期间的救护车服务、患者、公众、紧急护理临床学者、专员和政策制定者。救护车的表现和质量措施。救护车呼叫调度和电子病人报告表格、医院事件统计、事故和紧急情况以及住院病人数据,以及国家统计局死亡率数据。从系统评价中产生了四个类别的72个候选措施:(1)救护车服务操作(n = 14),(2)患者临床管理(n = 20),(3)护理对患者的影响(n = 9)和(4)时间措施(n = 29)。最常见的操作措施是呼叫分类准确性;临床管理是对护理方案的遵守,对患者结果的衡量是生存指标。除时间措施外,参与共识事件的参与者高度优先考虑了9项措施,包括与疼痛、患者体验、调度决策的准确性和患者安全有关的措施。20位专家参与两轮德尔菲对措施进行细化和排序,20项措施得分≥8/9分,一致性较好。参加共识研讨会的18名患者和公众代表确定了6项重要措施:获得最终治疗的时间、反应时间、减轻疼痛评分、正确优先考虑适当反应水平的呼叫、根据既定准则接受治疗的特定病症患者比例,以及在可治疗的紧急情况下存活至出院。在此基础上,我们利用关联数据集开发了六个新的潜在指标,其中五个是使用病例混合调整的预测模型构建的:(1)疼痛评分的平均变化;(2)在拨打999时正确识别严重紧急情况的比例;(3)响应时间(未经调整);(4)将患者留在现场的决定可能不合适的比例;(5)由999急救救护车送往急诊科而不需要治疗或检查的病人所占比例;(6)重症急诊救护车患者存活至入院和入院后7天的比例。两项指标(疼痛评分和反应时间)不需要病例组合调整。在四个调整后的指标中,我们发现呼叫分诊的准确率为61%,可能不适当的决定离家率为5-10%,不必要的送往医院率为1.7-19.2%,住院存活率为89.5-96.4%,具体取决于临床调试组区域。由于获得数据的延误,我们无法完成第四个目标,即测试正在使用的指标。使用指标(4)和(5)的经济分析表明,不正确的决策导致更高的成本。关联数据集的创建既复杂又耗时,而且数据质量参差不齐。指标的编制也很复杂,并揭示了其他服务对结果的影响,这限制了服务之间的比较。通过协商一致的过程,我们确定并优先考虑了一套潜在的救护车服务质量措施,这些措施反映了服务和用户的偏好。总之,这些涵盖了与使用紧急救护服务的人口有关的广泛领域。质量指标可用于比较救护车服务或区域,或者如果跨服务的数据链接机制有所改进,则可用于衡量一段时间内的绩效。 新的措施可用于评估救护车服务提供的不同维度,但目前的数据挑战禁止常规使用。有机会改进数据联系过程,并进一步发展、验证和简化这些措施。国家卫生研究所方案应用研究补助金方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
9
审稿时长
53 weeks
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