Halter Mary, Joly Louise, de Lusignan Simon, Grant Robert L, Gage Heather, Drennan Vari M
Associate Professor, Faculty of Health, Social Care & Education, Kingston University & St George's, University of London, London, UK.
Research Fellow, Social Care Workforce Unit, King's College London, London, UK.
BJGP Open. 2018 Apr 10;2(1):bjgpopen18X101277. doi: 10.3399/bjgpopen18X101277. eCollection 2018 Apr.
There are limited case-mix classification systems for primary care settings which are applicable when considering the optimal clinical skill mix to provide services.
To develop a case-mix classification system (CMCS) and test its impact on analyses of patient outcomes by clinician type, using example data from physician associates' (PAs) and GPs' consultations with same-day appointment patients.
DESIGN & SETTING: Secondary analysis of controlled observational data from six general practices employing PAs and six matched practices not employing PAs in England.
Routinely-collected patient consultation records (PA = 932, GP = 1154) were used to design the CMCS (combining problem codes, disease register data, and free text); to describe the case-mix; and to assess impact of statistical adjustment for the CMCS on comparison of outcomes of consultations with PAs and with GPs.
A CMCS was developed by extending a system that only classified 18.6% (213/1147) of the presenting problems in this study's data. The CMCS differentiated the presenting patient's level of need or complexity as: acute, chronic, minor problem or symptom, prevention, or process of care, applied hierarchically. Combination of patient and consultation-level measures resulted in a higher classification of acuity and complexity for 639 (30.6%) of patient cases in this sample than if using consultation level alone. The CMCS was a key adjustment in modelling the study's main outcome measure, that is rate of repeat consultation.
This CMCS assisted in classifying the differences in case-mix between professions, thereby allowing fairer assessment of the potential for role substitution and task shifting in primary care, but it requires further validation.
适用于初级保健机构的病例组合分类系统有限,而在考虑提供服务的最佳临床技能组合时,这些系统是适用的。
开发一种病例组合分类系统(CMCS),并使用医师助理(PAs)和全科医生(GPs)对同日预约患者的会诊示例数据,测试其对按临床医生类型分析患者结局的影响。
对来自英格兰6家使用医师助理的普通诊所和6家匹配的未使用医师助理的诊所的对照观察数据进行二次分析。
使用常规收集的患者会诊记录(PA = 932,GP = 1154)来设计CMCS(结合问题代码、疾病登记数据和自由文本);描述病例组合;并评估CMCS的统计调整对PA会诊和GP会诊结局比较的影响。
通过扩展一个仅对本研究数据中18.6%(213/1147)的就诊问题进行分类的系统,开发出了CMCS。CMCS将就诊患者的需求或复杂程度分为:急性、慢性、轻微问题或症状、预防或护理过程,并按层次应用。与仅使用会诊级别相比,患者和会诊级别测量的组合使该样本中639例(30.6%)患者病例的敏锐度和复杂程度分类更高。CMCS是对该研究主要结局指标(即重复会诊率)进行建模的关键调整。
该CMCS有助于对不同专业之间的病例组合差异进行分类,从而在初级保健中更公平地评估角色替代和任务转移的潜力,但它需要进一步验证。