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首页> 外文期刊>BMJ Open >Can we simplify the hospital accreditation process? Predicting accreditation decisions from a reduced dataset of focus priority standards and quality indicators: results of predictive modelling
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Can we simplify the hospital accreditation process? Predicting accreditation decisions from a reduced dataset of focus priority standards and quality indicators: results of predictive modelling

机译:我们可以简化医院认证流程吗?从重点优先标准和质量指标的简化数据集中预测认证决定:预测模型的结果

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Objectives Accreditation in France relies on a mandatory 4-year cycle of self-assessment and a peer review of 82 standards, among which 14 focus priority standards (FPS). Hospitals are also required to measure yearly quality indicators (QIs—5 in 2010). On advice given by the accreditation committee of HAS (Haute Autorité en Santé), based on surveyors proposals and relying mostly on compliance to standards, accreditation decisions are taken by the board of HAS. Accreditation is still perceived by hospitals as a burdensome process and a simplification would be welcomed. The hypothesis was that a more limited number of criteria might give sufficient amount of information on hospitals overall quality level, appraised today by accreditation decisions. Design The accuracy of predictions of accreditation decisions given by a model, Partial Least Square-2 Discriminant Analysis (PLS2-DA), using only the results of FPS and QIs was measured. Accreditation decisions (full accreditation (A), recommendations or reservation (B), remit decision or non-accreditation (C)), results of FPS and QIs were considered qualitative variables. Stability was assessed by leave one out cross validation (LOOCV). Setting and participants All French 489 acute care organisations (ACO) accredited between June 2010 and January 2012 were considered, 304 of them having a rehabilitation care sector (RCS). Results Accuracy of prediction of accreditation decisions was good (89% of ACOs and 91% of ACO-RCS well classified). Stability of results appeared satisfactory when using LOOCV (87% of ACOs and 89% of ACO-RCS well classified). Identification of worse hospitals was correct (90% of ACOs and 97% of ACO-RCS predicted C were actually C). Conclusions Using PLS2-DA with a limited number of criteria (QIs and FPS) provides an accurate prediction of accreditation decisions, especially for underperforming hospitals. This could support accreditation committees which give advices on accreditation decisions, and allow fast-track handling of ‘safe’ reports.
机译:目标法国的认证依赖于强制性的4年自我评估周期以及对82项标准的同行评审,其中14项重点优先标准(FPS)。还要求医院测量年度质量指标(2010年的QIs-5)。根据HAS认证委员会(HauteAutoritéenSanté)的建议,根据验船师的建议,并主要依靠对标准的遵守情况,由HAS董事会做出认证决定。医院仍然认为认证是一个繁重的过程,因此欢迎进行简化。假设是,数量有限的标准可能会提供有关医院总体质量水平的足够信息,而今天,这些信息已通过认证决定进行了评估。设计仅使用FPS和QIs的结果,测量了偏最小二乘判别分析模型(PLS2-DA)所给出的认可决策预测的准确性。认证决定(完全认证(A),推荐或保留(B),汇款决定或非认证(C)),FPS和QI的结果被视为定性变量。通过留一法交叉验证(LOOCV)评估稳定性。机构和参与者所有在2010年6月至2012年1月之间获得认证的法国489个急性护理组织(ACO)均被考虑,其中304个具有康复护理部门(RCS)。结果认可决策的预测准确性良好(89%的ACO和91%的ACO-RCS分类正确)。当使用LOOCV时,结果的稳定性似乎令人满意(87%的ACO和89%的ACO-RCS被很好地分类)。较差医院的鉴定是正确的(90%的ACO和97%的ACO-RCS预测的C实际上是C)。结论使用具有有限数量标准(QI和FPS)的PLS2-DA可以准确地预测认证决定,尤其是对于表现不佳的医院。这可以支持认可委员会就认可决定提供建议,并允许快速处理“安全”报告。

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