心理干预
医学
批判性评价
干预(咨询)
梅德林
医疗保健
主题分析
护理部
系统回顾
失调家庭
定性研究
医疗急救
精神科
替代医学
病理
社会学
政治学
社会科学
经济
法学
经济增长
作者
Shannon Cresham Fox,Nik Taylor,Takawira C. Marufu,Elizabeth Hendron,Joseph C. Manning
标识
DOI:10.1016/j.iccn.2022.103363
摘要
Failure to recognise deterioration early which results in patient death, is considered failure to rescue and it is identified as one of the leading causes of harm to patients. It is recognised that patients and their families can often recognise changes within the child’s condition before healthcare professionals. To mitigate the risk of failure to rescue and promote early intervention, family-activated rapid response systems are becoming widely acknowledged and accepted as part of family integrated care. To identify current family-activated rapid response interventions in hospitalised paediatric patients and understand mechanisms by which family activation works. A narrative systematic review of published studies was conducted. Seven online databases; AMED, CINHAL, EMBASE, EMCARE, HMIC, JBI, and Medline were searched for potentially relevant papers. The critical appraisal skills programme tool was used to assess methodological rigor and validity of included studies. Six studies met the predefined inclusion criteria. Five telephone family activation interventions were identified; Call for Help, medical emergency-teams, Condition HELP, rapid response teams, and family initiated rapid response. Principles underpinning all interventions were founded on a principal of granting families access to a process to escalate concerns to hospital emergency teams. Identified interventions outcomes and mechanisms include; patient safety, empowerment of families, partnership working/ family centred care, effective communication and better patient outcomes. Interventions lacked multi-lingual options. Family activation rapid response system are fundamental to family integrated care and enhancing patient safety. Underlying principles and concepts in delivering interventions are transferable across global healthcare system.
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