首页> 外文期刊>Journal of evaluation in clinical practice >Resilience, health perceptions, (QOL), stressors, and hospital admissions—Observations from the real world of clinical care of unstable health journeys in Monash Watch (MW), Victoria, Australia
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Resilience, health perceptions, (QOL), stressors, and hospital admissions—Observations from the real world of clinical care of unstable health journeys in Monash Watch (MW), Victoria, Australia

机译:弹性,健康观念,(QOL),压力源和医院录取 - 来自澳大利亚维多利亚维多利亚州维多利亚州的不稳定健康旅程的现实世界

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Abstract Rationale, aims, and objectives Monash Watch (MW) aims to reduce potentially preventable hospitalisations in a cohort above a risk “threshold” identified by Health Links Chronic Care (HLCC) algorithms using personal, diagnostic, and service data. MW conducted regular patient monitoring through outbound phone calls using the Patient Journey Record System (PaJR). PaJR alerts are intended to act as a self‐reported barometer of stressors, resilience, and health perceptions with more alerts per call indicating greater risk. Aims: To describe predictors of PaJR alerts (self‐reported from outbound phone calls) and predictors of acute admissions based upon a Theoretical Model for Static and Dynamic Indicators of Acute Admissions . Methods Participants: HLCC cohort with predicted 3+ admissions/year in MW service arm for 40?days; n ?=?244. Baseline measures—Clinical Frailty Index (CFI); Connor Davis Resilience (CD‐RISC): SF‐12v2 Health Survey scores Mental (MSC) and Physical (PSC) and ICECAP‐O. Dynamic measures: PaJR alerts/call in 10?869?MW records. Acute (non‐surgical) admissions from Victorian Admitted Episode database. Analysis: Logistic regression, correlations, and timeseries homogeneity metrics using XLSTAT. Findings Baseline indicators were significantly correlated except SF‐12_MCS. SF12‐MSC, SF12‐PSC and ICECAP‐O best predicted PaJR alerts/call (ROC: 0.84). CFI best predicted acute admissions (ROC: 0.66), adding CD‐RISC, SF‐12_MCS, SF‐12_PCS and ICECAP‐O with two‐way interactions improved model (ROC: 0.70). PaJR alerts were higher ≤10 days preceding acute admissions and significantly correlated with admissions. Patterns in PaJR alerts in four case studies demonstrated dynamic variations signifying risk. Overall, all baseline indicators were explanatory supporting the theoretical model. Timing of PaJR alerts and acute admissions reflecting changing stressors, resilience, and health perceptions were not predicted from baseline indicators but provided a trigger for service interventions. Conclusion Both static and dynamic indicators representing stressors, resilience, and health perceptions have the potential to inform threshold models of admission risk in ways that could be clinically useful.
机译:摘要理由,目标和目标Monash Chine(MW)旨在减少使用个人,诊断和服务数据识别的风险“阈值”群体的群体中的潜在可预防的住院治疗。 MW使用患者旅行记录系统(PAJR)进行常规患者通过出站电话进行监控。 PAJR警报旨在充当一个自我报告的压力频道,弹性和健康感知,每个呼叫的警报表明风险更大。目的:根据急性录取静态和动态指标的理论模型,描述PAJR警报的预测因子(来自出站电话的自我报告)和急性录取的预测因素。方法参与者:HLCC队列,预测3+录取MW服务手臂的3+录取/年,但是40?天; n?=?244。基线措施 - 临床体力指数(CFI); Connor Davis弹性(CD-RISC):SF-12V2健康调查分数精神(MSC)和物理(PSC)和ICECAP-O。动态措施:PAJR警报/ 10?869?MW记录。来自维多利亚时代的剧集剧集数据库的急性(非外科)录取。分析:使用XLSTAT的逻辑回归,相关性和多次同质度量。除了SF-12_MC,发现基线指标显着相关。 SF12-MSC,SF12-PSC和ICECAP-O最佳预测PAJR警报/呼叫(ROC:0.84)。 CFI最佳预测急性录取(ROC:0.66),用双向交互添加CD-RISC,SF-12_MC,SF-12_PC和ICECAP-O改进模型(ROC:0.70)。 PAJR警报较高≤10天,前面的急性录取,并与入学显着相关。在四个案例研究中的PAJR警报中的模式表明了表示风险的动态变化。总体而言,所有基线指标都是解释性支持理论模型。 PAJR警报的时间和反映变化的压力源,弹性和健康知识的急性录取并未从基线指标预测,但为服务干预提供了触发器。结论代表压力源,弹性和健康观念的静态和动态指标都有可能以临床上有用的方式为入场风险的阈值模型提供信息。

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