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周几就诊?病情多严重?患者旅程记录系统数据库中多病共存老年患者计划内和非计划内全科医生就诊情况分析

What weekday? How acute? An analysis of reported planned and unplanned GP visits by older multi-morbid patients in the Patient Journey Record System database.

作者信息

Surate Solaligue David Emanuel, Hederman Lucy, Martin Carmel Mary

机构信息

Patient Journey Record System Project, Trinity College Dublin, Dublin, Ireland.

出版信息

J Eval Clin Pract. 2014 Aug;20(4):522-6. doi: 10.1111/jep.12171. Epub 2014 May 19.

Abstract

RATIONALE, AIMS AND OBJECTIVES: Timely access to general practitioner (GP) care is a recognized strategy to address avoidable hospitalization. Little is known about patients seeking planned (decided ahead) and unplanned (decided on day) GP visits. The Patient Journey Record System (PaJR) provides a biopsychosocial real-time monitoring and support service to chronically ill and older people over 65 who may be at risk of an avoidable hospital admission. This study aims to describe reported profiles associated with planned and unplanned GP visits during the week in the PaJR database of regular outbound phone calls made by Care Guides to multi-morbid older patients.

METHODS

One hundred fifty consecutive patients with one or more chronic condition (including chronic obstructive pulmonary disease, heart/vascular disease, heart failure and/or diabetes), one or more hospital admission in previous year, and consecutively recruited from hospital discharge, out-of-hour care and GP practices comprised the study sample. Using a semistructured script, Care Guides telephoned the patients approximately every 3 week days, and entered call data into the PaJR database in 2011. The PaJR project identified and prompted unplanned visits according to its algorithms. Logistic regression modelling and descriptive statistics identified significant predictors of planned and unplanned visits and patterns of GP visits on weekdays reported in calls.

RESULTS

In 5096 telephone calls, unplanned versus planned GP visits were predicted by change in health state, significant symptom concerns, poor self-rated health, bodily pain and concerns about caregiver or intimates. Calls not reporting visits had significantly fewer of these features. Planned visits were associated with general and medication concerns, reduced social participation and feeling down. Planned visits were highest on Monday and trended downwards to Fridays. Unplanned visits were reported at the same rate each weekday and more frequently when the interval between calls was ≥3 days. The PaJR project Care Guides advised patients to make unplanned visits in 6.3% of calls and advised planned GP visits in 2.5% of calls.

CONCLUSION

Unplanned GP visits consistently indicated a significant change to worse health with planned visits presenting less acuity in this study of older multi-morbid patients in general practice, when monitored by regular calls at about every 3 days. The PaJR study actively prompted GP visits according to its algorithms. Assessing and predicting acuity in older multi-morbid patients appears to be a promising strategy to improve access to primary care, and thus to reducing avoidable hospital utilization. Further research is needed to investigate the topic on a wider scale.

摘要

原理、目的和目标:及时获得全科医生(GP)护理是一种公认的解决可避免住院问题的策略。对于寻求计划性(提前决定)和非计划性(当天决定)全科医生就诊的患者,我们了解得很少。患者旅程记录系统(PaJR)为可能面临可避免住院风险的慢性病患者和65岁以上的老年人提供生物心理社会实时监测和支持服务。本研究旨在描述在护理指导人员对患有多种疾病的老年患者进行的定期外拨电话的PaJR数据库中,与一周内计划性和非计划性全科医生就诊相关的报告概况。

方法

连续纳入150例患有一种或多种慢性病(包括慢性阻塞性肺疾病、心脏/血管疾病、心力衰竭和/或糖尿病)、前一年有过一次或多次住院经历且从医院出院、非工作时间护理和全科医生诊所连续招募的患者作为研究样本。护理指导人员使用半结构化脚本,大约每三个工作日给患者打电话,并在2011年将通话数据输入PaJR数据库。PaJR项目根据其算法识别并促使患者进行非计划性就诊。逻辑回归模型和描述性统计确定了计划性和非计划性就诊的重要预测因素以及通话中报告的工作日全科医生就诊模式。

结果

在5096次电话通话中,健康状况变化、重大症状担忧、自我健康评价差、身体疼痛以及对照顾者或亲密关系的担忧可预测非计划性与计划性全科医生就诊。未报告就诊的通话中这些特征明显较少。计划性就诊与一般和用药问题、社交参与减少以及情绪低落有关。计划性就诊在周一最高,然后逐渐下降至周五。每个工作日非计划性就诊的报告率相同,当通话间隔≥3天时更频繁。PaJR项目护理指导人员在6.3%的通话中建议患者进行非计划性就诊,在2.5%的通话中建议进行计划性全科医生就诊。

结论

在这项针对全科医疗中患有多种疾病的老年患者的研究中,通过大约每三天进行一次定期通话进行监测时发现,非计划性全科医生就诊始终表明健康状况有显著恶化,而计划性就诊的严重程度较低。PaJR研究根据其算法积极促使患者就诊。评估和预测患有多种疾病的老年患者的病情严重程度似乎是改善初级保健服务可及性从而减少可避免的医院利用的一个有前景的策略。需要进一步开展研究以更广泛地调查该主题。

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