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数字干预措施治疗新冠后或长期新冠症状:范围综述。

Digital Interventions for Treating Post-COVID or Long-COVID Symptoms: Scoping Review.

机构信息

Constructor University, Bremen, Germany.

Julius-Maximilians-Universität, Würzburg, Germany.

出版信息

J Med Internet Res. 2023 Apr 17;25:e45711. doi: 10.2196/45711.

Abstract

BACKGROUND

Patients with post-COVID/long-COVID symptoms need support, and health care professionals need to be able to provide evidence-based patient care. Digital interventions can meet these requirements, especially if personal contact is limited.

OBJECTIVE

We reviewed evidence-based digital interventions that are currently available to help manage physical and mental health in patients with post-COVID/long-COVID symptoms.

METHODS

A scoping review was carried out summarizing novel digital health interventions for treating post-COVID/long-COVID patients. Using the PICO (population, intervention, comparison, outcome) scheme, original studies were summarized, in which patients with post-COVID/long-COVID symptoms used digital interventions to help aid recovery.

RESULTS

From all scanned articles, 8 original studies matched the inclusion criteria. Of the 8 studies, 3 were "pretest" studies, 3 described the implementation of a telerehabilitation program, 1 was a post-COVID/long-COVID program, and 1 described the results of qualitative interviews with patients who used an online peer-support group. Following the PICO scheme, we summarized previous studies. Studies varied in terms of participants (P), ranging from adults in different countries, such as former hospitalized patients with COVID-19, to individuals in disadvantaged communities in the United Kingdom, as well as health care workers. In addition, the studies included patients who had previously been infected with COVID-19 and who had ongoing symptoms. Some studies focused on individuals with specific symptoms, including those with either post-COVID-19 or long-term symptoms, while other studies included patients based on participation in online peer-support groups. The interventions (I) also varied. Most interventions used a combination of psychological and physical exercises, but they varied in duration, frequency, and social dimensions. The reviewed studies investigated the physical and mental health conditions of patients with post-COVID/long-COVID symptoms. Most studies had no control (C) group, and most studies reported outcomes (O) or improvements in physiological health perception, some physical conditions, fatigue, and some psychological aspects such as depression. However, some studies found no improvements in bowel or bladder problems, concentration, short-term memory, unpleasant dreams, physical ailments, perceived bodily pain, emotional ailments, and perceived mental health.

CONCLUSIONS

More systematic research with larger sample sizes is required to overcome sampling bias and include health care professionals' perspectives, as well as help patients mobilize support from health care professionals and social network partners. The evidence so far suggests that patients should be provided with digital interventions to manage symptoms and reintegrate into everyday life, including work.

摘要

背景

患有新冠后/长新冠症状的患者需要支持,医护人员需要能够提供基于证据的患者护理。数字干预措施可以满足这些需求,尤其是在个人接触有限的情况下。

目的

我们综述了目前可用于帮助管理新冠后/长新冠患者身心健康的基于证据的数字干预措施。

方法

通过范围综述,总结了用于治疗新冠后/长新冠患者的新型数字健康干预措施。使用 PICO(人群、干预、比较、结局)方案,对纳入研究进行了总结,即患有新冠后/长新冠症状的患者使用数字干预措施来帮助康复。

结果

从所有扫描的文章中,有 8 项原始研究符合纳入标准。在这 8 项研究中,有 3 项是“预测试”研究,3 项描述了远程康复计划的实施,1 项是新冠后/长新冠计划,1 项描述了对使用在线同伴支持小组的患者进行定性访谈的结果。根据 PICO 方案,我们对之前的研究进行了总结。研究对象(P)各不相同,范围从不同国家的成年人,如以前患有 COVID-19 的住院患者,到英国弱势社区的个人,以及医护人员。此外,这些研究还包括以前感染过 COVID-19 且仍有症状的患者。一些研究侧重于具有特定症状的个体,包括患有新冠后/长新冠症状的个体,而其他研究则根据参与在线同伴支持小组的情况纳入患者。干预措施(I)也各不相同。大多数干预措施结合使用心理和身体锻炼,但在持续时间、频率和社会层面上有所不同。综述的研究调查了新冠后/长新冠患者的身心健康状况。大多数研究没有对照组(C),大多数研究报告了生理健康感知、一些身体状况、疲劳和一些心理方面(如抑郁)的结局或改善。然而,一些研究发现对肠道或膀胱问题、注意力、短期记忆、不愉快的梦、身体不适、身体疼痛感知、情绪不适和心理健康感知没有改善。

结论

需要进行更多系统的研究,纳入更大的样本量,以克服抽样偏差,并纳入医护人员的观点,同时帮助患者动员医护人员和社会网络伙伴的支持。到目前为止的证据表明,应该为患者提供数字干预措施来管理症状并重新融入日常生活,包括工作。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/52d8/10131666/4967de6d4e03/jmir_v25i1e45711_fig1.jpg

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