COVID-19大流行期间黎巴嫩境内叙利亚老年难民心理健康状况不佳的预测:嵌套横断面研究。

IF 7.1 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Berthe Abi Zeid, Leen Farouki, Tanya El Khoury, Abla M Sibai, Carlos F Mendes de Leon, Marwan F Alawieh, Zeinab Ramadan, Sawsan Abdulrahim, Hala Ghattas, Stephen J McCall
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引用次数: 0

摘要

导言:COVID-19 大流行加剧了黎巴嫩境内叙利亚老年难民原有的脆弱性,可能会影响他们的心理健康。本研究旨在描述不良心理健康随时间推移的演变情况,并开发和内部验证黎巴嫩老年叙利亚难民不良心理健康的预测模型:这项预测研究使用了黎巴嫩多波电话调查的横截面数据。调查对象是所有来自接受人道主义组织援助的家庭、年龄在 50 岁或以上的叙利亚难民。数据收集时间为 2020 年 9 月 22 日至 2021 年 1 月 20 日。心理健康状况不佳的定义是心理健康量表-5 得分为 60 分或低于 60 分。采用逆向逐步逻辑回归法确定预测因素。采用引导法对该模型进行了内部验证。模型的校准采用校准斜率(C-斜率),区分度采用优化调整后的 C 统计量:共有 3229 名参与者(中位年龄=56 岁(IQR=53-62)),47.5% 为女性。心理健康状况不佳者占 76.7%。心理健康状况不佳的预测因素包括年龄较小、食物不安全、用水不安全、缺乏合法居住证明文件、无固定工作、身体疼痛程度较高、负债和患有慢性疾病。最终模型显示出良好的判别能力(C 统计量:0.69(95% CI 0.67 至 0.72))和校准能力(C-斜率 0.93(95%CI 0.82 至 1.07)):心理健康预测因素与基本需求、权利和经济障碍有关。这些因素使人道主义组织能够识别高风险人群、组织干预措施并解决根本原因,从而提高黎巴嫩叙利亚老年难民的复原力和幸福感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting poor mental health among older Syrian refugees in Lebanon during the COVID-19 pandemic: a nested cross-sectional study.

Introduction: The COVID-19 pandemic has worsened pre-existing vulnerabilities among older Syrian refugees in Lebanon, potentially impacting their mental health. The study aims to describe the evolution of poor mental health over time and to develop and internally validate a prediction model for poor mental health among older Syrian refugees in Lebanon.

Methods: This prognostic study used cross-sectional data from a multiwave telephone survey in Lebanon. It was conducted among all Syrian refugees aged 50 years or older from households that received assistance from a humanitarian organisation. Data were collected between 22 September 2020 and 20 January 2021. Poor mental health was defined as a Mental Health Inventory-5 score of 60 or less. The predictors were identified using backwards stepwise logistic regression. The model was internally validated using bootstrapping. The calibration of the model was presented using the calibration slope (C-slope), and the discrimination was presented using the optimised adjusted C-statistic.

Results: There were 3229 participants (median age=56 years (IQR=53-62)) and 47.5% were female. The prevalence of poor mental health was 76.7%. Predictors for poor mental health were younger age, food insecurity, water insecurity, lack of legal residency documentation, irregular employment, higher intensity of bodily pain, having debt and having chronic illnesses. The final model demonstrated good discriminative ability (C-statistic: 0.69 (95% CI 0.67 to 0.72)) and calibration (C-slope 0.93 (95%CI 0.82 to 1.07)).

Conclusion: Mental health predictors were related to basic needs, rights and financial barriers. These allow humanitarian organisations to identify high-risk individuals, organise interventions and address root causes to boost resilience and well-being among older Syrian refugees in Lebanon.

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来源期刊
BMJ Global Health
BMJ Global Health Medicine-Health Policy
CiteScore
11.40
自引率
4.90%
发文量
429
审稿时长
18 weeks
期刊介绍: BMJ Global Health is an online Open Access journal from BMJ that focuses on publishing high-quality peer-reviewed content pertinent to individuals engaged in global health, including policy makers, funders, researchers, clinicians, and frontline healthcare workers. The journal encompasses all facets of global health, with a special emphasis on submissions addressing underfunded areas such as non-communicable diseases (NCDs). It welcomes research across all study phases and designs, from study protocols to phase I trials to meta-analyses, including small or specialized studies. The journal also encourages opinionated discussions on controversial topics.
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