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重视性别因素对 COVID-19 感染和住院的影响:利用英国生物库数据进行机器学习的性别分层分析。

Importance of sex and gender factors for COVID-19 infection and hospitalisation: a sex-stratified analysis using machine learning in UK Biobank data.

机构信息

Centre for Outcomes Research and Evaluation, McGill University Health Centre, Montreal, Québec, Canada.

Department of Biology, McGill University, Montreal, Québec, Canada.

出版信息

BMJ Open. 2022 May 18;12(5):e050450. doi: 10.1136/bmjopen-2021-050450.

Abstract

OBJECTIVE

To examine sex and gender roles in COVID-19 test positivity and hospitalisation in sex-stratified predictive models using machine learning.

DESIGN

Cross-sectional study.

SETTING

UK Biobank prospective cohort.

PARTICIPANTS

Participants tested between 16 March 2020 and 18 May 2020 were analysed.

MAIN OUTCOME MEASURES

The endpoints of the study were COVID-19 test positivity and hospitalisation. Forty-two individuals' demographics, psychosocial factors and comorbidities were used as likely determinants of outcomes. Gradient boosting machine was used for building prediction models.

RESULTS

Of 4510 individuals tested (51.2% female, mean age=68.5±8.9 years), 29.4% tested positive. Males were more likely to be positive than females (31.6% vs 27.3%, p=0.001). In females, living in more deprived areas, lower income, increased low-density lipoprotein (LDL) to high-density lipoprotein (HDL) ratio, working night shifts and living with a greater number of family members were associated with a higher likelihood of COVID-19 positive test. While in males, greater body mass index and LDL to HDL ratio were the factors associated with a positive test. Older age and adverse cardiometabolic characteristics were the most prominent variables associated with hospitalisation of test-positive patients in both overall and sex-stratified models.

CONCLUSION

High-risk jobs, crowded living arrangements and living in deprived areas were associated with increased COVID-19 infection in females, while high-risk cardiometabolic characteristics were more influential in males. Gender-related factors have a greater impact on females; hence, they should be considered in identifying priority groups for COVID-19 infection vaccination campaigns.

摘要

目的

使用机器学习在按性别分层的预测模型中检查 COVID-19 检测阳性和住院与性别和性别角色的关系。

设计

横断面研究。

设置

英国生物银行前瞻性队列。

参与者

分析了 2020 年 3 月 16 日至 2020 年 5 月 18 日之间接受测试的参与者。

主要观察结果

本研究的终点是 COVID-19 检测阳性和住院。使用 42 个人的人口统计学、心理社会因素和合并症作为结局的可能决定因素。梯度提升机用于构建预测模型。

结果

在 4510 名接受测试的个体中(51.2%为女性,平均年龄 68.5±8.9 岁),29.4%的个体检测结果呈阳性。男性检测阳性的可能性高于女性(31.6%比 27.3%,p=0.001)。在女性中,居住在较贫困地区、收入较低、低密度脂蛋白(LDL)与高密度脂蛋白(HDL)比值升高、上夜班以及与更多家庭成员一起居住与 COVID-19 阳性检测结果的可能性增加相关。而在男性中,更高的体重指数和 LDL 与 HDL 比值是与阳性检测相关的因素。在总体和按性别分层模型中,年龄较大和不良心血管代谢特征是与检测阳性患者住院相关的最显著变量。

结论

高风险工作、拥挤的居住安排和居住在贫困地区与女性 COVID-19 感染增加相关,而高风险心血管代谢特征在男性中影响更大。与性别相关的因素对女性的影响更大;因此,在确定 COVID-19 感染疫苗接种活动的优先群体时,应考虑这些因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2e4b/9118360/e9f259671bd4/bmjopen-2021-050450f01.jpg

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