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使用自然语言处理和机器学习分析电子健康记录,发现 2019 年冠状病毒病患者诊断和管理中的性别差异证据。

Evidence of Gender Differences in the Diagnosis and Management of Coronavirus Disease 2019 Patients: An Analysis of Electronic Health Records Using Natural Language Processing and Machine Learning.

机构信息

Department of Respiratory Medicine, Hospital Universitario de La Princesa, Madrid, Spain.

Department of Respiratory Medicine, Universidad Autónoma de Madrid, Madrid, Spain.

出版信息

J Womens Health (Larchmt). 2021 Mar;30(3):393-404. doi: 10.1089/jwh.2020.8721. Epub 2020 Dec 16.

DOI:10.1089/jwh.2020.8721
PMID:33416429
Abstract

The impact of sex and gender in the incidence and severity of coronavirus disease 2019 (COVID-19) remains controversial. Here, we aim to describe the characteristics of COVID-19 patients at disease onset, with special focus on the diagnosis and management of female patients with COVID-19. We explored the unstructured free text in the electronic health records (EHRs) within the SESCAM Healthcare Network (Castilla La-Mancha, Spain). The study sample comprised the entire population with available EHRs (1,446,452 patients) from January 1st to May 1st, 2020. We extracted patients' clinical information upon diagnosis, progression, and outcome for all COVID-19 cases. A total of 4,780 patients with a confirmed diagnosis of COVID-19 were identified. Of these, 2,443 (51%) were female, who were on average 1.5 years younger than male patients (61.7 ± 19.4 vs. 63.3 ± 18.3,  = 0.0025). There were more female COVID-19 cases in the 15-59-year-old interval, with the greatest sex ratio (95% confidence interval) observed in the 30-39-year-old range (1.69; 1.35-2.11). Upon diagnosis, headache, anosmia, and ageusia were significantly more frequent in females than males. Imaging by chest X-ray or blood tests were performed less frequently in females (65.5% vs. 78.3% and 49.5% vs. 63.7%, respectively), all  < 0.001. Regarding hospital resource use, females showed less frequency of hospitalization (44.3% vs. 62.0%) and intensive care unit admission (2.8% vs. 6.3%) than males, all  < 0.001. Our results indicate important sex-dependent differences in the diagnosis, clinical manifestation, and treatment of patients with COVID-19. These results warrant further research to identify and close the gender gap in the ongoing pandemic.

摘要

性别的差异对 2019 冠状病毒病(COVID-19)的发病率和严重程度的影响仍存在争议。在这里,我们旨在描述 COVID-19 患者发病时的特征,特别关注 COVID-19 女性患者的诊断和治疗。我们探索了西班牙塞斯堪健康网络(卡斯蒂利亚-拉曼恰)电子健康记录(EHR)中的非结构化自由文本。研究样本包括 2020 年 1 月 1 日至 5 月 1 日期间所有有 EHR 记录的人群(1446452 例)。我们提取了所有 COVID-19 病例的诊断、进展和结局的临床信息。共发现 4780 例确诊 COVID-19 的患者。其中 2443 例(51%)为女性,平均比男性患者年轻 1.5 岁(61.7±19.4 岁 vs. 63.3±18.3 岁,  = 0.0025)。15-59 岁年龄组中女性 COVID-19 病例更多,30-39 岁年龄组的性别比(95%置信区间)最高(1.69;1.35-2.11)。在诊断时,女性比男性更容易出现头痛、嗅觉丧失和味觉丧失。女性胸部 X 线或血液检查的比例较低(分别为 65.5% vs. 78.3%和 49.5% vs. 63.7%,均  < 0.001)。在住院资源利用方面,女性住院(44.3% vs. 62.0%)和入住重症监护病房(2.8% vs. 6.3%)的频率低于男性,均  < 0.001。我们的结果表明,COVID-19 患者的诊断、临床表现和治疗存在重要的性别差异。这些结果需要进一步研究,以确定和缩小当前大流行中的性别差距。

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