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《2019 年冠状病毒病患者的抗生素处方:对大韩民国国家健康保险制度数据的分析》。

Antibiotic Prescription in Patients With Coronavirus Disease 2019: Analysis of National Health Insurance System Data in the Republic of Korea.

机构信息

Division of Infectious Diseases, Department of Internal Medicine, Seoul National University Bundang Hospital, Seongnam, Korea.

Department of Internal Medicine, Seoul National University College of Medicine, Seoul, Korea.

出版信息

J Korean Med Sci. 2023 Jun 26;38(25):e189. doi: 10.3346/jkms.2023.38.e189.

Abstract

BACKGROUND

Although coronavirus disease 2019 (COVID-19) is a viral infection, antibiotics are often prescribed due to concerns about accompanying bacterial infection. Therefore, we aimed to analyze the number of patients with COVID-19 who received antibiotic prescriptions, as well as factors that influenced antibiotics prescription, using the National Health Insurance System database.

METHODS

We retrospectively reviewed claims data for adults aged ≥ 19 years hospitalized for COVID-19 from December 1, 2019 to December 31, 2020. According to the National Institutes of Health guidelines for severity classification, we calculated the proportion of patients who received antibiotics and the number of days of therapy per 1,000 patient-days. Factors contributing to antibiotic use were determined using linear regression analysis. In addition, antibiotic prescription data for patients with influenza hospitalized from 2018 to 2021 were compared with those for patients with COVID-19, using an integrated database from Korea Disease Control and Prevention Agency-COVID19-National Health Insurance Service cohort (K-COV-N cohort), which was partially adjusted and obtained from October 2020 to December 2021.

RESULTS

Of the 55,228 patients, 46.6% were males, 55.9% were aged ≥ 50 years, and most patients (88.7%) had no underlying diseases. The majority (84.3%; n = 46,576) were classified as having mild-to-moderate illness, with 11.2% (n = 6,168) and 4.5% (n = 2,484) having severe and critical illness, respectively. Antibiotics were prescribed to 27.3% (n = 15,081) of the total study population, and to 73.8%, 87.6%, and 17.9% of patients with severe, critical, and mild-to-moderate illness, respectively. Fluoroquinolones were the most commonly prescribed antibiotics (15.1%; n = 8,348), followed by third-generation cephalosporins (10.4%; n = 5,729) and beta-lactam/beta-lactamase inhibitors (6.9%; n = 3,822). Older age, COVID-19 severity, and underlying medical conditions contributed significantly to antibiotic prescription requirement. The antibiotic use rate was higher in the influenza group (57.1%) than in the total COVID-19 patient group (21.2%), and higher in severe-to-critical COVID-19 cases (66.6%) than in influenza cases.

CONCLUSION

Although most patients with COVID-19 had mild to moderate illness, more than a quarter were prescribed antibiotics. Judicious use of antibiotics is necessary for patients with COVID-19, considering the severity of disease and risk of bacterial co-infection.

摘要

背景

尽管 2019 年冠状病毒病(COVID-19)是一种病毒性感染,但由于担心伴随细菌感染,抗生素经常被开具。因此,我们旨在使用国家健康保险系统数据库分析接受抗生素处方的 COVID-19 患者数量,以及影响抗生素处方的因素。

方法

我们回顾性分析了 2019 年 12 月 1 日至 2020 年 12 月 31 日期间因 COVID-19 住院的≥19 岁成年人的索赔数据。根据美国国立卫生研究院的严重程度分类指南,我们计算了接受抗生素治疗的患者比例和每 1000 患者天的治疗天数。使用线性回归分析确定抗生素使用的影响因素。此外,使用 2018 年至 2021 年因流感住院的患者的抗生素处方数据与 COVID-19 患者的抗生素处方数据进行比较,使用了韩国疾病控制和预防机构-COVID19-国家健康保险服务队列(K-COV-N 队列)的综合数据库,该数据库经过部分调整,于 2020 年 10 月至 2021 年 12 月获得。

结果

在 55228 名患者中,46.6%为男性,55.9%年龄≥50 岁,大多数患者(88.7%)无基础疾病。大多数患者(84.3%;n=46576)被归类为轻度至中度疾病,11.2%(n=6168)和 4.5%(n=2484)为重度和危重症。抗生素治疗处方用于总研究人群的 27.3%(n=15081),严重、危重症和轻度至中度疾病患者分别为 73.8%、87.6%和 17.9%。氟喹诺酮类(15.1%;n=8348)是最常用的抗生素,其次是第三代头孢菌素(10.4%;n=5729)和β-内酰胺/β-内酰胺酶抑制剂(6.9%;n=3822)。年龄较大、COVID-19 严重程度和基础疾病与抗生素处方需求显著相关。流感组(57.1%)的抗生素使用率高于 COVID-19 总患者组(21.2%),严重至危重症 COVID-19 病例(66.6%)高于流感病例。

结论

尽管大多数 COVID-19 患者病情较轻,但仍有超过四分之一的患者接受了抗生素治疗。考虑到疾病严重程度和细菌合并感染的风险,COVID-19 患者需要合理使用抗生素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b980/10293658/39ecbf95db71/jkms-38-e189-g001.jpg

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