| Literature DB >> 34883162 |
Ying Wang1, Jinru Yang2, Fu Qiao3, Bilong Feng4, Fen Hu5, Zi-Ang Xi6, Wenwen Wu7, Zi-Ling Ni8, Li Liu9, Yufeng Yuan10.
Abstract
BACKGROUND: Hand hygiene (HH) is a cost-effective measure to reduce health care-associated infections. The overall characteristics and changes of hand hygiene compliance (HHC) among health care providers during the COVID-19 pandemic provided evidence for targeted HH intervention measures. AIM: To systematically review the literature and conduct a meta-analysis of studies investigating the rate of HHC and the characteristics of HH during the COVID-19 pandemic.Entities:
Keywords: COVID-19; Hand hygiene compliance; Hand hygiene improvement; Health care-associated infection control; Review
Mesh:
Year: 2021 PMID: 34883162 PMCID: PMC8648372 DOI: 10.1016/j.ajic.2021.11.030
Source DB: PubMed Journal: Am J Infect Control ISSN: 0196-6553 Impact factor: 4.303
Fig 1Flow chart of study identification.
Basic information of studies
| Study | Country | Article type | Study period | Main conclusions |
|---|---|---|---|---|
| Du Miao 2020 | Beijing, China | Randomized controlled trial | Jan-May,2020 | Under Hawthorne effect, the HHC rate of health care provider in open observation (82.82%) was higher than that in secret observation (71.45%) ( |
| Zhang Xuan 2020 | Shandong, China | Cross-sectional study | Feb,2020 | The overall high HHC rate (81.46%) may be related to the professional training before supporting Wuhan and protection experience of the front line. |
| Zhang Xiangxiang 2020 | Fujian, China | Cross-sectional study | Dec 1,2019-May 31,2020 | The HHC rate of health care provider was significantly higher (90.52%) than that in nonpandemic period (70.67%) ( |
| Liu Sidi 2020 | Hunan, China | Before-after study | Jan-Aug,2020 | Under the influence of COVID-19, health care providers have a strong sense of self-protection. Before and during pandemic, HHC rate was 71.65% vs 84.16% ( |
| Moore 2021 | Ohio, USA | Before-after study | Jan 5-Mar 14,2020 | HHC rates increased from 46% to 56% in the months preceding pandemic-related school closures ( |
| Derksen 2020 | Bremen, German | Before-after study | Jan 1-Jan 28,2020 | Facing COVID-19 pandemic, health care providers adapt their HH behavior and the HHC were increased following 3 period: 47% in pre-COVID-19 pandemic period, 79% in heightened awareness period, and 100% in strict precautions period ( |
| Zhou Qian 2020 | Wuhan, China | Cross-sectional survey | Mar 5- Mar 7, 2020 | HHC rate was highest in HH behavior (96.71%), followed by HH procedure (95.74%), duration (88.93%), and hand drying method (88.42%) (P < .001). |
| Zhao Tingting 2021 | Hangzhou, China | Before-after study | Feb 1,2019-May 31,2019 | The psychological pressure brought by the spread of COVID-19 may promote the HHC rate of doctors and nurses from 75.93% to 81.14% ( |
| Ragusa 2021 | Catania, Italy | Before-after study | Jan 1,2015-Dec 31,2020 | Compared with the HHC rate of 62% in 2016 and 66% in 2020, the HHC rate has not increased greatly, which may be related to the shortage of medical materials and poor working environment, the health care providers probably already did the maximum. |
| Anguraj 2021 | Pondicherry, South India | Before-after study | Nov,2020-Apr,2021 | Auditing HH and providing timely feedback significantly improved HHC from 26.7% in November 2020 to 68.4% in April 2021. |
Social demographic characteristics of health care providers
| Study | No. of health care providers | Occupation (Doctor/Nurse/Other | Working department | Observation method | HHC rate (HH actions/opportunities) | SE | Subgroup |
|---|---|---|---|---|---|---|---|
| Du Miao,a 2020 | 34 | 5/25/4 | ICU | Secretly | 0.71450 (468/655) | 0.01765 | ①②③ |
| Du Miao,b 2020 | 34 | 5/25/4 | ICU | Openly | 0.86156 (641/744) | 0.01266 | |
| Zhang Xuan 2020 | 100 | 0/100/0 | ICU: 30; Surgery: 46; | Openly | 0.81405 (788/968) | 0.01251 | ③ |
| Zhang Xiangxiang 2020 | 1189 | 427/603/159 | Fever clinic | Secretly + | 0.90524 (7604/8400) | 0.00320 | ①②③ |
| Liu Sidi 2020 | NA | NA | One tertiary A-level hospital | Secretly | 0.84161(28751/34162) | 0.00198 | ①②③ |
| Moore 2021 | NA | NA | Nine hospitals | Automated monitoring | 0.48477 (1044060/2153702) | 0.00034 | ③ |
| Derksen 2020 | 115 | 44/50/21 | Two obstetric university hospitals | Openly | 0.57989 (801707/1382512) | 0.00042 | ②③ |
| Zhou Qian 2020 | NA | NA | One tertiary A-level hospital | Secretly | 0.47297 (70/148) | 0.04104 | ③ |
| Zhao Tingting 2021 | 939 | 357/582/0 | 45 clinical departments | Openly | 0.81142 (3580/4412) | 0.00589 | ①②③ |
| Ragusa 2021 | NA | NA | NA | Openly | 0.66015 (2092/3169) | 0.00841 | ①③ |
| Anguraj 2021 | NA | NA | COVID ICUs | Openly | 0.65323 (1458/2232) | 0.01007 | ①②③ |
Note:
Designated hospital/ward for COVID-19.
Other occupations include medical interns, regular training students, hospital cleaners, logistics personnel, etc.
①Subgroup for different occupations; ②Subgroup for WHO five moments of HH; ③Subgroup for differential observation methods.
Fig 2Forest plot of HHC of health care providers during COVID-19 pandemic.
Fig 3Forest plot of HHC of health care providers among different occupations during COVID-19 pandemic.
Fig 4Forest plot of HHC of health care providers among different washing opportunities during COVID-19 pandemic.
Fig 5Forest plot of HHC rate of health care providers among different observation methods during COVID-19 pandemic.