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. 2020 Jun 22;76(8):2137–2150. doi: 10.1111/jan.14434

Willingness of Chinese nurses to practice in Hubei combating the coronavirus disease 2019 epidemic: A cross‐sectional study

中国护士赴湖北抗击2019年新冠肺炎病毒疫情的执业意愿:一项横断面研究

Xiaoqing Gan 1, Zeya Shi 1, Sek Ying Chair 2, Xi Cao 2, Qun Wang 3,
PMCID: PMC7283855  PMID: 32449187

Abstract

Aims

To investigate the willingness of Chinese nurses to practice in Hubei combating the coronavirus disease 2019 and to explore the associated factors.

Design

A cross‐sectional survey.

Methods

Clinical nurses were conveniently recruited by an online link in three provinces out of Hubei, including Hunan (Central south), Chongqing (Southwest) and Xinjiang (Northwest) during 4–10 February 2020. A structured questionnaire was distributed by an online investigation system. Information on sociodemographic characteristics, willingness, possible influencing factors (previous experience, health status, training conditions, perceptions on volunteering to practice in Hubei, family attitude, and insurance) was collected. Binary logistic regression was conducted to explore the association of different factors with the willingness decision of nurses.

Results

A total of 11,183 nurses participated in this survey and a high proportion of them were willing to volunteer to practice in Hubei combating the epidemic. Nurses who were likely to volunteer had the following characteristics: younger, unmarried, members of the Communist Party of China, with senior professional qualification, working in critical care departments, with support from their families, with adequate training and learning, with good health status and low levels of anxiety. The regression model could explain 31.1% of the variances of the willingness decision of nurses.

Conclusions

A high proportion of nurses in China were willing to practice in Hubei during the coronavirus disease 2019 epidemic. Adequate training and psychological support would facilitate nurses to volunteer during the outbreak of an infectious disease.

Impact

The study identified a high proportion of nurses in China were willing to practice in Hubei combating the coronavirus disease 2019 epidemic. The findings will provide valuable references for nurses and decision makers to formulate better plans for increasing nursing workforce during such kind of public health crisis.

Keywords: COVID‐19, epidemic, infectious disease, nurses, staffing, willingness

1. INTRODUCTION

An ongoing outbreak of a respiratory disease caused by the 2019 novel coronavirus (COVID‐19) emerged in Wuhan City, Hubei Province, China in December 2019 (The World Health Organization [WHO], 2020). This new virus has a similar genome sequence with the Severe Acute Respiratory Syndrome‐Associated Coronavirus (SARS‐CoV) but is less pathogenic than the SARS‐CoV and the Middle East Respiratory Syndrome coronavirus (MERS‐CoV) (Chen, 2020). The COVID‐19 has a strong capability of human‐to‐human transmission, resulting in its rapid spread throughout China and later outside the country (Cao et al., 2020). Until 24 February 2020, the number of confirmed cases in Mainland China had grown to 77,658, including 2,663 deaths and 47,672 under medical treatment; among these cases, 64,786 diagnosed patients and 2,563 deaths occurred in Hubei, the epicentre of the outbreak (National Health Commission of the People's Republic of China [NHC], 2020a). In response to the COVID‐19 outbreak, China has activated various emergency responses, such as holiday extensions, building specialty hospitals, the lockdown of Wuhan, a nationwide quarantine policy and sending a huge number of healthcare professionals from other parts of the country to help Hubei (Foreign Policy, 2020, NHC, 2020b).

Nurses, the professionals with the most contact with patients, play an essential role in fighting against disease outbreaks. In addition to initiating nursing procedures, the outbreak of an epidemic imposes frontline nurses with additional roles, such as screening and recognizing potential cases, helping with isolation, implementing a quarantine and monitoring cases (Stirling, Hacher, & Harmston, 2017). Therefore, a substantial increase of nursing workforce is demanded to assume these responsibilities. The nurse‐to‐population ratio in Hubei is 2.65 per 1,000 people (National Bureau of Statistics, 2019), lower than the average level in Mainland China (3.14) (CNKI, 2020) and much lower than that in Japan (11.5) and the USA (8.6) (The World Bank, 2019). The 47,672 patients with COVID‐19 require intensive treatment and care (NHC, 2020a), thus imposing additional burden to the inadequate nursing workforce there. Caring for this large number of patients places substantial stress on local nurses and may lead to their burnout.

To control this outbreak and to relieve the healthcare workforce shortage at the frontlines, physicians, nurses and other healthcare professionals have been recruited to practice in Hubei combating this epidemic. Till 17 March 2020, over 42,600 healthcare professionals from different hospitals all over the country, including 28,600 nurses, were sent to Hubei to fight against COVID‐19 epidemic (National Health Commission of the People’s Republic of China, 2020c). These healthcare professionals that were sent to Hubei were organized by local health commissions (the government department). Therefore, there is a need to understand the willingness of nurses to practice in Hubei and the factors associated with their willingness.

1.1. Background

Engaging healthcare professionals to serve during infectious disease outbreaks remains a difficult management topic. Previous studies reported a high proportion of absenteeism in Hong Kong (76.9%) (Wong et al., 2010), Taiwan (43%) (Lee et al., 2005), Australia (33%) (Stuart & Gillespie, 2007) and Germany (28%) (Ehrenstein, Hanses, & Salzberger, 2006) during the influenza pandemic, outbreaks of SARS and other infectious diseases. A survey in UK reported that only 1.7% of healthcare professionals volunteered to work in West Africa for the Ebola epidemic (Turtle et al., 2015).

The willingness of healthcare professionals to serve at the frontline of an outbreak is influenced by various factors. It may also vary from epidemic to epidemic and from region to region. Psychological stress, previous experience with an epidemic, safety concerns on being infected, social support, and the attitudes of the families were associated with willingness of healthcare professionals to serve in the frontline (Khalid, Khalid, Qabajah, Barnard, & Qushmaq, 2016; Oh et al., 2017; Turtle et al., 2015). Specifically, the common facilitators for healthcare professionals being volunteers include receiving training, availability of effective treatments (Turtle et al., 2015), perceived professional obligation, support from the hospital administration, financial compensation (Khalid et al., 2016), adequate protective equipment, reasonable staffing, and family support (Lee et al., 2005). Insufficient information, worry of being infected and the concerns of their families are the most cited reasons for nurses to not help in the frontline (Turtle et al., 2015).

With the strong transmission of COVID‐19 and the rapid increasing number of patients, an escalating demand for nursing workforce exists in Hubei, the epicentre of this outbreak. Nurses’ willingness to help fighting against COVID‐19 is a critical issue in the nursing management. Therefore, the current study was conducted to identify the willingness of Chinese nurses to practice in Hubei combating COVID‐19 and to explore the associated factors. Findings from this study will provide valuable references for decision makers to formulate better plans for increasing nursing workforce during such kind of public health crisis.

2. THE STUDY

2.1. Aims

The study aimed to investigate the willingness of Chinese nurses to practice in Hubei combating the coronavirus disease 2019 (COVID‐19) and to explore the associated factors.

2.2. 2 Design

This study was a cross‐sectional study. Given the strong capability of human‐to‐human transmission of the COVID‐19, close contact and mass gatherings should be limited (WHO, 2020). Considering the wide use of social media in China, for example, WeChat and QQ, an online survey approach was adopted, taking advantage of high efficiency and low cost.

2.3. Study settings

The online survey was conducted in the rising stage of this epidemic from 4–10 February 2020 shortly before the peak. The peak of the COVID‐19 epidemic in China occurred on 12 February, with 15,152 new cases and 254 new deaths on that day (NHC, 2020d). The survey was distributed in three province‐level administrative divisions in China, including Hunan Province (Central South China), Chongqing City (a province‐level municipality directly under the Chinese central government, Southwest) and Xinjiang Uygur Autonomous Region (a province level administrative division, with a main ethnic group of Uygur, Northwest). The three province‐level administrative divisions are located in different areas (North and South, Central and West) in China, with diverse ethnic compositions, populations, gross domestic product levels, cultural backgrounds and medical resources. Moreover, Hunan and Chongqing are both adjacent to Hubei, while Xinjiang is over 3,000 kilometres northwest of Hubei. Recruiting participants from the three areas would provide a full picture of nurses with various characteristics, especially with the differences in geographic location and distance from the epicentre of the outbreak.

2.3.1. Participants

Registered Nurses working in clinical practice were invited.

According to the most updated statistics, the total number of registered nurses was 184,000, 95,100 and 72,300 in Hunan, Chongqing and Xinjiang, respectively (National Bureau of Statistics, 2019). A convenient sample of at least 1% of the total number of nurses in each province was expected in the current study (Sun & Xu, 2014). Accordingly, at least 3,514 nurses were required, including 1,840, 951 and 723 in Hunan, Chongqing and Xinjiang, respectively.

2.3.2. Data collection

Study instrument

Based on findings of previous studies (Khalid et al., 2016; Lee et al., 2005; Oh et al., 2017; Turtle et al., 2015) and a pilot test, a structured questionnaire was developed to investigate Nurses’ Willingness of volunteering to practice in Hubei and the Influencing Factors (NWIF). The NWIF included 27 items, covering the sociodemographic characteristics (10 items), willingness of volunteering to help Hubei (1 item), and influencing factors (16 items). The sociodemographic characteristics included age, gender, education, political party membership, professional qualification, working department, marital status, number of children, living conditions, and locations.

The willingness was asked by the item ‘would you like to be a volunteer for Hubei to combat the COVID‐19 epidemic?’. A volunteer means the nurse would leave his or her original working hospital and hometown and practice in a hospital in Hubei to fight against COVID‐19. All volunteers to Hubei were selected and organized by local health commissions. When the job in Hubei is completed, the volunteers will return to their original working positions.

The possible influencing factors included the aspects of personal health (three items), previous experience (four items), training condition (three items), personal perceptions (four items), family attitude (one item) and insurance (one item). The perceived health status was measured by the question, ‘How do you feel about your current health status?’, with the choices of ‘energetic and spirited, as stable as before, feel depressed, unhappy for a long time, sleep disorders and others’. The perceived stress and anxiety levels were measured by the visual analogy scales (VAS), with 0 indicating no stress/anxiety and 100 indicating the highest level of stress/anxiety. The related experience items included ‘whether you have participated in a similar kind of public health crisis’, ‘whether your friends/colleagues have participated in a similar kind of public health crisis’, ‘whether you had close contact with COVID‐19 patients’, ‘whether any colleague was isolated’, ‘whether you bought a specific insurance for this crisis’. The training conditions included ‘whether you have received training for COVID‐19’, ‘your understanding about COVID‐19‐related knowledge’ (with choices of ‘very good/good/partly/not understanding’) and ‘how much time per day you spent on learning COVID‐19‐related knowledge’. The perceptions of nurses on the greatest benefits and worst outcomes of volunteering to help Hubei, the facilitators and barriers for the willingness decision were also asked. The attitudes of families towards being a volunteer were asked by one question, with the choices of ‘strongly support, support, a bit not support and not support at all’. The information on whether bought insurance for oneself was also asked by one item with yes‐or‐no choices.

2.4. Procedures

The questionnaire was presented in the Wenjuanxing online investigation system (www.wjx.cn) with a unique link. The researchers sent the link and introduction of the study to possible nurse administrators of different hospitals in the study areas. The survey link was thereby disseminated to clinical nurses through WeChat groups and QQ groups. The participation of this study was voluntary as there was no penalty nor award offered. The nurses could click the link and launch the first page, which introduced the aims, study criteria and process of the survey. The contact information of the investigators was also provided. At the end of the first page, the question: ‘do you agree to participate in this survey’ was asked to acquire the consent of the nurses. Only the ‘yes’ option led to the next page for the questionnaires. One mobile IP could only submit the answers once, which prevented duplication. No identity information was collected. The participants were only identified by the sequence numbers generated by the Wenjuanxing system. The online survey was discontinued a week later when the sample size was satisfied.

2.5. Ethical considerations

The current study followed the Declaration of Helsinki. The study was approved by the Ethical Committee of Hunan Province People Hospital (No. 2020004).

2.6. Data Analysis

The data were exported from the online investigation system. SPSS software was used for data analysis. The statistics of mean, standard deviation (SD), count and percentage were employed to describe the characteristics and responses of the participants. The characteristics of participants who were willing or not to volunteer were presented. Chi‐square tests and t‐tests were used to explore the differences among the proportions of willingness among nurses with different characteristics. Binary logistic regression was conducted to explore the association of different factors with the willingness decisions of nurses. The willingness of nurses was analysed as the dependent variable (‘willing’ =1, ‘not willing’ = 0). Possible associated factors were explored in the ‘enter’ method. Odds ratio (OR) and the 95% confidence intervals (CI) were computed. A p value less than .05 was set as statistical significance.

2.7. Validity and reliability

The NWIF was developed by the research team based on literature review (Khalid et al., 2016; Lee et al., 2005; Oh et al., 2017; Turtle et al., 2015). The content validity of the questionnaire was evaluated by an expert panel, including two clinical nurses, a nurse manager, a hospital administrator and two nursing professors. A pilot test was conducted among 50 nurses in a hospital in Hunan Province to examine the readability, clarity and coverage of the questionnaire. Revisions were made based on nurses’ comments in the pilot test. The content validity index was 0.92 for NWIF. The reliability (Cronbach's a) of NWIF was 0.71 in the current survey.

3. RESULTS

A total of 11,283 responses were received, among which 100 responded ‘No’ in the consent question. Finally, 11,183 responses were analysed, with a response rate of 99.1%. Among the participants, 2,342 (20.9%) were from Hunan, accounting for 1.27% of local nurses; 5,758 (51.5%) were from Chongqing, accounting for 6.05% of local nurses; and 3,121 (27.6%) were from Xinjiang, accounting for 4.32% of local nurses. The 1‐week online survey fully met the minimum sample size requirement, indicating the feasibility and high efficiency of this approach.

3.1. Demographic characters

The characteristics of the study participants were presented in Table 1. Most participants in the current study were female nurses (96.7%), aged below 40 years (89.2%), with no political party membership (87.7%), with bachelor's degree or above (56.5%), married (69.3%), with at least one child (61.5%), and living with their parents (53.1%). Most nurses had primary (73.8%) or middle (21.9%) levels of professional qualification and had more than 5 years of working experience (66.8%). In the current study, 21.6% of the nurses worked in high‐risk departments for contacting with COVID‐19 (NHC, 2020e), for example, critical care departments (11.7%), emergency department (6.3%) and infectious disease departments (3.6%).

Table 1.

The characteristics of the nurses (N = 11,183)

Variables N (%)
Sociodemographic characteristics
Location Hunan 2,342 (20.9)
Xinjiang 3,083 (27.6)
Chongqing 5,758 (51.5)
Gender Male 372 (3.3)
Female 10,811 (96.7)
Age 20–29 years 5,516 (49.3)
30–39 years 4,464 (39.9)
≧40 years 1,203 (10.8)
Professional qualification Primary (registered nurses) 8,258 (73.8)
Middle (nurses in charge) 2,448 (21.9)
Senior (chief nurses) 477 (4.3)
Political party membership No 9,809 (87.7)
The Communist Party of China 1,260 (11.3)
Other democratic parties 114 (1.0)
Education Associate degree 4,863 (43.5)
Bachelor degree 6,224 (55.7)
Master degree or above 96 (0.8)
Working departments Emergency department 706 (6.3)
Infectious departments 405 (3.6)
Critical care units 1,306 (11.7)
Other departments 8,757 (78.4)
Marital status Married 7,750 (69.3)
Others (Single, divorced, or widowed) 3,433 (30.7)
No. of children 0 4,307 (38.5)
1 4,783 (42.8)
≧2 2093 (18.7)
Living with the parents Yes 5,942 (53.1)
No 5,241 (46.9)
Attitude of your family Strongly support 3,966 (35.5)
Support 4,389 (39.2)
A bit not support 2,481 (22.2)
Not support at all 347 (3.1)
Experience
Participated in similar public health crisis Yes 742 (6.6)
No 10,441 (93.4)
Friends or family had participated in similar public health crisis Yes 2,884 (25.8)
No 8,299 (74.2)
With isolated colleagues Yes 564 (5.0)
No 10,619 (95.0)
Close contacts with COVID−19 patients Yes 892 (8.0)
No 10,291 (92.0)
Training condition
Received training for COVID−19 Frequently 8,985 (80.3)
Sometimes 1970 (17.6)
No 228 (2.0)
Understanding of related knowledge Very good understanding 1594 (14.3)
Good understanding 6,741 (60.3)
Partly understanding 2,786 (24.9)
Not understanding 62 (0.6)
Time spent on learning related knowledge <1h per day 5,244 (46.89)
1−3h per day 5,318 (47.55)
>3h per day 621 (5.55)
Personal health
Health status Energetic and spirited 2072 (18.5)
As stable as before 4,909 (43.9)
Felt depressed 2,709 (24.2)
Unhappy for a long time 349 (3.1)
Sleep disorders 955 (8.5)
Others 189 (1.7)
Stress level a Range: 0 –100 57.84 23.11
Anxiety level a Range: 0 –100 52.80 23.78
Perceptions
Perceived greatest benefit Honorary certification 63 (0.6)
Economic compensation 87 (0.8)
To promote professional skills 1,363 (12.2)
To get promoted 128 (1.1)
To realize personal value 6,323 (56.5)
To contribute to the society 3,027 (27.1)
Others 192 (1.7)
Perceived worst outcome Being infected 5,775 (51.6)
Psychological distress 196 (1.8)
Isolated from the family 2045 (18.3)
Unable to take care of family 2,747 (24.6)
Others 420 (3.8)
The key facilitator for the willingness decision Promise from administrators 603 (5.4)
Family support 2,675 (23.9)
Encouragement of administrators 839 (7.5)
The impact of role models 3,757 (33.6)
Professional ability 2,921 (26.1)
Others 388 (3.5)
The key barrier for the willingness decision Family's disagreement 5,101 (45.6)
The rapid epidemic 1,197 (10.7)
Experience of front‐line nurses 604 (5.4)
Uncertainty in working time 513 (4.6)
Lack of protective equipment 2,755 (24.6)
Others 1,013 (9.1)
Bought insurance Yes 2,500 (22.4)
No 8,683 (77.6)
Willingness to help Hubei Yes 9,331 (83.4)
No 1852 (16.6)
a

variables presented as mean, standard deviation.

Most nurses had stable health as before (43.9%) or were energetic and spirited (18.5%). The mean level of stress was 57.84 (SD 23.11, range 0–100) in the VAS measurement. The mean anxiety level was 52.80 (SD 23.78, range 0–100). Only 6.6% of the nurses experienced a similar kind of public health crisis and 8.0% of them had close contact with suspected or diagnosed patients. Most nurses received related training for the COVID‐19 (98.0%), spent 1–3 hr per day learning related knowledge (47.55%) and had a good understanding of related knowledge (14.3% for very good, 60.3% for good). The attitudes of nurses’ families were generally supportive, with 35.5% ‘strongly support’ and 39.2% being ‘support’. Only 22.4% of the nurses had bought insurance for themselves.

3.2. Willingness and characteristics

As to their willingness, 83.4% of the nurses were willing to volunteer to practice in Hubei in the epidemic. The chi‐square tests and t‐tests examined the association between characteristics of nurses and their willingness choices. Except for gender, age and education levels, all the other demographic characteristics (such as the location, professional qualification, working department, political party membership, marital status), personal health, previous experience, training condition, and personal perceptions revealed significant associations (all p values < .05) with the willingness of nurses to practice in Hubei (Table 2).

Table 2.

Comparison of characteristics between the nurses with different willingness (N = 11,183)

Variables Willingness to aid Hubei Chi square p value
Willing Not willing
N % N %
Sociodemographic characteristics
Location
Hunan 1893 (20.3) 449 (24.2) 97.062 <.001
Chongqing 4,693 (50.3) 1,065 (57.5)
Xinjiang 2,745 (29.4) 338 (18.3)
Gender
Male 320 (3.4) 52 (2.8) 1.857 .173
Female 9,011 (96.6) 1,800 (97.2)
Age
20–29 years 4,628 (49.6) 888 (47.9) 5.951 .051
30–39 years 3,681 (39.4) 783 (42.3)
≧40 years 1,022 (11.0) 181 (9.8)
Professional qualification
Primary (registered nurses) 6,858 (73.5) 1,400 (75.6) 22.915 <.001
Middle (nurses in charge) 2037 (21.8) 411 (22.2)
Senior (chief nurses) 436 (4.7) 41 (2.2)
Political party membership
No 8,119 (87.0) 1,690 (91.3) 26.252 <.001
The Communist Party of China 1,114 (11.9) 146 (7.9)
Other democratic parties 98 (1.1) 16 (0.9)
Education background
Associate degree 4,076 (43.7) 787 (42.5) 7.329 .062
Bachelor degree 5,173 (55.4) 1,051 (56.7)
Master degree or above 81 (0.9) 12 (0.6)
Years of working
< 3 years 1606 (17.2) 278 (15.0) 15.185 .002
3–5 years 1503 (16.1) 325 (17.5)
5–10 years 3,080 (33.0) 675 (36.4)
>10 years 3,142 (33.7) 574 (31.0)
Working departments
Emergency department 608 (6.5) 98 (5.3) 19.909 <.001
Infectious departments 327 (3.5) 78 (4.2)
Critical care units 1,136 (12.2) 170 (9.2)
Other departments 7,255 (77.8) 1502 (81.3)
Marital status
Married 6,363 (68.2) 1,387 (74.9) 32.606 <.001
Others 2,968 (31.8) 465 (25.1)
No. of children
0 3,694 (39.6) 613 (33.1) 31.064 <.001
1 3,948 (42.3) 835 (45.1)
≧2 1689 (18.1) 404 (21.8)
Living with the parents
Yes 4,819 (51.6) 1,123 (60.6) 50.177 <.001
No 4,512 (48.4) 729 (39.4)
Attitude of your family
Strongly support 3,839 (41.1) 127 (6.9) 2,218.103 <.001
Support 3,900 (41.8) 489 (26.4)
A bit not support 1,463 (15.7) 1,018 (55.0)
Not support at all 129 (1.4) 218 (11.8)
Experience
Participated in similar public health crisis
Yes 652 (7.0) 90 (4.9) 11.297 .001
No 8,679 (93.0) 1762 (95.1)
Friends or family had participated in similar public health crisis
Yes 2,526 (27.1) 358 (19.3) 48.379 <.001
No 6,805 (72.9) 1,494 (80.7)
With isolated colleagues
Yes 447 (4.8) 117 (6.3) 7.524 .008
No 8,884 (95.2) 1735 (93.7)
Close contacts with patients
Yes 722 (7.7) 170 (9.2) 4.375 .036
No 8,609 (92.3) 1682 (90.8)
Training condition
Received training for COVID−19
Frequently 7,650 (82.0) 1,335 (72.1) 102.250 <.001
Sometimes 1,520 (16.3) 450 (24.3)
No 161 (1.7) 67 (3.6)
Understanding of related knowledge
Very good understanding 1,445 (15.5) 149 (8.0) 247.717 <.001
Good understanding 5,759 (61.7) 982 (53.0)
Partly understanding 2090 (22.4) 696 (37.6)
Not understanding 37 (0.4) 25 (1.3)
Time spent on learning related knowledge
<1h per day 4,156 (44.5) 1,088 (58.7) 135.836 <.001
1−3h per day 4,619 (49.5) 699 (37.7)
>3h per day 556 (6.0) 65 (3.5)
Health
Health status
Energetic and spirited 1955 (21.0) 117 (6.3) 363.761 <.001
Stable 4,185 (44.9) 724 (39.1)
Felt depressed 2047 (21.9) 662 (35.7)
Unhappy for a long time 260 (2.8) 89 (4.8)
Sleep disorders 740 (7.9) 215 (11.6)
Others 144 (1.5) 45 (2.4)
Stress level a 56.01 23.10 68.81 19.92 t = 16.57 <.001
Anxiety level a 50.75 23.57 65.05 21.22 t = 16.30 <.001
Perceptions
Perceived greatest benefit
Honorary certification 28 (0.3) 35 (1.9) 308.670 <.001
Economic compensation 51 (0.5) 36 (1.9)
To promote professional skills 1,123 (12.0) 240 (13.0)
To get promoted 64 (0.7) 64 (3.5)
To realize personal value 5,399 (57.9) 924 (49.9)
To contribute to the society 2,551 (27.3) 476 (25.7)
Others 115 (1.2) 77 (4.2)
Perceived worst outcome
Being infected 4,820 (51.7) 955 (51.6) 72.002 <.001
Psychological distress 168 (1.8) 28 (1.5)
Isolated from the family 1,800 (19.3) 245 (13.2)
Unable to take care family 2,176 (23.3) 571 (30.8)
Others 367 (3.9) 53 (2.9)
The key facilitator for the willingness decision
Promise from administrators 423 (4.5) 180 (9.7) 307.493 <.001
Family support 2,186 (23.4) 489 (26.4)
Encouragement of administrators 701 (7.5) 138 (7.5)
The impact of role models 3,348 (35.9) 409 (22.1)
Professional ability 2,435 (26.1) 486 (26.2)
Others 238 (2.6) 150 (8.1)
The key barrier for the willingness decision
Family's disagreement 4,153 (44.5) 948 62.847 <.001
The rapid epidemic 956 (10.2) 241 (13.0)
Experience of front‐line nurses 507 (5.4) 97 (5.2)
Uncertainty in working time 438 (4.7) 75 (4.0)
Lack of protective equipment 2,385 (25.6) 370 (20.0)
Others 892 (9.6) 121 (6.5)
Bought insurance
Yes 2,162 (23.2) 338 (18.3) 21.546 <.001
No 7,169 (76.8) 1514 (81.7)
a

presented as mean, standard deviation, and examined by independent t tests.

3.3. Perceptions of nurses towards volunteering to help Hubei

‘To realize personal value’ (56.5%) ranked No.1 in nurses’ perception of the greatest benefit for being a volunteer to practice in Hubei, followed by ‘to contribute to the society’ (27.1%) and ‘to promote professional skills’ (12.2%). Few nurses considered personal profits in decision‐making, for example, chances for promotion (1.1%) or honorary certification (0.6%). As for the worst outcome of being a volunteer, the participants answered ‘being infected’ (51.6%) the most, followed by ‘unable to take care of the family’ (24.6%) and ‘short supply of protective equipment’ (13.3%). The top three facilitators for the willingness decision of nurses were ‘the impact of role models’ (33.6%), ‘professional ability’ (26.1%), and ‘family support’ (23.9%). The three key barriers included ‘family disagreement’ (45.6%), ‘lack of protective equipment’ (24.6%), and ‘the rapid epidemic’ (10.7%).

3.4. Factors associated with the willingness of nurses

The binary logistic regression analysis findings were summarized in Table 3. The final regression model included the variables of location, age, professional qualification, working department, political party membership, marital status, attitude of families, training, time spent on learning related knowledge, health condition, and anxiety levels (all p values < .05). These variables could explain 31.1% of the variations in the willingness decision of nurses (p < .001).

Table 3.

Logistic regression model for the willingness of nurses to help Hubei combat COVID‐19 (N = 11,183)

Variables B S.E. Wald df p Odds ratio 95% CI
Constant −0.627 0.644 0.946 1 0.331 0.534 Lower Upper
Location
Hunan −0.302 0.218 1.929 1 0.165 0.739 0.482 1.132
Chongqing −0.409 0.100 16.558 1 <0.001 0.664 0.546 0.809
Gender
Females 0.224 0.268 0.697 1 0.404 1.251 0.739 2.118
Age
30–39 years −0.203 0.141 2.059 1 0.151 0.816 0.619 1.077
≧40 years −0.734 0.224 10.757 1 0.001 0.480 0.309 0.744
Professional qualification
Middle (nurses in charge) 0.065 0.137 0.222 1 0.637 1.067 0.815 1.396
Senior (chief nurses) 0.851 0.346 6.041 1 0.014 2.342 1.188 4.616
Political party Membership
The Communist Party of China 0.357 0.166 4.644 1 0.031 1.429 1.033 1.978
Other democratic parties 0.124 0.477 0.068 1 0.795 1.132 0.444 2.886
Education
Bachelor degree 0.178 0.095 3.534 1 0.060 1.195 0.992 1.439
Master degree or above 0.645 0.692 0.869 1 0.351 1.907 0.491 7.409
Years of working
3–5 years −0.168 0.223 0.566 1 0.452 0.845 0.546 1.309
5–10 years −0.190 0.196 0.935 1 0.334 0.827 0.563 1.215
>10 years −0.093 0.140 0.440 1 0.507 0.912 0.693 1.199
Working department
Emergency department −0.018 0.176 0.011 1 0.918 0.982 0.696 1.386
Infectious departments −0.714 0.212 11.340 1 0.001 0.490 0.323 0.742
Critical care units 0.437 0.152 8.232 1 0.004 1.549 1.149 2.088
Marital status
Married −0.392 0.174 5.091 1 0.024 0.675 0.480 0.950
No. of children
1 −0.059 0.162 0.133 1 0.715 0.942 0.685 1.296
≧2 −0.152 0.186 0.671 1 0.413 0.859 0.597 1.236
Living condition
Living with parents −0.161 0.093 3.015 1 0.083 0.851 0.710 1.021
Attitude of family
Strongly support 3.420 0.227 227.573 1 <0.001 30.558 19.596 47.651
Support 2.421 0.203 142.625 1 <0.001 11.259 7.567 16.752
A bit not support 0.947 0.199 22.618 1 <0.001 2.577 1.745 3.807
Participated in public health crisis 0.156 0.191 0.666 1 0.414 1.169 0.804 1.699
Friends/ family participated in public health crisis 0.199 0.112 3.199 1 0.074 1.221 0.981 1.519
With isolated colleagues −0.294 0.187 2.473 1 0.116 0.745 0.517 1.075
Had close contact with patients −0.170 0.173 0.965 1 0.326 0.844 0.601 1.184
Bought Insurance 0.147 0.108 1.843 1 0.175 1.159 0.937 1.433
Received training
Frequently 0.627 0.243 6.667 1 0.010 1.873 1.163 3.015
Sometimes 0.454 0.246 3.401 1 0.065 1.575 0.972 2.553
Understanding of related knowledge
Very good understanding 0.294 0.465 0.399 1 0.528 1.342 0.539 3.340
Good understanding 0.534 0.445 1.439 1 0.230 1.706 0.713 4.081
Partly understanding 0.475 0.439 1.171 1 0.279 1.608 0.680 3.800
Time spent on learning daily
1−3h 0.230 0.093 6.124 1 0.013 1.259 1.049 1.511
>3h 0.258 0.238 1.176 1 0.278 1.294 0.812 2.062
Health status
Energetic and spirited 1.017 0.299 11.559 1 0.001 2.766 1.539 4.971
Stable 0.707 0.269 6.913 1 0.009 2.027 1.197 3.433
Depressed 0.574 0.271 4.470 1 0.034 1.775 1.043 3.021
Unhappy for a long time 0.565 0.331 2.902 1 0.088 1.759 0.919 3.367
Sleep disorders 0.665 0.290 5.248 1 0.022 1.945 1.101 3.435
Stress level −0.036 0.038 0.885 1 0.347 0.965 0.895 1.040
Anxiety level −0.142 0.037 15.026 1 <0.001 0.867 0.807 0.932

R2 = 0.311, p < .001. Reference for the two‐or‐more categorical variables. Location: Xinjiang as the reference variable; Age: 20–29 years as the reference variable; Professional qualification: primary (registered nurses) as the reference variable; Political party membership: no membership as the reference variable; Education: associate degree as the reference variable; Years of working: <3 years as the reference variable; Working departments: Other departments as the reference variable. No. of child: with no child as the reference variable; Attitude of family: not support at all as the reference variable; Training: received no training as the reference variable;; Understanding of related knowledge: not understanding as the reference variable; Time spent on learning related knowledge:<1 hr per day as the reference variable; Health status: Others as the reference variable.

4. DISCUSSION

Nurses play critical roles in the epidemic caused by infectious diseases. Given the large number of COVID‐19 patients and the shortage of nursing workforce in Hubei, nurses from other provinces were urgently needed to practice in Hubei combating this epidemic. Therefore, understanding the willingness of nurses was critical in addressing the shortage of nursing workforce. Identifying the associated factors would contribute to engaging nurses to participate in such kind of epidemic.

The demographic characteristics of the current participants were consistent with those in the National Nurses Survey of China (NNSC) (China Social Welfare Foundation, 2017). Although 43.9% of the nurses reported stable health conditions as before, they showed a middle level of stress (57.84 out of 100) and anxiety (52.80 out of 100). Similar to other studies, the outbreaks of COVID‐19 might impose additional stress on nurses (Oh et al., 2017). Some nurses felt depressed (24.2%), unhappy (3.1%), or had sleep disorders (8.5%). This finding was consistent with the results of the NNSC, where 86% of the nurses expressed the need for psychological support to release their stress from daily work (China Social Welfare Foundation, 2017). This finding indicates that professional support should be provided to promote the psychological health of nurses not only when an infectious disease occurs, but also as a routine practice.

4.1. Willingness of nurses to volunteer to help Hubei

Our study revealed that a large proportion of nurses (83.4%) were willing to practice in Hubei, which was much higher than that in previous outbreaks of infectious diseases (Khalid et al., 2016; Lee et al., 2005; Turtle et al., 2015; Wong et al., 2010).

The possible reasons for such a strong willingness might be related to the current social environment in China. On the one hand, most Chinese nurses were eager to be respected as professionals and to increase their social status (China Social Welfare Foundation, 2017). The professionalism of nurses in caring for the COVID‐19 patients would help nurses realize their professional value and gain further social recognition. In the current study, the nurses perceived ‘to realize personal value’ (56.5%), ‘to contribute to the society’ (27.1%) and ‘to promote professional skills’ (12.2%) as the top benefits of being a volunteer. Unlike the findings in the Middle East (Khalid et al., 2016), relatively fewer nurses in China considered personal benefits in their decision making, for example, promotion or economic compensation. These internal motivations would definitely enable nurses to be one of the frontline fighters. On the other hand, the experience of frontline nurses engaged the participants to make a willing decision. ‘The experience of role models’ was the top facilitator (33.6%) for the decision of current nurses. Since the end of January 2020, the Chinese government has launched series of national activities to publicly acknowledge the contributions of frontline healthcare professionals (including the first group of volunteers) by television, radio, Internet, newspapers, and other media (NHC, 2020f). The professional performance and contributions of frontline nurses in this epidemic were broadly recognized by the entire society. Moreover, the Chinese culture cherishes the interests of the whole nation and respect the spirit of sacrifice (Lee et al., 2005). Our finding also confirmed that the members of the Communist Party of China were more likely to make a willing choice. The Communist beliefs and their commitment to the call of the central government engaged these nurses to volunteer. This kind of social and cultural environment would be another reason for the choices of nurses to volunteer to help Hubei.

Similar with other studies in Asia (Lee et al., 2005, Oh et al., 2015), family support is another key facilitator in the current study. As high as 72.7% of the current participants reported the supportive attitude of their family towards them to be a volunteer. The regression analyses also confirmed that nurses with support from their families were more likely to make a willing decision.

In addition to Chinese‐specific factors, professionalism also engaged the willingness of nurses to practice in Hubei. In the current study, 26.1% of the nurses regarded ‘professional ability’ as the key facilitator for their willingness decision. Moreover, the logistic regression findings indicated those who had senior professional qualification, received frequent training on COVID‐19 and spent 1–3 hr per day learning about related knowledge were more likely to make a willing decision. Similar with the findings in previous studies (Khalid et al., 2016; Lee et al., 2005; Turtle et al., 2015), professional knowledge and related training would increase the confidence of nurses and prepare them better to fight against the outbreak. However, professional knowledge would also compel nurses to be greatly worried about the ‘lack of protective equipment’ and ‘the rapid epidemic’ in the COVID‐19 epidemic.

4.2. Factors associated with the willingness decision of nurses

The logistic regression indicated that compared with the 20–29‐year group and the unmarried group, nurses who were over 40 years and married were less likely to make a willing choice. This result might be related to the key family roles in China. Married and older nurses might have greater family commitment towards caring for the parents and children, leading to their unwillingness decision (Lee et al., 2005).

An interesting finding was that nurses from Chongqing were less likely to help Hubei, compared with those in Xinjiang. Given the adjacent location, convenient transportation and a huge number of migrant populations with Hubei, Chongqing was estimated to be another epicentre of the COVID‐19 epidemic (Caixin Health, 2020). On 27 January 2020, Chongqing reported 132 COVID‐19 patients, ranking No.1 amongst all the cities outside Hubei (Chongqing Health Commission, 2020). The rapid growth of the epidemic in Chongqing might impose essential stress on local nurses, thus diminishing their willingness to serve in Hubei.

Another interesting phenomenon was identified in working departments. Nurses working in infectious diseases departments were less willing to practice in Hubei. Given the rapid spread of the COVID‐19 throughout China, nurses of infectious diseases departments might have already been fully occupied with screening suspected patients and caring for infected patients locally. They might not have extra energy to help Hubei. By contrast, critical care nurses were more willing to be deployed to Hubei. As reported by the WHO (2020), the rate of severe cases caused by the COVID‐19 was lower than SARS‐CoV. The COVID‐19‐related occupation rate in critical care departments of the study provinces was much lower than that in Hubei. Given their outstanding professional ability, critical care nurses would be confident in joining the combat with COVID‐19.

In the current study, health condition of nurses was significantly associated with their willingness decision, which was consistent with previous studies (Damery et al., 2009; Lee et al., 2005; Wong et al., 2010). Nurses with good health (energetic and spirited, as stable as before) might be greatly confident with their personal immunity and were more likely to volunteer, whereas those with high levels of anxiety were less likely to make a willing decision.

The current study indicated that nurses with the following characteristics were more likely to volunteer to practice in Hubei: those who were younger, unmarried, member of the Communist Party of China, with senior professional qualification, working in critical care departments, with support from the family, with adequate training and learning, with good health status and lower level of anxiety. Adequate training and psychological support might be feasible interventions to maintain the willingness of nurses to serve in the frontlines. The public acknowledgement of their professional contributions and support from their family might also help to engage nurses to volunteer.

4.3. Limitations

The current study indicated the feasibility and high efficiency of an online survey among nurses in the outbreak of an infectious disease. There are also some limitations in this study. Firstly, it was an online survey using convenient sampling. Secondly, the willingness, health status, stress, and anxiety levels of nurses were measured by single questions. To facilitate the online survey and response rate, only multiple‐choice questions were designed. In‐depth reasons for the willingness choices of nurses were not explored. Future studies could employ the systematic sampling methods. Qualitative studies were also suggested to provide more comprehensive understanding about the willingness of nurses during the outbreak of an infectious disease.

5. CONCLUSION

The current study revealed that a high proportion of nurses in China were willing to practice in Hubei during the outbreak of COVID‐19. Adequate training and psychological support would facilitate nurses to volunteer during the epidemic of an infectious disease.

CONFLICT OF INTEREST

The authors declare no conflict of interest.

Author contributions

XQG: conceptualization, data curation, investigation, formal analysis, resources, writing – review & editing. ZYS: conceptualization, data curation, investigation, formal analysis, resources, writing‐review & editing. SYC: conceptualization, methodology, supervision, validation, writing‐review & editing. XC: formal analysis, project administration, writing‐original draft, writing‐review & editing. QW: conceptualization, methodology, formal analysis, writing‐original draft, writing‐review & editing.

ACKNOWLEDGEMENTS

The authors thank all the nurses that participated this investigation.

Gan X, Shi Z, Chair SY, Cao X, Wang Q. Willingness of Chinese nurses to practice in Hubei combating the coronavirus disease 2019 epidemic: A cross‐sectional study. J Adv Nurs. 2020;76:2137–2150. 10.1111/jan.14434

XQG and ZYS contributed equally for this manuscript.

The peer review history for this article is available at https://publons.com/publon/10.1111/jan.14434

Funding information

This study was supported by the grant from Shenzhen University (no. 2019126). The funding source had no influence on the study design, procedure, data analysis, or interpretations of the findings.

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