| Literature DB >> 31815674 |
Lining Shen1,2,3, Shimin Wang1, Wenqiang Chen1, Qiang Fu4, Richard Evans5, Fuqiang Lan1, Wei Li1, Juan Xu1,2, Zhiguo Zhang1,2.
Abstract
BACKGROUND: Widespread adoption and continued developments in mobile health care technologies have led to the improved accessibility and quality of medical services. In China, WeChat, an instant messaging and social networking app released by the company Tencent, has developed a specific type of user account called WeChat official account (WOA), which is now widely adopted by hospitals in China. It enables health care providers to connect with local citizens, allowing them to, among other actions, send regular updates through mass circulation. However, with the diversity in function provided by WOA, little is known about its major constitution as well as the influence factors on the WeChat communication index (WCI). The WCI has been widely used in social media impact ranking with various types of WeChat content to fully reflect the dissemination and coverage of tweets as well as the maturity and impact of WOA.Entities:
Keywords: WeChat communication index; WeChat official account; WeChat service account; function constitution; health care; mobile health; social media; telemedicine; tertiary care centers; tertiary hospital
Year: 2019 PMID: 31815674 PMCID: PMC6928700 DOI: 10.2196/13025
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Process for identifying the WeChat official accounts adopted by tertiary hospitals. WCI: WeChat communication index; WSSA: WeChat subscription account; WSVA: WeChat service account.
Description of variables that influence WeChat communication indexes.
| Variable name | Description and coding | References |
| CertificationYear | The initial year of certification of the WSVAa. The coding is listed as follows: 1=never certified, 2=certification during 2014 to 2016, 3=certification in 2017, and 4=certification in 2018 | Gan, 2016 [ |
| HospitalType | The type of hospital. The coding is listed as follows: 1=specialized hospital and 2=comprehensive hospital | Huang et al, 2019 [ |
| ReformYear | The year of public hospital reform involvement. The coding is listed as follows: 1=2010, 2=2014, 3=2015, 4=2016, and 5=2017 | Lin et al, 2014 [ |
| BedNumber | The number of beds per top tertiary hospital | Lin et al, 2014 [ |
| TotalVistingNumber | The total number of visiting outpatients and emergency patients in 2017 | Fuller et al, 2019 [ |
| ActivityIndex | The activity index of the WSVA | Zhao et al, 2017 [ |
aWSVA: WeChat service account.
Distribution of top tertiary hospitals in different types and regions.
| Type of region | Specialized hospital (N=145), n (%) | Comprehensive hospital (N=536), n (%) | Total (N=681), n (%) |
| Western China | 31 (21.4) | 130 (24.3) | 161 (23.6) |
| Central China | 38 (26.2) | 175 (32.6) | 213 (31.3) |
| Eastern China | 76 (52.4) | 231 (43.1) | 307 (45.1) |
Figure 2Distribution of WeChat official accounts operated by top tertiary hospitals.
Figure 3Spatial distribution of WeChat subscription accounts operated by top tertiary hospitals.
Figure 4Spatial distribution of WeChat service accounts operated by top tertiary hospitals.
Function distribution of WeChat service account operated by top tertiary hospitals.
| Function item | Western China (N=41), n (%) | Central China (N=71), n (%) | Eastern China (N=115), n (%) | Total (N=227), n (%) |
| Hospital brief | 24 (59) | 50 (70) | 65 (56.5) | 139 (61.2) |
| Introduction of department and experts | 15 (37) | 34 (48) | 56 (48.7) | 105 (46.3) |
| Information bulletin | 21 (51) | 29 (41) | 59 (51.3) | 109 (48.0) |
| Medical guide | 18 (44) | 35 (49) | 65 (56.5) | 118 (52.0) |
| Hospital navigation | 16 (39) | 22 (31) | 47 (40.9) | 85 (37.4) |
| Visiting appointment | 36 (88) | 65 (92) | 98 (85.2) | 199 (87.7) |
| Inquiry | 28 (68) | 53 (75) | 92 (80.0) | 173 (76.2) |
| Medical charge payment | 18 (44) | 36 (51) | 68 (59.1) | 122 (53.7) |
| Online consultation | 3 (7) | 7 (10) | 7 (6.1) | 17 (7.5) |
| Intelligent guidance | 13 (32) | 24 (34) | 23 (20.0) | 60 (26.4) |
| Personal information management | 27 (66) | 51 (72) | 87 (75.7) | 165 (72.7) |
| Health education | 14 (34) | 28 (39) | 36 (31.3) | 78 (34.4) |
| Advice and feedback | 17 (41) | 31 (44) | 52 (45.2) | 100 (44.1) |
| Related links | 17 (41) | 35 (49) | 67 (58.3) | 119 (52.4) |
| Others | 14 (34) | 28 (39) | 59 (51.3) | 101 (44.5) |
Figure 5Component loadings of 14 functional items of WeChat service accounts between dimensions 1 and 2.
Figure 6Component loadings of 14 functional items of WeChat service accounts between dimensions 1 and 3.
Top 10 WeChat communication indexes of top tertiary hospitals.
| No | Name of top tertiary hospital | Average WCIa | Certification year | Hospital type | Region type | Activity index |
| 1 | West China Hospital, Sichuan University | 1233.49 | 2014 | CHb | WCc | 2.004 |
| 2 | Hunan Children’s Hospital | 1099.34 | 2018 | SHd | CCe | 2.087 |
| 3 | The First Affiliated Hospital, Sun Yat-sen University | 1074.46 | 2018 | CH | ECf | 1.498 |
| 4 | Guangzhou Women and Children’s Medical Center | 1026.92 | 2017 | SH | EC | 1.966 |
| 5 | Tongji Hospital, Tongji Medical College, Huazhong University of Science & Technology | 1012.37 | 2017 | CH | CC | 2.047 |
| 6 | Qilu Hospital of Shandong University | 996.97 | 2018 | CH | EC | 2.124 |
| 7 | The Third Affiliated Hospital, Sun Yat-sen University | 991.86 | 2017 | CH | EC | 0.693 |
| 8 | The First People’s Hospital of Foshan | 981.47 | 2018 | CH | EC | 2.465 |
| 9 | Yichang Central People’s Hospital | 951.52 | 2018 | CH | CC | 2.538 |
| 10 | Shanghai Ninth People’s Hospital, School of Medicine, Shanghai JiaoTong University | 949.48 | 2018 | CH | EC | 2.159 |
aWCI: WeChat communication index.
bCH: comprehensive hospital.
cWC: Western China.
dSH: specialized hospital.
eCC: Central China.
fEC: Eastern China.
Basic information for independent variables influencing WeChat communication index.
| Variable name | Values | |
|
| ||
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| Never certificated (reference category) | 7 (2.3) |
|
| Certification during 2014 to 2016 (CertificationYear1) | 9 (3.0) |
|
| Certification in 2017 (CertificationYear2) | 173 (57.1) |
|
| Certification in 2018 (CertificationYear3) | 114 (37.6) |
|
| ||
|
| Specialized hospital (reference category) | 62 (20.5) |
|
| Comprehensive hospital (HospitalType1) | 241(79.5) |
|
| ||
|
| Involved in 2010 (reference category) | 51 (16.8) |
|
| Involved in 2014 (ReformYear1) | 30 (9.9) |
|
| Involved in 2015 (ReformYear2) | 74 (24.4) |
|
| Involved in 2016 (ReformYear3) | 54 (17.8) |
|
| Involved since 2017 (ReformYear4) | 94 (31.0) |
| BedNumber, mean (SD) | 1.83 (1.06) | |
| TotalVisitingNumber, mean (SD) | 153.09 (116.43) | |
| ActivityIndex, mean (SD) | 1.99 (0.45) | |
Figure 7Ordinary least squares and quantile regression estimates for WeChat communication index model. Vertical axes show coefficient estimates of named explanatory variable; horizontal axes depict the quantiles of the WeChat communication index variable; the red plain line and the red dashed line represent the ordinary least squares point and 95% CI estimates on the conditional mean, respectively; the black dashed lines represent conditional quantile estimates.