The Impact of Popular Science Articles by Physicians on Their Performance on Online Medical Platforms
Abstract
:1. Introduction
2. Research Hypothesis and Theoretical Basis
2.1. Research Hypothesis
2.1.1. Topic Focus
2.1.2. Readability
2.1.3. Form Diversity
2.2. Elaboration Likelihood Model
3. Method
3.1. Study Aim and Design
3.2. Data Preparation
3.3. Variable Description and Measurement
3.3.1. Physician Performance
3.3.2. Topic Focus
3.3.3. Readability
3.3.4. Form Diversity
3.3.5. Other Variables
4. Results
4.1. Descriptive Statistical Analysis
4.2. Correlation Analysis
4.3. Regression Results
5. Robustness Test
- (1)
- Alternative Measurement Method of Topic Focus
- (2)
- Alternative Measurement Method of Readability
- (3)
- Alternative Measurement Method of Form Diversity
6. Discussion
6.1. Key Findings
6.2. Research Contribution
6.2.1. Theoretical Implications
- (1)
- This paper enriches the study of factors influencing physicians’ performance. It focuses on the feature of a popular science section in an online healthcare platform and examines what specific characteristics of popular science articles would benefit physicians’ performance. Previous studies of popular science articles have extracted only superficial characteristics, such as the number of articles, article readership [67], research on popular science articles has not been conducted in sufficient depth, and features related to the content of the articles are rarely mentioned. This paper further explores the content characteristics per se of science articles through thematic and readability analyses and verifies their positive impact on physicians’ performance, thereby expanding the research on the impact on physicians’ performance.
- (2)
- This study proposes a new influence mechanism for health science articles. A majority of the previous studies have focused on the motivation of sharing health science popularization knowledge, whereas a few studies have analyzed the utility of health science popularization knowledge features by considering science popularization behavior as an independent variable. In this paper, three characteristics of popular science articles (thematic relevance, readability, and formal variety) are used as independent variables to explore their influence mechanisms, thus proposing a new link between characteristics of popular science articles and physicians’ performance.
6.2.2. Practical Implications
- (1)
- This study has important implications for how doctors can publish popular science articles more effectively in the near future. In terms of topics, doctors should place greater emphasis on article content when publishing popular science articles and focus on health information pertaining to their own areas of expertise rather than a broad range of popular science knowledge. Simultaneously, care should be taken to consider patients’ ability to accept medical expertise, and excessive medical jargon, such as drug names and treatments, which may confuse patients, should be avoided. Finally, doctors can choose from the appropriate media forms to publish articles according to the varied contents of science popularization. For example, they can choose video publication when they need to demonstrate actions and choose graphic publication when they need to summarize precautions.
- (2)
- This paper also has implications for the future sustainability of online healthcare platforms. This study finds that the relevance, readability, and variety of formats have a positive impact on doctors’ performance, and that patients’ demand for popular health knowledge is growing, and online health knowledge popularization has become a major trend. The platform can encourage doctors to participate more in publishing popular science articles to improve their performance, stabilize the main body of doctors on the platform, and make the module of doctors’ popular science one of the key focuses of future development, which will help the platform prosper and develop continuously.
- (3)
- This study also has realistic significance for patients. According to the findings of this study, the patients focused on the topic and readability of the content and the form diversity of the articles when they read the doctors’ popular science articles. The more targeted the content of the doctor’s popular science articles is, the more patients can clearly grasp the doctor’s area of expertise; the more readable the popular science articles are, the more the patients can correctly understand the popular science knowledge regarding health. Therefore, this study has practical implications for patients in terms of both choosing doctors and effectively grasping popular science knowledge regarding health.
6.3. Limitations
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Name | Description | Measurement | |
---|---|---|---|
Dependent variable | Performance | The financial rewards doctors receive from the platform | Telephone consultation rate per minute * total number of patients then logarithm |
Independent variable | Topic Focus | The extent to which physicians publish popular science articles focusing on a particular field or topic | The probability of distribution of all popular science articles of the doctor under each topic, calculate the standard deviation of the probability |
Readability | Physicians publish popular science articles that are easy for patients to understand and grasp | Screening articles for complex medical vocabulary and calculating them by readability formulas | |
Form Diversity | Physicians publish popular science articles in a variety of presentation formats, including text, audio, and video | text; 2—voice; 3—video All popular science articles by doctors are counted non-repeatedly according to the above three |
Disease | Number of Physicians | Number of Articles | Average Article Count | Percentage of Articles |
---|---|---|---|---|
Lung Cancer | 344 | 27,151 | 78.927 | 28.8% |
Cerebral hemorrhage | 404 | 33,605 | 83.181 | 35.6% |
Hypertension | 258 | 16,168 | 62.667 | 17.1% |
Depression | 289 | 17,505 | 60.571 | 18.5% |
Total | 1295 | 94,429 | 285.346 | 100.0% |
Variable | N | Mean | Median | Std.Dev. | Min | Max |
---|---|---|---|---|---|---|
Performance | 5180 | 9.714 | 9.858 | 1.825 | 3.219 | 14.94 |
City | 5180 | 2.302 | 2 | 0.765 | 1 | 3 |
Duration | 5180 | 9.743 | 10 | 3.318 | 1 | 14 |
LikeCnt | 5180 | 5.501 | 1.5 | 13.22 | 0 | 161.2 |
Urgency Level Doctorgrade | 5180 5180 5180 | 1.312 1.961 2.574 | 1 2 3 | 0.463 0.195 0.607 | 1 1 0 | 2 2 3 |
Topic Focus | 5180 | 0.082 | 0.064 | 0.061 | 0.003 | 0.387 |
Readability | 5180 | 0.303 | 0.315 | 0.0380 | 0.0840 | 0.540 |
Form Diversity | 5180 | 1.352 | 1 | 0.537 | 1 | 3 |
City | Duration | LikeCnt | Urgency | Level | Doctorgrade | Topic | Readability | Form | |
---|---|---|---|---|---|---|---|---|---|
City | 1 | ||||||||
Duration | 0.113 | 1 | |||||||
LikeCnt | 0.0743 | −0.0667 | 1 | ||||||
Urgency | −0.0675 | 0.0291 | −0.0914 | 1 | |||||
Level | −0.0239 | −0.0205 | 0.0416 | −0.0522 | 1 | ||||
Doctorgrade | −0.0971 | 0.406 | −0.125 | −0.0461 | −0.0114 | 1 | |||
Topic | 0.0673 | 0.171 | −0.0402 | 0.149 | −0.0518 | 0.0812 | 1 | ||
Readability | −0.0028 | −0.0258 | 0.0489 | −0.444 | 0.0201 | 0.0154 | −0.136 | 1 | |
Form | 0.0612 | −0.0789 | 0.197 | −0.0195 | 0.0161 | −0.111 | 0.285 | 0.00530 | 1 |
Variable | VIF | 1/VIF |
---|---|---|
Urgency | 1.28 | 0.778 |
Duration | 1.27 | 0.787 |
Doctorgrade | 1.26 | 0.796 |
Readability | 1.25 | 0.797 |
Topic Focus | 1.19 | 0.842 |
Form Diversity | 1.17 | 0.853 |
LikeCnt | 1.07 | 0.932 |
City | 1.06 | 0.946 |
Level | 1.01 | 0.993 |
Mean VIF | 1.17 |
Variable | Dependent Variables: Performance | |||
---|---|---|---|---|
Model 1 | Model 2 | Model 3 | Model 4 | |
City | 0.430 *** | 0.391 *** | 0.393 *** | 0.388 *** |
(0.057) | (0.055) | (0.055) | (0.055) | |
Duration | 0.125 *** | 0.105 *** | 0.105 *** | 0.109 *** |
(0.015) | (0.015) | (0.015) | (0.015) | |
LikeCnt | 0.035 *** | 0.036 *** | 0.036 *** | 0.033 *** |
(0.004) | (0.004) | (0.004) | (0.004) | |
Urgency | −1.027 *** | −1.175 *** | −1.120 *** | −1.108 *** |
(0.105) | (0.101) | (0.104) | (0.103) | |
Level | 0.164 | 0.257 | 0.259 | 0.243 |
(0.228) | (0.216) | (0.216) | (0.214) | |
Doctorgrade | 0.152 * | 0.127 | 0.127 | 0.146 * |
(0.084) | (0.081) | (0.081) | (0.082) | |
Topic | 7.622 *** | 7.688 *** | 6.896 *** | |
(0.708) | (0.707) | (0.736) | ||
Readability | 1.546 *** | 1.461 *** | ||
(0.521) | (0.523) | |||
Form | 0.281 *** | |||
(0.075) | ||||
_cons | 7.945 *** | 7.683 *** | 7.129 *** | 6.789 *** |
(0.532) | (0.502) | (0.532) | (0.538) | |
N | 5180.000 | 5180.000 | 5180.000 | 5180.000 |
r2 | 0.249 | 0.311 | 0.311 | 0.317 |
Variable | Dependent Variables: Performance | |||
---|---|---|---|---|
Model 1 | Model 2 | Model 3 | Model 4 | |
City | 0.430 *** | 0.407 *** | 0.429 *** | 0.423 *** |
(0.057) | (0.055) | (0.055) | (0.055) | |
Duration | 0.125 *** | 0.101 *** | 0.101 *** | 0.104 *** |
(0.015) | (0.015) | (0.015) | (0.015) | |
LikeCnt | 0.035 *** | 0.036 *** | 0.036 *** | 0.035 *** |
(0.004) | (0.004) | (0.004) | (0.004) | |
Urgency | −1.027 *** | −0.926 *** | −0.879 *** | −0.887 *** |
(0.105) | (0.101) | (0.103) | (0.103) | |
Level | 0.164 | 0.312 | 0.318 | 0.323 |
(0.228) | (0.218) | (0.220) | (0.218) | |
Doctorgrade | 0.152 * | 0.181 ** | 0.183 ** | 0.190 ** |
(0.084) | (0.082) | (0.082) | (0.082) | |
Topic1 | 6.861 *** | 7.300 *** | 7.002 *** | |
(0.611) | (0.615) | (0.627) | ||
Readability1 | 0.620 ** | 0.588 ** | ||
(0.240) | (0.242) | |||
Form1 | 0.401 ** | |||
(0.185) | ||||
_cons | 7.945 *** | 7.021 *** | 6.488 *** | 6.460 *** |
(0.532) | (0.516) | (0.554) | (0.550) | |
N | 5180.000 | 5180.000 | 5180.000 | 5180.000 |
r2 | 0.249 | 0.309 | 0.313 | 0.315 |
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Liu, J.; Wang, S.; Jiang, H. The Impact of Popular Science Articles by Physicians on Their Performance on Online Medical Platforms. Healthcare 2022, 10, 2432. https://doi.org/10.3390/healthcare10122432
Liu J, Wang S, Jiang H. The Impact of Popular Science Articles by Physicians on Their Performance on Online Medical Platforms. Healthcare. 2022; 10(12):2432. https://doi.org/10.3390/healthcare10122432
Chicago/Turabian StyleLiu, Jingfang, Shiqi Wang, and Huihong Jiang. 2022. "The Impact of Popular Science Articles by Physicians on Their Performance on Online Medical Platforms" Healthcare 10, no. 12: 2432. https://doi.org/10.3390/healthcare10122432
APA StyleLiu, J., Wang, S., & Jiang, H. (2022). The Impact of Popular Science Articles by Physicians on Their Performance on Online Medical Platforms. Healthcare, 10(12), 2432. https://doi.org/10.3390/healthcare10122432