| Literature DB >> 32597787 |
Abstract
BACKGROUND: Web-based crowdsourcing promotes the goals achieved effectively by gaining solutions from public groups via the internet, and it has gained extensive attention in both business and academia. As a new mode of sourcing, crowdsourcing has been proven to improve efficiency, quality, and diversity of tasks. However, little attention has been given to crowdsourcing in the health sector.Entities:
Keywords: crowdsourced medical services; crowdsourcing; doctors’ participation; elaboration-likelihood model; online health communities
Year: 2020 PMID: 32597787 PMCID: PMC7367514 DOI: 10.2196/16704
Source DB: PubMed Journal: JMIR Med Inform
Figure 1The research framework.
Figure 2The 120ask website.
Figure 3Process of medical service provision in a crowdsourced health care information website.
Figure 4Parts of the history of the records in the crowdsourced health care information website.
Figure 5Central route information.
Description of the variables.
| Variables | Variable symbol | Description | |
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| Doctors’ participation | D_Participation | The number of doctors who answered the question |
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| Central route: the professional title of the doctor who answered first | Dtitle_dummy1 | The professional titles of the doctors represent their clinical abilities. Two dummy variables are used to measure doctor titles. |
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| Central route: the web-based rating of the doctor who answered first | D_Score | The score that patients rate on the doctor’s quality of medical services, which ranges from 0 to 5. |
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| Peripheral route: reward | P_Reward | The reward that the patient assigns to the question |
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| Question’s complexity | Q _Complexity | The number of characters in the first doctor’s response is used to measure the complexity of the question that the patient posts. Its log value is used in the models. |
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| Patient’s age | P_Age | Its log value is used in the models. |
| Patient’s gender | P_Gender | 1 for male and 0 for female. | |
| Time limit | P_ Deadline | The time limit that the patient sets to the questions. Its log value is used in the models. | |
| Response speed of the doctor who answered first | D_ Response speed | The response speed of the doctor who answered first is included in the model. | |
| Total number of questions by the doctor who answered first | D_ Assistance numbers | The total number of questions that the doctor has answered no matter whether he/she has received a reward. | |
a1CNY= US $0.14
Descriptive statistics and correlations of the variables.
| Variable, mean | D_ | P_Gender | P_Age | P_ Deadline | D_Reponse Speed | D_Assistance Number | P_Rewards | Dtitle_dummy1 | Dtitle_dummy2 | D_Score | Q_Complexity | |
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| 1 | 0.114 | –0.002 | 0.044 | –0.037 | 0.294 | 0.341 | 0.183 | –0.110 | 0.258 | 0.067 |
| —a | <.001 | .94 | .08 | .15 | <.001 | <.001 | <.001 | <.001 | <.001 | .01 | ||
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| 0.114 | 1 | 0.002 | 0.040 | 0.032 | 0.025 | 0.124 | 0.016 | 0 | 0.037 | –0.021 |
| <.001 | — | .95 | .12 | .22 | .34 | <.001 | .54 | .99 | .15 | .43 | ||
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| –0.002 | 0.002 | 1 | –0.008 | –0.004 | –0.031 | 0.040 | –0.035 | –0.008 | 0.011 | –0.058 |
| .93 | .95 | — | .76 | .89 | .23 | .13 | .17 | .75 | .67 | .02 | ||
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| 0.044 | 0.040 | –0.008 | 1 | 0.119 | –0.039 | –0.021 | 0.003 | –0.151 | 0.120 | 0.144 |
| .08 | .12 | .76 | — | <.001 | .13 | .41 | .91 | <.001 | <.001 | <.001 | ||
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| –0.037 | 0.032 | 0 | 0.119 | 1 | –0.052 | –0.006 | –0.014 | 0.009 | –0.036 | 0.007 |
| .15 | .22 | .89 | <.001 | — | .04 | .83 | .59 | .74 | .16 | .79 | ||
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| 0.294 | 0.025 | –0.031 | –0.039 | –0.052 | 1 | 0.059 | 0.113 | –0.129 | 0.295 | 0.008 |
| <.001 | .34 | .23 | .13 | .04 | — | .02 | <.001 | <.001 | <.001 | .76 | ||
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| 0.341 | 0.124 | 0.040 | –0.021 | –0.006 | 0.059 | 1 | 0.020 | 0.032 | 0.025 | 0.168 |
| <.001 | <.001 | .13 | .41 | .83 | .02 | — | .44 | .21 | .34 | <.001 | ||
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| 0.183 | 0.016 | –0.035 | 0.003 | –0.014 | 0.113 | 0.020 | 1 | –0.544 | 0.278 | 0.056 |
| <.001 | .54 | .17 | .91 | .59 | <.001 | .44 | — | <.001 | <.001 | .03 | ||
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| –0.110 | 0 | –0.008 | –0.151 | 0.009 | –0.129 | 0.032 | –0.544 | 1 | –0.370 | –0.018 |
| <.001 | .99 | .75 | <.001 | .74 | <.001 | .21 | <.001 | — | <.001 | .496 | ||
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| 0.258 | 0.037 | 0.011 | 0.120 | –0.036 | 0.295 | 0.025 | 0.278 | –0.370 | 1 | 0.017 |
| <.001 | .15 | .67 | <.001 | .16 | <.001 | .34 | <.001 | <.001 | — | .52 | ||
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| 0.067 | –0.021 | –0.058 | 0.144 | 0.007 | 0.008 | 0.168 | 0.056 | –0.018 | 0.017 | 1 |
| .01 | .43 | .02 | <.001 | .79 | .76 | <.001 | .03 | .496 | .52 | — | ||
aNot applicable.
Empirical model results.
| Variables | Model 1a | Model 2b | Model 3c | Model 4d | ||||
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| β (SD) | β (SD) | β (SD) | β (SD) | ||||
| P_Gender | .114 (.027) | <.001 | .065 (.025) | .007 | .065 (.025) | .008 | .065 (.025) | .007 |
| P_Age | .012 (.016) | .35 | .015 (.015) | .32 | .016 (.015) | .32 | .015 (.015) | .27 |
| P_ Deadline | .023 (.009) | <.001 | .017 (.008) | .05 | .021 (.008) | <.001 | .023 (.008) | <.001 |
| D_Response Speed | .088 (.007) | <.001 | .067 (.007) | <.001 | .064 (.007) | <.001 | .065 (.007) | <.001 |
| D_Assistance Number | –.035 (.024) | .22 | –.025 (.022) | .32 | –.022 (.022) | .32 | –.19 (.022) | .28 |
| P_Rewards | —e | — | .019 (.001) | <.001 | .018 (.001) | <.001 | .030 (.007) | <.001 |
| Dtitle_dummy1 | — | — | .177 (.034) | <.001 | .186 (.034) | <.001 | .307 (.173) | .06 |
| Dtitle_dummy2 | — | — | .063 (.032) | .05 | .066 (.032) | .005 | –.066 (.160) | .57 |
| D_Score | — | — | .418 (.070) | <.001 | .328 (.073) | <.001 | –.386 (.307) | .11 |
| Q_Complexity | — | — | — | — | .057 (.015) | <.001 | –.807 (.368) | .049 |
| P_Rewards×Q_Complexity | — | — | — | — | — | — | –.006 (.002) | <.001 |
| Dtitle_dummy1×Q_Complexity | — | — | — | — | — | — | –.044 (.041) | .28 |
| Dtitle_dummy2×Q_Complexity | — | — | — | — | — | — | .011 (.037) | .76 |
| D_Score×Q_Complexity | — | — | — | — | — | — | .186 (.078) | .07 |
aAdjusted R2: 0.104 ; F change: 34.083 (P<.001).
bAdjusted R2: 0.244; F change: 66.852 (P<.001).
cAdjusted R2: 0.251; F change: 14.030 (P<.001).
dAdjusted R2: 0.253; F change: 2.076 (P=.08).
eNot available.
Robustness check.
| Variables | Model 1a | Model 2b | Model 3c | Model 4d | |||||
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| β (SD) | β (SD) | β (SD) | β (SD) | |||||
| P_Gender | .117 (.028) | <.001 | .072 (.026) | <.001 | .073(.026) | <.001 | .072 (.026) | .002 | |
| P_Age | .012 (.016) | .42 | .015 (.015) | .39 | .016(.015) | .40 | .016 (.015) | .30 | |
| P_ Deadline | .022 (.011) | .02 | .012 (.010) | .27 | .021(.010) | .05 | .023 (.010) | .003 | |
| D_Response Speed | .088 (.008) | <.001 | .067 (.007) | <.001 | .065(.007) | <.001 | .066 (.007) | <.001 | |
| D_Assistance Number | –.038 (.024) | .17 | –.026 (.022) | .36 | –.024(.022) | .36 | –.21(.022) | .35 | |
| P_Rewards | —e | — | .019 (.001) | <.001 | .018(.001) | <.001 | .031(.007) | <.001 | |
| Dtitle_dummy1 | — | — | .180 (.035) | <.001 | .192(.035) | <.001 | .328 (.175) | .009 | |
| Dtitle_dummy2 | — | — | .068 (.032) | .02 | .072 (.032) | .02 | –.070 (.162) | .66 | |
| D_Score | — | — | .414 (.070) | <.001 | .321(.074) | <.001 | –.393 (.310) | .13 | |
| Q_Complexity | — | — | — | — | .058(.015) | <.001 | –.803 (.371) | <.001 | |
| P_Rewards×Q_Complexity | — | — | — | — | — | — | –.007 (.002) | <.001 | |
| Dtitle_dummy1×Q_Complexity | — | — | — | — | — | — | –.033 (.040) | .14 | |
| Dtitle_dummy2×Q_Complexity | — | — | — | — | — | — | .033 (.037) | .78 | |
| D_Score×Q_Complexity | — | — | — | — | — | — | .186 (.078) | .04 | |
aAdjusted R2: 0.105 ; F change: 33.492 (P<.001).
bAdjusted R2: 0.244; F change: 64.256 (P<.001).
cAdjusted R2: 0.251; F change: 13.692 (P<.001).
dAdjusted R2: 0.253; F change: 2.179 (P=.09).
eNot available.