Accepted for/Published in: JMIR Formative Research
Date Submitted:
Open Peer Review Period: -
Date Accepted:
Date Submitted to PubMed:
- Ruvini S, Ravi I, Pragalathan A, Nilmini W, Denny M
- Machine Learning Approach to Identifying Empathy Using the Vocals of Mental Health Helpline Counselors: Algorithm Development and Validation
- JMIR Formative Research
- DOI: 10.2196/11848
- PMID: 30303485
- PMCID: 6352016
Abstract accepted
Background:
Social media can be a useful strategy for recruiting hard-to-reach, stigmatized populations into research studies; however, it may also introduce risks for participant and research team exposure to negative comments. Currently, there is no published formal social media recruitment and monitoring guidelines that specifically address harm reduction for social media recruitment of marginalized populations.
Objective:
Social media can be a useful strategy for recruiting hard-to-reach, stigmatized populations into research studies; however, it may also introduce risks for participant and research team exposure to negative comments. Currently, there is no published formal social media recruitment and monitoring guidelines that specifically address harm reduction for social media recruitment of marginalized populations.
Methods:
Social media can be a useful strategy for recruiting hard-to-reach, stigmatized populations into research studies; however, it may also introduce risks for participant and research team exposure to negative comments. Currently, there is no published formal social media recruitment and monitoring guidelines that specifically address harm reduction for social media recruitment of marginalized populations.
Copyright
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