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2021
DOI: 10.2196/25933
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Voice-Based Conversational Agents for the Prevention and Management of Chronic and Mental Health Conditions: Systematic Literature Review

Abstract: Background Chronic and mental health conditions are increasingly prevalent worldwide. As devices in our everyday lives offer more and more voice-based self-service, voice-based conversational agents (VCAs) have the potential to support the prevention and management of these conditions in a scalable manner. However, evidence on VCAs dedicated to the prevention and management of chronic and mental health conditions is unclear. Objective This study provide… Show more

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Cited by 65 publications
(28 citation statements)
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References 66 publications
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“…While these two approaches were necessary because of the study condition in Study 1 (we sent a physical letter to the patients) and to control the experimental condition in Study 2, both approaches have their limitations when it comes to emulating a naturalistic patient-physician interaction. We are aware of the increasing number of artificial intelligence (AI)–based CAs [ 4 ] as well as voice-based CAs for health care purposes [ 53 ]. We believe this could be an interesting path for future research in this context of personalized patient-CA interaction styles.…”
Section: Discussionmentioning
confidence: 99%
“…While these two approaches were necessary because of the study condition in Study 1 (we sent a physical letter to the patients) and to control the experimental condition in Study 2, both approaches have their limitations when it comes to emulating a naturalistic patient-physician interaction. We are aware of the increasing number of artificial intelligence (AI)–based CAs [ 4 ] as well as voice-based CAs for health care purposes [ 53 ]. We believe this could be an interesting path for future research in this context of personalized patient-CA interaction styles.…”
Section: Discussionmentioning
confidence: 99%
“…A voice detection system is used to measure and to choose who is required to be tested throughout these challenging times since there is a lack of testing kits. Mobile application has been introduced based on machine learning algorithms by university students from the DY Patil Institute, Mumbai, India, to detect COVID-19 patients [220]. In the first stage, one has to speak into their mobile; the values of these parameters are then compared with a normal person's voice to confirm if the candidate is infected with COVID-19 or not [221].…”
Section: Voice-based Detectionmentioning
confidence: 99%
“…A full review of conversational agents in healthcare is beyond our scope, however, we recommend readers to render Laranjo et al's work [45] as the starting point. The integration of IVAs into the healthcare system promises to form an "alliance" and create the "rapport" with patients through natural conversation that is expected to be beneficial to treatment outcomes [12]. Prior works have explored the use of IVAs to automate and promote the health data interactions on the patients' side.…”
Section: Integrating Voice Into Healthcare Systemsmentioning
confidence: 99%