The potential of conversational agents to provide a rapid HIV counseling and testing services

In low-and middle-income countries where demand for health services outstrips the available supply of skilled labor, advances in information and communication technologies have already been shown to hold promise. While much of the mHealth literature continues to explore mature technologies such as text message and web portals, continual advancement in machine learning opens innovative new areas of exploration for public health practitioners. This paper explores one such possibility, a conversational agent, able to guide users through an HIV counseling and testing session. Using commercially available software (http://api.ai), an agent was designed and built according to the Center for Disease Control's guidelines for the provision of HIV counseling and testing in a non-clinical setting. The agent was linked to the Telegram chat client (http://telegram.org) and 10 testers were invited to participate in a simulated HIV counseling interaction. Six testers found that talking to the agent felt natural, and equivalent to chatting to a human. Seven said they would feel comfortable taking a real HIV test with the agent. Key concerns with the current agent were the use of overly formal language, the speed at which the agent responded (too fast) and the agent either misunderstanding or not understanding the tester. Positive sentiment towards the agent included the fact that testers felt like the session was more private and anonymous, and avoided the need for them to visit a public health facility and stand in a long queue to get tested.

[1]  Bruce Rhodes,et al.  A qualitative analysis of the barriers and facilitators of HIV counselling and testing perceived by adolescents in South Africa , 2015, BMC Health Services Research.

[2]  Etienne de Sevin,et al.  Acceptability of Embodied Conversational Agent in a Health Care Context , 2016, IVA.

[3]  W. Venter,et al.  Home self-testing for HIV: AIDS exceptionalism gone wrong. , 2010, South African medical journal = Suid-Afrikaanse tydskrif vir geneeskunde.

[4]  P. Agyei-Baffour,et al.  Health service barriers to HIV testing and counseling among pregnant women attending Antenatal Clinic; a cross-sectional study , 2014, BMC Health Services Research.

[5]  Ritu Agarwal,et al.  The Digital Transformation of Healthcare: Current Status and the Road Ahead , 2010 .

[6]  B. Mayosi,et al.  Health and health care in South Africa--20 years after Mandela. , 2014, The New England journal of medicine.

[7]  Nithya Ramanathan,et al.  Perceived mHealth barriers and benefits for home-based HIV testing and counseling and other care: Qualitative findings from health officials, community health workers, and persons living with HIV in South Africa. , 2017, Social science & medicine.

[8]  Quoc V. Le,et al.  A Neural Conversational Model , 2015, ArXiv.

[9]  Jure Leskovec,et al.  Large-scale Analysis of Counseling Conversations: An Application of Natural Language Processing to Mental Health , 2016, TACL.

[10]  Michael A. Osborne,et al.  The future of employment: How susceptible are jobs to computerisation? , 2017 .

[11]  Timothy W. Bickmore,et al.  Response to a relational agent by hospital patients with depressive symptoms , 2010, Interact. Comput..

[12]  Rosalind W. Picard,et al.  Establishing the computer-patient working alliance in automated health behavior change interventions. , 2005, Patient education and counseling.

[13]  R. Barnabas,et al.  Systematic review and meta-analysis of community and facility-based HIV testing to address linkage to care gaps in sub-Saharan Africa , 2015, Nature.

[14]  Lucia Knight,et al.  HIV Self-Testing Could “Revolutionize Testing in South Africa, but It Has Got to Be Done Properly”: Perceptions of Key Stakeholders , 2015, PloS one.

[15]  James Bessen Automation and Jobs: When Technology Boosts Employment , 2019, Economic Policy.

[16]  Jesse Dallery,et al.  Behavioral Health Care and Technology: Using Science-Based Innovations to Transform Practice , 2014 .