An overview of the features of chatbots in mental health: A scoping review

BACKGROUND Chatbots are systems that are able to converse and interact with human users using spoken, written, and visual languages. Chatbots have the potential to be useful tools for individuals with mental disorders, especially those who are reluctant to seek mental health advice due to stigmatization. While numerous studies have been conducted about using chatbots for mental health, there is a need to systematically bring this evidence together in order to inform mental health providers and potential users about the main features of chatbots and their potential uses, and to inform future research about the main gaps of the previous literature. OBJECTIVE We aimed to provide an overview of the features of chatbots used by individuals for their mental health as reported in the empirical literature. METHODS Seven bibliographic databases (Medline, Embase, PsycINFO, Cochrane Central Register of Controlled Trials, IEEE Xplore, ACM Digital Library, and Google Scholar) were used in our search. In addition, backward and forward reference list checking of the included studies and relevant reviews was conducted. Study selection and data extraction were carried out by two reviewers independently. Extracted data were synthesised using a narrative approach. Chatbots were classified according to their purposes, platforms, response generation, dialogue initiative, input and output modalities, embodiment, and targeted disorders. RESULTS Of 1039 citations retrieved, 53 unique studies were included in this review. The included studies assessed 41 different chatbots. Common uses of chatbots were: therapy (n = 17), training (n = 12), and screening (n = 10). Chatbots in most studies were rule-based (n = 49) and implemented in stand-alone software (n = 37). In 46 studies, chatbots controlled and led the conversations. While the most frequently used input modality was written language only (n = 26), the most frequently used output modality was a combination of written, spoken and visual languages (n = 28). In the majority of studies, chatbots included virtual representations (n = 44). The most common focus of chatbots was depression (n = 16) or autism (n = 10). CONCLUSION Research regarding chatbots in mental health is nascent. There are numerous chatbots that are used for various mental disorders and purposes. Healthcare providers should compare chatbots found in this review to help guide potential users to the most appropriate chatbot to support their mental health needs. More reviews are needed to summarise the evidence regarding the effectiveness and acceptability of chatbots in mental health.

[1]  G. Eysenbach CONSORT-EHEALTH: Improving and Standardizing Evaluation Reports of Web-based and Mobile Health Interventions , 2011, Journal of medical Internet research.

[2]  R. Hester Lack of access to mental health services contributing to the high suicide rates among veterans , 2017, International Journal of Mental Health Systems.

[3]  T. Murdoch,et al.  The inevitable application of big data to health care. , 2013, JAMA.

[4]  V. Patel,et al.  The global prevalence of common mental disorders: a systematic review and meta-analysis 1980-2013. , 2014, International journal of epidemiology.

[5]  Trent W. Lewis,et al.  Development of a virtual agent based social tutor for children with autism spectrum disorders , 2010, The 2010 International Joint Conference on Neural Networks (IJCNN).

[6]  Matthias Egger,et al.  The Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) Statement: Guidelines for Reporting Observational Studies , 2007, PLoS medicine.

[7]  Tomoki Toda,et al.  Automated Social Skills Trainer , 2015, IUI.

[8]  John Clochesy,et al.  Avatar-based depression self-management technology: promising approach to improve depressive symptoms among young adults. , 2013, Applied nursing research : ANR.

[9]  Timothy W. Bickmore,et al.  Maintaining reality: Relational agents for antipsychotic medication adherence , 2010, Interact. Comput..

[10]  Naphtali Rishe,et al.  Let’s talk! speaking virtual counselor offers you a brief intervention , 2014, Journal on Multimodal User Interfaces.

[11]  H. Arksey,et al.  Scoping studies: towards a methodological framework , 2005 .

[12]  J. Halamka,et al.  Chatbots and Conversational Agents in Mental Health: A Review of the Psychiatric Landscape , 2019, Canadian journal of psychiatry. Revue canadienne de psychiatrie.

[13]  Michael F. McTear,et al.  Book Review: Spoken Dialogue Technology: Toward the Conversational User Interface, by Michael F. McTear , 2002, CL.

[14]  Emily Anthes,et al.  Mental health: There’s an app for that , 2016, Nature.

[15]  Maria J Grant,et al.  A typology of reviews: an analysis of 14 review types and associated methodologies. , 2009, Health information and libraries journal.

[16]  Jessica A. Chen,et al.  Conversational agents in healthcare: a systematic review , 2018, J. Am. Medical Informatics Assoc..

[17]  Ho Ming Lau,et al.  Embodied Conversational Agents in Clinical Psychology: A Scoping Review , 2017, Journal of medical Internet research.

[18]  J. McGowan,et al.  PRISMA Extension for Scoping Reviews (PRISMA-ScR): Checklist and Explanation , 2018, Annals of Internal Medicine.

[19]  Bahman Mirheidari,et al.  Detecting early signs of dementia in conversation , 2018 .

[20]  V. Feigin,et al.  The Global Burden of Mental, Neurological and Substance Use Disorders: An Analysis from the Global Burden of Disease Study 2010 , 2015, PloS one.

[21]  Abdullah Al Mamun,et al.  A Virtual Conversational Agent for Teens with Autism: Experimental Results and Design Lessons , 2018, ArXiv.

[22]  P. Philip,et al.  Development and validation of a virtual agent to screen tobacco and alcohol use disorders. , 2018, Drug and alcohol dependence.

[23]  Anol Bhattacherjee Social Science Research: Principles, Methods, and Practices , 2012 .

[24]  Bernadette A. Thomas,et al.  Disability-adjusted life years (DALYs) for 291 diseases and injuries in 21 regions, 1990–2010: a systematic analysis for the Global Burden of Disease Study 2010 , 2012, The Lancet.

[25]  Nikolaos G. Bourbakis,et al.  A survey on human machine dialogue systems , 2016, 2016 7th International Conference on Information, Intelligence, Systems & Applications (IISA).

[26]  Morgan C. Benton,et al.  Evaluating Quality of Chatbots and Intelligent Conversational Agents , 2017, ArXiv.

[27]  Albert A. Rizzo,et al.  Reporting Mental Health Symptoms: Breaking Down Barriers to Care with Virtual Human Interviewers , 2017, Front. Robot. AI.

[28]  John Hsu,et al.  Early Experiences with e-Health Services (1999–2002): Promise, Reality, and Implications , 2006, Medical care.

[29]  Ramón López-Cózar,et al.  Enhancement of Conversational Agents By Means of Multimodal Interaction , 2011 .

[30]  A. Darzi,et al.  How Google's 'ten Things We Know To Be True' could guide the development of mental health mobile apps. , 2014, Health affairs.

[31]  K. Fitzpatrick,et al.  Delivering Cognitive Behavior Therapy to Young Adults With Symptoms of Depression and Anxiety Using a Fully Automated Conversational Agent (Woebot): A Randomized Controlled Trial , 2017, JMIR mental health.

[32]  L. D. de Witte,et al.  Internet Services for Communicating With the General Practice: Barely Noticed and Used by Patients , 2015, Interactive journal of medical research.

[33]  Alana Barton Research Methods: A Practical Guide for the Social Sciences. By B. Matthews and L. Ross (Harlow: Longman, 2010, 490pp. £30.00 pb)Crime: Local and Global. By J. Muncie, D. Talbot and R. Walters (Cullompton: Willan, 2010, 263pp. £75.00 hb, £23.00 pb) , 2012 .

[34]  Satoshi Nakamura,et al.  Detecting Dementia Through Interactive Computer Avatars , 2017, IEEE Journal of Translational Engineering in Health and Medicine.

[35]  Satoshi Nakamura,et al.  Embodied conversational agents for multimodal automated social skills training in people with autism spectrum disorders , 2017, PloS one.

[36]  G. Freedman,et al.  Burden of Depressive Disorders by Country, Sex, Age, and Year: Findings from the Global Burden of Disease Study 2010 , 2013, PLoS medicine.

[37]  Lenhart K. Schubert,et al.  The LISSA Virtual Human and ASD Teens: An Overview of Initial Experiments , 2016, IVA.

[38]  V.Manoj Kumar,et al.  Sanative Chatbot For Health Seekers , 2016 .

[39]  Joelle Pineau,et al.  A Survey of Available Corpora for Building Data-Driven Dialogue Systems , 2015, Dialogue Discourse.

[40]  Juan Miguel García-Gómez,et al.  Look on the Bright Side: A Model of Cognitive Change in Virtual Agents , 2014, IVA.

[41]  Douglas G. Altman,et al.  Practical statistics for medical research , 1990 .

[42]  Cristina Botella,et al.  Usability and acceptability assessment of an empathic virtual agent to prevent major depression , 2016, Expert Syst. J. Knowl. Eng..

[43]  N. Sarkar,et al.  Design of a Virtual Reality Based Adaptive Response Technology for Children With Autism , 2013, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[44]  J. Taylor,et al.  Virtual Reality Job Interview Training in Adults with Autism Spectrum Disorder , 2014, Journal of Autism and Developmental Disorders.

[45]  Satoshi Nakamura,et al.  Detection of Dementia from Responses to Atypical Questions Asked by Embodied Conversational Agents , 2018, INTERSPEECH.

[46]  Jing Huang,et al.  TeenChat: A Chatterbot System for Sensing and Releasing Adolescents' Stress , 2015, HIS.