Technological State of the Art of Electronic Mental Health Interventions for Major Depressive Disorder: Systematic Literature Review

Background Electronic mental (e-mental) health care for depression aims to overcome barriers to and limitations of face-to-face treatment. Owing to the high and growing demand for mental health care, a large number of such information and communication technology systems have been developed in recent years. Consequently, a diverse system landscape formed. Objective This literature review aims to give an overview of this landscape of e-mental health systems for the prevention and treatment of major depressive disorder, focusing on three main research questions: (1) What types of systems exist? (2) How technologically advanced are these systems? (3) How has the system landscape evolved between 2000 and 2017? Methods Publications eligible for inclusion described e-mental health software for the prevention or treatment of major depressive disorder. Additionally, the software had to have been evaluated with end users and developed since 2000. After screening, 270 records remained for inclusion. We constructed a taxonomy concerning software systems, their functions, how technologized these were in their realization, and how systems were evaluated, and then, we extracted this information from the included records. We define here as functions any component of the system that delivers either treatment or adherence support to the user. For this coding process, an elaborate classification hierarchy for functions was developed yielding a total of 133 systems with 2163 functions. The systems and their functions were analyzed quantitatively, with a focus on technological realization. Results There are various types of systems. However, most are delivered on the World Wide Web (76%), and most implement cognitive behavioral therapy techniques (85%). In terms of content, systems contain twice as many treatment functions as adherence support functions, on average. Furthermore, autonomous systems, those not including human guidance, are equally as technologized and have one-third less functions than guided ones. Therefore, lack of guidance is neither compensated with additional functions nor compensated by technologizing functions to a greater degree. Although several high-tech solutions could be found, the average system falls between a purely informational system and one that allows for data entry but without automatically processing these data. Moreover, no clear increase in the technological capabilities of systems showed in the field, between 2000 and 2017, despite a marked growth in system quantity. Finally, more sophisticated systems were evaluated less often in comparative trials than less sophisticated ones (OR 0.59). Conclusions The findings indicate that when developers create systems, there is a greater focus on implementing therapeutic treatment than adherence support. Although the field is very active, as evidenced by the growing number of systems developed per year, the technological possibilities explored are limited. In addition to allowing developers to compare their system with others, we anticipate that this review will help researchers identify opportunities in the field.

[1]  Beth Patterson,et al.  There is an app for that! The current state of mobile applications (apps) for DSM‐5 obsessive‐compulsive disorder, posttraumatic stress disorder, anxiety and mood disorders , 2017, Depression and anxiety.

[2]  L. Radloff The CES-D Scale , 1977 .

[3]  Rosalind W. Picard,et al.  Text Messaging for Exercise Promotion in Older Adults From an Upper-Middle-Income Country: Randomized Controlled Trial , 2015, Journal of medical Internet research.

[4]  Brent Snook,et al.  An Evaluation of Interrater Reliability Measures on Binary Tasks Using d-Prime , 2017, Applied psychological measurement.

[5]  Saskia M Kelders,et al.  Comparing human and automated support for depression: Fractional factorial randomized controlled trial. , 2015, Behaviour research and therapy.

[6]  J. Ruwaard,et al.  Standardized Web-Based Cognitive Behavioural Therapy of Mild to Moderate Depression: A Randomized Controlled Trial with a Long-Term Follow-Up , 2009, Cognitive behaviour therapy.

[7]  Stephen Wendel,et al.  Designing for Behavior Change: Applying Psychology and Behavioral Economics , 2013 .

[8]  Harri Oinas-Kukkonen,et al.  Persuasive Systems Design: Key Issues, Process Model, and System Features , 2009, Commun. Assoc. Inf. Syst..

[9]  C. Vandelanotte,et al.  Healthy mind, healthy body: A randomized trial testing the efficacy of a computer-tailored vs. interactive web-based intervention for increasing physical activity and reducing depressive symptoms , 2016 .

[10]  Joaquin A. Anguera,et al.  Improving late life depression and cognitive control through the use of therapeutic video game technology: A proof‐of‐concept randomized trial , 2017, Depression and anxiety.

[11]  Derek Richards,et al.  Computer-based psychological treatments for depression: a systematic review and meta-analysis. , 2012, Clinical psychology review.

[12]  Robert S. Stawski,et al.  Multilevel Analysis: An Introduction to Basic and Advanced Multilevel Modeling (2nd Edition) , 2013 .

[13]  Victor Day,et al.  Development and usability of an online CBT program for symptoms of moderate depression, anxiety, and stress in post-secondary students , 2010, Comput. Hum. Behav..

[14]  A. Beck,et al.  An inventory for measuring depression. , 1961, Archives of general psychiatry.

[15]  R. Spitzer,et al.  Validation and utility of a self-report version of PRIME-MD: the PHQ primary care study. Primary Care Evaluation of Mental Disorders. Patient Health Questionnaire. , 1999, JAMA.

[16]  Gerhard Andersson,et al.  Efficacy of Self-guided Internet-Based Cognitive Behavioral Therapy in the Treatment of Depressive Symptoms: A Meta-analysis of Individual Participant Data , 2017, JAMA psychiatry.

[17]  David Coyle,et al.  Engagement with online mental health interventions: an exploratory clinical study of a treatment for depression , 2012, CHI.

[18]  P. Fonagy,et al.  Feasibility study of a psychodynamic online group intervention for depression , 2013 .

[19]  G. Andersson,et al.  Individualized Guided Internet-delivered Cognitive-Behavior Therapy for Chronic Pain Patients With Comorbid Depression and Anxiety: A Randomized Controlled Trial , 2015, The Clinical journal of pain.

[20]  F. Wahle,et al.  Mobile Sensing and Support for People With Depression: A Pilot Trial in the Wild , 2016, JMIR mHealth and uHealth.

[21]  K. Gwet Handbook of Inter-Rater Reliability: The Definitive Guide to Measuring the Extent of Agreement Among Raters , 2014 .

[22]  B. J. Fogg,et al.  Persuasive technology: using computers to change what we think and do , 2002, UBIQ.

[23]  Brian K Ahmedani,et al.  Pilot Feasibility Study of a Brief, Tailored Mobile Health Intervention for Depression among Patients with Chronic Pain , 2015, Behavioral medicine.

[24]  A. Barak,et al.  A Comprehensive Review and a Meta-Analysis of the Effectiveness of Internet-Based Psychotherapeutic Interventions , 2008 .

[25]  D. Moher,et al.  Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement , 2009, BMJ.

[26]  Cory E. Stanton,et al.  Initial Open Trial of a Computerized Behavioral Activation Treatment for Depression , 2013, Behavior modification.

[27]  Pasco Fearon,et al.  Embodying self-compassion within virtual reality and its effects on patients with depression , 2016, BJPsych open.

[28]  Justine Schneider,et al.  Meta-review of the effectiveness of computerised CBT in treating depression , 2011, BMC psychiatry.

[29]  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.

[30]  N. Nagelkerke,et al.  A note on a general definition of the coefficient of determination , 1991 .

[31]  C. Beevers,et al.  Effectiveness of a novel integrative online treatment 1 Running head : INTEGRATIVE ONLINE DEPRESSION TREATMENT Effectiveness of a novel integrative online treatment for depression ( Deprexis ) : Randomized field trial , 2009 .

[32]  D. Mohr,et al.  Harnessing Context Sensing to Develop a Mobile Intervention for Depression , 2011, Journal of medical Internet research.

[33]  Toshi A. Furukawa,et al.  Effects of an Internet-Based Cognitive Behavioral Therapy (iCBT) Program in Manga Format on Improving Subthreshold Depressive Symptoms among Healthy Workers: A Randomized Controlled Trial , 2014, PloS one.

[34]  Erik Frøkjær,et al.  Patient expectations and experiences from a clinical study in psychiatric care using a self-monitoring system , 2014, NordiCHI.

[35]  Gina Wildeboer,et al.  The relationship between persuasive technology principles, adherence and effect of web-Based interventions for mental health: A meta-analysis , 2016, Int. J. Medical Informatics.

[36]  Zhenyu Liu,et al.  Detection of depression in speech , 2015, 2015 International Conference on Affective Computing and Intelligent Interaction (ACII).

[37]  Shinyi Wu,et al.  Patient-Centered Technological Assessment and Monitoring of Depression for Low-Income Patients , 2014, The Journal of ambulatory care management.

[38]  Björn Meyer,et al.  Effectiveness of an individually-tailored computerised CBT programme (Deprexis) for depression: A meta-analysis , 2017, Psychiatry Research.

[39]  Tasha Glenn,et al.  New Measures of Mental State and Behavior Based on Data Collected From Sensors, Smartphones, and the Internet , 2014, Current Psychiatry Reports.

[40]  A. Przeworski,et al.  A review of technology-assisted self-help and minimal contact therapies for anxiety and depression: is human contact necessary for therapeutic efficacy? , 2011, Clinical psychology review.

[41]  J. L. Bender,et al.  Finding a Depression App: A Review and Content Analysis of the Depression App Marketplace , 2015, JMIR mHealth and uHealth.

[42]  S. Michie,et al.  What design features are used in effective e-health interventions? A review using techniques from Critical Interpretive Synthesis. , 2012, Telemedicine journal and e-health : the official journal of the American Telemedicine Association.

[43]  Rosa María Baños,et al.  Personal Health Systems for Mental Health: The European Projects , 2011, MMVR.

[44]  Jürgen Unützer,et al.  A web-delivered care management and patient self-management program for recurrent depression: a randomized trial. , 2012, Psychiatric services.

[45]  S. Moritz,et al.  Internet interventions for depression: new developments , 2016, Dialogues in clinical neuroscience.

[46]  Christopher D. Burton,et al.  Pilot randomised controlled trial of Help4Mood, an embodied virtual agent-based system to support treatment of depression , 2016, Journal of telemedicine and telecare.

[47]  S. Kelders,et al.  Persuasive System Design Does Matter: A Systematic Review of Adherence to Web-Based Interventions , 2012, Journal of medical Internet research.

[48]  J. Sharry,et al.  A randomized controlled trial of an internet-delivered treatment: Its potential as a low-intensity community intervention for adults with symptoms of depression , 2015, European Psychiatry.

[49]  Nickolai Titov,et al.  Internet-delivered psychotherapy for depression in adults , 2011, Current opinion in psychiatry.

[50]  Timothy W. Bickmore,et al.  Augmenting Group Medical Visits with Conversational Agents for Stress Management Behavior Change , 2017, PERSUASIVE.