TY - JOUR
T1 - Sensing Apps and Public Data Sets for Digital Phenotyping of Mental Health
T2 - Systematic Review
AU - Mendes, Jean P.M.
AU - Moura, Ivan R.
AU - van de Ven, Pepijn
AU - Viana, Davi
AU - Silva, Francisco J.S.
AU - Coutinho, Luciano R.
AU - Teixeira, Silmar
AU - Rodrigues, Joel J.P.C.
AU - Teles, Ariel Soares
N1 - Publisher Copyright:
©Jean P M Mendes, Ivan R Moura, Pepijn Van de Ven, Davi Viana, Francisco J S Silva, Luciano R Coutinho, Silmar Teixeira, Joel J P C Rodrigues, Ariel Soares Teles.
PY - 2022/2
Y1 - 2022/2
N2 - Background: Mental disorders are normally diagnosed exclusively on the basis of symptoms, which are identified from patients’ interviews and self-reported experiences. To make mental health diagnoses and monitoring more objective, different solutions have been proposed such as digital phenotyping of mental health (DPMH), which can expand the ability to identify and monitor health conditions based on the interactions of people with digital technologies. Objective: This article aims to identify and characterize the sensing applications and public data sets for DPMH from a technical perspective. Methods: We performed a systematic review of scientific literature and data sets. We searched 8 digital libraries and 20 data set repositories to find results that met the selection criteria. We conducted a data extraction process from the selected articles and data sets. For this purpose, a form was designed to extract relevant information, thus enabling us to answer the research questions and identify open issues and research trends. Results: A total of 31 sensing apps and 8 data sets were identified and reviewed. Sensing apps explore different context data sources (eg, positioning, inertial, ambient) to support DPMH studies. These apps are designed to analyze and process collected data to classify (n=11) and predict (n=6) mental states/disorders, and also to investigate existing correlations between context data and mental states/disorders (n=6). Moreover, general-purpose sensing apps are developed to focus only on contextual data collection (n=9). The reviewed data sets contain context data that model different aspects of human behavior, such as sociability, mood, physical activity, sleep, with some also being multimodal. Conclusions: This systematic review provides in-depth analysis regarding solutions for DPMH. Results show growth in proposals for DPMH sensing apps in recent years, as opposed to a scarcity of public data sets. The review shows that there are features that can be measured on smart devices that can act as proxies for mental status and well-being; however, it should be noted that the combined evidence for high-quality features for mental states remains limited. DPMH presents a great perspective for future research, mainly to reach the needed maturity for applications in clinical settings.
AB - Background: Mental disorders are normally diagnosed exclusively on the basis of symptoms, which are identified from patients’ interviews and self-reported experiences. To make mental health diagnoses and monitoring more objective, different solutions have been proposed such as digital phenotyping of mental health (DPMH), which can expand the ability to identify and monitor health conditions based on the interactions of people with digital technologies. Objective: This article aims to identify and characterize the sensing applications and public data sets for DPMH from a technical perspective. Methods: We performed a systematic review of scientific literature and data sets. We searched 8 digital libraries and 20 data set repositories to find results that met the selection criteria. We conducted a data extraction process from the selected articles and data sets. For this purpose, a form was designed to extract relevant information, thus enabling us to answer the research questions and identify open issues and research trends. Results: A total of 31 sensing apps and 8 data sets were identified and reviewed. Sensing apps explore different context data sources (eg, positioning, inertial, ambient) to support DPMH studies. These apps are designed to analyze and process collected data to classify (n=11) and predict (n=6) mental states/disorders, and also to investigate existing correlations between context data and mental states/disorders (n=6). Moreover, general-purpose sensing apps are developed to focus only on contextual data collection (n=9). The reviewed data sets contain context data that model different aspects of human behavior, such as sociability, mood, physical activity, sleep, with some also being multimodal. Conclusions: This systematic review provides in-depth analysis regarding solutions for DPMH. Results show growth in proposals for DPMH sensing apps in recent years, as opposed to a scarcity of public data sets. The review shows that there are features that can be measured on smart devices that can act as proxies for mental status and well-being; however, it should be noted that the combined evidence for high-quality features for mental states remains limited. DPMH presents a great perspective for future research, mainly to reach the needed maturity for applications in clinical settings.
KW - Data sets
KW - Digital phenotyping
KW - Mental health
KW - Sensing apps
KW - Sensor data
UR - http://www.scopus.com/inward/record.url?scp=85124779469&partnerID=8YFLogxK
U2 - 10.2196/28735
DO - 10.2196/28735
M3 - Review article
C2 - 35175202
AN - SCOPUS:85124779469
SN - 1438-8871
VL - 24
SP - e28735
JO - Journal of Medical Internet Research
JF - Journal of Medical Internet Research
IS - 2
M1 - e28735
ER -