BACKGROUND: Bipolar disorder (BD) is a chronic illness with a high recurrence rate. Smartphones can be a useful tool for detecting prodromal symptoms of episode recurrence (through real-time monitoring) and providing options for early intervention between outpatient visits. AIMS: The aim of this systematic review is to overview and discuss the studies on the smartphone-based systems that monitor or detect the phase change in BD. We also discuss the challenges concerning predictive modelling. METHODS: Published studies were identified through searching the electronic databases. Predictive attributes reflecting illness activity were evaluated including data from patients' self-assessment ratings and objectively measured data collected via smartphone. Articles were reviewed according to PRISMA guidelines. RESULTS: Objective data automatically collected using smartphones (voice data from phone calls and smartphone-usage data reflecting social and physical activities) are valid markers of a mood state. The articles surveyed reported accuracies in the range of 67% to 97% in predicting mood status. Various machine learning approaches have been analyzed, however, there is no clear evidence about the superiority of any of the approach. CONCLUSIONS: The management of BD could be significantly improved by monitoring of illness activity via smartphone.
BACKGROUND:Bipolar disorder (BD) is a chronic illness with a high recurrence rate. Smartphones can be a useful tool for detecting prodromal symptoms of episode recurrence (through real-time monitoring) and providing options for early intervention between outpatient visits. AIMS: The aim of this systematic review is to overview and discuss the studies on the smartphone-based systems that monitor or detect the phase change in BD. We also discuss the challenges concerning predictive modelling. METHODS: Published studies were identified through searching the electronic databases. Predictive attributes reflecting illness activity were evaluated including data from patients' self-assessment ratings and objectively measured data collected via smartphone. Articles were reviewed according to PRISMA guidelines. RESULTS: Objective data automatically collected using smartphones (voice data from phone calls and smartphone-usage data reflecting social and physical activities) are valid markers of a mood state. The articles surveyed reported accuracies in the range of 67% to 97% in predicting mood status. Various machine learning approaches have been analyzed, however, there is no clear evidence about the superiority of any of the approach. CONCLUSIONS: The management of BD could be significantly improved by monitoring of illness activity via smartphone.
Authors: John Torous; Sandra Bucci; Imogen H Bell; Lars V Kessing; Maria Faurholt-Jepsen; Pauline Whelan; Andre F Carvalho; Matcheri Keshavan; Jake Linardon; Joseph Firth Journal: World Psychiatry Date: 2021-10 Impact factor: 49.548
Authors: 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 Journal: J Med Internet Res Date: 2022-02-17 Impact factor: 7.076
Authors: Monika Dominiak; Katarzyna Kaczmarek-Majer; Anna Z Antosik-Wójcińska; Karol R Opara; Anna Olwert; Weronika Radziszewska; Olgierd Hryniewicz; Łukasz Święcicki; Marcin Wojnar; Paweł Mierzejewski Journal: J Med Internet Res Date: 2022-01-19 Impact factor: 5.428