Literature DB >> 35415437

Individualized Modeling to Distinguish Between High and Low Arousal States Using Physiological Data.

Ame Osotsi1, Zita Oravecz2,3, Qunhua Li1, Joshua Smyth4, Timothy R Brick2,3.   

Abstract

With wearable, relatively unobtrusive health monitors and smartphone sensors, it is increasingly easy to collect continuously streaming physiological data in a passive mode without placing much burden on participants. At the same time, smartphones provide the ability to survey participants to provide "ground-truth" reporting on psychological states, although this comes at an increased cost in participant burden. In this paper, we examined how analytical approaches from the field of machine learning could allow us to distill the collected physiological data into actionable decision rules about each individual's psychological state, with the eventual goal of identifying important psychological states (e.g., risk moments) without the need for ongoing burdensome active assessment (e.g., self-report). As a first step towards this goal, we compared two methods: (1) a k-nearest neighbor classifier that uses dynamic time warping distance, and (2) a random forests classifier to predict low and high states of affective arousal states based on features extracted using the tsfresh python package. Then, we compared random-forest-based predictive models tailored for the individual with individual-general models. Results showed that the individual-specific model outperformed the general one. Our results support the feasibility of using passively collected wearable data to predict psychological states, suggesting that by relying on both types of data, the active collection can be reduced or eliminated. © Springer Nature Switzerland AG 2020.

Entities:  

Keywords:  Ambulatory assessment; Individual-specific modeling; Machine learning; Wearable health monitors

Year:  2020        PMID: 35415437      PMCID: PMC8982753          DOI: 10.1007/s41666-019-00064-1

Source DB:  PubMed          Journal:  J Healthc Inform Res        ISSN: 2509-498X


  23 in total

1.  Mobile Manifestations of Alertness: Connecting Biological Rhythms with Patterns of Smartphone App Use.

Authors:  Elizabeth L Murnane; Saeed Abdullah; Mark Matthews; Matthew Kay; Julie A Kientz; Tanzeem Choudhury; Geri Gay; Dan Cosley
Journal:  MobileHCI       Date:  2016-09

Review 2.  Development and Evaluation of a Smartphone-Based Measure of Social Rhythms for Bipolar Disorder.

Authors:  Mark Matthews; Saeed Abdullah; Elizabeth Murnane; Stephen Voida; Tanzeem Choudhury; Geri Gay; Ellen Frank
Journal:  Assessment       Date:  2016-08

3.  Using within-subject pattern classification to understand lifespan age differences in oscillatory mechanisms of working memory selection and maintenance.

Authors:  Julian D Karch; Myriam C Sander; Timo von Oertzen; Andreas M Brandmaier; Markus Werkle-Bergner
Journal:  Neuroimage       Date:  2015-04-27       Impact factor: 6.556

4.  How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information.

Authors:  Suppawong Tuarob; Conrad S Tucker; Soundar Kumara; C Lee Giles; Aaron L Pincus; David E Conroy; Nilam Ram
Journal:  J Biomed Inform       Date:  2017-02-15       Impact factor: 6.317

Review 5.  The effectiveness of mobile-health technology-based health behaviour change or disease management interventions for health care consumers: a systematic review.

Authors:  Caroline Free; Gemma Phillips; Leandro Galli; Louise Watson; Lambert Felix; Phil Edwards; Vikram Patel; Andy Haines
Journal:  PLoS Med       Date:  2013-01-15       Impact factor: 11.069

Review 6.  Ecological momentary interventions: incorporating mobile technology into psychosocial and health behaviour treatments.

Authors:  Kristin E Heron; Joshua M Smyth
Journal:  Br J Health Psychol       Date:  2009-07-28

7.  Modeling dyadic processes using Hidden Markov Models: A time series approach to mother-infant interactions during infant immunization.

Authors:  Cynthia A Stifter; Michael Rovine
Journal:  Infant Child Dev       Date:  2015-02-23

8.  Capturing temporal dynamics of fear behaviors on a moment-to-moment basis.

Authors:  Elizabeth A Shewark; Timothy R Brick; Kristin A Buss
Journal:  Infancy       Date:  2020-02-25

9.  B-MOBILE--a smartphone-based intervention to reduce sedentary time in overweight/obese individuals: a within-subjects experimental trial.

Authors:  Dale S Bond; J Graham Thomas; Hollie A Raynor; Jon Moon; Jared Sieling; Jennifer Trautvetter; Tiffany Leblond; Rena R Wing
Journal:  PLoS One       Date:  2014-06-25       Impact factor: 3.240

10.  Searching and Mining Trillions of Time Series Subsequences under Dynamic Time Warping.

Authors:  Thanawin Rakthanmanon; Bilson Campana; Abdullah Mueen; Gustavo Batista; Brandon Westover; Qiang Zhu; Jesin Zakaria; Eamonn Keogh
Journal:  KDD       Date:  2012-08
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