Determining sample size and length of follow-up for smartphone-based digital phenotyping studies

Author:

Barnett Ian1ORCID,Torous John2,Reeder Harrison T3,Baker Justin4,Onnela Jukka-Pekka3

Affiliation:

1. Department of Biostatistics, Epidemiology, and Informatics, University of Pennsylvania, Philadelphia, Pennsylvania, USA

2. Department of Psychiatry, Beth Israel Deaconess Medical Center, Boston, Massachusetts, USA

3. Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, USA

4. Department of Psychiatry, McLean Hospital, Boston, Massachusetts, USA

Abstract

AbstractObjectiveStudies that use patient smartphones to collect ecological momentary assessment and sensor data, an approach frequently referred to as digital phenotyping, have increased in popularity in recent years. There is a lack of formal guidelines for the design of new digital phenotyping studies so that they are powered to detect both population-level longitudinal associations as well as individual-level change points in multivariate time series. In particular, determining the appropriate balance of sample size relative to the targeted duration of follow-up is a challenge.Materials and MethodsWe used data from 2 prior smartphone-based digital phenotyping studies to provide reasonable ranges of effect size and parameters. We considered likelihood ratio tests for generalized linear mixed models as well as for change point detection of individual-level multivariate time series.ResultsWe propose a joint procedure for sequentially calculating first an appropriate length of follow-up and then a necessary minimum sample size required to provide adequate power. In addition, we developed an accompanying accessible sample size and power calculator.DiscussionThe 2-parameter problem of identifying both an appropriate sample size and duration of follow-up for a longitudinal study requires the simultaneous consideration of 2 analysis methods during study design.ConclusionThe temporally dense longitudinal data collected by digital phenotyping studies may warrant a variety of applicable analysis choices. Our use of generalized linear mixed models as well as change point detection to guide sample size and study duration calculations provide a tool to effectively power new digital phenotyping studies.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference20 articles.

1. Using wearable technology to predict health outcomes: a literature review;Burnham;J Am Med Inform Assoc,2018

2. Opportunities and needs in digital phenotyping;Marsch;Neuropsychopharmacology,2018

3. New tools for new research in psychiatry: a scalable and customizable platform to empower data driven smartphone research;Torous;JMIR Mental Health,2016

4. Relapse prediction in schizophrenia through digital phenotyping: a pilot study;Barnett;Neuropsychopharmacology,2018

5. Working definitions, subjective and objective assessments and experimental paradigms in a study exploring social withdrawal in schizophrenia and Alzheimer’s disease;Van der Wee;Neurosci Biobehav Rev,2018

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