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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Jul 8, 2024
Date Accepted: Feb 20, 2025

The final, peer-reviewed published version of this preprint can be found here:

Uncovering Social States in Healthy and Clinical Populations Using Digital Phenotyping and Hidden Markov Models: Observational Study

Leaning IE, Costanzo A, Jagesar R, Reus LM, Visser PJ, Kas MJ, Beckmann C, Ruhé HG, Marquand AF

Uncovering Social States in Healthy and Clinical Populations Using Digital Phenotyping and Hidden Markov Models: Observational Study

J Med Internet Res 2025;27:e64007

DOI: 10.2196/64007

PMID: 40294408

PMCID: 12070022

Uncovering Social States in Healthy and Clinical Populations Using Digital Phenotyping and Hidden Markov Models: Observational Study

  • Imogen E Leaning; 
  • Andrea Costanzo; 
  • Raj Jagesar; 
  • Lianne M Reus; 
  • Pieter Jelle Visser; 
  • Martien JH Kas; 
  • Christian Beckmann; 
  • Henricus G Ruhé; 
  • Andre F Marquand

ABSTRACT

Background:

Brain related disorders are characterized by observable behavioral symptoms. Smartphones can passively collect objective behavioral data, avoiding recall bias. Despite promising clinical utility, analyzing smartphone data is challenging as datasets often include a range of missingness-prone temporal features.

Objective:

Hidden Markov Models (HMMs) provide interpretable, lower-dimensional temporal representations of data, allowing missingness. We aimed to investigate the HMM as a method for modeling digital phenotyping time series data.

Methods:

We applied an HMM to an aggregate dataset of smartphone measures designed to assess social functioning in healthy controls (HCs), participants with schizophrenia, Alzheimer’s disease (AD) and memory complaints. We trained the HMM on a subset of HCs (n=91) and selected a model with socially “active” and “inactive” states, then generated hidden state sequences per participant and calculated their “dwell time”, i.e. the percentage of time spent in the socially active state. Linear regression models were used to compare the dwell time to social and clinical measures in a subset of participants with available measures, and logistic regression was used to compare dwell times between diagnostic groups and HCs.

Results:

We identified lower dwell times in AD (n=26) versus withheld HCs (n=156) (odds ratio=0.9455, FDR corrected P<.001) and higher dwell times related to increased social functioning questionnaire scores in HCs, with every one percent increase in dwell time reflecting a 0.1248 increase in Social Functioning Scale score (n=12, FDR corrected P=.004). No significant relationships regarding dwell time were identified for participants with schizophrenia (n=18) or memory complaints (n=57).

Conclusions:

We found the HMM to be a practical, interpretable method for digital phenotyping analysis, providing an objective phenotype that is a possible indicator of social functioning.


 Citation

Please cite as:

Leaning IE, Costanzo A, Jagesar R, Reus LM, Visser PJ, Kas MJ, Beckmann C, Ruhé HG, Marquand AF

Uncovering Social States in Healthy and Clinical Populations Using Digital Phenotyping and Hidden Markov Models: Observational Study

J Med Internet Res 2025;27:e64007

DOI: 10.2196/64007

PMID: 40294408

PMCID: 12070022

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