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Accepted for/Published in: JMIR mHealth and uHealth

Date Submitted: Oct 15, 2024
Date Accepted: Jul 16, 2025

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

Within- and Between-Individual Compliance in Mobile Health: Joint Modeling Approach to Nonrandom Missingness in an Intensive Longitudinal Observational Study

Cho YW, Chow SM, Li J, Wang WL, Wang S, Ji L, Chinchilli VM, Intille SS, Dunton GF

Within- and Between-Individual Compliance in Mobile Health: Joint Modeling Approach to Nonrandom Missingness in an Intensive Longitudinal Observational Study

JMIR Mhealth Uhealth 2025;13:e65350

DOI: 10.2196/65350

PMID: 41167252

PMCID: 12616189

Understanding Within- and Between-Individual Compliance in mHealth: A Joint Modeling Approach to Non-Random Missingness

  • Young Won Cho; 
  • Sy-Miin Chow; 
  • Jixin Li; 
  • Wei-Lin Wang; 
  • Shirlene Wang; 
  • Linying Ji; 
  • Vernon M. Chinchilli; 
  • Stephen S. Intille; 
  • Genevieve Fridlund Dunton

ABSTRACT

Background:

Missing data are inevitable in mHealth research and driven by both within- and between-person variations in compliance levels. Not distinguishing these different sources can lead to biases in health behavior inferences. However, current missing data handling techniques do not address disentangling these distinct missingness mechanisms. Compared to missingness at random (MAR), missingness not at random (MNAR) is particularly concerning—often termed non-ignorable missingness.

Objective:

We demonstrate the utility of a joint modeling approach that simultaneously accommodates dynamics of health behavior changes as well as within- and between-person missingness mechanisms. We also evaluate how conflating these distinct contributors of (possibly non-ignorable) missingness affects the validity of health behavior inferences. We provide practical recommendations for building such joint models with empirical data.

Methods:

We applied a joint model on empirical data comprising one year of daily observations of affect (i.e., feeling energetic) reported through smartphone- based ecological momentary assessment (EMA) and smartwatch-tracked physical activity (PA). We implemented a joint modeling approach combining (1) a multilevel vector autoregressive (VAR) model for examining the reciprocal influences between daily affect and PA, and (2) a multilevel probit model for missingness mechanisms. As a sensitivity analysis, we compared the results from the proposed approach against other methods that examined health behavior changes without simultaneously modeling missingness mechanisms. Additionally, we validated the joint modeling approach through simulated data mirroring missing data patterns observed in empirical data: temporally clustered (e.g., consecutive days of) missingness and across-individual heterogeneity in compliance rates.

Results:

Sensitivity analysis indicated relative robustness of the autoregressive (AR) effects across missing data handling approaches, whereas cross-regressive (CR) effects could only be detected under the joint modeling, but not with methods that did not simultaneously model the missingness mechanism. Specifically, under the joint modeling, participants had higher levels of PA on days following a previous day with higher energy levels (95% CI=[0.012, 0.049]), and a higher level of PA on one day was associated with higher energy levels the next day (95% CI=[0.006, 0.054]). Furthermore, the missing data model revealed both MAR and MNAR missing mechanisms. For example, lower PA was linked with higher missingness in PA at the within-person level (95% CI=[-1.528, -1.441]). Employment status was associated with compliance in wearables data (95% CI=[0.148, 0.574]). Finally, simulation studies demonstrated that joint modeling improves the accuracy of the substantive model’s estimate and identifies non-ignorable missing mechanisms effectively.

Conclusions:

We recommend utilizing joint modeling, particularly with multilevel decomposition to address non-ignorable missingness in mHealth studies collecting intensive longitudinal data. Simulation study showed joint modeling yielded results as accurate as those from fully observed data and enhanced understanding of within- and between-individual sources of missingness.


 Citation

Please cite as:

Cho YW, Chow SM, Li J, Wang WL, Wang S, Ji L, Chinchilli VM, Intille SS, Dunton GF

Within- and Between-Individual Compliance in Mobile Health: Joint Modeling Approach to Nonrandom Missingness in an Intensive Longitudinal Observational Study

JMIR Mhealth Uhealth 2025;13:e65350

DOI: 10.2196/65350

PMID: 41167252

PMCID: 12616189

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