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Predicting health outcomes with intensive longitudinal data collected by mobile health devices: a functional principal component regression approach.

Publication ,  Journal Article
Yang, Q; Jiang, M; Li, C; Luo, S; Crowley, MJ; Shaw, RJ
Published in: BMC Med Res Methodol
March 17, 2024

BACKGROUND: Intensive longitudinal data (ILD) collected in near real time by mobile health devices provide a new opportunity for monitoring chronic diseases, early disease risk prediction, and disease prevention in health research. Functional data analysis, specifically functional principal component analysis, has great potential to abstract trends in ILD but has not been used extensively in mobile health research. OBJECTIVE: To introduce functional principal component analysis (fPCA) and demonstrate its potential applicability in estimating trends in ILD collected by mobile heath devices, assessing longitudinal association between ILD and health outcomes, and predicting health outcomes. METHODS: fPCA and scalar-to-function regression models were reviewed. A case study was used to illustrate the process of abstracting trends in intensively self-measured blood glucose using functional principal component analysis and then predicting future HbA1c values in patients with type 2 diabetes using a scalar-to-function regression model. RESULTS: Based on the scalar-to-function regression model results, there was a slightly increasing trend between daily blood glucose measures and HbA1c. 61% of variation in HbA1c could be predicted by the three preceding months' blood glucose values measured before breakfast (P < 0.0001, [Formula: see text]). CONCLUSIONS: Functional data analysis, specifically fPCA, offers a unique tool to capture patterns in ILD collected by mobile health devices. It is particularly useful in assessing longitudinal dynamic association between repeated measures and outcomes, and can be easily integrated in prediction models to improve prediction precision.

Duke Scholars

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Published In

BMC Med Res Methodol

DOI

EISSN

1471-2288

Publication Date

March 17, 2024

Volume

24

Issue

1

Start / End Page

69

Location

England

Related Subject Headings

  • p-Chloroamphetamine
  • Telemedicine
  • Principal Component Analysis
  • Outcome Assessment, Health Care
  • Humans
  • Glycated Hemoglobin
  • General & Internal Medicine
  • Diabetes Mellitus, Type 2
  • Blood Glucose
  • 4206 Public health
 

Citation

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Yang, Q., Jiang, M., Li, C., Luo, S., Crowley, M. J., & Shaw, R. J. (2024). Predicting health outcomes with intensive longitudinal data collected by mobile health devices: a functional principal component regression approach. BMC Med Res Methodol, 24(1), 69. https://doi.org/10.1186/s12874-024-02193-7
Yang, Qing, Meilin Jiang, Cai Li, Sheng Luo, Matthew J. Crowley, and Ryan J. Shaw. “Predicting health outcomes with intensive longitudinal data collected by mobile health devices: a functional principal component regression approach.BMC Med Res Methodol 24, no. 1 (March 17, 2024): 69. https://doi.org/10.1186/s12874-024-02193-7.
Yang, Qing, et al. “Predicting health outcomes with intensive longitudinal data collected by mobile health devices: a functional principal component regression approach.BMC Med Res Methodol, vol. 24, no. 1, Mar. 2024, p. 69. Pubmed, doi:10.1186/s12874-024-02193-7.
Journal cover image

Published In

BMC Med Res Methodol

DOI

EISSN

1471-2288

Publication Date

March 17, 2024

Volume

24

Issue

1

Start / End Page

69

Location

England

Related Subject Headings

  • p-Chloroamphetamine
  • Telemedicine
  • Principal Component Analysis
  • Outcome Assessment, Health Care
  • Humans
  • Glycated Hemoglobin
  • General & Internal Medicine
  • Diabetes Mellitus, Type 2
  • Blood Glucose
  • 4206 Public health