Innovative methods for observing and changing complex health behaviors: four propositions

Transl Behav Med. 2021 Mar 16;11(2):676-685. doi: 10.1093/tbm/ibaa026.

Abstract

Precision health initiatives aim to progressively move from traditional, group-level approaches to health diagnostics and treatments toward ones that are individualized, contextualized, and timely. This article aims to provide an overview of key methods and approaches that can help facilitate this transition in the health behavior change domain. This article is a narrative review of the methods used to observe and change complex health behaviors. On the basis of the available literature, we argue that health behavior change researchers should progressively transition from (i) low- to high-resolution behavioral assessments, (ii) group-only to group- and individual-level statistical inference, (iii) narrative theoretical models to dynamic computational models, and (iv) static to adaptive and continuous tuning interventions. Rather than providing an exhaustive and technical presentation of each method and approach, this article articulates why and how researchers interested in health behavior change can apply these innovative methods. Practical examples contributing to these efforts are presented. If successfully adopted and implemented, the four propositions in this article have the potential to greatly improve our public health and behavior change practices in the near future.

Keywords: Adaptive interventions; Computational models; Ecological momentary assessment; Idiographic; Precision health.

Publication types

  • Research Support, Non-U.S. Gov't
  • Review

MeSH terms

  • Health Behavior*
  • Humans