BMJ Health & Care Informatics (Oct 2022)

User-centred design for machine learning in health care: a case study from care management

  • Ron C Li,
  • Jonathan H Chen,
  • Martin G Seneviratne,
  • Paul Gamble,
  • Nigam Shah,
  • Meredith Schreier,
  • Daniel Lopez-Martinez,
  • Birju S Patel,
  • Alex Yakubovich,
  • Jonas B Kemp,
  • Eric Loreaux,
  • Kristel El-Khoury,
  • Laura Vardoulakis,
  • Doris Wong,
  • Janjri Desai,
  • Keith E Morse,
  • N Lance Downing,
  • Lutz T Finger,
  • Ming-Jun Chen

DOI
https://doi.org/10.1136/bmjhci-2022-100656
Journal volume & issue
Vol. 29, no. 1

Abstract

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Objectives Few machine learning (ML) models are successfully deployed in clinical practice. One of the common pitfalls across the field is inappropriate problem formulation: designing ML to fit the data rather than to address a real-world clinical pain point.Methods We introduce a practical toolkit for user-centred design consisting of four questions covering: (1) solvable pain points, (2) the unique value of ML (eg, automation and augmentation), (3) the actionability pathway and (4) the model’s reward function. This toolkit was implemented in a series of six participatory design workshops with care managers in an academic medical centre.Results Pain points amenable to ML solutions included outpatient risk stratification and risk factor identification. The endpoint definitions, triggering frequency and evaluation metrics of the proposed risk scoring model were directly influenced by care manager workflows and real-world constraints.Conclusions Integrating user-centred design early in the ML life cycle is key for configuring models in a clinically actionable way. This toolkit can guide problem selection and influence choices about the technical setup of the ML problem.