Trials (Jul 2024)

Harnessing health information technology to promote equitable care for patients with limited English proficiency and complex care needs

  • Inna Strechen,
  • Patrick Wilson,
  • Targ Eltalhi,
  • Kimberly Piche,
  • Dan Tschida-Reuter,
  • Diane Howard,
  • Bruce Sutor,
  • Ing Tiong,
  • Svetlana Herasevich,
  • Brian Pickering,
  • Amelia Barwise

DOI
https://doi.org/10.1186/s13063-024-08254-y
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 10

Abstract

Read online

Abstract Background Patients with language barriers encounter healthcare disparities, which may be alleviated by leveraging interpreter skills to reduce cultural, language, and literacy barriers through improved bidirectional communication. Evidence supports the use of in-person interpreters, especially for interactions involving patients with complex care needs. Unfortunately, due to interpreter shortages and clinician underuse of interpreters, patients with language barriers frequently do not get the language services they need or are entitled to. Health information technologies (HIT), including artificial intelligence (AI), have the potential to streamline processes, prompt clinicians to utilize in-person interpreters, and support prioritization. Methods From May 1, 2023, to June 21, 2024, a single-center stepped wedge cluster randomized trial will be conducted within 35 units of Saint Marys Hospital & Methodist Hospital at Mayo Clinic in Rochester, Minnesota. The units include medical, surgical, trauma, and mixed ICUs and hospital floors that admit acute medical and surgical care patients as well as the emergency department (ED). The transitions between study phases will be initiated at 60-day intervals resulting in a 12-month study period. Units in the control group will receive standard care and rely on clinician initiative to request interpreter services. In the intervention group, the study team will generate a daily list of adult inpatients with language barriers, order the list based on their complexity scores (from highest to lowest), and share it with interpreter services, who will send a secure chat message to the bedside nurse. This engagement will be triggered by a predictive machine-learning algorithm based on a palliative care score, supplemented by other predictors of complexity including length of stay and level of care as well as procedures, events, and clinical notes. Discussion This pragmatic clinical trial approach will integrate a predictive machine-learning algorithm into a workflow process and evaluate the effectiveness of the intervention. We will compare the use of in-person interpreters and time to first interpreter use between the control and intervention groups. Trial registration NCT05860777. May 16, 2023.

Keywords