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Aligning Artificial Intelligence Prediction Targets with Clinical Workflows Using Human Centered Design Methods.

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Human-centered design improves healthcare AI by aligning predictive models with clinical workflows. This approach ensures artificial intelligence (AI) tools support actionable interventions, enhancing patient outcomes.

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Area of Science:

  • Healthcare Informatics
  • Clinical Decision Support
  • Human-Computer Interaction

Background:

  • Artificial intelligence (AI) models in healthcare often show strong predictive accuracy but fail to improve patient outcomes due to poor integration with clinical workflows.
  • A gap exists between the technical performance of AI models and their real-world clinical utility.

Purpose of the Study:

  • To demonstrate a human-centered design approach for developing healthcare AI models.
  • To ensure AI prediction targets align with actionable clinical interventions and improve patient outcomes.

Main Methods:

  • A case study of pediatric acute kidney injury was used.
  • A multidisciplinary working group employed user stories, People, Environment, Technology, and Tasks (PETT) Scan, and process mapping.
  • Sociotechnical factors and workflow leverage points were analyzed before AI model development.

Main Results:

  • Distinct prediction targets were identified for different clinical roles (hospitalists, nephrologists, intensivists).
  • Key barriers included inadequate monitoring, poor visibility of at-risk patients, and unclear injury progression.
  • High-impact prediction targets were defined to support actionable interventions.

Conclusions:

  • Integrating clinical context and human-centered design before AI development is crucial.
  • This approach bridges the gap between AI model performance and clinical utility.
  • The methodology can enhance the effectiveness of AI in improving patient care.