Human-Centric Design of AI-driven Clinical Decision Support Systems: Designs AI-driven clinical decision support systems with a focus on user-centered design principles to enhance usability and adoption
Published 20-12-2023
Keywords
- Clinical Decision Support Systems,
- Human-Centric Design,
- Patient Outcomes
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
How to Cite
Abstract
This research paper explores the critical role of human-centric design in the development of AI-driven Clinical Decision Support Systems (CDSS). With the increasing complexity of healthcare systems and the growing volume of clinical data, AI has emerged as a valuable tool to assist healthcare professionals in making informed decisions. However, the effectiveness of AI-driven CDSS depends not only on the accuracy of the underlying algorithms but also on how well these systems are designed to fit into the workflow and decision-making processes of healthcare providers. This paper discusses the key principles of human-centric design and presents a framework for designing AI-driven CDSS that prioritize user needs and preferences. By incorporating human-centric design principles into the development process, AI-driven CDSS can enhance usability, increase acceptance among healthcare professionals, and ultimately improve patient outcomes.
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