Perception of AI Symptom Models in Oncology Nursing: Mixed Methods Evaluation Study
Bridget Nicholson, Elizabeth A Sloss, Aref Smiley, Joseph Finkelstein, Kathi Mooney

TL;DR
Oncology nurses believe AI models can improve cancer patient symptom management, but they emphasize the need for transparency and involvement in model development.
Contribution
This study identifies key factors influencing oncology nurses' adoption of AI-based symptom management models in clinical practice.
Findings
Most oncology nurses believe AI models can improve symptom management and enable early intervention.
Transparency in AI model factors and nurse involvement in development are seen as essential for adoption.
Themes like compatibility, observability, and trialability were identified as critical for successful implementation.
Abstract
Patients undergoing cancer treatment experience a significant symptom burden. The standard process of symptom management includes patient reporting and clinical response following symptom escalation. Emerging predictive symptom models use artificial intelligence (AI) components of machine learning and deep learning to identify the risk of symptom deterioration, facilitating earlier intervention to prevent downstream effects. However, integrating predictive symptom models into clinical practice will require oncology nurses to adopt innovative approaches. This study aims to explore oncology nurses’ perceptions of the use of predictive symptom models in cancer care and the factors influencing the adoption of this symptom care innovation. The evaluation was guided by the Rogers Diffusion of Innovation Theory, which describes the process of how individuals adopt new technologies. The…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Cancer survivorship and care · Radiomics and Machine Learning in Medical Imaging
