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AI-driven patient-centered care: A digital transformation framework for gynecologic cancer genetic counseling
0
Zitationen
6
Autoren
2026
Jahr
Abstract
ObjectivesThis study evaluates artificial intelligence (AI) reasoning capabilities in gynecologic cancer genetic counseling, comparing the performance of ChatGPT and DeepSeek models to guide patient-centered AI implementation in clinical genetics.MethodsUsing 40 National Comprehensive Cancer Network-aligned counseling scenarios, we conducted blinded dual-oncologist evaluations of two large language models. Methodological rigor included model anonymization, a pre-calibrated scoring framework, and validated metrics (Global Quality Scale and Patient Education Materials Assessment Tool) assessing informational coherence, understandability, and actionability.ResultsDeepSeek demonstrated superior informational breadth (mean character difference: -609.0, <i>p</i> < .0001) and visual communication (diagram integration, <i>p</i> < .01), with 49-fold greater probability in recommending clear and actionable actions (<i>p</i> < .01, OR = 49.0). ChatGPT excelled in concise summarization (22% faster response generation, <i>p</i> = .013).ConclusionStrategic AI model selection-leveraging DeepSeek's visually-rich, structured educational approach for complex information, and ChatGPT's concise, rapid summarization for efficient communication-enhances patient-centered genetic education when combined with clinician oversight. This framework supports healthcare's digital transformation by optimizing human-AI collaboration in hereditary cancer care.
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