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The Accuracy And Clinical Relevance of Chat GPT-4 in Triple Negative Breast Cancer Research
0
Zitationen
3
Autoren
2025
Jahr
Abstract
ChatGPT-4 exhibits significant potential in summarizing information on TNBC; however, the accuracy of its responses varies depending on the complexity and specificity of the queries. Due to inconsistencies and low inter-rater reliability, AI-generated medical content requires verification by medical professionals before being applied to patient care or clinical decision-making. Future developments in large language models should focus on reducing inaccuracies, incorporating the latest medical data, and improving adaptability to better support personalized medicine.
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