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Ability of Artificial Intelligence to Address Nuanced Cardiology Subspecialty Questions
0
Zitationen
2
Autoren
2025
Jahr
Abstract
We would like to comment on “Evaluating the Ability of Artificial Intelligence to Address Nuanced Cardiology Subspecialty Questions: ChatGPT and CathSAP.”1 Although the researchers used the Kruskal-Wallis test, which is suited for non-normal data, there are significant limitations to the analysis’ granularity, particularly in splitting the results by CathSAP question subtype. A comparison test between the means of 2 groups may not fully reflect the data’s complexity. Advanced statistics such as analysis of variance with covariance or repeated analysis of each question type should be used to compensate for confounding factors, and variance values, such as standard deviation or interquartile range, should be presented to improve the results’ reliability.
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