Publications

Generative artificial intelligence (AI) for reporting the performance of laboratory biomarkers: not ready for prime time  (2025)

Authors:
Pighi, Laura; Negrini, Davide; Lippi, Giuseppe
Title:
Generative artificial intelligence (AI) for reporting the performance of laboratory biomarkers: not ready for prime time
Year:
2025
Type of item:
Articolo in Rivista
Tipologia ANVUR:
Articolo su rivista
Language:
Inglese
Format:
Elettronico
Referee:
Name of journal:
Clinical Chemistry and Laboratory Medicine
ISSN of journal:
1434-6621
N° Volume:
63
Number or Folder:
2
:
Walter De Gruyter
Page numbers:
e33-e35
Keyword:
Artificial intelligence, performance, laboratory biomarkers
Short description of contents:
Artificial intelligence (AI), especially generative AI, has become a valuable resource in daily life and in many professions, including healthcare and laboratory medicine. On July 26, 2024 we queried the latest version of five of the most common and freely available generative AI online software tools (Chat-GPT; Perplexity; Google Gemini; Cohere; and You.com) with three specific questions, namely “Which are the diagnostic sensitivity and specificity of cardiac troponins for diagnosing myocardial infarction?”; “Which are the diagnostic sensitivity and specificity of D-dimer for diagnosing pulmonary embolism?”; and “Which are the diagnostic sensitivity and specificity of procalcitonin for diagnosing sepsis?”. We specifically asked the software to provide numerical data on diagnostic sensitivity and specificity of the three biomarkers. Although we found a partial overlap in the diagnostic performance of all biomarkers, a large heterogeneity was observed in the responses to the specific questions posed to the five generative AI tools, making the use of generative AI still questionable for laboratory experts, clinicians and even patients seeking information on accuracy of laboratory tests.
Web page:
https://www.degruyter.com/document/doi/10.1515/cclm-2024-0857/html
Product ID:
140682
Handle IRIS:
11562/1132606
Last Modified:
January 12, 2025
Bibliographic citation:
Pighi, Laura; Negrini, Davide; Lippi, Giuseppe, Generative artificial intelligence (AI) for reporting the performance of laboratory biomarkers: not ready for prime time «Clinical Chemistry and Laboratory Medicine » , vol. 63 , n. 22025pp. e33-e35

Consulta la scheda completa presente nel repository istituzionale della Ricerca di Ateneo IRIS

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