The complexity and volume of data in healthcare entail that artificial intelligence (AI) and associated technologies are becoming an essential component of life sciences. The scientific literature explores the benefits, contexts of application, ethical implications, and future devel- opments. In order to 1) identify the topics characterizing the literature on AI in the clinical domain, 2) detect semantic categories, and 3) val- idate them, a methodological approach based on the combination of natural language processing and machine learning for classification was performed. Two main semantic categories were identified: diagnostics and treatment, which are used to manually annotate each document. Finally, we tested our semantic classification through machine learning. The findings suggest clear differences between the two categories, mainly based on AI-assisted meta-analyses and clinical decision support systems, with just a quota of scientific papers encompassing both semantic pil- lars. This proportion of documents is pivotal to changing the semantic classification.

The Revolution of AI in Healthcare Between Diagnosis and Treatment, 2025.

The Revolution of AI in Healthcare Between Diagnosis and Treatment

Forciniti, Alessia
;
Santelli, Francesco
2025-01-01

Abstract

The complexity and volume of data in healthcare entail that artificial intelligence (AI) and associated technologies are becoming an essential component of life sciences. The scientific literature explores the benefits, contexts of application, ethical implications, and future devel- opments. In order to 1) identify the topics characterizing the literature on AI in the clinical domain, 2) detect semantic categories, and 3) val- idate them, a methodological approach based on the combination of natural language processing and machine learning for classification was performed. Two main semantic categories were identified: diagnostics and treatment, which are used to manually annotate each document. Finally, we tested our semantic classification through machine learning. The findings suggest clear differences between the two categories, mainly based on AI-assisted meta-analyses and clinical decision support systems, with just a quota of scientific papers encompassing both semantic pil- lars. This proportion of documents is pivotal to changing the semantic classification.
Inglese
2025
2024
Alessio Pollice and Paolo Mariani
Methodological and Applied Statistics and Demography IV - SIS 2024, Short Papers, Contributed Sessions 2
15
21
7
978-3-031-64446-7
978-3-031-64447-4
Switzerland
Cham
Springer
esperti anonimi
internazionale
A stampa
Settore SECS-S/05 - Statistica Sociale
Settore SECS-S/03 - Statistica Economica
Settore MAT/06 - Probabilita' e Statistica Matematica
Settore SECS-S/01 - Statistica
Settore STAT-03/B - Statistica sociale
Settore STAT-02/A - Statistica economica
Settore MATH-03/B - Probabilità e statistica matematica
Settore STAT-01/A - Statistica
2
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10808/63207
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