Data di Pubblicazione:
2025
Abstract:
Primary and secondary immunodeficiencies comprise a wide array of illnesses marked by immune system abnormalities, resulting in heightened vulnerability to infections, autoimmunity, and cancers. Notwithstanding progress in diagnostic instruments and an enhanced comprehension of the underlying pathophysiology, delayed diagnosis and underreporting persist as considerable obstacles. The implementation of artificial intelligence into clinical practice has surfaced as a viable method to enhance early detection, risk assessment, and management of immunodeficiencies. Recent advancements illustrate how artificial intelligence-driven models, such as predictive algorithms, electronic phenotyping, and automated flow cytometry analysis, might enable early diagnosis, minimize diagnostic delays, and enhance personalized treatment methods. Furthermore, artificial intelligence-driven immunopeptidomics and phenotypic categorization are enhancing vaccine development and biomarker identification. Successful implementation necessitates overcoming problems associated with data standardization, model validation, and ethical issues. Future advancements will necessitate a multidisciplinary partnership among physicians, data scientists, and governments to effectively use the revolutionary capabilities of artificial intelligence, therefore ushering in an age of precision medicine in immunodeficiencies.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
Primary immunodeficiency, secondary immunodeficiency, artificial intelligence, immunopeptidomic profiling, genetic mutation, immune system, machine learning, deep learning, biomarker, vaccines
Elenco autori:
Sciaccotta, Raffaele; Barone, Paola; Murdaca, Giuseppe; Fazio, Manlio; Stagno, Fabio; Gangemi, Sebastiano; Genovese, Sara; Allegra, Alessandro
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