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Artificial intelligence and laboratory data in rheumatic diseases

Paola Galozzi, Daniela Basso, Mario Plebani, Andrea Padoan

2023Clinica Chimica Acta12 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI)-based medical technologies are rapidly evolving into actionable solutions for clinical practice. Machine learning (ML) algorithms can process increasing amounts of laboratory data such as gene expression immunophenotyping data and biomarkers. In recent years, the analysis of ML has become particularly useful for the study of complex chronic diseases, such as rheumatic diseases, heterogenous conditions with multiple triggers. Numerous studies have used ML to classify patients and improve diagnosis, to stratify the risk and determine disease subtypes, as well as to discover biomarkers and gene signatures. This review aims to provide examples of ML models for specific rheumatic diseases using laboratory data and some insights into relevant strengths and limitations. A better understanding and future application of these analytical strategies could facilitate the development of precision medicine for rheumatic patients.

Topics & Concepts

Data scienceDiseaseMedicineArtificial intelligenceStrengths and weaknessesComputer scienceMachine learningClinical PracticeBioinformaticsPathologyPsychologyPhysical therapyBiologySocial psychologyRheumatoid Arthritis Research and TherapiesSystemic Sclerosis and Related DiseasesSystemic Lupus Erythematosus Research
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