detalle del documento
IDENTIFICACIÓN

doi:10.1007/s11154-023-09822-4...

Autor
Dondi, Francesco Gatta, Roberto Treglia, Giorgio Piccardo, Arnoldo Albano, Domenico Camoni, Luca Gatta, Elisa Cavadini, Maria Cappelli, Carlo Bertagna, Francesco
Langue
en
Editor

Springer

Categoría

Medicine & Public Health

Año

2023

fecha de cotización

19/7/2023

Palabras clave
thyroid machine learning radiomics texture analysis positron emission tomography systematic role radiomics diseases ml review
Métrico

Resumen

Background: In the last years growing evidences on the role of radiomics and machine learning (ML) applied to different nuclear medicine imaging modalities for the assessment of thyroid diseases are starting to emerge.

The aim of this systematic review was therefore to analyze the diagnostic performances of these technologies in this setting.

Methods: A wide literature search of the PubMed/MEDLINE, Scopus and Web of Science databases was made in order to find relevant published articles about the role of radiomics or ML on nuclear medicine imaging for the evaluation of different thyroid diseases.

Results: Seventeen studies were included in the systematic review.

Radiomics and ML were applied for assessment of thyroid incidentalomas at ^18 F-FDG PET, evaluation of cytologically indeterminate thyroid nodules, assessment of thyroid cancer and classification of thyroid diseases using nuclear medicine techniques.

Conclusion: Despite some intrinsic limitations of radiomics and ML may have affect the results of this review, these technologies seem to have a promising role in the assessment of thyroid diseases.

Validation of preliminary findings in multicentric studies is needed to translate radiomics and ML approaches in the clinical setting.

Dondi, Francesco,Gatta, Roberto,Treglia, Giorgio,Piccardo, Arnoldo,Albano, Domenico,Camoni, Luca,Gatta, Elisa,Cavadini, Maria,Cappelli, Carlo,Bertagna, Francesco, 2023, Application of radiomics and machine learning to thyroid diseases in nuclear medicine: a systematic review, Springer

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