Litcius/Paper detail

Artificial Intelligence in Bone Metastases: An MRI and CT Imaging Review

Eliodoro Faiella, Domiziana Santucci, Alessandro Calabrese, Fabrizio Russo, Gianluca Vadalà, Bruno Beomonte Zobel, Paolo Soda, Giulio Iannello, Carlo de Felice, Vincenzo Denaro

2022International Journal of Environmental Research and Public Health32 citationsDOIOpen Access PDF

Abstract

(1) Background: The purpose of this review is to study the role of radiomics as a supporting tool in predicting bone disease status, differentiating benign from malignant bone lesions, and characterizing malignant bone lesions. (2) Methods: Two reviewers conducted the literature search independently. Thirteen articles on radiomics as a decision support tool for bone lesions were selected. The quality of the methodology was evaluated according to the radiomics quality score (RQS). (3) Results: All studies were published between 2018 and 2021 and were retrospective in design. Eleven (85%) studies were MRI-based, and two (15%) were CT-based. The sample size was <200 patients for all studies. There is significant heterogeneity in the literature, as evidenced by the relatively low RQS value (average score = 22.6%). There is not a homogeneous protocol used for MRI sequences among the different studies, although the highest predictive ability was always obtained in T2W-FS. Six articles (46%) reported on the potential application of the model in a clinical setting with a decision curve analysis (DCA). (4) Conclusions: Despite the variability in the radiomics method application, the similarity of results and conclusions observed is encouraging. Substantial limits were found; prospective and multicentric studies are needed to affirm the role of radiomics as a supporting tool.

Topics & Concepts

RadiologyMedicineMagnetic resonance imagingNuclear medicineMedical physicsRadiomics and Machine Learning in Medical ImagingMedical Imaging Techniques and ApplicationsAdvanced X-ray and CT Imaging