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PET-Derived Radiomics and Artificial Intelligence in Breast Cancer: A Systematic Review
Authors:Luca Urso  Luigi Manco  Angelo Castello  Laura Evangelista  Gabriele Guidi  Massimo Castellani  Luigia Florimonte  Corrado Cittanti  Alessandro Turra  Stefano Panareo
Abstract:
Breast cancer (BC) is a heterogeneous malignancy that still represents the second cause of cancer-related death among women worldwide. Due to the heterogeneity of BC, the correct identification of valuable biomarkers able to predict tumor biology and the best treatment approaches are still far from clear. Although molecular imaging with positron emission tomography/computed tomography (PET/CT) has improved the characterization of BC, these methods are not free from drawbacks. In recent years, radiomics and artificial intelligence (AI) have been playing an important role in the detection of several features normally unseen by the human eye in medical images. The present review provides a summary of the current status of radiomics and AI in different clinical settings of BC. A systematic search of PubMed, Web of Science and Scopus was conducted, including all articles published in English that explored radiomics and AI analyses of PET/CT images in BC. Several studies have demonstrated the potential role of such new features for the staging and prognosis as well as the assessment of biological characteristics. Radiomics and AI features appear to be promising in different clinical settings of BC, although larger prospective trials are needed to confirm and to standardize this evidence.
Keywords:radiomics   artificial intelligence   AI   machine-learning   deep-learning   breast cancer   positron emission tomography   PET/CT
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