Clinical applications of radiomics and deep learning in breast and lung cancer: A narrative literature review on current evidence and future perspectives
Alessandra Ferro, Michele Bottosso, Maria Vittoria Dieci, Elena Scagliori, Federica Miglietta, Vittoria Aldegheri, Laura Bonanno, Francesca Caumo, Valentina Guarneri, Gaia Griguolo, Giulia Pasello
Abstract
Radiomics, analysing quantitative features from medical imaging, has rapidly become an emerging field in translational oncology. Radiomics has been investigated in several neoplastic malignancies as it might allow for a non-invasive tumour characterization and for the identification of predictive and prognostic biomarkers. Over the last few years, evidence has been accumulating regarding potential clinical applications of machine learning in many crucial moments of cancer patients’ history. However, the incorporation of radiomics in clinical decision-making process is still limited by low data reproducibility and study variability. Moreover, the need for prospective validations and standardizations is emerging. In this narrative review, we summarize current evidence regarding radiomic applications in high-incidence cancers (breast and lung) for screening, diagnosis, staging, treatment choice, response, and clinical outcome evaluation. We also discuss pro and cons of the radiomic approach, suggesting possible solutions to critical issues which might invalidate radiomics studies and propose future perspectives. • Radiomics has rapidly become an issue of interest in the field of oncology. • Evidence on potential clinical applications of radiomics has been widely improved. • Radiomics has been applied to high-incidence breast and lung cancers. • Quantitative data extracted from medical images could guide decision-making process. • Radiomics may assume a predictive/prognostic value in breast and lung cancers.