| Literature DB >> 31481588 |
Mathieu Hatt1, Catherine Cheze Le Rest2,3, Florent Tixier2, Bogdan Badic2, Ulrike Schick2, Dimitris Visvikis2.
Abstract
The aim of this review is to provide readers with an update on the state of the art, pitfalls, solutions for those pitfalls, future perspectives, and challenges in the quickly evolving field of radiomics in nuclear medicine imaging and associated oncology applications. The main pitfalls were identified in study design, data acquisition, segmentation, feature calculation, and modeling; however, in most cases, potential solutions are available and existing recommendations should be followed to improve the overall quality and reproducibility of published radiomics studies. The techniques from the field of deep learning have some potential to provide solutions, especially in terms of automation. Some important challenges remain to be addressed but, overall, striking advances have been made in the field in the last 5 y.Keywords: deep learning; machine learning; radiomics
Mesh:
Year: 2019 PMID: 31481588 DOI: 10.2967/jnumed.118.220582
Source DB: PubMed Journal: J Nucl Med ISSN: 0161-5505 Impact factor: 10.057