| Literature DB >> 27241666 |
Jean-Emmanuel Bibault1, Philippe Giraud2, Anita Burgun3.
Abstract
Precision medicine relies on an increasing amount of heterogeneous data. Advances in radiation oncology, through the use of CT Scan, dosimetry and imaging performed before each fraction, have generated a considerable flow of data that needs to be integrated. In the same time, Electronic Health Records now provide phenotypic profiles of large cohorts of patients that could be correlated to this information. In this review, we describe methods that could be used to create integrative predictive models in radiation oncology. Potential uses of machine learning methods such as support vector machine, artificial neural networks, and deep learning are also discussed.Entities:
Keywords: Big Data; Machine learning; Predictive model; Radiation oncology
Mesh:
Year: 2016 PMID: 27241666 DOI: 10.1016/j.canlet.2016.05.033
Source DB: PubMed Journal: Cancer Lett ISSN: 0304-3835 Impact factor: 8.679