Abstract

"Radiomics" refers to the extraction and analysis of large amounts of advanced quantitative imaging features with high throughput from medical images obtained with computed tomography, positron emission tomography or magnetic resonance imaging. Importantly, these data are designed to be extracted from standard-of-care images, leading to a very large potential subject pool. Radiomics data are in a mineable form that can be used to build descriptive and predictive models relating image features to phenotypes or gene-protein signatures. The core hypothesis of radiomics is that these models, which can include biological or medical data, can provide valuable diagnostic, prognostic or predictive information. The radiomics enterprise can be divided into distinct processes, each with its own challenges that need to be overcome: (a) image acquisition and reconstruction, (b) image segmentation and rendering, (c) feature extraction and feature qualification and (d) databases and data sharing for eventual (e) ad hoc informatics analyses. Each of these individual processes poses unique challenges. For example, optimum protocols for image acquisition and reconstruction have to be identified and harmonized. Also, segmentations have to be robust and involve minimal operator input. Features have to be generated that robustly reflect the complexity of the individual volumes, but cannot be overly complex or redundant. Furthermore, informatics databases that allow incorporation of image features and image annotations, along with medical and genetic data, have to be generated. Finally, the statistical approaches to analyze these data have to be optimized, as radiomics is not a mature field of study. Each of these processes will be discussed in turn, as well as some of their unique challenges and proposed approaches to solve them. The focus of this article will be on images of non-small-cell lung cancer.

Keywords

RadiomicsProcess (computing)Computer scienceArtificial intelligence

MeSH Terms

AlgorithmsCarcinomaNon-Small-Cell LungHumansImage ProcessingComputer-AssistedLung NeoplasmsMagnetic Resonance ImagingMedical InformaticsMultivariate AnalysisPattern RecognitionAutomatedPhantomsImagingPositron-Emission TomographyRadiation OncologyReproducibility of ResultsRisk FactorsSoftwareTomographyX-Ray Computed

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Publication Info

Year
2012
Type
review
Volume
30
Issue
9
Pages
1234-1248
Citations
2154
Access
Closed

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2154
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47
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1842
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Cite This

Virendra Kumar, Yuhua Gu, Satrajit Basu et al. (2012). Radiomics: the process and the challenges. Magnetic Resonance Imaging , 30 (9) , 1234-1248. https://doi.org/10.1016/j.mri.2012.06.010

Identifiers

DOI
10.1016/j.mri.2012.06.010
PMID
22898692
PMCID
PMC3563280

Data Quality

Data completeness: 90%