Radiomics and Digital Image Texture Analysis in Oncology (Review)

Sovrem Tekhnologii Med. 2021;13(2):97-104. doi: 10.17691/stm2021.13.2.11. Epub 2021 Jan 1.

Abstract

One of the most promising areas of diagnosis and prognosis of diseases is radiomics, a science combining radiology, mathematical modeling, and deep machine learning. The main concept of radiomics is image biomarkers (IBMs), the parameters characterizing various pathological changes and calculated based on the analysis of digital image texture. IBMs are used for quantitative assessment of digital imaging results (CT, MRI, ultrasound, PET). The use of IBMs in the form of "virtual biopsy" is of particular relevance in oncology. The article provides the basic concepts of radiomics identifying the main stages of obtaining IBMs: data collection and preprocessing, tumor segmentation, data detection and extraction, modeling, statistical processing, and data validation. The authors have analyzed the possibilities of using IBMs in oncology, describing the currently known features and advantages of using radiomics and image texture analysis in the diagnosis and prognosis of cancer. The limitations and problems associated with the use of radiomics data are considered. Although the novel effective tool for performing virtual biopsy of human tissue is at the development stage, quite a few projects have already been implemented, and medical software packages for radiomics analysis of digital images have been created.

Keywords: analysis of tissue textures; digital image analysis in oncology; image biomarkers; quantitative analysis of digital images; radiomics; virtual biopsy.

Publication types

  • Review

MeSH terms

  • Humans
  • Image Processing, Computer-Assisted
  • Machine Learning
  • Magnetic Resonance Imaging
  • Medical Oncology*
  • Neoplasms* / diagnostic imaging

Grants and funding

Research funding. The work was not supported by any financial sources.