| Literature DB >> 29290259 |
Rajat Thawani1, Michael McLane2, Niha Beig2, Soumya Ghose2, Prateek Prasanna2, Vamsidhar Velcheti3, Anant Madabhushi2.
Abstract
Lung cancer is responsible for a large proportion of cancer-related deaths across the globe, with delayed detection being perhaps the most significant factor for its high mortality rate. Though the National Lung Screening Trial argues for screening of certain at-risk populations, the practical implementation of these screening efforts has not yet been successful and remains in high demand. Radiomics refers to the computerized extraction of data from radiologic images, and provides unique potential for making lung cancer screening more rapid and accurate using machine learning algorithms. The quantitative features analyzed express subvisual characteristics of images which correlate with pathogenesis of diseases. These features are broadly classified into four categories: intensity, structure, texture/gradient, and wavelet, based on the types of image attributes they capture. Many studies have been done to show correlation between these features and the malignant potential of a nodule on a chest CT. In cancer patients, these nodules also have features that can be correlated with prognosis and mutation status. The major limitations of radiomics are the lack of standardization of acquisition parameters, inconsistent radiomic methods, and lack of reproducibility. Researchers are working on overcoming these limitations, which would make radiomics more acceptable in the medical community.Entities:
Keywords: Image analysis; Lung cancer; Radiogenomics; Radiomics
Mesh:
Year: 2017 PMID: 29290259 DOI: 10.1016/j.lungcan.2017.10.015
Source DB: PubMed Journal: Lung Cancer ISSN: 0169-5002 Impact factor: 5.705