Texture Analysis of Imaging: What Radiologists Need to Know
Top Cited Papers
- 1 March 2019
- journal article
- review article
- Published by American Roentgen Ray Society in American Journal of Roentgenology
- Vol. 212 (3), 520-528
- https://doi.org/10.2214/ajr.18.20624
Abstract
OBJECTIVE. Radiologic texture is the variation in image intensities within an image and is an important part of radiomics. The objective of this article is to discuss some parameters that affect the performance of texture metrics and propose recommendations that can guide both the design and evaluation of future radiomics studies. CONCLUSION. A variety of texture-extraction techniques are used to assess clinical imaging data. Currently, no consensus exists regarding workflow, including acquisition, extraction, or reporting of variable settings leading to poor reproducibility.Keywords
This publication has 88 references indexed in Scilit:
- Proteomic analysis of the inhibitory effect of epigallocatechin gallate on lipid accumulation in human HepG2 cellsProteome Science, 2013
- Reproducibility of Tumor Uptake Heterogeneity Characterization Through Textural Feature Analysis in 18F-FDG PETJournal of Nuclear Medicine, 2012
- Combined PET/CT image characteristics for radiotherapy tumor response in lung cancerRadiotherapy and Oncology, 2012
- Optimally splitting cases for training and testing high dimensional classifiersBMC Medical Genomics, 2011
- Variability of textural features in FDG PET images due to different acquisition modes and reconstruction parametersActa Oncologica, 2010
- Detection and classification of masses in breast ultrasound imagesDigital Signal Processing, 2010
- Effect of slice thickness on brain magnetic resonance image texture analysisBioMedical Engineering OnLine, 2010
- Classification of brain tumor type and grade using MRI texture and shape in a machine learning schemeMagnetic Resonance in Medicine, 2009
- How Many Subjects Does It Take To Do A Regression AnalysisMultivariate Behavioral Research, 1991
- The Relative Efficiency of Regression and Simple Unit Predictor Weights in Applied Differential PsychologyEducational and Psychological Measurement, 1971