Literature DB >> 14972397

Influence of MRI acquisition protocols and image intensity normalization methods on texture classification.

G Collewet1, M Strzelecki, F Mariette.   

Abstract

Texture analysis methods quantify the spatial variations in gray level values within an image and thus can provide useful information on the structures observed. However, they are sensitive to acquisition conditions due to the use of different protocols and to intra- and interscanner variations in the case of MRI. The influence was studied of two protocols and four different conditions of normalization of gray levels on the discrimination power of texture analysis methods applied to soft cheeses. Thirty-two samples of soft cheese were chosen at two different ripening periods (16 young and 16 old samples) in order to obtain two different microscopic structures of the protein gel. Proton density and T(2)-weighted MR images were acquired using a spin echo sequence on a 0.2 T scanner. Gray levels were normalized according to four methods: original gray levels, same maximum for all images, same mean for all images, and dynamics limited to micro +/- 3sigma. Regions of interest were automatically defined, and texture descriptors were then computed for the co-occurrence matrix, run length matrix, gradient matrix, autoregressive model, and wavelet transform. The features with the lowest probability of error and average correlation coefficient were selected and used for classification with 1-nearest neighbor (1-NN) classifier. The best results were obtained when using the limitation of dynamics to micro +/- 3sigma, which enhanced the differences between the two classes. The results demonstrated the influence of the normalization method and of the acquisition protocol on the effectiveness of the classification and also on the parameters selected for classification. These results indicate the need to evaluate sensitivity to MR acquisition protocols and to gray level normalization methods when texture analysis is required.

Mesh:

Year:  2004        PMID: 14972397     DOI: 10.1016/j.mri.2003.09.001

Source DB:  PubMed          Journal:  Magn Reson Imaging        ISSN: 0730-725X            Impact factor:   2.546


  149 in total

1.  Assessing heterogeneity of lesion enhancement kinetics in dynamic contrast-enhanced MRI for breast cancer diagnosis.

Authors:  A Karahaliou; K Vassiou; N S Arikidis; S Skiadopoulos; T Kanavou; L Costaridou
Journal:  Br J Radiol       Date:  2010-04       Impact factor: 3.039

2.  Predicting response to somatostatin analogues in acromegaly: machine learning-based high-dimensional quantitative texture analysis on T2-weighted MRI.

Authors:  Burak Kocak; Emine Sebnem Durmaz; Pinar Kadioglu; Ozge Polat Korkmaz; Nil Comunoglu; Necmettin Tanriover; Naci Kocer; Civan Islak; Osman Kizilkilic
Journal:  Eur Radiol       Date:  2018-11-30       Impact factor: 5.315

3.  Magnetic resonance imaging texture predicts progression to dementia due to Alzheimer disease earlier than hippocampal volume

Authors:  Subin Lee; Hyunna Lee; Ki Woong Kim
Journal:  J Psychiatry Neurosci       Date:  2020-01-01       Impact factor: 6.186

4.  Measuring structural complexity in brain images.

Authors:  Karl Young; Norbert Schuff
Journal:  Neuroimage       Date:  2007-11-12       Impact factor: 6.556

5.  Assessment of multiphasic contrast-enhanced MR textures in differentiating small renal mass subtypes.

Authors:  Uyen N Hoang; S Mojdeh Mirmomen; Osorio Meirelles; Jianhua Yao; Maria Merino; Adam Metwalli; W Marston Linehan; Ashkan A Malayeri
Journal:  Abdom Radiol (NY)       Date:  2018-12

6.  Radiomic biomarkers informative of cancerous transformation in neurofibromatosis-1 plexiform tumors.

Authors:  J Uthoff; F A De Stefano; K Panzer; B W Darbro; T S Sato; R Khanna; D E Quelle; D K Meyerholz; J Weimer; J C Sieren
Journal:  J Neuroradiol       Date:  2018-06-27       Impact factor: 3.447

7.  Influence of segmentation margin on machine learning-based high-dimensional quantitative CT texture analysis: a reproducibility study on renal clear cell carcinomas.

Authors:  Burak Kocak; Ece Ates; Emine Sebnem Durmaz; Melis Baykara Ulusan; Ozgur Kilickesmez
Journal:  Eur Radiol       Date:  2019-02-12       Impact factor: 5.315

8.  Radiomics in peritumoral non-enhancing regions: fractional anisotropy and cerebral blood volume improve prediction of local progression and overall survival in patients with glioblastoma.

Authors:  Jung Youn Kim; Min Jae Yoon; Ji Eun Park; Eun Jung Choi; Jongho Lee; Ho Sung Kim
Journal:  Neuroradiology       Date:  2019-07-09       Impact factor: 2.804

9.  Effect of slice thickness on brain magnetic resonance image texture analysis.

Authors:  Sami J Savio; Lara C V Harrison; Tiina Luukkaala; Tomi Heinonen; Prasun Dastidar; Seppo Soimakallio; Hannu J Eskola
Journal:  Biomed Eng Online       Date:  2010-10-18       Impact factor: 2.819

10.  Non-Hodgkin lymphoma response evaluation with MRI texture classification.

Authors:  Lara C V Harrison; Tiina Luukkaala; Hannu Pertovaara; Tuomas O Saarinen; Tomi T Heinonen; Ritva Järvenpää; Seppo Soimakallio; Pirkko-Liisa I Kellokumpu-Lehtinen; Hannu J Eskola; Prasun Dastidar
Journal:  J Exp Clin Cancer Res       Date:  2009-06-22
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.