Literature DB >> 22482596

Computer-aided diagnosis for dynamic contrast-enhanced breast MRI of mass-like lesions using a multiparametric model combining a selection of morphological, kinetic, and spatiotemporal features.

S Agliozzo1, M De Luca, C Bracco, A Vignati, V Giannini, L Martincich, L A Carbonaro, A Bert, F Sardanelli, D Regge.   

Abstract

PURPOSE: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is a radiological tool for the detection and discrimination of breast lesions. The aim of this study is to evaluate a computer-aided diagnosis (CAD) system for discriminating malignant from benign breast lesions at DCE-MRI by the combined use of morphological, kinetic, and spatiotemporal lesion features.
METHODS: Fifty-four malignant and 19 benign breast lesions in 51 patients were retrospectively evaluated. Images were acquired at two centers at 1.5 T. Mass-like lesions were automatically segmented after image normalization and elastic coregistration of contrast-enhanced frames. For each lesion, a set of 28 3D features were extracted: ten morphological (related to shape, margins, and internal enhancement distribution); nine kinetic (computed from signal-to-time curves); and nine spatiotemporal (related to the variation of the signal between adjacent frames). A support vector machine (SVM) was trained with feature subsets selected by a genetic search. Best subsets were composed of the most frequent features selected by majority rule. The performance was measured by receiver operator characteristics analysis with a stratified tenfold cross-validation and bootstrap method for confidence intervals.
RESULTS: SVM training by the three separated classes of features resulted in an area under the curve (AUC) of 0.90 ± 0.04 (mean ± standard deviation), 0.87 ± 0.06, and 0.86 ± 0.06 for morphological, kinetic, and spatiotemporal feature, respectively. Combined training with all 28 features resulted in AUC of 0.96 ± 0.02 obtained with a selected feature subset composed by two morphological, one kinetic, and two spatiotemporal features.
CONCLUSIONS: Quantitative combination of morphological, kinetic, and spatiotemporal features is feasible and provides a higher discriminating power than using the three different classes of features separately.

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Year:  2012        PMID: 22482596     DOI: 10.1118/1.3691178

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  14 in total

1.  Computer-Aided Diagnosis Scheme for Distinguishing Between Benign and Malignant Masses in Breast DCE-MRI.

Authors:  Emi Honda; Ryohei Nakayama; Hitoshi Koyama; Akiyoshi Yamashita
Journal:  J Digit Imaging       Date:  2016-06       Impact factor: 4.056

2.  A novel framework for evaluating the image accuracy of dynamic MRI and the application on accelerated breast DCE MRI.

Authors:  Yuan Le; Marcel Dominik Nickel; Stephan Kannengiesser; Berthold Kiefer; Bruce Spottiswoode; Brian Dale; Victor Soon; Chen Lin
Journal:  MAGMA       Date:  2017-09-11       Impact factor: 2.310

3.  Automatic ROI construction for analyzing time-signal intensity curve in dynamic contrast-enhanced MR imaging of the breast.

Authors:  Koya Fujimoto; Yasuyuki Ueda; Shohei Kudomi; Teppei Yonezawa; Yuki Fujimoto; Katsuhiko Ueda
Journal:  Radiol Phys Technol       Date:  2015-07-04

Review 4.  Chipping away at a mountain: genomic studies in common variable immunodeficiency.

Authors:  Michael D Keller; Soma Jyonouchi
Journal:  Autoimmun Rev       Date:  2012-11-29       Impact factor: 9.754

5.  Computerized image analysis for identifying triple-negative breast cancers and differentiating them from other molecular subtypes of breast cancer on dynamic contrast-enhanced MR images: a feasibility study.

Authors:  Shannon C Agner; Mark A Rosen; Sarah Englander; John E Tomaszewski; Michael D Feldman; Paul Zhang; Carolyn Mies; Mitchell D Schnall; Anant Madabhushi
Journal:  Radiology       Date:  2014-03-10       Impact factor: 11.105

6.  Differential neuropathology and functional outcome after equivalent traumatic brain injury in aged versus young adult mice.

Authors:  Mecca B A R Islam; Booker T Davis; Mary J Kando; Qinwen Mao; Daniele Procissi; Craig Weiss; Steven J Schwulst
Journal:  Exp Neurol       Date:  2021-04-05       Impact factor: 5.620

7.  Kinetic Curve Type Assessment for Classification of Breast Lesions Using Dynamic Contrast-Enhanced MR Imaging.

Authors:  Shih-Neng Yang; Fang-Jing Li; Jun-Ming Chen; Geoffrey Zhang; Yen-Hsiu Liao; Tzung-Chi Huang
Journal:  PLoS One       Date:  2016-04-07       Impact factor: 3.240

8.  Intensity non-uniformity correction in MR imaging using residual cycle generative adversarial network.

Authors:  Xianjin Dai; Yang Lei; Yingzi Liu; Tonghe Wang; Lei Ren; Walter J Curran; Pretesh Patel; Tian Liu; Xiaofeng Yang
Journal:  Phys Med Biol       Date:  2020-11-27       Impact factor: 3.609

9.  Identifying Triple-Negative Breast Cancer Using Background Parenchymal Enhancement Heterogeneity on Dynamic Contrast-Enhanced MRI: A Pilot Radiomics Study.

Authors:  Jeff Wang; Fumi Kato; Noriko Oyama-Manabe; Ruijiang Li; Yi Cui; Khin Khin Tha; Hiroko Yamashita; Kohsuke Kudo; Hiroki Shirato
Journal:  PLoS One       Date:  2015-11-24       Impact factor: 3.240

Review 10.  Current Status and Future Perspectives of Artificial Intelligence in Magnetic Resonance Breast Imaging.

Authors:  Anke Meyer-Bäse; Lia Morra; Uwe Meyer-Bäse; Katja Pinker
Journal:  Contrast Media Mol Imaging       Date:  2020-08-28       Impact factor: 3.161

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