Literature DB >> 19994516

Treatment response assessment of breast masses on dynamic contrast-enhanced magnetic resonance scans using fuzzy c-means clustering and level set segmentation.

Jiazheng Shi1, Berkman Sahiner, Heang-Ping Chan, Chintana Paramagul, Lubomir M Hadjiiski, Mark Helvie, Thomas Chenevert.   

Abstract

The goal of this study was to develop an automated method to segment breast masses on dynamic contrast-enhanced (DCE) magnetic resonance (MR) scans and to evaluate its potential for estimating tumor volume on pre- and postchemotherapy images and tumor change in response to treatment. A radiologist experienced in interpreting breast MR scans defined a cuboid volume of interest (VOI) enclosing the mass in the MR volume at one time point within the sequence of DCE-MR scans. The corresponding VOIs over the entire time sequence were then automatically extracted. A new 3D VOI representing the local pharmacokinetic activities in the VOI was generated from the 4D VOI sequence by summarizing the temporal intensity enhancement curve of each voxel with its standard deviation. The method then used the fuzzy c-means (FCM) clustering algorithm followed by morphological filtering for initial mass segmentation. The initial segmentation was refined by the 3D level set (LS) method. The velocity field of the LS method was formulated in terms of the mean curvature which guaranteed the smoothness of the surface, the Sobel edge information which attracted the zero LS to the desired mass margin, and the FCM membership function which improved segmentation accuracy. The method was evaluated on 50 DCE-MR scans of 25 patients who underwent neoadjuvant chemotherapy. Each patient had pre- and postchemotherapy DCE-MR scans on a 1.5 T magnet. The in-plane pixel size ranged from 0.546 to 0.703 mm and the slice thickness ranged from 2.5 to 4.5 mm. The flip angle was 15 degrees, repetition time ranged from 5.98 to 6.7 ms, and echo time ranged from 1.2 to 1.3 ms. Computer segmentation was applied to the coronal T1-weighted images. For comparison, the same radiologist who marked the VOI also manually segmented the mass on each slice. The performance of the automated method was quantified using an overlap measure, defined as the ratio of the intersection of the computer and the manual segmentation volumes to the manual segmentation volume. Pre- and postchemotherapy masses had overlap measures of 0.81 +/- 0.13 (mean +/- s.d.) and 0.71 +/- 0.22, respectively. The percentage volume reduction (PVR) estimated by computer and the radiologist were 55.5 +/- 43.0% (mean +/- s.d.) and 57.8 +/- 51.3%, respectively. Paired Student's t test indicated that the difference between the mean PVRs estimated by computer and the radiologist did not reach statistical significance (p = 0.641). The automated mass segmentation method may have the potential to assist physicians in monitoring volume change in breast masses in response to treatment.

Entities:  

Mesh:

Substances:

Year:  2009        PMID: 19994516      PMCID: PMC2773457          DOI: 10.1118/1.3238101

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


  31 in total

1.  A fuzzy clustering based segmentation system as support to diagnosis in medical imaging.

Authors:  F Masulli; A Schenone
Journal:  Artif Intell Med       Date:  1999-06       Impact factor: 5.326

2.  Clinical and radiologic assessments to predict breast cancer pathologic complete response to neoadjuvant chemotherapy.

Authors:  Anne F Schott; Marilyn A Roubidoux; Mark A Helvie; Daniel F Hayes; Celina G Kleer; Lisa A Newman; Lori J Pierce; Kent A Griffith; Susan Murray; Karen A Hunt; Chintana Paramagul; Laurence H Baker
Journal:  Breast Cancer Res Treat       Date:  2005-08       Impact factor: 4.872

3.  A fuzzy c-means (FCM)-based approach for computerized segmentation of breast lesions in dynamic contrast-enhanced MR images.

Authors:  Weijie Chen; Maryellen L Giger; Ulrich Bick
Journal:  Acad Radiol       Date:  2006-01       Impact factor: 3.173

4.  Neural network approach to the segmentation and classification of dynamic magnetic resonance images of the breast: comparison with empiric and quantitative kinetic parameters.

Authors:  Botond K Szabó; Peter Aspelin; Maria Kristoffersen Wiberg
Journal:  Acad Radiol       Date:  2004-12       Impact factor: 3.173

5.  Extracting and visualizing physiological parameters using dynamic contrast-enhanced magnetic resonance imaging of the breast.

Authors:  Paul Armitage; Christian Behrenbruch; Michael Brady; Niall Moore
Journal:  Med Image Anal       Date:  2005-04-21       Impact factor: 8.545

6.  MRI measurements of breast tumor volume predict response to neoadjuvant chemotherapy and recurrence-free survival.

Authors:  Savannah C Partridge; Jessica E Gibbs; Ying Lu; Laura J Esserman; Debasish Tripathy; Dulcy S Wolverton; Hope S Rugo; E Shelley Hwang; Cheryl A Ewing; Nola M Hylton
Journal:  AJR Am J Roentgenol       Date:  2005-06       Impact factor: 3.959

7.  Segmentation strategies for breast tumors from dynamic MR images.

Authors:  F A Lucas-Quesada; U Sinha; S Sinha
Journal:  J Magn Reson Imaging       Date:  1996 Sep-Oct       Impact factor: 4.813

8.  Prospective comparison of mammography, sonography, and MRI in patients undergoing neoadjuvant chemotherapy for palpable breast cancer.

Authors:  Eren Yeh; Priscilla Slanetz; Daniel B Kopans; Elizabeth Rafferty; Dianne Georgian-Smith; Linda Moy; Elkan Halpern; Richard Moore; Irene Kuter; Alphonse Taghian
Journal:  AJR Am J Roentgenol       Date:  2005-03       Impact factor: 3.959

9.  Effect of preoperative chemotherapy on the outcome of women with operable breast cancer.

Authors:  B Fisher; J Bryant; N Wolmark; E Mamounas; A Brown; E R Fisher; D L Wickerham; M Begovic; A DeCillis; A Robidoux; R G Margolese; A B Cruz; J L Hoehn; A W Lees; N V Dimitrov; H D Bear
Journal:  J Clin Oncol       Date:  1998-08       Impact factor: 44.544

10.  Good clinical response of breast cancers to neoadjuvant chemoendocrine therapy is associated with improved overall survival.

Authors:  S J Cleator; A Makris; S E Ashley; R Lal; T J Powles
Journal:  Ann Oncol       Date:  2005-02       Impact factor: 32.976

View more
  8 in total

1.  Statistical clustering of parametric maps from dynamic contrast enhanced MRI and an associated decision tree model for non-invasive tumour grading of T1b solid clear cell renal cell carcinoma.

Authors:  Yin Xi; Qing Yuan; Yue Zhang; Ananth J Madhuranthakam; Michael Fulkerson; Vitaly Margulis; James Brugarolas; Payal Kapur; Jeffrey A Cadeddu; Ivan Pedrosa
Journal:  Eur Radiol       Date:  2017-07-05       Impact factor: 5.315

2.  Levels Propagation Approach to Image Segmentation: Application to Breast MR Images.

Authors:  Fatah Bouchebbah; Hachem Slimani
Journal:  J Digit Imaging       Date:  2019-06       Impact factor: 4.056

3.  Spectral embedding based active contour (SEAC) for lesion segmentation on breast dynamic contrast enhanced magnetic resonance imaging.

Authors:  Shannon C Agner; Jun Xu; Anant Madabhushi
Journal:  Med Phys       Date:  2013-03       Impact factor: 4.071

4.  A computer-aided diagnosis system for dynamic contrast-enhanced MR images based on level set segmentation and ReliefF feature selection.

Authors:  Zhiyong Pang; Dongmei Zhu; Dihu Chen; Li Li; Yuanzhi Shao
Journal:  Comput Math Methods Med       Date:  2015-01-06       Impact factor: 2.238

Review 5.  AI-Enhanced Diagnosis of Challenging Lesions in Breast MRI: A Methodology and Application Primer.

Authors:  Anke Meyer-Base; Lia Morra; Amirhessam Tahmassebi; Marc Lobbes; Uwe Meyer-Base; Katja Pinker
Journal:  J Magn Reson Imaging       Date:  2020-08-30       Impact factor: 4.813

6.  Computerized segmentation and characterization of breast lesions in dynamic contrast-enhanced MR images using fuzzy c-means clustering and snake algorithm.

Authors:  Yachun Pang; Li Li; Wenyong Hu; Yanxia Peng; Lizhi Liu; Yuanzhi Shao
Journal:  Comput Math Methods Med       Date:  2012-08-21       Impact factor: 2.238

Review 7.  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

8.  Application of MRI Radiomics-Based Machine Learning Model to Improve Contralateral BI-RADS 4 Lesion Assessment.

Authors:  Wen Hao; Jing Gong; Shengping Wang; Hui Zhu; Bin Zhao; Weijun Peng
Journal:  Front Oncol       Date:  2020-10-29       Impact factor: 6.244

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.