Literature DB >> 15691726

Computerized scheme for assessing ultrasonographic features of breast masses.

Kwang Gi Kim1, Seong Whi Cho, Seon Jung Min, Jong Hyo Kim, Byoung Goo Min, Kyongtae T Bae.   

Abstract

RATIONALE AND
OBJECTIVE: To evaluate the ultrasonographic features of breast masses using a computerized scheme and to correlate the feature values with radiologists' grading.
MATERIALS AND METHODS: One hundred and seventy-five breast ultrasound images (one to five images per subject) from 61 women (age 17-89 years, mean 43 years) were studied. Thirty-eight of the 157 images were from 11 women with malignant lesions, and the remaining 137 were from 50 patients with benign lesions. Two breast imaging radiologists participated in an observer performance study and were asked to grade, on a scale of 3, shape (1: regular, 3: very irregular), border (1: sharp, 3: ill-defined), internal texture (1: homogeneous, 3: very heterogeneous), width/depth ratio (1: flat, 3: tall), posterior enhancement (1: strong, 3: none), and lateral shadowing (1: strong, 3: none). The computerized scheme analyzed the breast region within a region of interest that was placed by a radiologist and quantified the following parameters: shape (jag count, disperse, convex hull depth, and lobulation count), border (acutance, average maximum ascending gradient, and sigmoid curve fitting), texture (edge density, co-occurrence matrix, and fractal dimension), width-depth ratio, posterior enhancement, and lateral shadowing. Correlations between the radiologists and the computerized scheme for assessing parameters in corresponding categories were computed.
RESULTS: Good agreement was seen in posterior enhancement (P < .001, r = 0.45), lateral shadowing (P < .001, r = 0.38), width-depth ratio (P < .001, r = 0.33), and shape features (all P < .001): jag count (r = 0.38), disperseness (r = 0.55), and convex hull depth (r = 0.44). The remaining parameters demonstrated a poor or weak correlation (r < 0.30).
CONCLUSION: The radiologists and the computerized scheme correlated best in analysis of shape features and posterior enhancement. We have yet to determine the significance of these features for the implementation of a computer-aided diagnosis program for characterizing breast ultrasound masses.

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Year:  2005        PMID: 15691726     DOI: 10.1016/j.acra.2004.11.010

Source DB:  PubMed          Journal:  Acad Radiol        ISSN: 1076-6332            Impact factor:   3.173


  8 in total

1.  Classification of breast masses in ultrasound images using self-adaptive differential evolution extreme learning machine and rough set feature selection.

Authors:  Kadayanallur Mahadevan Prabusankarlal; Palanisamy Thirumoorthy; Radhakrishnan Manavalan
Journal:  J Med Imaging (Bellingham)       Date:  2017-06-16

2.  Quantitative ultrasound analysis for classification of BI-RADS category 3 breast masses.

Authors:  Woo Kyung Moon; Chung-Ming Lo; Jung Min Chang; Chiun-Sheng Huang; Jeon-Hor Chen; Ruey-Feng Chang
Journal:  J Digit Imaging       Date:  2013-12       Impact factor: 4.056

3.  Clinical study of a noninvasive multimodal sono-contrast induced spectroscopy system for breast cancer diagnosis.

Authors:  K Yan; Y Yu; E Tinney; R Baraldi; L Liao
Journal:  Med Phys       Date:  2012-03       Impact factor: 4.071

4.  Differentiation of urinary stone and vascular calcifications on non-contrast CT images: an initial experience using computer aided diagnosis.

Authors:  Hak Jong Lee; Kwang Gi Kim; Sung Il Hwang; Seung Hyup Kim; Seok-Soo Byun; Sang Eun Lee; Seong Kyu Hong; Jeong Yeon Cho; Chang Gyu Seong
Journal:  J Digit Imaging       Date:  2009-02-04       Impact factor: 4.056

5.  Quantitative analysis of lesion morphology and texture features for diagnostic prediction in breast MRI.

Authors:  Ke Nie; Jeon-Hor Chen; Hon J Yu; Yong Chu; Orhan Nalcioglu; Min-Ying Su
Journal:  Acad Radiol       Date:  2008-12       Impact factor: 3.173

Review 6.  Quantification of heterogeneity as a biomarker in tumor imaging: a systematic review.

Authors:  Lejla Alic; Wiro J Niessen; Jifke F Veenland
Journal:  PLoS One       Date:  2014-10-20       Impact factor: 3.240

7.  Application of Artificial Neural Network Models in Segmentation and Classification of Nodules in Breast Ultrasound Digital Images.

Authors:  Karem D Marcomini; Antonio A O Carneiro; Homero Schiabel
Journal:  Int J Biomed Imaging       Date:  2016-06-16

8.  Application of computer-aided diagnosis in breast ultrasound interpretation: improvements in diagnostic performance according to reader experience.

Authors:  Ji-Hye Choi; Bong Joo Kang; Ji Eun Baek; Hyun Sil Lee; Sung Hun Kim
Journal:  Ultrasonography       Date:  2017-08-14
  8 in total

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