Literature DB >> 20650667

Computer-aided detection; the effect of training databases on detection of subtle breast masses.

Bin Zheng1, Xingwei Wang, Dror Lederman, Jun Tan, David Gur.   

Abstract

RATIONALE AND
OBJECTIVES: Lesion conspicuity is typically highly correlated with visual difficulty for lesion detection, and computer-aided detection (CAD) has been widely used as a "second reader" in mammography. Hence, increasing CAD sensitivity in detecting subtle cancers without increasing false-positive rates is important. The aim of this study was to investigate the effect of training database case selection on CAD performance in detecting low-conspicuity breast masses.
MATERIALS AND METHODS: A full-field digital mammographic image database that included 525 cases depicting malignant masses was randomly partitioned into three subsets. A CAD scheme was applied to detect all initially suspected mass regions and compute region conspicuity. Training samples were iteratively selected from two of the subsets. Four types of training data sets-(1) one including all available true-positive mass regions in the two subsets ("all"), (2) one including 350 randomly selected mass regions ("diverse"), (3) one including 350 high-conspicuity mass regions ("easy"), and (4) one including 350 low-conspicuity mass regions ("difficult")-were assembled. In each training data set, the same number of randomly selected false-positive regions as the true-positives were also included. Two classifiers, an artificial neural network (ANN) and a k-nearest neighbor (KNN) algorithm, were trained using each of the four training data sets and tested on all suspected regions in the remaining data set. Using a threefold cross-validation method, the performance changes of the CAD schemes trained using one of the four training data sets were computed and compared.
RESULTS: CAD initially detected 1025 true-positive mass regions depicted on 507 cases (97% case-based sensitivity) and 9569 false-positive regions (3.5 per image) in the entire database. Using the all training data set, CAD achieved the highest overall performance on the entire testing database. However, CAD detected the highest number of low-conspicuity masses when the difficult training data set was used for training. Results did agree for both ANN-based and KNN-based classifiers in all tests. Compared to the use of the all training data set, the sensitivity of the schemes trained using the difficult data set decreased by 8.6% and 8.4% for the ANN and KNN algorithm on the entire database, respectively, but the detection of low-conspicuity masses increased by 7.1% and 15.1% for the ANN and KNN algorithm at a false-positive rate of 0.3 per image.
CONCLUSIONS: CAD performance depends on the size, diversity, and difficulty level of the training database. To increase CAD sensitivity in detecting subtle cancer, one should increase the fraction of difficult cases in the training database rather than simply increasing the training data set size.
Copyright © 2010 AUR. Published by Elsevier Inc. All rights reserved.

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Year:  2010        PMID: 20650667      PMCID: PMC2952663          DOI: 10.1016/j.acra.2010.06.009

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


  26 in total

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Journal:  Med Phys       Date:  1999-10       Impact factor: 4.071

3.  Optimization of reference library used in content-based medical image retrieval scheme.

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4.  Classifier performance prediction for computer-aided diagnosis using a limited dataset.

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Journal:  Med Phys       Date:  2008-04       Impact factor: 4.071

5.  Screening mammography with computer-aided detection: prospective study of 12,860 patients in a community breast center.

Authors:  T W Freer; M J Ulissey
Journal:  Radiology       Date:  2001-09       Impact factor: 11.105

6.  Influence of computer-aided detection on performance of screening mammography.

Authors:  Joshua J Fenton; Stephen H Taplin; Patricia A Carney; Linn Abraham; Edward A Sickles; Carl D'Orsi; Eric A Berns; Gary Cutter; R Edward Hendrick; William E Barlow; Joann G Elmore
Journal:  N Engl J Med       Date:  2007-04-05       Impact factor: 91.245

7.  Performance of computer-aided detection applied to full-field digital mammography in detection of breast cancers.

Authors:  Arifa Sadaf; Pavel Crystal; Anabel Scaranelo; Thomas Helbich
Journal:  Eur J Radiol       Date:  2009-10-28       Impact factor: 3.528

8.  Improving performance of computer-aided detection scheme by combining results from two machine learning classifiers.

Authors:  Sang Cheol Park; Jiantao Pu; Bin Zheng
Journal:  Acad Radiol       Date:  2009-03       Impact factor: 3.173

9.  Evaluating computer-aided detection algorithms.

Authors:  Hong Jun Yoon; Bin Zheng; Berkman Sahiner; Dev P Chakraborty
Journal:  Med Phys       Date:  2007-06       Impact factor: 4.071

10.  Detection of breast cancer with full-field digital mammography and computer-aided detection.

Authors:  Juliette S The; Kathy J Schilling; Jeffrey W Hoffmeister; Euvondia Friedmann; Ryan McGinnis; Richard G Holcomb
Journal:  AJR Am J Roentgenol       Date:  2009-02       Impact factor: 3.959

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  11 in total

1.  A new and fast image feature selection method for developing an optimal mammographic mass detection scheme.

Authors:  Maxine Tan; Jiantao Pu; Bin Zheng
Journal:  Med Phys       Date:  2014-08       Impact factor: 4.071

2.  Applying a new quantitative image analysis scheme based on global mammographic features to assist diagnosis of breast cancer.

Authors:  Xuxin Chen; Abolfazl Zargari; Alan B Hollingsworth; Hong Liu; Bin Zheng; Yuchen Qiu
Journal:  Comput Methods Programs Biomed       Date:  2019-07-29       Impact factor: 5.428

3.  Computerized prediction of risk for developing breast cancer based on bilateral mammographic breast tissue asymmetry.

Authors:  Xingwei Wang; Dror Lederman; Jun Tan; Xiao Hui Wang; Bin Zheng
Journal:  Med Eng Phys       Date:  2011-04-08       Impact factor: 2.242

4.  Improving the performance of computer-aided detection of subtle breast masses using an adaptive cueing method.

Authors:  Xingwei Wang; Lihua Li; Weidong Xu; Wei Liu; Dror Lederman; Bin Zheng
Journal:  Phys Med Biol       Date:  2012-01-21       Impact factor: 3.609

5.  Applying a new computer-aided detection scheme generated imaging marker to predict short-term breast cancer risk.

Authors:  Seyedehnafiseh Mirniaharikandehei; Alan B Hollingsworth; Bhavika Patel; Morteza Heidari; Hong Liu; Bin Zheng
Journal:  Phys Med Biol       Date:  2018-05-15       Impact factor: 3.609

6.  Improving performance of computer-aided detection of masses by incorporating bilateral mammographic density asymmetry: an assessment.

Authors:  Xingwei Wang; Lihua Li; Weidong Xu; Wei Liu; Dror Lederman; Bin Zheng
Journal:  Acad Radiol       Date:  2011-12-14       Impact factor: 3.173

7.  Optimization of breast mass classification using sequential forward floating selection (SFFS) and a support vector machine (SVM) model.

Authors:  Maxine Tan; Jiantao Pu; Bin Zheng
Journal:  Int J Comput Assist Radiol Surg       Date:  2014-03-25       Impact factor: 2.924

Review 8.  Optimization of Network Topology in Computer-Aided Detection Schemes Using Phased Searching with NEAT in a Time-Scaled Framework.

Authors:  Maxine Tan; Jiantao Pu; Bin Zheng
Journal:  Cancer Inform       Date:  2014-10-13

9.  Assessing the predictive accuracy of lung cancer, metastases, and benign lesions using an artificial intelligence-driven computer aided diagnosis system.

Authors:  Kunwei Li; Kunfeng Liu; Yinghua Zhong; Mingzhu Liang; Peixin Qin; Haijun Li; Rongguo Zhang; Shaolin Li; Xueguo Liu
Journal:  Quant Imaging Med Surg       Date:  2021-08

10.  Can computer-aided diagnosis assist in the identification of prostate cancer on prostate MRI? a multi-center, multi-reader investigation.

Authors:  Sonia Gaur; Nathan Lay; Stephanie A Harmon; Sreya Doddakashi; Sherif Mehralivand; Burak Argun; Tristan Barrett; Sandra Bednarova; Rossanno Girometti; Ercan Karaarslan; Ali Riza Kural; Aytekin Oto; Andrei S Purysko; Tatjana Antic; Cristina Magi-Galluzzi; Yesim Saglican; Stefano Sioletic; Anne Y Warren; Leonardo Bittencourt; Jurgen J Fütterer; Rajan T Gupta; Ismail Kabakus; Yan Mee Law; Daniel J Margolis; Haytham Shebel; Antonio C Westphalen; Bradford J Wood; Peter A Pinto; Joanna H Shih; Peter L Choyke; Ronald M Summers; Baris Turkbey
Journal:  Oncotarget       Date:  2018-09-18
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