Computer-Aided Detection of Architectural Distortion in Prior Mammograms of Interval Cancer

Rangaraj M. Rangayyan1, Shantanu Banik1, J. E. Leo Desautels1
1Department of Electrical and Computer Engineering, Schulich School of Engineering, Calgary, AB, Canada, T2N 1N4

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Jemal A, Clegg LX, Ward E, Ries LAG, Wu X, Jamison PM, Wingo PA, Howe HL, Anderson RN, Edwards BK: Annual report to the nation on the status of cancer, 1975–2001, with a special feature regarding survival. Cancer 101(1):3–27, 2004

Blanks RG, Wallis MG, Moss SM: A comparison of cancer detection rates achieved by breast cancer screening programmes by number of readers, for one and two view mammography: Results from the UK National Health Service Breast Screening Programme. J Med Screen 5(4):195–201, 1998

Doi K: Computer-aided diagnosis in medical imaging: Historical review, current status and future potential. Comput Med Imaging Graph 31:198–211, 2007

Doi K: Diagnostic imaging over the last 50 years: Research and development in medical imaging science and technology. Phys Med Biol 51:R5–R27, 2006

Homer MJ: Mammographic Interpretation: A Practical Approach, 2nd edition. New York: McGraw-Hill, 1997

Knutzen AM, Gisvold JJ: Likelihood of malignant disease for various categories of mammographically detected, nonpalpable breast lesions. Mayo Clin Proc 68:454–460, 1993

Matsubara T, Ichikawa T, Hara T, Fujita H, Kasai S, Endo T, Iwase T: Novel method for detecting mammographic architectural distortion based on concentration of mammary gland. Int Congr Ser 1268:867–871, 2004

Baker JA, Rosen EL, Lo JY, Gimenez EI, Walsh R, Soo MS: Computer-aided detection (CAD) in screening mammography: Sensitivity of commercial CAD systems for detecting architectural distortion. Am J Roentgenol 181:1083–1088, 2003

Broeders MJM, Onland-Moret NC, Rijken HJTM, Hendriks JHCL, Verbeek ALM, Holland R: Use of previous screening mammograms to identify features indicating cases that would have a possible gain in prognosis following earlier detection. Eur J Cancer 39:1770–1775, 2003

Rangayyan RM, Ayres FJ: Gabor filters and phase portraits for the detection of architectural distortion in mammograms. Med Biol Eng Comput 44:883–894, 2006

Ayres FJ, Rangayyan RM: Detection of architectural distortion in mammograms via analysis of phase portraits and curvilinear structures. In: Hozman J, Kneppo P Eds. Proceedings of EMBEC’05: 3rd European Medical & Biological Engineering Conference, volume 11. Prague, Czech Republic, November 2005, pp 1768–1773

Ayres FJ, Rangayyan RM: Reduction of false positives in the detection of architectural distortion in mammograms by using a geometrically constrained phase portrait model. Int J Comput Assist Radiol Surg 1:361–369, 2007

Rangayyan RM, Ayres FJ, Desautels JEL: A review of computer-aided diagnosis of breast cancer: Toward the detection of subtle signs. J Franklin Inst 344:312–348, 2007

Tourassi GD, Delong DM, Floyd Jr, CE: A study on the computerized fractal analysis of architectural distortion in screening mammograms. Phys Med Biol 51(5):1299–1312, 2006

Sampat MP, Markey MK, Bovik AC: Measurement and detection of spiculated lesions. IEEE Southwest Symposium on Image Analysis and Interpretation. IEEE Computer Society, March 2006, pp 105–109

Rangayyan RM, Prajna S, Ayres FJ, Desautels JEL: Detection of architectural distortion in mammograms acquired prior to the detection of breast cancer using Gabor filters, phase portraits, fractal dimension, and texture analysis. Int J Comput Assist Radiol Surg 2(6):347–361, 2008

Guo Q, Shao J, Ruiz VF: Characterization and classification of tumor lesions using computerized fractal-based texture analysis and support vector machines in digital mammograms. Int J Comput Assist Radiol Surg 4(1):11–25, 2009

Tang J, Rangayyan RM, Xu J, Naqa IE, Yang Y: Computer-aided detection and diagnosis of breast cancer with mammography: Recent advances. IEEE Trans Inf Technol Biomed 13(2):236–251, 2009

van Dijck JAAM, Verbeek ALM, Hendriks JHCL, Holland R: The current detectability of breast cancer in a mammographic screening program. Cancer 72(6):1933–1938, 1993

Sameti M, Ward RK, Morgan-Parkes J, Palcic B: Image feature extraction in the last screening mammograms prior to detection of breast cancer. IEEE J Select Topics Signal Process 3(1):46–52, 2009

Rangayyan RM, Banik S, Prajna S, Desautels JEL: Detection of architectural distortion in prior mammograms of interval-cancer cases. Proceedings of the 23rd International Congress and Exhibition: Computer Assisted Radiology and Surgery, Berlin, Germany, June 2009, pp S171–S173

Banik S, Rangayyan RM, Desautels JEL: Detection of architectural distortion in prior mammograms of interval-cancer cases with neural networks. Proceedings of the 31st Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Minneapolis, MN, September 2009, pp 6667–6670

Ayres FJ, Rangayyan RM: Design and performance analysis of oriented feature detectors. J Electron Imaging 16(2):023007, 1–12, 2007

Ayres FJ, Rangayyan RM: Characterization of architectural distortion in mammograms. IEEE Eng Med Biol Mag 24(1):59–67, 2005

Anguiano E, Pancorbo MA, Aguilar M: Fractal characterization by frequency analysis: I. Surfaces. J Microsc 172:223–232, 1993

Aguilar M, Anguiano E, Pancorbo MA: Fractal characterization by frequency analysis: II. A new method. J Microsc 172:233–238, 1993

Haralick RM: Statistical and structural approaches to texture. Proc IEEE 67:786–804, 1979

Haralick RM, Shanmugam K, Dinstein I: Textural features for image classification. IEEE Trans Syst Man Cybern 3(6):610–622, 1973

American College of Radiology (ACR): Illustrated Breast Imaging Reporting and Data System (BI-RADS), 4th edition. Reston: American College of Radiology, 2003

Yankaskas BC, Schell MJ, Bird RE, Desrochers DA: Reassessment of breast cancers missed during routine screening mammography: A community based study. Am J Roentgenol 177:535–541, 2001

Burrell H, Evans A, Wilson A, Pinder S: False-negative breast screening assessment: What lessons we can learn? Clin Radiol 56:385–388, 2001

Burrell HC, Sibbering DM, Wilson ARM, Pinder SE, Evans AJ, Yeoman LJ, Elston CW, Ellis IO, Blamey RW, Robertson JFR: Screening interval breast cancers: Mammographic features and prognostic factors. Radiology 199(4):811–817, 1996

Rangayyan RM: Biomedical Image Analysis, Boca Raton: CRC, 2005

Mudigonda NR, Rangayyan RM: Texture flow-field analysis for the detection of architectural distortion in mammograms. In: Ramakrishnan AG Ed. Proceedings of Biovision, Bangalore, India, December 2001, pp 76–81

Ayres FJ, Rangayyan RM: Characterization of architectural distortion in mammograms. Proceedings of the 25th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (CD-ROM), Cancún, Mexico, September 2003, pp 886–889

Suckling J, Parker J, Dance DR, Astley S, Hutt I, Boggis CRM, Ricketts I, Stamakis E, Cerneaz N, Kok S-L, Taylor P, Betal D, Savage J: The Mammographic Image Analysis Society digital mammogram database. In: Gale AG, Astley SM, Dance DD, Cairns AY Eds. Digital Mammography: Proceedings of the 2nd International Workshop on Digital Mammography. York: Elsevier, 1994, pp. 375–378

Matsubara T, Ichikawa T, Hara T, Fujita H, Kasai S, Endo T, Iwase T: Automated detection methods for architectural distortions around skinline and within mammary gland on mammograms. In: Lemke HU, Vannier MW, Inamura K, Farman AG, Doi K, Reiber JHC Eds. Proceedings of the 17th International Congress and Exhibition on Computer Assisted Radiology and Surgery (CARS2003). London: Elsevier, 2003, pp. 950–955

Ichikawa T, Matsubara T, Hara T, Fujita H, Endo T, Iwase T: Automated detection method for architectural distortion areas on mammograms based on morphological processing and surface analysis. In: Fitzpatrick JM, Sonka M Eds. Proceedings of SPIE Medical Imaging 2004: Image Processing. San Diego: SPIE, 2004, pp. 920–925

Hara T, Makita T, Matsubara T, Fujita H, Inenaga Y, Endo T, Iwase T: Automated detection method for architectural distortion with spiculation based on distribution assessment of mammary gland on mammogram. In: Astley SM, Brady M, Rose C, Zwiggelaar R Eds. Digital Mammography/IWDM, volume 4046 of Lecture Notes in Computer Science Manchester, UK, June 2006, pp 370–375,

Matsubara T, Hara T, Fujita H, Endo T, Iwase T: Automated detection method for mammographic spiculated architectural distortion based on surface analysis. Proceedings of the 22nd International Congress and Exhibition on Computer Assisted Radiology and Surgery (CARS2008), volume 3(1), Barcelona, Spain, June 2008, pp S176–S177

Guo Q, Shao J, Ruiz V: Investigation of support vector machine for the detection of architectural distortion in mammographic images. J Phys: Conf Ser 15:88–94, 2005

Sampat MP, Bovik AC: Detection of spiculated lesions in mammograms. Proceedings of the 25th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (CD-ROM), Cancún, Mexico, September 2003, pp 810–813

Sampat MP, Whitman GJ, Markey MK, Bovik AC: Evidence based detection of spiculated masses and architectural distortion. In: Fitzpatrick JM, Reinhardt JM Eds. Proceedings of SPIE Medical Imaging 2005: Image Processing, volume 5747, San Diego, CA, 2005, pp 26–37

Özekes S, Osman O, Çamurcu AY: Computerized detection of architectural distortions in digital mammograms. Proceedings of the 19th International Conference on Computer Assisted Radiology and Surgery (CARS 2005), volume 1281, Berlin, Germany, 2005, p 1396

Eltonsy N, Tourassi G, Elmaghraby A: Investigating performance of a morphology-based CAD scheme in detecting architectural distortion in screening mammograms. In: Lemke HU, Inamura K, Doi K, Vannier MW, Farman AG Eds. Proceedings of the 20th International Congress and Exhibition on Computer Assisted Radiology and Surgery (CARS 2006). Osaka: Springer, 2006, pp. 336–338

Nakayama R, Watanabe R, Kawamura T, Takada T, Yamamoto K, Takeda K: Computer-aided diagnosis scheme for detection of architectural distortion on mammograms using multiresolution analysis. Proceedings of the 21st International Congress and Exhibition on Computer Assisted Radiology and Surgery (CARS 2008), volume 3(1), Barcelona, Spain, June 2008, page S418–S419

Nemoto M, Honmura S, Shimizu A, Furukawa D, Kobatake H, Nawano S: A pilot study of architectural distortion detection in mammograms based on characteristics of line shadows. Int J Comput Assist Radiol Surg 4(1):27–36, 2009

Burhenne LJW, Wood SA, D’Orsi CJ, Feig SA, Kopans DB, O’Shaughnessy KF, Sickles EA, Tabar L, Vyborny CJ, Castellino RA: Potential contribution of computer-aided detection to the sensitivity of screening mammography. Radiology 215(2):554–562, 2000

Evans WP, Burhenne LJW, Laurie L, O’Shaughnessy KF, Castellino RA: Invasive lobular carcinoma of the breast: Mammographic characteristics and computer-aided detection. Radiology 225(1):182–189, 2002

Birdwell RL, Ikeda DM, O’Shaughnessy KF, Sickles EA: Mammographic characteristics of 115 missed cancers later detected with screening mammography and the potential utility of computer-aided detection. Radiology 219(1):192–202, 2001

Bird RE, Wallace TW, Yankaskas BC: Analysis of cancers missed at screening mammography. Radiology 184(3):613–617, 1992

Sameti M, Morgan-Parkes J, Ward RK, Palcic B: Classifying image features in the last screening mammograms prior to detection of a malignant mass. In: Karssemeijer N, Thijssen M, Hendriks J, van Erning L Eds. Proceedings of the 4th International Workshop on Digital Mammography. Nijmegen, The Netherlands, 1998 pp 127–134

Burnside ES, Sickles EA, Sohlich RE, Dee KE: Differential value of comparison with previous examinations in diagnostic versus screening mammography. Am J Roentgenol 179:1173–1177, 2002

Sumkin JH, Holbert BL, Herrmann JS, Hakim CA, Ganott MA, Poller WR, Shah R, Hardesty LA, Gur D: Optimal reference mammography: A comparison of mammograms obtained 1 and 2 years before the present examination. Am J Roentgenol 180:343–346, 2003

Varela C, Karssemeijer N, Hendriks JHCL, Holland R: Use of prior mammograms in the classification of benign and malignant masses. Eur J Radiol 56:248–255, 2005

Zheng B, Good WF, Armfield DR, Cohen C, Hertzberg T, Sumkin JH, Gur D: Performance change of mammographic CAD schemes optimized with most-recent and prior image databases. Acad Radiol 10:283–288, 2003

Petrick N, Chan HP, Sahiner B, Helvie MA, Paquerault S: Evaluation of an automated computer-aided diagnosis system for the detection of masses on prior mammograms. Proceedings of SPIE Volume 3979, Medical Imaging 2000: Image Processing, 2000, pp 967–973

Garvican L, Field S: A pilot evaluation of the R2 Image Checker System and users’ response in the detection of interval breast cancers on previous screening films. Clin Radiol 56:833–837, 2001

Ikeda DM, Birdwell RL, O’Shaughnessy KF, Sickles EA, Brenner RJ: Computer-aided detection output on 172 subtle findings on normal mammograms previously obtained in women with breast cancer detected at follow-up screening mammography. Radiology 230:811–819, 2004

Ciatto S, Del Turco MR, Burke P, Visioli C, Paci E, Zappa M: Comparison of standard and double reading and computer-aided detection (CAD) of interval cancers at prior negative screening mammograms: Blind review. Br J Cancer 89:1645–1649, 2003

Moberg K, Bjurstam N, Wilczek B, Rostgård L, Egge E, Muren C: Computer assisted detection of interval breast cancers. Eur J Radiol 39:104–110, 2001

Majid AS, de Paredes ES, Doherty RD, Sharma NR, Salvador X: Missed breast carcinoma: Pitfalls and pearls. RadioGraphics 23:881–895, 2003

Otsu N: A threshold selection method from gray-level histograms. IEEE Trans Syst Man Cybern 9(1):62–66, 1979

Gonzalez RC, Woods RE: Digital Image Processing, 2nd edition. Upper Saddle River: Prentice-Hall, 2002

Gabor D: Theory of communication. J Inst Electr Eng 93:429–457, 1946

Ferrari RJ, Rangayyan RM, Desautels JEL, Frère AF: Analysis of asymmetry in mammograms via directional filtering with Gabor wavelets. IEEE Trans Med Imag 20(9):953–964, 2001

Manjunath BS, Ma WY: Texture features for browsing and retrieval of image data. IEEE Trans Pattern Anal Mach Intell 18(8):837–842, 1996

Rao AR: A Taxonomy for Texture Description and Identification, New York: Springer, 1990

Rao AR, Jain RC: Computerized flow field analysis: Oriented texture fields. IEEE Trans Pattern Anal Mach Intell 14(7):693–709, 1992

Peitgen H-O, Jürgens H, Saupe D: Chaos and Fractals: New Frontiers of Science, 2nd edition. New York: Springer, 2004

Rangayyan RM, Nguyen TM: Fractal analysis of contours of breast masses in mammograms. J Digit Imaging 20(3):223–237, 2007

Bak P, Tang C, Wiesenfeld K: Self-organized criticality: An explanation of 1/f noise. Am Phys Soc 59:381–384, 1987

Lowen SB, Teich MC: Fractal renewal processes generate 1/f noise. Am Phys Soc 47:992–1001, 1993

Billock VA, De Guzman GC, Kelso JAS: Fractal time and 1/f spectra in dynamic images and human vision. Physica D: Nonlinear Phenomena 148:136–146, 2001

Fortin C, Kumaresan R, Ohley W: Fractal dimension in the analysis of medical images. IEEE Eng Med Biol Mag 11:65–71, June 1992

Duda RO, Hart PE, Stork DG: Pattern Classification, 2nd edition. New York: Wiley-Interscience, 2001

Sahiner B, Chan H-P, Petrick N, Wagner RF, Hadjiiski L: Feature selection and classifier performance in computer-aided diagnosis: The effect of finite sample size. Med Phys 27(7):1509–1522, 2000

Nandi RJ, Nandi AK, Rangayyan RM, Scutt D: Classification of breast masses in mammograms using genetic programming and feature selection. Med Biol Eng Comput 44:683–694, 2006

Ware JH, Mosteller F, Delgado F, Donnelly C, Ingelfinger JA: P values. In: Bailar III, JC, Mosteller F Eds. Medical Uses of Statistics. 2nd edition. Boston: NEJM Books, 1992, pp. 181–200

Metz CE: ROC methodology in radiologic imaging. Invest Radiol 21:720–733, 1986

Metz CE: Basic principles of ROC analysis. Semin Nucl Med VIII(4):283–298, 1978

Mu T, Nandi AK, Rangayyan RM: Classification of breast masses using selected shape, edge-sharpness, and texture features with linear and kernel-based classifiers. J Digit Imaging 21(2):153–169, 2008

Press WH, Teukolsky SA, Vetterling WT, Flannery BP: Numerical Recipes in C, 2nd edition. New Delhi: Cambridge University Press, 1988

Bornefalk H, Hermansson AB: On the comparison of FROC curves in mammography CAD systems. Med Phys 32(2):412–417, 2005

Miller H: The FROC curve: A representation of the observer’s performance for the method of free response. J Acoust Soc Am 46(6B):1473–1476, 1969

Ramsey FL, Schafer DW: The Statistical Sleuth: A Course in Methods of Data Analysis, Belmont: Duxbury Press, 1997

Schalkoff R: Pattern Recognition: Statistical, Structural and Neural Approaches, New York: Wiley, 1992

Haykin S: Neural Networks: A Comprehensive Foundation, 2nd edition. Upper Saddle River: Prentice Hall, 1999

Wasserman PD: Advanced Methods in Neural Computing, New York: Van Nostrand Reinhold, 1993

Vapnik V: Statistical Learning Theory, New York: Wiley, 1998

Schölkopf B, Smola AJ: Learning with Kernels—Support Vector Machines, Regularization, Optimization, and Beyond, Cambridge: MIT Press, 2002

Fransens R, Prins JD, Gool LV: SVM-based nonparametric discriminant analysis, an application to face detection. Proceedings of the Ninth IEEE International Conference on Computer Vision (ICCV 2003), volume 2. IEEE Computer Society, October 2003, pages 1289–1296

Burges CJC: A tutorial on support vector machines for pattern recognition. Data Min Knowl Discov 2(2):121–167, 1998

Alto H, Rangayyan RM, Paranjape RB, Desautels JEL, Bryant H: An indexed atlas of digital mammograms for computer-aided diagnosis of breast cancer. Ann Télécommun 58(5–6):820–835, 2003

Alberta Cancer Board, Alberta, Canada. Screen Test: Alberta Program for the Early Detection of Breast Cancer—2001/03 Biennial Report, 2004. http://www.cancerboard.ab.ca/screentest

ROCKIT: Kurt Rossmann Laboratories for Radiologic Image Research. ROC Software. http://www-radiology.uchicago.edu/krl/roc_soft6.htm . Last accessed on July 20, 2009

Kundel HL, Berbaum K, Dorfman D, Gur D, Metz CE, Swensson RG Eds. Journal of the ICRU. ICRU Report 79: Receiver Operating Characteristic Analysis in Medical Imaging, volume 8(1), Chapter 5. Extensions to Conventional ROC Methodology: LROC, FROC, and AFROC. Oxford: Oxford University Press, April 2008, pp 31–35

Chakraborty DP: Statistical power in observer-performance studies: Comparison of the receiver operating characteristic and free-response methods in tasks involving localization. Acad Radiol 9(2):147–156, 2002

Ferrari RJ, Rangayyan RM, Desautels JEL, Borges RA, Frère AF: Automatic identification of the pectoral muscle in mammograms. IEEE Trans Med Imag 23:232–245, 2004

Ferrari RJ, Rangayyan RM, Borges RA, Frère AF: Segmentation of the fibroglandular disc in mammograms using Gaussian mixture modeling. Med Biol Eng Comput 42:378–387, 2004

Li J, Yau WY, Wang H: Constrained nonlinear models of fingerprint orientations with prediction. Pattern Recogn 39(1):102–114, 2006

Kinsner W: A unified approach to fractal dimensions. Proceedings of the Fourth IEEE International Conference on Cognitive Informatics (ICCI), Irvine, CA, August 2005. IEEE Computer Society, pp 58–72