The combined effect of mammographic texture and density on breast cancer risk: a cohort study

[1]  S. Cummings,et al.  Combining quantitative and qualitative breast density measures to assess breast cancer risk , 2017, Breast Cancer Research.

[2]  H. Hense,et al.  Digital mammography screening: sensitivity of the programme dependent on breast density , 2017, European Radiology.

[3]  C. Vachon,et al.  Erratum to: Mammographic texture and risk of breast cancer by tumor type and estrogen receptor status , 2017, Breast Cancer Research.

[4]  Nico Karssemeijer,et al.  Volumetric breast density affects performance of digital screening mammography , 2016, Breast Cancer Research and Treatment.

[5]  Oguzhan Alagoz,et al.  Tailoring Breast Cancer Screening Intervals by Breast Density and Risk for Women Aged 50 Years or Older: Collaborative Modeling of Screening Outcomes. , 2016, Annals of internal medicine.

[6]  E. Conant,et al.  Beyond breast density: a review on the advancing role of parenchymal texture analysis in breast cancer risk assessment , 2016, Breast Cancer Research.

[7]  K. Petersen,et al.  Mammographic density and structural features can individually and jointly contribute to breast cancer risk assessment in mammography screening: a case–control study , 2016, BMC Cancer.

[8]  Karla Kerlikowske,et al.  Comparison of Clinical and Automated Breast Density Measurements: Implications for Risk Prediction and Supplemental Screening. , 2016, Radiology.

[9]  Nico Karssemeijer,et al.  Unsupervised Deep Learning Applied to Breast Density Segmentation and Mammographic Risk Scoring , 2016, IEEE Transactions on Medical Imaging.

[10]  Patrick Brown,et al.  Digital Compared with Screen-Film Mammography: Measures of Diagnostic Accuracy among Women Screened in the Ontario Breast Screening Program. , 2016, Radiology.

[11]  Gillian D Sanders,et al.  Benefits and Harms of Breast Cancer Screening: A Systematic Review. , 2015, JAMA.

[12]  I. Jatoi Breast-Cancer Screening--Viewpoint of the IARC Working Group. , 2015, The New England journal of medicine.

[13]  Yuanjie Zheng,et al.  Parenchymal texture analysis in digital mammography: A fully automated pipeline for breast cancer risk assessment. , 2015, Medical physics.

[14]  K. Straif,et al.  Breast-cancer screening--viewpoint of the IARC Working Group. , 2015, The New England journal of medicine.

[15]  C. Lehman,et al.  Identifying women with dense breasts at high risk for interval cancer: a cohort study. , 2015, Annals of internal medicine.

[16]  Li Lan,et al.  Comparative analysis of image-based phenotypes of mammographic density and parenchymal patterns in distinguishing between BRCA1/2 cases, unilateral cancer cases, and controls , 2014, Journal of medical imaging.

[17]  Jingmei Li,et al.  Digital mammographic density and breast cancer risk: a case–control study of six alternative density assessment methods , 2014, Breast Cancer Research.

[18]  Susan M. Astley,et al.  Breast Cancer Risk Analysis Based on a Novel Segmentation Framework for Digital Mammograms , 2014, MICCAI.

[19]  N. Boyd,et al.  Mammographic features associated with interval breast cancers in screening programs , 2014, Breast Cancer Research.

[20]  M. Lux,et al.  Characterizing mammographic images by using generic texture features , 2012, Breast Cancer Research.

[21]  Nico Karssemeijer,et al.  Robust breast composition measurement - Volpara™ , 2010 .

[22]  Nico Karssemeijer,et al.  Robust Breast Composition Measurement - VolparaTM , 2010, Digital Mammography / IWDM.

[23]  Michael J. Carston,et al.  Texture Features from Mammographic Images and Risk of Breast Cancer , 2009, Cancer Epidemiology Biomarkers & Prevention.

[24]  Jean B. Cormack,et al.  Diagnostic accuracy of digital versus film mammography: exploratory analysis of selected population subgroups in DMIST. , 2008, Radiology.

[25]  Karla Kerlikowske,et al.  The mammogram that cried Wolfe. , 2007, The New England journal of medicine.

[26]  N. Boyd,et al.  Mammographic density and the risk and detection of breast cancer. , 2007, The New England journal of medicine.

[27]  V. McCormack,et al.  Breast Density and Parenchymal Patterns as Markers of Breast Cancer Risk: A Meta-analysis , 2006, Cancer Epidemiology Biomarkers & Prevention.

[28]  Bianca De Stavola,et al.  Mammographic Features and Subsequent Risk of Breast Cancer: A Comparison of Qualitative and Quantitative Evaluations in the Guernsey Prospective Studies , 2005, Cancer Epidemiology Biomarkers & Prevention.

[29]  Michael Brady,et al.  Mammographic Image Analysis , 1999, Computational Imaging and Vision.

[30]  W C Willett,et al.  Adjustment for total energy intake in epidemiologic studies. , 1997, The American journal of clinical nutrition.

[31]  N. Boyd,et al.  The quantitative analysis of mammographic densities. , 1994, Physics in medicine and biology.

[32]  Megan Holstein,et al.  Website , 2019, iPhone App Design for Entrepreneurs.

[33]  A. Arieno,et al.  Using Volumetric Breast Density to Quantify the Potential Masking Risk of Mammographic Density. , 2017, AJR. American journal of roentgenology.

[34]  Breast Screening Program , 2005 .

[35]  J. Higginson,et al.  International Agency for Research on Cancer. , 1968, WHO chronicle.