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Sujata V Ghate

Showing results (31-40 of 47) with videos related to

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Journal of the American College of Radiology : JACR|July 6, 2015
Does Breast Imaging Experience During Residency Translate Into Improved Initial Performance in Digital Breast Tomosynthesis?Jing Zhang, Lars J Grimm, Joseph Y Lo, et al.
British Journal of Cancer|July 24, 2018
A machine learning approach to radiogenomics of breast cancer: a study of 922 subjects and 529 DCE-MRI featuresAshirbani Saha, Michael R Harowicz, Lars J Grimm, et al.
AJR. American Journal of Roentgenology|April 24, 2015
Interobserver Variability Between Breast Imagers Using the Fifth Edition of the BI-RADS MRI LexiconLars J Grimm, Andy L Anderson, Jay A Baker, et al.
Journal of the American College of Surgeons|May 17, 2016
Can Vascular Patterns on Preoperative Magnetic Resonance Imaging Help Predict Skin Necrosis after Nipple-Sparing Mastectomy?Manisha Bahl, Irene J Pien, Kate J Buretta, et al.
Journal of the American College of Radiology : JACR|February 15, 2024
Feasibility of Prospective Assignment of Initial Method of Detection of Breast Cancer: A Multicenter Pilot StudySujata V Ghate, Debbie L Bennett, Sharp F Malak, et al.
Journal of Magnetic Resonance Imaging : JMRI|January 17, 2019
Machine learning-based prediction of future breast cancer using algorithmically measured background parenchymal enhancement on high-risk screening MRIAshirbani Saha, Lars J Grimm, Sujata V Ghate, et al.
AJR. American Journal of Roentgenology|July 24, 2015
Frequency of Malignancy and Imaging Characteristics of Probably Benign Lesions Seen at Breast MRILars J Grimm, Andy L Anderson, Jay A Baker, et al.
European Radiology|October 19, 2016
Suspicious breast calcifications undergoing stereotactic biopsy in women ages 70 and over: Breast cancer incidence by BI-RADS descriptorsLars J Grimm, David Y Johnson, Karen S Johnson, et al.
Medical Physics|June 2, 2011
Comparative performance of multiview stereoscopic and mammographic display modalities for breast lesion detectionLincoln J Webb, Ehsan Samei, Joseph Y Lo, et al.
European Journal of Radiology|July 27, 2015
Recurrence-free survival in breast cancer is associated with MRI tumor enhancement dynamics quantified using computer algorithmsMaciej A Mazurowski, Lars J Grimm, Jing Zhang, et al.
Pageof 5

Showing results (31-40 of 47) with videos related to

Sort By:
Pageof 5
Journal of the American College of Radiology : JACR|July 6, 2015
Does Breast Imaging Experience During Residency Translate Into Improved Initial Performance in Digital Breast Tomosynthesis?Jing Zhang, Lars J Grimm, Joseph Y Lo, et al.
British Journal of Cancer|July 24, 2018
A machine learning approach to radiogenomics of breast cancer: a study of 922 subjects and 529 DCE-MRI featuresAshirbani Saha, Michael R Harowicz, Lars J Grimm, et al.
AJR. American Journal of Roentgenology|April 24, 2015
Interobserver Variability Between Breast Imagers Using the Fifth Edition of the BI-RADS MRI LexiconLars J Grimm, Andy L Anderson, Jay A Baker, et al.
Journal of the American College of Surgeons|May 17, 2016
Can Vascular Patterns on Preoperative Magnetic Resonance Imaging Help Predict Skin Necrosis after Nipple-Sparing Mastectomy?Manisha Bahl, Irene J Pien, Kate J Buretta, et al.
Journal of the American College of Radiology : JACR|February 15, 2024
Feasibility of Prospective Assignment of Initial Method of Detection of Breast Cancer: A Multicenter Pilot StudySujata V Ghate, Debbie L Bennett, Sharp F Malak, et al.
Journal of Magnetic Resonance Imaging : JMRI|January 17, 2019
Machine learning-based prediction of future breast cancer using algorithmically measured background parenchymal enhancement on high-risk screening MRIAshirbani Saha, Lars J Grimm, Sujata V Ghate, et al.
AJR. American Journal of Roentgenology|July 24, 2015
Frequency of Malignancy and Imaging Characteristics of Probably Benign Lesions Seen at Breast MRILars J Grimm, Andy L Anderson, Jay A Baker, et al.
European Radiology|October 19, 2016
Suspicious breast calcifications undergoing stereotactic biopsy in women ages 70 and over: Breast cancer incidence by BI-RADS descriptorsLars J Grimm, David Y Johnson, Karen S Johnson, et al.
Medical Physics|June 2, 2011
Comparative performance of multiview stereoscopic and mammographic display modalities for breast lesion detectionLincoln J Webb, Ehsan Samei, Joseph Y Lo, et al.
European Journal of Radiology|July 27, 2015
Recurrence-free survival in breast cancer is associated with MRI tumor enhancement dynamics quantified using computer algorithmsMaciej A Mazurowski, Lars J Grimm, Jing Zhang, et al.
Pageof 5