Artificial intelligence in the interpretation of breast cancer on MRI

被引:138
作者
Sheth, Deepa [1 ]
Giger, Maryellen L. [1 ]
机构
[1] Univ Chicago, Dept Radiol, 5841 S Maryland Ave,Rm P221,MC 2026, Chicago, IL 60637 USA
基金
美国国家卫生研究院;
关键词
artificial intelligence; MRI; breast imaging; computer-aided diagnosis; machine learning; deep learning; radiomics; BACKGROUND PARENCHYMAL ENHANCEMENT; COMPUTER-AIDED DETECTION; MAMMOGRAPHIC DENSITIES; CLUSTERED MICROCALCIFICATIONS; NEOADJUVANT CHEMOTHERAPY; FIBROGLANDULAR TISSUE; MOLECULAR SUBTYPES; IMAGING PHENOTYPES; TUMOR VOLUME; RISK;
D O I
10.1002/jmri.26878
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Advances in both imaging and computers have led to the rise in the potential use of artificial intelligence (AI) in various tasks in breast imaging, going beyond the current use in computer-aided detection to include diagnosis, prognosis, response to therapy, and risk assessment. The automated capabilities of AI offer the potential to enhance the diagnostic expertise of clinicians, including accurate demarcation of tumor volume, extraction of characteristic cancer phenotypes, translation of tumoral phenotype features to clinical genotype implications, and risk prediction. The combination of image-specific findings with the underlying genomic, pathologic, and clinical features is becoming of increasing value in breast cancer. The concurrent emergence of newer imaging techniques has provided radiologists with greater diagnostic tools and image datasets to analyze and interpret. Integrating an AI-based workflow within breast imaging enables the integration of multiple data streams into powerful multidisciplinary applications that may lead the path to personalized patient-specific medicine. In this article we describe the goals of AI in breast cancer imaging, in particular MRI, and review the literature as it relates to the current application, potential, and limitations in breast cancer. Technical Efficacy: Stage 3 J. Magn. Reson. Imaging 2019.
引用
收藏
页码:1310 / 1324
页数:15
相关论文
共 82 条
[11]   Mammographic density and breast cancer risk: current understanding and future prospects [J].
Boyd, Norman F. ;
Martin, Lisa J. ;
Yaffe, Martin J. ;
Minkin, Salomon .
BREAST CANCER RESEARCH, 2011, 13 (06)
[12]   Long-term Accuracy of Breast Cancer Risk Assessment Combining Classic Risk Factors and Breast Density [J].
Brentnall, Adam R. ;
Cuzick, Jack ;
Buist, Diana S. M. ;
Bowles, Erin J. Aiello .
JAMA ONCOLOGY, 2018, 4 (09)
[13]   MAMMOGRAPHIC FEATURES AND BREAST-CANCER RISK - EFFECTS WITH TIME, AGE, AND MENOPAUSE STATUS [J].
BYRNE, C ;
SCHAIRER, C ;
WOLFE, J ;
PAREKH, N ;
SALANE, M ;
BRINTON, LA ;
HOOVER, R ;
HAILE, R .
JOURNAL OF THE NATIONAL CANCER INSTITUTE, 1995, 87 (21) :1622-1629
[14]   Computerized breast lesions detection using kinetic and morphologic analysis for dynamic contrast-enhanced MRI [J].
Chang, Yeun-Chung ;
Huang, Yan-Hao ;
Huang, Chiun-Sheng ;
Chen, Jeon-Hor ;
Chang, Ruey-Feng .
MAGNETIC RESONANCE IMAGING, 2014, 32 (05) :514-522
[15]   Classification of breast mass lesions using model-based analysis of the characteristic kinetic curve derived from fuzzy c-means clustering [J].
Chang, Yeun-Chung ;
Huang, Yan-Hao ;
Huang, Chiun-Sheng ;
Chang, Pei-Kang ;
Chen, Jeon-Hor ;
Chang, Ruey-Feng .
MAGNETIC RESONANCE IMAGING, 2012, 20 (03) :312-322
[16]   Volumetric texture analysis of breast lesions on contrast-enhanced magnetic resonance images [J].
Chen, Weijie ;
Giger, Maryellen L. ;
Li, Hui ;
Bick, Ulrich ;
Newstead, Gillian M. .
MAGNETIC RESONANCE IN MEDICINE, 2007, 58 (03) :562-571
[17]   Automatic identification and classification of characteristic kinetic curves of breast lesions on DCE-MRI [J].
Chen, Weijie ;
Giger, Maryellen L. ;
Bick, Ulrich ;
Newstead, Gillian M. .
MEDICAL PHYSICS, 2006, 33 (08) :2878-2887
[18]   A fuzzy c-means (FCM)-based approach for computerized segmentation of breast lesions in dynamic contrast-enhanced MR images [J].
Chen, WJ ;
Giger, ML ;
Bick, U .
ACADEMIC RADIOLOGY, 2006, 13 (01) :63-72
[19]   Accuracy of Clinical Examination, Digital Mammogram, Ultrasound, and MRI in Determining Postneoadjuvant Pathologic Tumor Response in Operable Breast Cancer Patients [J].
Croshaw, Randal ;
Shapiro-Wright, Hilary ;
Svensson, Erik ;
Erb, Kathleen ;
Julian, Thomas .
ANNALS OF SURGICAL ONCOLOGY, 2011, 18 (11) :3160-3163
[20]   Fully automated detection of breast cancer in screening MRI using convolutional neural networks [J].
Dalmis, Mehmet Ufuk ;
Vreemann, Suzan ;
Kooi, Thijs ;
Mann, Ritse M. ;
Karssemeijer, Nico ;
Gubern-Merida, Albert .
JOURNAL OF MEDICAL IMAGING, 2018, 5 (01)