A machine learning approach to radiogenomics of breast cancer: a study of 922 subjects and 529 DCE-MRI features

被引:196
作者
Saha, Ashirbani [1 ]
Harowicz, Michael R. [1 ]
Grimm, Lars J. [1 ]
Kim, Connie E. [1 ]
Ghate, Sujata V. [1 ]
Walsh, Ruth [1 ]
Mazurowski, Maciej A. [1 ,2 ,3 ]
机构
[1] Duke Univ, Sch Med, Dept Radiol, Durham, NC 22705 USA
[2] Duke Univ, Dept Elect & Comp Engn, Durham, NC USA
[3] Duke Univ, Med Phys Program, Durham, NC USA
基金
美国国家卫生研究院;
关键词
MOLECULAR SUBTYPES; IMAGING FEATURES; ENHANCEMENT DYNAMICS; RECURRENCE; ALGORITHMS; PARAMETERS; PHENOTYPES; RADIOMICS; PROGNOSIS; DEFINE;
D O I
10.1038/s41416-018-0185-8
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
BACKGROUND: Recent studies showed preliminary data on associations of MRI-based imaging phenotypes of breast tumours with breast cancer molecular, genomic, and related characteristics. In this study, we present a comprehensive analysis of this relationship. METHODS: We analysed a set of 922 patients with invasive breast cancer and pre-operative MRI. The MRIs were analysed by a computer algorithm to extract 529 features of the tumour and the surrounding tissue. Machine-learning-based models based on the imaging features were trained using a portion of the data (461 patients) to predict the following molecular, genomic, and proliferation characteristics: tumour surrogate molecular subtype, oestrogen receptor, progesterone receptor and human epidermal growth factor status, as well as a tumour proliferation marker (Ki-67). Trained models were evaluated on the set of the remaining 461 patients. RESULTS: Multivariate models were predictive of Luminal A subtype with AUC = 0.697 (95% CI: 0.647-0.746, p < .0001), triple negative breast cancer with AUC = 0.654 (95% CI: 0.589-0.727, p < .0001), ER status with AUC = 0.649 (95% CI: 0.591-0.705, p <.001), and PR status with AUC = 0.622 (95% CI: 0.569-0.674, p < .0001). Associations between individual features and subtypes we also found. CONCLUSIONS: There is a moderate association between tumour molecular biomarkers and algorithmically assessed imaging features.
引用
收藏
页码:508 / 516
页数:9
相关论文
共 33 条
[1]   Computerized Image Analysis for Identifying Triple-Negative Breast Cancers and Differentiating Them from Other Molecular Subtypes of Breast Cancer on Dynamic Contrast-enhanced MR Images: A Feasibility Study [J].
Agner, Shannon C. ;
Rosen, Mark A. ;
Englander, Sarah ;
Tomaszewski, John E. ;
Feldman, Michael D. ;
Zhang, Paul ;
Mies, Carolyn ;
Schnall, Mitchell D. ;
Madabhushi, Anant .
RADIOLOGY, 2014, 272 (01) :91-99
[2]  
[Anonymous], Pattern Recognition with Fuzzy Objective Function Algorithms, DOI 10.1007/978-1-4757-0450-1_3
[3]   Identification of Intrinsic Imaging Phenotypes for Breast Cancer Tumors: Preliminary Associations with Gene Expression Profiles [J].
Ashraf, Ahmed Bilal ;
Daye, Dania ;
Gavenonis, Sara ;
Mies, Carolyn ;
Feldman, Michael ;
Rosen, Mark ;
Kontos, Despina .
RADIOLOGY, 2014, 272 (02) :374-384
[4]   MRI Phenotype of Breast Cancer: Kinetic Assessment for Molecular Subtypes [J].
Blaschke, Eric ;
Abe, Hiroyuki .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2015, 42 (04) :920-924
[5]   Ki67 Index, HER2 Status, and Prognosis of Patients With Luminal B Breast Cancer [J].
Cheang, Maggie C. U. ;
Chia, Stephen K. ;
Voduc, David ;
Gao, Dongxia ;
Leung, Samuel ;
Snider, Jacqueline ;
Watson, Mark ;
Davies, Sherri ;
Bernard, Philip S. ;
Parker, Joel S. ;
Perou, Charles M. ;
Ellis, Matthew J. ;
Nielsen, Torsten O. .
JNCI-JOURNAL OF THE NATIONAL CANCER INSTITUTE, 2009, 101 (10) :736-750
[6]   Magnetic Resonance Imaging Features in Triple-Negative Breast Cancer: Comparison With Luminal and HER2-Overexpressing Tumors [J].
Costantini, Melania ;
Belli, Paolo ;
Distefano, Daniela ;
Bufi, Enida ;
Di Matteo, Marialuisa ;
Rinaldi, Pierluigi ;
Giuliani, Michela ;
Petrone, Gianluigi ;
Magno, Stefano ;
Bonomo, Lorenzo .
CLINICAL BREAST CANCER, 2012, 12 (05) :331-339
[7]   COMPARING THE AREAS UNDER 2 OR MORE CORRELATED RECEIVER OPERATING CHARACTERISTIC CURVES - A NONPARAMETRIC APPROACH [J].
DELONG, ER ;
DELONG, DM ;
CLARKEPEARSON, DI .
BIOMETRICS, 1988, 44 (03) :837-845
[8]   Radiomic analysis reveals DCE-MRI features for prediction of molecular subtypes of breast cancer [J].
Fan, Ming ;
Li, Hui ;
Wang, Shijian ;
Zheng, Bin ;
Zhang, Juan ;
Li, Lihua .
PLOS ONE, 2017, 12 (02)
[9]   Computational Approach to Radiogenomics of Breast Cancer: Luminal A and Luminal B Molecular Subtypes Are Associated With Imaging Features on Routine Breast MRI Extracted Using Computer Vision Algorithms [J].
Grimm, Lars J. ;
Zhang, Jing ;
Mazurowski, Maciej A. .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2015, 42 (04) :902-907
[10]   Can Breast Cancer Molecular Subtype Help to Select Patients for Preoperative MR Imaging? [J].
Grimm, Lars J. ;
Johnson, Karen S. ;
Marcom, P. Kelly ;
Baker, Jay A. ;
Soo, Mary S. .
RADIOLOGY, 2015, 274 (02) :352-358