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Radiomic machine learning for predicting prognostic biomarkers and molecular subtypes of breast cancer using tumor heterogeneity and angiogenesis properties on MRI

Authors
Lee, Ji YoungLee, Kwang-SigSeo, Bo KyoungCho, Kyu RanWoo, Ok HeeSong, Sung EunKim, Eun-KyungLee, Hye YoonKim, Jung SunCha, Jaehyung
Issue Date
Jan-2022
Publisher
SPRINGER
Keywords
Perfusion imaging; Biomarkers; tumor; Machine learning; Magnetic resonance imaging; Breast neoplasms
Citation
EUROPEAN RADIOLOGY, v.32, no.1, pp.650 - 660
Indexed
SCIE
SCOPUS
Journal Title
EUROPEAN RADIOLOGY
Volume
32
Number
1
Start Page
650
End Page
660
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/143146
DOI
10.1007/s00330-021-08146-8
ISSN
0938-7994
Abstract
Objectives To investigate machine learning approaches for radiomics-based prediction of prognostic biomarkers and molecular subtypes of breast cancer using quantification of tumor heterogeneity and angiogenesis properties on magnetic resonance imaging (MRI). Methods This prospective study examined 291 invasive cancers in 288 patients who underwent breast MRI at 3 T before treatment between May 2017 and July 2019. Texture and perfusion analyses were performed and a total of 160 parameters for each cancer were extracted. Relationships between MRI parameters and prognostic biomarkers were analyzed using five machine learning algorithms. Each model was built using only texture features, only perfusion features, or both. Model performance was compared using the area under the receiver-operating characteristic curve (AUC) and the DeLong method, and the importance of MRI parameters in prediction was derived. Results Texture parameters were associated with the status of hormone receptors, human epidermal growth factor receptor 2, and Ki67, tumor size, grade, and molecular subtypes (p < 0.002). Perfusion parameters were associated with the status of hormone receptors and Ki67, grade, and molecular subtypes (p < 0.003). The random forest model integrating texture and perfusion parameters showed the highest performance (AUC = 0.75). The performance of the random forest model was the best with a special scale filter of 0 (AUC = 0.80). The important parameters for prediction were texture irregularity (entropy) and relative extracellular extravascular space (V-e). Conclusions Radiomic machine learning that integrates tumor heterogeneity and angiogenesis properties on MRI has the potential to noninvasively predict prognostic factors of breast cancer.
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