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Published in: European Radiology 6/2022

19-01-2022 | Magnetic Resonance Imaging | Breast

MRI-based radiomics analysis for differentiating phyllodes tumors of the breast from fibroadenomas

Authors: Mitsuteru Tsuchiya, Takayuki Masui, Kazuma Terauchi, Takahiro Yamada, Motoyuki Katyayama, Shintaro Ichikawa, Yoshifumi Noda, Satoshi Goshima

Published in: European Radiology | Issue 6/2022

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Abstract

Objectives

To evaluate the diagnostic performance of MRI-based radiomics model for differentiating phyllodes tumors of the breast from fibroadenomas.

Methods

This retrospective study included 88 patients (32 with phyllodes tumors and 56 with fibroadenomas) who underwent MRI. Radiomic features were extracted from T2-weighted image, pre-contrast T1-weighted image, and the first-phase and late-phase dynamic contrast-enhanced MRIs. To create stable machine learning models and balanced classes, data augmentation was performed. A least absolute shrinkage and selection operator (LASSO) regression was performed to select features and build the radiomics model. A radiological model was constructed from conventional MRI features evaluated by radiologists. A combined model was constructed using both radiomics features and radiological features. Machine learning classifications were done using support vector machine, extreme gradient boosting, and random forest. The area under the receiver operating characteristic (ROC) curve (AUC) was computed to assess the performance of each model.

Results

Among 1070 features, the LASSO logistic regression selected 35 features. Among three machine learning classifiers, support vector machine had the best performance. Compared to the radiological model (AUC: 0.77 ± 0.11), the radiomics model (AUC: 0.96 ± 0.04) and combined model (0.97 ± 0.03) had significantly improved AUC values (both p < 0.01) in the validation set. The combined model had a relatively higher AUC than that of the radiomics model in the validation set, but this was not significantly different (p = 0.391).

Conclusions

Radiomics analysis based on MRI showed promise for discriminating phyllodes tumors from fibroadenomas.

Key Points

The radiomics model and the combined model were superior to the radiological model for differentiating phyllodes tumors from fibroadenomas.
The SVM classifier performed best in the current study.
MRI-based radiomics model could help accurately differentiate phyllodes tumors from fibroadenomas.
Appendix
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Metadata
Title
MRI-based radiomics analysis for differentiating phyllodes tumors of the breast from fibroadenomas
Authors
Mitsuteru Tsuchiya
Takayuki Masui
Kazuma Terauchi
Takahiro Yamada
Motoyuki Katyayama
Shintaro Ichikawa
Yoshifumi Noda
Satoshi Goshima
Publication date
19-01-2022
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 6/2022
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-021-08510-8

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