Radiomics-based machine learning analysis and characterization of breast lesions with multiparametric diffusion-weighted MR.

J Transl Med

Department of Research and Development, Shanghai United Imaging Intelligence Co., Ltd., Shanghai, China.

Published: October 2021

AI Article Synopsis

  • The study investigated how effective machine learning analysis of radiomics can be in diagnosing breast lesions using multiparametric diffusion-weighted imaging (DWI).
  • It involved analyzing 542 breast lesions and comparing the performance of various classifiers, revealing that the random forest classifier performed best in distinguishing between benign and malignant lesions.
  • The findings showed that radiomics features provided significantly better diagnostic accuracy compared to traditional mean diffusion metrics, suggesting that radiomics could enhance breast cancer detection.

Article Abstract

Background: This study aimed to evaluate the utility of radiomics-based machine learning analysis with multiparametric DWI and to compare the diagnostic performance of radiomics features and mean diffusion metrics in the characterization of breast lesions.

Methods: This retrospective study included 542 lesions from February 2018 to November 2018. One hundred radiomics features were computed from mono-exponential (ME), biexponential (BE), stretched exponential (SE), and diffusion-kurtosis imaging (DKI). Radiomics-based analysis was performed by comparing four classifiers, including random forest (RF), principal component analysis (PCA), L1 regularization (L1R), and support vector machine (SVM). These four classifiers were trained on a training set with 271 patients via ten-fold cross-validation and tested on an independent testing set with 271 patients. The diagnostic performance of the mean diffusion metrics of ME (mADC, mADC), BE (mD, mD, mf), SE (mDDC, mα), and DKI (mK, mD) were also calculated for comparison. The area under the receiver operating characteristic curve (AUC) was used to compare the diagnostic performance.

Results: RF attained higher AUCs than L1R, PCA and SVM. The AUCs of radiomics features for the differential diagnosis of breast lesions ranged from 0.80 (BE_D*) to 0.85 (BE_D). The AUCs of the mean diffusion metrics ranged from 0.54 (BE_mf) to 0.79 (ME_mADC). There were significant differences in the AUCs between the mean values of all diffusion metrics and radiomics features of AUCs (all P < 0.001) for the differentiation of benign and malignant breast lesions. Of the radiomics features computed, the most important sequence was BE_D (AUC: 0.85), and the most important feature was FO-10 percentile (Feature Importance: 0.04).

Conclusions: The radiomics-based analysis of multiparametric DWI by RF enables better differentiation of benign and malignant breast lesions than the mean diffusion metrics.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8543912PMC
http://dx.doi.org/10.1186/s12967-021-03117-5DOI Listing

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