Abstract

We developed a machine learning model based on radiomics to predict the BI-RADS category of ultrasound-detected suspicious breast lesions and support medical decision-making towards short-interval follow-up versus tissue sampling. From a retrospective 2015–2019 series of ultrasound-guided core needle biopsies performed by four board-certified breast radiologists using six ultrasound systems from three vendors, we collected 821 images of 834 suspicious breast masses from 819 patients, 404 malignant and 430 benign according to histopathology. A balanced image set of biopsy-proven benign (n = 299) and malignant (n = 299) lesions was used for training and cross-validation of ensembles of machine learning algorithms supervised during learning by histopathological diagnosis as a reference standard. Based on a majority vote (over 80% of the votes to have a valid prediction of benign lesion), an ensemble of support vector machines showed an ability to reduce the biopsy rate of benign lesions by 15% to 18%, always keeping a sensitivity over 94%, when externally tested on 236 images from two image sets: (1) 123 lesions (51 malignant and 72 benign) obtained from two ultrasound systems used for training and from a different one, resulting in a positive predictive value (PPV) of 45.9% (95% confidence interval 36.3–55.7%) versus a radiologists’ PPV of 41.5% (p < 0.005), combined with a 98.0% sensitivity (89.6–99.9%); (2) 113 lesions (54 malignant and 59 benign) obtained from two ultrasound systems from vendors different from those used for training, resulting into a 50.5% PPV (40.4–60.6%) versus a radiologists’ PPV of 47.8% (p < 0.005), combined with a 94.4% sensitivity (84.6–98.8%). Errors in BI-RADS 3 category (i.e., assigned by the model as BI-RADS 4) were 0.8% and 2.7% in the Testing set I and II, respectively. The board-certified breast radiologist accepted the BI-RADS classes assigned by the model in 114 masses (92.7%) and modified the BI-RADS classes of 9 breast masses (7.3%). In six of nine cases, the model performed better than the radiologist did, since it assigned a BI-RADS 3 classification to histopathology-confirmed benign masses that were classified as BI-RADS 4 by the radiologist.

Highlights

  • Ultrasound imaging is a key tool in breast care

  • We developed a machine learning model based on radiomics to predict the Breast Imaging Reporting and Data System (BI-RADS) category of ultrasound-detected suspicious breast lesions and support medical decision-making towards short-interval follow-up versus tissue sampling

  • From a retrospective 2015–2019 series of ultrasound-guided core needle biopsies performed by four board-certified breast radiologists using six ultrasound systems from three vendors, we collected 821 images of 834 suspicious breast masses from 819 patients, 404 malignant and 430 benign according to histopathology

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Summary

Introduction

Ultrasound imaging is a key tool in breast care. Indications to breast ultrasound, recently summarized by the European Society of Breast Imaging (EUSOBI) [1], include palpable lump; axillary adenopathy; first approach for clinical abnormalities in women younger than 40 years of age and in pregnant or lactating women; suspicious abnormalities revealed at mammography or contrast-enhanced magnetic resonance imaging (MRI); suspicious nipple discharge; skin retraction; recent nipple inversion; breast inflammation; abnormalities at the site of intervention after breast-conserving surgery or mastectomy; abnormalities in the presence of oncoplastic or aesthetic breast implants. The European Society of Breast Cancer Specialists (EUSOMA) includes, among the mandatory quality indicators in breast cancer care [4], the assessment of the “proportion of women with breast cancer (invasive or in situ) who had a preoperative histologically or cytologically confirmed malignant diagnosis (B5 or C5)”. For this indicator, EUSOMA requires a “minimum standard” rate of 85% and a target rate of 90% [4]. New approaches aiming at reducing the ultrasoundguided biopsy rate of benign breast lesions must take into account such a challenging clinical context

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