Abstract

PurposeWe aimed to assess the additional value of a radiomics-based signature for distinguishing between benign and malignant non-mass enhancement lesions (NMEs) on dynamic contrast-enhanced breast magnetic resonance imaging (breast DCE-MRI).MethodsIn this retrospective study, 232 patients with 247 histopathologically confirmed NMEs (malignant: 191; benign: 56) were enrolled from December 2017 to October 2020 as a primary cohort to develop the discriminative models. Radiomic features were extracted from one post-contrast phase (around 90s after contrast injection) of breast DCE-MRI images. The least absolute shrinkage and selection operator (LASSO) regression model was adapted to select features and construct the radiomics-based signature. Based on clinical and routine MR features, radiomics features, and combined information, three discriminative models were built using multivariable logistic regression analyses. In addition, an independent cohort of 72 patients with 72 NMEs (malignant: 50; benign: 22) was collected from November 2020 to April 2021 for the validation of the three discriminative models. Finally, the combined model was assessed using nomogram and decision curve analyses.ResultsThe routine MR model with two selected features of the time-intensity curve (TIC) type and MR-reported axillary lymph node (ALN) status showed a high sensitivity of 0.942 (95%CI, 0.906 - 0.974) and low specificity of 0.589 (95%CI, 0.464 - 0.714). The radiomics model with six selected features was significantly correlated with malignancy (P<0.001 for both primary and validation cohorts). Finally, the individual combined model, which contained factors including TIC types and radiomics signatures, showed good discrimination, with an acceptable sensitivity of 0.869 (95%CI, 0.816 to 0.916), improved specificity of 0.839 (95%CI, 0.750 to 0.929). The nomogram was applied to the validation cohort, reaching good discrimination, with a sensitivity of 0.820 (95%CI, 0.700 to 0.920), specificity of 0.864 (95%CI,0.682 to 1.000). The combined model was clinically helpful, as demonstrated by decision curve analysis.ConclusionsOur study added radiomics signatures into a conventional clinical model and developed a radiomics nomogram including radiomics signatures and TIC types. This radiomics model could be used to differentiate benign from malignant NMEs in patients with suspicious lesions on breast MRI.

Highlights

  • According to the American College of Radiology (ACR) BIRADS® Atlas, 5th edition [1], breast lesions with abnormal enhancement variables on dynamic contrast-enhanced breast magnetic resonance imaging include foci, masses, and non-mass enhancement lesions (NMEs)

  • Some studies have demonstrated that morphologic assessments are more useful than kinetic assessments in distinguishing NMEs [13,14,15], while other studies have reported that morphologic assessments have a relatively low specificity and sensitivity to distinguish NMEs [16,17,18]

  • We developed and validated a nomogram that combined radiomics and conventional analytic clinical factors to evaluate the additional value of radiomics in differentiating benign from malignant NMEs

Read more

Summary

Introduction

According to the American College of Radiology (ACR) BIRADS® Atlas, 5th edition [1], breast lesions with abnormal enhancement variables on dynamic contrast-enhanced breast magnetic resonance imaging (breast DCE-MRI) include foci, masses, and non-mass enhancement lesions (NMEs). Distinguishing benign and malignant breast lesions on DCE-MRI is challenging, especially when NMEs are present [3]. NMEs remain a diagnostic challenge for radiologists despite the frequent attempts to distinguish benign from malignant NMEs using different methodologies, including conventional morphologic comparisons [6,7,8] and the measurement of different parameters, such as ADC values and the initial slope of kinetic curves [9,10,11]. A meta-analysis [20] showed heterogeneity among studies with sensitivities from 0% to 100% and specificities from 48% to 100%. These factors underscore the complexity of the diagnostic phase and simultaneously present a therapeutic challenge. Idiopathic granulomatous mastitis, a benign inflammatory disease, can mimic breast cancer, both clinically and radiologically [21, 22]

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call