Cancers (Feb 2023)

Prediction of the Malignancy of a Breast Lesion Detected on Breast Ultrasound: Radiomics Applied to Clinical Practice

  • Luca Nicosia,
  • Filippo Pesapane,
  • Anna Carla Bozzini,
  • Antuono Latronico,
  • Anna Rotili,
  • Federica Ferrari,
  • Giulia Signorelli,
  • Sara Raimondi,
  • Silvano Vignati,
  • Aurora Gaeta,
  • Federica Bellerba,
  • Daniela Origgi,
  • Paolo De Marco,
  • Giuseppe Castiglione Minischetti,
  • Claudia Sangalli,
  • Marta Montesano,
  • Simone Palma,
  • Enrico Cassano

DOI
https://doi.org/10.3390/cancers15030964
Journal volume & issue
Vol. 15, no. 3
p. 964

Abstract

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The study aimed to evaluate the performance of radiomics features and one ultrasound CAD (computer-aided diagnosis) in the prediction of the malignancy of a breast lesion detected with ultrasound and to develop a nomogram incorporating radiomic score and available information on CAD performance, conventional Breast Imaging Reporting and Data System evaluation (BI-RADS), and clinical information. Data on 365 breast lesions referred for breast US with subsequent histologic analysis between January 2020 and March 2022 were retrospectively collected. Patients were randomly divided into a training group (n = 255) and a validation test group (n = 110). A radiomics score was generated from the US image. The CAD was performed in a subgroup of 209 cases. The radiomics score included seven radiomics features selected with the LASSO logistic regression model. The multivariable logistic model incorporating CAD performance, BI-RADS evaluation, clinical information, and radiomic score as covariates showed promising results in the prediction of the malignancy of breast lesions: Area under the receiver operating characteristic curve, [AUC]: 0.914; 95% Confidence Interval, [CI]: 0.876–0.951. A nomogram was developed based on these results for possible future applications in clinical practice.

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