Characterizing Sentinel Lymph Node Status in Breast Cancer Patients Using a Deep-Learning Model Compared With Radiologists' Analysis of Grayscale Ultrasound and Lymphosonography.

Journal: Ultrasound quarterly
PMID:

Abstract

The objective of the study was to use a deep learning model to differentiate between benign and malignant sentinel lymph nodes (SLNs) in patients with breast cancer compared to radiologists' assessments.Seventy-nine women with breast cancer were enrolled and underwent lymphosonography and contrast-enhanced ultrasound (CEUS) examination after subcutaneous injection of ultrasound contrast agent around their tumor to identify SLNs. Google AutoML was used to develop image classification model. Grayscale and CEUS images acquired during the ultrasound examination were uploaded with a data distribution of 80% for training/20% for testing. The performance metric used was area under precision/recall curve (AuPRC). In addition, 3 radiologists assessed SLNs as normal or abnormal based on a clinical established classification. Two-hundred seventeen SLNs were divided in 2 for model development; model 1 included all SLNs and model 2 had an equal number of benign and malignant SLNs. Validation results model 1 AuPRC 0.84 (grayscale)/0.91 (CEUS) and model 2 AuPRC 0.91 (grayscale)/0.87 (CEUS). The comparison between artificial intelligence (AI) and readers' showed statistical significant differences between all models and ultrasound modes; model 1 grayscale AI versus readers, P = 0.047, and model 1 CEUS AI versus readers, P < 0.001. Model 2 r grayscale AI versus readers, P = 0.032, and model 2 CEUS AI versus readers, P = 0.041.The interreader agreement overall result showed κ values of 0.20 for grayscale and 0.17 for CEUS.In conclusion, AutoML showed improved diagnostic performance in balance volume datasets. Radiologist performance was not influenced by the dataset's distribution.

Authors

  • Priscilla Machado
    Department of Radiology, Thomas Jefferson University, Philadelphia, PA.
  • Aylin Tahmasebi
    Department of Radiology, Thomas Jefferson University, Philadelphia, PA, USA.
  • Samuel Fallon
    Sidney Kimmel Medical College, Thomas Jefferson University, Philadelphia, PA.
  • Ji-Bin Liu
    Department of Radiology, Thomas Jefferson University, Philadelphia, PA, USA.
  • Basak E Dogan
    The University of Texas Southwestern Medical Center, Department of Radiology, Dallas, TX, USA.
  • Laurence Needleman
    Department of Radiology, Thomas Jefferson University, Philadelphia, PA.
  • Melissa Lazar
    Department of Surgery, Thomas Jefferson University, Philadelphia, PA.
  • Alliric I Willis
    Department of Surgery, Thomas Jefferson University, Philadelphia, PA.
  • Kristin Brill
    Department of Surgery, Thomas Jefferson University, Philadelphia, PA.
  • Susanna Nazarian
    Department of Surgery, Thomas Jefferson University, Philadelphia, PA.
  • Adam Berger
    Chief, Department of Melanoma and Soft Tissue Surgical Oncology, Rutgers University, New Brunswick, NJ.
  • Flemming Forsberg
    Department of Radiology, Thomas Jefferson University, Philadelphia, PA.