Improving B-mode ultrasound diagnostic performance for focal liver lesions using deep learning: A multicentre study

EBioMedicine. 2020 Jun:56:102777. doi: 10.1016/j.ebiom.2020.102777. Epub 2020 Apr 28.

Abstract

Background: The diagnosis performance of B-mode ultrasound (US) for focal liver lesions (FLLs) is relatively limited. We aimed to develop a deep convolutional neural network of US (DCNN-US) for aiding radiologists in classification of malignant from benign FLLs.

Materials and methods: This study was conducted in 13 hospitals and finally 2143 patients with 24,343 US images were enrolled. Patients who had non-cystic FLLs with pathological results were enrolled. The FLLs from 11 hospitals were randomly divided into training and internal validations (IV) cohorts with a 4:1 ratio for developing and evaluating DCNN-US. Diagnostic performance of the model was verified using external validation (EV) cohort from another two hospitals. The diagnosis value of DCNN-US was compared with that of contrast enhanced computed tomography (CT)/magnetic resonance image (MRI) and 236 radiologists, respectively.

Findings: The AUC of ModelLBC for FLLs was 0.924 (95% CI: 0.889-0.959) in the EV cohort. The diagnostic sensitivity and specificity of ModelLBC were superior to 15-year skilled radiologists (86.5% vs 76.1%, p = 0.0084 and 85.5% vs 76.9%, p = 0.0051, respectively). Accuracy of ModelLBC was comparable to that of contrast enhanced CT (both 84.7%) but inferior to contrast enhanced MRI (87.9%) for lesions detected by US.

Interpretation: DCNN-US with high sensitivity and specificity in diagnosing FLLs shows its potential to assist less-experienced radiologists in improving their performance and lowering their dependence on sectional imaging in liver cancer diagnosis.

Keywords: Convolutional neural network; Diagnosis; Focal liver lesions; Ultrasound.

Publication types

  • Comparative Study
  • Multicenter Study

MeSH terms

  • Adult
  • Aged
  • Area Under Curve
  • Clinical Competence
  • Cohort Studies
  • Contrast Media
  • Deep Learning
  • Female
  • Humans
  • Liver Neoplasms / diagnostic imaging*
  • Magnetic Resonance Imaging
  • Male
  • Middle Aged
  • Neural Networks, Computer
  • Radiographic Image Interpretation, Computer-Assisted / methods*
  • Radiologists
  • Sensitivity and Specificity
  • Tomography, X-Ray Computed
  • Ultrasonography

Substances

  • Contrast Media