Diagnosis of cervical lymphoma using a YOLO-v7-based model with transfer learning

Sci Rep. 2024 May 14;14(1):11073. doi: 10.1038/s41598-024-61955-x.

Abstract

To investigate the ability of an auxiliary diagnostic model based on the YOLO-v7-based model in the classification of cervical lymphadenopathy images and compare its performance against qualitative visual evaluation by experienced radiologists. Three types of lymph nodes were sampled randomly but not uniformly. The dataset was randomly divided into for training, validation, and testing. The model was constructed with PyTorch. It was trained and weighting parameters were tuned on the validation set. Diagnostic performance was compared with that of the radiologists on the testing set. The mAP of the model was 96.4% at the 50% intersection-over-union threshold. The accuracy values of it were 0.962 for benign lymph nodes, 0.982 for lymphomas, and 0.960 for metastatic lymph nodes. The precision values of it were 0.928 for benign lymph nodes, 0.975 for lymphomas, and 0.927 for metastatic lymph nodes. The accuracy values of radiologists were 0.659 for benign lymph nodes, 0.836 for lymphomas, and 0.580 for metastatic lymph nodes. The precision values of radiologists were 0.478 for benign lymph nodes, 0.329 for lymphomas, and 0.596 for metastatic lymph nodes. The model effectively classifies lymphadenopathies from ultrasound images and outperforms qualitative visual evaluation by experienced radiologists in differential diagnosis.

MeSH terms

  • Adult
  • Aged
  • Female
  • Humans
  • Lymph Nodes* / diagnostic imaging
  • Lymph Nodes* / pathology
  • Lymphadenopathy / diagnosis
  • Lymphadenopathy / pathology
  • Lymphatic Metastasis
  • Lymphoma* / diagnosis
  • Lymphoma* / diagnostic imaging
  • Lymphoma* / pathology
  • Male
  • Middle Aged
  • Ultrasonography / methods