A Computer-Aided Diagnosis System of Fetal Nucleated Red Blood Cells With Convolutional Neural Network

Arch Pathol Lab Med. 2022 Nov 1;146(11):1395-1401. doi: 10.5858/arpa.2021-0142-OA.

Abstract

Context.—: The rapid recognition of fetal nucleated red blood cells (fNRBCs) presents considerable challenges.

Objective.—: To establish a computer-aided diagnosis system for rapid recognition of fNRBCs by convolutional neural network.

Design.—: We adopted density gradient centrifugation and magnetic-activated cell sorting to extract fNRBCs from umbilical cord blood samples. The cell-block method was used to embed fNRBCs for routine formalin-fixed paraffin sectioning and hematoxylin-eosin staining. Then, we proposed a convolutional neural network-based, computer-aided diagnosis system to automatically discriminate features and recognize fNRBCs. Extracting methods of interested region were used to automatically segment individual cells in cell slices. The discriminant information from cellular-level regions of interest was encoded into a feature vector. Pathologic diagnoses were also provided by the network.

Results.—: In total, 4760 pictures of fNRBCs from 260 cell-slides of 4 umbilical cord blood samples were collected. On the premise of 100% accuracy in the training set (3720 pictures), the sensitivity, specificity, and accuracy of cellular intelligent recognition were 96.5%, 100%, and 98.5%, respectively, in the test set (1040 pictures).

Conclusions.—: We established a computer-aided diagnosis system for effective and accurate fNRBC recognition based on a convolutional neural network.

MeSH terms

  • Computers
  • Eosine Yellowish-(YS)
  • Erythrocytes
  • Formaldehyde
  • Hematoxylin
  • Humans
  • Neural Networks, Computer*
  • Paraffin*

Substances

  • Eosine Yellowish-(YS)
  • Paraffin
  • Hematoxylin
  • Formaldehyde