Skip to main navigation Skip to search Skip to main content

MR Image Classification for Brain Tumor Texture Based on Pseudo-Label Learning and Optimized Feature Extraction

  • Qianqian Xu
  • , Huachang Xu
  • , Jie Liu
  • , Mingxia Zhou
  • , Min Li
  • , Jinhui Xu
  • , Hong Zhu
  • Xuzhou Medical University

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Brain tumors are the deadliest and most difficult to treat of all forms of cancer. Preoperative classification of brain tumors is conducive to the development of corresponding treatment plan. Take pituitary tumors as an example. Precisely judging the image data of pituitary tumor texture before surgery can provide a basis for the selection of surgical plan and prognosis. However, the existing methods require manual intervention, and the efficiency and accuracy are not high. In this paper, we proposed an automatic brain tumor texture diagnosis method for uneven sequence image data. First, for the small sample of pituitary tumor MRI image data, the T1 and T2 sequence data are uneven or missing; we used the CycleGAN model to perform data conversion between different domains to obtain a completely sampled MRI spatial sequence. Then, we used texture analysis+pseudo-label learning to label pituitary tumor data of some unknown labels. After that, we used the improved U-Net model based on CBAM to optimize feature extraction for pituitary tumor image data. Finally, we used the CRNN model to classify the degree of pituitary tumor texture based on the advantages of sequence data. The entire process only needs to provide labels for the entire sequence data, and the efficiency is greatly improved, with an accuracy rate of 94.23%.

Original languageEnglish
Article number7746991
JournalComputational and Mathematical Methods in Medicine
Volume2022
DOIs
StatePublished - 2022

Fingerprint

Dive into the research topics of 'MR Image Classification for Brain Tumor Texture Based on Pseudo-Label Learning and Optimized Feature Extraction'. Together they form a unique fingerprint.

Cite this