Fast Real-Time Brain Tumor Detection Based on Stimulated Raman Histology and Self-Supervised Deep Learning Model.

Journal: Journal of imaging informatics in medicine
Published Date:

Abstract

In intraoperative brain cancer procedures, real-time diagnosis is essential for ensuring safe and effective care. The prevailing workflow, which relies on histological staining with hematoxylin and eosin (H&E) for tissue processing, is resource-intensive, time-consuming, and requires considerable labor. Recently, an innovative approach combining stimulated Raman histology (SRH) and deep convolutional neural networks (CNN) has emerged, creating a new avenue for real-time cancer diagnosis during surgery. While this approach exhibits potential, there exists an opportunity for refinement in the domain of feature extraction. In this study, we employ coherent Raman scattering imaging method and a self-supervised deep learning model (VQVAE2) to enhance the speed of SRH image acquisition and feature representation, thereby enhancing the capability of automated real-time bedside diagnosis. Specifically, we propose the VQSRS network, which integrates vector quantization with a proxy task based on patch annotation for analysis of brain tumor subtypes. Training on images collected from the SRS microscopy system, our VQSRS demonstrates a significant speed enhancement over traditional techniques (e.g., 20-30 min). Comparative studies in dimensionality reduction clustering confirm the diagnostic capacity of VQSRS rivals that of CNN. By learning a hierarchical structure of recognizable histological features, VQSRS classifies major tissue pathological categories in brain tumors. Additionally, an external semantic segmentation method is applied for identifying tumor-infiltrated regions in SRH images. Collectively, these findings indicate that this automated real-time prediction technique holds the potential to streamline intraoperative cancer diagnosis, providing assistance to pathologists in simplifying the process.

Authors

  • Zijun Wang
    School of Chemistry and Chemical Engineering, Shihezi University Shihezi Xinjiang 832003 PR China eavanh@163.com lqridge@163.com 1175828694@qq.com 318798309@qq.com wzj_tea@shzu.edu.cn.
  • Kaitai Han
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Wu Liu
    Beijing Key Laboratory of Intelligent Telecommunication Software and Multimedia, Beijing University of Posts and Telecommunications, Beijing, 100876, China. liuwu@bupt.edu.cn.
  • Zhenghui Wang
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Chaojing Shi
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Xi Liu
    Collaborative Innovation Center of Radiological Medicine of Jiangsu Higher Education Institutions, Suzhou Medical College, Soochow University, Suzhou, Jiangsu 215123, China.
  • Mengyuan Huang
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Guocheng Sun
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Shitou Liu
    Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing, 102617, China.
  • Qianjin Guo
    Department of Orthopedics, the Second Affiliated Hospital of Luohe Medical College, Luohe Henan, 462300, P.R.China.