| Literature DB >> 31710780 |
Qinqin Yang1,2, Zhexin Xu1, Chenxi Liao1, Jianyong Cai1, Ying Huang1, Hong Chen3, Xuan Tao3, Zheng Huang1, Jianxin Chen1, Jiyang Dong2, Xiaoqin Zhu1.
Abstract
In the current clinical care practice, Gleason grading system is one of the most powerful prognostic predictors for prostate cancer (PCa). The grading system is based on the architectural pattern of cancerous epithelium in histological images. However, the standard procedure of histological examination often involves complicated tissue fixation and staining, which are time-consuming and may delay the diagnosis and surgery. In this study, label-free multiphoton microscopy (MPM) was used to acquire subcellular-resolution images of unstained prostate tissues. Then, a deep learning architecture (U-net) was introduced for epithelium segmentation of prostate tissues in MPM images. The obtained segmentation results were then merged with the original MPM images to train a classification network (AlexNet) for automated Gleason grading. The developed method achieved an overall pixel accuracy of 92.3% with a mean F1 score of 0.839 for epithelium segmentation. By merging the segmentation results with the MPM images, the accuracy of Gleason grading was improved from 72.42% to 81.13% in hold-out test set. Our results suggest that MPM in combination with deep learning holds the potential to be used as a fast and powerful clinical tool for PCa diagnosis.Entities:
Keywords: Gleason Grading; deep learning; epithelium segmentation; multiphoton microscopy; prostate cancer
Mesh:
Year: 2019 PMID: 31710780 DOI: 10.1002/jbio.201900203
Source DB: PubMed Journal: J Biophotonics ISSN: 1864-063X Impact factor: 3.207