| Literature DB >> 31646025 |
Yuanpeng Li1,2, Liangyu Deng1, Xinhao Yang1, Zhao Liu3, Xiaoping Zhao3, Furong Huang1,4, Siqi Zhu1, Xingdan Chen1, Zhenqiang Chen1,5, Weimin Zhang3,6.
Abstract
The development of an objective and rapid method that can be used for the early diagnosis of gastric cancer has important clinical application value. In this study, the fluorescence hyperspectral imaging technique was used to acquire fluorescence spectral images. Deep learning combined with spectral-spatial classification methods based on 120 fresh tissues samples that had a confirmed diagnosis by histopathological examinations was used to automatically identify and extract the "spectral + spatial" features to construct an early diagnosis model of gastric cancer. The model results showed that the overall accuracy for the nonprecancerous lesion, precancerous lesion, and gastric cancer groups was 96.5% with specificities of 96.0%, 97.3%, and 96.7% and sensitivities of 97.0%, 96.3%, and 96.6%, respectively. Therefore, the proposed method can increase the diagnostic accuracy and is expected to be a new method for the early diagnosis of gastric cancer.Entities:
Year: 2019 PMID: 31646025 PMCID: PMC6788605 DOI: 10.1364/BOE.10.004999
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732