| Literature DB >> 15243882 |
C-R Huang1, B-S Sheu, P-C Chung, H-B Yang.
Abstract
BACKGROUND AND STUDY AIM: We investigated whether analysis of endoscopic images using a refined feature selection with neural network (RFSNN) technique could predict Helicobacter pylori-related gastric histological features. PATIENTS AND METHODS: A total of 104 dyspeptic patients were prospectively enrolled for panendoscopy and gastric biopsy for histological evaluation using the updated Sydney system. The endoscopic images of each patient were analyzed to obtain 84 image parameters. The significant image parameters from 30 randomly selected patients (15 with and 15 without H. pylori infection) associated with histological features were used to develop the RFSNN model. This was then used to test the sensitivity and specificity of the image parameters obtained from the remaining 74 patients for the prediction of the presence of H. pylori infection and related histological features.Entities:
Mesh:
Year: 2004 PMID: 15243882 DOI: 10.1055/s-2004-814519
Source DB: PubMed Journal: Endoscopy ISSN: 0013-726X Impact factor: 10.093