Author:
Al-Omari Faruq A,Matalka Ismail I,Al-Jarrah Mohammad A,Obeidat Fatima N,Kanaan Faisal M
Abstract
AimsTo build an automated decision support system to assist pathologists in grading gastric atrophy according to the updated Sydney system.MethodsA database of 143 biopsies was used to train and examine the proposed system. A panel of three experienced pathologists reached a consensus regarding the grading of the studied biopsies using the visual scale of the updated Sydney system. Digital imaging techniques were utilised to extract a set of discriminating morphological features that describe each atrophy grade sufficiently and uniquely. A probabilistic neural networks structure was used to build a grading system. To evaluate the performance of the proposed system, 66% of the biopsies (94 biopsy images) were used for training purposes and 34% (49 biopsy images) were used for testing and validation purposes.ResultsDuring the training phase, a 98.9% precision was achieved, whereas during testing, a precision of 95.9% was achieved. The overall precision achieved was 97.9%.ConclusionsA fully automated decision support system to grade gastric atrophy according to the updated Sydney system is proposed. The system utilises advanced image processing techniques and probabilistic neural networks in conducting the assessment. The proposed system eliminates inter- and intra-observer variations with high reproducibility.
Subject
General Medicine,Pathology and Forensic Medicine
Cited by
7 articles.
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