Image segmentation of mouse eye in vivo with optical coherence tomography based on Bayesian classification

Author:

Ma Fei1ORCID,Wang Shengbo1,Guo Yanfei1,Dai Cuixia2,Meng Jing1

Affiliation:

1. School of Computer Science , Qufu Normal University , Rizhao , Shandong , China

2. Department of College Science , Shanghai Institute of Technology , Shanghai , Shanghai , China

Abstract

Abstract Objectives Optical coherence tomography (OCT) is a new imaging technology that uses an optical analog of ultrasound imaging for biological tissues. Image segmentation plays an important role in dealing with quantitative analysis of medical images. Methods We have proposed a novel framework to deal with the low intensity problem, based on the labeled patches and Bayesian classification (LPBC) model. The proposed method includes training and testing phases. During the training phase, firstly, we manually select the sub-images of background and Region of Interest (ROI) from the training image, and then extract features by patches. Finally, we train the Bayesian model with the features. The segmentation threshold of each patch is computed by the learned Bayesian model. Results In addition, we have collected a new dataset of mouse eyes in vivo with OCT, named MEVOCT, which can be found at URL https://17861318579.github.io/LPBC. MEVOCT consists of 20 high-resolution images. The resolution of every image is 2048 × 2048 pixels. Conclusions The experimental results demonstrate the effectiveness of the LPBC method on the new MEVOCT dataset. The ROI segmentation is of great importance for the distortion correction.

Publisher

Walter de Gruyter GmbH

Subject

Biomedical Engineering

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