4.6 Article

Automatic liver segmentation in MRI images using an iterative watershed algorithm and artificial neural network

期刊

BIOMEDICAL SIGNAL PROCESSING AND CONTROL
卷 7, 期 5, 页码 429-437

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ELSEVIER SCI LTD
DOI: 10.1016/j.bspc.2012.01.002

关键词

MRI segmentation; Liver region extraction; Mathematical morphology; Watershed transform; Artificial neural network

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Precise liver segmentation in abdominal MRI images is one of the most important steps for the computer-aided diagnosis of liver pathology. The first and essential step for diagnosis is automatic liver segmentation, and this process remains challenging. Extensive research has examined liver segmentation; however, it is challenging to distinguish which algorithm produces more precise segmentation results that are applicable to various medical imaging techniques. In this paper, we present a new automatic system for liver segmentation in abdominal MRI images. The system includes several successive steps. Preprocessing is applied to enhance the image (edge-preserved noise reduction) by using mathematical morphology. The proposed algorithm for liver region extraction is a combined algorithm that utilizes MLP neural networks and watershed algorithm. The traditional watershed transformation generally results in oversegmentation when directly applied to medical image segmentation. Therefore, we use trained neural networks to extract features of the liver region. The extracted features are used to monitor the quality of the segmentation using the watershed transform and adjust the required parameters automatically. The process of adjusting parameters is performed sequentially in several iterations. The proposed algorithm extracts liver region in one slice of the MRI images and the boundary tracking algorithm is suggested to extract the liver region in other slices, which is left as our future work. This system was applied to a series of test images to extract the liver region. Experimental results showed positive results for the proposed algorithm. (c) 2012 Elsevier Ltd. All rights reserved.

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