Liver Segmentation in MRI Images using an Adaptive Water Flow Model

Background: Identification and precise localization of the liver surface and its segments are essential for any surgical treatment. An algorithm of accurate liver segmentation simplifies the treatment planning for different types of liver diseases. Although liver segmentation turns researcher’s atte...

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Main Authors: Marjan Heidari, Mehdi Taghizadeh, Hassan Masoumi, Morteza Valizadeh
Format: Article
Language:English
Published: Shiraz University of Medical Sciences 2021-08-01
Series:Journal of Biomedical Physics and Engineering
Subjects:
Online Access:https://jbpe.sums.ac.ir/article_47704_112b1bf7e24625ca7174aaeec4277132.pdf
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spelling doaj-0e94fad7d2f947d58a8f8f0cce3d6c6e2021-08-23T20:29:28ZengShiraz University of Medical SciencesJournal of Biomedical Physics and Engineering2251-72002251-72002021-08-0111452753410.31661/jbpe.v0i0.2103-129347704Liver Segmentation in MRI Images using an Adaptive Water Flow ModelMarjan Heidari0Mehdi Taghizadeh1Hassan Masoumi2Morteza Valizadeh3PhD Candidate, Department of Biomedical Engineering, Kazerun Branch, Islamic Azad University, Kazerun, IranPhD, Department of Electrical Engineering, Kazerun Branch, Islamic Azad University, Kazerun, IranPhD, Department of Biomedical Engineering, Kazerun Branch, Islamic Azad University, Kazerun, IranPhD, Department of Electrical and Computer Engineering, Urmia University, Urmia, IranBackground: Identification and precise localization of the liver surface and its segments are essential for any surgical treatment. An algorithm of accurate liver segmentation simplifies the treatment planning for different types of liver diseases. Although liver segmentation turns researcher’s attention, it still has some challenging problems in computer-aided diagnosis. Objective: This study aimed to extract the potential liver regions by an adaptive water flow model and perform the final segmentation by the classification algorithm.Material and Methods: In this experimental study, an automatic liver segmentation algorithm was introduced. The proposed method designed the image by a transfer function based on the probability distribution function of the liver pixels to enhance the liver area. The enhanced image is then segmented using an adaptive water flow model in which the rainfall process is controlled by the liver location in the training images and the gray levels of pixels. The candidate liver segments are classified by a Multi-Layer Perception (MLP) neural network considering some texture, area, and gray level features. Results: The proposed algorithm efficiently distinguishes the liver region from its surrounding organs, resulting in perfect liver segmentation over 250 Magnetic Resonance Imaging (MRI) test images. The accuracy of 97% was obtained by quantitative evaluation over test images, which revealed the superiority of the proposed algorithm compared to some evaluated algorithms. Conclusion: Liver segmentation using an adaptive water flow algorithm and classifying the segmented area in MRI images yields more robust and reliable results in comparison with the classification of pixels.https://jbpe.sums.ac.ir/article_47704_112b1bf7e24625ca7174aaeec4277132.pdfimage enhancementmri scansartificial intelligenceimage processingcomputer-assisted
collection DOAJ
language English
format Article
sources DOAJ
author Marjan Heidari
Mehdi Taghizadeh
Hassan Masoumi
Morteza Valizadeh
spellingShingle Marjan Heidari
Mehdi Taghizadeh
Hassan Masoumi
Morteza Valizadeh
Liver Segmentation in MRI Images using an Adaptive Water Flow Model
Journal of Biomedical Physics and Engineering
image enhancement
mri scans
artificial intelligence
image processing
computer-assisted
author_facet Marjan Heidari
Mehdi Taghizadeh
Hassan Masoumi
Morteza Valizadeh
author_sort Marjan Heidari
title Liver Segmentation in MRI Images using an Adaptive Water Flow Model
title_short Liver Segmentation in MRI Images using an Adaptive Water Flow Model
title_full Liver Segmentation in MRI Images using an Adaptive Water Flow Model
title_fullStr Liver Segmentation in MRI Images using an Adaptive Water Flow Model
title_full_unstemmed Liver Segmentation in MRI Images using an Adaptive Water Flow Model
title_sort liver segmentation in mri images using an adaptive water flow model
publisher Shiraz University of Medical Sciences
series Journal of Biomedical Physics and Engineering
issn 2251-7200
2251-7200
publishDate 2021-08-01
description Background: Identification and precise localization of the liver surface and its segments are essential for any surgical treatment. An algorithm of accurate liver segmentation simplifies the treatment planning for different types of liver diseases. Although liver segmentation turns researcher’s attention, it still has some challenging problems in computer-aided diagnosis. Objective: This study aimed to extract the potential liver regions by an adaptive water flow model and perform the final segmentation by the classification algorithm.Material and Methods: In this experimental study, an automatic liver segmentation algorithm was introduced. The proposed method designed the image by a transfer function based on the probability distribution function of the liver pixels to enhance the liver area. The enhanced image is then segmented using an adaptive water flow model in which the rainfall process is controlled by the liver location in the training images and the gray levels of pixels. The candidate liver segments are classified by a Multi-Layer Perception (MLP) neural network considering some texture, area, and gray level features. Results: The proposed algorithm efficiently distinguishes the liver region from its surrounding organs, resulting in perfect liver segmentation over 250 Magnetic Resonance Imaging (MRI) test images. The accuracy of 97% was obtained by quantitative evaluation over test images, which revealed the superiority of the proposed algorithm compared to some evaluated algorithms. Conclusion: Liver segmentation using an adaptive water flow algorithm and classifying the segmented area in MRI images yields more robust and reliable results in comparison with the classification of pixels.
topic image enhancement
mri scans
artificial intelligence
image processing
computer-assisted
url https://jbpe.sums.ac.ir/article_47704_112b1bf7e24625ca7174aaeec4277132.pdf
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AT mehditaghizadeh liversegmentationinmriimagesusinganadaptivewaterflowmodel
AT hassanmasoumi liversegmentationinmriimagesusinganadaptivewaterflowmodel
AT mortezavalizadeh liversegmentationinmriimagesusinganadaptivewaterflowmodel
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