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Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans

Received: 1 January 2016    Accepted: 11 January 2016    Published: 4 February 2016
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Abstract

The advice of automating computer applications is being increase to reduce the human interaction. Medical image segmentation is one of these applications, when done manually; it turns into a time-consuming and knowledge intensive task. As a result, automatic segmentation is in the focus of work to speed up segmentation processes. Fast and accurate segmentation would allow physicians to analyze and visualize the human structures and re-plan radiation therapy and surgery. This paper introduces a knowledge system based on different sources of medical knowledge to automate medical image segmentation through active contour methods. The way of getting benefit of the knowledge provided by medical atlas, expert’s rules, image features, image multiple views and image Meta data introduced by this knowledge system. We classify the system in different domains in way can be manage properly to guide active contour segmentation methods for abdominal CT scans. The obtained results are very promising showing significant improvements over other methods where the volume measurements error is 7% and the processing time was improved by 68%.

Published in International Journal of Intelligent Information Systems (Volume 5, Issue 1)
DOI 10.11648/j.ijiis.20160501.12
Page(s) 5-16
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Knowledge-Based System, Medical Knowledge, Active Contour Image Segmentation, Automated Processes

References
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Cite This Article
  • APA Style

    Mahmoud Saleh Jawarneh, Mohammed Said Abual-Rub. (2016). Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans. International Journal of Intelligent Information Systems, 5(1), 5-16. https://doi.org/10.11648/j.ijiis.20160501.12

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    ACS Style

    Mahmoud Saleh Jawarneh; Mohammed Said Abual-Rub. Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans. Int. J. Intell. Inf. Syst. 2016, 5(1), 5-16. doi: 10.11648/j.ijiis.20160501.12

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    AMA Style

    Mahmoud Saleh Jawarneh, Mohammed Said Abual-Rub. Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans. Int J Intell Inf Syst. 2016;5(1):5-16. doi: 10.11648/j.ijiis.20160501.12

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  • @article{10.11648/j.ijiis.20160501.12,
      author = {Mahmoud Saleh Jawarneh and Mohammed Said Abual-Rub},
      title = {Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans},
      journal = {International Journal of Intelligent Information Systems},
      volume = {5},
      number = {1},
      pages = {5-16},
      doi = {10.11648/j.ijiis.20160501.12},
      url = {https://doi.org/10.11648/j.ijiis.20160501.12},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijiis.20160501.12},
      abstract = {The advice of automating computer applications is being increase to reduce the human interaction. Medical image segmentation is one of these applications, when done manually; it turns into a time-consuming and knowledge intensive task. As a result, automatic segmentation is in the focus of work to speed up segmentation processes. Fast and accurate segmentation would allow physicians to analyze and visualize the human structures and re-plan radiation therapy and surgery. This paper introduces a knowledge system based on different sources of medical knowledge to automate medical image segmentation through active contour methods. The way of getting benefit of the knowledge provided by medical atlas, expert’s rules, image features, image multiple views and image Meta data introduced by this knowledge system. We classify the system in different domains in way can be manage properly to guide active contour segmentation methods for abdominal CT scans. The obtained results are very promising showing significant improvements over other methods where the volume measurements error is 7% and the processing time was improved by 68%.},
     year = {2016}
    }
    

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  • TY  - JOUR
    T1  - Knowledge-Based System Guided Automatic Contour Segmentation of Abdominal Structures in CT Scans
    AU  - Mahmoud Saleh Jawarneh
    AU  - Mohammed Said Abual-Rub
    Y1  - 2016/02/04
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    N1  - https://doi.org/10.11648/j.ijiis.20160501.12
    DO  - 10.11648/j.ijiis.20160501.12
    T2  - International Journal of Intelligent Information Systems
    JF  - International Journal of Intelligent Information Systems
    JO  - International Journal of Intelligent Information Systems
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    EP  - 16
    PB  - Science Publishing Group
    SN  - 2328-7683
    UR  - https://doi.org/10.11648/j.ijiis.20160501.12
    AB  - The advice of automating computer applications is being increase to reduce the human interaction. Medical image segmentation is one of these applications, when done manually; it turns into a time-consuming and knowledge intensive task. As a result, automatic segmentation is in the focus of work to speed up segmentation processes. Fast and accurate segmentation would allow physicians to analyze and visualize the human structures and re-plan radiation therapy and surgery. This paper introduces a knowledge system based on different sources of medical knowledge to automate medical image segmentation through active contour methods. The way of getting benefit of the knowledge provided by medical atlas, expert’s rules, image features, image multiple views and image Meta data introduced by this knowledge system. We classify the system in different domains in way can be manage properly to guide active contour segmentation methods for abdominal CT scans. The obtained results are very promising showing significant improvements over other methods where the volume measurements error is 7% and the processing time was improved by 68%.
    VL  - 5
    IS  - 1
    ER  - 

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Author Information
  • Computer Science Department, Al-Imam Muhammad Ibn Saud Islamic University, Ahsa, Saudi Arabia

  • Computer Science Department, Al-Imam Muhammad Ibn Saud Islamic University, Ahsa, Saudi Arabia

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