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[Keyword] tumor detection(2hit)

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  • A Simple Method for Detecting Tumor in T2-Weighted MRI Brain Images: An Image-Based Analysis

    Phooi-Yee LAU  Shinji OZAWA  

     
    PAPER-Biological Engineering

      Vol:
    E89-D No:3
      Page(s):
    1270-1279

    The objective of this paper is to present a decision support system which uses a computer-based procedure to detect tumor blocks or lesions in digitized medical images. The authors developed a simple method with a low computation effort to detect tumors on T2-weighted Magnetic Resonance Imaging (MRI) brain images, focusing on the connection between the spatial pixel value and tumor properties from four different perspectives: 1) cases having minuscule differences between two images using a fixed block-based method, 2) tumor shape and size using the edge and binary images, 3) tumor properties based on texture values using spatial pixel intensity distribution controlled by a global discriminate value, and 4) the occurrence of content-specific tumor pixel for threshold images. Measurements of the following medical datasets were performed: 1) different time interval images, and 2) different brain disease images on single and multiple slice images. Experimental results have revealed that our proposed technique incurred an overall error smaller than those in other proposed methods. In particular, the proposed method allowed decrements of false alarm and missed alarm errors, which demonstrate the effectiveness of our proposed technique. In this paper, we also present a prototype system, known as PCB, to evaluate the performance of the proposed methods by actual experiments, comparing the detection accuracy and system performance.

  • ICA Mixture Analysis of Four-Phase Abdominal CT Images

    Xuebin HU  Akinobu SHIMIZU  Hidefumi KOBATAKE  Shigeru NAWANO  

     
    LETTER-Biological Engineering

      Vol:
    E87-D No:11
      Page(s):
    2521-2525

    This paper presents a new analysis result of two-dimensional four-phase abdominal CT images using variational Bayesian mixture of ICA. The four-phase CT images are assumed to be comprised of several exclusive areas, and each area is generated by a set of corresponding independent components. ICA mixture analysis results show that the CT images could be divided into a set of clinically and anatomically meaningful components. Initial analysis of the independent components shows its promising prospects in medical image processing and computer-aided diagnosis.