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Morphologic cirrhosis diagnosis from Ultrasound Ricardo Ribeiro1,3 Rui Marinho2 and J.M. Sanches1 1Institute for Systems and Robotics / Instituto Superior T cnico – PowerPoint PPT presentation

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Title: Diapositivo 1


1
Morphologic cirrhosis diagnosis from Ultrasound
Ricardo Ribeiro1,3 Rui Marinho2 and J.M.
Sanches1 1Institute for Systems and Robotics /
Instituto Superior Técnico 2Faculdade de Medicina
da Universidade de Lisboa 3Escola Superior de
Tecnologia da Saúde de Lisboa Lisboa, Portugal
  • Abstract
  • Cirrhosis is an endemic diseases across the world
    that leads to observed liver contour
    irregularities in the Ultrasound images, which
    can be used to detect and confirm the pathologic
    condition.
  • In this work these irregularities are
    semi-automatically segmented and quantified in
    order to help the physician in the diagnosis.
    Results obtained from real data have shown the
    ability of the method to detect the disease.
  • The ultimate goal is to use these irregularity
    features jointly with other features extracted
    from the liver parenchyma to design a highly
    discriminative classifier for liver cirrhosis,
    steatosis and other diffuse liver diseases.
  • Experimental Results
  • Sixty-nine US liver images were obtained from 69
    patients
  • 40 patients had cirrhosis (OC)
  • 29 had normal liver (ON)
  • Image Processing Results

(a) Normal Liver
(b) Cirrhotic liver without ascites
  • Problem Formulation
  • Estimation of the RF envelope and denoised
    anatomic images
  • This is performed using the Bayesian methods
    proposed by 8, where the use of total variation
    techniques allows the preservation of major
    transitions, as seen in the case of liver capsule
    and overlying structures.
  • Using the de-noised US image, the liver surface
    contour is obtain using a snake technique which
    computes one iteration of the energy-minimization
    of active contour models.
  • Based on the detect contour, the following
    features were extracted
  • Root Mean Square of the different angles produced
    by the points that characterize the contour
    (rmsa).
  • Root Mean Square of the variation of the points
    of the contour in the y axis (rmsy).
  • Mean and Variance of the calculated angles (ma
    and va).
  • Variance of the y axis coordinates at each point
    (vy).
  • Feature selection - forward selection method with
    the criterion 1 - Nearest Neighbor leave-one-out
    classification performance.
  • The features extracted by the preceding methods
    are used for classification, where a support
    vector machine (SVM) classifier 3 is used.

(c) Cirrhotic liver with ascites
Gold Standard Gold Standard
ON OC
Classifier ON 17(24.6) 7(10.1)
Classifier OC 12(17.4) 33(47.9)
  • Conclusions
  • In this work a semi-automatic detection of liver
    surface is proposed to help in the diagnosis of
    the cirrhosis.
  • Results obtained showed an overall accuracy of
    72,46, a high sensitivity, 82,5, and a low
    specificity, 58,6.
  • In the future the authors intend to include other
    features to increase the accuracy of the method,
    as well as use more state-of-the-art automatic
    snakes, in order to create a fully automatic
    method.

RecPad2010 - 16th edition of the Portuguese
Conference on Pattern Recognition, UTAD
University, Vila Real city, October 29th
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