Transcript

CT Computer-Aided Diagnosis System

PRESENTED BY

ABDALLA MOSTAFA ABDALLA

Scientific Research Group in Egypt http://www.egyptscience.net

7 March 2015 - Zewail University for Science and Technology

SRGE Members

Group founder and chair: Professor Aboul Ella Hassanien

Scientific Research Group in Egypt

Agenda Introduction

Problem Definition

Objective

Liver and Medical imaging

Pre-processing

Segmentation

Proposed Approach

Experiments and Results

Conclusion

Introduction

◦ Liver is an important organ in humanbody.

◦ It may have different colors (darkblue cyst, dark brown - cirrhosis,yellow - fatty, green – billarycirrhosis)

◦ It is common to use ComputedTomography (CT) in Computer aideddiagnosis systems (CAD)

Problem Statement

Difficulties associated with liver image segmentation

◦ Liver has different shapes.

◦ Similarities to other organs (muscles, flesh, kidney, spleen).

◦ Similarity between Vessels and cyst.

Objective

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We aim to

• Enhance Region growing technique.

We have chosen

LiverCT

ImagesComputer

Manipulation

CADComputer-Aided Diagnosis System

Liver

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Why Liver?

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The statistics of liver diseases shows that• The ratio of virus C infection is 12.8 % in Egypt.• The ratio of virus C infection is almost 1.2% in

Europe.• 130 thousands people need liver transplantation

In Egypt.

Liver diseases

Cyst

Fatty Liver

Fibrosis

Billary Cirrhosis

Carcinoma

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Different diseases may have different colors

According to• Liver bible• Pathology Atlas• Oncology ref.

So, Image can help in diagnosis

Biopsy

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• It may puncture the lung.• It may fracture rib.• Liver bleeding.

• The worst of allthe sample might not represent the

lesion.

Biopsy has its limitations and risks

CT Image Slicing

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Slicing technique

Liver sliced imageCT machine moves through the abdomen and records the details of liver tissues

Proposed approach

1• Preprocessing

2• Segmentation

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The proposed approach has main two phases

Preprocessing

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The main objective of image preprocessing is to improve the quality of the image being processed by:

• Removing noise.

• Emphasizing certain features.

• Isolating regions of interests.

Liver Segmentation

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Liver segmentation depends on :

• The difficulty of the anatomy of liver.• Liver is surrounded by many organs, similar to its intensity as

spleen, stomach, and kidney.• The nature of liver tissues, and blood vessels.

.

Region Growing Segmentation

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Based on the growth of a homogeneous regionaccording to certain features as intensity, coloror texture.

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Now Let us go to the

Proposed Approach

Phases of Proposed Approach

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Segmentation

Region growing

Preprocessing

Using morphological operations

Connecting Ribs

Morphological operationsMorphological Operations are :-

◦ Structure element.

◦ Dilation.

◦ Erosion.

◦ Opening.

◦ Closing.

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Morphological operationsStructure element

has a shape of square, diamond and cross

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Morphological operations

DilationThe basic effect of the operator on a binary image is to gradually enlarge the boundaries (thicking) of regions of foreground pixels.

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Morphological operationsErosionThe basic effect of the operator on a binary image is to shrink(erode away ) the boundaries of regions of foreground pixels

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Morphological operationsOpening

It is an erosion followed by a dilation.

It can open up a gap between objects connected by a thin bridge of pixels.

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Morphological operationsClosing

is a dilation followed by erosion, it fills some gabs.

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Connecting ribs

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Using contrast stretching to emphasize the ribs boundaries. The ribs will be connected as follows:

Now the image is prepared for the next phase

Segmentation

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•It is partitioning an image into homogeneous regions with respect to intensity, or texture.

•Image segmentation methods can be categorized as • Edge-based methods (discontinuity )• Region-based methods (similarity)

Liver Segmentation

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So, there is a need to get

Separated Liver Regions of Interest

Proposed algorithm

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Experiments and results

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Cleaning image is a process of removing annotation and bed from the image

Experiments and results

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Preparation phase

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Similarity Index

Validation measure

Experiments and results

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Difference betweensegmented and annotated image .

Experiments and results

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Normal Region Growing vs Proposed approach

Experiments and results

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Using the proposed method showed that: The accuracy result using similarity index measure is (SI=91.2% ). The method could segment images that was difficult to segmented before.

Conclusion

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Testing proposed approach, with region growing showed that:

Normal Region growing has the result of 82% accuracy.Proposed approach has the result of 91.2% accuracy.

Future Work

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The future work would be the change of the approach of classification to use Bio-Inspired methodology to :-

• Eliminate the liver separation computational cost.• Generalize the approach for other organs as spleen

and stomach.

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