Breast Cancer Diagnosis Using Neuro-CBR Approach

Breast cancer has become the number one cause of cancer deaths amongst women. Once a breast cancer is detected, it can be classified a benign (not cancerous tissue) or malignant (cancerous tissue). However, it is very difficult to distinguish benign from one that is malignant due to its variability...

Full description

Bibliographic Details
Main Author: Norlia, Md. Yusof
Format: Thesis
Language:English
English
Published: 2005
Subjects:
Online Access:https://etd.uum.edu.my/1304/1/NORLIA_BT._MD._YUSOF.pdf
https://etd.uum.edu.my/1304/2/1.NORLIA_BT._MD._YUSOF.pdf
https://etd.uum.edu.my/1304/
Abstract Abstract here
_version_ 1855573479200391168
author Norlia, Md. Yusof
author_facet Norlia, Md. Yusof
author_sort Norlia, Md. Yusof
description Breast cancer has become the number one cause of cancer deaths amongst women. Once a breast cancer is detected, it can be classified a benign (not cancerous tissue) or malignant (cancerous tissue). However, it is very difficult to distinguish benign from one that is malignant due to its variability associated with the appearances ofthe cancer. The problem leads to a motivation for a researcher in finding a technique that can enhance the performance of the previous breast cancer test detections. Among the techniques that could assist a specialist in diagnosing the breast cancer disease is computer-aided detection and diagnosis, abbreviated as CAD. CAD tools have exploited a wide range of AI technique since these technique are able to support CAD's needs. Hence, there is a need for multiple AI approach to support CAD. In this study, the Neural Network (NN) simulator with backpropagation algorithm was developed to predict the condition of the breast cancer tumor whether it is benign or maligant and Case-Base Reasoning (CBR) engine developed to classify the cancer stages as well as suggesting appropriate treatment to the patient. In CBR, mono symbolic valued was used for training and testing purpose. NN model obtained 98.60% accuracy clasification. This implies that NN model can be used as an inductive, or exploratory, analytical tool for the prediction for the breast cancer tissue. Experimental result also shows that CBR is able to classify the stage correctly and display appropriate treatment planning based on the doctor evaluation. The results from this study indicate that CBR coupled with NN techniques have great potentials to be used for a critical domain like medical. The proposed system is developed in the web-based platform, so that it can be accessed anytime, anywhere regardless of the geographical location.
format Thesis
id oai:etd.uum.edu.my:1304
institution Universiti Utara Malaysia
language English
English
publishDate 2005
record_format EPrints
record_pdf Restricted
spelling oai:etd.uum.edu.my:13042013-07-24T12:11:22Z https://etd.uum.edu.my/1304/ Breast Cancer Diagnosis Using Neuro-CBR Approach Norlia, Md. Yusof RC Internal medicine Breast cancer has become the number one cause of cancer deaths amongst women. Once a breast cancer is detected, it can be classified a benign (not cancerous tissue) or malignant (cancerous tissue). However, it is very difficult to distinguish benign from one that is malignant due to its variability associated with the appearances ofthe cancer. The problem leads to a motivation for a researcher in finding a technique that can enhance the performance of the previous breast cancer test detections. Among the techniques that could assist a specialist in diagnosing the breast cancer disease is computer-aided detection and diagnosis, abbreviated as CAD. CAD tools have exploited a wide range of AI technique since these technique are able to support CAD's needs. Hence, there is a need for multiple AI approach to support CAD. In this study, the Neural Network (NN) simulator with backpropagation algorithm was developed to predict the condition of the breast cancer tumor whether it is benign or maligant and Case-Base Reasoning (CBR) engine developed to classify the cancer stages as well as suggesting appropriate treatment to the patient. In CBR, mono symbolic valued was used for training and testing purpose. NN model obtained 98.60% accuracy clasification. This implies that NN model can be used as an inductive, or exploratory, analytical tool for the prediction for the breast cancer tissue. Experimental result also shows that CBR is able to classify the stage correctly and display appropriate treatment planning based on the doctor evaluation. The results from this study indicate that CBR coupled with NN techniques have great potentials to be used for a critical domain like medical. The proposed system is developed in the web-based platform, so that it can be accessed anytime, anywhere regardless of the geographical location. 2005-04-06 Thesis NonPeerReviewed application/pdf en https://etd.uum.edu.my/1304/1/NORLIA_BT._MD._YUSOF.pdf application/pdf en https://etd.uum.edu.my/1304/2/1.NORLIA_BT._MD._YUSOF.pdf Norlia, Md. Yusof (2005) Breast Cancer Diagnosis Using Neuro-CBR Approach. Masters thesis, Universiti Utara Malaysia.
spellingShingle RC Internal medicine
Norlia, Md. Yusof
Breast Cancer Diagnosis Using Neuro-CBR Approach
thesis_level Master
title Breast Cancer Diagnosis Using Neuro-CBR Approach
title_full Breast Cancer Diagnosis Using Neuro-CBR Approach
title_fullStr Breast Cancer Diagnosis Using Neuro-CBR Approach
title_full_unstemmed Breast Cancer Diagnosis Using Neuro-CBR Approach
title_short Breast Cancer Diagnosis Using Neuro-CBR Approach
title_sort breast cancer diagnosis using neuro cbr approach
topic RC Internal medicine
url https://etd.uum.edu.my/1304/1/NORLIA_BT._MD._YUSOF.pdf
https://etd.uum.edu.my/1304/2/1.NORLIA_BT._MD._YUSOF.pdf
https://etd.uum.edu.my/1304/
work_keys_str_mv AT norliamdyusof breastcancerdiagnosisusingneurocbrapproach