Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network

Ovarian Cancer is one of the most common causes of death for women in developing countries. Screening and early diagnoses of OC are urgently needed. Early diagnosis would help in consequence procedures and treatment. Mass spectrometry (MS) data is been used as an effective component of cancer diagn...

Full description

Bibliographic Details
Main Author: Zainab Harbi
Format: Article
Language:English
Published: College of Education for Pure Sciences 2023-09-01
Series:Wasit Journal for Pure Sciences
Online Access:https://wjps.uowasit.edu.iq/index.php/wjps/article/view/172
_version_ 1797288347232632832
author Zainab Harbi
author_facet Zainab Harbi
author_sort Zainab Harbi
collection DOAJ
description Ovarian Cancer is one of the most common causes of death for women in developing countries. Screening and early diagnoses of OC are urgently needed. Early diagnosis would help in consequence procedures and treatment. Mass spectrometry (MS) data is been used as an effective component of cancer diagnosis tools. However, these valuable data have a large number of dimensions that can affect the learning process in addition to time-consuming considerations. Feature selection plays an important role in reducing information redundancy, and deals with the invalidation that occurs in basic classification algorithms when there are too many features and huge datasets. To improve the automatic system diagnosis accuracy, entropy-based selection features are proposed. These features are combined with the novel learning capabilities of neural networks to achieve higher diagnostic accuracy. Experiments have been performed using different feature selection algorithms and machine learning classification approaches. Experimental results have proved that the proposed system performs better based on the measure of accuracy.
first_indexed 2024-03-07T18:48:01Z
format Article
id doaj.art-1a6dc90dd1db42ba9688ff796dd8e43a
institution Directory Open Access Journal
issn 2790-5233
2790-5241
language English
last_indexed 2024-03-07T18:48:01Z
publishDate 2023-09-01
publisher College of Education for Pure Sciences
record_format Article
series Wasit Journal for Pure Sciences
spelling doaj.art-1a6dc90dd1db42ba9688ff796dd8e43a2024-03-02T02:02:50ZengCollege of Education for Pure SciencesWasit Journal for Pure Sciences2790-52332790-52412023-09-012310.31185/wjps.172Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural NetworkZainab Harbi0Kufa university Ovarian Cancer is one of the most common causes of death for women in developing countries. Screening and early diagnoses of OC are urgently needed. Early diagnosis would help in consequence procedures and treatment. Mass spectrometry (MS) data is been used as an effective component of cancer diagnosis tools. However, these valuable data have a large number of dimensions that can affect the learning process in addition to time-consuming considerations. Feature selection plays an important role in reducing information redundancy, and deals with the invalidation that occurs in basic classification algorithms when there are too many features and huge datasets. To improve the automatic system diagnosis accuracy, entropy-based selection features are proposed. These features are combined with the novel learning capabilities of neural networks to achieve higher diagnostic accuracy. Experiments have been performed using different feature selection algorithms and machine learning classification approaches. Experimental results have proved that the proposed system performs better based on the measure of accuracy. https://wjps.uowasit.edu.iq/index.php/wjps/article/view/172
spellingShingle Zainab Harbi
Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
Wasit Journal for Pure Sciences
title Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
title_full Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
title_fullStr Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
title_full_unstemmed Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
title_short Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network
title_sort automatic diagnosis of ovarian cancer based on relative entropy and neural network
url https://wjps.uowasit.edu.iq/index.php/wjps/article/view/172
work_keys_str_mv AT zainabharbi automaticdiagnosisofovariancancerbasedonrelativeentropyandneuralnetwork