Diagnosis of lung cancer disease based on back-propagation artificial neuralnetwork algorithm

Joint Authors

Haddad, Suhad Q. G. H.
Akkar, Hanan Abd al-Rida

Source

Engineering and Technology Journal

Issue

Vol. 38, Issue 3B (31 Mar. 2020), pp.184-196, 13 p.

Publisher

University of Technology

Publication Date

2020-03-31

Country of Publication

Iraq

No. of Pages

13

Main Subjects

Medicine
Information Technology and Computer Science

Topics

Abstract EN

Early stage detection of lung cancer is important for successful controlling of the diseases, alsoto offer additional chance to the patients in order to survive.

So, algorithms that are related with computer vision and Image processing are extremely important for early medical diagnosis of lung cancer.

In current work ()computed tomography scan images were collected from several patients Classification was done using BackPropagation Artificial Neural Network ().

It is considered as a powerful artificially intelligent technique with training rule for optimization to update the weights of the overall connections in order to determinethe abnormal image.

Several pre-processing operations and morphologic techniques were introduced to improve the condition of the image and make it suitable for detection cancer.

Histogram and () Gray Level Co-occurrence Matrix wereapplied toget best featuresextraction analysis from lung image.

Three types of activation functions(trainlm, trainbr, traingd)were used which gives a significant accuracy for detecting cancer in scan lung image related to the suggested algorithm.

Best results were obtained withaccuracy rate 95.9 % intrainlm activation function.

.

GraphicUser Interface ( )was displaying to show the final diagnosis Early stage detection of lung cancer is important for successful controlling of the diseases, alsoto offer additional chance to the patients in order to survive.

So, algorithms that are related with computer vision and Image processing are extremely important for early medical diagnosis of lung cancer.

In current work ()computed tomography scan images were collected from several patients Classification was done using BackPropagation Artificial Neural Network ().

It is considered as a powerful artificially intelligent technique with training rule for optimization to update the weights of the overall connections in order to determinethe abnormal image.

Several pre-processing operations and morphologic techniques were introduced to improve the condition of the image and make it suitable for detection cancer.

Histogram and () Gray Level Co-occurrence Matrix wereapplied toget best featuresextraction analysis from lung image.

Three types of activation functions(trainlm, trainbr, traingd)were used which gives a significant accuracy for detecting cancer in scan lung image related to the suggested algorithm.

Best results were obtained withaccuracy rate 95.9 % intrainlm activation function.

.

GraphicUser Interface ( )was displaying to show the final diagnosis forlung

American Psychological Association (APA)

Akkar, Hanan Abd al-Rida& Haddad, Suhad Q. G. H.. 2020. Diagnosis of lung cancer disease based on back-propagation artificial neuralnetwork algorithm. Engineering and Technology Journal،Vol. 38, no. 3B, pp.184-196.
https://search.emarefa.net/detail/BIM-1020784

Modern Language Association (MLA)

Akkar, Hanan Abd al-Rida& Haddad, Suhad Q. G. H.. Diagnosis of lung cancer disease based on back-propagation artificial neuralnetwork algorithm. Engineering and Technology Journal Vol. 38, no. 3B (2020), pp.184-196.
https://search.emarefa.net/detail/BIM-1020784

American Medical Association (AMA)

Akkar, Hanan Abd al-Rida& Haddad, Suhad Q. G. H.. Diagnosis of lung cancer disease based on back-propagation artificial neuralnetwork algorithm. Engineering and Technology Journal. 2020. Vol. 38, no. 3B, pp.184-196.
https://search.emarefa.net/detail/BIM-1020784

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 195-196

Record ID

BIM-1020784