Multi Paths Technique On Convolutional Neural Network For Lung Cancer Detection Based On Histopathological Images

Lung cancer is the leading cancer cause of death and it's survival rate is very small. An early diagnosis is a good solution to increase the survival rate for lung cancer. To diagnose lung cancer using deep learning we present a convolutional neural network to diagnose three types of lung cance...

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Veröffentlicht in:International journal of advanced networking and applications 2020-09, Vol.12 (2), p.4549-4554
Hauptverfasser: Saif, Amin, Qasim, Yakoop Razzaz Hamoud, Al-Sameai, Habeb Abdulkhaleq Mohammed Hassan, Farhan Ali, Osamah Abdo, Hassan, Abdulelah Abdulkhaleq Mohammed
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container_issue 2
container_start_page 4549
container_title International journal of advanced networking and applications
container_volume 12
creator Saif, Amin
Qasim, Yakoop Razzaz Hamoud
Al-Sameai, Habeb Abdulkhaleq Mohammed Hassan
Farhan Ali, Osamah Abdo
Hassan, Abdulelah Abdulkhaleq Mohammed
description Lung cancer is the leading cancer cause of death and it's survival rate is very small. An early diagnosis is a good solution to increase the survival rate for lung cancer. To diagnose lung cancer using deep learning we present a convolutional neural network to diagnose three types of lung cancer (Adenocarcinoma, Benign and Squamous) based on histopathological images. The proposed model consists of a main path and three sub-paths. The main path works to extract the small features and creates feature maps at low-level. As for the sub-paths is responsible for transferring the medium and high levels feature maps to fully connected layers to complete the classification process, also the VGG16 was prepared to compare it with the performance of the proposed. After training the models and testing them on 1500 images, we obtained an overall accuracy of 98.53% for the proposed model and 96.67% for the VGG16 model. The proposed model achieved a sensitivity of 97.4%, 99.6% and 98.6% for Adenocarcinoma, Benign and Squamous respectively. We can say that it is not always necessary for the used to be very deep to diagnose histopathological images, and the most important thing is to create a sufficient number of feature maps at different levels.
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subjects Accuracy
Artificial intelligence
Artificial neural networks
Datasets
Deep learning
Feature extraction
Feature maps
Genetic algorithms
Lung cancer
Machine learning
Medical imaging
Neural networks
Survival
title Multi Paths Technique On Convolutional Neural Network For Lung Cancer Detection Based On Histopathological Images
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