Analyzing Lung Disease Using Highly Effective Deep Learning Techniques
Image processing technologies and computer-aided diagnosis are medical technologies used to support decision-making processes of radiologists and medical professionals who provide treatment for lung disease. These methods involve using chest X-ray images to diagnose and detect lung lesions, but some...
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doaj-6f192cac3e4040f896be3854eb1dbae62020-11-25T03:01:39ZengMDPI AGHealthcare2227-90322020-04-01810710710.3390/healthcare8020107Analyzing Lung Disease Using Highly Effective Deep Learning TechniquesKrit Sriporn0Cheng-Fa Tsai1Chia-En Tsai2Paohsi Wang3Department of Tropical Agriculture and International Cooperation, National Pingtung University of Science and Technology, Pingtung 91201, TaiwanDepartment of Management Information Systems, National Pingtung University of Science and Technology, Pingtung 91201, TaiwanDepartment of Biochemistry and Molecular Biology, National Cheng Kung University, Tainan 70101, TaiwanDepartment of Food and Beverage Management, Cheng Shiu University, Kaohsiung 83347, TaiwanImage processing technologies and computer-aided diagnosis are medical technologies used to support decision-making processes of radiologists and medical professionals who provide treatment for lung disease. These methods involve using chest X-ray images to diagnose and detect lung lesions, but sometimes there are abnormal cases that take some time to occur. This experiment used 5810 images for training and validation with the MobileNet, Densenet-121 and Resnet-50 models, which are popular networks used to classify the accuracy of images, and utilized a rotational technique to adjust the lung disease dataset to support learning with these convolutional neural network models. The results of the convolutional neural network model evaluation showed that Densenet-121, with a state-of-the-art Mish activation function and Nadam-optimized performance. All the rates for accuracy, recall, precision and F1 measures totaled 98.88%. We then used this model to test 10% of the total images from the non-dataset training and validation. The accuracy rate was 98.97% for the result which provided significant components for the development of a computer-aided diagnosis system to yield the best performance for the detection of lung lesions.https://www.mdpi.com/2227-9032/8/2/107convolutional neural networkoptimizer methodslung diseaseimage classificationimage processingMish activation function |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Krit Sriporn Cheng-Fa Tsai Chia-En Tsai Paohsi Wang |
spellingShingle |
Krit Sriporn Cheng-Fa Tsai Chia-En Tsai Paohsi Wang Analyzing Lung Disease Using Highly Effective Deep Learning Techniques Healthcare convolutional neural network optimizer methods lung disease image classification image processing Mish activation function |
author_facet |
Krit Sriporn Cheng-Fa Tsai Chia-En Tsai Paohsi Wang |
author_sort |
Krit Sriporn |
title |
Analyzing Lung Disease Using Highly Effective Deep Learning Techniques |
title_short |
Analyzing Lung Disease Using Highly Effective Deep Learning Techniques |
title_full |
Analyzing Lung Disease Using Highly Effective Deep Learning Techniques |
title_fullStr |
Analyzing Lung Disease Using Highly Effective Deep Learning Techniques |
title_full_unstemmed |
Analyzing Lung Disease Using Highly Effective Deep Learning Techniques |
title_sort |
analyzing lung disease using highly effective deep learning techniques |
publisher |
MDPI AG |
series |
Healthcare |
issn |
2227-9032 |
publishDate |
2020-04-01 |
description |
Image processing technologies and computer-aided diagnosis are medical technologies used to support decision-making processes of radiologists and medical professionals who provide treatment for lung disease. These methods involve using chest X-ray images to diagnose and detect lung lesions, but sometimes there are abnormal cases that take some time to occur. This experiment used 5810 images for training and validation with the MobileNet, Densenet-121 and Resnet-50 models, which are popular networks used to classify the accuracy of images, and utilized a rotational technique to adjust the lung disease dataset to support learning with these convolutional neural network models. The results of the convolutional neural network model evaluation showed that Densenet-121, with a state-of-the-art Mish activation function and Nadam-optimized performance. All the rates for accuracy, recall, precision and F1 measures totaled 98.88%. We then used this model to test 10% of the total images from the non-dataset training and validation. The accuracy rate was 98.97% for the result which provided significant components for the development of a computer-aided diagnosis system to yield the best performance for the detection of lung lesions. |
topic |
convolutional neural network optimizer methods lung disease image classification image processing Mish activation function |
url |
https://www.mdpi.com/2227-9032/8/2/107 |
work_keys_str_mv |
AT kritsriporn analyzinglungdiseaseusinghighlyeffectivedeeplearningtechniques AT chengfatsai analyzinglungdiseaseusinghighlyeffectivedeeplearningtechniques AT chiaentsai analyzinglungdiseaseusinghighlyeffectivedeeplearningtechniques AT paohsiwang analyzinglungdiseaseusinghighlyeffectivedeeplearningtechniques |
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