Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121
The primary diagnosis of COVID-19 is the RT-PCR test, but it was found that RT-PCR has the disadvantage of low sensitivity in the early phase of infection. Chest CT has the advantage of higher sensitivity in the early phase of infection compared to RT-PCR, so it can be used as a complement to the RT...
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Format: | Thesis |
Language: | English |
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2024
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Online Access: | https://repository.ugm.ac.id/285973/1/Model%20Deteksi%20COVID-19%20dari%20Citra%20CT%20Scan%20Dada%20Menggunakan%20DenseNet-121.pdf |
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author | Maulana, Abdillah Hanif |
author_facet | Maulana, Abdillah Hanif |
author_sort | Maulana, Abdillah Hanif |
collection | UGM |
description | The primary diagnosis of COVID-19 is the RT-PCR test, but it was found that RT-PCR has the disadvantage of low sensitivity in the early phase of infection. Chest CT has the advantage of higher sensitivity in the early phase of infection compared to RT-PCR, so it can be used as a complement to the RT-PCR test to help reduce the spread of COVID-19 due to false negative results. To help medical personnel, Deep Learning can be used to automate the COVID-19 detection process via chest CT images.
In this research, a COVID-19 detection model was built by transfer learning of DenseNet-121. Several variations were done, that is without & with fine tuning, also variations on Learning Rate (LR) which was default LR (0.001) & LR obtained from Learning Rate Finder (0.0001). The model was trained using ReduceLROnPlateau & EarlyStopping callbacks. The dataset used was a dataset made of 3 classes (Normal, Pneumonia, & COVID-19) from COVIDx CT-2A which has gone through an undersampling process & various types of image augmentation. The model performance was then evaluated using various evaluation metrics namely accuracy, sensitivity, precision, & specificity.
The best results obtained were from the model with fine tuning & LR obtained from Learning Rate Finder. This model worked well, with an accuracy of 97.64%; precision of 96.49%; sensitivity of 96.43%; & specificity of 98.25%. |
first_indexed | 2024-09-25T03:59:00Z |
format | Thesis |
id | oai:generic.eprints.org:285973 |
institution | Universiti Gadjah Mada |
language | English |
last_indexed | 2024-09-25T03:59:00Z |
publishDate | 2024 |
record_format | dspace |
spelling | oai:generic.eprints.org:2859732024-05-17T01:38:07Z https://repository.ugm.ac.id/285973/ Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 Maulana, Abdillah Hanif Biomedical Engineering not elsewhere classified Engineering not elsewhere classified The primary diagnosis of COVID-19 is the RT-PCR test, but it was found that RT-PCR has the disadvantage of low sensitivity in the early phase of infection. Chest CT has the advantage of higher sensitivity in the early phase of infection compared to RT-PCR, so it can be used as a complement to the RT-PCR test to help reduce the spread of COVID-19 due to false negative results. To help medical personnel, Deep Learning can be used to automate the COVID-19 detection process via chest CT images. In this research, a COVID-19 detection model was built by transfer learning of DenseNet-121. Several variations were done, that is without & with fine tuning, also variations on Learning Rate (LR) which was default LR (0.001) & LR obtained from Learning Rate Finder (0.0001). The model was trained using ReduceLROnPlateau & EarlyStopping callbacks. The dataset used was a dataset made of 3 classes (Normal, Pneumonia, & COVID-19) from COVIDx CT-2A which has gone through an undersampling process & various types of image augmentation. The model performance was then evaluated using various evaluation metrics namely accuracy, sensitivity, precision, & specificity. The best results obtained were from the model with fine tuning & LR obtained from Learning Rate Finder. This model worked well, with an accuracy of 97.64%; precision of 96.49%; sensitivity of 96.43%; & specificity of 98.25%. 2024-03-28 Thesis NonPeerReviewed application/pdf en https://repository.ugm.ac.id/285973/1/Model%20Deteksi%20COVID-19%20dari%20Citra%20CT%20Scan%20Dada%20Menggunakan%20DenseNet-121.pdf Maulana, Abdillah Hanif (2024) Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121. Bachelor thesis, Universitas Gadjah Mada. |
spellingShingle | Biomedical Engineering not elsewhere classified Engineering not elsewhere classified Maulana, Abdillah Hanif Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title | Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title_full | Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title_fullStr | Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title_full_unstemmed | Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title_short | Model Deteksi COVID-19 dari Citra CT Scan Dada Menggunakan DenseNet-121 |
title_sort | model deteksi covid 19 dari citra ct scan dada menggunakan densenet 121 |
topic | Biomedical Engineering not elsewhere classified Engineering not elsewhere classified |
url | https://repository.ugm.ac.id/285973/1/Model%20Deteksi%20COVID-19%20dari%20Citra%20CT%20Scan%20Dada%20Menggunakan%20DenseNet-121.pdf |
work_keys_str_mv | AT maulanaabdillahhanif modeldeteksicovid19daricitractscandadamenggunakandensenet121 |