Covid-19 mortality risk prediction using small dataset of chest x-ray images

COVID-19 outbreak ravaged the whole world starting from the early part of 2020. The rapid spread of the pandemic accounts for the major reason the world was thrown into panic mode and pervasive confusion. However, COVID-19’s greatest strength is its virility but its severity on an individual is most...

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Main Authors: Olowolayemo, Akeem, Shams, Wafaa Khazaal, Omer, Abubakar Yagoub Ibrahim, Mohammed, Yasin, Batha, Mohammed Raashid Salih
Format: Article
Language:English
Published: Bon View Publishing Pte Ltd. 2023
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Online Access:http://irep.iium.edu.my/95715/1/95715_Covid-19%20mortality%20risk%20prediction_In%20Press.pdf
http://irep.iium.edu.my/95715/
https://ojs.bonviewpress.com/index.php/AIA/article/view/819
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spelling my.iium.irep.957152023-09-27T01:26:30Z http://irep.iium.edu.my/95715/ Covid-19 mortality risk prediction using small dataset of chest x-ray images Olowolayemo, Akeem Shams, Wafaa Khazaal Omer, Abubakar Yagoub Ibrahim Mohammed, Yasin Batha, Mohammed Raashid Salih QA75 Electronic computers. Computer science COVID-19 outbreak ravaged the whole world starting from the early part of 2020. The rapid spread of the pandemic accounts for the major reason the world was thrown into panic mode and pervasive confusion. However, COVID-19’s greatest strength is its virility but its severity on an individual is mostly ambiguous, which is dependent on the particular individual. This, combined with the increasingly limited capacity of the global healthcare infrastructure warrants some mechanism that can predict the prognosis of an individual to better determine if the patient would require hospital resources or be better treated as an outpatient. The lack of such a mechanism leads to suboptimal utilization of valuable hospital resources leading to unnecessary loss of life. However, often at the onset of a pandemic such as it was experienced during the outbreak of COVID-19, ample and appropriately labelled dataset to build accurate deep learning models to assist in this respect was limited. In this vein, frantic efforts were made to acquire dataset to train deep learning models for the stated objectives, unfortunately only a small dataset from a single source was available at the time of the study. Consequently, deep learning models based on the ResNet-18 architecture were trained on a small dataset of chest X-rays of patients infected with COVID-19 to predict mortality risk. The models exhibit considerable accuracy with high sensitivity. The appropriateness of the techniques proposed in this study for predictive modelling maybe particularly suited when only small datasets are available especially at the onset of similar pandemics. From existing literature, models with low complexity such as ResNet perform better with small dataset. Hence, this study utilised ResNet-18 as the baseline to evaluate the performance of other popular models on small datasets. The performance of the baseline models based on ResNet-18 with an accuracy of 0.89 compared favourably with those of the several other models including AlexNet, MobileNetV3, EfficientNetV2, SwinTransformer, and ConvNeXt using the same datasets and similar parameters. Bon View Publishing Pte Ltd. 2023-09-13 Article PeerReviewed application/pdf en http://irep.iium.edu.my/95715/1/95715_Covid-19%20mortality%20risk%20prediction_In%20Press.pdf Olowolayemo, Akeem and Shams, Wafaa Khazaal and Omer, Abubakar Yagoub Ibrahim and Mohammed, Yasin and Batha, Mohammed Raashid Salih (2023) Covid-19 mortality risk prediction using small dataset of chest x-ray images. Artificial Intelligence and Applications (AIA). ISSN 2811-0854 (In Press) https://ojs.bonviewpress.com/index.php/AIA/article/view/819
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Olowolayemo, Akeem
Shams, Wafaa Khazaal
Omer, Abubakar Yagoub Ibrahim
Mohammed, Yasin
Batha, Mohammed Raashid Salih
Covid-19 mortality risk prediction using small dataset of chest x-ray images
description COVID-19 outbreak ravaged the whole world starting from the early part of 2020. The rapid spread of the pandemic accounts for the major reason the world was thrown into panic mode and pervasive confusion. However, COVID-19’s greatest strength is its virility but its severity on an individual is mostly ambiguous, which is dependent on the particular individual. This, combined with the increasingly limited capacity of the global healthcare infrastructure warrants some mechanism that can predict the prognosis of an individual to better determine if the patient would require hospital resources or be better treated as an outpatient. The lack of such a mechanism leads to suboptimal utilization of valuable hospital resources leading to unnecessary loss of life. However, often at the onset of a pandemic such as it was experienced during the outbreak of COVID-19, ample and appropriately labelled dataset to build accurate deep learning models to assist in this respect was limited. In this vein, frantic efforts were made to acquire dataset to train deep learning models for the stated objectives, unfortunately only a small dataset from a single source was available at the time of the study. Consequently, deep learning models based on the ResNet-18 architecture were trained on a small dataset of chest X-rays of patients infected with COVID-19 to predict mortality risk. The models exhibit considerable accuracy with high sensitivity. The appropriateness of the techniques proposed in this study for predictive modelling maybe particularly suited when only small datasets are available especially at the onset of similar pandemics. From existing literature, models with low complexity such as ResNet perform better with small dataset. Hence, this study utilised ResNet-18 as the baseline to evaluate the performance of other popular models on small datasets. The performance of the baseline models based on ResNet-18 with an accuracy of 0.89 compared favourably with those of the several other models including AlexNet, MobileNetV3, EfficientNetV2, SwinTransformer, and ConvNeXt using the same datasets and similar parameters.
format Article
author Olowolayemo, Akeem
Shams, Wafaa Khazaal
Omer, Abubakar Yagoub Ibrahim
Mohammed, Yasin
Batha, Mohammed Raashid Salih
author_facet Olowolayemo, Akeem
Shams, Wafaa Khazaal
Omer, Abubakar Yagoub Ibrahim
Mohammed, Yasin
Batha, Mohammed Raashid Salih
author_sort Olowolayemo, Akeem
title Covid-19 mortality risk prediction using small dataset of chest x-ray images
title_short Covid-19 mortality risk prediction using small dataset of chest x-ray images
title_full Covid-19 mortality risk prediction using small dataset of chest x-ray images
title_fullStr Covid-19 mortality risk prediction using small dataset of chest x-ray images
title_full_unstemmed Covid-19 mortality risk prediction using small dataset of chest x-ray images
title_sort covid-19 mortality risk prediction using small dataset of chest x-ray images
publisher Bon View Publishing Pte Ltd.
publishDate 2023
url http://irep.iium.edu.my/95715/1/95715_Covid-19%20mortality%20risk%20prediction_In%20Press.pdf
http://irep.iium.edu.my/95715/
https://ojs.bonviewpress.com/index.php/AIA/article/view/819
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score 13.209306