TY - GEN
T1 - Exploring Supervised and Unsupervised Learning Techniques to Detect Ground-Glass Opacities in CT Images for COVID-19
AU - Quispe, Sharon
AU - Arellano, Ingrid
AU - Shiguihara, Pedro
AU - Valverde-Rebaza, Jorge
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - In the continuous effort to mitigate the impacts of coronavirus disease (COVID-19) on global health, artificial intelligence (AI) has emerged as a promising ally, offering potential breakthroughs in the diagnosis and prognosis of lung diseases. Indeed, the use of supervised and unsupervised learning methods has the potential to aid in clinical decision-making and contribute to the comprehension of novel diseases. This study provides a comparative analysis of unsupervised and supervised methodolo-gies for accurately identifying ground-glass opacity (GGO) areas in CT scans. The GGO pulmonary lesion acts as a key diagnos-tic indicator of COVID-19 infection. Given the labor-intensive process of manually segmenting large chest CT datasets, there is an urgent requirement for dependable automated methods that facilitate efficient analysis of chest CT anatomy within extensive research databases. This need is particularly pronounced for less frequently annotated areas, such as pulmonary consolidations and radiological findings such as GGO lesions. To tackle this challenge, our study evaluates the performance of supervised and unsupervised learning methods using dice score, precision, and accuracy metrics. The evaluations are conducted on various datasets of annotated CT scans from COVID-19 patients. We consider that these findings are important in the context of COVID-19 diagnosis from CT scans and the relevance of both supervised and unsupervised learning techniques. Finally, we offer the open-source code of the experiments carried out in the research at https://github.com/gicc-lab/gicc_aimdai.
AB - In the continuous effort to mitigate the impacts of coronavirus disease (COVID-19) on global health, artificial intelligence (AI) has emerged as a promising ally, offering potential breakthroughs in the diagnosis and prognosis of lung diseases. Indeed, the use of supervised and unsupervised learning methods has the potential to aid in clinical decision-making and contribute to the comprehension of novel diseases. This study provides a comparative analysis of unsupervised and supervised methodolo-gies for accurately identifying ground-glass opacity (GGO) areas in CT scans. The GGO pulmonary lesion acts as a key diagnos-tic indicator of COVID-19 infection. Given the labor-intensive process of manually segmenting large chest CT datasets, there is an urgent requirement for dependable automated methods that facilitate efficient analysis of chest CT anatomy within extensive research databases. This need is particularly pronounced for less frequently annotated areas, such as pulmonary consolidations and radiological findings such as GGO lesions. To tackle this challenge, our study evaluates the performance of supervised and unsupervised learning methods using dice score, precision, and accuracy metrics. The evaluations are conducted on various datasets of annotated CT scans from COVID-19 patients. We consider that these findings are important in the context of COVID-19 diagnosis from CT scans and the relevance of both supervised and unsupervised learning techniques. Finally, we offer the open-source code of the experiments carried out in the research at https://github.com/gicc-lab/gicc_aimdai.
KW - computed tomography
KW - ground-glass opacity
KW - machine learning
KW - segmentation
UR - http://www.scopus.com/inward/record.url?scp=85211902237&partnerID=8YFLogxK
U2 - 10.1109/ANDESCON61840.2024.10755619
DO - 10.1109/ANDESCON61840.2024.10755619
M3 - Contribución a la conferencia
AN - SCOPUS:85211902237
T3 - IEEE Andescon, ANDESCON 2024 - Proceedings
BT - IEEE Andescon, ANDESCON 2024 - Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 12th IEEE Andescon, ANDESCON 2024
Y2 - 11 September 2024 through 13 September 2024
ER -