TY - JOUR
T1 - COVID-19 Infection Percentage Estimation from Computed Tomography Scans
T2 - Results and Insights from the International Per-COVID-19 Challenge
AU - Bougourzi, Fares
AU - Distante, Cosimo
AU - Dornaika, Fadi
AU - Taleb-Ahmed, Abdelmalik
AU - Hadid, Abdenour
AU - Chaudhary, Suman
AU - Yang, Wanting
AU - Qiang, Yan
AU - Anwar, Talha
AU - Breaban, Mihaela Elena
AU - Hsu, Chih Chung
AU - Tai, Shen Chieh
AU - Chen, Shao Ning
AU - Tricarico, Davide
AU - Chaudhry, Hafiza Ayesha Hoor
AU - Fiandrotti, Attilio
AU - Grangetto, Marco
AU - Spatafora, Maria Ausilia Napoli
AU - Ortis, Alessandro
AU - Battiato, Sebastiano
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/3
Y1 - 2024/3
N2 - COVID-19 analysis from medical imaging is an important task that has been intensively studied in the last years due to the spread of the COVID-19 pandemic. In fact, medical imaging has often been used as a complementary or main tool to recognize the infected persons. On the other hand, medical imaging has the ability to provide more details about COVID-19 infection, including its severity and spread, which makes it possible to evaluate the infection and follow-up the patient’s state. CT scans are the most informative tool for COVID-19 infection, where the evaluation of COVID-19 infection is usually performed through infection segmentation. However, segmentation is a tedious task that requires much effort and time from expert radiologists. To deal with this limitation, an efficient framework for estimating COVID-19 infection as a regression task is proposed. The goal of the Per-COVID-19 challenge is to test the efficiency of modern deep learning methods on COVID-19 infection percentage estimation (CIPE) from CT scans. Participants had to develop an efficient deep learning approach that can learn from noisy data. In addition, participants had to cope with many challenges, including those related to COVID-19 infection complexity and crossdataset scenarios. This paper provides an overview of the COVID-19 infection percentage estimation challenge (Per-COVID-19) held at MIA-COVID-2022. Details of the competition data, challenges, and evaluation metrics are presented. The best performing approaches and their results are described and discussed.
AB - COVID-19 analysis from medical imaging is an important task that has been intensively studied in the last years due to the spread of the COVID-19 pandemic. In fact, medical imaging has often been used as a complementary or main tool to recognize the infected persons. On the other hand, medical imaging has the ability to provide more details about COVID-19 infection, including its severity and spread, which makes it possible to evaluate the infection and follow-up the patient’s state. CT scans are the most informative tool for COVID-19 infection, where the evaluation of COVID-19 infection is usually performed through infection segmentation. However, segmentation is a tedious task that requires much effort and time from expert radiologists. To deal with this limitation, an efficient framework for estimating COVID-19 infection as a regression task is proposed. The goal of the Per-COVID-19 challenge is to test the efficiency of modern deep learning methods on COVID-19 infection percentage estimation (CIPE) from CT scans. Participants had to develop an efficient deep learning approach that can learn from noisy data. In addition, participants had to cope with many challenges, including those related to COVID-19 infection complexity and crossdataset scenarios. This paper provides an overview of the COVID-19 infection percentage estimation challenge (Per-COVID-19) held at MIA-COVID-2022. Details of the competition data, challenges, and evaluation metrics are presented. The best performing approaches and their results are described and discussed.
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U2 - 10.3390/s24051557
DO - 10.3390/s24051557
M3 - Article
C2 - 38475092
AN - SCOPUS:85187459025
SN - 1424-3210
VL - 24
JO - Sensors
JF - Sensors
IS - 5
M1 - 1557
ER -