CT-based COVID-19 Triage: Deep Multitask Learning Improves Joint
Identification and Severity Quantification
- URL: http://arxiv.org/abs/2006.01441v3
- Date: Thu, 26 Nov 2020 05:32:20 GMT
- Title: CT-based COVID-19 Triage: Deep Multitask Learning Improves Joint
Identification and Severity Quantification
- Authors: Mikhail Goncharov, Maxim Pisov, Alexey Shevtsov, Boris Shirokikh,
Anvar Kurmukov, Ivan Blokhin, Valeria Chernina, Alexander Solovev, Victor
Gombolevskiy, Sergey Morozov, Mikhail Belyaev
- Abstract summary: We describe two basic setups: Identification of COVID-19 to prioritize studies of potentially infected patients to isolate them as early as possible; Severity quantification to highlight studies of severe patients and direct them to a hospital or provide emergency medical care.
We propose a multitask approach to consolidate both triage approaches and propose a convolutional neural network to combine all available labels within a single model.
We train our model on approximately 2000 publicly available CT studies and test it with a carefully designed set consisting of 32 COVID-19 studies, 30 cases with bacterial pneumonia, 31 healthy patients, and 30 patients with other lung pathologies to emulate a typical patient flow in
- Score: 45.86448200141968
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The current COVID-19 pandemic overloads healthcare systems, including
radiology departments. Though several deep learning approaches were developed
to assist in CT analysis, nobody considered study triage directly as a computer
science problem. We describe two basic setups: Identification of COVID-19 to
prioritize studies of potentially infected patients to isolate them as early as
possible; Severity quantification to highlight studies of severe patients and
direct them to a hospital or provide emergency medical care. We formalize these
tasks as binary classification and estimation of affected lung percentage.
Though similar problems were well-studied separately, we show that existing
methods provide reasonable quality only for one of these setups. We employ a
multitask approach to consolidate both triage approaches and propose a
convolutional neural network to combine all available labels within a single
model. In contrast with the most popular multitask approaches, we add
classification layers to the most spatially detailed upper part of U-Net
instead of the bottom, less detailed latent representation. We train our model
on approximately 2000 publicly available CT studies and test it with a
carefully designed set consisting of 32 COVID-19 studies, 30 cases with
bacterial pneumonia, 31 healthy patients, and 30 patients with other lung
pathologies to emulate a typical patient flow in an out-patient hospital. The
proposed multitask model outperforms the latent-based one and achieves ROC AUC
scores ranging from 0.87+-01 (bacterial pneumonia) to 0.97+-01 (healthy
controls) for Identification of COVID-19 and 0.97+-01 Spearman Correlation for
Severity quantification. We release all the code and create a public
leaderboard, where other community members can test their models on our test
dataset.
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