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A Deep Learning Prognosis Model Help Alert for COVID-19 Patients at High-Risk of Death: A Multi-Center Study
79
Zitationen
9
Autoren
2020
Jahr
Abstract
Since its outbreak in December 2019, the persistent coronavirus disease (COVID-19) became a global health emergency. It is imperative to develop a prognostic tool to identify high-risk patients and assist in the formulation of treatment plans. We retrospectively collected 366 severe or critical COVID-19 patients from four centers, including 70 patients who died within 14 days (labeled as high-risk patients) since their initial CT scan and 296 who survived more than 14 days or were cured (labeled as low-risk patients). We developed a 3D densely connected convolutional neural network (termed De-COVID19-Net) to predict the probability of COVID-19 patients belonging to the high-risk or low-risk group, combining CT and clinical information. The area under the curve (AUC) and other evaluation techniques were used to assess our model. The De-COVID19-Net yielded an AUC of 0.952 (95% confidence interval, 0.928-0.977) on the training set and 0.943 (0.904-0.981) on the test set. The stratified analyses indicated that our model's performance is independent of age, sex, and with/without chronic diseases. The Kaplan-Meier analysis revealed that our model could significantly categorize patients into high-risk and low-risk groups (p < 0.001). In conclusion, De-COVID19-Net can non-invasively predict whether a patient will die shortly based on the patient's initial CT scan with an impressive performance, which indicated that it could be used as a potential prognosis tool to alert high-risk patients and intervene in advance.
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Autoren
Institutionen
- Chinese Academy of Sciences(CN)
- Beijing Academy of Artificial Intelligence(CN)
- Shandong Institute of Automation(CN)
- University of Chinese Academy of Sciences(CN)
- Wuhan University(CN)
- Renmin Hospital of Wuhan University(CN)
- Harbin Medical University(CN)
- China Medical University(CN)
- First Hospital of China Medical University(CN)
- Second Affiliated Hospital of Harbin Medical University(CN)
- Zhengzhou University(CN)
- Henan Provincial People's Hospital(CN)
- Hubei Polytechnic University(CN)
- Huangshi Central Hospital(CN)
- Beihang University(CN)
- Jinan University(CN)
- Zhuhai People's Hospital(CN)