Skip to main content
Feedback to SSRN
Feedback
(required)
Email
(required)
Submit
Patrick Robinson
The University of North Carolina at Charlotte - Department of Public Health Sciences
United States
Learn more about SSRN Profiles
SCHOLARLY PAPERS
1
DOWNLOADS
299
TOTAL CITATIONS
1
Feedback
Scholarly Papers (1)
Sort by:
Paper Title, A-Z
Paper Title, Z-A
Author Name, A-Z
Author Name, Z-A
Date Posted, Ascending
Date Posted, Descending
Downloads, Ascending
Downloads, Descending
Citations, Ascending
Citations, Descending
Actions:
Email selected abstracts
View:
Selected
Original List
All Versions
Hide All Versions
All Abstracts
Hide All Abstracts
(Rank)
1.
An Interpretable Machine Learning Framework for Accurate Severe vs Non-Severe COVID-19 Clinical Type Classification
Number of pages: 24
Posted: 02 Oct 2020
Yuanfang Chen
,
Liu Ouyang
,
Forrest Sheng Bao
,
Qian Li
,
Lei Han
,
Baoli Zhu
,
Yaorong Ge
, Patrick Robinson,
Ming Xu
,
Jie Liu
and
Shi Chen
Public Health Research Institute of Jiangsu Province, Huazhong University of Science and Technology - Department of Orthopedics, Iowa State University - Department of Computer Science, Affiliated Kunshan Hospital of Jiangsu University - Department of Pediatrics, Jiangsu Provincial Center for Disease Control and Prevention - Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention - Institute of HIV/AIDS/STI Prevention and Control, University of North Carolina at Charlotte - Department of Software and Information Systems, The University of North Carolina at Charlotte - Department of Public Health Sciences, Jiangsu Provincial Center for Disease Control and Prevention - Institute of HIV/AIDS/STI Prevention and Control, Huazhong University of Science and Technology - Department of Radiology and The University of North Carolina at Charlotte - Department of Public Health Sciences
Downloads
299
(253,118)
Citation
1
View PDF
Download
Abstract:
COVID-19, machine learning, supervised learning, clinical classification
Feedback