Authors:
(1) JunJie Wee, Department of Mathematics, Michigan State University;
(2) Jiahui Chen, Department of Mathematical Sciences, University of Arkansas;
(3) Kelin Xia, Division of Mathematical Sciences, School of Physical and Mathematical Sciences Nanyang Technological University & [email protected];
(4)Guo-Wei Wei, Department of Mathematics, Michigan State University, Department of Biochemistry and Molecular Biology, Michigan State University, Department of Electrical and Computer Engineering, Michigan State University & [email protected].
Table of Links
Abstract & Introduction
Results
Discussion
Conclusion
Materials and Methods
Software and resources, Code and Data Availability
Supporting Information, Acknowledgments & References
Supporting Information is available for supplementary tables, figures, and methods.
Acknowledgments
This work was supported in part by NIH grants R01GM126189, R01AI164266, and R01AI146210, NSF grants DMS-2052983, DMS-1761320, and IIS-1900473, NASA grant 80NSSC21M0023, MSU Foundation, Bristol-Myers Squibb 65109, and Pfizer. It was supported in part by Nanyang Technological University Startup Grant M4081842.110, Singapore Ministry of Education Academic Research fund Tier 1 RG109/19 and Tier 2 MOE-T2EP20120-0013, MOE-T2EP20220- 0010, and MOE-T2EP20221-0003.
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