Li, 2022 - Google Patents
New Network Biology Approaches Towards Advancement of Understanding Aging and Malaria from-Omics DataLi, 2022
- Document ID
- 10382177071927090035
- Author
- Li Q
- Publication year
External Links
Snippet
Abnormalities of biological processes in cells often lead to complex diseases. Thus, understanding biological processes is critical. With the proliferation of biotechnologies, large amounts of-omics data capturing different slices of cellular functioning are generated …
- 230000032683 aging 0 title abstract description 1063
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