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Artificial Intelligence/Machine
Learning (AI/ML) is the development of computer systems that are able to
perform tasks that would normally require human intelligence. AI/ML is used by
people every day, for example, while using smart home devices or digital voice
assistants.
The use of AI/ML is also rapidly
growing in biomedical research and health care. In a recent viewpoint paper,
investigators at Rutgers Cancer Institute of New Jersey and Rutgers New Jersey
Medical School (NJMS) explored how AI/ML will complement existing approaches
focused on genome-protein sequence information, including identifying mutations
in human tumors.
Stephen K. Burley, MD, DPhil,
co-program leader of the Cancer Pharmacology Research Program at Rutgers Cancer
Institute, and university professor and Henry Rutgers Chair and Director of the
Institute for Quantitative Biomedicine at Rutgers University, along with Renata
Pasqualini, PhD, resident member of Rutgers Cancer Institute and chief of the
Division of Cancer Biology, Department of Radiation Oncology at Rutgers NJMS,
and Wadih Arap, MD, PhD, director of Rutgers Cancer Institute at University
Hospital, co-program leader of the Clinical Investigations and Precision
Therapeutics Research Program at Rutgers Cancer Institute, and chief of the
Division of Hematology/Oncology, Department of Medicine at Rutgers NJMS, share
more insight on the paper, published online December 2 in The New England
Journal of Medicine.
What is the potential of AI/MI in
cancer research and clinical practice?
We foresee that the most immediate
applications of computed structure modeling will focus on point mutations
detected in human tumors (germline or somatic). Computed structure models of
frequently mutated oncoproteins (e.g., Epidermal Growth Factor Receptor, EGFR,
shown in Figure 2B of the paper) are already being used to help identify
cancer-driver genes, enable therapeutics discovery, explain drug resistance,
and inform treatment plans.
What are some of the biggest
challenges for AI/ML in healthcare?
In the broadest terms, the
essential challenges would likely include AI/ML research and development,
technology validation, efficient/equitable deployment and coherent integration
into the existing healthcare systems, and inherent issues related to the regulatory
environment along with complex medical reimbursement issues.
How will this technology have an
impact on vaccine design, especially with regard to SARS CoV2?
Going beyond 3D structure knowledge
across entire proteomes (parts lists for biology and biomedicine), accurate
computational modeling will enable analyses of clinically significant genetic
changes manifest in 3D by individual proteins. For example, the SARS-CoV-2
Delta Variant of Concern spike protein carries 13 amino changes.
Experimentally-determined 3D
structures of SARS-CoV-2 spike protein variants bound to various antibodies,
all available open access from the Protein Data Bank (rcsb.org), can be used
with computed structure models of new Variant of Concern spike proteins to
understand the potential impact other amino acid changes. In currently ongoing
work (as yet unpublished), we have used AI/ML approaches to understand the
structure-function relationship of SARS-CoV-2 Omicron Variant of Concern spike
protein (with more than 30 amino acid changes), illustrating practical and
immediate application of this emerging technology.
What is the next step to better
utilizing AI/ML in cancer research?
Development and equitable
dissemination of user-friendly tools that cancer biologists can use to understand
the three-dimensional structures proteins implicated in human cancers and how
somatic mutations affect structure and function leading to uncontrolled tumor
cell proliferation.
출처: Technology Networks