GAGs present considerable structural diversity, which has made the study of individual GAG sequences humanly impossible. Most studies performed to date rely on heterogeneous GAG compositions, such as heparin and chondroitin sulfate. Few dozen GAG oligosaccharides have become commercially available in recent times (Sigma (US), Dextra (UK), and Iduron (UK)). Yet, purchasing even a small, reasonably diverse library of these oligosaccharides is very expensive (~$200?300 for few g to mg each). More importantly, the oligosaccharides available from these companies are generally the common sequences and do not represent the diversity present in nature. Synthesis of GAG oligosaccharides is challenging and only a handful of groups have experience with synthesis technology. We have developed a computational tool that helps predict key GAG sequence that recognize protein with high affinity. Our tool has been validated for proteins including antithrombin, fibroblast growth factor-1 & its receptor (FGF-1/FGFR1), transforming growth factor ?2 (TGF?2), thrombin, histone acetyltransferase p300, human neutrophil elastase and chemokine CXCL13. We propose to make this tool freely available to the research community so that many groups can computationally assess whether their protein of interest binds GAGs. Our two aims include 1) develop a graphical user interface (GUI) on a web-server to enable researchers utilize our computational tool for studying GAG?protein interactions; and 2) advance the computational tool for predicting the interaction of commercially available GAG sequences (HP/HS and CS/DS) with proteins. These two aims directly address the RFA by making our in-house tool ?significantly more straightforward and accessible for non-specialists?. In terms of output, this work will put forward a web- enabled tool carrying libraries of GAG sequences and appropriate algorithms for use by researchers from remote sites. It will add to the continuing democratization of glycan tools to enable more effective glycan research. In terms of knowledge contribution, our computational tool would help enhance understanding on how GAGs are recognized by proteins, especially those belonging to coagulation, inflammation and growth/morphogenesis systems.

Public Health Relevance

The RFA-RM-18-037 FOA ?solicits development of innovative adaptations of existing technologies to enable their use for readily ?.. analyzing glycans and their biological binding partners. This may encompass the adaptation of commonly used ? computational tools to enable their facile application to glycoscience for the first time as well as the adaptation of tools presently used by specialists in glycoscience to make them significantly more straightforward and accessible for non-specialists.? This proposal directly addresses this solicitation: 1) by implementing our in-house computational tool for studying glycosaminoglycan (GAG)?protein interactions in an online, user-friendly, freely accessible format and 2) by expanding its application to predict the affinity and selectivity of GAG?protein systems.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project--Cooperative Agreements (U01)
Project #
5U01CA241951-02
Application #
9971486
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Krueger, Karl E
Project Start
2019-07-03
Project End
2022-06-30
Budget Start
2020-07-01
Budget End
2021-06-30
Support Year
2
Fiscal Year
2020
Total Cost
Indirect Cost
Name
Virginia Commonwealth University
Department
Pharmacology
Type
Schools of Pharmacy
DUNS #
105300446
City
Richmond
State
VA
Country
United States
Zip Code
23298