Understanding the structure and function of biological macromolecules is critical in countless biomedical disciplines, including cancer biology, drug design, and nanotechnology. It is often essential to understand molecular etiology to interpret a clinical presentation as well. Nuclear Magnetic Resonance Spectroscopy (NMR) is one of the principal techniques for investigation of protein structure and it is the primary technique for understanding the biology of proteins that lack fixed three-dimensional structures ? termed intrinsically disordered proteins (IDPs) ? a group that includes numerous proteins involved in biomineralization, cell signaling, and nucleic acid binding. However, NMR spectroscopy suffers from limitations that restrict the size and scope of proteins and IDPs that it can be used to investigate. The broad goal of this proposal is to develop and characterize improved techniques for analyzing NMR data to expand the set of feasible protein targets. One central limitation of NMR is the inherent resolution/sensitivity tradeoff in which resolution (the ability to discriminate signals with similar frequency) can be enhanced only by sacrificing sensitivity (the ability to distinguish signal from noise), or vice versa. Generally, an NMR spectroscopist may try to overcome these limitations through preparation of isotopically labeled samples or by using powerful spectrometers and sophisticated multidimensional experiments. Various mathematical manipulations can be applied to the raw data for further enhancement of sensitivity or resolution. Although useful, these techniques ultimately force a tradeoff between sensitivity and resolution in one way or another. Maximizing both resolution and sensitivity is critical in the biological applications of NMR, and therefore investigation of techniques with the potential to simultaneously enhance both is necessary. I have generated preliminary data, which strongly suggests that an innovative data processing technique called Maximum Entropy Reconstruction with linewidth deconvolution (deconvolution) may bypass the tradeoff by simultaneously enhancing resolution and sensitivity in multidimensional NMR spectra. Deconvolution functions by reducing signal overlap and scaling down spectral noise. This proposal details the first systematic comparison between conventional data processing techniques and deconvolution. I will conduct this comparison using a tripartite research strategy by first testing deconvolution in a precisely designed control scenario, in which the ideal outcome is known. Then I will quantify the abilities of deconvolution in unknown situations and finally I will use deconvolution to determine a protein structure and demonstrate its practical benefits. The quantitative results of these studies will definitively determine if deconvolution provides simultaneous enhancement of resolution and sensitivity. It would constitute a breakthrough for NMR spectroscopy and structural biology if deconvolution provides the benefits suggested by my data. Deconvolution is a cutting-edge technique that is inexpensive to implement and has the potential to provide the necessary spectral improvements for studying previously intractable proteins and IDPs.

Public Health Relevance

Nuclear Magnetic Resonance (NMR) Spectroscopy is one of the principle techniques used to study the structure and function of biological macromolecules, an essential goal of countless biomedical disciplines including the study of disordered proteins, a group that comprises several proteins involved in biomineralization and cell signaling. Although it is a versatile technique, NMR spectroscopy has limitations that restrict the size and scope of these proteins that it can be used to investigate. I have generated preliminary data that strongly suggests a novel computational technique may be able to expand the scope of proteins amenable to NMR by overcoming these limitations and thus the aim of this study is to investigate and characterize the abilities of this technique and use it to solve a protein structure.

Agency
National Institute of Health (NIH)
Institute
National Institute of Dental & Craniofacial Research (NIDCR)
Type
Individual Predoctoral NRSA for M.D./Ph.D. Fellowships (ADAMHA) (F30)
Project #
5F30DE026353-04
Application #
9701845
Study Section
NIDR Special Grants Review Committee (DSR)
Program Officer
Frieden, Leslie A
Project Start
2016-07-01
Project End
2020-06-30
Budget Start
2019-07-01
Budget End
2020-06-30
Support Year
4
Fiscal Year
2019
Total Cost
Indirect Cost
Name
University of Connecticut
Department
Biochemistry
Type
Schools of Medicine
DUNS #
022254226
City
Farmington
State
CT
Country
United States
Zip Code
06030
Zambrello, Matthew A; Schuyler, Adam D; Maciejewski, Mark W et al. (2018) Nonuniform sampling in multidimensional NMR for improving spectral sensitivity. Methods 138-139:62-68
Zambrello, Matthew A; Maciejewski, Mark W; Schuyler, Adam D et al. (2017) Robust and transferable quantification of NMR spectral quality using IROC analysis. J Magn Reson 285:37-46