Tez Türü: Doktora
Tezin Yürütüldüğü Kurum: Iowa State University of Science and Technology, Life Sciences, Biochemistry, Biophysics and Molecular Biology, Amerika Birleşik Devletleri
Tez Danışmanı: Marit Nilsen-Hamilton
Tezin Onay Tarihi: 2012
Tezin Dili: İngilizce
Desteklendiği Program: Diğer
Özet:
Aminoglycosides are a class of antibiotics
functioning through binding to 16S rRNA A-site and inhibiting the bacterial translation.
Nevertheless, the continuous emergence of drug-resistant strains makes the
development of new and more potent antibiotics necessary. Aminoglycosides are also
known to interact with various biologically crucial RNA molecules other than
16S rRNA A-site and inhibit their functions. As
a result, they are considered as the single most important model to understand
the principles of RNA small molecule recognition. The detailed understanding of
these interactions is necessary for the development of novel antibacterial,
antiviral or even anti-oncogenic agents.
In our studies, we have studied both the natural
aminoglycoside targets like Rev responsive element (RRE), trans-activating
region (TAR) of HIV-1 and thymidylate synthase mRNA 5’ untranslated (UTR)
region as well as the in vitro
selected neomycin, tobramycin and kanamycin RNA aptamers. By this way, we think
we have covered a variety of binding pockets to figure out the critical nucleic
acid residues playing essential role in aminoglycoside recognition. Along with
all these RNAs, we studied more than 10 aminoglycoside ligands to pinpoint the
chemical groups in close contact with RNAs. To determine thermodynamic
parameters for these interactions, we utilized isothermal titration calorimetry
(ITC) assay by which we found that the majority of these interactions are
enthalpy driven. More specifically, RNA aminoglycoside interactions are mainly
derived by electrostatic and hydrogen binding interactions. Our studies
indicated that the amino groups on the first ring of the aminoglycosides are
essential for high affinity binding whereas having bulky groups on ring II sterically
eliminate their interactions with RNAs. RNA binding trend of aminoglycosides
are as follows: neomycin-B > ribostamycin > kanamycin-B > tobramycin >
paromomycin > sisomicin > gentamicin > kanamycin-A > geneticin >
amikacin > netilmicin. Aminoglycoside
binding to the aptamer was shown highly buffer dependent. This phenomenon was
analyzed in five different buffers and found that cacodylate-based buffer
changes the specificity of the aptamer.
In addition to ITC, we have used molecular docking
to specifically find out the chemical groups in these interactions. We have
specified the nucleic acid residues interacting with aminoglycosides.
In parallel, molecular dynamics (MD)
simulations of neomycin RNA aptamer with neomycin-B in an all-atom platform in
GROMACS were carried out. The results showed
a mobile structure consistent with the ability of this aptamer to
interact with a wide range of ligands. From molecular docking and MD
simulations, we identified the neomycin-B aptamer residues that might contribute to its
ligand selectivity and designed a series of new aptamers accordingly. Also, A16 was found to be flexible, which was
confirmed by 2AP fluorescence studies.
In this analysis, the buffer dependence was also confirmed against
neomycin-B, ribostamycin and paromomycin.
One of the challenges in therapeutics is the
emergence of resistant cells. They become reistant to the drugs via changing
the target site, or enzymatically modifying the drug, or producing drug pumps
to export the drugs. To overcome the very last challenge, we are utilizing RNA-aminoglycoside
partners to keep high intracellular drug concentration and increase the efficacy
of aminoglycosides against bacteria. We called the system as DRAGINs (Drug
binding aptamers for growing intracellular numbers). We express these RNAs in
bacteria and detect their growth rate in order to evaluate their response to different
concentration of aminoglycosides. In this study, we found that we could successfully
decrease the IC50 values by 2 to 5 fold with the help of aminoglycoside-binding
RNA aptamers. Finally, we are mathematically modeling the effect of aptamers on
IC50 values of drugs with the use of four-compartment model.
In our research group, we are utilizing these
RNA-aminoglycoside partners to develop tags for detecting RNA in vivo and in real time. We called this
system as intracellular multiaptamer genetic tags (IMAGEtags).