2012
DOI: 10.1098/rsif.2011.0843
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Bioinformatics and variability in drug response: a protein structural perspective

Abstract: Marketed drugs frequently perform worse in clinical practice than in the clinical trials on which their approval is based. Many therapeutic compounds are ineffective for a large subpopulation of patients to whom they are prescribed; worse, a significant fraction of patients experience adverse effects more severe than anticipated. The unacceptable risk -benefit profile for many drugs mandates a paradigm shift towards personalized medicine. However, prior to adoption of patient-specific approaches, it is useful … Show more

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Cited by 71 publications
(68 citation statements)
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References 328 publications
(431 reference statements)
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“…Regarding possible structural mechanisms by which nsSNP and resultant mutation alter CYP activity, there are mainly several possible interpretations such as altering the physicochemical and geometric properties of CYP active site and disrupting the stability and folding of CYP enzyme [21]. Although the computational methods for predicting the effect of nsSNPs on protein function can be classified into two major types, sequence-based and structure-based methods, the latter type of method seems more rational.…”
Section: Predicting Functional Consequence Of Nssnpmentioning
confidence: 99%
See 1 more Smart Citation
“…Regarding possible structural mechanisms by which nsSNP and resultant mutation alter CYP activity, there are mainly several possible interpretations such as altering the physicochemical and geometric properties of CYP active site and disrupting the stability and folding of CYP enzyme [21]. Although the computational methods for predicting the effect of nsSNPs on protein function can be classified into two major types, sequence-based and structure-based methods, the latter type of method seems more rational.…”
Section: Predicting Functional Consequence Of Nssnpmentioning
confidence: 99%
“…More recently, the impressive progress in genome sequencing, protein expression and high-throughput crystallography and NMR has significantly accelerated drug development [19]. In addition, protein structure is considered to play influential role in each stage throughout whole drug development process [21]. The methods of structural bioinformatics focused on macromolecular structure particularly protein structure also efficiently facilitated target identification and lead discovery [3].…”
Section: Introductionmentioning
confidence: 99%
“…Shape complementarity and the physicochemical complementarity are the two governing factors of enthalpy contributions in protein ligand interactions. Shape complementarity permits the protein and small molecules to achieve sufficient proximity and contact surface area to form stabilizing interactions, while physicochemical complementarity determines the nature of these interactions [35]. The most complementary conformation from an ensemble of equilibrium structures is selected by the ligand molecules.…”
Section: Targeting Nek2a: Inhibitor Based Approachmentioning
confidence: 99%
“…Understanding the structural orientations of the corresponding protein, and their respective properties, will help in determining the corresponding drug response cascades and will eventually facilitate in the drug discovery process. When we talk about drug discovery, the most leading factor that governs the efficiency level of the drug molecule is the fine-tuning of the molecular properties of drugs to the corresponding structures of their protein targets, which promotes the binding interactions of high affinity and specificity [35]. The protein-drug interaction events are governed by the enthalpic and entropic contributions.…”
Section: Targeting Nek2a: Inhibitor Based Approachmentioning
confidence: 99%
“…Analysis of putative binding pockets using DoGSiteScorer [59] Here, it should be noted that the presence of a binding pocket does not necessarily imply that a target protein is druggable. However, the binding volume is one of the important cavity properties that influence the druggability of a particular target protein, of which most of druggable proteins have volumes of between 500-1000 Å3 [60].…”
Section: Structural Modelingmentioning
confidence: 99%