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Structure Based Drug Discovery by Andrew R. Leach

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1EZH2: Biology, Disease, And Structure-based Drug Discovery.

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This article is from Acta Pharmacologica Sinica , volume 35 . Abstract EZH2 is the catalytic subunit of the polycomb repressive complex 2 (PRC2), which is a highly conserved histone methyltransferase that methylates lysine 27 of histone 3. Overexpression of EZH2 has been found in a wide range of cancers, including those of the prostate and breast. In this review, we address the current understanding of the oncogenic role of EZH2, including its PRC2-dependent transcriptional repression and PRC2-independent gene activation. We also discuss the connections between EZH2 and other silencing enzymes, such as DNA methyltransferase and histone deacetylase. We comprehensively address the architecture of the PRC2 complex and the crucial roles of each subunit. Finally, we summarize new progress in developing EZH2 inhibitors, which could be a new epigenetic therapy for cancers.

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The book is available for download in "texts" format, the size of the file-s is: 16.70 Mbs, the file-s for this book were downloaded 73 times, the file-s went public at Sun Oct 26 2014.

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2Discovery Of Novel ?-amylase Inhibitors Using Structure-based Drug Design.

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This article is from Journal of Cheminformatics , volume 6 . Abstract None

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The book is available for download in "texts" format, the size of the file-s is: 2.12 Mbs, the file-s for this book were downloaded 76 times, the file-s went public at Thu Oct 23 2014.

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3Current Progress In Structure-Based Rational Drug Design Marks A New Mindset In Drug Discovery.

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This article is from Computational and Structural Biotechnology Journal , volume 5 . Abstract The past decade has witnessed a paradigm shift in preclinical drug discovery with structure-based drug design (SBDD) making a comeback while high-throughput screening (HTS) methods have continued to generate disappointing results. There is a deficit of information between identified hits and the many criteria that must be fulfilled in parallel to convert them into preclinical candidates that have a real chance to become a drug. This gap can be bridged by investigating the interactions between the ligands and their receptors. Accurate calculations of the free energy of binding are still elusive; however progresses were made with respect to how one may deal with the versatile role of water. A corpus of knowledge combining X-ray structures, bioinformatics and molecular modeling techniques now allows drug designers to routinely produce receptor homology models of increasing quality. These models serve as a basis to establish and validate efficient rationales used to tailor and/or screen virtual libraries with enhanced chances of obtaining hits. Many case reports of successful SBDD show how synergy can be gained from the combined use of several techniques. The role of SBDD with respect to two different classes of widely investigated pharmaceutical targets: (a) protein kinases (PK) and (b) G-protein coupled receptors (GPCR) is discussed. Throughout these examples prototypical situations covering the current possibilities and limitations of SBDD are presented.

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  • Language: English

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The book is available for download in "texts" format, the size of the file-s is: 33.81 Mbs, the file-s for this book were downloaded 93 times, the file-s went public at Thu Oct 23 2014.

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4Structure-based Drug Discovery

This article is from Computational and Structural Biotechnology Journal , volume 5 . Abstract The past decade has witnessed a paradigm shift in preclinical drug discovery with structure-based drug design (SBDD) making a comeback while high-throughput screening (HTS) methods have continued to generate disappointing results. There is a deficit of information between identified hits and the many criteria that must be fulfilled in parallel to convert them into preclinical candidates that have a real chance to become a drug. This gap can be bridged by investigating the interactions between the ligands and their receptors. Accurate calculations of the free energy of binding are still elusive; however progresses were made with respect to how one may deal with the versatile role of water. A corpus of knowledge combining X-ray structures, bioinformatics and molecular modeling techniques now allows drug designers to routinely produce receptor homology models of increasing quality. These models serve as a basis to establish and validate efficient rationales used to tailor and/or screen virtual libraries with enhanced chances of obtaining hits. Many case reports of successful SBDD show how synergy can be gained from the combined use of several techniques. The role of SBDD with respect to two different classes of widely investigated pharmaceutical targets: (a) protein kinases (PK) and (b) G-protein coupled receptors (GPCR) is discussed. Throughout these examples prototypical situations covering the current possibilities and limitations of SBDD are presented.

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  • Language: English

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The book is available for download in "texts" format, the size of the file-s is: 522.91 Mbs, the file-s for this book were downloaded 52 times, the file-s went public at Tue May 19 2020.

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5AtomNet: A Deep Convolutional Neural Network For Bioactivity Prediction In Structure-based Drug Discovery

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Deep convolutional neural networks comprise a subclass of deep neural networks (DNN) with a constrained architecture that leverages the spatial and temporal structure of the domain they model. Convolutional networks achieve the best predictive performance in areas such as speech and image recognition by hierarchically composing simple local features into complex models. Although DNNs have been used in drug discovery for QSAR and ligand-based bioactivity predictions, none of these models have benefited from this powerful convolutional architecture. This paper introduces AtomNet, the first structure-based, deep convolutional neural network designed to predict the bioactivity of small molecules for drug discovery applications. We demonstrate how to apply the convolutional concepts of feature locality and hierarchical composition to the modeling of bioactivity and chemical interactions. In further contrast to existing DNN techniques, we show that AtomNet's application of local convolutional filters to structural target information successfully predicts new active molecules for targets with no previously known modulators. Finally, we show that AtomNet outperforms previous docking approaches on a diverse set of benchmarks by a large margin, achieving an AUC greater than 0.9 on 57.8% of the targets in the DUDE benchmark.

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The book is available for download in "texts" format, the size of the file-s is: 0.83 Mbs, the file-s for this book were downloaded 51 times, the file-s went public at Thu Jun 28 2018.

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