Chemoinformatics Approaches to Virtual Screening

Chemoinformatics Approaches to Virtual Screening pdf epub mobi txt 电子书 下载 2026

出版者:Royal Society of Chemistry
作者:Varnek, Alexandre (EDT)/ Tropsha, Alex (EDT)
出品人:
页数:356
译者:
出版时间:2008-9-29
价格:USD 224.00
装帧:Hardcover
isbn号码:9780854041442
丛书系列:
图书标签:
  • Chemoinformatics
  • Virtual Screening
  • Drug Discovery
  • Molecular Modeling
  • Computational Chemistry
  • ADMET Prediction
  • QSAR
  • Machine Learning
  • Pharmacoinformatics
  • In Silico Screening
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具体描述

Chemoinformatics is broadly a scientific discipline encompassing the design, creation, organization, management, retrieval, analysis, dissemination, visualization and use of chemical information. It is distinct from other computational molecular modeling approaches in that it uses unique representations of chemical structures in the form of multiple chemical descriptors; has its own metrics for defining similarity and diversity of chemical compound libraries; and applies a wide array of statistical, data mining and machine learning techniques to very large collections of chemical compounds in order to establish robust relationships between chemical structure and its physical or biological properties. Chemoinformatics addresses a broad range of problems in chemistry and biology; however, the most commonly known applications of chemoinformatics approaches have been arguably in the area of drug discovery where chemoinformatics tools have played a central role in the analysis and interpretation of structure-property data collected by the means of modern high throughput screening. Early stages in modern drug discovery often involved screening small molecules for their effects on a selected protein target or a model of a biological pathway. In the past fifteen years, innovative technologies that enable rapid synthesis and high throughput screening of large libraries of compounds have been adopted in almost all major pharmaceutical and biotech companies. As a result, there has been a huge increase in the number of compounds available on a routine basis to quickly screen for novel drug candidates against new targets/pathways. In contrast, such technologies have rarely become available to the academic research community, thus limiting its ability to conduct large scale chemical genetics or chemical genomics research. However, the landscape of publicly available experimental data collection methods for chemoinformatics has changed dramatically in very recent years. The term "virtual screening" is commonly associated with methodologies that rely on the explicit knowledge of three-dimensional structure of the target protein to identify potential bioactive compounds. Traditional docking protocols and scoring functions rely on explicitly defined three dimensional coordinates and standard definitions of atom types of both receptors and ligands. Albeit reasonably accurate in many cases, conventional structure based virtual screening approaches are relatively computationally inefficient, which has precluded them from screening really large compound collections. Significant progress has been achieved over many years of research in developing many structure based virtual screening approaches. This book is the first monograph that summarizes innovative applications of efficient chemoinformatics approaches towards the goal of screening large chemical libraries. The focus on virtual screening expands chemoinformatics beyond its traditional boundaries as a synthetic and data-analytical area of research towards its recognition as a predictive and decision support scientific discipline. The approaches discussed by the contributors to the monograph rely on chemoinformatics concepts such as: -representation of molecules using multiple descriptors of chemical structures -advanced chemical similarity calculations in multidimensional descriptor spaces -the use of advanced machine learning and data mining approaches for building quantitative and predictive structure activity models -the use of chemoinformatics methodologies for the analysis of drug-likeness and property prediction -the emerging trend on combining chemoinformatics and bioinformatics concepts in structure based drug discovery The chapters of the book are organized in a logical flow that a typical chemoinformatics project would follow - from structure representation and comparison to data analysis and model building to applications of structure-property relationship models for hit identification and chemical library design. It opens with the overview of modern methods of compounds library design, followed by a chapter devoted to molecular similarity analysis. Four sections describe virtual screening based on the using of molecular fragments, 2D pharmacophores and 3D pharmacophores. Application of fuzzy pharmacophores for libraries design is the subject of the next chapter followed by a chapter dealing with QSAR studies based on local molecular parameters. Probabilistic approaches based on 2D descriptors in assessment of biological activities are also described with an overview of the modern methods and software for ADME prediction. The book ends with a chapter describing the new approach of coding the receptor binding sites and their respective ligands in multidimensional chemical descriptor space that affords an interesting and efficient alternative to traditional docking and screening techniques. Ligand-based approaches, which are in the focus of this work, are more computationally efficient compared to structure-based virtual screening and there are very few books related to modern developments in this field. The focus on extending the experiences accumulated in traditional areas of chemoinformatics research such as Quantitative Structure Activity Relationships (QSAR) or chemical similarity searching towards virtual screening make the theme of this monograph essential reading for researchers in the area of computer-aided drug discovery. However, due to its generic data-analytical focus there will be a growing application of chemoinformatics approaches in multiple areas of chemical and biological research such as synthesis planning, nanotechnology, proteomics, physical and analytical chemistry and chemical genomics.

化学信息学在虚拟筛选中的应用 图书简介 化学信息学,一个融合了化学、计算机科学、信息技术以及统计学等多学科的领域,已然成为现代药物发现和材料科学研究中不可或缺的关键力量。尤其是在虚拟筛选(Virtual Screening, VS)领域,化学信息学方法的引入极大地提升了效率和成功率,使得研究人员能够从浩瀚的化合物库中快速、经济地筛选出具有潜在活性的分子。本书《化学信息学在虚拟筛选中的应用》旨在深入探讨化学信息学如何为虚拟筛选提供强大的理论基础、创新的算法和实用的工具,从而加速新药的研发进程、优化材料的设计,并推动相关领域的科学前沿发展。 本书并非简单地罗列各种虚拟筛选技术,而是着重于阐述化学信息学思想如何贯穿于虚拟筛选的每一个环节,从数据准备、分子表示,到算法设计、模型构建,再到结果解读和实验验证,都离不开化学信息学的智慧。我们将带领读者穿越化学信息学的宏大叙事,理解其在解决复杂科学问题中所扮演的核心角色。 第一部分:化学信息学基础与分子表示 在深入探讨虚拟筛选的各种应用之前,建立坚实的化学信息学基础至关重要。本部分将从化学信息学的基本概念入手,解释其在现代科学研究中的定位和价值。我们将详细介绍分子是如何被计算机理解和处理的,这涉及到各种形式的分子表示方法。 分子图与图论: 分子本质上是原子和化学键构成的网络,因此,图论成为了表示和分析分子的强大工具。我们将介绍如何将分子表示为图结构,其中原子作为节点,化学键作为边。这为后续的各种计算和分析奠定了基础。 线谱表示法: SMILES(Simplified Molecular Input Line Entry System)和SMARTS(SMiles ARbitrary Target Specification)作为一种紧凑、易于处理的文本格式,极大地简化了分子的输入、存储和交流。本书将详细讲解SMILES的语法规则、编码逻辑,以及如何利用SMARTS进行模式匹配和结构查询。 摩尔格式(Molfile)与二维/三维坐标: Molfile是一种标准的化学文件格式,能够存储分子的原子、键信息以及连接性。对于虚拟筛选中的结构比对和三维对接等任务,分子的三维构象至关重要。我们将探讨如何从二维结构生成或获取分子的三维坐标,以及影响三维构象生成的关键因素。 描述符与指纹: 分子描述符(Molecular Descriptors)是将分子的化学和物理性质转化为数字或字符串的量化指标,例如分子量、分子表面积、溶解度等。分子指纹(Molecular Fingerprints)则是一种将分子结构信息编码为二进制或多值向量的方法,能够高效地捕捉分子的拓扑和电子特性。本书将详细介绍各类描述符和指纹的生成原理、计算方法以及它们在相似性搜索、分类和回归任务中的应用。 第二部分:化学信息学在虚拟筛选中的策略与方法 在掌握了分子的计算机表示之后,本部分将聚焦于化学信息学如何驱动和优化虚拟筛选的整个流程。我们将详细介绍不同类型的虚拟筛选策略,以及支撑这些策略的化学信息学算法和技术。 基于形状的虚拟筛选(Shape-based VS): 这种方法侧重于分子的三维形状和空间排布,旨在寻找与靶点结合位点形状相似的分子。我们将介绍如何从三维数据库中提取和比对分子形状,包括形状匹配算法、构象采样技术以及基于形状的相似性度量。 基于配体的虚拟筛选(Ligand-based VS): 当已知一个或多个与靶点结合的活性分子(配体)时,这种方法通过分析已知配体的结构-活性关系(Structure-Activity Relationship, SAR)来预测未知化合物的活性。我们将深入探讨如何利用分子描述符、分子指纹进行相似性搜索,以及如何构建定量结构-活性关系(QSAR)模型来预测化合物的活性。 基于结构的虚拟筛选(Structure-based VS): 这种方法利用靶点蛋白的三维结构信息,通过计算小分子与靶点结合位点的相互作用能来评估其潜在的结合能力。本书将详细介绍分子对接(Molecular Docking)的基本原理、算法流程、参数优化以及如何解释对接结果。同时,我们也会触及更高级的采样技术和能量计算方法。 混合方法与集成筛选: 现实世界的药物发现往往需要整合多种虚拟筛选策略的优势。我们将探讨如何结合基于配体和基于结构的筛选方法,或者将形状相似性和相互作用能相结合,以提高筛选的准确性和覆盖率。 第三部分:化学信息学在虚拟筛选中的算法与模型 本部分将深入探讨支撑虚拟筛选的各种化学信息学算法和统计模型,为读者提供更深层次的理论理解和实践指导。 相似性搜索算法: 如何高效地从海量化合物库中找到与查询分子相似的分子是虚拟筛选的核心任务之一。我们将介绍各种相似性度量方法(如Tanimoto系数、Dice系数等)以及用于加速大规模相似性搜索的算法,例如基于树的索引结构(如k-d树、R-树)和基于哈希的技术。 机器学习在虚拟筛选中的应用: 机器学习技术在从复杂数据中提取模式和进行预测方面展现出强大的能力。本书将详细介绍如何利用监督学习算法(如支持向量机、随机森林、神经网络)构建QSAR模型,以及如何利用无监督学习算法(如聚类)进行化合物分组和多样性分析。 深度学习在化学信息学中的新兴趋势: 深度学习,特别是卷积神经网络(CNN)和图神经网络(GNN),在处理分子结构和预测分子性质方面取得了令人瞩目的成就。我们将介绍深度学习模型在分子表示、活性预测和虚拟筛选中的应用,以及其潜在的优势和挑战。 模型评估与验证: 构建模型之后,对其性能进行客观的评估和验证至关重要。本书将详细介绍各种模型评估指标(如准确率、精确率、召回率、AUC等),以及交叉验证、独立测试集验证等常用验证策略,确保模型的可靠性和普适性。 第四部分:化学信息学在虚拟筛选中的实际应用与案例研究 为了更好地理解化学信息学在虚拟筛选中的实际价值,本部分将通过具体的案例研究,展示这些方法如何在药物发现、材料科学等领域中得到应用。 新药研发中的应用: 我们将展示如何利用化学信息学方法在已知靶点的基础上,通过虚拟筛选发现新的先导化合物,优化现有药物的活性和药代动力学性质,甚至针对一些难以成药的靶点设计新的药物分子。 材料科学中的应用: 化学信息学在功能材料的设计和开发中也扮演着重要角色。本书将探讨如何利用虚拟筛选技术发现具有特定光学、电子或催化性质的新型材料,加速材料的研发周期。 数据库与工具: 介绍常用的化学信息学数据库(如PubChem, ChEMBL, ZINC等)以及用于虚拟筛选的开源和商业软件工具,帮助读者更好地将所学知识应用于实际研究。 未来展望: 探讨化学信息学在虚拟筛选领域未来的发展趋势,包括人工智能的进一步融合、新型算法的出现以及多尺度模拟的整合等,为读者勾勒出未来的研究方向。 通过对本书的学习,读者将能够深入理解化学信息学在虚拟筛选中的核心作用,掌握各种先进的虚拟筛选策略和方法,并能够将这些知识和工具应用于自身的科研和工程实践中,从而更高效、更精准地发现具有潜在价值的分子和材料,为科学研究和技术创新贡献力量。本书的目标是成为化学信息学和药物发现领域研究人员、学生以及相关行业从业者的重要参考。

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