Molecular Neuroscience and Functional Genomics Laboratory, Department of Biotechnology, Delhi Technological University (Formerly DCE), Shahbad Daulatpur, Bawana Road, Delhi, 110042, India.
Mol Divers. 2021 Aug;25(3):1315-1360. doi: 10.1007/s11030-021-10217-3. Epub 2021 Apr 12.
Drug designing and development is an important area of research for pharmaceutical companies and chemical scientists. However, low efficacy, off-target delivery, time consumption, and high cost impose a hurdle and challenges that impact drug design and discovery. Further, complex and big data from genomics, proteomics, microarray data, and clinical trials also impose an obstacle in the drug discovery pipeline. Artificial intelligence and machine learning technology play a crucial role in drug discovery and development. In other words, artificial neural networks and deep learning algorithms have modernized the area. Machine learning and deep learning algorithms have been implemented in several drug discovery processes such as peptide synthesis, structure-based virtual screening, ligand-based virtual screening, toxicity prediction, drug monitoring and release, pharmacophore modeling, quantitative structure-activity relationship, drug repositioning, polypharmacology, and physiochemical activity. Evidence from the past strengthens the implementation of artificial intelligence and deep learning in this field. Moreover, novel data mining, curation, and management techniques provided critical support to recently developed modeling algorithms. In summary, artificial intelligence and deep learning advancements provide an excellent opportunity for rational drug design and discovery process, which will eventually impact mankind. The primary concern associated with drug design and development is time consumption and production cost. Further, inefficiency, inaccurate target delivery, and inappropriate dosage are other hurdles that inhibit the process of drug delivery and development. With advancements in technology, computer-aided drug design integrating artificial intelligence algorithms can eliminate the challenges and hurdles of traditional drug design and development. Artificial intelligence is referred to as superset comprising machine learning, whereas machine learning comprises supervised learning, unsupervised learning, and reinforcement learning. Further, deep learning, a subset of machine learning, has been extensively implemented in drug design and development. The artificial neural network, deep neural network, support vector machines, classification and regression, generative adversarial networks, symbolic learning, and meta-learning are examples of the algorithms applied to the drug design and discovery process. Artificial intelligence has been applied to different areas of drug design and development process, such as from peptide synthesis to molecule design, virtual screening to molecular docking, quantitative structure-activity relationship to drug repositioning, protein misfolding to protein-protein interactions, and molecular pathway identification to polypharmacology. Artificial intelligence principles have been applied to the classification of active and inactive, monitoring drug release, pre-clinical and clinical development, primary and secondary drug screening, biomarker development, pharmaceutical manufacturing, bioactivity identification and physiochemical properties, prediction of toxicity, and identification of mode of action.
药物设计与开发是制药公司和化学科学家的重要研究领域。然而,低疗效、非靶向输送、耗时和高成本带来了障碍和挑战,影响了药物设计和发现。此外,基因组学、蛋白质组学、微阵列数据和临床试验的复杂大数据也在药物发现管道中造成了障碍。人工智能和机器学习技术在药物发现和开发中发挥着至关重要的作用。换句话说,人工神经网络和深度学习算法使该领域现代化。机器学习和深度学习算法已应用于几种药物发现过程,如肽合成、基于结构的虚拟筛选、基于配体的虚拟筛选、毒性预测、药物监测和释放、药效团建模、定量构效关系、药物再定位、多药理学和理化活性。过去的证据支持在该领域实施人工智能和深度学习。此外,新颖的数据挖掘、整理和管理技术为最近开发的建模算法提供了关键支持。总之,人工智能和深度学习的进步为合理的药物设计和发现过程提供了极好的机会,这最终将影响人类。与药物设计和开发相关的主要问题是耗时和生产成本。此外,效率低下、靶向输送不准确和剂量不当也是抑制药物输送和开发过程的其他障碍。随着技术的进步,结合人工智能算法的计算机辅助药物设计可以消除传统药物设计和开发的挑战和障碍。人工智能被称为包含机器学习的超集,而机器学习包含监督学习、无监督学习和强化学习。此外,深度学习作为机器学习的一个子集,已广泛应用于药物设计和开发。人工神经网络、深度神经网络、支持向量机、分类和回归、生成对抗网络、符号学习和元学习是应用于药物设计和发现过程的算法示例。人工智能已应用于药物设计和开发过程的不同领域,如从肽合成到分子设计、虚拟筛选到分子对接、定量构效关系到药物再定位、蛋白质错误折叠到蛋白质-蛋白质相互作用、分子途径识别到多药理学。人工智能原理已应用于活性和非活性的分类、药物释放监测、临床前和临床开发、初级和二级药物筛选、生物标志物开发、药物制造、生物活性鉴定和理化性质、毒性预测以及作用模式识别。