Drug Discovery
Drug discovery, the process of identifying and developing new therapeutic agents, is being revolutionized by artificial intelligence. Current research focuses on improving the accuracy and efficiency of computational models for predicting molecular properties, drug-target interactions, and pharmacokinetics, employing techniques like graph neural networks, transformers, and diffusion models, often enhanced by self-supervised learning and multi-task learning strategies. These advancements aim to accelerate the lengthy and expensive drug development pipeline, ultimately leading to faster identification of effective and safer drugs. The integration of large language models and quantum computing further expands the possibilities for innovative drug design and discovery.
Papers
Implementation of The Future of Drug Discovery: QuantumBased Machine Learning Simulation (QMLS)
Yifan Zhou, Yan Shing Liang, Yew Kee Wong, Haichuan Qiu, Yu Xi Wu, Bin He
ChatGPT in Drug Discovery: A Case Study on Anti-Cocaine Addiction Drug Development with Chatbots
Rui Wang, Hongsong Feng, Guo-Wei Wei
PIGNet2: A Versatile Deep Learning-based Protein-Ligand Interaction Prediction Model for Binding Affinity Scoring and Virtual Screening
Seokhyun Moon, Sang-Yeon Hwang, Jaechang Lim, Woo Youn Kim
CardiGraphormer: Unveiling the Power of Self-Supervised Learning in Revolutionizing Drug Discovery
Abhijit Gupta