DrugVLAB™ is a multi-omics-based AI drug discovery platform, validated by extensive research papers.
It precisely explores the chemical space, genetic space, and disease space to accurately select target proteins and candidate compounds.
DrugVLAB™ enables explainable and accurate identification of drug candidates, toxicity prediction, and biomarker prediction based on
multi-omics and compound data. DrugVLAB™ optimize the drug development process using standalone tools validated
by extensive research papers, and pre-built packages created by gathering various needs.
Biomarker Discovery using multi-omics data
EHR data analysis or Text mining
Lead identification
Drug Target Interaction
Lead optimization with graph deep learning
Drug combination
Toxicity
ADME
Animal model
Drug response
Drug repurposing
Drug approval/withdrawal
데이터 마이닝 기반 화합물 데이터 베이스 탐색으로 선도물질 발굴 가속화
ChemMining™ efficiently explores the chemical space, identifying high-efficacy compounds and providing priority rankings utilizing Deep Learning, Network Exploration, and Cheminformatics. Our innovative approach allows for the discovery of compounds with unique scaffolds, enhancing patentability and diversity.
화합물의 functional fragments 발굴을 통한 3차원 단백질 구조 기반 선도물질 생성 가속화
ChemGen™ innovates compound design using protein 3D structures and experimental data. Our Generative AI models create molecules binding to protein pockets. With Network Propagation technology, we efficiently select high-efficacy, drug-like compounds with prioritized precisions.
Drug Response Platform
ChemResponse™ predicts drug responses by analyzing the mechanism of action from various perspectives. Our innovative approach identifies crucial gene interactions and pathways. Also, we simulate the effects of compound perturbations starting from target genes, pinpointing driver genes crucial to the biological mechanisms of the compound.
생체 내 데이터 기반 인체 내 독성 및 부작용 예측
ChemTox™ analyzes in vivo toxicity and side effects based on transcriptome data and compounds structures. We identify crucial toxicophores, predict toxicity via CYP and hERG analysis, and offer insights into six hepatotoxicity mechanisms. Also, we forecast compound side effect frequencies based on molecular structure, similarity, and target protein data.
생물의학적 지식 네트워크 기반 약물 재창출 및 복합제 예측
ChemTune™ utilizes biomedical knowledge networks for knowledge drug repurposing and synergy analysis. Our biomedical knowledge graph connects drug-disease spaces with Protein-Protein Interaction (PPI) networks. Skip-Gram encoder models analyze relationships, and ‘Teleportation’ in random walks ensures unbiased exploration.
3차원 구조정보 기반 PROTAC 링커 설계 및 ADME 예측
ChemProtac™ elevates the potential of candidate inhibitors by expertly designing tailored PROTAC solutions. By integrating existing assay data with advanced protein structure prediction and docking simulation models, our model refines the search for optimal linkers in the development and evaluation of de novo PROTAC leads.
Fully customized AI service tailored specifically for your needs