Physics-Based Core
Rejecting empirical parameters, directly calculating Fragment Interaction Energy (IFIE) at the electronic level based on quantum mechanics.
Providing gold-standard validation based on physical laws for screening.
AI Core
Introducing game theory methods to quantify and visualize the contribution of every atom to activity.
Moving design from guesswork to rational insight.
ISO 10993-5 Standard
Standard Curation & Double-Blind Validation
Industrial Data Loop based on Geometric Deep Learning & Active Learning
For scenarios with known or unknown target structures, we provide adaptive solutions to circumvent limitations of traditional methods.
Get Technical WhitepaperInternalizing SBDD/LBDD strategies into algorithms, driven by ISO-standard data flows
Designed to solve the pain point of being "limited to known chemical space". GenelP breaks through existing patent barriers to discover Novel Scaffolds unexplored by human experts.
A high-precision prediction engine built on rigorous data flows. ChscIP combines ISO Standards with Explainable AI, solving the "black box" and "poor generalizability" problems of traditional prediction.
From Target Discovery to Preclinical Candidate (PCC)
Target Identification
Druggability Assessment
Structure Preparation
Breaking patent barriers, creating brand new scaffolds
Mining existing active molecules from billion-scale libraries
Lead Optimization (Hit-to-Lead)
In Vitro / In Vivo Validation
High-potential assets incubated by ChscIP platform · Seeking global partnerships
Using ChscIP, rapidly narrowing down 3.3 million molecules to 411 high-potential candidates (SHAP >= 2.35) via AI scoring and docking, increasing efficiency by 500x.
Identifying core pharmacophores of Top 8.3GB via SHAP analysis, precisely eliminating ineffective scaffolds.
Revealing dynamic conformations of the URAT1 transport tunnel via MD simulations, discovering gating regions TMD7 (W357) and TMD11 (R487).
Pinpointing the positive charge effect of residue R477, providing atomic-level basis for designing high-selectivity, low-side-effect inhibitors.
Reshaping drug discovery with algorithms · Full-stack computational services from hit screening to property prediction
AlCrepharm's physical operation center in Sino-Japan (Tianjin) Health Industry Park
A research hub connecting global resources
AlCrepharm originated from Osaka University.Our team includes several outstanding young scientists from Japan. As an AI+ tech enterprise, our core team members possess dual degrees in AI and Pharmacy.
Core Philosophy:Rejecting blind "big data alchemy", we adhere to a "First Principles" drive.Introducing "Fugaku" supercomputer-level FMO calculation methods to analyze life phenomena at the electron cloud level.Dedicated to building a "Dry-Wet Loop" paradigm for next-generation drug R&D.
"Empowering Drug Discovery with Quantum Mechanics & Youthful Innovation."
Latest R&D progress and industry milestones of AlCrepharm
New version introduces equivariant diffusion models, improving scaffold novelty by 40% and significantly optimizing SA scores in molecular generation tasks.
Strategic partnership reached. All DeepCre wet lab experiments will use authentic, traceable JCRB cells.
Based on 22 hit molecules locked by ChscIP platform,wet lab validation shows Top 10 molecules exhibit excellent URAT1 inhibitory activity.