From Target Idea to Synthesizable Molecule
Denovo technologies integrate molecular design, evaluation, and synthetic route generation to shorten discovery timelines and increase candidate success rates.
Denovo Platform
Generative Engine
The Denovo Platform is a streamlined portal for access to the state-of-the-art molecular design, powered by generative and RL engines. The platform provides an integrated environment where users can generate, evaluate, and optimize novel small-molecule drug candidates with unprecedented efficiency. With its intuitive interface and fully automated end-to-end workflows, the Denovo Platform offers researchers of all backgrounds a unified entry point to explore chemical space, uncover new drug-like molecules, and accelerate the path from concept to candidate.
Key Performance Metrics
50K
Compounds / Week
50%
Synthesizability
100%
Chemical Validity
30%
Hit Rate
HADES
Drug-Likeness Engine
The holistic AI-based drug-likeness estimation system (HADES) is Denovo’s proprietary engine for rapid, reliable, and context-aware evaluation of small-molecule drug-likeness quality. Built on a combination of different ML models trained on the most comprehensive small molecule oral drugs dataset, HADES provides a unified, quantitative assessment of a compound’s overall drug potential—far beyond traditional filters. It integrates structural, physicochemical, ADMET, and medicinal chemistry heuristics into a single predictive score, ensuring that only the most viable compounds progress through the design pipeline.
Key Performance Metrics
20
molecules per second
Speed of assessment
71%
Score Increase in Hit/Lead Optimization Studies
89.1%
Accuracy on external dataset
21.47%
1% Enrichment Factor in Virtual Screening Process
Synthony™
Synthesis Engine
Synthony is Denovo Sciences’ proprietary, synthon-driven retrosynthesis platform designed for accurate, synthesis-ready route generation for small molecules. Unlike classical reaction-center–first approaches, Synthony operates in a building-block-first paradigm, where an AI model directly predicts the most viable sets of synthons required to construct a target molecule, without relying on explicit rule-based disconnection steps.
The platform integrates: AI-driven synthon set prediction from target structures , Forward synthesis tree construction from purchasable building blocks corresponding to predicted synthons, Multi-objective route scoring based on feasibility, availability, cost, and commercial viability, Automated pruning of low-viability pathways to focus on experimentally relevant chemistry
By separating synthon selection from route construction, Synthony bypasses traditional disconnection logic and enables parallel exploration of chemically valid and commercially actionable synthesis routes.
Key Performance Metrics
74%
Top-1 Accuracy (USPTO50k)
50–200
Routes / Molecule
30
Avg Synthon Sets / Molecule
10+
Molecules / Second
Q-Pocket
Target Analyzing Engine
Q-Pocket is a toolkit designed for the automated analysis and selection of optimal binding pocket conformations. Moving beyond the analysis of structures as discrete entities, Q-Pocket uses a continuous representation of binding sites to systematically capture the experimentally evidenced conformational space. Q-Pocket provides a benchmarking platform for these states against specific functional criteria and identifies the single most effective conformational state for downstream applications. It serves as an important solution for the selection, processing, and interpretation of structural data for actionable drug discovery, ensuring that virtual screenings and de novo small molecule generation are built upon the most geometrically and energetically favorable basis.
Key Performance Metrics
< 1 min
Extraction, featurization & distance matrix (10 structures)
~ 10%
Early enrichment boost in virtual screening (EF 1%)
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