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Enterprise AI Analysis: Synthelite: Chemist-aligned and feasibility-aware synthesis planning with LLMs

AI-POWERED SYNTHESIS PLANNING

Synthelite: Chemist-aligned and feasibility-aware synthesis planning with LLMs

Synthelite revolutionizes computer-aided synthesis planning by leveraging large language models (LLMs) to propose intricate retrosynthetic transformations. This framework allows chemists to steer the planning process with natural language prompts, ensuring routes are not only efficient but also chemically feasible for wet-lab success. Our studies demonstrate significant improvements in success rates and strategic alignment compared to traditional methods.

Key Performance Indicators

0 Success Rate (Strategy-Constrained)
0 Top-1 Case-wise Success
0 Highest Precision Achieved
0 Overall Solve Rate (USPTO-190)

Deep Analysis & Enterprise Applications

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Core Innovation: LLM-Driven Retrosynthesis

Synthelite addresses a critical gap in traditional Computer-Aided Synthesis Planning (CASP): the lack of flexible interaction and integration of human chemical insights. By deploying large language models (LLMs) as central orchestrators, Synthelite moves beyond rigid, algorithm-driven searches to create a more intuitive and responsive planning environment.

LLMs as Orchestrators Enabling intuitive, expert-guided synthesis planning

Unlike traditional CASP systems that often optimize solely for solve rate, Synthelite prioritizes strategic reasoning and overall route quality, adapting to user preferences such as reaction order, starting materials, or feasibility considerations through natural language prompts.

Feature Traditional CASP Synthelite (LLM-Driven)
User Interaction Limited, rigid inputs Flexible natural language prompts
Strategic Reasoning Often overlooked Integrated, adaptable planning
Feasibility Awareness Limited, post-hoc validation Intrinsic chemical knowledge guides design
Solution Space Exploration Algorithmic, broad search Focused, expert-aligned search

Synthelite's Two-Phase Planning Workflow

Synthelite employs a novel two-phase approach to generate comprehensive and feasible synthesis routes. This method combines the intrinsic chemical reasoning capabilities of LLMs with a similarity-based Monte Carlo Tree Search (MCTS) to ensure both strategic alignment and practical applicability.

Enterprise Process Flow

Phase 1: LLM Initial Planning
Search for Relevant Reactions
Phase 2: Similarity-Based MCTS
Refine & Validate Route

In Phase 1, the LLM iteratively drafts a synthesis strategy for each retro-step, converting chemical transformations into natural language descriptions. These descriptions are then used to retrieve reaction templates from a vast, LLM-annotated database. Phase 2 refines this blueprint, sampling similar reactions and optimizing towards stock availability and alignment with LLM-proposed strategies.

40,000+ SMARTS-encoded reactions in the template database, semantically enriched by LLMs.

Achieving Expert-Aligned Synthesis Routes

Synthelite demonstrates exceptional ability to align synthesis plans with diverse, user-specified constraints, such as preferred reaction types or specific formation stages. This adaptability is critical for chemists who often impose practical preferences on their synthesis design.

95% Success rate in strategy-constrained synthesis tasks.

The framework consistently achieves high recall, finding valid routes that satisfy prompts, and significantly higher precision than traditional methods, indicating a more focused and relevant search. For example, Synthelite can dynamically adjust its strategy to prioritize late-stage vs. early-stage pyrazole formation based on prompt variations.

Metric AZF (Top-1) Synthelite (Gemini-2.5-Pro, Top-1)
Recall 55% 89%
Precision Low (not reported) 83%

Adaptive Pyrazole Synthesis

When prompted for 'Late-stage pyrazole formation' for Synthelite 1, the system designs a route ending with a Knorr pyrazole synthesis. Conversely, for 'Early-stage pyrazole formation', it begins with reductive amination followed by a multicomponent ring condensation. This demonstrates direct, prompt-driven strategic adaptation.

Mastering Starting Material Constraints

Beyond strategic guidance, Synthelite excels in starting material constrained synthesis, a task crucial for semi-synthesis or waste valorization. Users can specify required leaf molecules, and the LLM effectively guides the planning towards incorporating these building blocks.

95% Solve rate for starting-material-constrained tasks (Gemini-2.5-Pro).

This is a particularly challenging area where traditional methods like AiZynthFinder show a significant performance drop when constraints are applied. Synthelite, especially with Gemini-2.5-Pro, maintains high solve rates, showcasing the LLM's reasoning capabilities in complex, constrained environments without explicit value functions tailored to these constraints.

System Unconstrained Solve Rate Constrained Solve Rate
AZF 100% 10%
Synthelite (Gemini-2.5-Pro) 100% 95%
Tango* 100% 100%

Ensuring Wet-Lab Feasibility and Route Quality

Synthelite significantly bridges the gap between computational planning and experimental reality by accounting for wet-lab feasibility. LLMs demonstrate fine-grained reasoning about chemoselectivity, reaction conditions, and potential side reactions.

High Feasibility Scores Generated routes consistently score higher for experimental plausibility.

The framework's self-evaluation mechanism, where LLMs generate feedback on previous attempts, allows for iterative refinement of synthesis strategies. This process identifies and corrects potential issues like over-alkylation, catalyst poisoning, or regioselectivity problems, leading to robust and practical routes.

Iterative Refinement for Synthelite 2

Initial plan for Synthelite 2 (Claude-4.5-Sonnet) proposed amination and two Suzuki couplings. Self-evaluation identified issues: over-alkylation, Pd catalyst poisoning, and regioselectivity. The refined plan introduced reductive amination of an aldehyde, Boc protection, and swapped bromide/boronic acid, achieving a feasibility score of 10/10.

Moreover, conducting multiple planning attempts combined with MCTS refinement consistently improves solve rates on benchmarks like USPTO-190, demonstrating the framework's robustness.

Attempts Greedy LLM Solve Rate LLM+MCTS Solve Rate (150 iterations)
1 Attempt 47% (Claude) 62% (Claude)
3 Attempts 62% (Claude) 74% (Claude)

Conclusion & Future Directions

Synthelite presents a significant advancement in computer-aided synthesis planning by integrating LLMs' strategic reasoning and chemical knowledge with Monte Carlo Tree Search. This framework offers explainable, user-steerable, and feasibility-aware route generation, setting a new paradigm for chemist-AI collaboration.

New Paradigm LLMs as central orchestrators for synthesis planning.

Future work will focus on reducing dependence on closed-source LLMs and developing more efficient mechanisms for LLM-guided single-step retrosynthesis. Despite current limitations, Synthelite is a meaningful step towards bridging LLM-based reasoning with the inherently explorative nature of synthesis planning, making it a more practical and transparent computational tool.

Practical & Transparent Moving closer to deployable AI tools for chemists.

Calculate Your Potential ROI

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Your AI Implementation Roadmap

A typical phased approach to integrate advanced AI solutions into your enterprise workflow for maximum impact and minimal disruption.

Phase 1: Initial Strategy Design & LLM Blueprinting

Definition of target molecules, desired constraints, and LLM-guided preliminary route generation.

Phase 2: MCTS-Guided Route Optimization

Refinement of initial blueprints, local sampling of reactions, and optimization for stock availability and strategic alignment.

Phase 3: Expert Validation & Refinement Cycle

Human expert review and LLM self-evaluation to enhance chemical feasibility and overall route quality.

Phase 4: Integration with Lab Automation

Connecting the validated synthesis plans with automated experimental platforms for execution.

Phase 5: Continuous Learning & Adaptation

Ongoing monitoring, feedback integration, and model updates to adapt to new chemical knowledge and user needs.

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