ChemistryAtlas App · AI Spectra + Virtual Screening
Formula + Spectrum Elucidation
Combine formula constraints and MS/MS similarity to produce structure-elucidation candidate reports.
App Documentation
Formula + Spectrum Elucidation
Overview
Combine formula constraints and MS/MS similarity to produce structure-elucidation candidate reports. It is in the AI Spectra + Virtual Screening category and is intended to connect advanced spectra prediction, docking, and active-learning screening workflows.
When To Use It
- You need a focused workflow for formula + spectrum elucidation without leaving ChemistryAtlas.
- You want a result that can be saved, shared, or chained into another chemistry app.
- You want the calculation assumptions and limitations visible next to the output.
Inputs
text- Chemistry input - type: textarea - Use formulas, names, SMILES-like text, reactions, or key=value options. Heavier engines will plug into this same app surface.
Recommended Workflow
- Prepare molecules, spectra, proteins, or candidate libraries; run the sidecar-capable workflow; then inspect rankings, uncertainties, and failure diagnostics.
- Start with the smallest representative input, confirm the parser understood it, then scale to a larger list or workflow.
- Save the generated report when the result will feed a notebook entry, route review, model comparison, or team discussion.
Outputs
- A Markdown-style chemistry report with parsed inputs, assumptions, and calculated or predicted results.
- Structured tables when the app returns multiple compounds, reagents, routes, peaks, candidates, or model rows.
- Warnings, fallback notes, and sidecar availability messages when a specialized engine is not installed or not reachable.
Method And Backend Notes
This app has a runnable ChemistryAtlas backend path. Backend type: model. ChemistryAtlas roadmap MVP: runnable report now; specialist cheminformatics/model backend plugs into this app surface next. The worksheet is designed to be auditable: keep units explicit, check limiting assumptions, and copy the final calculation trail into your notebook.
How To Interpret Results
- Sidecar model quality depends on installation, model weights, preparation choices, and applicability domain; review raw files and controls before acting.
- Compare results across related molecules, controls, blanks, literature examples, or known reactions whenever possible.
- For decisions that affect safety, synthesis scale-up, biological testing, purchasing, or publication, verify with primary data and expert review.
Example Input
formula=C8H10N4O2
spectrum=110:40,138:80,194:100
candidates=caffeine,theobromine,aspirin
Common Checks Before Acting
- Confirm names, salts, stereochemistry, tautomers, protonation state, and hydration state.
- Check units, concentrations, equivalent definitions, and significant figures.
- Record external database versions, model versions, sidecar availability, and any manual edits made after the app output.
Related Apps
- AI MS/MS Predictor (
ai-msms-predictor) - Spectrum Similarity Scorer (
spectrum-similarity-scorer) - Candidate Structure Ranker (
candidate-structure-ranker) - PyScreener Docking Workflow (
pyscreener-docking-workflow) - MolPAL Active-Learning Virtual Screening (
molpal-active-learning-virtual-screening)
Acknowledgements And Validation
- ChemistryAtlas documentation and UI were prepared for chemistry discovery workflows.
- Where available, calculations may use open-source cheminformatics, reaction-informatics, spectra, docking, or machine-learning engines such as RDKit-family tooling, ASKCOS-style sidecars, ChemProp, ms-pred/ICEBERG, PyScreener, and MolPAL.
- Always verify important results against primary literature, official SDS records, instrument software, validated models, and local laboratory procedures.
- Model-driven outputs should include model version, training domain, uncertainty, and independent validation before operational use.