AI Drug Discovery

ADMET & Toxicity Prediction

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AI Drug Discovery

ADMET & Toxicity Prediction

11 companies in this category

Simulations Plus logo
Certara logo
Schrödinger logo
Cyclica logo
Collaborations Pharma logo
molab.ai logo
CarbonSilicon AI logo
Cortex Discovery logo
XtalPi logo
Optibrium logo
Lhasa Limited logo

About ADMET & Toxicity Prediction

The ADMET & Toxicity Prediction category is part of the AI Drug Discovery market map, tracking 11 companies building in this segment. Target discovery, molecular design, protein folding, and clinical trial optimization accelerating the path from lab to patient. Curated by Hartmann Capital's venture research team.

Companies in ADMET & Toxicity Prediction

  • Simulations PlusPublic
  • CertaraPublic
  • SchrödingerPublic, $162M
  • CyclicaAcquired, $23M
  • Collaborations PharmaSeed, $5M
  • molab.aiSeed
  • CarbonSilicon AISeries A, $10M
  • Cortex DiscoverySeed
  • XtalPiSeries D, $785M
  • OptibriumGrowth, $15M
  • Lhasa LimitedNon-Profit

Frequently Asked Questions

What companies are in the ADMET & Toxicity Prediction category?
The ADMET & Toxicity Prediction category includes 11 companies: Simulations Plus, Certara, Schrödinger, Cyclica, Collaborations Pharma, molab.ai, CarbonSilicon AI, Cortex Discovery, XtalPi, Optibrium, Lhasa Limited. This is part of the AI Drug Discovery market map maintained by Hartmann Capital.
How many ADMET & Toxicity Prediction startups are tracked?
Hartmann Capital tracks 11 companies in the ADMET & Toxicity Prediction segment of the AI Drug Discovery market map.
What are the best funded ADMET & Toxicity Prediction companies?
Top funded companies in ADMET & Toxicity Prediction include XtalPi ($785M), Schrödinger ($162M), Cyclica ($23M), Optibrium ($15M), CarbonSilicon AI ($10M). Browse the full list in the AI Drug Discovery market map.
How can I submit my startup?
You can submit your startup for inclusion by visiting the submission page. Submissions are reviewed by Hartmann Capital's research team.

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