Confidence is the key: how conformal prediction enhances the generative design of permeable peptides
Laura van Weesep, Sunay Chankeshwara, Leonardo De Maria, Florian David, Ola Engkvist, G\"ok\c{c}e Geylan

TL;DR
This paper introduces a reinforcement learning framework for designing permeable cyclic peptides, integrating conformal prediction to quantify uncertainty and improve reliability in the generative process.
Contribution
It combines conformal prediction with reinforcement learning to enhance the reliability of peptide design by accounting for predictive uncertainty, especially for novel chemical spaces.
Findings
Rewarded peptides with CP-informed predictions improved optimization reliability.
The approach discourages exploration outside the predictor’s applicability domain.
First integration of conformal prediction with generative peptide design.
Abstract
Generative models coupled with reinforcement learning (RL), such as REINVENT and PepINVENT, have emerged as a powerful framework for de novo molecular design. During the ideation process these generative frameworks utilize various predictive models as part of the optimization objectives. However, the utility of the predictive models can be limited by their domain of applicability. When RL is used to explore the chemical space with predictive models, it can suggest molecules that lie outside the predictor's domain of applicability. As a result, the predictions may become less reliable, potentially steering designs into high reward but also high uncertainty chemical spaces. This is particularly pronounced for cyclic peptides which show therapeutic promise due to their modifiability and large interaction surfaces but are understudied compared to small molecules. While passive membrane…
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