ActivityDiff: A diffusion model with Positive and Negative Activity Guidance for De Novo Drug Design

AI in healthcare
Published: arXiv: 2508.06364v1
Authors

Renyi Zhou Huimin Zhu Jing Tang Min Li

Abstract

Achieving precise control over a molecule's biological activity-encompassing targeted activation/inhibition, cooperative multi-target modulation, and off-target toxicity mitigation-remains a critical challenge in de novo drug design. However, existing generative methods primarily focus on producing molecules with a single desired activity, lacking integrated mechanisms for the simultaneous management of multiple intended and unintended molecular interactions. Here, we propose ActivityDiff, a generative approach based on the classifier-guidance technique of diffusion models. It leverages separately trained drug-target classifiers for both positive and negative guidance, enabling the model to enhance desired activities while minimizing harmful off-target effects. Experimental results show that ActivityDiff effectively handles essential drug design tasks, including single-/dual-target generation, fragment-constrained dual-target design, selective generation to enhance target specificity, and reduction of off-target effects. These results demonstrate the effectiveness of classifier-guided diffusion in balancing efficacy and safety in molecular design. Overall, our work introduces a novel paradigm for achieving integrated control over molecular activity, and provides ActivityDiff as a versatile and extensible framework.

Paper Summary

Key Innovation
The innovation presented in this paper is ActivityDiff, a generative approach based on the classifier-guidance technique of diffusion models. It leverages separately trained drug-target classifiers for both positive and negative guidance, enabling the model to enhance desired activities while minimizing harmful off-target effects.
Practical Impact
This research has significant practical impact as it provides a novel paradigm for achieving integrated control over molecular activity. ActivityDiff is a versatile and extensible framework that can be applied in various settings, such as single- or dual-target generation, fragment-constrained dual-target design, selective generation to enhance target specificity, and reduction of off-target effects.
Analogy / Intuitive Explanation
Imagine trying to build a LEGO castle with specific features (e.g., towers, moats) while avoiding certain blocks that would make the structure unstable. ActivityDiff is like having a "builder's assistant" that uses pre-trained knowledge about what makes a good castle (or molecule) and what doesn't, guiding each step of the construction process to achieve the desired result. In this analogy, the positive prompts are like instructions for building specific features (e.g., towers), while the negative prompts are like warnings against using certain blocks that would compromise the structure's stability. By combining these prompts, ActivityDiff enables the generation of molecules with desired properties and minimizes off-target risks.
Paper Information
Categories:
cs.LG cs.AI q-bio.BM
Published Date:

arXiv ID:

2508.06364v1

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