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Track: long paper (4–8 pages excluding references)
Keywords: perturbation modeling, normalizing flow
Abstract: Predicting the transcriptional response to a genetic or chemical perturbation is a critical task for therapeutic design. However, building accurate models is challenged by the need to capture heterogeneous responses by a cell population to such perturbations. We propose a novel method that combines a transformer based generative model with a population-level contrastive objective to model the full distribution of perturbation effects. Furthermore, we integrate structured biological knowledge, to bias a transformer's self-attention mechanism. Initial experiments show that this enables robust, generalizable prediction of transcriptional responses.
Anonymization: This submission has been anonymized for double-blind review via the removal of identifying information such as names, affiliations, and identifying URLs.
Submission Number: 87
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