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NewsCELLFriday, May 1, 2026 · May 1, 2026

Deep-learning-based de novo discovery and design of therapeutics that reverse disease-associated transcriptional phenotypes.

WHY IT MATTERS

Recent peer-reviewed research on Idiopathic pulmonary fibrosis that may be relevant for patients and caregivers.

Identifying drugs that reverse disease-associated transcriptomic features has been widely explored for drug repurposing, but its potential for de novo drug discovery remains underexplored. Here, we present gene expression profile predictor on chemical structures (GPS), a deep-learning-based drug dis...

Read on PubMed
Read the original at Cell
ResearchPubMedIdiopathic pulmonary fibrosisHumansDeep Learning

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