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3 months ago

ChemBERTa-2: Fine-Tuning for Molecule’s HIV Replication Inhibition Prediction

{Sylwia Nowakowska}

ChemBERTa-2: Fine-Tuning for Molecule’s HIV Replication Inhibition Prediction

Abstract

Two versions of Large Language ChemBERTa-2 models, pre-trained with two different methods, were fine-tuned in this work for HIV replication inhibition prediction. The best model achieved AUROC of 0.793. The changes in distributions of molecular embeddings prior to and following fine-tuning reveal models’ enhanced ability to differentiate between active and inactive HIV molecules.

Benchmarks

BenchmarkMethodologyMetrics
molecular-property-prediction-on-hiv-datasetChemBERTa-2 Fine-tuned
AUC: 0.793

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ChemBERTa-2: Fine-Tuning for Molecule’s HIV Replication Inhibition Prediction | Papers | HyperAI