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Review
. 2024 Jul;29(7):104025.
doi: 10.1016/j.drudis.2024.104025. Epub 2024 May 17.

Best practices for machine learning in antibody discovery and development

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Free article
Review

Best practices for machine learning in antibody discovery and development

Leonard Wossnig et al. Drug Discov Today. 2024 Jul.
Free article

Abstract

In the past 40 years, therapeutic antibody discovery and development have advanced considerably, with machine learning (ML) offering a promising way to speed up the process by reducing costs and the number of experiments required. Recent progress in ML-guided antibody design and development (D&D) has been hindered by the diversity of data sets and evaluation methods, which makes it difficult to conduct comparisons and assess utility. Establishing standards and guidelines will be crucial for the wider adoption of ML and the advancement of the field. This perspective critically reviews current practices, highlights common pitfalls and proposes method development and evaluation guidelines for various ML-based techniques in therapeutic antibody D&D. Addressing challenges across the ML process, best practices are recommended for each stage to enhance reproducibility and progress.

Keywords: FAIR data; antibodies; data curation; data standardisation; drug discovery; machine learning; metrics; model evaluation; model performance; protein language models.

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