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Hauptverfasser: Peng, Johnny, Khuat, Thanh Tung, Musial, Katarzyna, Gabrys, Bogdan
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2506.12322
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author Peng, Johnny
Khuat, Thanh Tung
Musial, Katarzyna
Gabrys, Bogdan
author_facet Peng, Johnny
Khuat, Thanh Tung
Musial, Katarzyna
Gabrys, Bogdan
contents Data is crucial for machine learning (ML) applications, yet acquiring large datasets can be costly and time-consuming, especially in complex, resource-intensive fields like biopharmaceuticals. A key process in this industry is upstream bioprocessing, where living cells are cultivated and optimised to produce therapeutic proteins and biologics. The intricate nature of these processes, combined with high resource demands, often limits data collection, resulting in smaller datasets. This comprehensive review explores ML methods designed to address the challenges posed by small data and classifies them into a taxonomy to guide practical applications. Furthermore, each method in the taxonomy was thoroughly analysed, with a detailed discussion of its core concepts and an evaluation of its effectiveness in tackling small data challenges, as demonstrated by application results in the upstream bioprocessing and other related domains. By analysing how these methods tackle small data challenges from different perspectives, this review provides actionable insights, identifies current research gaps, and offers guidance for leveraging ML in data-constrained environments.
format Preprint
id arxiv_https___arxiv_org_abs_2506_12322
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Machine Learning Methods for Small Data and Upstream Bioprocessing Applications: A Comprehensive Review
Peng, Johnny
Khuat, Thanh Tung
Musial, Katarzyna
Gabrys, Bogdan
Machine Learning
Artificial Intelligence
Data is crucial for machine learning (ML) applications, yet acquiring large datasets can be costly and time-consuming, especially in complex, resource-intensive fields like biopharmaceuticals. A key process in this industry is upstream bioprocessing, where living cells are cultivated and optimised to produce therapeutic proteins and biologics. The intricate nature of these processes, combined with high resource demands, often limits data collection, resulting in smaller datasets. This comprehensive review explores ML methods designed to address the challenges posed by small data and classifies them into a taxonomy to guide practical applications. Furthermore, each method in the taxonomy was thoroughly analysed, with a detailed discussion of its core concepts and an evaluation of its effectiveness in tackling small data challenges, as demonstrated by application results in the upstream bioprocessing and other related domains. By analysing how these methods tackle small data challenges from different perspectives, this review provides actionable insights, identifies current research gaps, and offers guidance for leveraging ML in data-constrained environments.
title Machine Learning Methods for Small Data and Upstream Bioprocessing Applications: A Comprehensive Review
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.12322