Projects per year
Abstract
Background Machine learning (ML) technologies, especially deep learning (DL), have gained increasing attention in predictive mass spectrometry (MS) for enhancing the data processing pipeline from raw data analysis to end-user predictions and re-scoring. ML models need large-scale datasets for training and re-purposing, which can be obtained from a range of public data repositories. However, applying ML to public MS datasets on larger scales is challenging, as they vary widely in terms of data acquisition methods, biological systems, and experimental designs.
Results We aim to facilitate ML efforts in MS data by conducting a systematic analysis of the potential sources of variance in public MS repositories. We also examine how these factors affect ML performance and perform a comprehensive transfer learning to evaluate the benefits of current best practice methods in the field for transfer learning.
Conclusions Our findings show significantly higher levels of homogeneity within a project than between projects, which indicates that it’s important to construct datasets most closely resembling future test cases, as transferability is severely limited for unseen datasets. We also found that transfer learning, although it did increase model performance, did not increase model performance compared to a non-pre-trained model.
Results We aim to facilitate ML efforts in MS data by conducting a systematic analysis of the potential sources of variance in public MS repositories. We also examine how these factors affect ML performance and perform a comprehensive transfer learning to evaluate the benefits of current best practice methods in the field for transfer learning.
Conclusions Our findings show significantly higher levels of homogeneity within a project than between projects, which indicates that it’s important to construct datasets most closely resembling future test cases, as transferability is severely limited for unseen datasets. We also found that transfer learning, although it did increase model performance, did not increase model performance compared to a non-pre-trained model.
Original language | English |
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Publisher | bioRxiv |
Number of pages | 29 |
DOIs | |
Publication status | Published - 2 May 2023 |
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Dive into the research topics of 'Variance Analysis of LC-MS Experimental Factors and Their Impact on Machine Learning'. Together they form a unique fingerprint.Projects
- 1 Finished
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Q-BIOPEP: KVANTIFICERING AF BIOAKTIVE FØDEVAREPEPTIDER FRA KARTOFFELPROTEIN
Gregersen, S. (CoPI), Wimmer, R. (PI) & Abdul Khalek Gharzeddine, N. (Project Participant)
Karl Pedersen og Hustrus Industrifond
15/06/2021 → 14/06/2024
Project: Research