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Shahin-Shamsabadi et al., 2024 - Google Patents

Proteomics and Machine Learning: Leveraging Domain Knowledge for Feature Selection in a Skeletal Muscle Tissue Meta-analysis

Shahin-Shamsabadi et al., 2024

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Document ID
5346269461022363860
Author
Shahin-Shamsabadi A
Cappuccitti J
Publication year
Publication venue
Heliyon

External Links

Snippet

Omics techniques, such as proteomics, contain crucial data for understanding biological processes, but they remain underutilized due to their high dimensionality. Typically, proteomics research focuses narrowly on using a limited number of datasets, hindering …
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