2024
DOI: 10.3389/fimmu.2024.1369289
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Enhancing breast cancer outcomes with machine learning-driven glutamine metabolic reprogramming signature

Xukui Li,
Xue Li,
Bin Yang
et al.

Abstract: BackgroundThis study aims to identify precise biomarkers for breast cancer to improve patient outcomes, addressing the limitations of traditional staging in predicting treatment responses.MethodsOur analysis encompassed data from over 7,000 breast cancer patients across 14 datasets, which included in-house clinical data and single-cell data from 8 patients (totaling 43,766 cells). We utilized an integrative approach, applying 10 machine learning algorithms in 54 unique combinations to analyze 100 existing brea… Show more

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