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Enhancing Classification of liquid chromatography mass spectrometry data with Batch Effect Removal Neural Networks (BERNN).
Droit, Arnaud; Pelletier, Simon; Leclerq, Mickaël; Roux-Dalvai, Florence; de Geus, Matthijs; Leslie, Shannon; Wang, Weiwei; Lam, TuKiet; Nairn, Angus; Arnold, Steven; Carlyle, Becky; Precioso, Frederic.
Afiliación
  • Droit A; Centre de Recherche du CHU de Québec - Université Laval, Axe Endocrinologie et Néphrologie, Québec, Canada.
  • Pelletier S; Centre de Recherche du CHU de Québec.
  • Leclerq M; CHU de Québec - Université Laval Research Center.
  • Roux-Dalvai F; CHU de Québec - Université Laval Research Center.
  • de Geus M; Massachusetts General Hospital.
  • Leslie S; Yale Department of Psychiatry.
  • Wang W; 7. Keck MS & Proteomics Resource, Yale School of Medicine.
  • Lam T; 7. Keck MS & Proteomics Resource, Yale School of Medicine.
  • Nairn A; Yale University School of Medicine.
  • Arnold S; 3. Massachusetts General Hospital Department of Neurology.
  • Carlyle B; 3. Massachusetts General Hospital Department of Neurology.
  • Precioso F; Université Côte d'Azur, CNRS, INRIA, I3S.
Res Sq ; 2023 Jul 06.
Article en En | MEDLINE | ID: mdl-37461653
ABSTRACT
Liquid Chromatography Mass Spectrometry (LC-MS) is a powerful method for profiling complex biological samples. However, batch effects typically arise from differences in sample processing protocols, experimental conditions and data acquisition techniques, significantlyimpacting the interpretability of results. Correcting batch effects is crucial for the reproducibility of proteomics research, but current methods are not optimal for removal of batch effects without compressing the genuine biological variation under study. We propose a suite of Batch Effect Removal Neural Networks (BERNN) to remove batch effects in large LC-MS experiments, with the goal of maximizing sample classification performance between conditions. More importantly, these models must efficiently generalize in batches not seen during training. Comparison of batch effect correction methods across three diverse datasets demonstrated that BERNN models consistently showed the strongest sample classification performance. However, the model producing the greatest classification improvements did not always perform best in terms of batch effect removal. Finally, we show that overcorrection of batch effects resulted in the loss of some essential biological variability. These findings highlight the importance of balancing batch effect removal while preserving valuable biological diversity in large-scale LC-MS experiments.

Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Res Sq Año: 2023 Tipo del documento: Article País de afiliación: Canadá

Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Res Sq Año: 2023 Tipo del documento: Article País de afiliación: Canadá