Interpretation of the DOME Recommendations for Machine Learning in Proteomics and Metabolomics.
Magnus PalmbladSebastian BöckerSven DegroeveOliver KohlbacherLukas KällWilliam Stafford NobleMathias WilhelmPublished in: Journal of proteome research (2022)
Machine learning is increasingly applied in proteomics and metabolomics to predict molecular structure, function, and physicochemical properties, including behavior in chromatography, ion mobility, and tandem mass spectrometry. These must be described in sufficient detail to apply or evaluate the performance of trained models. Here we look at and interpret the recently published and general DOME (Data, Optimization, Model, Evaluation) recommendations for conducting and reporting on machine learning in the specific context of proteomics and metabolomics.
Keyphrases
- mass spectrometry
- machine learning
- liquid chromatography
- tandem mass spectrometry
- high performance liquid chromatography
- gas chromatography
- ultra high performance liquid chromatography
- high resolution mass spectrometry
- big data
- high resolution
- simultaneous determination
- artificial intelligence
- solid phase extraction
- clinical practice
- deep learning
- resistance training
- data analysis