Enhancing mass spectrometry imaging accessibility using convolutional autoencoders for deriving hypoxia-associated peptides from tumors.
Verena BittoPia HönscheidMaría José BessoChristian SperlingIna KurthMichael BaumannBenedikt BrorsPublished in: NPJ systems biology and applications (2024)
Mass spectrometry imaging (MSI) allows to study cancer's intratumoral heterogeneity through spatially-resolved peptides, metabolites and lipids. Yet, in biomedical research MSI is rarely used for biomarker discovery. Besides its high dimensionality and multicollinearity, mass spectrometry (MS) technologies typically output mass-to-charge ratio values but not the biochemical compounds of interest. Our framework makes particularly low-abundant signals in MSI more accessible. We utilized convolutional autoencoders to aggregate features associated with tumor hypoxia, a parameter with significant spatial heterogeneity, in cancer xenograft models. We highlight that MSI captures these low-abundant signals and that autoencoders can preserve them in their latent space. The relevance of individual hyperparameters is demonstrated through ablation experiments, and the contribution from original features to latent features is unraveled. Complementing MSI with tandem MS from the same tumor model, multiple hypoxia-associated peptide candidates were derived. Compared to random forests alone, our autoencoder approach yielded more biologically relevant insights for biomarker discovery.
Keyphrases
- mass spectrometry
- high resolution
- liquid chromatography
- papillary thyroid
- capillary electrophoresis
- gas chromatography
- high performance liquid chromatography
- small molecule
- ms ms
- squamous cell
- endothelial cells
- high throughput
- single cell
- climate change
- neural network
- lymph node metastasis
- squamous cell carcinoma
- tandem mass spectrometry
- amino acid
- fatty acid
- young adults
- solid phase extraction
- simultaneous determination