Spatial self-supervised Peak Learning and correlation-based Evaluation of peak picking in Mass Spectrometry Imaging
arXiv cs.CV / 3/12/2026
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Key Points
- It introduces an autoencoder-based spatial self-supervised peak learning network that selects spatially structured peaks in MSI data by using an attention mask that leverages both spatial and spectral information.
- It proposes an evaluation procedure based on expert-annotated segmentation masks to assess peak-picking performance in a spatially grounded way.
- The approach is evaluated on four diverse public MSI datasets and consistently outperforms state-of-the-art peak-picking methods.
- The framework offers a robust, generalizable solution for comparing spatially structured peak-picking methods across different datasets and can be readily applied to new MSI data.
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