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Dimensionality reduction for deep learning in infrared microscopy: a comparative computational survey.

Dajana MüllerDavid SchuhmacherStephanie SchörnerFrederik GroßerueschkampIris TischoffAndrea TannapfelAnke Reinacher-SchickKlaus GerwertAxel Mosig
Published in: The Analyst (2023)
While infrared microscopy provides molecular information at spatial resolution in a label-free manner, exploiting both spatial and molecular information for classifying the disease status of tissue samples constitutes a major challenge. One strategy to mitigate this problem is to embed high-dimensional pixel spectra in lower dimensions, aiming to preserve molecular information in a more compact manner, which reduces the amount of data and promises to make subsequent disease classification more accessible for machine learning procedures. In this study, we compare several dimensionality reduction approaches and their effect on identifying cancer in the context of a colon carcinoma study. We observe surprisingly small differences between convolutional neural networks trained on dimensionality reduced spectra compared to utilizing full spectra, indicating a clear tendency of the convolutional networks to focus on spatial rather than spectral information for classifying disease status.
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