Detecting immune cells with label-free two-photon autofluorescence and deep learning
Lucas Kreiss, Amey Chaware, Maryam Roohian, Sarah Lemire, Oana-Maria Thoma, Birgitta Carl\'e, Maximilian Waldner, Sebastian Sch\"urmann, Oliver Friedrich, Roarke Horstmeyer

TL;DR
This study demonstrates that deep learning can accurately classify immune cells in label-free multiphoton microscopy images, enhancing in vivo imaging specificity without staining.
Contribution
It introduces a CNN-based approach for immune cell classification in label-free MPM images, achieving high accuracy and robustness, which is novel for this imaging modality.
Findings
Achieved 0.89 ROC-AUC in binary classification.
Attained 0.683 MCC in six-class classification.
Model confirmed to rely on autofluorescence channels NADH and FAD.
Abstract
Label-free imaging has gained broad interest because of its potential to omit elaborate staining procedures which is especially relevant for in vivo use. Label-free multiphoton microscopy (MPM), for instance, exploits two-photon excitation of natural autofluorescence (AF) from native, metabolic proteins, making it ideal for in vivo endomicroscopy. Deep learning (DL) models have been widely used in other optical imaging technologies to predict specific target annotations and thereby digitally augment the specificity of these label-free images. However, this computational specificity has only rarely been implemented for MPM. In this work, we used a data set of label-free MPM images from a series of different immune cell types (5,075 individual cells for binary classification in mixed samples and 3,424 cells for a multi-class classification task) and trained a convolutional neural network…
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