@article{rodner2019fully, type = {article}, key = {rodner2019fully}, title = {Fully Convolutional Networks in Multimodal Nonlinear Microscopy Images for Automated Detection of Head and Neck Carcinoma: A Pilot Study}, author = {Erik Rodner and Thomas Bocklitz and Ferdinand von Eggeling and Günther Ernst and Olga Chernavskaia and Jürgen Popp and Joachim Denzler and Orlando Guntinas-Lichius}, journal = {Head \& Neck}, year = {2019}, month = {January}, number = {1}, pages = {116-121}, volume = {41}, abstract = {A fully convolutional neural networks (FCN)-based automated image analysis algorithm to discriminate between head and neck cancer and noncancerous epithelium based on nonlinear microscopic images was developed. Head and neck cancer sections were used for standard histopathology and co-registered with multimodal images from the same sections using the combination of coherent anti-Stokes Raman scattering, two-photon excited fluorescence, and second harmonic generation microscopy. The images analyzed with semantic segmentation using a FCN for four classes: cancer, normal epithelium, background, and other tissue types. A total of 114 images of 12 patients were analyzed. Using a patch score aggregation, the average recognition rate and an overall recognition rate or the four classes were 88.9\% and 86.7\%, respectively. A total of 113 seconds were needed to process a whole-slice image in the dataset. Multimodal nonlinear microscopy in combination with automated image analysis using FCN seems to be a promising technique for objective differentiation between head and neck cancer and noncancerous epithelium.}, doi = {10.1002/hed.25489}, eprint = {https://onlinelibrary.wiley.com/doi/pdf/10.1002/hed.25489}, keywords = {coherent anti-stokes Raman scattering, convolutional neural networks, diagnostics, digital pathology, head and neck cancer, image analysis, second-harmonic generation, semantic segmentation, spectral histopathology, two-photon excited fluorescence}, url = {https://onlinelibrary.wiley.com/doi/abs/10.1002/hed.25489}, }