Hierarchical deep convolutional neural networks combine spectral and spatial information for highly accurate Raman-microscopy-based cytopathology.
Sascha D KraußRaphael RoyHesham Kamaleldin YosefTatjana LechtonenSamir F El-MashtolyKlaus GerwertAxel MosigPublished in: Journal of biophotonics (2018)
Hierarchical variants of so-called deep convolutional neural networks (DCNNs) have facilitated breakthrough results for numerous pattern recognition tasks in recent years. We assess the potential of these novel whole-image classifiers for Raman-microscopy-based cytopathology. Conceptually, DCNNs facilitate a flexible combination of spectral and spatial information for classifying cellular images as healthy or cancer-affected cells. As we demonstrate, this conceptual advantage translates into practice, where DCNNs exceed the accuracy of both conventional classifiers based on pixel spectra as well as classifiers based on morphological features extracted from Raman microscopic images. Remarkably, accuracies exceeding those of all previously proposed classifiers are obtained while using only a small fraction of the spectral information provided by the dataset. Overall, our results indicate a high potential for DCNNs in medical applications of not just Raman, but also infrared microscopy.
Keyphrases
- convolutional neural network
- optical coherence tomography
- deep learning
- label free
- high resolution
- single molecule
- healthcare
- high speed
- raman spectroscopy
- health information
- induced apoptosis
- high throughput
- primary care
- papillary thyroid
- gene expression
- working memory
- dual energy
- oxidative stress
- machine learning
- squamous cell carcinoma
- fine needle aspiration
- copy number
- young adults
- mass spectrometry
- quality improvement
- computed tomography
- social media