Table 4.
Name of study | Reference | Model | Outcome | Relevant field |
---|---|---|---|---|
3D segmentation of glial cells using fully convolutional networks and k-terminal cut | (37) | CNN | High accuracy (F1 0.89) in 3D segmentation of glial cells | Neuropathology, basic research |
Code-free machine learning for classification of central nervous system histopathology images | (80) | CNN | High precision in detecting various brain tumor entities (e.g. glioma, subtypes of glioma, metastasis) | Neuropathology, neurooncology |
Deep neural networks segment neuronal membranes in electron microscopy images | (38) | CNN | Superhuman pixel error rate (60 × 10−3) on segmenting neuronal membranes for studying connectomes | Basic research |
Artificial intelligence in neuropathology: deep learning-based assessment of tauopathy | (81) | CNN | High accuracy in detecting neurofibrillary tangles for diagnosis of tauopathies | Neuropathology, neurodegeneration |
Automated brain histology classification using machine learning | (82) | CNN | Low- versus high-grade glioma classification of brain histology slides | Neuropathology, neurooncology |
Near real-time intraoperative brain tumor diagnosis using stimulated Raman histology and deep neural networks | (83) | CNN | Intraoperative diagnosis of brain tumors from hematoxylin and eosin-stained (H&E) specimens | Neurooncology, neurosurgery, neuropathology |
The papers listed here show some of the diverse use cases of neural networks in supporting researchers and pathologists in their work and research projects.
CNN, convolutional neural network.