Automatic deep learning-driven label-free image-guided patch clamp system.
Krisztian KoosGáspár OláhTamas BalassaNorbert MihutMárton RózsaAttila OzsvárErvin TasnadiPál BarzóNóra FaragóLászló PuskásGábor MolnárJózsef MolnárGabor TamasPeter HorvathPublished in: Nature communications (2021)
Patch clamp recording of neurons is a labor-intensive and time-consuming procedure. Here, we demonstrate a tool that fully automatically performs electrophysiological recordings in label-free tissue slices. The automation covers the detection of cells in label-free images, calibration of the micropipette movement, approach to the cell with the pipette, formation of the whole-cell configuration, and recording. The cell detection is based on deep learning. The model is trained on a new image database of neurons in unlabeled brain tissue slices. The pipette tip detection and approaching phase use image analysis techniques for precise movements. High-quality measurements are performed on hundreds of human and rodent neurons. We also demonstrate that further molecular and anatomical analysis can be performed on the recorded cells. The software has a diary module that automatically logs patch clamp events. Our tool can multiply the number of daily measurements to help brain research.
Keyphrases
- label free
- deep learning
- single cell
- induced apoptosis
- spinal cord
- convolutional neural network
- cell therapy
- machine learning
- endothelial cells
- resting state
- emergency department
- minimally invasive
- functional connectivity
- oxidative stress
- stem cells
- endoplasmic reticulum stress
- mass spectrometry
- quantum dots
- mesenchymal stem cells
- multiple sclerosis
- optical coherence tomography
- spinal cord injury
- bone marrow
- real time pcr