Convolutional neural network approach for the automated identification of in cellulo crystals.
Amirhossein KardoostRobert SchönherrCarsten DeiterLars RedeckeKristina LorenzenJoachim SchulzIñaki de DiegoPublished in: Journal of applied crystallography (2024)
In cellulo crystallization is a rare event in nature. Recent advances that have made use of heterologous overexpression can promote the intracellular formation of protein crystals, but new tools are required to detect and characterize these targets in the complex cell environment. The present work makes use of Mask R-CNN, a convolutional neural network (CNN)-based instance segmentation method, for the identification of either single or multi-shaped crystals growing in living insect cells, using conventional bright field images. The algorithm can be rapidly adapted to recognize different targets, with the aim of extracting relevant information to support a semi-automated screening pipeline, in order to aid the development of the intracellular protein crystallization approach.
Keyphrases
- convolutional neural network
- deep learning
- machine learning
- room temperature
- induced apoptosis
- protein protein
- reactive oxygen species
- single cell
- cell proliferation
- bioinformatics analysis
- cell cycle arrest
- binding protein
- high throughput
- cell therapy
- healthcare
- small molecule
- endoplasmic reticulum stress
- obstructive sleep apnea
- bone marrow
- zika virus
- health information
- ionic liquid
- social media
- optical coherence tomography
- pi k akt