Bright-field to fluorescence microscopy image translation for cell nuclei health quantification.
Ruixiong WangDaniel ButtStephen J CrossPaul VerkadeAlin AchimPublished in: Biological imaging (2023)
Microscopy is a widely used method in biological research to observe the morphology and structure of cells. Amongst the plethora of microscopy techniques, fluorescent labeling with dyes or antibodies is the most popular method for revealing specific cellular organelles. However, fluorescent labeling also introduces new challenges to cellular observation, as it increases the workload, and the process may result in nonspecific labeling. Recent advances in deep visual learning have shown that there are systematic relationships between fluorescent and bright-field images, thus facilitating image translation between the two. In this article, we propose the cross-attention conditional generative adversarial network (XAcGAN) model. It employs state-of-the-art GANs (GANs) to solve the image translation task. The model uses supervised learning and combines attention-based networks to explore spatial information during translation. In addition, we demonstrate the successful application of XAcGAN to infer the health state of translated nuclei from bright-field microscopy images. The results show that our approach achieves excellent performance both in terms of image translation and nuclei state inference.
Keyphrases
- deep learning
- single molecule
- label free
- optical coherence tomography
- living cells
- high resolution
- high speed
- quantum dots
- high throughput
- healthcare
- public health
- convolutional neural network
- health information
- mental health
- single cell
- machine learning
- induced apoptosis
- cell cycle arrest
- mass spectrometry
- cell therapy
- social media
- health promotion
- stem cells
- risk assessment