Robotic data acquisition with deep learning enables cell image-based prediction of transcriptomic phenotypes.
Jianshi JinTaisaku OgawaNozomi HojoKirill A KryukovKenji ShimizuTomokatsu IkawaTadashi ImanishiTaku OkazakiKatsuyuki ShiroguchiPublished in: Proceedings of the National Academy of Sciences of the United States of America (2022)
Single-cell whole-transcriptome analysis is the gold standard approach to identifying molecularly defined cell phenotypes. However, this approach cannot be used for dynamics measurements such as live-cell imaging. Here, we developed a multifunctional robot, the automated live imaging and cell picking system (ALPS) and used it to perform single-cell RNA sequencing for microscopically observed cells with multiple imaging modes. Using robotically obtained data that linked cell images and the whole transcriptome, we successfully predicted transcriptome-defined cell phenotypes in a noninvasive manner using cell image-based deep learning. This noninvasive approach opens a window to determine the live-cell whole transcriptome in real time. Moreover, this work, which is based on a data-driven approach, is a proof of concept for determining the transcriptome-defined phenotypes (i.e., not relying on specific genes) of any cell from cell images using a model trained on linked datasets.
Keyphrases
- single cell
- rna seq
- deep learning
- high throughput
- cell therapy
- high resolution
- machine learning
- convolutional neural network
- signaling pathway
- oxidative stress
- cell proliferation
- artificial intelligence
- drug delivery
- dna methylation
- mesenchymal stem cells
- electronic health record
- induced apoptosis
- cell death
- robot assisted