Teachable, high-content analytics for live-cell, phase contrast movies.

  title={Teachable, high-content analytics for live-cell, phase contrast movies.},
  author={Samuel V Alworth and Hirotada Watanabe and James Jung-Hoon Lee},
  journal={Journal of biomolecular screening},
  volume={15 8},
CL-Quant is a new solution platform for broad, high-content, live-cell image analysis. Powered by novel machine learning technologies and teach-by-example interfaces, CL-Quant provides a platform for the rapid development and application of scalable, high-performance, and fully automated analytics for a broad range of live-cell microscopy imaging applications, including label-free phase contrast imaging. The authors used CL-Quant to teach off-the-shelf universal analytics, called standard… CONTINUE READING

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