URL: https://github.com/alexlib/KymoButler-1
Proper Citation: KymoButler (RRID:SCR_021717)
Description: Software tool as deep learning software for automated kymograph analysis. Uses artificial intelligence to trace lines in kymograph and extract information about particle movement. Speeds up analysis of kymographs by between 50 and 250 times, and comparisons show that it is as reliable as manual analysis.
Resource Type: software application, data analysis software, software resource, data processing software
Defining Citation: PMID:31405451
Keywords: automated kymograph analysis, kymograph, particle movement
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