1. What are the contributions in "An efficient gui-based clustering software for simulation and bayesian cluster analysis of single-molecule localization microscopy data" ?
Pike et al. this paper combined three advanced cluster algorithms with the Bayesian approach and parallelization in a userfriendly GUI and achieved up to an order of magnitude faster processing than for previous approaches.
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2. What are the future works in "An efficient gui-based clustering software for simulation and bayesian cluster analysis of single-molecule localization microscopy data" ?
In future work, other analytical methods such as Voronoı̈ tessellation ( Andronov et al., 2018 ; Levet et al., 2015 ) and extensions to 3D ( Griffié et al., 2017 ) and dual-color co-clustering ( Jayasinghe et al., 2018 ) may be implemented, and the processing speed may be further improved, i. e., by the implementation of GPU-processing.
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