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Search Results for 'PhenoLOGIC'

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  • Phenologic 1

    PhenoLOGIC Machine Learning

    PhenoLOGIC enables biologists using Harmony to train the software to develop the image analysis algorithms. While other systems may require an image analysis expert to create an algorithm, PhenoLOGIC uses proprietary machine-learning technology to make it easy for you to do it on your own. Using a learn-by-example approach, images can be segmented with just a few clicks of the mouse and then tailored algorithms developed quickly and easily.
  • Columbus Image Data Storage and Analysis System

    Columbus Image Data Storage and Analysis System

    Our Columbus Image Data Storage and Analysis system is an instrument agnostic image analysis and management platform. The Columbus system is the only system that provides universal high-volume image data storage and analysis and brings access to images from a wide range of sources including all major high content screening instruments.
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  • Application Note

    Phenotypic Profiling of Autophagy Using High Content Profiler™

    Autophagy is the process of degrading cellular components such as lipids, large protein complexes and whole organelles via the lysosomal route, and is used to clear the cell and recycle metabolic building blocks. Altered autophagy is found in various pathological conditions, for example, neurodegenerative diseases, cancer and viral and bacterial infections.

    Using an autophagy assay as an example, this study describes the validation of a phenotypic image and data analysis workflow using PerkinElmer's Harmony® High Content Imaging and Analysis and High Content Profiler software.

    In this application note, you will learn how to:

    1. Quantify autophagy using advanced morphology object properties
    2. Generate improved cell classifiers based on combinations of features rather than on single features by applying machine learning methods
    3. Overcome the bottlenecks of multiparametric phenotypic screening