![]() ![]() ![]() What do the settings mean? See below for help on the individual settings. See the ClassifyPixels module for more information. Since this new image satisfies the constraints above, it can be used as input in IdentifyPrimaryObjects. The result of ClassifyPixels is an image in which the region that falls into the class of interest is light on a dark background. Then, the ClassifyPixels module takes the classifier and applies it to each image to identify areas that correspond to the trained classes. You first train a classifier by identifying areas of images that fall into one of several classes, such as cell body, nucleus, background, etc. If you have images in which the foreground and background cannot be distinguished by intensity alone (e.g, brightfield or DIC images), you can use the ilastik package bundled with CellProfiler to perform pixel-based classification (Windows only). If you are working with color images, they must first be converted to grayscale using the ColorToGray module.If the objects in your images are dark on a light background, you should invert the images using the Invert operation in the ImageMath module.If this is not the case, other modules can be used to pre-process the images to ensure they are in the proper form: The foreground (i.e, regions of interest) are lighter than the background.What do I need as input? To use this module, you will need to make sure that your input image has the following qualities: See the IdentifySecondaryObjects module for details on how to do this. For these reasons, cell bodies are better suited for secondary object identification, since they are best identified by using a previously-identified primary object (i.e, the nuclei) as a reference. In addition, cells often touch their neighbors making it harder to delineate the cell borders. In contrast, cells often have irregular intensity patterns and are lower-contrast with more diffuse staining, making them more challenging to identify than nuclei.These qualities typically make them appropriate candidates for primary object identification. The nuclei of cells are usually more easily identifiable due to their more uniform morphology, high contrast relative to the background when stained, and good separation between adjacent nuclei.We define an object as primary when it can be found in an image without needing the assistance of another cellular feature as a reference. What is a primary object? In CellProfiler, we use the term object as a generic term to refer to an identifed feature in an image, usually a cellular subcompartment of some kind (for example, nuclei, cells, colonies, worms). Identify Primary Objects identifies biological components of interest in grayscale images containing bright objects on a dark background. ![]()
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