Systems and methods for deconvolutional network based classification of cellular images and videos
US-2018082153-A1 · Mar 22, 2018 · US
US12579830B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12579830-B2 |
| Application number | US-202418647366-A |
| Country | US |
| Kind code | B2 |
| Filing date | Apr 26, 2024 |
| Priority date | Jun 10, 2016 |
| Publication date | Mar 17, 2026 |
| Grant date | Mar 17, 2026 |
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A classifier engine provides cell morphology identification and cell classification in computer-automated systems, methods and diagnostic tools. The classifier engine performs multispectral segmentation of thousands of cellular images acquired by a multispectral imaging flow cytometer. As a function of imaging mode, different ones of the images provide different segmentation masks for cells and subcellular parts. Using the segmentation masks, the classifier engine iteratively optimizes model fitting of different cellular parts. The resulting improved image data has increased accuracy of location of cell parts in an image and enables detection of complex cell morphologies in the image. The classifier engine provides automated ranking and selection of most discriminative shape based features for classifying cell types.
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What is claimed is: 1 . A method comprising: receiving high resolution images of a plurality of moving cells in a stream of a fluid acquired by an imaging flow cytometer, wherein the imaging flow cytometer combines fluorescence sensitivity of standard flow cytometry with spatial resolution and quantitative morphology of digital microscopy, wherein the high resolution images acquired of each of the plurality of moving cells includes a brightfield image, a side scatter image, and a plurality of different fluorescent images respectively associated with a plurality of different spectral bands of fluorescent channels that are spatially aligned to each other; segmenting the brightfield image of each of the plurality of moving cells into a cellular image and its components by using information from the brightfield image only; segmenting at least one fluorescent image channel image of the plurality of different fluorescent images to obtain a corresponding cellular image component mask with one or more subcomponent masks; and correlating the one or more subcomponent masks with the cellular image obtained from the brightfield image to form a brightfield mask; using an analysis framework with statistical modeling to extract salient morphological features from the high resolution images of the plurality of moving cells; and using a classifier engine on the extracted salient morphological features to classify cell types of the plurality of moving cells in the high resolution images. 2 . The method of claim 1 , further comprising: using a subcomponent mask of the one or more subcomponent masks as a foreground object seed; and selecting background pixels complimentary to the subcomponent mask of the one or more subcomponent masks. 3 . The method of claim 1 , further comprising: prior to the segmenting, specifying a shape model to use for a subcomponent mask. 4 . The method of claim 1 , further comprising: reprocessing each brightfield image using the one or more subcomponent masks to form final brightfield images with one or more positioned subcomponent masks.
Cell structures in vitro; Tissue sections in vitro · CPC title
Fluorescence image · CPC title
Region-based segmentation · CPC title
using image recognition · CPC title
Recognition of patterns in medical or anatomical images · CPC title
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