Machine learning for blob detection in high-resolution 3D microscopy images

Detta är en Master-uppsats från KTH/Skolan för elektroteknik och datavetenskap (EECS)

Sammanfattning: The aim of blob detection is to find regions in a digital image that differ from their surroundings with respect to properties like intensity or shape. Bio-image analysis is a common application where blobs can denote regions of interest that have been stained with a fluorescent dye. In image-based in situ sequencing for ribonucleic acid (RNA) for example, the blobs are local intensity maxima (i.e. bright spots) corresponding to the locations of specific RNA nucleobases in cells. Traditional methods of blob detection rely on simple image processing steps that must be guided by the user. The problem is that the user must seek the optimal parameters for each step which are often specific to that image and cannot be generalised to other images. Moreover, some of the existing tools are not suitable for the scale of the microscopy images that are often in very high resolution and 3D. Machine learning (ML) is a collection of techniques that give computers the ability to ”learn” from data. To eliminate the dependence on user parameters, the idea is applying ML to learn the definition of a blob from labelled images. The research question is therefore how ML can be effectively used to perform the blob detection. A blob detector is proposed that first extracts a set of relevant and nonredundant image features, then classifies pixels as blobs and finally uses a clustering algorithm to split up connected blobs. The detector works out-of-core, meaning it can process images that do not fit in memory, by dividing the images into chunks. Results prove the feasibility of this blob detector and show that it can compete with other popular software for blob detection. But unlike other tools, the proposed blob detector does not require parameter tuning, making it easier to use and more reliable.

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