AI Article Synopsis

  • Embryo contour extraction is crucial for analyzing embryo morphology and understanding development, particularly with advancements in light-sheet microscopy for imaging embryos like zebrafish.
  • Recent challenges in extracting embryo contours from light-sheet images are addressed by a new workflow using edge detection and change point detection that does not require contour labeling.
  • This method outperforms traditional edge detection techniques in both accuracy and noise robustness, making it a valuable tool for automated contour extraction in situations where other methods, like deep learning approaches, are not feasible.

Article Abstract

Embryo contour extraction is the initial step in the quantitative analysis of embryo morphology, and it is essential for understanding the developmental process. Recent developments in light-sheet microscopy have enabled the in toto time-lapse imaging of embryos, including zebrafish. However, embryo contour extraction from images generated via light-sheet microscopy is challenging owing to the large amount of data and the variable sizes, shapes, and textures of objects. In this report, we provide a workflow for extracting the contours of zebrafish blastula and gastrula without contour labeling of an embryo. This workflow is based on the edge detection method using a change point detection approach. We assessed the performance of the edge detection method and compared it with widely used edge detection and segmentation methods. The results showed that the edge detection accuracy of the proposed method was superior to those of the Sobel, Laplacian of Gaussian, adaptive threshold, Multi Otsu, and k-means clustering-based methods, and the noise robustness of the proposed method was superior to those of the Multi Otsu and k-means clustering-based methods. The proposed workflow was shown to be useful for automating small-scale contour extractions of zebrafish embryos that cannot be specifically labeled owing to constraints, such as the availability of microscopic channels. This workflow may offer an option for contour extraction when deep learning-based approaches or existing non-deep learning-based methods cannot be applied.

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Source
http://dx.doi.org/10.1111/dgd.12871DOI Listing

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