Dal-Jae Yun, Junhyeong Park, Youngkwon Haam, Hee-Seok Kweon, Hwan Hur, Jisoo Kim, In-Yong Park, Ha Rim Lee, Haewon Jung
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Three-Dimensional Reconstruction of Serial Block-Face Scanning Electron Microscopy Using Semantic Segmentation based on Semi-Supervised Deep Learning.
Serial block-face scanning electron microscopy (SBF-SEM) is employed to achieve high-resolution volume reconstructions and detailed ultrastructural analyses of complex organelles. The performance of SBF-SEM is evaluated according to the accuracy of segmentation. Our study introduces a semi-supervised learning approach using a segment interpolation method to mitigate the costs of manual segmentation. The shapes and locations of individual segments between sparsely annotated label images are estimated using the proposed method. The proposed method is particularly well suited for SBF-SEM, where alignment and fine cutting of samples allow for accurate predictions with a minimal amount of labelled data. To validate the deep neural networks trained using the proposed method, the F-1 score metric and the K-fold technique were utilized. The results achieved an F-1 score of 0.89 for mouse brain cells and 0.84 for inverted images during the validation process for semi-supervised learning. Testing on an independently separated test dataset yielded scores of 0.84 for mouse brain cells and 0.80 for inverted cases. The automatically segmented results were then reconstructed in volume images using the marching cube algorithm. This allows for a three-dimensional (3-D) analysis of complex organelles, with potential applications in the fields of biology and medicine.
期刊介绍:
Microscopy and Microanalysis publishes original research papers in the fields of microscopy, imaging, and compositional analysis. This distinguished international forum is intended for microscopists in both biology and materials science. The journal provides significant articles that describe new and existing techniques and instrumentation, as well as the applications of these to the imaging and analysis of microstructure. Microscopy and Microanalysis also includes review articles, letters to the editor, and book reviews.