Sphere estimation network: Three-dimensional nuclei detection of fluorescence microscopy images Journal Article


Authors: Ho, D. J.; Mas Montserrat, D.; Fu, C.; Salama, P.; Dunn, K. W.; Delp, E. J.
Article Title: Sphere estimation network: Three-dimensional nuclei detection of fluorescence microscopy images
Abstract: Purpose: Fluorescence microscopy visualizes three-dimensional subcellular structures in tissue with two-photon microscopy achieving deeper penetration into tissue. Nuclei detection, which is essential for analyzing tissue for clinical and research purposes, remains a challenging problem due to the spatial variability of nuclei. Recent advancements in deep learning techniques have enabled the analysis of fluorescence microscopy data to localize and segment nuclei. However, these localization or segmentation techniques would require additional steps to extract characteristics of nuclei. We develop a 3D convolutional neural network, called Sphere Estimation Network (SphEsNet), to extract characteristics of nuclei without any postprocessing steps. Approach: To simultaneously estimate the center locations of nuclei and their sizes, SphEsNet is composed of two branches to localize nuclei center coordinates and to estimate their radii. Synthetic microscopy volumes automatically generated using a spatially constrained cycle-consistent adversarial network are used for training the network because manually generating 3D real ground truth volumes would be extremely tedious. Results: Three SphEsNet models based on the size of nuclei were trained and tested on five real fluorescence microscopy data sets from rat kidney and mouse intestine. Our method can successfully detect nuclei in multiple locations with various sizes. In addition, our method was compared with other techniques and outperformed them based on object-level precision, recall, and F1 score. Our model achieved 89.90% for F1 score. Conclusions: SphEsNet can simultaneously localize nuclei and estimate their size without additional steps. SphEsNet can be potentially used to extract more information from nuclei in fluorescence microscopy images. © 2020 Society of Photo-Optical Instrumentation Engineers (SPIE).
Keywords: fluorescence; clinical research; fluorescence microscopy; tissue; two photon microscopy; deep learning; convolutional neural network; adversarial networks; convolutional neural networks; nuclei detection; synthetic volumes; automatically generated; fluorescence microscopy images; learning techniques; segmentation techniques; spatial variability; subcellular structure
Journal Title: Journal of Medical Imaging
Volume: 7
Issue: 4
ISSN: 2329-4302
Publisher: SPIE  
Date Published: 2020-07-01
Start Page: 044003
Language: English
DOI: 10.1117/1.Jmi.7.4.044003
PROVIDER: scopus
PMCID: PMC7451995
PUBMED: 32904135
DOI/URL:
Notes: Article -- Source: Scopus
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  1. David Joon Ho
    12 Ho