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  4. CenFind: a deep-learning pipeline for efficient centriole detection in microscopy datasets
 
research article

CenFind: a deep-learning pipeline for efficient centriole detection in microscopy datasets

Burgy, Leo  
•
Weigert, Martin  
•
Hatzopoulos, Georgios  
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March 28, 2023
Bmc Bioinformatics

BackgroundHigh-throughput and selective detection of organelles in immunofluorescence images is an important but demanding task in cell biology. The centriole organelle is critical for fundamental cellular processes, and its accurate detection is key for analysing centriole function in health and disease. Centriole detection in human tissue culture cells has been achieved typically by manual determination of organelle number per cell. However, manual cell scoring of centrioles has a low throughput and is not reproducible. Published semi-automated methods tally the centrosome surrounding centrioles and not centrioles themselves. Furthermore, such methods rely on hard-coded parameters or require a multichannel input for cross-correlation. Therefore, there is a need for developing an efficient and versatile pipeline for the automatic detection of centrioles in single channel immunofluorescence datasets.ResultsWe developed a deep-learning pipeline termed CenFind that automatically scores cells for centriole numbers in immunofluorescence images of human cells. CenFind relies on the multi-scale convolution neural network SpotNet, which allows the accurate detection of sparse and minute foci in high resolution images. We built a dataset using different experimental settings and used it to train the model and evaluate existing detection methods. The resulting average F-1-score achieved by CenFind is > 90% across the test set, demonstrating the robustness of the pipeline. Moreover, using the StarDist-based nucleus detector, we link the centrioles and procentrioles detected with CenFind to the cell containing them, overall enabling automatic scoring of centriole numbers per cell.ConclusionsEfficient, accurate, channel-intrinsic and reproducible detection of centrioles is an important unmet need in the field. Existing methods are either not discriminative enough or focus on a fixed multi-channel input. To fill this methodological gap, we developed CenFind, a command line interface pipeline that automates cell scoring of centrioles, thereby enabling channel-intrinsic, accurate and reproducible detection across experimental modalities. Moreover, the modular nature of CenFind enables its integration in other pipelines. Overall, we anticipate CenFind to prove critical for accelerating discoveries in the field.

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Type
research article
DOI
10.1186/s12859-023-05214-2
Web of Science ID

WOS:000962437000002

Author(s)
Burgy, Leo  
Weigert, Martin  
Hatzopoulos, Georgios  
Minder, Matthias
Journe, Adrien  
Rahi, Sahand Jamal  
Gonczy, Pierre  
Date Issued

2023-03-28

Publisher

BMC

Published in
Bmc Bioinformatics
Volume

24

Issue

1

Start page

120

Subjects

Biochemical Research Methods

•

Biotechnology & Applied Microbiology

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Mathematical & Computational Biology

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Biochemistry & Molecular Biology

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Biotechnology & Applied Microbiology

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Mathematical & Computational Biology

•

image analysis

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deep learning

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microscopy

•

software

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cell biology

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
UPGON  
Available on Infoscience
May 8, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/197398
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