Literature DB >> 30594529

Automated Cell Counts on Tissue Sections by Deep Learning and Unbiased Stereology.

Saeed S Alahmari1, Dmitry Goldgof2, Lawrence Hall2, Hady Ahmady Phoulady3, Raj H Patel4, Peter R Mouton5.   

Abstract

In recent decades stereology-based studies have played a significant role in understanding brain aging and developing novel drug discovery strategies for treatment of neurological disease and mental illness. A major obstacle to further progress in a wide range of neuroscience sub-disciplines remains the lack of high-throughput technology for stereology analyses. Though founded on methodologically unbiased principles, commercially available stereology systems still rely on well-trained humans to manually count hundreds of cells within each region of interest (ROI). Even for a simple study with 10 controls and 10 treated animals, cell counts typically require over a month of tedious labor and high costs. Furthermore, these studies are prone to errors and poor reproducibility due to human factors such as subjectivity, variable training, recognition bias, and fatigue. Here we propose a deep neural network-stereology combination to automatically segment and estimate the total number of immunostained neurons on tissue sections. Our three-step approach consists of (1) creating extended-depth-of-field (EDF) images from z-stacks of images (disector stacks); (2) applying an adaptive segmentation algorithm (ASA) to label stained cells in the EDF images (i.e., create masks) for training a convolutional neural network (CNN); and (3) use the trained CNN model to automatically segment and count the total number of cells in test disector stacks using the optical fractionator method. The automated stereology approach shows less than 2% error and over 5× greater efficiency compared to counts by a trained human, without the subjectivity, tedium, and poor precision associated with conventional stereology.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Adaptive Segmentation Algorithm (ASA); Automatic optical fractionator; Convolution neural network (CNN); Deep learning; Unbiased stereology

Mesh:

Year:  2018        PMID: 30594529     DOI: 10.1016/j.jchemneu.2018.12.010

Source DB:  PubMed          Journal:  J Chem Neuroanat        ISSN: 0891-0618            Impact factor:   3.052


  5 in total

1.  Design-Based stereology and binary image histomorphometry in nerve assessment.

Authors:  Daniel A Hunter; Deng Pan; Matthew D Wood; Alison K Snyder-Warwick; Amy M Moore; Eva L Feldman; Susan E Mackinnon; Michael J Brenner
Journal:  J Neurosci Methods       Date:  2020-02-15       Impact factor: 2.390

2.  Cell density detection based on a microfluidic chip with two electrode pairs.

Authors:  Yongliang Wang; Danni Chen; Xiaoliang Guo
Journal:  Biotechnol Lett       Date:  2022-09-10       Impact factor: 2.716

3.  Convolutional Neural Network ensembles for accurate lung nodule malignancy prediction 2 years in the future.

Authors:  Rahul Paul; Matthew Schabath; Robert Gillies; Lawrence Hall; Dmitry Goldgof
Journal:  Comput Biol Med       Date:  2020-06-24       Impact factor: 4.589

4.  Deeply-supervised density regression for automatic cell counting in microscopy images.

Authors:  Shenghua He; Kyaw Thu Minn; Lilianna Solnica-Krezel; Mark A Anastasio; Hua Li
Journal:  Med Image Anal       Date:  2020-11-11       Impact factor: 8.545

5.  A novel retinal ganglion cell quantification tool based on deep learning.

Authors:  Luca Masin; Marie Claes; Steven Bergmans; Lien Cools; Lien Andries; Benjamin M Davis; Lieve Moons; Lies De Groef
Journal:  Sci Rep       Date:  2021-01-12       Impact factor: 4.379

  5 in total

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