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Month wise articles
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2022
January
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4
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2021
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4
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1
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3
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August
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1
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2
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May
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2
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April
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1
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March
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1
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February
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3
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January
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3
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2020
December
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1
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November
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1
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October
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2
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September
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1
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August
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4
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July
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1
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April
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1
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March
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1
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February
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4
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2019
December
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2
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September
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2
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July
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2
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April
[
1
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February
[
1
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December
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4
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November
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1
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October
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3
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September
[
1
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July
[
1
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May
[
1
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April
[
2
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March
[
1
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February
[
2
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2017
December
[
3
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March
[
3
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2016
January
[
1
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2014
September
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1
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Original Article:
Deep Learning Nuclei Detection in Digitized Histology Images by Superpixels
Sudhir Sornapudi, Ronald Joe Stanley, William V Stoecker, Haidar Almubarak, Rodney Long, Sameer Antani, George Thoma, Rosemary Zuna, Shelliane R Frazier
J Pathol Inform
2018, 9:5 (5 March 2018)
DOI
:10.4103/jpi.jpi_74_17
PMID
:29619277
Background:
Advances in image analysis and computational techniques have facilitated automatic detection of critical features in histopathology images. Detection of nuclei is critical for squamous epithelium cervical intraepithelial neoplasia (CIN) classification into normal, CIN1, CIN2, and CIN3 grades.
Methods:
In this study, a deep learning (DL)-based nuclei segmentation approach is investigated based on gathering localized information through the generation of superpixels using a simple linear iterative clustering algorithm and training with a convolutional neural network.
Results:
The proposed approach was evaluated on a dataset of 133 digitized histology images and achieved an overall nuclei detection (object-based) accuracy of 95.97%, with demonstrated improvement over imaging-based and clustering-based benchmark techniques.
Conclusions:
The proposed DL-based nuclei segmentation Method with superpixel analysis has shown improved segmentation results in comparison to state-of-the-art methods.
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© Journal of Pathology Informatics | Published by Wolters Kluwer -
Medknow
Online since 10
th
March, 2010