Contact us
|
Home
|
Login
| Users Online: 378
Feedback
Subscribe
Advertise
Search
Advanced Search
Month wise articles
Figures next to the month indicate the number of articles in that month
2022
January
[
3
]
2021
November
[
2
]
September
[
3
]
August
[
1
]
June
[
2
]
January
[
1
]
2020
November
[
3
]
August
[
1
]
July
[
1
]
May
[
1
]
February
[
1
]
2019
December
[
2
]
September
[
1
]
August
[
2
]
July
[
2
]
June
[
1
]
May
[
1
]
April
[
1
]
March
[
1
]
February
[
2
]
2018
December
[
4
]
November
[
1
]
August
[
1
]
July
[
1
]
May
[
1
]
2017
October
[
1
]
September
[
3
]
June
[
1
]
May
[
1
]
March
[
1
]
February
[
1
]
2016
April
[
1
]
March
[
1
]
January
[
2
]
2015
October
[
3
]
September
[
3
]
June
[
4
]
March
[
2
]
January
[
1
]
2014
October
[
2
]
September
[
2
]
August
[
2
]
July
[
1
]
June
[
1
]
May
[
1
]
March
[
1
]
January
[
2
]
2013
December
[
2
]
November
[
1
]
July
[
1
]
June
[
1
]
March
[
2
]
2012
December
[
1
]
September
[
3
]
August
[
1
]
July
[
1
]
April
[
3
]
March
[
1
]
February
[
1
]
2011
August
[
2
]
July
[
2
]
June
[
1
]
May
[
1
]
March
[
2
]
January
[
1
]
2010
October
[
3
]
» Articles published in the past year
To view other articles click corresponding year from the navigation links on the left side.
All
|
Abstracts
|
Commentary
|
Editorial
|
Erratum
|
Original Article
|
Original Articles
|
Original Research
|
Research Article
|
Review Article
|
Technical Note
Export selected to
Endnote
Reference Manager
Procite
Medlars Format
RefWorks Format
BibTex Format
Show all abstracts
Show selected abstracts
Export selected to
Add to my list
Research Article:
Multi-field-of-view deep learning model predicts nonsmall cell lung cancer programmed death-ligand 1 status from whole-slide hematoxylin and eosin images
Lingdao Sha, Boleslaw L Osinski, Irvin Y Ho, Timothy L Tan, Caleb Willis, Hannah Weiss, Nike Beaubier, Brett M Mahon, Tim J Taxter, Stephen S F Yip
J Pathol Inform
2019, 10:24 (23 July 2019)
DOI
:10.4103/jpi.jpi_24_19
PMID
:31523482
Background:
Tumor programmed death-ligand 1 (PD-L1) status is useful in determining which patients may benefit from programmed death-1 (PD-1)/PD-L1 inhibitors. However, little is known about the association between PD-L1 status and tumor histopathological patterns. Using deep learning, we predicted PD-L1 status from hematoxylin and eosin (H and E) whole-slide images (WSIs) of nonsmall cell lung cancer (NSCLC) tumor samples.
Materials and Methods:
One hundred and thirty NSCLC patients were randomly assigned to training (
n
= 48) or test (
n
= 82) cohorts. A pair of H and E and PD-L1-immunostained WSIs was obtained for each patient. A pathologist annotated PD-L1 positive and negative tumor regions on the training samples using immunostained WSIs for reference. From the H and E WSIs, over 145,000 training tiles were generated and used to train a multi-field-of-view deep learning model with a residual neural network backbone.
Results:
The trained model accurately predicted tumor PD-L1 status on the held-out test cohort of H and E WSIs, which was balanced for PD-L1 status (area under the receiver operating characteristic curve [AUC] =0.80,
P
<< 0.01). The model remained effective over a range of PD-L1 cutoff thresholds (AUC = 0.67–0.81,
P
≤ 0.01) and when different proportions of the labels were randomly shuffled to simulate interpathologist disagreement (AUC = 0.63–0.77,
P
≤ 0.03).
Conclusions:
A robust deep learning model was developed to predict tumor PD-L1 status from H and E WSIs in NSCLC. These results suggest that PD-L1 expression is correlated with the morphological features of the tumor microenvironment.
[ABSTRACT]
[HTML Full text]
[PDF]
[Mobile Full text]
[EPub]
[Citations (26) ]
[PubMed]
[Sword Plugin for Repository]
Beta
Research Article:
Annotations, ontologies, and whole slide images – Development of an annotated ontology-driven whole slide image library of normal and abnormal human tissue
Karin Lindman, Jerómino F Rose, Martin Lindvall, Claes Lundstrom, Darren Treanor
J Pathol Inform
2019, 10:22 (23 July 2019)
DOI
:10.4103/jpi.jpi_81_18
PMID
:31523480
Objective:
Digital pathology is today a widely used technology, and the digitalization of microscopic slides into whole slide images (WSIs) allows the use of machine learning algorithms as a tool in the diagnostic process. In recent years, “deep learning” algorithms for image analysis have been applied to digital pathology with great success. The training of these algorithms requires a large volume of high-quality images and image annotations. These large image collections are a potent source of information, and to use and share the information, standardization of the content through a consistent terminology is essential. The aim of this project was to develop a pilot dataset of exhaustive annotated WSI of normal and abnormal human tissue and link the annotations to appropriate ontological information.
Materials and Methods:
Several biomedical ontologies and controlled vocabularies were investigated with the aim of selecting the most suitable ontology for this project. The selection criteria required an ontology that covered anatomical locations, histological subcompartments, histopathologic diagnoses, histopathologic terms, and generic terms such as normal, abnormal, and artifact. WSIs of normal and abnormal tissue from 50 colon resections and 69 skin excisions, diagnosed 2015-2016 at the Department of Clinical Pathology in Linköping, were randomly collected. These images were manually and exhaustively annotated at the level of major subcompartments, including normal or abnormal findings and artifacts.
Results:
Systemized nomenclature of medicine clinical terms (SNOMED CT) was chosen, and the annotations were linked to its codes and terms. Two hundred WSI were collected and annotated, resulting in 17,497 annotations, covering a total area of 302.19 cm
2
, equivalent to 107,7 gigapixels. Ninety-five unique SNOMED CT codes were used. The time taken to annotate a WSI varied from 45 s to over 360 min, a total time of approximately 360 h.
Conclusion:
This work resulted in a dataset of 200 exhaustive annotated WSIs of normal and abnormal tissue from the colon and skin, and it has informed plans to build a comprehensive library of annotated WSIs. SNOMED CT was found to be the best ontology for annotation labeling. This project also demonstrates the need for future development of annotation tools in order to make the annotation process more efficient.
[ABSTRACT]
[HTML Full text]
[PDF]
[Mobile Full text]
[EPub]
[Citations (4) ]
[PubMed]
[Sword Plugin for Repository]
Beta
Sitemap
|
What's New
Feedback
|
Copyright and Disclaimer
|
Privacy Notice
© Journal of Pathology Informatics | Published by Wolters Kluwer -
Medknow
Online since 10
th
March, 2010