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Month wise articles
Figures next to the month indicate the number of articles in that month
2021
January
[
3
]
2020
December
[
2
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November
[
5
]
October
[
3
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September
[
2
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August
[
8
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July
[
4
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June
[
2
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May
[
1
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April
[
3
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March
[
3
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February
[
6
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January
[
1
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2019
December
[
6
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November
[
4
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September
[
4
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August
[
3
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July
[
6
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June
[
1
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May
[
2
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April
[
6
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March
[
3
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February
[
4
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January
[
2
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2018
December
[
10
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November
[
4
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October
[
3
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September
[
4
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August
[
1
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July
[
3
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June
[
5
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May
[
4
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April
[
10
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March
[
2
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February
[
4
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2017
December
[
5
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November
[
4
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October
[
3
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September
[
9
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July
[
5
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June
[
2
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May
[
4
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April
[
6
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March
[
6
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February
[
7
]
2016
December
[
7
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November
[
5
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October
[
3
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September
[
7
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August
[
1
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July
[
7
]
May
[
8
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April
[
7
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March
[
4
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February
[
2
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January
[
5
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2015
November
[
4
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October
[
5
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September
[
5
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August
[
4
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July
[
3
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June
[
19
]
May
[
5
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April
[
1
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March
[
5
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February
[
9
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January
[
3
]
2014
November
[
2
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October
[
5
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September
[
4
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August
[
6
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July
[
8
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June
[
1
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May
[
3
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March
[
8
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February
[
3
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January
[
4
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2013
December
[
5
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November
[
2
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October
[
4
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September
[
4
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August
[
3
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July
[
3
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June
[
5
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May
[
7
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March
[
18
]
February
[
1
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January
[
1
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2012
December
[
6
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November
[
1
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October
[
4
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September
[
4
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August
[
7
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July
[
2
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June
[
1
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May
[
2
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April
[
7
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March
[
6
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February
[
7
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January
[
13
]
2011
December
[
3
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November
[
1
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October
[
7
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August
[
9
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July
[
3
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June
[
7
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May
[
3
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March
[
6
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February
[
8
]
January
[
6
]
2010
December
[
4
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November
[
1
]
October
[
6
]
September
[
1
]
August
[
6
]
July
[
6
]
May
[
5
]
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Original Article:
The California Telepathology Service: UCLA's experience in deploying a regional digital pathology subspecialty consultation network
Thomas Chong, M Fernando Palma-Diaz, Craig Fisher, Dorina Gui, Nora L Ostrzega, Geoffrey Sempa, Anthony E Sisk, Mark Valasek, Beverly Y Wang, Jonathan Zuckerman, Chris Khacherian, Scott Binder, W Dean Wallace
J Pathol Inform
2019, 10:31 (27 September 2019)
DOI
:10.4103/jpi.jpi_22_19
PMID
:31620310
Background:
The need for extending pathology diagnostic expertise to more areas is now being met by the maturation of technology that can effectively deliver this level of care. The experience and lessons learned from our successfully deployed International Telepathology Service (ITS) to a hospital system in China guided us in starting a domestic telepathology network, the California Telepathology Service (CTS). Many of the lessons learned from the ITS project informed our decision-making for the CTS. New challenges were recognized and overcome, such as addressing the complexity and cost–benefit tradeoffs involved in setting up a digital consultation system that competes with an established conventional glass slide delivery system.
Methods:
The CTS is based on a hub-and-spoke telepathology network using Leica Biosystems whole-slide image scanners and the eSlide Manager (eSM Version 12.3.3.7055, Leica Biosystems) digital image management software solution. The service currently comprises six spoke sites (UC San Diego [UCSD], UC Irvine [UCI], UC Davis, Northridge Hospital Medical Center [NHMC], Olive View Medical Center [OVMC], and Children's Hospital Los Angeles) and one central hub site (UCLA Medical Center). So far, five sites have been validated for telepathology case consultations following established practice guidelines, and four sites (UCI, UCSD, NHMC, and OVMC) have activated the service.
Results:
For the active spoke sites, we reviewed the volume, turnaround time (TAT), and case types and evaluated for utility and value. From May 2017 to July 2018, a total of 165 cases were submitted. Of note, digital consultations were particularly advantageous for preliminary kidney biopsy diagnoses (avg TAT 0.7 day).
Conclusion:
For spoke sites, telepathology provided shortened TAT and significant financial savings over hiring faculty with expertise to support a potentially low-volume service. For the hub site, the value includes exposure to educationally valuable cases, additional caseload volume to support specialized services, and improved communication with referring facilities over traditional carrier mail. The creation of a hub-and-spoke telepathology network is an expensive undertaking, and careful consideration needs to be given to support the needs of the clinical services, acquisition and effective deployment of the appropriate equipment, network requirements, and laboratory workflows to ensure a successful and cost-effective system.
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Research Article:
Statistical analysis of survival models using feature quantification on prostate cancer histopathological images
Jian Ren, Eric A Singer, Evita Sadimin, David J Foran, Xin Qi
J Pathol Inform
2019, 10:30 (27 September 2019)
DOI
:10.4103/jpi.jpi_85_18
PMID
:31620309
Background:
Grading of prostatic adenocarcinoma is based on the Gleason scoring system and the more recently established prognostic grade groups. Typically, prostate cancer grading is performed by pathologists based on the morphology of the tumor on hematoxylin and eosin (H and E) slides. In this study, we investigated the histopathological image features with various survival models and attempted to study their correlations.
Methods:
Three texture methods (speeded-up robust features, histogram of oriented gradient, and local binary pattern) and two convolutional neural network (CNN)-based methods were applied to quantify histopathological image features. Five survival models were assessed on those image features in the context with other prostate clinical prognostic factors, including primary and secondary Gleason patterns, prostate-specific antigen levels, age, and clinical tumor stages.
Results:
Based on statistical comparisons among different image features with survival models, image features from CNN-based method with a recurrent neural network called CNN-long-short-term memory provided the highest hazard ratio of prostate cancer recurrence under Cox regression with an elastic net penalty.
Conclusions:
This approach outperformed the other image quantification methods listed above. Using this approach, patient outcomes were highly correlated with the histopathological image features of the tissue samples. In future studies, we plan to investigate the potential use of this approach for predicting recurrence in a wider range of cancer types.
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Original Article:
Differentiating noninvasive follicular thyroid neoplasm with papillary-like nuclear features from classic papillary thyroid carcinoma: Analysis of cytomorphologic descriptions using a novel machine-learning approach
Sara Maleki, Amin Zandvakili, Shweta Gera, Seema D Khutti, Adam Gersten, Samer N Khader
J Pathol Inform
2019, 10:29 (18 September 2019)
DOI
:10.4103/jpi.jpi_25_19
PMID
:31579155
Background:
Recent studies show various cytomorphologic features that can assist in the differentiation of classic papillary thyroid carcinoma (cPTC) from noninvasive follicular thyroid neoplasm with papillary-like nuclear features (NIFTP). Differentiating these two entities changes the clinical management significantly. We evaluated the performance of support vector machine (SVM), a machine learning algorithm, in differentiating cases of NIFTP and encapsulated follicular variant of papillary thyroid carcinoma with no capsular or lymphovascular invasion (EFVPTC) from cases of cPTC with the use of microscopic descriptions. SVM is a supervised learning algorithm used in classification problems. It assigns the input data to one of two categories by building a model based on a set of training examples (learning) and then using that learned model to classify new examples.
Methods:
Surgical pathology cases with the diagnosis of cPTC, NIFTP, and EFVPTC, were obtained from the laboratory information system. Only cases with existing fine-needle aspiration matching the tumor and available microscopic description were included. NIFTP cases with ipsilateral micro-PTC were excluded. The final cohort consisted of 59 cases (29 cPTCs and 30 NIFTP/EFVPTCs).
Results:
SVM successfully differentiated cPTC from NIFTP/EFVPTC 76.05 ± 0.96% of times (above chance,
P
< 0.05) with the sensitivity of 72.6% and specificity of 81.6% in detecting cPTC.
Conclusions:
This machine learning algorithm was successful in distinguishing NIFTP/EFVPTC from cPTC. Our results are compatible with the prior studies, which show cytologic features are helpful in differentiating these two entities. Furthermore, this study shows the power and potential of this approach for clinical use and in developing data-driven scoring systems, which can guide cytopathology and surgical pathology diagnosis.
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Abstracts:
Abstracts
J Pathol Inform
2019, 10:28 (16 September 2019)
DOI
:10.4103/2153-3539.266902
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© Journal of Pathology Informatics | Published by Wolters Kluwer -
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Online since 10
th
March, 2010