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Month wise articles
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2021
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
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1
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February
[
1
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2018
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
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1
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July
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1
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May
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1
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April
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2
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March
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1
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February
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2
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2017
December
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3
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March
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3
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1
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2014
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1
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Original Article:
Comparing deep learning and immunohistochemistry in determining the site of origin for well-differentiated neuroendocrine tumors
Jordan Redemann, Fred A Schultz, Cathy Martinez, Michael Harrell, Douglas P Clark, David R Martin, Joshua A Hanson
J Pathol Inform
2020, 11:32 (9 October 2020)
DOI
:10.4103/jpi.jpi_37_20
Background:
Determining the site of origin for metastatic well-differentiated neuroendocrine tumors (WDNETs) is challenging, and immunohistochemical (IHC) profiles do not always lead to a definitive diagnosis. We sought to determine if a deep-learning convolutional neural network (CNN) could improve upon established IHC profiles in predicting the site of origin in a cohort of WDNETs from the common primary sites.
Materials and Methods:
Hematoxylin and eosin (H&E)-stained tissue microarrays (TMAs) were created using 215 WDNETs arising from the known primary sites. A CNN trained and tested on 60% (
n
= 130) and 40% (
n
= 85) of these cases, respectively. One hundred and seventy-nine cases had TMA tissue remaining for the IHC analysis. These cases were stained with IHC markers pPAX8, CDX2, SATB2, and thyroid transcription factor-1 (markers of pancreas/duodenum, ileum/jejunum/duodenum, colorectum/appendix, and lung WDNET sites of origin, respectively). The CNN diagnosis was deemed correct if it designated a majority or plurality of the tumor area as the known site of origin. The IHC diagnosis was deemed correct if the most specific marker for a particular site of origin met an H-score threshold determined by two pathologists.
Results:
When all cases were considered, the CNN correctly identified the site of origin at a lower rate compared to IHC (72% vs. 82%, respectively). Of the 85 cases in the CNN test set, 66 had sufficient TMA material for IHC stains, thus 66 cases were available for a direct case-by-case comparison of IHC versus CNN. The CNN correctly identified 70% of these cases, while IHC correctly identified 76%, a finding that was not statistically significant (
P
= 0.56).
Conclusion:
A CNN can identify WDNET site of origin at an accuracy rate close to the current gold standard IHC methods.
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Original Article:
UniTwain: A cost-effective solution for lean gross imaging
Hansen Lam, Ricky Kwan, Mark Tuthill, Mehrvash Haghighi
J Pathol Inform
2020, 11:31 (5 October 2020)
DOI
:10.4103/jpi.jpi_42_20
Background:
Gross imaging of surgical specimens is paramount for the accurate gross examination and diagnosis of disease. Optimized imaging workflow can facilitate consistently high-quality gross photographs, especially in high-volume, metropolitan hospitals such as ours. Most commercial medical gross imaging technology provides ergonomically well-designed hardware, remotely operated cameras, intuitive software interfaces, and automation of workflow. However, these solutions are usually cost-prohibitive and require a large sum of capital budget.
Materials and Methods:
We applied lean techniques such as value stream mapping (VSM) to design a streamlined and error-free workflow for gross imaging process. We implemented a cost-effective technology, UniTwain, combined with high-resolution webcam to achieve the ideal results.
Results:
We reduced the mean process time from 600 min to 4.0 min (99.3% decrease in duration); the median process time was reduced from 580 min to 3.0 min. The process efficiency increased from 20% to 100%. The implemented solution has a comparable durability, scalability, and archiving feasibility to commercial medical imaging systems and costs four times less. The only limitations are manual operation of the webcam and lower resolution. The webcam sensors have 8.2 megapixel (MP) resolution, approximately 12 MP less than medical imaging devices. However, we believe that this difference is not visually significant and the effect on gross diagnosis with the naked eye is minimal.
Conclusions:
To our knowledge, this is the first study that utilized UniTwain as a viable, low-cost solution to streamline the gross imaging workflow. The UniTwain combined with high-resolution webcam could be a suitable alternative for our institution that does not plan to heavily invest in medical imaging.
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© Journal of Pathology Informatics | Published by Wolters Kluwer -
Medknow
Online since 10
th
March, 2010