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Month wise articles
Figures next to the month indicate the number of articles in that month
2022
March
[
1
]
January
[
10
]
2021
December
[
7
]
November
[
9
]
September
[
8
]
August
[
2
]
July
[
1
]
June
[
4
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May
[
3
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April
[
4
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March
[
7
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February
[
3
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January
[
6
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2020
December
[
2
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November
[
5
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October
[
3
]
September
[
2
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August
[
8
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July
[
4
]
June
[
2
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May
[
1
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April
[
3
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March
[
3
]
February
[
6
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January
[
1
]
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
]
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
]
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
]
October
[
3
]
September
[
7
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August
[
1
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July
[
7
]
May
[
8
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April
[
7
]
March
[
4
]
February
[
2
]
January
[
5
]
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
]
June
[
19
]
May
[
5
]
April
[
1
]
March
[
5
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February
[
9
]
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
]
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
]
2012
December
[
6
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November
[
1
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October
[
4
]
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
]
March
[
6
]
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
]
July
[
3
]
June
[
7
]
May
[
3
]
March
[
6
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February
[
8
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January
[
6
]
2010
December
[
4
]
November
[
1
]
October
[
6
]
September
[
1
]
August
[
6
]
July
[
6
]
May
[
5
]
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Research Article:
Analysis on the characterization of multiphoton microscopy images for malignant neoplastic colon lesion detection under deep learning methods
Elena Terradillos, Cristina L Saratxaga, Sara Mattana, Riccardo Cicchi, Francesco S Pavone, Nagore Andraka, Benjamin J Glover, Nagore Arbide, Jacques Velasco, Mª Carmen Etxezarraga, Artzai Picon
J Pathol Inform
2021, 12:27 (30 June 2021)
DOI
:10.4103/jpi.jpi_113_20
Background:
Colorectal cancer has a high incidence rate worldwide, with over 1.8 million new cases and 880,792 deaths in 2018. Fortunately, its early detection significantly increases the survival rate, reaching a cure rate of 90% when diagnosed at a localized stage. Colonoscopy is the gold standard technique for detection and removal of colorectal lesions with potential to evolve into cancer. When polyps are found in a patient, the current procedure is their complete removal. However, in this process, gastroenterologists cannot assure complete resection and clean margins which are given by the histopathology analysis of the removed tissue, which is performed at laboratory.
Aims:
In this paper, we demonstrate the capabilities of multiphoton microscopy (MPM) technology to provide imaging biomarkers that can be extracted by deep learning techniques to identify malignant neoplastic colon lesions and distinguish them from healthy, hyperplastic, or benign neoplastic tissue, without the need for histopathological staining.
Materials and Methods:
To this end, we present a novel MPM public dataset containing 14,712 images obtained from 42 patients and grouped into 2 classes. A convolutional neural network is trained on this dataset and a spatially coherent predictions scheme is applied for performance improvement.
Results:
We obtained a sensitivity of 0.8228 ± 0.1575 and a specificity of 0.9114 ± 0.0814 on detecting malignant neoplastic lesions. We also validated this approach to estimate the self-confidence of the network on its own predictions, obtaining a mean sensitivity of 0.8697 and a mean specificity of 0.9524 with the 18.67% of the images classified as uncertain.
Conclusions:
This work lays the foundations for performing
in vivo
optical colon biopsies by combining this novel imaging technology together with deep learning algorithms, hence avoiding unnecessary polyp resection and allowing
in situ
diagnosis assessment.
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Original Article:
Automated cervical digitized histology whole-slide image analysis toolbox
Sudhir Sornapudi, Ravitej Addanki, R Joe Stanley, William V Stoecker, Rodney Long, Rosemary Zuna, Shellaine R Frazier, Sameer Antani
J Pathol Inform
2021, 12:26 (9 June 2021)
DOI
:10.4103/jpi.jpi_52_20
Background:
Cervical intraepithelial neoplasia (CIN) is regarded as a potential precancerous state of the uterine cervix. Timely and appropriate early treatment of CIN can help reduce cervical cancer mortality. Accurate estimation of CIN grade correlated with human papillomavirus type, which is the primary cause of the disease, helps determine the patient's risk for developing the disease. Colposcopy is used to select women for biopsy. Expert pathologists examine the biopsied cervical epithelial tissue under a microscope. The examination can take a long time and is prone to error and often results in high inter-and intra-observer variability in outcomes.
Methodology:
We propose a novel image analysis toolbox that can automate CIN diagnosis using whole slide image (digitized biopsies) of cervical tissue samples. The toolbox is built as a four-step deep learning model that detects the epithelium regions, segments the detected epithelial portions, analyzes local vertical segment regions, and finally classifies each epithelium block with localized attention. We propose an epithelium detection network in this study and make use of our earlier research on epithelium segmentation and CIN classification to complete the design of the end-to-end CIN diagnosis toolbox.
Results:
The results show that automated epithelium detection and segmentation for CIN classification yields comparable results to manually segmented epithelium CIN classification.
Conclusion:
This highlights the potential as a tool for automated digitized histology slide image analysis to assist expert pathologists.
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Original Article:
Comparative assessment of digital pathology systems for primary diagnosis
Sathyanarayanan Rajaganesan, Rajiv Kumar, Vidya Rao, Trupti Pai, Neha Mittal, Ayushi Sahay, Santosh Menon, Sangeeta Desai
J Pathol Inform
2021, 12:25 (9 June 2021)
DOI
:10.4103/jpi.jpi_94_20
Background:
Despite increasing interest in whole-slide imaging (WSI) over optical microscopy (OM), limited information on comparative assessment of various digital pathology systems (DPSs) is available.
Materials and Methods:
A comprehensive evaluation was undertaken to investigate the technical performance–assessment and diagnostic accuracy of four DPSs with an objective to establish the noninferiority of WSI over OM and find out the best possible DPS for clinical workflow.
Results:
A total of 2376 digital images, 15,775 image reads (OM - 3171 + WSI - 12,404), and 6100 diagnostic reads (OM - 1245, WSI - 4855) were generated across four DPSs (coded as DPS: 1, 2, 3, and 4) using a total 240 cases (604 slides). Onsite technical evaluation revealed successful scan rate: DPS3 < DPS2 < DPS4 < DPS1; mean scanning time: DPS4 < DPS1 < DPS2 < DPS3; and average storage space: DPS3 < DPS2 < DPS1 < DPS4. Overall diagnostic accuracy, when compared with the reference standard for OM and WSI, was 95.44% (including 2.48% minor and 2.08% major discordances) and 93.32% (including 4.28% minor and 2.4% major discordances), respectively. The difference between the clinically significant discordances by WSI versus OM was 0.32%. Major discordances were observed mostly using DPS4 and least in DPS1; however, the difference was statistically insignificant. Almost perfect (κ ≥ 0.8)/substantial (κ = 0.6–0.8) inter/intra-observer agreement between WSI and OM was observed for all specimen types, except cytology. Overall image quality was best for DPS1 followed by DPS4. Mean digital artifact rate was 6.8% (163/2376 digital images) and maximum artifacts were noted in DPS2 (
n
= 77) followed by DPS3 (
n
= 36). Most pathologists preferred viewing software of DPS1 and DPS2.
Conclusion:
WSI was noninferior to OM for all specimen types, except for cytology. Each DPS has its own pros and cons; however, DPS1 closely emulated the real-world clinical environment. This evaluation is intended to provide a roadmap to pathologists for the selection of the appropriate DPSs while adopting WSI.
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Research Article:
Digital pathology-based study of cell- and tissue-level morphologic features in serous borderline ovarian tumor and high-grade serous ovarian cancer
Jun Jiang, Burak Tekin, Ruifeng Guo, Hongfang Liu, Yajue Huang, Chen Wang
J Pathol Inform
2021, 12:24 (5 June 2021)
DOI
:10.4103/jpi.jpi_76_20
Background:
Serous borderline ovarian tumor (SBOT) and high-grade serous ovarian cancer (HGSOC) are two distinct subtypes of epithelial ovarian tumors, with markedly different biologic background, behavior, prognosis, and treatment. However, the histologic diagnosis of serous ovarian tumors can be subjectively variable and labor-intensive as multiple tumor slides/blocks need to be thoroughly examined to search for these features.
Materials and Methods:
We developed a novel informatics system to facilitate objective and scalable diagnosis screening for SBOT and HGSOC. The system was built upon Groovy scripts and QuPath to enable interactive annotation and data exchange.
Results:
The system was used to successfully detect cellular boundaries and extract an expanded set of cellular features representing cell- and tissue-level characteristics. The performance of cell-level classification for both tumor and stroma cells achieved >90% accuracy. The performance of differentiating HGSOC versus SBOT achieved 91%–95% accuracy for 6485 imaging patches which have sufficient tumor and stroma cells (minimum of ten each) and 97% accuracy for classifying patients when aggregating the results to whole-slide image based on consensus.
Conclusions:
Cellular features digitally extracted from pathological images can be used for cell classification and SBOT v. HGSOC differentiation. Introducing digital pathology into ovarian cancer research could be beneficial to discover potential clinical implications. A larger cohort is required to further evaluate the system.
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