Nuclei instance segmentation from histopathology images using Bayesian dropout based deep learning

Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence i...

Full description

Saved in:
Bibliographic Details
Published in:BMC medical imaging Vol. 23; no. 1; pp. 1 - 9
Main Authors: Gudhe, Naga Raju, Kosma, Veli-Matti, Behravan, Hamid, Mannermaa, Arto
Format: Journal Article
Language:English
Published: London BioMed Central 19.10.2023
BioMed Central Ltd
Springer Nature B.V
BMC
Subjects:
ISSN:1471-2342, 1471-2342
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Abstract Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions. Methods We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model’s prediction uncertainty. Results We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032. Conclusions The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
AbstractList BackgroundThe deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions.MethodsWe propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model’s prediction uncertainty.ResultsWe evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032.ConclusionsThe proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions. Methods We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model's prediction uncertainty. Results We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 [+ or -] 0.008 and an IoU value of 0.868 [+ or -] 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 [+ or -] 0.010 and an IoU value of 0.840 [+ or -] 0.032. Conclusions The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems. Keywords: Semantic segmentation, Bayesian deep learning, Uncertainty estimation, Nuclei segmentation, Digital pathology, Medical image analysis
The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions. We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model's prediction uncertainty. We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 [+ or -] 0.008 and an IoU value of 0.868 [+ or -] 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 [+ or -] 0.010 and an IoU value of 0.840 [+ or -] 0.032. The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions.BACKGROUNDThe deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions.We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model's prediction uncertainty.METHODSWe propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model's prediction uncertainty.We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032.RESULTSWe evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032.The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.CONCLUSIONSThe proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions. Methods We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model’s prediction uncertainty. Results We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032. Conclusions The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
Abstract Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from histopathology images. The deterministic models focus on improving the model prediction accuracy without assessing the confidence in the predictions. Methods We propose a semantic segmentation model using Bayesian representation to segment nuclei from the histopathology images and to further quantify the epistemic uncertainty. We employ Bayesian approximation with Monte-Carlo (MC) dropout during the inference time to estimate the model’s prediction uncertainty. Results We evaluate the performance of the proposed approach on the PanNuke dataset, which consists of 312 visual fields from 19 organ types. We compare the nuclei segmentation accuracy of our approach with that of a fully convolutional neural network, U-Net, SegNet, and the state-of-the-art Hover-net. We use F1-score and intersection over union (IoU) as the evaluation metrics. The proposed approach achieves a mean F1-score of 0.893 ± 0.008 and an IoU value of 0.868 ± 0.003 on the test set of the PanNuke dataset. These results outperform the Hover-net, which has a mean F1-score of 0.871 ± 0.010 and an IoU value of 0.840 ± 0.032. Conclusions The proposed approach, which incorporates Bayesian representation and Monte-Carlo dropout, demonstrates superior performance in segmenting nuclei from histopathology images compared to existing models such as U-Net, SegNet, and Hover-net. By considering the epistemic uncertainty, our model provides a more reliable estimation of the prediction confidence. These findings highlight the potential of Bayesian deep learning for improving medical image analysis tasks and can contribute to the development of more accurate and reliable computer-aided diagnostic systems.
ArticleNumber 162
Audience Academic
Author Gudhe, Naga Raju
Kosma, Veli-Matti
Mannermaa, Arto
Behravan, Hamid
Author_xml – sequence: 1
  givenname: Naga Raju
  surname: Gudhe
  fullname: Gudhe, Naga Raju
  email: raju.gudhe@uef.fi
  organization: Institute of Clinical Medicine, Pathology and Forensic Medicine, Multidisciplinary Cancer research community RC Cancer, University of Eastern Finland
– sequence: 2
  givenname: Veli-Matti
  surname: Kosma
  fullname: Kosma, Veli-Matti
  organization: Institute of Clinical Medicine, Pathology and Forensic Medicine, Multidisciplinary Cancer research community RC Cancer, University of Eastern Finland, Biobank of Eastern Finland, Kuopio University Hospital
– sequence: 3
  givenname: Hamid
  surname: Behravan
  fullname: Behravan, Hamid
  organization: Institute of Clinical Medicine, Pathology and Forensic Medicine, Multidisciplinary Cancer research community RC Cancer, University of Eastern Finland
– sequence: 4
  givenname: Arto
  surname: Mannermaa
  fullname: Mannermaa, Arto
  organization: Institute of Clinical Medicine, Pathology and Forensic Medicine, Multidisciplinary Cancer research community RC Cancer, University of Eastern Finland, Biobank of Eastern Finland, Kuopio University Hospital
BookMark eNp9kk9v1DAQxSNUJNrCF-AUiQuXtB7b-eMTKhXQShVc4Gw59jjrVWIvdoK0377epqhshaocHNm_9zwzfmfFiQ8ei-I9kAuArrlMQLuOVISyigBQqNir4hR4CxVlnJ788_-mOEtpSwi0HeOnRf990SO60vk0K6-xTDhM6Gc1u-BLG8NUblyaw07NmzCGYV-6SQ2YyiU5P5Sf1R6TU740MezCMpe9SmhKg7grR1TRZ-ht8dqqMeG7x_W8-PX1y8_rm-rux7fb66u7StddPVcKmxa4MMQIFE1bQ09qkotETpXpaasbgZBJZnhPO6Oh49wSLsCA4m3ds_PidvU1QW3lLuZC414G5eTDRoiDVHF2uV3JmG01CKvqXnGhlDC2o7pva8uAEXvw-rR67ZZ-QqPzRKIaj0yPT7zbyCH8kUByiQJ4dvj46BDD7wXTLCeXNI6j8hiWJA_vRUTDapLRD8_QbViiz7PKlCCkIYyyJ2pQuQPnbcgX64OpvGob0QBpKWTq4j9U_gxOTufQWJf3jwTdKtAxpBTRSu3W189CN-aG5CFhck2YzAmTDwmTh4roM-nf-bwoYqsoZdgPGJ-afUF1D3vk5S0
CitedBy_id crossref_primary_10_3390_info15070417
crossref_primary_10_3390_app142110020
crossref_primary_10_1016_j_compbiomed_2024_108586
crossref_primary_10_1016_j_compbiomed_2025_110293
crossref_primary_10_1186_s12880_025_01550_2
crossref_primary_10_1109_ACCESS_2025_3589477
crossref_primary_10_3390_app15147802
crossref_primary_10_3390_computers13010030
Cites_doi 10.1146/annurev-bioeng-071516-044442
10.1109/CVPR.2019.00075
10.3390/info11020125
10.1016/j.jcp.2018.04.018
10.1038/s41374-018-0095-7
10.1038/s41598-016-0028-x
10.1109/ICPR.2008.4761112
10.1016/j.jbiomech.2016.01.002
10.1007/978-3-319-24574-4_28
10.1016/j.media.2020.101696
10.1016/j.imavis.2005.03.001
10.1016/j.neunet.2019.08.025
10.1001/jama.2015.1405
10.1016/j.csda.2019.106816
10.1145/3292500.3330701
10.1109/TMI.2016.2529665
10.1016/j.cell.2018.02.052
10.1016/j.media.2019.101563
10.1111/coin.12411
10.1117/1.JMI.4.2.027502
10.1016/j.compbiomed.2021.104418
10.1109/TMI.2019.2959609
10.1109/CVPR.2019.00904
10.1038/s41598-021-84854-x
10.1117/1.JMI.6.1.014006
10.1109/CVPR.2015.7298965
10.1007/978-3-030-23937-4_2
10.1016/j.euf.2016.05.009
10.1038/s41598-021-93169-w
ContentType Journal Article
Copyright The Author(s) 2023
COPYRIGHT 2023 BioMed Central Ltd.
2023. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.
2023. BioMed Central Ltd., part of Springer Nature.
BioMed Central Ltd., part of Springer Nature 2023
Copyright_xml – notice: The Author(s) 2023
– notice: COPYRIGHT 2023 BioMed Central Ltd.
– notice: 2023. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.
– notice: 2023. BioMed Central Ltd., part of Springer Nature.
– notice: BioMed Central Ltd., part of Springer Nature 2023
DBID C6C
AAYXX
CITATION
3V.
7QO
7RV
7X7
7XB
88E
8FD
8FE
8FG
8FH
8FI
8FJ
8FK
ABUWG
AFKRA
ARAPS
AZQEC
BBNVY
BENPR
BGLVJ
BHPHI
CCPQU
DWQXO
FR3
FYUFA
GHDGH
GNUQQ
HCIFZ
K9.
KB0
LK8
M0S
M1P
M7P
NAPCQ
P5Z
P62
P64
PHGZM
PHGZT
PIMPY
PJZUB
PKEHL
PPXIY
PQEST
PQGLB
PQQKQ
PQUKI
PRINS
7X8
5PM
DOA
DOI 10.1186/s12880-023-01121-3
DatabaseName Springer Nature OA Free Journals
CrossRef
ProQuest Central (Corporate)
Biotechnology Research Abstracts
Nursing & Allied Health Database
Health & Medical Collection
ProQuest Central (purchase pre-March 2016)
Medical Database (Alumni Edition)
Technology Research Database
ProQuest SciTech Collection
ProQuest Technology Collection
ProQuest Natural Science Collection
ProQuest Hospital Collection
Hospital Premium Collection (Alumni Edition)
ProQuest Central (Alumni) (purchase pre-March 2016)
ProQuest Central (Alumni)
ProQuest Central UK/Ireland
Advanced Technologies & Computer Science Collection
ProQuest Central Essentials
Biological Science Collection
ProQuest Central
ProQuest Technology Collection
Natural Science Collection
ProQuest One
ProQuest Central Korea
Engineering Research Database
ProQuest Health & Medical Collection
Health Research Premium Collection (Alumni)
ProQuest Central Student
SciTech Premium Collection (via ProQuest)
ProQuest Health & Medical Complete (Alumni)
Nursing & Allied Health Database (Alumni Edition)
ProQuest Biological Science Collection
ProQuest Health & Medical Collection
Medical Database
Biological Science Database
Nursing & Allied Health Premium
Advanced Technologies & Aerospace Database
ProQuest Advanced Technologies & Aerospace Collection
Biotechnology and BioEngineering Abstracts
ProQuest Central Premium
ProQuest One Academic (New)
Publicly Available Content Database
ProQuest Health & Medical Research Collection
ProQuest One Academic Middle East (New)
One Health & Nursing
ProQuest One Academic Eastern Edition (DO NOT USE)
One Applied & Life Sciences
ProQuest One Academic (retired)
ProQuest One Academic UKI Edition
ProQuest Central China
MEDLINE - Academic
PubMed Central (Full Participant titles)
DOAJ Directory of Open Access Journals
DatabaseTitle CrossRef
Publicly Available Content Database
ProQuest Central Student
Technology Collection
Technology Research Database
ProQuest One Academic Middle East (New)
ProQuest Advanced Technologies & Aerospace Collection
ProQuest Central Essentials
ProQuest Health & Medical Complete (Alumni)
ProQuest Central (Alumni Edition)
SciTech Premium Collection
ProQuest One Community College
ProQuest One Health & Nursing
ProQuest Natural Science Collection
ProQuest Central China
ProQuest Central
ProQuest One Applied & Life Sciences
ProQuest Health & Medical Research Collection
Health Research Premium Collection
Biotechnology Research Abstracts
Health and Medicine Complete (Alumni Edition)
Natural Science Collection
ProQuest Central Korea
Health & Medical Research Collection
Biological Science Collection
ProQuest Central (New)
ProQuest Medical Library (Alumni)
Advanced Technologies & Aerospace Collection
ProQuest Biological Science Collection
ProQuest One Academic Eastern Edition
ProQuest Nursing & Allied Health Source
ProQuest Hospital Collection
ProQuest Technology Collection
Health Research Premium Collection (Alumni)
Biological Science Database
ProQuest SciTech Collection
ProQuest Hospital Collection (Alumni)
Biotechnology and BioEngineering Abstracts
Advanced Technologies & Aerospace Database
Nursing & Allied Health Premium
ProQuest Health & Medical Complete
ProQuest Medical Library
ProQuest One Academic UKI Edition
ProQuest Nursing & Allied Health Source (Alumni)
Engineering Research Database
ProQuest One Academic
ProQuest One Academic (New)
ProQuest Central (Alumni)
MEDLINE - Academic
DatabaseTitleList Publicly Available Content Database


MEDLINE - Academic


Database_xml – sequence: 1
  dbid: DOA
  name: DOAJ Directory of Open Access Journals
  url: https://www.doaj.org/
  sourceTypes: Open Website
– sequence: 2
  dbid: PIMPY
  name: ProQuest Publicly Available Content Database
  url: http://search.proquest.com/publiccontent
  sourceTypes: Aggregation Database
DeliveryMethod fulltext_linktorsrc
Discipline Medicine
EISSN 1471-2342
EndPage 9
ExternalDocumentID oai_doaj_org_article_33f7c19fa5ba49aa9df82cb75f3130fb
PMC10585914
A769610721
10_1186_s12880_023_01121_3
GrantInformation_xml – fundername: University of Eastern Finland doctoral program of of clinical research
– fundername: Cancer Society of Finland
– fundername: Cancer Society of North Savo
– fundername: ;
GroupedDBID ---
0R~
23N
2WC
53G
5VS
6J9
7RV
7X7
88E
8FE
8FG
8FH
8FI
8FJ
AAFWJ
AAJSJ
AASML
ABUWG
ACGFO
ACGFS
ACIHN
ACIWK
ACPRK
ADBBV
ADRAZ
ADUKV
AEAQA
AENEX
AFKRA
AFPKN
AFRAH
AHBYD
AHMBA
AHYZX
ALMA_UNASSIGNED_HOLDINGS
AMKLP
AMTXH
AOIJS
ARAPS
BAPOH
BAWUL
BBNVY
BCNDV
BENPR
BFQNJ
BGLVJ
BHPHI
BMC
BPHCQ
BVXVI
C6C
CCPQU
CS3
DIK
DU5
E3Z
EBD
EBLON
EBS
EMB
EMOBN
F5P
FYUFA
GROUPED_DOAJ
GX1
HCIFZ
HMCUK
HYE
IAO
IHR
INH
INR
ITC
KQ8
LK8
M1P
M48
M7P
M~E
NAPCQ
O5R
O5S
OK1
OVT
P2P
P62
PGMZT
PHGZM
PHGZT
PIMPY
PJZUB
PPXIY
PQGLB
PQQKQ
PROAC
PSQYO
PUEGO
RBZ
RNS
ROL
RPM
RSV
SMD
SOJ
SV3
TR2
UKHRP
W2D
WOQ
WOW
XSB
AAYXX
AFFHD
CITATION
3V.
7QO
7XB
8FD
8FK
AZQEC
DWQXO
FR3
GNUQQ
K9.
P64
PKEHL
PQEST
PQUKI
PRINS
7X8
5PM
ID FETCH-LOGICAL-c585t-ae67149d0d9e96751b050783e42adb27c69e15853d4b28dc1844f0491d1a475b3
IEDL.DBID M7P
ISICitedReferencesCount 8
ISICitedReferencesURI http://www.webofscience.com/api/gateway?GWVersion=2&SrcApp=Summon&SrcAuth=ProQuest&DestLinkType=CitingArticles&DestApp=WOS_CPL&KeyUT=001085958900003&url=https%3A%2F%2Fcvtisr.summon.serialssolutions.com%2F%23%21%2Fsearch%3Fho%3Df%26include.ft.matches%3Dt%26l%3Dnull%26q%3D
ISSN 1471-2342
IngestDate Fri Oct 03 12:50:33 EDT 2025
Tue Nov 04 02:06:28 EST 2025
Fri Sep 05 07:52:16 EDT 2025
Tue Oct 07 05:25:27 EDT 2025
Tue Nov 11 11:13:15 EST 2025
Tue Nov 04 18:45:02 EST 2025
Sat Nov 29 06:11:08 EST 2025
Tue Nov 18 21:53:03 EST 2025
Sat Sep 06 07:26:53 EDT 2025
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed true
IsScholarly true
Issue 1
Keywords Digital pathology
Bayesian deep learning
Uncertainty estimation
Nuclei segmentation
Semantic segmentation
Medical image analysis
Language English
License Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-c585t-ae67149d0d9e96751b050783e42adb27c69e15853d4b28dc1844f0491d1a475b3
Notes ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
content type line 23
OpenAccessLink https://www.proquest.com/docview/2890060323?pq-origsite=%requestingapplication%
PQID 2890060323
PQPubID 44833
PageCount 9
ParticipantIDs doaj_primary_oai_doaj_org_article_33f7c19fa5ba49aa9df82cb75f3130fb
pubmedcentral_primary_oai_pubmedcentral_nih_gov_10585914
proquest_miscellaneous_2880096350
proquest_journals_2890060323
gale_infotracmisc_A769610721
gale_infotracacademiconefile_A769610721
crossref_citationtrail_10_1186_s12880_023_01121_3
crossref_primary_10_1186_s12880_023_01121_3
springer_journals_10_1186_s12880_023_01121_3
PublicationCentury 2000
PublicationDate 2023-10-19
PublicationDateYYYYMMDD 2023-10-19
PublicationDate_xml – month: 10
  year: 2023
  text: 2023-10-19
  day: 19
PublicationDecade 2020
PublicationPlace London
PublicationPlace_xml – name: London
PublicationTitle BMC medical imaging
PublicationTitleAbbrev BMC Med Imaging
PublicationYear 2023
Publisher BioMed Central
BioMed Central Ltd
Springer Nature B.V
BMC
Publisher_xml – name: BioMed Central
– name: BioMed Central Ltd
– name: Springer Nature B.V
– name: BMC
References S Sankaran (1121_CR22) 2016; 49
S Santurkar (1121_CR30) 2018; 31
G Lee (1121_CR5) 2017; 3
S Graham (1121_CR2) 2019; 58
JG Elmore (1121_CR1) 2015; 313
1121_CR32
1121_CR11
S Javed (1121_CR3) 2020; 63
1121_CR31
1121_CR37
1121_CR12
1121_CR35
NR Gudhe (1121_CR16) 2021; 11
1121_CR19
Y Zhu (1121_CR23) 2018; 366
1121_CR38
1121_CR39
F Yi (1121_CR8) 2017; 4
J Ker (1121_CR10) 2017; 6
1121_CR4
X Wang (1121_CR6) 2017; 7
M Abdar (1121_CR21) 2021; 135
S Raschka (1121_CR36) 2022
CR Jung (1121_CR13) 2005; 23
J Liu (1121_CR33) 2018; 173
1121_CR41
MZ Alom (1121_CR15) 2019; 6
1121_CR25
Z Zhou (1121_CR14) 2019; 39
1121_CR26
C Lu (1121_CR7) 2018; 98
N Ibtehaz (1121_CR17) 2020; 121
1121_CR24
1121_CR29
Y Kwon (1121_CR20) 2020; 142
1121_CR27
A Vahadane (1121_CR34) 2016; 35
1121_CR28
D Shen (1121_CR9) 2017; 19
B Ghoshal (1121_CR18) 2021; 37
A Mobiny (1121_CR40) 2021; 11
References_xml – volume: 19
  start-page: 221
  year: 2017
  ident: 1121_CR9
  publication-title: Ann Rev Biomed Eng.
  doi: 10.1146/annurev-bioeng-071516-044442
– ident: 1121_CR39
  doi: 10.1109/CVPR.2019.00075
– ident: 1121_CR37
  doi: 10.3390/info11020125
– ident: 1121_CR41
– volume: 366
  start-page: 415
  year: 2018
  ident: 1121_CR23
  publication-title: J Comput Phys.
  doi: 10.1016/j.jcp.2018.04.018
– ident: 1121_CR31
– volume: 98
  start-page: 1438
  issue: 11
  year: 2018
  ident: 1121_CR7
  publication-title: Lab Investig.
  doi: 10.1038/s41374-018-0095-7
– volume-title: Machine Learning with PyTorch and Scikit-Learn
  year: 2022
  ident: 1121_CR36
– ident: 1121_CR24
– volume: 7
  start-page: 1
  issue: 1
  year: 2017
  ident: 1121_CR6
  publication-title: Sci Rep.
  doi: 10.1038/s41598-016-0028-x
– ident: 1121_CR4
  doi: 10.1109/ICPR.2008.4761112
– volume: 49
  start-page: 2540
  issue: 12
  year: 2016
  ident: 1121_CR22
  publication-title: J Biomech.
  doi: 10.1016/j.jbiomech.2016.01.002
– ident: 1121_CR19
– ident: 1121_CR28
– volume: 31
  start-page: 2488
  year: 2018
  ident: 1121_CR30
  publication-title: Advances in neural information processing systems.
– ident: 1121_CR26
– ident: 1121_CR12
  doi: 10.1007/978-3-319-24574-4_28
– volume: 63
  start-page: 101696
  year: 2020
  ident: 1121_CR3
  publication-title: Med Image Anal.
  doi: 10.1016/j.media.2020.101696
– volume: 23
  start-page: 661
  issue: 7
  year: 2005
  ident: 1121_CR13
  publication-title: Image Vis Comput.
  doi: 10.1016/j.imavis.2005.03.001
– volume: 121
  start-page: 74
  year: 2020
  ident: 1121_CR17
  publication-title: Neural Netw.
  doi: 10.1016/j.neunet.2019.08.025
– volume: 313
  start-page: 1122
  issue: 11
  year: 2015
  ident: 1121_CR1
  publication-title: J Am Med Assoc.
  doi: 10.1001/jama.2015.1405
– volume: 142
  start-page: 106816
  year: 2020
  ident: 1121_CR20
  publication-title: Comput Stat Data Anal.
  doi: 10.1016/j.csda.2019.106816
– ident: 1121_CR35
  doi: 10.1145/3292500.3330701
– volume: 35
  start-page: 1962
  issue: 8
  year: 2016
  ident: 1121_CR34
  publication-title: IEEE Trans Med Imaging.
  doi: 10.1109/TMI.2016.2529665
– volume: 6
  start-page: 9375
  year: 2017
  ident: 1121_CR10
  publication-title: Inst Electr Electron Eng Access.
– volume: 173
  start-page: 400
  issue: 2
  year: 2018
  ident: 1121_CR33
  publication-title: Cell.
  doi: 10.1016/j.cell.2018.02.052
– ident: 1121_CR38
– volume: 58
  start-page: 101563
  year: 2019
  ident: 1121_CR2
  publication-title: Med Image Anal.
  doi: 10.1016/j.media.2019.101563
– volume: 37
  start-page: 701
  issue: 2
  year: 2021
  ident: 1121_CR18
  publication-title: Comput Intell.
  doi: 10.1111/coin.12411
– volume: 4
  start-page: 027502
  issue: 2
  year: 2017
  ident: 1121_CR8
  publication-title: J Med Imaging.
  doi: 10.1117/1.JMI.4.2.027502
– volume: 135
  start-page: 104418
  year: 2021
  ident: 1121_CR21
  publication-title: Comput Biol Med.
  doi: 10.1016/j.compbiomed.2021.104418
– volume: 39
  start-page: 1856
  issue: 6
  year: 2019
  ident: 1121_CR14
  publication-title: IEEE Trans Med Imaging.
  doi: 10.1109/TMI.2019.2959609
– ident: 1121_CR29
  doi: 10.1109/CVPR.2019.00904
– ident: 1121_CR27
– volume: 11
  start-page: 1
  issue: 1
  year: 2021
  ident: 1121_CR40
  publication-title: Sci Rep.
  doi: 10.1038/s41598-021-84854-x
– volume: 6
  start-page: 014006
  issue: 1
  year: 2019
  ident: 1121_CR15
  publication-title: J Med Imaging.
  doi: 10.1117/1.JMI.6.1.014006
– ident: 1121_CR25
– ident: 1121_CR11
  doi: 10.1109/CVPR.2015.7298965
– ident: 1121_CR32
  doi: 10.1007/978-3-030-23937-4_2
– volume: 3
  start-page: 457
  issue: 4–5
  year: 2017
  ident: 1121_CR5
  publication-title: Eur Urol Focus.
  doi: 10.1016/j.euf.2016.05.009
– volume: 11
  start-page: 1
  issue: 1
  year: 2021
  ident: 1121_CR16
  publication-title: Sci Rep.
  doi: 10.1038/s41598-021-93169-w
SSID ssj0017834
Score 2.3777149
Snippet Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei...
Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei...
The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei segmentation from...
BackgroundThe deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei...
Abstract Background The deterministic deep learning models have achieved state-of-the-art performance in various medical image analysis tasks, including nuclei...
SourceID doaj
pubmedcentral
proquest
gale
crossref
springer
SourceType Open Website
Open Access Repository
Aggregation Database
Enrichment Source
Index Database
Publisher
StartPage 1
SubjectTerms Accuracy
Algorithms
Approximation
Artificial neural networks
Bayesian analysis
Bayesian deep learning
Cancer
Datasets
Deep learning
Diagnostic systems
Digital pathology
Epistemology
Histochemistry
Histology
Histopathology
Image analysis
Image processing
Image segmentation
Imaging
Instance segmentation
Machine learning
Mathematical models
Medical image analysis
Medical imaging
Medical imaging equipment
Medicine
Medicine & Public Health
Model accuracy
Monte Carlo simulation
Neural networks
Nuclei
Nuclei segmentation
Performance evaluation
Predictions
Radiology
Representations
Semantic segmentation
Survival analysis
Uncertainty
Uncertainty estimation
Visual fields
SummonAdditionalLinks – databaseName: DOAJ Directory of Open Access Journals
  dbid: DOA
  link: http://cvtisr.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1Lb9QwELZQhRAXxFMECjISEgeImthObB9bRMUBVhwA9Wb5lSUSTatmF6n_vjOOsxAq4MI1nmidedjz7bwIecmCqDrwM8oovS6FjKKEa4GXInAZK2l1TFX8Xz_I1UqdnOhPv4z6wpywqT3wxLgDzjvpa93ZxlmhrdWhU8w72XQcjt_O4elbST2DqRw_wPERc4mMag9GOIVVVcL9BNC5ZnXJF9dQ6tZ__Uy-nif5W7A03UHHd8md7DzSw2nT98iNONwntz7m8PgD4lbYnbinffL5fKRjXJ_m4qKBYiUJTf2FcQxx-jud9qdwnowUs9_X9MheRqyppAFHJ2w3FK-4QEOM5zRPl1g_JF-O331--77MQxRKD0hgU9rYSkBBoQrAdkAHtasaDN1FwWxwTPpWxxooeRCOqeAB8YkOYEMdaitk4_gjsjecDfExoS6yxuuOOcBUQCNdY5W13DsRLDwNBalnnhqfO4zjoIvvJiEN1ZpJDgbkYJIcDC_I690751N_jb9SH6GodpTYGzs9AI0xWWPMvzSmIK9Q0AYtGLbnbS5EgI_EXljmULYanEqAxgXZX1CC5fnl8qwqJlv-aDBwW7UVZ7DZF7tlfBOz2YZ4tkUahdCRN1VB1ELFFl-2XBn6b6n7NzjE2HNQFOTNrI0_f_3PrHvyP1j3lNxmaESY0aP3yd7mYhufkZv-x6YfL54nE7wC0x41Xg
  priority: 102
  providerName: Directory of Open Access Journals
– databaseName: SpringerLINK Contemporary 1997-Present
  dbid: RSV
  link: http://cvtisr.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV1bi9QwFA66ivjiXayuEkHwQYttkjbJ4664-KCDeFn2LeTW2QG3s0xnBP-952TSkboq6GtzQtPkXPL13Ah5xoKoOrhnlFF6XQoZRQlmgZcicBkraXVMWfzH7-Rspk5O9IecFDaM0e6jSzJp6iTWqn01gCZVVQk2BuBvzeqSXyZXwNwpbNjw8dPxzneArSPG9JjfzpuYoFSp_6I-vhgj-YujNNmfo5v_t_Jb5Ea-b9KDLYPcJpdif4dce5896neJm2FB4wVdpGuij3SI87Ocj9RTTD6hqSQxdi5Of-Dp4gxU0EAxYH5OD-33iGmYNGC3hc2aolUMNMR4TnNDivk98uXozefXb8vcd6H0AB7WpY2tBOAUqgAnBYCidlWD3r4omA2OSd_qWAMlD8IxFTyARNEB0qhDbYVsHL9P9vplHx8Q6iJrvO6YAxgGNNI1VlnLvRPBwtNQkHo8CuNzUXLsjfHVJHCiWrPdPAObZ9LmGV6QF7s559uSHH-lPsQT3lFiOe30YLmamyydhvNO-lp3tnFWaGt16BTzTjYdBxvfuYI8R_4wKPSwPG9z7gJ8JJbPMgey1XAPBTRdkP0JJQirnw6PHGayshgM-nqrtuIMFvt0N4wzMQCuj8sN0ihEm7ypCqImnDn5sulIvzhNBcPhDo1lCkVBXo4M-vPtf966h_9G_ohcZ8jjGO6j98neerWJj8lV_229GFZPkoz-AJmTOCc
  priority: 102
  providerName: Springer Nature
Title Nuclei instance segmentation from histopathology images using Bayesian dropout based deep learning
URI https://link.springer.com/article/10.1186/s12880-023-01121-3
https://www.proquest.com/docview/2890060323
https://www.proquest.com/docview/2880096350
https://pubmed.ncbi.nlm.nih.gov/PMC10585914
https://doaj.org/article/33f7c19fa5ba49aa9df82cb75f3130fb
Volume 23
WOSCitedRecordID wos001085958900003&url=https%3A%2F%2Fcvtisr.summon.serialssolutions.com%2F%23%21%2Fsearch%3Fho%3Df%26include.ft.matches%3Dt%26l%3Dnull%26q%3D
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
journalDatabaseRights – providerCode: PRVADU
  databaseName: BioMed Central_OA刊
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: RBZ
  dateStart: 20010101
  isFulltext: true
  titleUrlDefault: https://www.biomedcentral.com/search/
  providerName: BioMedCentral
– providerCode: PRVAON
  databaseName: DOAJ Directory of Open Access Journals
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: DOA
  dateStart: 20010101
  isFulltext: true
  titleUrlDefault: https://www.doaj.org/
  providerName: Directory of Open Access Journals
– providerCode: PRVHPJ
  databaseName: ROAD: Directory of Open Access Scholarly Resources
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: M~E
  dateStart: 20010101
  isFulltext: true
  titleUrlDefault: https://road.issn.org
  providerName: ISSN International Centre
– providerCode: PRVPQU
  databaseName: Advanced Technologies & Aerospace Database
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: P5Z
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: https://search.proquest.com/hightechjournals
  providerName: ProQuest
– providerCode: PRVPQU
  databaseName: Biological Science Database
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: M7P
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: http://search.proquest.com/biologicalscijournals
  providerName: ProQuest
– providerCode: PRVPQU
  databaseName: Health & Medical Collection
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: 7X7
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: https://search.proquest.com/healthcomplete
  providerName: ProQuest
– providerCode: PRVPQU
  databaseName: Nursing & Allied Health Database
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: 7RV
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: https://search.proquest.com/nahs
  providerName: ProQuest
– providerCode: PRVPQU
  databaseName: ProQuest Central
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: BENPR
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: https://www.proquest.com/central
  providerName: ProQuest
– providerCode: PRVPQU
  databaseName: ProQuest Publicly Available Content Database
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: PIMPY
  dateStart: 20090101
  isFulltext: true
  titleUrlDefault: http://search.proquest.com/publiccontent
  providerName: ProQuest
– providerCode: PRVAVX
  databaseName: SpringerLINK Contemporary 1997-Present
  customDbUrl:
  eissn: 1471-2342
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0017834
  issn: 1471-2342
  databaseCode: RSV
  dateStart: 20011201
  isFulltext: true
  titleUrlDefault: https://link.springer.com/search?facet-content-type=%22Journal%22
  providerName: Springer Nature
link http://cvtisr.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwpR1db9Mw0GIbQrzwjQiMykhIPEC0JHbi5AmtaBNIrIoKVIMXy18plVhamhaJf8-d63YKE3vhxVLiixLnzvfh-yLkZWZ50oCeETthqpgLx2MQCyzmlgmXCFU5n8U_-ShGo_L8vKrDgVsXwiq3PNEzajs3eEZ-hA6xpEhYxt4ufsbYNQq9q6GFxh45wCoJmQ_dq3deBGwisU2UKYujDnhxmcQgpcCABviY9YSRr9l_lTNfjZb8y2XqJdHp3f9dwz1yJ-ig9HhDNPfJDdc-ILfOgpf9IdEjLHI8ozOvOhpHOze9CDlKLcWEFOrLFGM3Y38qT2cXwJY6ikH0UzpUvx2mZlKLHRjWK4qS0lLr3IKGJhXTR-TL6cnnd-_j0IshNmBQrGLlCgHGlE0sYA-MjFQnOXoAHc-U1ZkwReVSgGSW66y0BgxH3oD1kdpUcZFr9pjst_PWPSFUuyw3VZNpMM0ARuhclUoxo7lVcNdGJN0iRZpQqBz7ZfyQ3mApC7lBpARESo9IySLyevfMYlOm41roIeJ6B4kltv2N-XIqw46VjDXCpFWjcq14pVRlmzIzWuQNA7nf6Ii8QkqRyAjg84wK-QywSCypJY9FUYFuChZ2RA57kLCBTX96Sy0yMJBOXpJKRF7spvFJDIpr3XyNMCVaoCxPIlL2aLS3sv5MO_vui4iDXo2lC3lE3mzJ-fLt__51T6__2Gfkdob7C0N-qkOyv1qu3XNy0_xazbrlgOyJ8QTHc-HHckAOhiejejzwRyEDv3thrPNvMFN_OKu_wtX40-QPJhFLSQ
linkProvider ProQuest
linkToHtml http://cvtisr.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMw1V1Lb9NAEF6VFAEX3ghDgUUCcQCr9u7aax8QaoGqUZOoh4LKadmXQyTqhDgB9U_xG5lx7FSmorceuHrH9q7zzSvzIuQFcyIqwM4IvbR5KKQXIagFHgrHpY-kzn1dxf95IEej7Pg4P9wgv9taGEyrbGViLajd1OJ_5NsYEIvSiDP-bvYjxKlRGF1tR2isYHHgT3-By1a97X-A3_clY3sfj97vh81UgdCCabwItU8luAUucrAPMJdjEyUYy_KCaWeYtGnuY6DkThiWOQsukCjAjo5drIVMDIfnXiGbAsHeI5uH_eHhl3XcAsdWtKU5WbpdgfTPohD0IrjsMYtD3lF_9ZSA87rgfH7mX0HaWvft3frfvtptcrOxsunOii3ukA1f3iXXhk0ewT1iRtjGeUIntXFsPa38-KSpwiopltzQuhEzzmuu4w50cgKCt6JYJjCmu_rUY_EpdThjYrmgaAs46ryf0WYMx_g--XQpJ3xAeuW09A8JNZ4lNi-YAecTaKRJdKY1t0Y4DVddQOIWBMo2rdhxIsh3VbtkWapWwFEAHFUDR_GAvF7fM1s1IrmQehextabEJuL1hel8rBqZpDgvpI3zQidGi1zr3BUZs0YmBQfLpjABeYXIVCjqYHtWNxUbcEhsGqZ2ZJqD9S1ZHJCtDiWIKNtdbtGpGhFZqTNoBuT5ehnvxLS_0k-XSJOhj82TKCBZhyc6J-uulJNvdZt08BywOaMIyJuWfc7e_u9P9-jizT4j1_ePhgM16I8OHpMbDHkbE5zyLdJbzJf-Cblqfy4m1fxpIxso-XrZjPUHhcqeIg
linkToPdf http://cvtisr.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwpV3di9QwEA96yuGL34fVUyMIPmi5Nkmb9vFOXRTP5UA97i3kq2vB6y7bruB_70zartZTQXxtJrRJJjPz63wR8pQ5kVRgZ8Re2jIW0osY1AKPhePSJ1KXPmTxnx7L-bw4OytPfsriD9Huo0uyz2nAKk1Nd7ByVX_Fi_ygBalaJDHoG4DCKUtjfplcERhIj3j9w-nWj4BtJMZUmd_Om6ijULX_omy-GC_5i9M06KLZjf9fxU1yfbBD6WHPOLfIJd_cJrvvB0_7HWLmWOi4pnUwH62nrV-cD3lKDcWkFBpKFWNH4_BnntbnIJpaioH0C3qkv3lMz6QOuzBsOora0lHn_YoOjSoWd8mn2euPL9_EQz-G2AKo6GLtcwmAyiUOThCARmqSDL2AXjDtDJM2L30KlNwJwwpnATyKChBI6lItZGb4Htlplo2_R6jxLLNlxQzAM6CRJtOF1twa4TQ8dRFJx2NRdihWjj0zvqgAWopc9ZunYPNU2DzFI_J8O2fVl-r4K_URnvaWEstshwfL9UINt1ZxXkmblpXOjBal1qWrCmaNzCoOur8yEXmGvKJQGMDnWT3kNMAisayWOpR5CfYpoOyI7E8o4RLb6fDIbWoQIq1CH3CSJ5zBxz7ZDuNMDIxr_HKDNAWiUJ4lESkmXDpZ2XSkqT-HQuJgW2P5QhGRFyOz_nj7n7fu_r-RPya7J69m6vjt_N0Dco0hu2NEULlPdrr1xj8kV-3Xrm7Xj8LV_Q7U00Pv
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Nuclei+instance+segmentation+from+histopathology+images+using+Bayesian+dropout+based+deep+learning&rft.jtitle=BMC+medical+imaging&rft.au=Gudhe%2C+Naga+Raju&rft.au=Kosma%2C+Veli-Matti&rft.au=Behravan%2C+Hamid&rft.au=Mannermaa%2C+Arto&rft.date=2023-10-19&rft.pub=BioMed+Central+Ltd&rft.issn=1471-2342&rft.eissn=1471-2342&rft.volume=23&rft.issue=1&rft_id=info:doi/10.1186%2Fs12880-023-01121-3&rft.externalDocID=A769610721
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=1471-2342&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=1471-2342&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=1471-2342&client=summon