Publication:

Computer-Assisted Diagnosis of Lymph Node Metastases in Colorectal Cancers Using Transfer Learning With an Ensemble Model

cris.lastimport.scopus

2024-08-08T10:11:31Z

cris.legacyId

301889

cris.virtual.author-scopus

35554798200

cris.virtual.department

LTS5

cris.virtual.sciperId

115534

cris.virtual.unitManager

Thiran, Jean-Philippe

cris.virtualsource.author-scopus

18c34af8-ff12-466f-97c1-52e627259417

cris.virtualsource.department

18c34af8-ff12-466f-97c1-52e627259417

cris.virtualsource.orcid

18c34af8-ff12-466f-97c1-52e627259417

cris.virtualsource.rid

18c34af8-ff12-466f-97c1-52e627259417

cris.virtualsource.sciperId

18c34af8-ff12-466f-97c1-52e627259417

cris.virtualsource.unitManager

24256c18-3294-40df-91a5-eefdca985e4a

datacite.rights

metadata-only

dc.contributor.author

Khan, Amjad

dc.contributor.author

Brouwer, Nelleke

dc.contributor.author

Blank, Annika

dc.contributor.author

Mueller, Felix

dc.contributor.author

Soldini, Davide

dc.contributor.author

Noske, Aurelia

dc.contributor.author

Gaus, Elisabeth

dc.contributor.author

Brandt, Simone

dc.contributor.author

Nagtegaal, Iris

dc.contributor.author

Dawson, Heather

dc.contributor.author

Thiran, Jean-Philippe

dc.contributor.author

Perren, Aurel

dc.contributor.author

Lugli, Alessandro

dc.contributor.author

Zlobec, Inti

dc.date.accessioned

2023-04-10T02:44:28

dc.date.available

2023-04-10T02:44:28

dc.date.created

2023-04-10

dc.date.issued

2023-02-17

dc.date.modified

2025-01-23T14:56:17.275212Z

dc.description.abstract

Screening of lymph node metastases in colorectal cancer (CRC) can be a cumbersome task, but it is amenable to artificial intelligence (AI)-assisted diagnostic solution. Here, we propose a deep learning-based workflow for the evaluation of CRC lymph node metastases from digitized hematoxylin and eosin-stained sections. A segmentation model was trained on 100 whole-slide images (WSIs). It achieved a Matthews correlation coefficient of 0.86 (+/- 0.154) and an acceptable Hausdorff distance of 135.59 mm (+/- 72.14 mm), indicating a high congruence with the ground truth. For metastasis detection, 2 models (Xception and Vision Transformer) were independently trained first on a patch-based breast cancer lymph node data set and were then fine-tuned using the CRC data set. After fine-tuning, the ensemble model showed significant improvements in the F1 score (0.797-0.94 9; P <.00001) and the area under the receiver operating characteristic curve (0.959-0.978; P <.00001). Four independent cohorts (3 internal and 1 external) of CRC lymph nodes were used for validation in cascading segmentation and metastasis detection models. Our approach showed excellent perfor-mance, with high sensitivity (0.995, 1.0) and specificity (0.967, 1.0) in 2 validation cohorts of adenocarcinoma cases (n = 3836 slides) when comparing slide-level labels with the ground truth (pathologist reports). Similarly, an acceptable performance was achieved in a validation cohort (n = 172 slides) with mucinous and signet-ring cell histology (sensitivity, 0.872; specificity, 0.936). The patch-based classification confidence was aggregated to overlay the potential metastatic regions within each lymph node slide for visualization. We also applied our method to a consecutive case series of lymph nodes obtained over the past 6 months at our institution (n = 217 slides). The overlays of prediction within lymph node regions matched 100% when compared with a microscope evaluation by an expert pathologist. Our results provide the basis for a computer-assisted diagnostic tool for easy and efficient lymph node screening in patients with CRC.(c) 2023 THE AUTHORS. Published by Elsevier Inc. on behalf of the United States & Canadian Academy of Pathology. This is an open access article under the CC BY-NC-ND license (http://creativecommons. org/licenses/by-nc-nd/4.0/).

dc.identifier.doi

10.1016/j.modpat.2023.100118

dc.identifier.isi

WOS:000944842400001

dc.identifier.uri

https://infoscience.epfl.ch/handle/20.500.14299/196869

dc.publisher

ELSEVIER SCIENCE INC

dc.publisher.place

New York

dc.relation.issn

0893-3952

dc.relation.issn

1530-0285

dc.relation.journal

Modern Pathology

dc.source

WoS

dc.subject

Pathology

dc.subject

Pathology

dc.subject

colorectal cancer

dc.subject

ensemble model

dc.subject

histopathology

dc.subject

lymph nodes

dc.subject

metastasis detection

dc.subject

transfer learning

dc.subject

classification

dc.title

Computer-Assisted Diagnosis of Lymph Node Metastases in Colorectal Cancers Using Transfer Learning With an Ensemble Model

dc.type

text::journal::journal article::research article

dspace.entity.type

Publication

dspace.legacy.oai-identifier

oai:infoscience.epfl.ch:301889

epfl.curator.email

jules.sachot-durette@epfl.ch

epfl.legacy.itemtype

Journal Articles

epfl.legacy.submissionform

ARTICLE

epfl.oai.currentset

OpenAIREv4

epfl.oai.currentset

article

epfl.peerreviewed

REVIEWED

epfl.publication.version

http://purl.org/coar/version/c_970fb48d4fbd8a85

epfl.writtenAt

EPFL

oaire.citation.articlenumber

100118

oaire.citation.issue

5

oaire.citation.volume

36

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