Predicting prostate cancer molecular subtype with deep learning on histopathologic images

dc.contributor.authorid0000-0003-2003-7567
dc.contributor.coauthorErak, Eric
dc.contributor.coauthorOliveira, Lia DePaula
dc.contributor.coauthorMendes, Adrianna A.
dc.contributor.coauthorDairo, Oluwademilade
dc.contributor.coauthorErtunc, Onur
dc.contributor.coauthorKulac, Ibrahim
dc.contributor.coauthorValle, Javier A. Baena-Del
dc.contributor.coauthorJones, Tracy
dc.contributor.coauthorHicks, Jessica L.
dc.contributor.coauthorGlavaris, Stephanie
dc.contributor.coauthorGuner, Gunes
dc.contributor.coauthorVidal, Igor Damasceno
dc.contributor.coauthorMarkowski, Mark
dc.contributor.coauthorde la Calle, Claire
dc.contributor.coauthorTrock, Bruce J.
dc.contributor.coauthorMeena, Avaneesh
dc.contributor.coauthorJoshi, Uttara
dc.contributor.coauthorKondragunta, Chaith
dc.contributor.coauthorBonthu, Saikiran
dc.contributor.coauthorSinghal, Nitin
dc.contributor.coauthorMarzo, Angelo M. De
dc.contributor.coauthorLotan, Tamara L.
dc.contributor.departmentN/A
dc.contributor.kuauthorKulaç, İbrahim
dc.contributor.kuprofileFaculty Member
dc.contributor.schoolcollegeinstituteSchool of Medicine
dc.contributor.yokid170305
dc.date.accessioned2025-01-19T10:32:51Z
dc.date.issued2023
dc.description.abstractMicroscopic examination of prostate cancer has failed to reveal a reproducible association between molecular and morphologic features. However, deep-learning algorithms trained on hematoxylin and eosin (H & E)-stained whole slide images (WSI) may outperform the human eye and help to screen for clinically-relevant genomic alterations. We created deep-learning algorithms to identify prostate tumors with underlying ETS-related gene (ERG) fusions or PTEN deletions using the following 4 stages: (1) automated tumor identification, (2) feature representation learning, (3) classification, and (4) explainability map generation. A novel transformer-based hierarchical architecture was trained on a single representative WSI of the dominant tumor nodule from a radical prostatectomy (RP) cohort with known ERG/PTEN status (n = 224 and n = 205, respectively). Two distinct vision transformerbased networks were used for feature extraction, and a distinct transformer-based model was used for classification. The ERG algorithm performance was validated across 3 RP cohorts, including 64 WSI from the pretraining cohort (AUC, 0.91) and 248 and 375 WSI from 2 independent RP cohorts (AUC, 0.86 and 0.89, respectively). In addition, we tested the ERG algorithm performance in 2 needle biopsy cohorts comprised of 179 and 148 WSI (AUC, 0.78 and 0.80, respectively). Focusing on cases with homogeneous (clonal) PTEN status, PTEN algorithm performance was assessed using 50 WSI reserved from the pretraining cohort (AUC, 0.81), 201 and 337 WSI from 2 independent RP cohorts (AUC, 0.72 and 0.80, respectively), and 151 WSI from a needle biopsy cohort (AUC, 0.75). For explainability, the PTEN algorithm was also applied to 19 WSI with heterogeneous (subclonal) PTEN loss, where the percentage tumor area with predicted PTEN loss correlated with that based on immunohistochemistry (r = 0.58, P = .0097). These deep-learning algorithms to predict ERG/PTEN status prove that H & E images can be used to screen for underlying genomic alterations in prostate cancer.& COPY; 2023 United States & Canadian Academy of Pathology. Published by Elsevier Inc. All rights reserved.
dc.description.indexedbyWoS
dc.description.indexedbyScopus
dc.description.indexedbyPubMed
dc.description.issue10
dc.description.publisherscopeInternational
dc.description.sponsorsThis research was supported by a grant from the Prostate Cancer Foundation. Additional funding was from the NCI Cancer Center Support (grant 5P30CA006973-52), NIH/NCI SPORE in Prostate Cancer (P50CA58236), the NIH/NCI U01 CA196390 for the Molecular and Cellular Characterization of Screen Detected Lesions, and the US Department of Defense Prostate Cancer Research Program (W81XWH-18-2-0015).
dc.description.volume36
dc.identifier.doi10.1016/j.modpat.2023.100247
dc.identifier.eissn1530-0285
dc.identifier.issn0893-3952
dc.identifier.quartileQ1
dc.identifier.scopus2-s2.0-85180160600
dc.identifier.urihttps://doi.org/10.1016/j.modpat.2023.100247
dc.identifier.urihttps://hdl.handle.net/20.500.14288/26478
dc.identifier.wos1039572700001
dc.keywordsArtificial intelligence
dc.keywordsDeep-learning
dc.keywordsERG
dc.keywordsProstate
dc.keywordsPTEN
dc.languageen
dc.publisherElsevier Science Inc
dc.relation.grantnoProstate Cancer Foundation; NCI Cancer Center [5P30CA006973-52]; NIH/NCI SPORE in Prostate Cancer [P50CA58236]; NIH/NCI [U01 CA196390]; Molecular and Cellular Characterization of Screen Detected Lesions; US Department of Defense Prostate Cancer Research Program [W81XWH-18-2-0015]
dc.sourceModern Pathology
dc.subjectPathology
dc.subjectMedicine
dc.titlePredicting prostate cancer molecular subtype with deep learning on histopathologic images
dc.typeJournal Article

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