Cargando…

Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study

BACKGROUND: Homologous Recombination Deficiency (HRD) is a pan-cancer predictive biomarker that identifies patients who benefit from therapy with PARP inhibitors (PARPi). However, testing for HRD is highly complex. Here, we investigated whether Deep Learning can predict HRD status solely based on ro...

Descripción completa

Detalles Bibliográficos
Autores principales: Loeffler, Chiara Maria Lavinia, El Nahhas, Omar S.M., Muti, Hannah Sophie, Seibel, Tobias, Cifci, Didem, van Treeck, Marko, Gustav, Marco, Carrero, Zunamys I., Gaisa, Nadine T., Lehmann, Kjong-Van, Leary, Alexandra, Selenica, Pier, Reis-Filho, Jorge S., Bruechle, Nadina Ortiz, Kather, Jakob Nikolas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10029072/
https://www.ncbi.nlm.nih.gov/pubmed/36945540
http://dx.doi.org/10.1101/2023.03.08.23286975
_version_ 1784910071298260992
author Loeffler, Chiara Maria Lavinia
El Nahhas, Omar S.M.
Muti, Hannah Sophie
Seibel, Tobias
Cifci, Didem
van Treeck, Marko
Gustav, Marco
Carrero, Zunamys I.
Gaisa, Nadine T.
Lehmann, Kjong-Van
Leary, Alexandra
Selenica, Pier
Reis-Filho, Jorge S.
Bruechle, Nadina Ortiz
Kather, Jakob Nikolas
author_facet Loeffler, Chiara Maria Lavinia
El Nahhas, Omar S.M.
Muti, Hannah Sophie
Seibel, Tobias
Cifci, Didem
van Treeck, Marko
Gustav, Marco
Carrero, Zunamys I.
Gaisa, Nadine T.
Lehmann, Kjong-Van
Leary, Alexandra
Selenica, Pier
Reis-Filho, Jorge S.
Bruechle, Nadina Ortiz
Kather, Jakob Nikolas
author_sort Loeffler, Chiara Maria Lavinia
collection PubMed
description BACKGROUND: Homologous Recombination Deficiency (HRD) is a pan-cancer predictive biomarker that identifies patients who benefit from therapy with PARP inhibitors (PARPi). However, testing for HRD is highly complex. Here, we investigated whether Deep Learning can predict HRD status solely based on routine Hematoxylin & Eosin (H&E) histology images in ten cancer types. METHODS: We developed a fully automated deep learning pipeline with attention-weighted multiple instance learning (attMIL) to predict HRD status from histology images. A combined genomic scar HRD score, which integrated loss of heterozygosity (LOH), telomeric allelic imbalance (TAI) and large-scale state transitions (LST) was calculated from whole genome sequencing data for n=4,565 patients from two independent cohorts. The primary statistical endpoint was the Area Under the Receiver Operating Characteristic curve (AUROC) for the prediction of genomic scar HRD with a clinically used cutoff value. RESULTS: We found that HRD status is predictable in tumors of the endometrium, pancreas and lung, reaching cross-validated AUROCs of 0.79, 0.58 and 0.66. Predictions generalized well to an external cohort with AUROCs of 0.93, 0.81 and 0.73 respectively. Additionally, an HRD classifier trained on breast cancer yielded an AUROC of 0.78 in internal validation and was able to predict HRD in endometrial, prostate and pancreatic cancer with AUROCs of 0.87, 0.84 and 0.67 indicating a shared HRD-like phenotype is across tumor entities. CONCLUSION: In this study, we show that HRD is directly predictable from H&E slides using attMIL within and across ten different tumor types.
format Online
Article
Text
id pubmed-10029072
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Cold Spring Harbor Laboratory
record_format MEDLINE/PubMed
spelling pubmed-100290722023-03-22 Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study Loeffler, Chiara Maria Lavinia El Nahhas, Omar S.M. Muti, Hannah Sophie Seibel, Tobias Cifci, Didem van Treeck, Marko Gustav, Marco Carrero, Zunamys I. Gaisa, Nadine T. Lehmann, Kjong-Van Leary, Alexandra Selenica, Pier Reis-Filho, Jorge S. Bruechle, Nadina Ortiz Kather, Jakob Nikolas medRxiv Article BACKGROUND: Homologous Recombination Deficiency (HRD) is a pan-cancer predictive biomarker that identifies patients who benefit from therapy with PARP inhibitors (PARPi). However, testing for HRD is highly complex. Here, we investigated whether Deep Learning can predict HRD status solely based on routine Hematoxylin & Eosin (H&E) histology images in ten cancer types. METHODS: We developed a fully automated deep learning pipeline with attention-weighted multiple instance learning (attMIL) to predict HRD status from histology images. A combined genomic scar HRD score, which integrated loss of heterozygosity (LOH), telomeric allelic imbalance (TAI) and large-scale state transitions (LST) was calculated from whole genome sequencing data for n=4,565 patients from two independent cohorts. The primary statistical endpoint was the Area Under the Receiver Operating Characteristic curve (AUROC) for the prediction of genomic scar HRD with a clinically used cutoff value. RESULTS: We found that HRD status is predictable in tumors of the endometrium, pancreas and lung, reaching cross-validated AUROCs of 0.79, 0.58 and 0.66. Predictions generalized well to an external cohort with AUROCs of 0.93, 0.81 and 0.73 respectively. Additionally, an HRD classifier trained on breast cancer yielded an AUROC of 0.78 in internal validation and was able to predict HRD in endometrial, prostate and pancreatic cancer with AUROCs of 0.87, 0.84 and 0.67 indicating a shared HRD-like phenotype is across tumor entities. CONCLUSION: In this study, we show that HRD is directly predictable from H&E slides using attMIL within and across ten different tumor types. Cold Spring Harbor Laboratory 2023-03-10 /pmc/articles/PMC10029072/ /pubmed/36945540 http://dx.doi.org/10.1101/2023.03.08.23286975 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Loeffler, Chiara Maria Lavinia
El Nahhas, Omar S.M.
Muti, Hannah Sophie
Seibel, Tobias
Cifci, Didem
van Treeck, Marko
Gustav, Marco
Carrero, Zunamys I.
Gaisa, Nadine T.
Lehmann, Kjong-Van
Leary, Alexandra
Selenica, Pier
Reis-Filho, Jorge S.
Bruechle, Nadina Ortiz
Kather, Jakob Nikolas
Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title_full Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title_fullStr Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title_full_unstemmed Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title_short Direct prediction of Homologous Recombination Deficiency from routine histology in ten different tumor types with attention-based Multiple Instance Learning: a development and validation study
title_sort direct prediction of homologous recombination deficiency from routine histology in ten different tumor types with attention-based multiple instance learning: a development and validation study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10029072/
https://www.ncbi.nlm.nih.gov/pubmed/36945540
http://dx.doi.org/10.1101/2023.03.08.23286975
work_keys_str_mv AT loefflerchiaramarialavinia directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT elnahhasomarsm directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT mutihannahsophie directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT seibeltobias directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT cifcididem directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT vantreeckmarko directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT gustavmarco directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT carrerozunamysi directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT gaisanadinet directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT lehmannkjongvan directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT learyalexandra directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT selenicapier directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT reisfilhojorges directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT bruechlenadinaortiz directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy
AT katherjakobnikolas directpredictionofhomologousrecombinationdeficiencyfromroutinehistologyintendifferenttumortypeswithattentionbasedmultipleinstancelearningadevelopmentandvalidationstudy