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Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types

In the last four years, advances in Deep Learning technology have enabled the inference of selected mutational alterations directly from routine histopathology slides. In particular, recent studies have shown that genetic changes in clinically relevant driver genes are reflected in the histological...

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Autores principales: Loeffler, Chiara Maria Lavinia, Gaisa, Nadine T., Muti, Hannah Sophie, van Treeck, Marko, Echle, Amelie, Ghaffari Laleh, Narmin, Trautwein, Christian, Heij, Lara R., Grabsch, Heike I., Ortiz Bruechle, Nadina, Kather, Jakob Nikolas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8889144/
https://www.ncbi.nlm.nih.gov/pubmed/35251119
http://dx.doi.org/10.3389/fgene.2021.806386
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author Loeffler, Chiara Maria Lavinia
Gaisa, Nadine T.
Muti, Hannah Sophie
van Treeck, Marko
Echle, Amelie
Ghaffari Laleh, Narmin
Trautwein, Christian
Heij, Lara R.
Grabsch, Heike I.
Ortiz Bruechle, Nadina
Kather, Jakob Nikolas
author_facet Loeffler, Chiara Maria Lavinia
Gaisa, Nadine T.
Muti, Hannah Sophie
van Treeck, Marko
Echle, Amelie
Ghaffari Laleh, Narmin
Trautwein, Christian
Heij, Lara R.
Grabsch, Heike I.
Ortiz Bruechle, Nadina
Kather, Jakob Nikolas
author_sort Loeffler, Chiara Maria Lavinia
collection PubMed
description In the last four years, advances in Deep Learning technology have enabled the inference of selected mutational alterations directly from routine histopathology slides. In particular, recent studies have shown that genetic changes in clinically relevant driver genes are reflected in the histological phenotype of solid tumors and can be inferred by analysing routine Haematoxylin and Eosin (H&E) stained tissue sections with Deep Learning. However, these studies mostly focused on selected individual genes in selected tumor types. In addition, genetic changes in solid tumors primarily act by changing signaling pathways that regulate cell behaviour. In this study, we hypothesized that Deep Learning networks can be trained to directly predict alterations of genes and pathways across a spectrum of solid tumors. We manually outlined tumor tissue in H&E-stained tissue sections from 7,829 patients with 23 different tumor types from The Cancer Genome Atlas. We then trained convolutional neural networks in an end-to-end way to detect alterations in the most clinically relevant pathways or genes, directly from histology images. Using this automatic approach, we found that alterations in 12 out of 14 clinically relevant pathways and numerous single gene alterations appear to be detectable in tissue sections, many of which have not been reported before. Interestingly, we show that the prediction performance for single gene alterations is better than that for pathway alterations. Collectively, these data demonstrate the predictability of genetic alterations directly from routine cancer histology images and show that individual genes leave a stronger morphological signature than genetic pathways.
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spelling pubmed-88891442022-03-03 Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types Loeffler, Chiara Maria Lavinia Gaisa, Nadine T. Muti, Hannah Sophie van Treeck, Marko Echle, Amelie Ghaffari Laleh, Narmin Trautwein, Christian Heij, Lara R. Grabsch, Heike I. Ortiz Bruechle, Nadina Kather, Jakob Nikolas Front Genet Genetics In the last four years, advances in Deep Learning technology have enabled the inference of selected mutational alterations directly from routine histopathology slides. In particular, recent studies have shown that genetic changes in clinically relevant driver genes are reflected in the histological phenotype of solid tumors and can be inferred by analysing routine Haematoxylin and Eosin (H&E) stained tissue sections with Deep Learning. However, these studies mostly focused on selected individual genes in selected tumor types. In addition, genetic changes in solid tumors primarily act by changing signaling pathways that regulate cell behaviour. In this study, we hypothesized that Deep Learning networks can be trained to directly predict alterations of genes and pathways across a spectrum of solid tumors. We manually outlined tumor tissue in H&E-stained tissue sections from 7,829 patients with 23 different tumor types from The Cancer Genome Atlas. We then trained convolutional neural networks in an end-to-end way to detect alterations in the most clinically relevant pathways or genes, directly from histology images. Using this automatic approach, we found that alterations in 12 out of 14 clinically relevant pathways and numerous single gene alterations appear to be detectable in tissue sections, many of which have not been reported before. Interestingly, we show that the prediction performance for single gene alterations is better than that for pathway alterations. Collectively, these data demonstrate the predictability of genetic alterations directly from routine cancer histology images and show that individual genes leave a stronger morphological signature than genetic pathways. Frontiers Media S.A. 2022-02-16 /pmc/articles/PMC8889144/ /pubmed/35251119 http://dx.doi.org/10.3389/fgene.2021.806386 Text en Copyright © 2022 Loeffler, Gaisa, Muti, van Treeck, Echle, Ghaffari Laleh, Trautwein, Heij, Grabsch, Ortiz Bruechle and Kather. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Genetics
Loeffler, Chiara Maria Lavinia
Gaisa, Nadine T.
Muti, Hannah Sophie
van Treeck, Marko
Echle, Amelie
Ghaffari Laleh, Narmin
Trautwein, Christian
Heij, Lara R.
Grabsch, Heike I.
Ortiz Bruechle, Nadina
Kather, Jakob Nikolas
Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title_full Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title_fullStr Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title_full_unstemmed Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title_short Predicting Mutational Status of Driver and Suppressor Genes Directly from Histopathology With Deep Learning: A Systematic Study Across 23 Solid Tumor Types
title_sort predicting mutational status of driver and suppressor genes directly from histopathology with deep learning: a systematic study across 23 solid tumor types
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8889144/
https://www.ncbi.nlm.nih.gov/pubmed/35251119
http://dx.doi.org/10.3389/fgene.2021.806386
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