Download
s13073-021-00845-7.pdf 3,13MB
WeightNameValue
1000 Titel
  • Explaining decisions of graph convolutional neural networks: patient-specific molecular subnetworks responsible for metastasis prediction in breast cancer
1000 Autor/in
  1. Chereda, Hryhorii |
  2. Bleckmann, Annalen |
  3. Menck, Kerstin |
  4. Perera-Bel, Júlia |
  5. Stegmaier, Philip |
  6. Auer, Florian |
  7. Kramer, Frank |
  8. Leha, Andreas |
  9. Beißbarth, Tim |
1000 Erscheinungsjahr 2021
1000 Publikationstyp
  1. Artikel |
1000 Online veröffentlicht
  • 2021-03-11
1000 Erschienen in
1000 Quellenangabe
  • 13(1):42
1000 Copyrightjahr
  • 2021
1000 Lizenz
1000 Verlagsversion
  • https://doi.org/10.1186/s13073-021-00845-7 |
  • https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7953710/ |
1000 Publikationsstatus
1000 Sprache der Publikation
1000 Abstract/Summary
  • Background!#!Contemporary deep learning approaches show cutting-edge performance in a variety of complex prediction tasks. Nonetheless, the application of deep learning in healthcare remains limited since deep learning methods are often considered as non-interpretable black-box models. However, the machine learning community made recent elaborations on interpretability methods explaining data point-specific decisions of deep learning techniques. We believe that such explanations can assist the need in personalized precision medicine decisions via explaining patient-specific predictions.!##!Methods!#!Layer-wise Relevance Propagation (LRP) is a technique to explain decisions of deep learning methods. It is widely used to interpret Convolutional Neural Networks (CNNs) applied on image data. Recently, CNNs started to extend towards non-Euclidean domains like graphs. Molecular networks are commonly represented as graphs detailing interactions between molecules. Gene expression data can be assigned to the vertices of these graphs. In other words, gene expression data can be structured by utilizing molecular network information as prior knowledge. Graph-CNNs can be applied to structured gene expression data, for example, to predict metastatic events in breast cancer. Therefore, there is a need for explanations showing which part of a molecular network is relevant for predicting an event, e.g., distant metastasis in cancer, for each individual patient.!##!Results!#!We extended the procedure of LRP to make it available for Graph-CNN and tested its applicability on a large breast cancer dataset. We present Graph Layer-wise Relevance Propagation (GLRP) as a new method to explain the decisions made by Graph-CNNs. We demonstrate a sanity check of the developed GLRP on a hand-written digits dataset and then apply the method on gene expression data. We show that GLRP provides patient-specific molecular subnetworks that largely agree with clinical knowledge and identify common as well as novel, and potentially druggable, drivers of tumor progression.!##!Conclusions!#!The developed method could be potentially highly useful on interpreting classification results in the context of different omics data and prior knowledge molecular networks on the individual patient level, as for example in precision medicine approaches or a molecular tumor board.
1000 Sacherschließung
lokal Gene Expression Regulation, Neoplastic [MeSH]
lokal Algorithms [MeSH]
lokal Female [MeSH]
lokal Signal Transduction/genetics [MeSH]
lokal Prior knowledge
lokal Classification of cancer
lokal Humans [MeSH]
lokal Neoplasm Metastasis [MeSH]
lokal Breast Neoplasms/genetics [MeSH]
lokal Gene expression data
lokal Protein Interaction Maps/genetics [MeSH]
lokal Neural Networks, Computer [MeSH]
lokal Personalized medicine
lokal Precision medicine
lokal Gene Regulatory Networks [MeSH]
lokal Research
lokal Molecular networks
lokal Deep learning
lokal Explainable AI
lokal Breast Neoplasms/pathology [MeSH]
1000 Liste der Beteiligten
  1. https://frl.publisso.de/adhoc/uri/Q2hlcmVkYSwgSHJ5aG9yaWk=|https://frl.publisso.de/adhoc/uri/QmxlY2ttYW5uLCBBbm5hbGVu|https://frl.publisso.de/adhoc/uri/TWVuY2ssIEtlcnN0aW4=|https://frl.publisso.de/adhoc/uri/UGVyZXJhLUJlbCwgSsO6bGlh|https://frl.publisso.de/adhoc/uri/U3RlZ21haWVyLCBQaGlsaXA=|https://frl.publisso.de/adhoc/uri/QXVlciwgRmxvcmlhbg==|https://frl.publisso.de/adhoc/uri/S3JhbWVyLCBGcmFuaw==|https://frl.publisso.de/adhoc/uri/TGVoYSwgQW5kcmVhcw==|https://orcid.org/0000-0001-6509-2143
1000 Hinweis
  • DeepGreen-ID: 547edcb83f4547969b7a120cfb912e34 ; metadata provieded by: DeepGreen (https://www.oa-deepgreen.de/api/v1/), LIVIVO search scope life sciences (http://z3950.zbmed.de:6210/livivo), Crossref Unified Resource API (https://api.crossref.org/swagger-ui/index.html), to.science.api (https://frl.publisso.de/), ZDB JSON-API (beta) (https://zeitschriftendatenbank.de/api/), lobid - Dateninfrastruktur für Bibliotheken (https://lobid.org/resources/search)
1000 Label
1000 Dateien
1000 Objektart article
1000 Beschrieben durch
1000 @id frl:6465956.rdf
1000 Erstellt am 2023-11-16T17:40:36.353+0100
1000 Erstellt von 322
1000 beschreibt frl:6465956
1000 Zuletzt bearbeitet 2023-12-01T03:25:25.337+0100
1000 Objekt bearb. Fri Dec 01 03:25:25 CET 2023
1000 Vgl. frl:6465956
1000 Oai Id
  1. oai:frl.publisso.de:frl:6465956 |
1000 Sichtbarkeit Metadaten public
1000 Sichtbarkeit Daten public
1000 Gegenstand von

View source