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1000 Titel
  • Three-dimensional deep learning with spatial erasing for unsupervised anomaly segmentation in brain MRI
1000 Autor/in
  1. Bengs, Marcel |
  2. Behrendt, Finn |
  3. Krüger, Julia |
  4. Opfer, Roland |
  5. Schlaefer, Alexander |
1000 Erscheinungsjahr 2021
1000 Publikationstyp
  1. Artikel |
1000 Online veröffentlicht
  • 2021-07-12
1000 Erschienen in
1000 Quellenangabe
  • 16(9):1413-1423
1000 Copyrightjahr
  • 2021
1000 Lizenz
1000 Verlagsversion
  • https://doi.org/10.1007/s11548-021-02451-9 |
  • https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8354959/ |
1000 Publikationsstatus
1000 Sprache der Publikation
1000 Abstract/Summary
  • Purpose!#!Brain Magnetic Resonance Images (MRIs) are essential for the diagnosis of neurological diseases. Recently, deep learning methods for unsupervised anomaly detection (UAD) have been proposed for the analysis of brain MRI. These methods rely on healthy brain MRIs and eliminate the requirement of pixel-wise annotated data compared to supervised deep learning. While a wide range of methods for UAD have been proposed, these methods are mostly 2D and only learn from MRI slices, disregarding that brain lesions are inherently 3D and the spatial context of MRI volumes remains unexploited.!##!Methods!#!We investigate whether using increased spatial context by using MRI volumes combined with spatial erasing leads to improved unsupervised anomaly segmentation performance compared to learning from slices. We evaluate and compare 2D variational autoencoder (VAE) to their 3D counterpart, propose 3D input erasing, and systemically study the impact of the data set size on the performance.!##!Results!#!Using two publicly available segmentation data sets for evaluation, 3D VAEs outperform their 2D counterpart, highlighting the advantage of volumetric context. Also, our 3D erasing methods allow for further performance improvements. Our best performing 3D VAE with input erasing leads to an average DICE score of 31.40% compared to 25.76% for the 2D VAE.!##!Conclusions!#!We propose 3D deep learning methods for UAD in brain MRI combined with 3D erasing and demonstrate that 3D methods clearly outperform their 2D counterpart for anomaly segmentation. Also, our spatial erasing method allows for further performance improvements and reduces the requirement for large data sets.
1000 Sacherschließung
lokal Original Article
lokal Magnetic Resonance Imaging [MeSH]
lokal Anomaly
lokal Brain/diagnostic imaging [MeSH]
lokal Brain MRI
lokal Deep Learning [MeSH]
lokal Humans [MeSH]
lokal Image Processing, Computer-Assisted [MeSH]
lokal Neuroimaging [MeSH]
lokal Segmentation
lokal 3D autoencoder
lokal Unsupervised
1000 Liste der Beteiligten
  1. https://orcid.org/0000-0002-2229-9547|https://frl.publisso.de/adhoc/uri/QmVocmVuZHQsIEZpbm4=|https://frl.publisso.de/adhoc/uri/S3LDvGdlciwgSnVsaWE=|https://frl.publisso.de/adhoc/uri/T3BmZXIsIFJvbGFuZA==|https://frl.publisso.de/adhoc/uri/U2NobGFlZmVyLCBBbGV4YW5kZXI=
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  • DeepGreen-ID: e378b19c7e614df0a1a540845d4342c3 ; 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)
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1000 Erstellt am 2023-04-27T13:28:01.628+0200
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1000 Zuletzt bearbeitet Fri Oct 20 12:56:13 CEST 2023
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1000 Oai Id
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