001     272873
005     20241108164738.0
024 7 _ |a 10.1002/acn3.52185
|2 doi
024 7 _ |a pmid:39180278
|2 pmid
024 7 _ |a pmc:PMC11514938
|2 pmc
037 _ _ |a DZNE-2024-01290
041 _ _ |a English
082 _ _ |a 610
100 1 _ |a Shirvani Samani, Omid
|0 P:(DE-2719)9002936
|b 0
|e First author
|u dzne
245 _ _ |a Machine learning models for outcome prediction in thrombectomy for large anterior vessel occlusion.
260 _ _ |a Chichester [u.a.]
|c 2024
|b Wiley
336 7 _ |a article
|2 DRIVER
336 7 _ |a Output Types/Journal article
|2 DataCite
336 7 _ |a Journal Article
|b journal
|m journal
|0 PUB:(DE-HGF)16
|s 1731077645_3251
|2 PUB:(DE-HGF)
336 7 _ |a ARTICLE
|2 BibTeX
336 7 _ |a JOURNAL_ARTICLE
|2 ORCID
336 7 _ |a Journal Article
|0 0
|2 EndNote
520 _ _ |a Predicting long-term functional outcomes shortly after a stroke is challenging, even for experienced neurologists. Therefore, we aimed to evaluate multiple machine learning models and the importance of clinical/radiological parameters to develop a model that balances minimal input data with reliable predictions of long-term functional independency.Our study utilized data from the German Stroke Registry on patients with large anterior vessel occlusion who underwent endovascular treatment. We trained seven machine learning models using 30 parameters from the first day postadmission to predict a modified Ranking Scale of 0-2 at 90 days poststroke. Model performance was assessed using a 20-fold cross-validation and one-sided Wilcoxon rank-sum tests. Key features were identified through backward feature selection.We included 7485 individuals with a median age of 75 years and a median NIHSS score at admission of 14 in our analysis. Our Deep Neural Network model demonstrated the best performance among all models including data from 24 h postadmission. Backward feature selection identified the seven most important features to be NIHSS after 24 h, age, modified Ranking Scale after 24 h, premorbid modified Ranking Scale, intracranial hemorrhage within 24 h, intravenous thrombolysis, and NIHSS at admission. Narrowing the Deep Neural Network model's input data to these features preserved the high performance with an AUC of 0.9 (CI: 0.89-0.91).Our Deep Neural Network model, trained on over 7000 patients, predicts 90-day functional independence using only seven clinical/radiological features from the first day postadmission, demonstrating both high accuracy and practicality for clinical implementation on stroke units.
536 _ _ |a 353 - Clinical and Health Care Research (POF4-353)
|0 G:(DE-HGF)POF4-353
|c POF4-353
|f POF IV
|x 0
536 _ _ |a 354 - Disease Prevention and Healthy Aging (POF4-354)
|0 G:(DE-HGF)POF4-354
|c POF4-354
|f POF IV
|x 1
588 _ _ |a Dataset connected to CrossRef, PubMed, , Journals: pub.dzne.de
650 _ 2 |a Humans
|2 MeSH
650 _ 2 |a Aged
|2 MeSH
650 _ 2 |a Male
|2 MeSH
650 _ 2 |a Female
|2 MeSH
650 _ 2 |a Machine Learning
|2 MeSH
650 _ 2 |a Thrombectomy: methods
|2 MeSH
650 _ 2 |a Middle Aged
|2 MeSH
650 _ 2 |a Aged, 80 and over
|2 MeSH
650 _ 2 |a Registries
|2 MeSH
650 _ 2 |a Endovascular Procedures: methods
|2 MeSH
650 _ 2 |a Ischemic Stroke: surgery
|2 MeSH
650 _ 2 |a Outcome Assessment, Health Care
|2 MeSH
650 _ 2 |a Prognosis
|2 MeSH
650 _ 2 |a Stroke
|2 MeSH
700 1 _ |a Warnat-Herresthal, Stefanie
|0 P:(DE-2719)9001511
|b 1
|u dzne
700 1 _ |a Savchuk, Ivan
|0 P:(DE-2719)9002246
|b 2
|u dzne
700 1 _ |a Bode, Felix
|0 P:(DE-2719)2811949
|b 3
|u dzne
700 1 _ |a Nitsch, Louisa
|b 4
700 1 _ |a Stösser, Sebastian
|b 5
700 1 _ |a Ebrahimi, Taraneh
|0 P:(DE-2719)9003076
|b 6
|u dzne
700 1 _ |a von Danwitz, Niklas
|0 P:(DE-2719)9003408
|b 7
|u dzne
700 1 _ |a Asperger, Hannah
|0 P:(DE-2719)9003181
|b 8
|u dzne
700 1 _ |a Layer, Julia
|b 9
700 1 _ |a Meissner, Julius
|b 10
700 1 _ |a Thielscher, Christian
|0 P:(DE-2719)9002386
|b 11
|u dzne
700 1 _ |a Dorn, Franziska
|b 12
700 1 _ |a Lehnen, Nils
|b 13
700 1 _ |a Schultze, Joachim L
|0 P:(DE-2719)2811660
|b 14
|u dzne
700 1 _ |a Petzold, Gabor C
|0 P:(DE-2719)2810273
|b 15
|u dzne
700 1 _ |a Weller, Johannes M
|b 16
700 1 _ |a Investigators, GSR-ET
|b 17
|e Collaboration Author
700 1 _ |a Alegiani, Anna
|b 18
|e Contributor
700 1 _ |a Berrouschot, Jörg
|b 19
|e Contributor
700 1 _ |a Boeck-Behrens, Tobias
|b 20
|e Contributor
700 1 _ |a Bohner, Georg
|b 21
|e Contributor
700 1 _ |a Borggrefe, Jan
|b 22
|e Contributor
700 1 _ |a Bormann, Albrecht
|b 23
|e Contributor
700 1 _ |a Braun, Michael
|b 24
|e Contributor
700 1 _ |a Dorn, Franziska
|b 25
|e Contributor
700 1 _ |a Eckert, Bernd
|b 26
|e Contributor
700 1 _ |a Ernemann, Ulrike
|b 27
|e Contributor
700 1 _ |a Ernst, Marielle
|b 28
|e Contributor
700 1 _ |a Fiehler, Jens
|b 29
|e Contributor
700 1 _ |a Gröschel, Klaus
|b 30
|e Contributor
700 1 _ |a Hattingen, Jörg
|b 31
|e Contributor
700 1 _ |a Hamann, Gerhard
|b 32
|e Contributor
700 1 _ |a Heitkamp, Christian
|b 33
|e Contributor
700 1 _ |a Henn, Karl-Heinz
|b 34
|e Contributor
700 1 _ |a Keil, Fee
|b 35
|e Contributor
700 1 _ |a Kellert, Lars
|0 P:(DE-2719)9003034
|b 36
|e Contributor
|u dzne
700 1 _ |a Leischner, Hannes
|b 37
|e Contributor
700 1 _ |a Ludolph, Alexander
|b 38
|e Contributor
700 1 _ |a Maier, Ilko
|b 39
|e Contributor
700 1 _ |a Nikoubashman, Omid
|b 40
|e Contributor
700 1 _ |a Nolte, Christian
|0 P:(DE-2719)9000234
|b 41
|e Contributor
700 1 _ |a Petersen, Martina
|b 42
|e Contributor
700 1 _ |a Poli, Sven
|b 43
|e Contributor
700 1 _ |a Petzold, Gabor C
|0 P:(DE-2719)2810273
|b 44
|e Contributor
|u dzne
700 1 _ |a Reich, Arno
|b 45
|e Contributor
700 1 _ |a Röther, Joachim
|b 46
|e Contributor
700 1 _ |a Riedel, Christian
|b 47
|e Contributor
700 1 _ |a Schäfer, Jan Hendrik
|b 48
|e Contributor
700 1 _ |a Schell, Maximilian
|b 49
|e Contributor
700 1 _ |a Schellinger, Peter
|b 50
|e Contributor
700 1 _ |a Siebert, Eberhard
|b 51
|e Contributor
700 1 _ |a Stögbauer, Florian
|b 52
|e Contributor
700 1 _ |a Thomalla, Götz
|b 53
|e Contributor
700 1 _ |a Tiedt, Steffen
|b 54
|e Contributor
700 1 _ |a Trumm, Christoph
|b 55
|e Contributor
700 1 _ |a Uphaus, Timo
|b 56
|e Contributor
700 1 _ |a Wunderlich, Silke
|b 57
|e Contributor
773 _ _ |a 10.1002/acn3.52185
|g Vol. 11, no. 10, p. 2696 - 2706
|0 PERI:(DE-600)2740696-9
|n 10
|p 2696 - 2706
|t Annals of Clinical and Translational Neurology
|v 11
|y 2024
|x 2328-9503
856 4 _ |y OpenAccess
|u https://pub.dzne.de/record/272873/files/DZNE-2024-01290.pdf
856 4 _ |y OpenAccess
|x pdfa
|u https://pub.dzne.de/record/272873/files/DZNE-2024-01290.pdf?subformat=pdfa
909 C O |o oai:pub.dzne.de:272873
|p openaire
|p open_access
|p VDB
|p driver
|p dnbdelivery
910 1 _ |a Deutsches Zentrum für Neurodegenerative Erkrankungen
|0 I:(DE-588)1065079516
|k DZNE
|b 0
|6 P:(DE-2719)9002936
910 1 _ |a Deutsches Zentrum für Neurodegenerative Erkrankungen
|0 I:(DE-588)1065079516
|k DZNE
|b 1
|6 P:(DE-2719)9001511
910 1 _ |a Deutsches Zentrum für Neurodegenerative Erkrankungen
|0 I:(DE-588)1065079516
|k DZNE
|b 2
|6 P:(DE-2719)9002246
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 3
|6 P:(DE-2719)2811949
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 6
|6 P:(DE-2719)9003076
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 7
|6 P:(DE-2719)9003408
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 8
|6 P:(DE-2719)9003181
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 11
|6 P:(DE-2719)9002386
910 1 _ |a Deutsches Zentrum für Neurodegenerative Erkrankungen
|0 I:(DE-588)1065079516
|k DZNE
|b 14
|6 P:(DE-2719)2811660
910 1 _ |a Deutsches Zentrum für Neurodegenerative Erkrankungen
|0 I:(DE-588)1065079516
|k DZNE
|b 15
|6 P:(DE-2719)2810273
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 36
|6 P:(DE-2719)9003034
910 1 _ |a External Institute
|0 I:(DE-HGF)0
|k Extern
|b 44
|6 P:(DE-2719)2810273
913 1 _ |a DE-HGF
|b Gesundheit
|l Neurodegenerative Diseases
|1 G:(DE-HGF)POF4-350
|0 G:(DE-HGF)POF4-353
|3 G:(DE-HGF)POF4
|2 G:(DE-HGF)POF4-300
|4 G:(DE-HGF)POF
|v Clinical and Health Care Research
|x 0
913 1 _ |a DE-HGF
|b Gesundheit
|l Neurodegenerative Diseases
|1 G:(DE-HGF)POF4-350
|0 G:(DE-HGF)POF4-354
|3 G:(DE-HGF)POF4
|2 G:(DE-HGF)POF4-300
|4 G:(DE-HGF)POF
|v Disease Prevention and Healthy Aging
|x 1
914 1 _ |y 2024
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0200
|2 StatID
|b SCOPUS
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0160
|2 StatID
|b Essential Science Indicators
|d 2023-08-22
915 _ _ |a Creative Commons Attribution CC BY 4.0
|0 LIC:(DE-HGF)CCBY4
|2 HGFVOC
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0600
|2 StatID
|b Ebsco Academic Search
|d 2023-08-22
915 _ _ |a JCR
|0 StatID:(DE-HGF)0100
|2 StatID
|b ANN CLIN TRANSL NEUR : 2022
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0501
|2 StatID
|b DOAJ Seal
|d 2021-04-16T15:13:11Z
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0500
|2 StatID
|b DOAJ
|d 2021-04-16T15:13:11Z
915 _ _ |a WoS
|0 StatID:(DE-HGF)0113
|2 StatID
|b Science Citation Index Expanded
|d 2023-08-22
915 _ _ |a Fees
|0 StatID:(DE-HGF)0700
|2 StatID
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0150
|2 StatID
|b Web of Science Core Collection
|d 2023-08-22
915 _ _ |a OpenAccess
|0 StatID:(DE-HGF)0510
|2 StatID
915 _ _ |a Peer Review
|0 StatID:(DE-HGF)0030
|2 StatID
|b ASC
|d 2023-08-22
915 _ _ |a Article Processing Charges
|0 StatID:(DE-HGF)0561
|2 StatID
|d 2023-08-22
915 _ _ |a IF >= 5
|0 StatID:(DE-HGF)9905
|2 StatID
|b ANN CLIN TRANSL NEUR : 2022
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0300
|2 StatID
|b Medline
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0320
|2 StatID
|b PubMed Central
|d 2023-08-22
915 _ _ |a DBCoverage
|0 StatID:(DE-HGF)0199
|2 StatID
|b Clarivate Analytics Master Journal List
|d 2023-08-22
920 1 _ |0 I:(DE-2719)1013020
|k AG Petzold
|l Vascular Neurology
|x 0
920 1 _ |0 I:(DE-2719)1011101
|k Patient Studies (Bonn)
|l Patient Studies (Bonn)
|x 1
920 1 _ |0 I:(DE-2719)1013038
|k AG Schultze
|l Clinical Single Cell Omics (CSCO) / Systems Medicine
|x 2
980 _ _ |a journal
980 _ _ |a VDB
980 _ _ |a UNRESTRICTED
980 _ _ |a I:(DE-2719)1013020
980 _ _ |a I:(DE-2719)1011101
980 _ _ |a I:(DE-2719)1013038
980 1 _ |a FullTexts


LibraryCollectionCLSMajorCLSMinorLanguageAuthor
Marc 21