Matches in SemOpenAlex for { <https://semopenalex.org/work/W4212984821> ?p ?o ?g. }
- W4212984821 endingPage "2056" @default.
- W4212984821 startingPage "2056" @default.
- W4212984821 abstract "The “bovine” aortic arch is an anatomic variant consisting in a common origin of the innominate and left carotid artery (CILCA), associated with a greater risk of thoracic aortic diseases (aneurysms and dissections), stroke, and complications after endovascular procedures. CILCA can be detected by visual assessment of computed tomography (CT) chest scans, but it is rarely reported. We developed a deep learning (DL) segmentation-plus-classification system to automatically detect CILCA based on 302 CT studies acquired at 2 centers. One model (3D U-Net) was trained from scratch (supervised by manual segmentation), validated, and tested for the automatic segmentation of the aortic arch and supra-aortic vessels. Three DL architectures (ResNet50, DenseNet-201, and SqueezeNet), pre-trained over millions of common images, were trained, validated, and tested for the automatic classification of CILCA versus non-CILCA, supervised by radiologist’s classification. The 3D U-Net-plus-DenseNet-201 was found to be the best system (Dice index 0.912); its classification performance obtained from internal, independent testing on 126 patients gave a receiver operating characteristic area under the curve of 87.0%, sensitivity 66.7%, specificity 90.5%, positive predictive value 87.5%, negative predictive value 73.1%, positive likelihood ratio 7.0, and negative likelihood ratio 0.4. In conclusion, a combined DL system applied to chest CT scans was developed and proven to be an effective tool to detect individuals with “bovine” aortic arch with a low rate of false-positive findings." @default.
- W4212984821 created "2022-02-24" @default.
- W4212984821 creator A5005482399 @default.
- W4212984821 creator A5020509543 @default.
- W4212984821 creator A5022596811 @default.
- W4212984821 creator A5042706674 @default.
- W4212984821 creator A5050400557 @default.
- W4212984821 creator A5054222859 @default.
- W4212984821 creator A5058129605 @default.
- W4212984821 creator A5069238466 @default.
- W4212984821 creator A5073676087 @default.
- W4212984821 creator A5085694570 @default.
- W4212984821 creator A5087255310 @default.
- W4212984821 date "2022-02-16" @default.
- W4212984821 modified "2023-10-13" @default.
- W4212984821 title "A Combined Deep Learning System for Automatic Detection of “Bovine” Aortic Arch on Computed Tomography Scans" @default.
- W4212984821 cites W1941513853 @default.
- W4212984821 cites W1965984171 @default.
- W4212984821 cites W1967296654 @default.
- W4212984821 cites W2010954695 @default.
- W4212984821 cites W2011319197 @default.
- W4212984821 cites W2091108510 @default.
- W4212984821 cites W2109760655 @default.
- W4212984821 cites W2614247070 @default.
- W4212984821 cites W2783076452 @default.
- W4212984821 cites W2810349670 @default.
- W4212984821 cites W2810991588 @default.
- W4212984821 cites W2893693469 @default.
- W4212984821 cites W2899736836 @default.
- W4212984821 cites W2914363005 @default.
- W4212984821 cites W2962808681 @default.
- W4212984821 cites W2965240673 @default.
- W4212984821 cites W2980957147 @default.
- W4212984821 cites W2986874949 @default.
- W4212984821 cites W3009507531 @default.
- W4212984821 cites W3010945647 @default.
- W4212984821 cites W3013520191 @default.
- W4212984821 cites W3028231159 @default.
- W4212984821 cites W3036207761 @default.
- W4212984821 cites W3082794436 @default.
- W4212984821 cites W3090140268 @default.
- W4212984821 cites W3108953530 @default.
- W4212984821 cites W3113292936 @default.
- W4212984821 cites W3125981223 @default.
- W4212984821 cites W3155516990 @default.
- W4212984821 cites W3160999989 @default.
- W4212984821 cites W3192328252 @default.
- W4212984821 cites W3194390350 @default.
- W4212984821 cites W3199782692 @default.
- W4212984821 cites W4210316092 @default.
- W4212984821 cites W2916484180 @default.
- W4212984821 doi "https://doi.org/10.3390/app12042056" @default.
- W4212984821 hasPublicationYear "2022" @default.
- W4212984821 type Work @default.
- W4212984821 citedByCount "0" @default.
- W4212984821 crossrefType "journal-article" @default.
- W4212984821 hasAuthorship W4212984821A5005482399 @default.
- W4212984821 hasAuthorship W4212984821A5020509543 @default.
- W4212984821 hasAuthorship W4212984821A5022596811 @default.
- W4212984821 hasAuthorship W4212984821A5042706674 @default.
- W4212984821 hasAuthorship W4212984821A5050400557 @default.
- W4212984821 hasAuthorship W4212984821A5054222859 @default.
- W4212984821 hasAuthorship W4212984821A5058129605 @default.
- W4212984821 hasAuthorship W4212984821A5069238466 @default.
- W4212984821 hasAuthorship W4212984821A5073676087 @default.
- W4212984821 hasAuthorship W4212984821A5085694570 @default.
- W4212984821 hasAuthorship W4212984821A5087255310 @default.
- W4212984821 hasBestOaLocation W42129848211 @default.
- W4212984821 hasConcept C126322002 @default.
- W4212984821 hasConcept C126838900 @default.
- W4212984821 hasConcept C144494922 @default.
- W4212984821 hasConcept C154945302 @default.
- W4212984821 hasConcept C164705383 @default.
- W4212984821 hasConcept C2779980429 @default.
- W4212984821 hasConcept C2781285907 @default.
- W4212984821 hasConcept C41008148 @default.
- W4212984821 hasConcept C544519230 @default.
- W4212984821 hasConcept C58471807 @default.
- W4212984821 hasConcept C71924100 @default.
- W4212984821 hasConcept C89600930 @default.
- W4212984821 hasConcept C95922358 @default.
- W4212984821 hasConceptScore W4212984821C126322002 @default.
- W4212984821 hasConceptScore W4212984821C126838900 @default.
- W4212984821 hasConceptScore W4212984821C144494922 @default.
- W4212984821 hasConceptScore W4212984821C154945302 @default.
- W4212984821 hasConceptScore W4212984821C164705383 @default.
- W4212984821 hasConceptScore W4212984821C2779980429 @default.
- W4212984821 hasConceptScore W4212984821C2781285907 @default.
- W4212984821 hasConceptScore W4212984821C41008148 @default.
- W4212984821 hasConceptScore W4212984821C544519230 @default.
- W4212984821 hasConceptScore W4212984821C58471807 @default.
- W4212984821 hasConceptScore W4212984821C71924100 @default.
- W4212984821 hasConceptScore W4212984821C89600930 @default.
- W4212984821 hasConceptScore W4212984821C95922358 @default.
- W4212984821 hasIssue "4" @default.
- W4212984821 hasLocation W42129848211 @default.
- W4212984821 hasLocation W42129848212 @default.
- W4212984821 hasLocation W42129848213 @default.