Please use this identifier to cite or link to this item: https://ahro.austin.org.au/austinjspui/handle/1/32723
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dc.contributor.authorYeo, Melissa-
dc.contributor.authorTahayori, Bahman-
dc.contributor.authorKok, Hong Kuan-
dc.contributor.authorMaingard, Julian-
dc.contributor.authorKutaiba, Numan-
dc.contributor.authorRussell, Jeremy H-
dc.contributor.authorThijs, Vincent N-
dc.contributor.authorJhamb, Ashu-
dc.contributor.authorChandra, Ronil V-
dc.contributor.authorBrooks, Mark-
dc.contributor.authorBarras, Christen D-
dc.contributor.authorAsadi, Hamed-
dc.date2023-
dc.date.accessioned2023-04-21T00:55:31Z-
dc.date.available2023-04-21T00:55:31Z-
dc.date.issued2023-04-10-
dc.identifier.citationEuropean Radiology Experimental 2023; 7(1)en_US
dc.identifier.issn2509-9280-
dc.identifier.urihttps://ahro.austin.org.au/austinjspui/handle/1/32723-
dc.description.abstractDeep learning (DL) algorithms are playing an increasing role in automatic medical image analysis. To evaluate the performance of a DL model for the automatic detection of intracranial haemorrhage and its subtypes on non-contrast CT (NCCT) head studies and to compare the effects of various preprocessing and model design implementations. The DL algorithm was trained and externally validated on open-source, multi-centre retrospective data containing radiologist-annotated NCCT head studies. The training dataset was sourced from four research institutions across Canada, the USA and Brazil. The test dataset was sourced from a research centre in India. A convolutional neural network (CNN) was used, with its performance compared against similar models with additional implementations: (1) a recurrent neural network (RNN) attached to the CNN, (2) preprocessed CT image-windowed inputs and (3) preprocessed CT image-concatenated inputs. The area under the receiver operating characteristic curve (AUC-ROC) and microaveraged precision (mAP) score were used to evaluate and compare model performances. The training and test datasets contained 21,744 and 491 NCCT head studies, respectively, with 8,882 (40.8%) and 205 (41.8%) positive for intracranial haemorrhage. Implementation of preprocessing techniques and the CNN-RNN framework increased mAP from 0.77 to 0.93 and increased AUC-ROC [95% confidence intervals] from 0.854 [0.816-0.889] to 0.966 [0.951-0.980] (p-value = 3.91 × 10-12). The deep learning model accurately detected intracranial haemorrhage and improved in performance following specific implementation techniques, demonstrating clinical potential as a decision support tool and an automated system to improve radiologist workflow efficiency. • The deep learning model detected intracranial haemorrhages on computed tomography with high accuracy. • Image preprocessing, such as windowing, plays a large role in improving deep learning model performance. • Implementations which enable an analysis of interslice dependencies can improve deep learning model performance. • Visual saliency maps can facilitate explainable artificial intelligence systems. • Deep learning within a triage system may expedite earlier intracranial haemorrhage detection.en_US
dc.language.isoeng-
dc.subjectArtificial intelligenceen_US
dc.subjectDeep learningen_US
dc.subjectIntracranial haemorrhagesen_US
dc.subjectRadiographic image interpretation (computer-assisted)en_US
dc.subjectTomography (x-ray computed)en_US
dc.titleEvaluation of techniques to improve a deep learning algorithm for the automatic detection of intracranial haemorrhage on CT head imaging.en_US
dc.typeJournal Articleen_US
dc.identifier.journaltitleEuropean Radiology Experimentalen_US
dc.identifier.affiliationMelbourne Medical School, The University of Melbourne, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationDepartment of Biomedical Engineering, The University of Melbourne, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationInterventional Radiology Service, Department of Radiology, Northern Health, Epping, VIC, Australia.;School of Medicine, Faculty of Health, Deakin University, Burwood, VIC, Australia.en_US
dc.identifier.affiliationSchool of Medicine, Faculty of Health, Deakin University, Burwood, VIC, Australia.;Interventional Neuroradiology Unit, Monash Health, Clayton, VIC, Australia.;Faculty of Medicine Nursing and Health Sciences, Monash University, Clayton, VIC, Australia.;Department of Radiology, St Vincent's Hospital, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationRadiologyen_US
dc.identifier.affiliationNeurosurgeryen_US
dc.identifier.affiliationThe Florey Institute of Neuroscience and Mental Healthen_US
dc.identifier.affiliationDepartment of Radiology, St Vincent's Hospital, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationInterventional Neuroradiology Unit, Monash Health, Clayton, VIC, Australia.;Faculty of Medicine Nursing and Health Sciences, Monash University, Clayton, VIC, Australia.en_US
dc.identifier.affiliationMelbourne Medical School, The University of Melbourne, Melbourne, VIC, Australia.;School of Medicine, Faculty of Health, Deakin University, Burwood, VIC, Australia.;Stroke Theme, Florey Institute of Neuroscience and Mental Health, Melbourne, VIC, Australia.;Interventional Neuroradiology Service, Department of Radiology, Austin Hospital, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationSouth Australian Institute of Health and Medical Research, Adelaide, South Australia, Australia.;School of Medicine, The University of Adelaide, Adelaide, South Australia, Australia.en_US
dc.identifier.affiliationMelbourne Medical School, The University of Melbourne, Melbourne, VIC, Australia.;School of Medicine, Faculty of Health, Deakin University, Burwood, VIC, Australia.;Interventional Neuroradiology Unit, Monash Health, Clayton, VIC, Australia.;Department of Radiology, St Vincent's Hospital, Melbourne, VIC, Australia.;Stroke Theme, Florey Institute of Neuroscience and Mental Health, Melbourne, VIC, Australia.;Interventional Neuroradiology Service, Department of Radiology, Austin Hospital, Melbourne, VIC, Australia.en_US
dc.identifier.affiliationIBM Research Australia, Melbourne, VIC, Australia.en_US
dc.identifier.doi10.1186/s41747-023-00330-3en_US
dc.type.contentTexten_US
dc.identifier.orcid0000-0001-5568-7303en_US
dc.identifier.pubmedid37032417-
dc.description.volume7-
dc.description.issue1-
dc.description.startpage17-
dc.subject.meshtermssecondaryTomography, X-Ray Computed/methods-
dc.subject.meshtermssecondaryIntracranial Hemorrhages/diagnostic imaging-
local.name.researcherAsadi, Hamed
item.cerifentitytypePublications-
item.grantfulltextnone-
item.languageiso639-1en-
item.fulltextNo Fulltext-
item.openairetypeJournal Article-
item.openairecristypehttp://purl.org/coar/resource_type/c_18cf-
crisitem.author.deptRadiology-
crisitem.author.deptNeurosurgery-
crisitem.author.deptNeurology-
crisitem.author.deptThe Florey Institute of Neuroscience and Mental Health-
crisitem.author.deptRadiology-
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