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Development of a machine learning-based real-time location system to streamline acute endovascular intervention in acute stroke: a proof-of-concept study

Lim, DZ, Yeo, M, Dahan, A, Tahayori, B, Kok, HK, Abbasi-Rad, M, Maingard, J, Kutaiba, N, Russell, J, Thijs, V, Jhamb, A, Chandra, RV, Brooks, M, Barras, C and Asadi, Hamed 2021, Development of a machine learning-based real-time location system to streamline acute endovascular intervention in acute stroke: a proof-of-concept study, Journal of NeuroInterventional Surgery, pp. 1-5, doi: 10.1136/neurintsurg-2021-017858.

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Title Development of a machine learning-based real-time location system to streamline acute endovascular intervention in acute stroke: a proof-of-concept study
Author(s) Lim, DZ
Yeo, M
Dahan, A
Tahayori, B
Kok, HK
Abbasi-Rad, M
Maingard, J
Kutaiba, N
Russell, J
Thijs, V
Jhamb, A
Chandra, RV
Brooks, M
Barras, C
Asadi, HamedORCID iD for Asadi, Hamed orcid.org/0000-0003-2475-9727
Journal name Journal of NeuroInterventional Surgery
Start page 1
End page 5
Total pages 5
Publisher BMJ
Place of publication London, Eng.
Publication date 2021-08-23
ISSN 1759-8478
1759-8486
Keyword(s) stroke
technology
Science & Technology
Life Sciences & Biomedicine
Neuroimaging
Surgery
Neurosciences & Neurology
ISCHEMIC-STROKE
MANAGEMENT
Summary BackgroundDelivery of acute stroke endovascular intervention can be challenging because it requires complex coordination of patient and staff across many different locations. In this proof-of-concept paper we (a) examine whether WiFi fingerprinting is a feasible machine learning (ML)-based real-time location system (RTLS) technology that can provide accurate real-time location information within a hospital setting, and (b) hypothesize its potential application in streamlining acute stroke endovascular intervention.MethodsWe conducted our study in a comprehensive stroke care unit in Melbourne, Australia that offers a 24-hour mechanical thrombectomy service. ML algorithms including K-nearest neighbors, decision tree, random forest, support vector machine and ensemble models were trained and tested on a public WiFi dataset and the study hospital WiFi dataset. The hospital dataset was collected using the WiFi explorer software (version 3.0.2) on a MacBook Pro (AirPort Extreme, Broadcom BCM43x×1.0). Data analysis was implemented in the Python programming environment using the scikit-learn package. The primary statistical measure for algorithm performance was the accuracy of location prediction.ResultsML-based WiFi fingerprinting can accurately predict the different hospital zones relevant in the acute endovascular intervention workflow such as emergency department, CT room and angiography suite. The most accurate algorithms were random forest and support vector machine, both of which were 98% accurate. The algorithms remain robust when new data points, which were distinct from the training dataset, were tested.ConclusionsML-based RTLS technology using WiFi fingerprinting has the potential to streamline delivery of acute stroke endovascular intervention by efficiently tracking patient and staff movement during stroke calls.
Language eng
DOI 10.1136/neurintsurg-2021-017858
HERDC Research category C1 Refereed article in a scholarly journal
Persistent URL http://hdl.handle.net/10536/DRO/DU:30155185

Document type: Journal Article
Collections: Faculty of Health
School of Medicine
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