A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients

Abstract Background We present a multiplex network model for the analysis of Intracranial Pressure (ICP) and Heart Rate (HR) behaviour after severe brain traumatic injuries in pediatric patients. The ICP monitoring is of vital importance for checking life threathening conditions, and understanding t...

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Main Authors: Giovanna Maria Dimitri, Shruti Agrawal, Adam Young, Joseph Donnelly, Xiuyun Liu, Peter Smielewski, Peter Hutchinson, Marek Czosnyka, Pietro Lió, Christina Haubrich
Format: Article
Language:English
Published: SpringerOpen 2017-08-01
Series:Applied Network Science
Subjects:
ICP
Online Access:http://link.springer.com/article/10.1007/s41109-017-0050-3
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spelling doaj-050dcc88c5454f2c919954e1a121f46e2020-11-24T22:06:40ZengSpringerOpenApplied Network Science2364-82282017-08-012111210.1007/s41109-017-0050-3A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patientsGiovanna Maria Dimitri0Shruti Agrawal1Adam Young2Joseph Donnelly3Xiuyun Liu4Peter Smielewski5Peter Hutchinson6Marek Czosnyka7Pietro Lió8Christina Haubrich9Computer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeComputer Laboratory, University of CambridgeAbstract Background We present a multiplex network model for the analysis of Intracranial Pressure (ICP) and Heart Rate (HR) behaviour after severe brain traumatic injuries in pediatric patients. The ICP monitoring is of vital importance for checking life threathening conditions, and understanding the behaviour of these parameters is crucial for a successful intervention of the clinician. Our own observations, exhibit cross-talks interaction events happening between HR and ICP, i.e. transients in which both the ICP and the HR showed an increase of 20% with respect to their baseline value in the window considered. We used a complex event processing methodology, to investigate the relationship between HR and ICP, after traumatic brain injuries (TBI). In particular our goal has been to analyse events of simultaneous increase by HR and ICP (i.e. cross-talks), modelling the two time series as a unique multiplex network system (Lacasa et al., Sci Rep 5:15508-15508, 2014). Methods and data We used a complex network approach based on visibility graphs (Lacasa et al., Sci Rep 5:15508-15508, 2014) to model and study the behaviour of our system and to investigate how and if network topological measures can give information on the possible detection of crosstalks events taking place in the system. Each time series was converted as a layer in a multiplex network. We therefore studied the network structure, focusing on the behaviour of the two time series in the cross-talks events windows detected. We used a dataset of 27 TBI pediatric patients, admitted to Addenbrooke’s Hospital, Cambridge, Pediatric Intensive Care Unit (PICU) between August 2012 and December 2014. Results Following a preliminary statistical exploration of the two time series of ICP and HR, we analysed the multiplex network proposed, focusing on two standard topological network metrics: the mutual interaction, and the average edge overlap (Lacasa et al., Sci Rep 5:15508-15508, 2014). We compared results obtained for these two indicators, considering windows in which a cross talks event between HR and ICP was detected with windows in which cross talks events were not present. The analysis of such metrics gave us interesting insights on the time series behaviour. More specifically we observed an increase in the value of the mutual interaction in the case of cross talk as compared to non cross talk. This seems to suggest that mutual interaction could be a potentially interesting “marker” for cross talks events.http://link.springer.com/article/10.1007/s41109-017-0050-3Multiplex time series networkVisibility graphICP
collection DOAJ
language English
format Article
sources DOAJ
author Giovanna Maria Dimitri
Shruti Agrawal
Adam Young
Joseph Donnelly
Xiuyun Liu
Peter Smielewski
Peter Hutchinson
Marek Czosnyka
Pietro Lió
Christina Haubrich
spellingShingle Giovanna Maria Dimitri
Shruti Agrawal
Adam Young
Joseph Donnelly
Xiuyun Liu
Peter Smielewski
Peter Hutchinson
Marek Czosnyka
Pietro Lió
Christina Haubrich
A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
Applied Network Science
Multiplex time series network
Visibility graph
ICP
author_facet Giovanna Maria Dimitri
Shruti Agrawal
Adam Young
Joseph Donnelly
Xiuyun Liu
Peter Smielewski
Peter Hutchinson
Marek Czosnyka
Pietro Lió
Christina Haubrich
author_sort Giovanna Maria Dimitri
title A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
title_short A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
title_full A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
title_fullStr A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
title_full_unstemmed A multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
title_sort multiplex network approach for the analysis of intracranial pressure and heart rate data in traumatic brain injured patients
publisher SpringerOpen
series Applied Network Science
issn 2364-8228
publishDate 2017-08-01
description Abstract Background We present a multiplex network model for the analysis of Intracranial Pressure (ICP) and Heart Rate (HR) behaviour after severe brain traumatic injuries in pediatric patients. The ICP monitoring is of vital importance for checking life threathening conditions, and understanding the behaviour of these parameters is crucial for a successful intervention of the clinician. Our own observations, exhibit cross-talks interaction events happening between HR and ICP, i.e. transients in which both the ICP and the HR showed an increase of 20% with respect to their baseline value in the window considered. We used a complex event processing methodology, to investigate the relationship between HR and ICP, after traumatic brain injuries (TBI). In particular our goal has been to analyse events of simultaneous increase by HR and ICP (i.e. cross-talks), modelling the two time series as a unique multiplex network system (Lacasa et al., Sci Rep 5:15508-15508, 2014). Methods and data We used a complex network approach based on visibility graphs (Lacasa et al., Sci Rep 5:15508-15508, 2014) to model and study the behaviour of our system and to investigate how and if network topological measures can give information on the possible detection of crosstalks events taking place in the system. Each time series was converted as a layer in a multiplex network. We therefore studied the network structure, focusing on the behaviour of the two time series in the cross-talks events windows detected. We used a dataset of 27 TBI pediatric patients, admitted to Addenbrooke’s Hospital, Cambridge, Pediatric Intensive Care Unit (PICU) between August 2012 and December 2014. Results Following a preliminary statistical exploration of the two time series of ICP and HR, we analysed the multiplex network proposed, focusing on two standard topological network metrics: the mutual interaction, and the average edge overlap (Lacasa et al., Sci Rep 5:15508-15508, 2014). We compared results obtained for these two indicators, considering windows in which a cross talks event between HR and ICP was detected with windows in which cross talks events were not present. The analysis of such metrics gave us interesting insights on the time series behaviour. More specifically we observed an increase in the value of the mutual interaction in the case of cross talk as compared to non cross talk. This seems to suggest that mutual interaction could be a potentially interesting “marker” for cross talks events.
topic Multiplex time series network
Visibility graph
ICP
url http://link.springer.com/article/10.1007/s41109-017-0050-3
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