Your browser does not allow JavaScript!
JavaScript is necessary for the proper functioning of this website. Please enable JavaScript or use a modern browser.
Repository of the University of Ljubljana
Open Science Slovenia
Open Science
DiKUL
slv
|
eng
Search
Advanced
New in RUL
About RUL
In numbers
Help
Sign in
Details
Predicting vasovagal syncope during head-up tilt test : three machine learning approaches
ID
Klemenc, Matjaž
(
Author
),
ID
Pellarini, Daniel
(
Author
),
ID
Papič, Aleš
(
Author
),
ID
Poličar, Pavlin Gregor
(
Author
),
ID
Štepec, Dejan
(
Author
),
ID
Bosnić, Zoran
(
Author
)
PDF - Presentation file,
Download
(745,77 KB)
MD5: 35682C55BBA7C05162A9D3410FA63A35
URL - Source URL, Visit
https://www.frontiersin.org/journals/neuroinformatics/articles/10.3389/fninf.2026.1740746/full
Image galllery
Abstract
Introduction: Syncope prediction during head-up tilt testing (HUTT) remains challenging due to the complex interplay between autonomic and cardiovascular responses. This study investigates three computational approaches to forecast HUTT outcomes using continuous electrocardiogram (ECG) and blood pressure recordings from 105 patients with a history of syncope who underwent HUTT following a modified Italian protocol.Methods: Beat-to-beat heart rate and blood pressure signals were analyzed using: (1) gradient boosting models applied to frequency-domain features of heart rate variability (HRV); (2) an analytical modeling approach employing k-nearest neighbors (kNN) regression on transformed physiological signals; and (3) an incremental neural network model.Results and Discussion: Among these, the kNN regression approach provided the most consistent short-term forecasting of syncope probability, maintaining mean absolute errors below 0.13 for predictions up to 300 s before syncope onset. Gradient boosting models achieved promising classification performance with ROC AUC values up to 0.70, while the incremental network yielded moderate results. These findings demonstrate that data-driven analysis of early physiological changes can enable short-term forecasting of vasovagal syncope during HUTT, supporting the development of predictive tools for clinical risk assessment and personalized syncope management.
Language:
English
Keywords:
analytical modeling
,
head-up tilt test
,
heart rate variability
,
machine learning
,
vasovagal syncope
Work type:
Article
Typology:
1.01 - Original Scientific Article
Organization:
FRI - Faculty of Computer and Information Science
Publication status:
Published
Publication version:
Version of Record
Year:
2026
Number of pages:
10 str.
Numbering:
Vol. 20
PID:
20.500.12556/RUL-184043
UDC:
004.85:616.12-073
ISSN on article:
1662-5196
DOI:
10.3389/fninf.2026.1740746
COBISS.SI-ID:
280898307
Publication date in RUL:
24.06.2026
Views:
107
Downloads:
89
Metadata:
Cite this work
Plain text
BibTeX
EndNote XML
EndNote/Refer
RIS
ABNT
ACM Ref
AMA
APA
Chicago 17th Author-Date
Harvard
IEEE
ISO 690
MLA
Vancouver
:
Copy citation
Share:
Record is a part of a journal
Title:
Frontiers in neuroinformatics
Shortened title:
Front. neuroinform.
Publisher:
Frontiers Media S.A.
ISSN:
1662-5196
COBISS.SI-ID:
523096089
Licences
License:
CC BY 4.0, Creative Commons Attribution 4.0 International
Link:
http://creativecommons.org/licenses/by/4.0/
Description:
This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.
Secondary language
Language:
Slovenian
Keywords:
analitično modeliranje
,
tilt test
,
sprememba srčne frekvence
,
strojno učenje
,
sinkopa
Similar documents
Similar works from RUL:
Similar works from other Slovenian collections:
Back