2019
DOI: 10.1109/access.2019.2904311
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A Hyperdimensional Computing Framework for Analysis of Cardiorespiratory Synchronization During Paced Deep Breathing

Abstract: Autonomic function during deep breathing (DB) is normally scored based on the assumption that the heart rate is synchronized with the breathing. We have observed individuals with subtle arrhythmias during DB, where an autonomic function cannot be evaluated. This paper presents a novel method for analyzing cardiorespiratory synchronization: feature-based analysis of the similarity between heart rate and respiration using the principles of hyperdimensional computing. Heart rate and respiration signals were model… Show more

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Cited by 8 publications
(4 citation statements)
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“…In [220,221], BSC was applied to biomedical signals: heart rate and respiration. The need for comparing these signals emerged in the scope of a deep breathing test for assessing autonomic function.…”
Section: Similarity Estimation Of Biomedical Signalsmentioning
confidence: 99%
“…In [220,221], BSC was applied to biomedical signals: heart rate and respiration. The need for comparing these signals emerged in the scope of a deep breathing test for assessing autonomic function.…”
Section: Similarity Estimation Of Biomedical Signalsmentioning
confidence: 99%
“…Most of these works have been done for classification tasks (see a recent overview in [Ge and Parhi, 2020]). Examples of domains that have benefited from the application of VSA modeling are biomedical signal processing [Rahimi et al, 2019], [Kleyko et al, 2019b], gesture recognition [Rahimi et al, 2016a], , seizure onset detection and localization [Burrello et al, 2020], physical activity recognition [Rasanen and Kakouros, 2014], and fault isolation [Kleyko et al, 2018a] but VSA modeling can be useful for very generic classification tasks , [Diao et al, 2021]. The common feature of these works is a simple training process, which does not require the use of iterative optimization methods, and transparently learns with few training examples.…”
Section: Generality and Utilitymentioning
confidence: 99%
“…VSA [12], [15], [18]- [20] is a computing framework providing methods of representing and manipulating concepts and their meanings in a high-dimensional space. VSA finds its applications in, for example, cognitive architectures [21], natural language processing [22]- [24], biomedical signal processing [1], [25], approximation of conventional data structures [26], [27], and for classification tasks such as gesture recognition [1], [28], cyber threat detection [29], physical activity recognition [30], fault isolation [31], [32]. Examples of efforts on using VSA for other than classification learning tasks are using data HVs for clustering [33]- [35], semi-supervised learning [36], collaborative privacy-preserving learning [37], [38], multi-task learning [39], [40], distributed learning [41], [42].…”
Section: Related Workmentioning
confidence: 99%
“…The target nodes at each update were pre-selected to be (15,15) -for the first update, (20,20) -for the second update, (10,10) -for the third update, (5,5) -for the fourth update, (25,25) -for the fifth update and (5,25) -for the sixth update. These nodes are marked by red crosses when needed.…”
Section: Experiments 2: Iris Classification With Hyperseedmentioning
confidence: 99%