Keyword search (4,164 papers available)

"rhythm" Keyword-tagged Publications:

Title Authors PubMed ID
1 Habitual napping in older adults is accompanied by altered heat-loss rhythms across the circadian cycle and reduced coupling between pre-sleep thermoregulatory dynamics and sleep initiation Dourte M; Hammad G; de Haan S; Deantoni M; Reyt M; Baillet M; Lesoinne A; Muto V; Collette F; Vandewalle G; Peigneux P; Cajochen C; Schmidt C; 41797810
PSYCHOLOGY
2 Smart Optogenetics for Real-Time Automated Control of Cardiac Electrical Activity Deng S; Harlaar N; Zhang J; Dekker SO; Kudryashova NN; Zhou H; Bart CI; Jin T; Derevyanko G; van Driel W; Panfilov AV; Poelma RH; de Vries AAF; Zhang G; De Coster T; Pijnappels DA; 41684280
CHEMBIOCHEM
3 Tuned to walk: cue type, beat perception, and gait dynamics during rhythmic stimulation in aging Parker A; Dalla Bella S; Penhune VB; Young L; Grenet D; Li KZH; 41661338
PSYCHOLOGY
4 Imagining the beat: causal evidence for dorsal premotor cortex (dPMC) role in beat imagery via transcranial magnetic stimulation (TMS) Lazzari G; Ferreri L; Cattaneo L; Penhune V; Lega C; 41248776
PSYCHOLOGY
5 Body maps of the sensation of musical groove Witek MAG; Matthews TE; Bechtold TA; Penhune V; 41064243
PSYCHOLOGY
6 Topography of Functional Organization of Beat Perception in Human Premotor Cortex: Causal Evidence From a Transcranial Magnetic Stimulation (TMS) Study Lazzari G; Costantini G; La Rocca S; Massironi A; Cattaneo L; Penhune V; Lega C; 40344601
PSYCHOLOGY
7 An Effective and Fast Model for Characterization of Cardiac Arrhythmia and Congestive Heart Failure Lahmiri S; Bekiros S; 40218199
JMSB
8 Challenges and Approaches in the Study of Neural Entrainment Duecker K; Doelling KB; Breska A; Coffey EBJ; Sivarao DV; Zoefel B; 39358026
CONCORDIA
9 Dopamine dysregulation in Parkinson's disease flattens the pleasurable urge to move to musical rhythms Pando-Naude V; Matthews TE; Højlund A; Jakobsen S; Østergaard K; Johnsen E; Garza-Villarreal EA; Witek MAG; Penhune V; Vuust P; 37724707
PSYCHOLOGY
10 Respiratory sinus arrhythmia, negative social interactions, and fluctuations in unmet interpersonal needs: A daily diary study MacNeil S; Renaud J; Gouin JP; 37208985
PSYCHOLOGY
11 Respiratory sinus arrhythmia moderates the interpersonal consequences of brooding rumination Caldwell W; MacNeil S; Wrosch C; McGrath JJ; Dang-Vu TT; Morin AJS; Gouin JP; 36844897
HKAP
12 Sleep disorders in patients with a neurocognitive disorder C Moderie 34916075
PERFORM
13 Maturation of temporal saccade prediction from childhood to adulthood: predictive saccades, reduced pupil size and blink synchronization Calancie OG; Brien DC; Huang J; Coe BC; Booij L; Khalid-Khan S; Munoz DP; 34759032
PSYCHOLOGY
14 In utero Exposure to Valproic-Acid Alters Circadian Organisation and Clock-Gene Expression: Implications for Autism Spectrum Disorders Ferraro S; de Zavalia N; Belforte N; Amir S; 34650409
CSBN
15 Heart rate variability moderates the between- and within-person associations between daily stress and negative affect da Estrela C; MacNeil S; Gouin JP; 33556470
PERFORM
16 Cerebellar Cortex 4-12 Hz Oscillations and Unit Phase Relation in the Awake Rat. Lévesque M; Gao H; Southward C; Langlois JMP; Léna C; Courtemanche R; 33240052
HKAP
17 The phenotype associated with variants in TANGO2 may be explained by a dual role of the protein in ER-to-Golgi transport and at the mitochondria. Milev MP, Saint-Dic D, Zardoui K, Klopstock T, Law C, Distelmaier F, Sacher M 32909282
BIOLOGY
18 Heart Rate Variability, Sleep Quality, and Depression in the Context of Chronic Stress da Estrela C; McGrath J; Booij L; Gouin JP; 32525208
PERFORM
19 Inactograms and objective sleep measures as means to capture subjective sleep problems in patients with a bipolar disorder. Lavin-Gonzalez P, Bourguignon C, Crescenzi O, Beaulieu S, Storch KF, Linnaranta O 32232937
PSYCHOLOGY
20 The sensation of groove engages motor and reward networks. Matthews TE, Witek MAG, Lund T, Vuust P, Penhune VB 32217163
PSYCHOLOGY
21 Late and Instable Sleep Phasing is Associated With Irregular Eating Patterns in Eating Disorders. Linnaranta O, Bourguignon C, Crescenzi O, Sibthorpe D, Buyukkurt A, Steiger H, Storch KF 32211873
PSYCHOLOGY
22 Voluntary exercise stabilizes photic entrainment of djungarian hamsters (Phodopus sungorus) with a delayed activity onset. Weinert D, Schöttner K, Meinecke AC, Hauer J 29985662
CSBN
23 The Impact of Instrument-Specific Musical Training on Rhythm Perception and Production Matthews TE; Thibodeau JN; Gunther BP; Penhune VB; 26869969
PSYCHOLOGY

 

Title:An Effective and Fast Model for Characterization of Cardiac Arrhythmia and Congestive Heart Failure
Authors:Lahmiri SBekiros S
Link:https://pubmed.ncbi.nlm.nih.gov/40218199/
DOI:10.3390/diagnostics15070849
Publication:Diagnostics (Basel, Switzerland)
Keywords:CAD systemcardiac arrhythmiaclassificationcongestive heart failurediscrete cosine transformelectrocardiographynormal sinus rhythm
PMID:40218199 Category: Date Added:2025-04-13
Dept Affiliation: JMSB
1 Department of Supply Chain and Business Technology Management, John Molson School of Business, Concordia University, Montreal, QC H3H 0A1, Canada.
2 Valter Cantino Department of Management, University of Turin (UniTo), 10124 Torino, Italy.

Description:

Background/Objectives: Cardiac arrhythmia (ARR) and congestive heart failure (CHF) are heart diseases that can cause dysfunction of other body organs and possibly death. This paper describes a fast and accurate detection system to distinguish between ARR and normal sinus (NS), and between CHF and NS. Methods: the proposed automatic detection system uses the higher amplitude coefficients (HAC) of the discrete cosine transform (DCT) of the electrocardiogram (ECG) as discriminant features to distinguish ARR and CHF signals from NS. The approach is tested with three statistical classifiers, of which the k-nearest neighbors (k-NN) algorithm. Results: the DCT provides fast compression of the ECG signal, and statistical tests show that the obtained HACs are different from ARR and NS, and for CHF and NS. The latter achieved highest accuracy under ten-fold cross-validation in comparison to Naïve Bayes (NB) and nonlinear support vector machine (SVM). The kNN yielded 97% accuracy, 99% sensitivity, 90% specificity and 0.63 s processing time when classifying ARR against NS, and it yielded 99% accuracy, 99.7% sensitivity, and 99.2% specificity, and 0.27 seconds processing time when classifying HCF against NS. In addition to a fast response, the DCT-kNN system yields higher accuracy in comparison to recent works. Conclusions: it is concluded that using the DCT based HACs as biomarkers of ARR and CHF can lead an efficient computer aided diagnosis (CAD) system which is fast, accurate and does not require ECG signal pre-processing and segmentation. The proposed system is promising for applications in clinical milieu.





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