Heartbeat Chronicles: Decoding the Interplay of Echocardiography and Heart Rate Variability in Chronic Heart Failure Patients – Unraveling the Mysteries with Traditional and Advanced 24-Hour Holter ECG Parameters
This work is licensed under the Creative Commons Attribution 4.0 International License.
McDonagh TA, Metra M, Adamo M, Gardner RS, Baumbach A, Böhm M, Burri H, Butler J, Čelutkienė J, Chioncel O, Cleland JGF, Crespo-Leiro MG, Farmakis D, Gilard M, Heymans S, Hoes AW, Jaarsma T, Jankowska EA, Lainscak M, Lam CSP, Lyon AR, McMurray JJV, Mebazaa A, Mindham R, Muneretto C, Francesco Piepoli M, Price S, Rosano GMC, Ruschitzka F, Skibelund AK, ESC Scientific Document Group. 2023 Focused Update of the 2021 ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure. Eur Heart J. 2023; 44(37):3627-3639.McDonaghTAMetraMAdamoMGardnerRSBaumbachABöhmMBurriHButlerJČelutkienėJChioncelOClelandJGFCrespo-LeiroMGFarmakisDGilardMHeymansSHoesAWJaarsmaTJankowskaEALainscakMLamCSPLyonARMcMurrayJJVMebazaaAMindhamRMunerettoCFrancesco PiepoliMPriceSRosanoGMCRuschitzkaFSkibelundAKESC Scientific Document Group.2023 Focused Update of the 2021 ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure..2023;44(37):3627-3639.Search in Google Scholar
Groenewegen A, Rutten FH, Mosterd A, Hoes AW. Epidemiology of heart failure. Eur J Heart Fail. 2020; 22:1342–1356.GroenewegenARuttenFHMosterdAHoesAW.Epidemiology of heart failure..2020;22:1342–1356.Search in Google Scholar
Li ZW, Zhao HM, Wang J. Metabolism and Chronic Inflammation: The Links Between Chronic Heart Failure and Comorbidities. Front Cardiovasc Med. 2021; 8:650278.LiZWZhaoHMWangJ.Metabolism and Chronic Inflammation: The Links Between Chronic Heart Failure and Comorbidities..2021;8:650278.Search in Google Scholar
Savarese G, Becher PM, Lund LH, Seferovic P, Rosano GMC, Coats AJS. Global burden of heart failure: A comprehensive and updated review of epidemiology. Cardiovasc Res. 2023; 118:3272–3287.SavareseGBecherPMLundLHSeferovicPRosanoGMCCoatsAJS.Global burden of heart failure: A comprehensive and updated review of epidemiology..2023;118:3272–3287.Search in Google Scholar
Rørth R, Jhund PS, Yilmaz MB, Kristensen SL, Welsh P, Desai AS, Køber L, Prescott MF, Rouleau JL, Solomon SD, Swedberg K, Zile MR, Packer M, McMurray JJV. Comparison of BNP and NT-proBNP in Patients with Heart Failure and Reduced Ejection Fraction. Circ Heart Fail. 2020; 13(2):e006541.RørthRJhundPSYilmazMBKristensenSLWelshPDesaiASKøberLPrescottMFRouleauJLSolomonSDSwedbergKZileMRPackerMMcMurrayJJV.Comparison of BNP and NT-proBNP in Patients with Heart Failure and Reduced Ejection Fraction..2020;13(2):e006541.Search in Google Scholar
Metra M, Tomasoni D, Adamo M, Bayes-Genis A, Filippatos G, Abdelhamid M, Adamopoulos S, Anker SD, Antohi L, Böhm M, Braunschweig F, Gal TB, Butler J, Cleland JGF, Cohen-Solal A, Damman K, Gustafsson F, Hill L, Jankowska EA, Lainscak M, Lund LH, McDonagh T, Mebazaa A, Moura B, Mullens W, Piepoli M, Ponikowski P, Rakisheva A, Ristic A, Savarese G, Seferovic P, Sharma R, Tocchetti CG, Yilmaz MB, Vitale C, Volterrani M, von Haehling S, Chioncel O, Coats AJS, Rosano G. Worsening of chronic heart failure: Definition, epidemiology, management and prevention. A clinical consensus statement by the Heart Failure Association of the European Society of Cardiology. Eur J Heart Fail. 2023; 25(6):776-791.MetraMTomasoniDAdamoMBayes-GenisAFilippatosGAbdelhamidMAdamopoulosSAnkerSDAntohiLBöhmMBraunschweigFGalTBButlerJClelandJGFCohen-SolalADammanKGustafssonFHillLJankowskaEALainscakMLundLHMcDonaghTMebazaaAMouraBMullensWPiepoliMPonikowskiPRakishevaARisticASavareseGSeferovicPSharmaRTocchettiCGYilmazMBVitaleCVolterraniMvon HaehlingSChioncelOCoatsAJSRosanoG.Worsening of chronic heart failure: Definition, epidemiology, management and prevention. A clinical consensus statement by the Heart Failure Association of the European Society of Cardiology..2023;25(6):776-791.Search in Google Scholar
An Y, Wang Q, Wang H, Zhang N, Zhang F. Clinical significance of sFRP5, RBP-4, and NT-proBNP in patients with chronic heart failure. Am J Transl Res. 2021; 13:6305–6311.AnYWangQWangHZhangNZhangF.Clinical significance of sFRP5, RBP-4, and NT-proBNP in patients with chronic heart failure..2021;13:6305–6311.Search in Google Scholar
Di Cesare E, Carerj S, Palmisano A, Carerj ML, Catapano F, Vignale D, Di Cesare A, Milanese G, Sverzellati N, Francone M, Esposito A. Multimodality imaging in chronic heart failure. Radiol Med. 2021; 126(2):231-242.Di CesareECarerjSPalmisanoACarerjMLCatapanoFVignaleDDi CesareAMilaneseGSverzellatiNFranconeMEspositoA.Multimodality imaging in chronic heart failure..2021;126(2):231-242.Search in Google Scholar
Mele D, Andrade A, Bettencourt P, Moura B, Pestelli G, Ferrari R. From left ventricular ejection fraction to cardiac hemodynamics: role of echocardiography in evaluating patients with heart failure. Heart Fail Rev. 2020; 25(2):217-230.MeleDAndradeABettencourtPMouraBPestelliGFerrariR.From left ventricular ejection fraction to cardiac hemodynamics: role of echocardiography in evaluating patients with heart failure..2020;25(2):217-230.Search in Google Scholar
Pastore MC, Mandoli GE, Aboumarie HS, Santoro C, Bandera F, D’Andrea A, Benfari G, Esposito R, Evola V, Sorrentino R, Cameli P, Valente S, Mondillo S, Galderisi M, Cameli M, Working Group of Echocardiography of the Italian Society of Cardiology. Basic and advanced echocardiography in advanced heart failure: an overview. Heart Fail Rev. 2020; 25(6):937-948.PastoreMCMandoliGEAboumarieHSSantoroCBanderaFD’AndreaABenfariGEspositoREvolaVSorrentinoRCameliPValenteSMondilloSGalderisiMCameliMWorking Group of Echocardiography of the Italian Society of Cardiology.Basic and advanced echocardiography in advanced heart failure: an overview..2020;25(6):937-948.Search in Google Scholar
Toufan M, Kazemi B, Akbarzadeh F, Ataei A, Khalili M. Assessment of electrocardiography, echocardiography, and heart rate variability in dynamic and static type athletes. Int J Gen Med. 2012; 5:655-60.ToufanMKazemiBAkbarzadehFAtaeiAKhaliliM.Assessment of electrocardiography, echocardiography, and heart rate variability in dynamic and static type athletes..2012;5:655-60.Search in Google Scholar
Stoyell-Conti FF, Santos F, Machi JF, Hernandez DR, Barboza CA, Irigoyen MC, De Angelis K, Morris M. Measurement of Mouse Heart Rate Variability using Echocardiographic System. J Cardiovasc Echogr. 2018; 28(2):90-94.Stoyell-ContiFFSantosFMachiJFHernandezDRBarbozaCAIrigoyenMCDe AngelisKMorrisM.Measurement of Mouse Heart Rate Variability using Echocardiographic System..2018;28(2):90-94.Search in Google Scholar
Silva LEV, Moreira HT, Bernardo MMM, Schmidt A, Romano MMD, Salgado HC, Fazan R, Tinós R, Marin-Neto A. Prediction of echocardiographic parameters in Chagas disease using heart rate variability and machine learning. Biomed Signal Process Control. 2021; 67:102513.SilvaLEVMoreiraHTBernardoMMMSchmidtARomanoMMDSalgadoHCFazanRTinósRMarin-NetoA.Prediction of echocardiographic parameters in Chagas disease using heart rate variability and machine learning..2021;67:102513.Search in Google Scholar
Yu CM, Lin H, Ho PC, Yang H. Assessment of left and right ventricular systolic and diastolic synchronicity in normal subjects by tissue Doppler echocardiography and the effects of age and heart rate. Echocardiography. 2003; 20(1):19-27.YuCMLinHHoPCYangH.Assessment of left and right ventricular systolic and diastolic synchronicity in normal subjects by tissue Doppler echocardiography and the effects of age and heart rate..2003;20(1):19-27.Search in Google Scholar
Petelczyc M, Zebrowski JJ, Baranowski R, Chojnowska L. Stochastic analysis of heart rate variability and its relation to echocardiography parameters in hypertrophic cardiomyopathy patients. Physiol Meas. 2010; 31(12):1635-49.PetelczycMZebrowskiJJBaranowskiRChojnowskaL.Stochastic analysis of heart rate variability and its relation to echocardiography parameters in hypertrophic cardiomyopathy patients..2010;31(12):1635-49.Search in Google Scholar
Al-Zaiti SS, Pietrasik G, Carey MG, Alhamaydeh M, Canty JM, Fallavollita JA. The role of heart rate variability, heart rate turbulence, and deceleration capacity in predicting cause-specific mortality in chronic heart failure. J Electrocardiol. 2019; 52:70-74.Al-ZaitiSSPietrasikGCareyMGAlhamaydehMCantyJMFallavollitaJA.The role of heart rate variability, heart rate turbulence, and deceleration capacity in predicting cause-specific mortality in chronic heart failure..2019;52:70-74.Search in Google Scholar
Yin DC, Wang ZJ, Guo S, Xie HY, Sun L, Feng W, Qiu W, Qu XF. Prognostic significance of heart rate turbulence parameters in patients with chronic heart failure. BMC Cardiovasc. Disord. 2014; 14:50.YinDCWangZJGuoSXieHYSunLFengWQiuWQuXF.Prognostic significance of heart rate turbulence parameters in patients with chronic heart failure..2014;14:50.Search in Google Scholar
Zeid S, Buch G, Velmeden D, Söhne J, Schulz A, Schuch A, Tröbs SO, Heidorn MW, Müller F, Strauch K, Coboeken K, Lackner KJ, Gori T, Münzel T, Prochaska JH, Wild PS. Heart rate variability: Reference values and role for clinical profile and mortality in individuals with heart failure. Clin Res Cardiol. 2023.ZeidSBuchGVelmedenDSöhneJSchulzASchuchATröbsSOHeidornMWMüllerFStrauchKCoboekenKLacknerKJGoriTMünzelTProchaskaJHWildPS.Heart rate variability: Reference values and role for clinical profile and mortality in individuals with heart failure..2023.Search in Google Scholar
Hu W, Jin X, Zhang P, Yu Q, Yin G, Lu Y, Xiao H, Chen Y, Zhang D. Deceleration and acceleration capacities of heart rate associated with heart failure with high discriminating performance. Sci. Rep. 2016; 6:23617.HuWJinXZhangPYuQYinGLuYXiaoHChenYZhangD.Deceleration and acceleration capacities of heart rate associated with heart failure with high discriminating performance..2016;6:23617.Search in Google Scholar
Ricca-Mallada R, Migliaro ER, Piskorski J, Guzik P. Exercise training slows down heart rate and improves deceleration and acceleration capacity in patients with heart failure. J Electrocardiol. 2012; 45:214–219.Ricca-MalladaRMigliaroERPiskorskiJGuzikP.Exercise training slows down heart rate and improves deceleration and acceleration capacity in patients with heart failure..2012;45:214–219.Search in Google Scholar
Zou C, Dong H, Wang F, Gao M, Huang X, Jin J, Zhou B, Yang X. Heart acceleration and deceleration capacities associated with dilated cardiomyopathy. Eur J Clin. Investig. 2016; 46:312–320.ZouCDongHWangFGaoMHuangXJinJZhouBYangX.Heart acceleration and deceleration capacities associated with dilated cardiomyopathy..2016;46:312–320.Search in Google Scholar
Demming T, Sandrock S, Kuhn C, Kotzott, L, Tahmaz, N, Bonnemeier H. Deceleration capacity: A novel predictor for total mortality in patients with non-ischemic dilated cardiomyopathy. Int J Cardiol. 2016; 221:289–293.DemmingTSandrockSKuhnCKotzottLTahmazNBonnemeierH.Deceleration capacity: A novel predictor for total mortality in patients with non-ischemic dilated cardiomyopathy..2016;221:289–293.Search in Google Scholar
Guzik P, Piskorski J, Barthel P, Bauer A, Müller A, Junk N, Ulm K, Malik M, Schmidt G. Heart rate deceleration runs for postinfarction risk prediction. J Electrocardiol. 2012; 45:70–76.GuzikPPiskorskiJBarthelPBauerAMüllerAJunkNUlmKMalikMSchmidtG.Heart rate deceleration runs for postinfarction risk prediction..2012;45:70–76.Search in Google Scholar
Yadav RL, Yadav PK, Yadav LK, Agrawal K, Sah SK, Islam MN. Association between obesity and heart rate variability indices: An intuition toward cardiac autonomic alteration—A risk of CVD. Diabetes Metab Syndr Obes. 2017; 10:57–64.YadavRLYadavPKYadavLKAgrawalKSahSKIslamMN.Association between obesity and heart rate variability indices: An intuition toward cardiac autonomic alteration—A risk of CVD..2017;10:57–64.Search in Google Scholar
Cygankiewicz I, Zareba W, de Luna A.B. Prognostic value of Holter monitoring in congestive heart failure. Cardiol J. 2008; 15:313–323.CygankiewiczIZarebaWde LunaA.B.Prognostic value of Holter monitoring in congestive heart failure..2008;15:313–323.Search in Google Scholar
Palacios S, Cygankiewicz I, Bayés de Luna A, Pueyo E, Martínez JP. Periodic repolarization dynamics as a predictor of the risk for sudden cardiac death in chronic heart failure patients. Sci Rep. 2021; 11:20546.PalaciosSCygankiewiczIBayés de LunaAPueyoEMartínezJP.Periodic repolarization dynamics as a predictor of the risk for sudden cardiac death in chronic heart failure patients..2021;11:20546.Search in Google Scholar
Seferović PM, Petrie MC, Filippatos GS, Anker SD, Rosano G, Bauersachs J, Paulus WJ, Komajda M, Cosentino F, de Boer RA, Farmakis D, Doehner W, Lambrinou E, Lopatin Y, Piepoli MF, Theodorakis MJ, Wiggers H, Lekakis J, Mebazaa A, Mamas MA, Tschöpe C, Hoes AW, Seferović JP, Logue J, McDonagh T, Riley JP, Milinković I, Polovina M, van Veldhuisen DJ, Lainscak M, Maggioni AP, Ruschitzka F, McMurray JJV. Type 2 diabetes mellitus and heart failure: a position statement from the Heart Failure Association of the European Society of Cardiology. Eur J Heart Fail. 2018; 20(5):853-872.SeferovićPMPetrieMCFilippatosGSAnkerSDRosanoGBauersachsJPaulusWJKomajdaMCosentinoFde BoerRAFarmakisDDoehnerWLambrinouELopatinYPiepoliMFTheodorakisMJWiggersHLekakisJMebazaaAMamasMATschöpeCHoesAWSeferovićJPLogueJMcDonaghTRileyJPMilinkovićIPolovinaMvan VeldhuisenDJLainscakMMaggioniAPRuschitzkaFMcMurrayJJV.Type 2 diabetes mellitus and heart failure: a position statement from the Heart Failure Association of the European Society of Cardiology..2018;20(5):853-872.Search in Google Scholar
Arsenos P, Manis G, Gatzoulis KA, Dilaveris P, Gialernios T, Angelis A, Papadopoulos A, Venieri E, Trikas A, Tousoulis D. Deceleration Capacity of Heart Rate Predicts Arrhythmic and Total Mortality in Heart Failure Patients. Ann Noninvasive Electrocardiol. 2016; 21(5):508-18.ArsenosPManisGGatzoulisKADilaverisPGialerniosTAngelisAPapadopoulosAVenieriETrikasATousoulisD.Deceleration Capacity of Heart Rate Predicts Arrhythmic and Total Mortality in Heart Failure Patients..2016;21(5):508-18.Search in Google Scholar
Elstad M, Walløe L, Chon KH, Toska K. Low-frequency fluctuations in heart rate, cardiac output and mean arterial pressure in humans: what are the physiological relationships? J Hypertens. 2011; 29(7):1327-36.ElstadMWalløeLChonKHToskaK.Low-frequency fluctuations in heart rate, cardiac output and mean arterial pressure in humans: what are the physiological relationships?.2011;29(7):1327-36.Search in Google Scholar
Cao P, Ye B, Yang L, Lu F, Fang L, Cai G, Su Q, Ning G, Pan Q. Preprocessing Unevenly Sampled RR Interval Signals to Enhance Estimation of Heart Rate Deceleration and Acceleration Capacities in Discriminating Chronic Heart Failure Patients from Healthy Controls. Comput Math Methods Med. 2020; 2020:9763826.CaoPYeBYangLLuFFangLCaiGSuQNingGPanQ.Preprocessing Unevenly Sampled RR Interval Signals to Enhance Estimation of Heart Rate Deceleration and Acceleration Capacities in Discriminating Chronic Heart Failure Patients from Healthy Controls..2020;2020:9763826.Search in Google Scholar
Shah MA, Soofi MA, Jafary Z, Alhomrani A, Alsmadi F, Wani TA, Bajwa IA. Echocardiographic parameters associated with recovery in heart failure with reduced ejection fraction. Echocardiography. 2020; 37(10):1574-1582.ShahMASoofiMAJafaryZAlhomraniAAlsmadiFWaniTABajwaIA.Echocardiographic parameters associated with recovery in heart failure with reduced ejection fraction..2020;37(10):1574-1582.Search in Google Scholar
Shaffer F, Ginsberg JP. An Overview of Heart Rate Variability Metrics and Norms. Front Public Health. 2017 Sep 28;5:258.ShafferFGinsbergJP.An Overview of Heart Rate Variability Metrics and Norms..2017Sep28;5:258.Search in Google Scholar
Quintana DS, Heathers JA, Kemp AH. On the validity of using the Polar RS800 heart rate monitor for heart rate variability research. Eur J Appl Physiol. 2012 Dec;112(12):4179-80.QuintanaDSHeathersJAKempAH.On the validity of using the Polar RS800 heart rate monitor for heart rate variability research..2012Dec;112(12):4179-80.Search in Google Scholar
Billman GE. The effect of heart rate on the heart rate variability response to autonomic interventions. Front Physiol. 2013 Aug 26;4:222.BillmanGE.The effect of heart rate on the heart rate variability response to autonomic interventions..2013Aug26;4:222.Search in Google Scholar
Xu YH, Wang XD, Yang JJ, Zhou L, Pan YC. Changes of deceleration and acceleration capacity of heart rate in patients with acute hemispheric ischemic stroke. Clin Interv Aging. 2016; 11:293-8.XuYHWangXDYangJJZhouLPanYC.Changes of deceleration and acceleration capacity of heart rate in patients with acute hemispheric ischemic stroke..2016;11:293-8.Search in Google Scholar
Alkhodari M, Islayem D, Alskafi F, Khandoker A. Predicting hypertensive patients with higher risk of developing vascular events using heart rate variability and machine learning. IEEE Access 2020;8:192727–192739.AlkhodariMIslayemDAlskafiFKhandokerA.Predicting hypertensive patients with higher risk of developing vascular events using heart rate variability and machine learning.2020;8:192727–192739.Search in Google Scholar
Birand A, Kudaiberdieva GZ, Batyraliev TA, Akgül F, Saliu S. Relationship Between Components of Heart Rate Variability and Doppler Echocardiographic Indices of Left Ventricular Systolic Performance in Patients with Coronary Artery Disease. Int J Angiol. 1998; 7(3):244-8.BirandAKudaiberdievaGZBatyralievTAAkgülFSaliuS.Relationship Between Components of Heart Rate Variability and Doppler Echocardiographic Indices of Left Ventricular Systolic Performance in Patients with Coronary Artery Disease..1998;7(3):244-8.Search in Google Scholar
Isler Y. Discrimination of systolic and diastolic dysfunctions using multi-layer perceptron in heart rate variability analysis. Comput Biol Med. 2016; 76:113-9.IslerY.Discrimination of systolic and diastolic dysfunctions using multi-layer perceptron in heart rate variability analysis..2016;76:113-9.Search in Google Scholar
Arshi B, Geurts S, Tilly MJ, van den Berg M, Kors JA, Rizopoulos D, Ikram MA, Kavousi M. Heart rate variability is associated with left ventricular systolic, diastolic function and incident heart failure in the general population. BMC Med. 2022; 20(1):91.ArshiBGeurtsSTillyMJvan den BergMKorsJARizopoulosDIkramMAKavousiM.Heart rate variability is associated with left ventricular systolic, diastolic function and incident heart failure in the general population..2022;20(1):91.Search in Google Scholar
Poanta L, Porojan M, Dumitrascu DL. Heart rate variability and diastolic dysfunction in patients with type 2 diabetes mellitus. Acta Diabetol. 2011; 48(3):191-6.PoantaLPorojanMDumitrascuDL.Heart rate variability and diastolic dysfunction in patients with type 2 diabetes mellitus..2011;48(3):191-6.Search in Google Scholar
Arora R, Krummerman A, Vijayaraman P, Rosengarten M, Suryadevara V, Lejemtel T, Ferrick KJ. Heart rate variability and diastolic heart failure. Pacing Clin Electrophysiol. 2004; 27(3):299-303.AroraRKrummermanAVijayaramanPRosengartenMSuryadevaraVLejemtelTFerrickKJ.Heart rate variability and diastolic heart failure..2004;27(3):299-303.Search in Google Scholar
Choi J, Lee S, Chang M, Lee Y, Oh GC, Lee HY. Deep learning of ECG waveforms for diagnosis of heart failure with a reduced left ventricular ejection fraction. Sci Rep. 2022; 12(1):14235.ChoiJLeeSChangMLeeYOhGCLeeHY.Deep learning of ECG waveforms for diagnosis of heart failure with a reduced left ventricular ejection fraction..2022;12(1):14235.Search in Google Scholar
Hämmerle P, Eick C, Blum S, Schlageter V, Bauer A, Rizas KD, Eken C, Coslovsky M, Aeschbacher S, Krisai P, Meyre P, Vesin JM, Rodondi N, Moutzouri E, Beer J, Moschovitis G, Kobza R, Di Valentino M, Corino VDA, Laureanti R, Mainardi L, Bonati LH, Sticherling C, Conen D, Osswald S, Kühne M, Zuern CS, Swiss-AF Study Investigators. Heart rate variability triangular index as a predictor of cardiovascular mortality in patients with atrial fibrillation. J Am Heart Assoc. 2020; 9(15):e016075. ‘HämmerlePEickCBlumSSchlageterVBauerARizasKDEkenCCoslovskyMAeschbacherSKrisaiPMeyrePVesinJMRodondiNMoutzouriEBeerJMoschovitisGKobzaRDi ValentinoMCorinoVDALaureantiRMainardiLBonatiLHSticherlingCConenDOsswaldSKühneMZuernCSSwiss-AF Study Investigators.Heart rate variability triangular index as a predictor of cardiovascular mortality in patients with atrial fibrillation..2020;9(15):e016075. ‘Search in Google Scholar
Seferović PM, Petrie MC, Filippatos GS, Anker SD, Rosano G, Bauersachs J, Paulus WJ, Komajda M, Cosentino F, de Boer RA, Farmakis D, Denhner W, Lambrinou E, Lopatin Y, Piepoli MF, Theodorakis MJ, Wiggers H, Lekakis J, Mebazaa A, Mamas MA, Tschöpe C, Hoes AW, Seferović JP, Logue J, McDonagh T, Riley JP, Milinković I, Polovina M, van Veldhuisen DJ, Lainscak M, Maggioni AP, Ruschitzka F, McMurray JJV. Type 2 diabetes mellitus and heart failure: a position statement from the Heart Failure Association of the European Society of Cardiology. Eur J Heart Fail. 2018; 20(5):853-872.SeferovićPMPetrieMCFilippatosGSAnkerSDRosanoGBauersachsJPaulusWJKomajdaMCosentinoFde BoerRAFarmakisDDenhnerWLambrinouELopatinYPiepoliMFTheodorakisMJWiggersHLekakisJMebazaaAMamasMATschöpeCHoesAWSeferovićJPLogueJMcDonaghTRileyJPMilinkovićIPolovinaMvan VeldhuisenDJLainscakMMaggioniAPRuschitzkaFMcMurrayJJV.Type 2 diabetes mellitus and heart failure: a position statement from the Heart Failure Association of the European Society of Cardiology..2018;20(5):853-872.Search in Google Scholar
Correale M, Paolillo S, Mercurio V, Ruocco G, Tocchetti CG, Palazzuoli A. Non-cardiovascular comorbidities in heart failure patients and their impact on prognosis. Kardiol Pol. 2021; 79(5):493-502.CorrealeMPaolilloSMercurioVRuoccoGTocchettiCGPalazzuoliA.Non-cardiovascular comorbidities in heart failure patients and their impact on prognosis..2021;79(5):493-502.Search in Google Scholar
Avula NR, Dighe T, Sajgure A, Bale C, Wakhare P. Evaluation of role of heart rate variability with Holter monitoring in chronic kidney disease. Int J Res Med Sci. 2020; 8:2188-2194.AvulaNRDigheTSajgureABaleCWakhareP.Evaluation of role of heart rate variability with Holter monitoring in chronic kidney disease..2020;8:2188-2194.Search in Google Scholar
Parsi A, Glavin M, Jones E, Byrne D. Prediction of paroxysmal atrial fibrillation using new heart rate variability features. Comput Biol Med. 2021; 133:104367.ParsiAGlavinMJonesEByrneD.Prediction of paroxysmal atrial fibrillation using new heart rate variability features..2021;133:104367.Search in Google Scholar
Chang A, Cadaret LM, Liu K. Machine learning in electrocardiography and echocardiography: technological advances in clinical cardiology. Curr Cardiol Rep. 2020; 22(12):161.ChangACadaretLMLiuK.Machine learning in electrocardiography and echocardiography: technological advances in clinical cardiology..2020;22(12):161.Search in Google Scholar
Adler ED, Voors AA, Klein L, Macheret F, Braun OO, Urey MA, Zhu W, Sama I, Tadel M, Campagnari C, Greenberg B, Yagil A. Improving risk prediction in heart failure using machine learning. Eur J Heart Fail. 2020; 22(1):139-147.AdlerEDVoorsAAKleinLMacheretFBraunOOUreyMAZhuWSamaITadelMCampagnariCGreenbergBYagilA.Improving risk prediction in heart failure using machine learning..2020;22(1):139-147.Search in Google Scholar
Jing L, Ulloa Cerna AE, Good CW, Sauers NM, Schneider G, Hartzel DN, Leader JB, Kirchner HL, Hu Y, Riviello DM, Stough JV, Gazes S, Haggerty A, Raghunath S, Carry BJ, Haggerty CM, Fornwalt BK. A machine learning approach to management of heart failure populations. JACC Heart Fail. 2020; 8(7):578-587.JingLUlloa CernaAEGoodCWSauersNMSchneiderGHartzelDNLeaderJBKirchnerHLHuYRivielloDMStoughJVGazesSHaggertyARaghunathSCarryBJHaggertyCMFornwaltBK.A machine learning approach to management of heart failure populations..2020;8(7):578-587.Search in Google Scholar
Olsen CR, Mentz RJ, Anstrom KJ, Page D, Patel PA. Clinical applications of machine learning in the diagnosis, classification, and prediction of heart failure. Am Heart J. 2020; 229:1-17.OlsenCRMentzRJAnstromKJPageDPatelPA.Clinical applications of machine learning in the diagnosis, classification, and prediction of heart failure..2020;229:1-17.Search in Google Scholar
Plati DK, Tripoliti EE, Bechlioulis A, Rammos A, Dimou I, Lakkas L, Watson C, McDonald K, Ledwidge M, Pharithi R, Gallagher J, Michalis LK, Goletsis Y, Naka KK, Fotiadis DI. A machine learning approach for chronic heart failure diagnosis. Diagnostics (Basel). 2021 Oct 10; 11(10):1863.PlatiDKTripolitiEEBechlioulisARammosADimouILakkasLWatsonCMcDonaldKLedwidgeMPharithiRGallagherJMichalisLKGoletsisYNakaKKFotiadisDI.A machine learning approach for chronic heart failure diagnosis..2021Oct10;11(10):1863.Search in Google Scholar
Porumb M, Iadanza E, Massaro S, Pecchia L. A convolutional neural network approach to detect congestive heart failure. Biomed Signal Process Control. 2020; 55.PorumbMIadanzaEMassaroSPecchiaL.A convolutional neural network approach to detect congestive heart failure..2020;55.Search in Google Scholar