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Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus

AIMS: Research related to type 2 diabetes mellitus (DM) and parameters of electrocardiography (ECG) was limited. Patients with and without DM (NDM) were randomly enrolled in a study to exploit the influence of DM on planar QRS and T vectors derived from the Virtual Holter process. METHODS: A total o...

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Autores principales: Chen, Jia, Lin, Yubi, Yu, Jian, Chen, Wanqun, Xu, Zhe, Yang, Zhenzhen, Zeng, Chuqian, Li, Wenfeng, Lai, Xiaoshu, Lu, Qiji, Zhou, Jingwen, Tian, Bixia, Xu, Jing, Lin, Yanping, Du, Zuoyi, Zhang, Aidong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6931701/
https://www.ncbi.nlm.nih.gov/pubmed/25940734
http://dx.doi.org/10.1111/anec.12276
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author Chen, Jia
Lin, Yubi
Yu, Jian
Chen, Wanqun
Xu, Zhe
Yang, Zhenzhen
Zeng, Chuqian
Li, Wenfeng
Lai, Xiaoshu
Lu, Qiji
Zhou, Jingwen
Tian, Bixia
Xu, Jing
Lin, Yanping
Du, Zuoyi
Zhang, Aidong
author_facet Chen, Jia
Lin, Yubi
Yu, Jian
Chen, Wanqun
Xu, Zhe
Yang, Zhenzhen
Zeng, Chuqian
Li, Wenfeng
Lai, Xiaoshu
Lu, Qiji
Zhou, Jingwen
Tian, Bixia
Xu, Jing
Lin, Yanping
Du, Zuoyi
Zhang, Aidong
author_sort Chen, Jia
collection PubMed
description AIMS: Research related to type 2 diabetes mellitus (DM) and parameters of electrocardiography (ECG) was limited. Patients with and without DM (NDM) were randomly enrolled in a study to exploit the influence of DM on planar QRS and T vectors derived from the Virtual Holter process. METHODS: A total of 216 (NDM) and 127 DM patients were consecutively and randomly recruited. We selected a 1‐minute length of ECG, which was scheduled for analysis at 4 AM. After a series of calculating algorisms, we received the virtual planar vector parameters. RESULTS: Patients with DM were elderly (65.61 ± 12.08 vs 59.41 ± 16.86 years, P < 0.001); higher morbidity of hypertension (76.38% vs 58.14%, P < 0.001) and coronary artery disease (44.09% vs 32.41%, P = 0.03); thicker interventricular septum (10.92 ± 1.77 vs 10.08 ± 1.96 mm, P < 0.001) and left ventricular posterior wall (9.84 ± 1.38 vs 9.39 ± 1.66 mm, P = 0.03); higher lipid levels and average heart rate (66.67 ± 12.04 vs 61.87 ± 13.36 bpm, P < 0.01); higher angle of horizontal QRS vector (HQRSA, –2.87 ± 48.48 vs –19.00 ± 40.18 degrees, P < 0.01); lower maximal magnitude of horizontal T vector (HTV, 2.33 ± 1.47 vs 2.88 ± 1.89 mm, P = 0.01) and maximal magnitude of right side T vector (2.77 ± 1.55 vs 3.27 ± 1.92 mm, P = 0.03), and no difference in angle of frontal QRS‐T vector (FQRSTA, 32.77 ± 54.20 vs 28.39 ± 52.87 degrees, P = 0.74) compared with patients having NDM. After adjusting for confounding factors, DM was significantly effective on FQRSTA (regression coefficient –40.0, 95%CI –66.4 to –13.6, P < 0.01), HQRSA (regression coefficient 22.6, 95%CI 2.5 to 42.8, P = 0.03), and HTV (regression coefficient 0.9, 95%CI 0.2 to 1.7, P = 0.01). Confounding factors included: sex, 2‐hour postprandial blood glucose, smoking, triglyceride, apolipoprotein A, creatinine, left ventricular ejection fraction, and average heart rate. CONCLUSIONS: The risk factors of DM and lipid metabolism abnormality particularly apolipoprotein A significantly modified parameters of virtual planar QRS and T vector, including frontal QRS‐T angle.
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spelling pubmed-69317012020-03-18 Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus Chen, Jia Lin, Yubi Yu, Jian Chen, Wanqun Xu, Zhe Yang, Zhenzhen Zeng, Chuqian Li, Wenfeng Lai, Xiaoshu Lu, Qiji Zhou, Jingwen Tian, Bixia Xu, Jing Lin, Yanping Du, Zuoyi Zhang, Aidong Ann Noninvasive Electrocardiol Original Articles AIMS: Research related to type 2 diabetes mellitus (DM) and parameters of electrocardiography (ECG) was limited. Patients with and without DM (NDM) were randomly enrolled in a study to exploit the influence of DM on planar QRS and T vectors derived from the Virtual Holter process. METHODS: A total of 216 (NDM) and 127 DM patients were consecutively and randomly recruited. We selected a 1‐minute length of ECG, which was scheduled for analysis at 4 AM. After a series of calculating algorisms, we received the virtual planar vector parameters. RESULTS: Patients with DM were elderly (65.61 ± 12.08 vs 59.41 ± 16.86 years, P < 0.001); higher morbidity of hypertension (76.38% vs 58.14%, P < 0.001) and coronary artery disease (44.09% vs 32.41%, P = 0.03); thicker interventricular septum (10.92 ± 1.77 vs 10.08 ± 1.96 mm, P < 0.001) and left ventricular posterior wall (9.84 ± 1.38 vs 9.39 ± 1.66 mm, P = 0.03); higher lipid levels and average heart rate (66.67 ± 12.04 vs 61.87 ± 13.36 bpm, P < 0.01); higher angle of horizontal QRS vector (HQRSA, –2.87 ± 48.48 vs –19.00 ± 40.18 degrees, P < 0.01); lower maximal magnitude of horizontal T vector (HTV, 2.33 ± 1.47 vs 2.88 ± 1.89 mm, P = 0.01) and maximal magnitude of right side T vector (2.77 ± 1.55 vs 3.27 ± 1.92 mm, P = 0.03), and no difference in angle of frontal QRS‐T vector (FQRSTA, 32.77 ± 54.20 vs 28.39 ± 52.87 degrees, P = 0.74) compared with patients having NDM. After adjusting for confounding factors, DM was significantly effective on FQRSTA (regression coefficient –40.0, 95%CI –66.4 to –13.6, P < 0.01), HQRSA (regression coefficient 22.6, 95%CI 2.5 to 42.8, P = 0.03), and HTV (regression coefficient 0.9, 95%CI 0.2 to 1.7, P = 0.01). Confounding factors included: sex, 2‐hour postprandial blood glucose, smoking, triglyceride, apolipoprotein A, creatinine, left ventricular ejection fraction, and average heart rate. CONCLUSIONS: The risk factors of DM and lipid metabolism abnormality particularly apolipoprotein A significantly modified parameters of virtual planar QRS and T vector, including frontal QRS‐T angle. John Wiley and Sons Inc. 2015-05-04 /pmc/articles/PMC6931701/ /pubmed/25940734 http://dx.doi.org/10.1111/anec.12276 Text en © 2015 The Authors. Annals of Noninvasive Electrocardiology Published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Original Articles
Chen, Jia
Lin, Yubi
Yu, Jian
Chen, Wanqun
Xu, Zhe
Yang, Zhenzhen
Zeng, Chuqian
Li, Wenfeng
Lai, Xiaoshu
Lu, Qiji
Zhou, Jingwen
Tian, Bixia
Xu, Jing
Lin, Yanping
Du, Zuoyi
Zhang, Aidong
Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title_full Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title_fullStr Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title_full_unstemmed Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title_short Changes of Virtual Planar QRS and T Vectors Derived from Holter in the Populations with and without Diabetes Mellitus
title_sort changes of virtual planar qrs and t vectors derived from holter in the populations with and without diabetes mellitus
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6931701/
https://www.ncbi.nlm.nih.gov/pubmed/25940734
http://dx.doi.org/10.1111/anec.12276
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