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Multi-lag HRV analysis discriminates disease progression of post-infarct people with no diabetes versus diabetes

机译:多滞为HRV分析判断梗死后患有糖尿病与糖尿病患者的梗死后患者的疾病进展

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Diabetes mellitus is associated with multi-organ system dysfunction including the cardiovascular and autonomic nervous system. Although it is well documented that post-infarct patients are at higher risk of sudden cardiac death, diabetes adds an additional risk associated with autonomic neuropathy. However it is not known how the presence of diabetes in post-infarct patients affects cardiac rhythm. The majority of HRV algorithms for determining cardiac inter-beat interval changes describe only beat-to-beat variation determined over the whole heart rate recording and therefore do not consider the ability of a heart beat to influence a train of succeeding beats nor whether or how the temporal dynamics of the inter-beat intervals changes. This study used Poincare? Plot derived features and incorporated increased lag intervals to compare post-infarct patients with no history of prior infarct with or without diabetes and found that for the nondiabetic post-infarct patients only increased lag of short term correlation (SD1) predicted mortality, whereas in the diabetic post-infarct group only long-term correlations (SD2) significantly predicted mortality at a follow-up period of eight years. Temporal dynamics measured as a complex correlation measure (CCM) was also a significant predictor of mortality only in the diabetic post-infarct cohort. This study highlights the different pathophysiological progression and risk profile associated with presence of diabetes in a post-infarct patient population at eight year follow-up.
机译:糖尿病与多器官系统功能障碍有关,包括心血管和自主神经系统。虽然令人作注的是,梗死后患者患有突然心脏死亡的风险较高,但糖尿病增加了与自主神经病变相关的额外风险。然而,尚不讨论梗死后患者在梗死后患者的存在会影响心律淋。用于确定心脏间隙间隔变化的大多数HRV算法描述了在整个心率记录中确定的节拍变化,因此不要考虑心跳影响后续节拍的火车的能力,也不认为是或如何间隔间隔的时间动态变化。这项研究用了庞的?绘制衍生特征并掺入增加的滞后间隔,以比较梗塞后患者没有患有或没有糖尿病的现有梗塞历史,并且发现对于那个梗塞后患者仅增加短期相关性的滞后(SD1)预测死亡率,而在糖尿病后梗塞组只长期相关性(SD2)在八年后的后续期间显着预测死亡率。作为复杂相关测量(CCM)测量的时间动态也是仅在糖尿病术后队列中的死亡率的显着预测因子。本研究突出了与八年后梗死后患者患者在梗死后患者患者中患有糖尿病的不同病理生理进展和风险概况。

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