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首页> 外文期刊>Journal of medical engineering & technology >Utilization of second derivative photoplethysmographic features for myocardial infarction classification
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Utilization of second derivative photoplethysmographic features for myocardial infarction classification

机译:利用第二衍生物的光学质溶血特征进行心肌梗死分类

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摘要

Myocardial infarction (MI) is a common disease that causes morbidity and mortality. The current tools for diagnosing this disease are improving, but still have some limitations. This study utilised the second derivative of photoplethysmography (SDPPG) features to distinguish MI patients from healthy control subjects. The features include amplitude-derived SDPPG features (pulse height, ratio, jerk) and interval-derived SDPPG features (intervals and relative crest time (RCT)). We evaluated 32?MI patients at Pusat Perubatan Universiti Kebangsaan Malaysia and 32 control subjects (all ages 37–87?years). Statistical analysis revealed that the mean amplitude-derived SDPPG features were higher in MI patients than in control subjects. In contrast, the mean interval-derived SDPPG features were lower in MI patients than in the controls. The classifier model of binary logistic regression (Model 7), showed that the combination of SDPPG features that include the pulse height (d-wave), the intervals of “ab”, “ad”, “bc”, “bd”, and “be”, and the RCT of “ad/aa” could be used to classify MI patients with 90.6% accuracy, 93.9% sensitivity and 87.5% specificity at a cut-off value of 0.5 compared with the single features model.
机译:心肌梗死(MI)是一种导致发病率和死亡率的常见疾病。诊断这种疾病的目前的工具正在改善,但仍有一些限制。该研究利用了光增性肌造影(SDPPG)特征的第二阶衍生物,以区分MI患者免受健康对照受试者的影响。该特征包括幅度衍生的SDPPG特征(脉冲高度,比率,抖动)和间隔衍生的SDPPG特征(间隔和相对CREST时间(RCT))。我们评估了Pusat Perubatan大学凯银山马来西亚和32名控股科目(全年37-87岁以下)的MI患者。统计分析显示,MI患者的平均振幅衍生的SDPPG特征比对照受试者更高。相比之下,MI患者的平均间隔衍生的SDPPG特征比对照在内。二进制逻辑回归的分类模型(型号7),显示了包括脉冲高度(D-Wave)的SDPPG特征的组合,“AB”,“广告”,“BC”,“BD”的间隔和“BE”,“AD / AA”的RCT可用于对MI患者进行分类,精度为90.6%,灵敏度为93.9%和87.5%的特异性,与单一特征模型相比为0.5的截止值。

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