| Literature DB >> 24489599 |
Wan-Hua Lin1, Heye Zhang1, Yuan-Ting Zhang2.
Abstract
Cardiovascular disease (CVD) is the leading cause of death worldwide. Early prediction of CVD is urgently important for timely prevention and treatment. Incorporation or modification of new risk factors that have an additional independent prognostic value of existing prediction models is widely used for improving the performance of the prediction models. This paper is to investigate the physiological parameters that are used as risk factors for the prediction of cardiovascular events, as well as summarizing the current status on the medical devices for physiological tests and discuss the potential implications for promoting CVD prevention and treatment in the future. The results show that measures extracted from blood pressure, electrocardiogram, arterial stiffness, ankle-brachial blood pressure index (ABI), and blood glucose carry valuable information for the prediction of both long-term and near-term cardiovascular risk. However, the predictive values should be further validated by more comprehensive measures. Meanwhile, advancing unobtrusive technologies and wireless communication technologies allow on-site detection of the physiological information remotely in an out-of-hospital setting in real-time. In addition with computer modeling technologies and information fusion. It may allow for personalized, quantitative, and real-time assessment of sudden CVD events.Entities:
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Year: 2013 PMID: 24489599 PMCID: PMC3893863 DOI: 10.1155/2013/272691
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.238
Sample of cohort studies reporting the independent predictive values of blood pressure.
| Markers | Population (no.) | Age at entry (y) | Followup (y) | Covariates | End events (no.) | Model based | Prognostic values | Discrimination, | Reference |
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| SBP | General Japanese man (48224) | 40–89 | 8.4 | Age, BMI, serum total cholesterol, and smoking | Stroke (1231) and MI events (220) | Poisson regression model | For stroke, HR = 1.51; For MI, HR = 1.23 | NR | [ |
| DBP | For stroke, HR = 1.53; For MI, HR = 1.17 | ||||||||
| MBP | For stroke, HR = 1.60; For MI, HR = 1.22 | ||||||||
| PP | For stroke, HR = 1.27; For MI, HR = 1.17 | ||||||||
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| Visit-to-visit variability (SD) in SBP | Patients with prev. transient ischaemic attack (1324) | 60.3 (mean) | 2 | Age, sex, mean SBP, and other risk factors | Stroke (270), coronary event (166) | Cox model | For stroke, HR = 6.22 | NR | [ |
| Maximum SBP reached | For stroke, HR=15.01 | ||||||||
| Episodic severe hypertension | For stroke, HR = 3.58 | ||||||||
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| Residual visit-to-visit variability (SD) | Patients with treated hypertension (2011) | 40–79 | 5.5 | NR | Stroke and coronary event | Cox model | For stroke, HR = 3.25 | NR | [ |
| Variability (CoV of daytime SBP) in ABPM | For vascular events, HR = 1.42 | ||||||||
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| Clinic SBP; | Subjects fulfilling series of exclusion and inclusion criteria (3344) | 52.6 ± 14.5 | 5.6 | Age, sex, and diabetes | Total CVD events (331) | Cox model | HR = 1.35 | NR | [ |
| Awake SBP mean; | HR = 1.35 | ||||||||
| Asleep SBP mean; | HR = 1.52 | ||||||||
| 48-h SBP mean; | HR = 1.43 | ||||||||
| Sleep-time relative decline; | HR = 0.72 | ||||||||
| SD of awake SBP; | HR = 1.29 | ||||||||
| SD of asleep SBP; | HR = 1.22 | ||||||||
| SD of 48-h SBP | HR = 1.24 | ||||||||
| Morning surge SBP | HR = 0.79 | ||||||||
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| 24-h DBP SD; | Subjects referred for assessment of their hypertension (10499) | 54.5 (mean) | 5.8 | Age, sex, and BMI, smoking, prev. CVD, 24-h BP, and 24-h DBP | CV death | Cox model | HR = 1.04 | NR | [ |
| 24-h wDBP SD; | HR = 1.06 | ||||||||
| DBP ARV; | HR = 1.06 | ||||||||
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| Daytime SBP | Untreated hypertension patients (5292) | 16.2–92.4 | 8.4 | Age, sex, BMI, smoking, diabetes, prev. CVD events, and clinic SBP | All-cause mortality (646) | Cox model | HR = 1.07 | NR | [ |
| Nighttime SBP | HR = 1.15 | ||||||||
| 24-h SBP | HR = 1.13 | ||||||||
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| Daytime systolic BP variability | General Japanese subjects (1542) | ≥40 | 8.5 | Age, sex, smoking, diabetes, use of antihypertensive medication, obesity, prev. hyperlipidemia, CVD, 24-h SBP, DBP, and heart rate | CV mortality (67) | Cox model | RR = 2.69 | NR | [ |
| Daytime heart rate variability | RR = 4.45 | ||||||||
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| Bruce stage 2 DBP | Framingham | 20–69 | 20 | Age, sex | CVD events (240) | Cox model | HR = 1.41; | NR |
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| Bruce stage 2 SBP | Study | HR = 0.97 | |||||||
| Recovery DBP after exercise | Subjects (3045) | HR = 1.53 | |||||||
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| Bruce stage 2 SBP > 180 mmHg (versus SBP ≤ 180 mmHg) | Asymptomatic patients (6578) | 30–70 | 20 | Age, sex, diabetes, LDL and HDL cholesterol, triglycerides, smoking, BMI, and family history | CVD death (385) | Cox model | HR = 1.96 | Net reclassification improvement, SBP, 12%; DBP, 9.9% | [ |
| Bruce stage 2 DBP > 90 mmHg (versus DBP ≤ 90 mmHg) | HR = 1.48 | ||||||||
BMI indicates body mass index; CoV: coefficient of variation; wDBP SD: weighted mean of daytime and nighttime DBP SD; ARV: average real variability; NR: not report; prev.: previous; LDL: low-density lipoprotein; HDL: high-density lipoprotein; CV: cardiovascular.
Figure 1Hazard ratios for risk of stroke by deciles of visit-to-visit variability (SD) SBP over seven visit measurements (the interval between visits was 4 months), with the first decile as the control category. Analyses were performed in patients excluding those with a past history of stroke (1324 patients were eligible). Reproduced from [34].
Figure 2Adjusted 5-year risk of cardiovascular mortality versus systolic blood pressure captured by ambulatory blood pressure monitoring in different periods of the day. Reproduced from [24].
Figure 3The risk of stroke versus heart rate groups. The heart rate group of 60–69 bpm is used as the reference category. Reproduced from [65].
Sample of cohort studies reporting the independent predictive values of stress ECG measures.
| Markers | Population characteristics (no.) | Age (y) at entry | Followup (y) | Covariates | End events (no.) | Model based | Prognostic value | Discrimination, | Reference |
|---|---|---|---|---|---|---|---|---|---|
| Chronotropic response < 89 bpm | Men in Paris civil service (5713) | 42–53 | 23 | Non | Sudden death from MI (81) | Cox model | RR = 6.18 | NR |
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| heart rate recovery < 25 bpm | RR = 2.20 | NR | |||||||
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| ECG score (75th versus 25th percentile) | Patients without known CV disease (18964) | 51 (mean) | 10.7 | Age, sex, smoking, diabetes, hypertension, and so forth. | All-cause mortality (1585) | Cox model | HR = 1.36 | C index = 0.84, increased by 0.04 compared with established risk factors | [ |
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| Duke treadmill score | Patients with suspected CAD and normal ECG (33268) | 52 | 6.2 | Non | All-cause mortality (1619) | nomogram-illustrated model | NR | C index = 0.73 |
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| nomogram-illustrated model | NR | C index = 0.83 | |||||||
NR: not report; CAD: coronary artery disease; CV: cardiovascular.
Figure 4A central blood pressure waveform which contains a forward and a backward (reflected) components. PP indicates pulse pressure. Reproduced from [94, 95].
Figure 5All-cause and CVD mortality according to ankle-brachial index (ABI) groups. Reproduced from [27].
Figure 6Categories for prediabetes and diabetes mellitus FPG, fasting plasma glucose. 2 h PG, 2 hour plasma glucose in the oral glucose tolerance test. IFG: impaired fasting glucose. IGT: impaired glucose tolerance.
Figure 7A health shirt designed in our research center for capturing multiparameters including ECG, PPG, and cuffless BP. Reproduced from [135].
Established and potential physiological risk factors used for prediction of cardiovascular diseases.
| Physiological | Predictors | Significance and limitations | Predictive | |
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| BP | ||||
| Resting BP | Usual BP | Measures the brachial artery cuff blood pressure. Strong risk factors for CV prediction. Cuffless and continuous monitoring are under improvement. | +++++ | |
| ABPM | Daytime BP mean | Measures the ambulatory blood pressure fluctuation. Provides additional important information over clinic blood pressure. Elevated night-time BP is a better predictor of cardiovascular risk than clinic BP, 24-hour BP means or daytime BP means. The predictive values of reading-to-reading BPV still remain low and conflicting. | ++++ | |
| Stress BP | Sub maximal BP | Provide additional prognostic information in CV prediction beyond normal rest blood pressure. The results remain controversial depending on different exercise BP indexes adopted. | ++ | |
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| ECG | ||||
| Resting ECG | Resting heart rate | Measures the electrical activity of the heart and relates to short-term risk of CVD. Resting heart rate is a strong, graded, and independent risk factor. Repolarization abnormalities in combination with LVH show great prediction value. Noncontact wireless ECG sensors based on capacitively coupled principle are becoming washable and can be integrated in clothing or wearable accessories for unobtrusive monitoring. | ++++ | |
| Ambulatory ECG | Nighttime heart rate | The prediction value of ambulatory heart rate remains low and somewhat controversial. HRV measures the vagal and sympathetic modulation of the sinus node. | ++ | |
| Stress ECG | Exercise-induced ST-segment depression | Provide additional prognostic information beyond normal resting ECG. Chronotropic incompetence, reduced heart rate recovery, and exercise capacity are proved to be strong predictors. The predictive values of others remain low. Heart rate recovery is still limited by the variable recovery protocols and variable criteria for abnormality. | +++ | |
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| Arterial Stiffness | ||||
| Aortic PWV | cfPWV | Clinical gold standard for assessing aortic stiffness. | Pressure dependent, without information of the wave reflection and other artery geometry information. Inaccurate measurement of the distance. | +++ |
| baPWV | Widely used in large scale trials for its convenience measurement. | ++ | ||
| Pulse wave analysis | AIx | Offering wave reflection information. Indirect indicator of arterial stiffness. | ++ | |
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| Blood glucose | Diabetes mellitus | Strong, graded, and independent predictors. Technical advances in noninvasive and continuous glucose monitoring are under development. | ++++ | |
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| ABI | ABI < 0.9 | Indicating the presence of peripheral artery disease | ++++ | |
BP: blood pressure; CV: cardiovascular; ABPM: ambulatory blood pressure monitoring; BPV: blood pressure variability; ECG: electrocardiogram; LVH: left ventricular hypertrophy; CVD: cardiovascular disease; LBBB: left bundle branch blocks; HRV: heart rate variability; cfPWV: carotid femoral pulse wave velocity; baPWV: brachial-ankle pulse wave velocity; Aix: aortic augmentation index; SBP: systolic blood pressure; PP: pulse pressure; AASI: ambulatory arterial stiffness index; ABI: ankle-brachial blood pressure index; IFG: impaired fasting glucose; IGT: impaired glucose tolerance.
Figure 8A blue print of real-time prediction of sudden cardiovascular events by physiological test using unobtrusive medical devices. The devices in the print are from [125, 133]. BP: blood pressure; HR: heart rate.