TY - JOUR
T1 - Addition of 24-hour heart rate variability parameters to the cardiovascular health study stroke risk score and prediction of incident stroke
T2 - The cardiovascular health study
AU - Bodapati, Rohan K.
AU - Kizer, Jorge R.
AU - Kop, Willem J.
AU - Kamel, Hooman
AU - Stein, Phyllis K.
N1 - Funding Information:
The authors express their gratitude to the CHS participants. A full list of participating CHS investigators and institutions is at https://chsnhlbi. org. This work was supported in part by National Heart, Lung, and Blood Institute contracts HHSN268201200036C, HHSN-268200800007C, N01HC55222, N01HC85079, N01HC-85080, N01HC85081, N01HC85082, N01HC85083, N01HC-85086; and National Heart, Lung, and Blood Institute grants U01HL080295, with additional contribution from the National Institute of Neurological Disorders and Stroke. Additional support was provided through R01AG023629 from the National Institute on Aging. A full list of principal CHS investigators and institutions can be found at CHS-NHLBI.org.
Publisher Copyright:
© 2017 The Authors.
PY - 2017/7/1
Y1 - 2017/7/1
N2 - Background-Heart rate variability (HRV) characterizes cardiac autonomic functioning. The association of HRV with stroke is uncertain. We examined whether 24-hour HRV added predictive value to the Cardiovascular Health Study clinical stroke risk score (CHS-SCORE), previously developed at the baseline examination. Methods and Results-N=884 stroke-free CHS participants (age 75.3±4.6), with 24-hour Holters adequate for HRV analysis at the 1994-1995 examination, had 68 strokes over ≤ 8 year follow-up (median 7.3 [interquartile range 7.1-7.6] years). The value of adding HRV to the CHS-SCORE was assessed with stepwise Cox regression analysis. The CHS-SCORE predicted incident stroke (HR=1.06 per unit increment, P=0.005). Two HRV parameters, decreased coefficient of variance of NN intervals (CV%, P=0.031) and decreased power law slope (SLOPE, P=0.033) also entered the model, but these did not significantly improve the c-statistic (P=0.47). In a secondary analysis, dichotomization of CV% (LOWCV% ≤12.8%) was found to maximally stratify higher-risk participants after adjustment for CHS-SCORE. Similarly, dichotomizing SLOPE (LOWSLOPE < -1.4) maximally stratified higher-risk participants. When these HRV categories were combined (eg, HIGHCV% with HIGHSLOPE), the c-statistic for the model with the CHS-SCORE and combined HRV categories was 0.68, significantly higher than 0.61 for the CHS-SCORE alone (P=0.02). Conclusions-In this sample of older adults, 2 HRV parameters, CV% and power law slope, emerged as significantly associated with incident stroke when added to a validated clinical risk score. After each parameter was dichotomized based on its optimal cut point in this sample, their composite significantly improved prediction of incident stroke during ≤ 8-year follow-up. These findings will require validation in separate, larger cohorts.
AB - Background-Heart rate variability (HRV) characterizes cardiac autonomic functioning. The association of HRV with stroke is uncertain. We examined whether 24-hour HRV added predictive value to the Cardiovascular Health Study clinical stroke risk score (CHS-SCORE), previously developed at the baseline examination. Methods and Results-N=884 stroke-free CHS participants (age 75.3±4.6), with 24-hour Holters adequate for HRV analysis at the 1994-1995 examination, had 68 strokes over ≤ 8 year follow-up (median 7.3 [interquartile range 7.1-7.6] years). The value of adding HRV to the CHS-SCORE was assessed with stepwise Cox regression analysis. The CHS-SCORE predicted incident stroke (HR=1.06 per unit increment, P=0.005). Two HRV parameters, decreased coefficient of variance of NN intervals (CV%, P=0.031) and decreased power law slope (SLOPE, P=0.033) also entered the model, but these did not significantly improve the c-statistic (P=0.47). In a secondary analysis, dichotomization of CV% (LOWCV% ≤12.8%) was found to maximally stratify higher-risk participants after adjustment for CHS-SCORE. Similarly, dichotomizing SLOPE (LOWSLOPE < -1.4) maximally stratified higher-risk participants. When these HRV categories were combined (eg, HIGHCV% with HIGHSLOPE), the c-statistic for the model with the CHS-SCORE and combined HRV categories was 0.68, significantly higher than 0.61 for the CHS-SCORE alone (P=0.02). Conclusions-In this sample of older adults, 2 HRV parameters, CV% and power law slope, emerged as significantly associated with incident stroke when added to a validated clinical risk score. After each parameter was dichotomized based on its optimal cut point in this sample, their composite significantly improved prediction of incident stroke during ≤ 8-year follow-up. These findings will require validation in separate, larger cohorts.
KW - Autonomic nervous system
KW - Clinical stroke risk model
KW - Heart rate variability
KW - Prediction
KW - Predictors
KW - Risk prediction
KW - Risk stratification
KW - Stroke
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U2 - 10.1161/JAHA.116.004305
DO - 10.1161/JAHA.116.004305
M3 - Article
C2 - 28733431
AN - SCOPUS:85025427488
SN - 2047-9980
VL - 6
JO - Journal of the American Heart Association
JF - Journal of the American Heart Association
IS - 7
M1 - e004305
ER -