| Literature DB >> 35369339 |
Han Zhang1,2, Kuangyu Shi3,4, Mengyu Fei5, Xin Fan1,2, Lu Liu6, Chong Xu6, Shanshan Qin1,2, Jiajia Zhang1,2, Junpeng Wang1,2, Yu Zhang1,2, Zhongwei Lv1,2, Wenliang Che6, Fei Yu1,2.
Abstract
Background: The risk stratification of patients with ischemia and no obstructive coronary artery disease (INOCA) remains suboptimal. This study aims to establish a left ventricular mechanical dyssynchrony (LVMD)-based nomogram to improve the present situation.Entities:
Keywords: D-SPECT; INOCA; LVMD; nomogram; predict
Year: 2022 PMID: 35369339 PMCID: PMC8971375 DOI: 10.3389/fcvm.2022.827231
Source DB: PubMed Journal: Front Cardiovasc Med ISSN: 2297-055X
FIGURE 1Patient flowchart.
Clinical characteristics of the study population (n = 334).
| Normal (1) | INOCA (2) | CAD (3) | |||
|
| |||||
| Age, years | 63.46 ± 10.84 | 61.85 ± 9.36 | 0.24 | 62.52 ± 10.53 | 0.61 |
| Male gender, n (%) | 42(42.0%) | 66(55.9%) |
| 84(72.4%) |
|
| Height, cm | 163.32 ± 8.34 | 166.74 ± 8.03 |
| 167.68 ± 7.64 | 0.36 |
| Weight, Kg | 65.99 ± 12.23 | 68.70 ± 10.58 | 0.08 | 69.99 ± 10.36 | 0.35 |
| Body mass index, kg/m2 | 24.60 ± 3.09 | 24.70 ± 3.18 | 0.82 | 24.88 ± 3.09 | 0.66 |
| Hypertension, n (%) | 65(65.0%) | 73(61.9%) | 0.63 | 77(66.4%) | 0.47 |
| Diabetes, n (%) | 18(18.0%) | 22(18.6%) | 0.90 | 33(28.4%) | 0.08 |
| Dyslipidaemia, n (%) | 35(35.0%) | 33(28.0%) | 0.26 | 36(31.0%) | 0.61 |
| Current smoker, n (%) | 18(18.0%) | 25(21.2%) | 0.56 | 30(25.9%) | 0.40 |
|
| |||||
| Aspirin, n (%) | 47(47.0%) | 59(50.0%) | 0.66 | 90(77.6%) |
|
| Statins, n (%) | 64(64.0%) | 92(78.0%) |
| 106(91.4) |
|
| Beta blockers, n (%) | 43(43.0%) | 46(39.0%) | 0.55 | 62(53.4%) |
|
| CCB, n (%) | 42(42.0%) | 42(35.6%) | 0.33 | 48(41.4%) | 0.36 |
| ACEI or ARB, n (%) | 21(21.0%) | 22(18.6%) | 0.66 | 25(21.6%) | 0.60 |
|
| |||||
| LAD | 61 | 83 | 100 | ||
| LCX | 18 | 25 | 61 | ||
| RCA | 26 | 43 | 76 | ||
| 0-vessel, n (%) | 31(31.0%) | 18(15.3%) |
| 0(0%) |
|
| 1-vessel, n (%) | 43(43.0%) | 59(50.0%) | 0.30 | 38(32.7%) |
|
| 2-vessels, n (%) | 16(16.0%) | 31(26.3%) | 0.07 | 35(30.2%) | 0.51 |
| 3-vessels, n (%) | 10(10.0%) | 10(8.5%) | 0.70 | 43(37.1%) |
|
The bolded values and * both represent P < 0.05.
FIGURE 2(A) Stress LVMD parameters between three groups. (B) Rest LVMD parameters between three groups (∗P < 0.05, ∗∗P < 0.01, and ∗∗∗P < 0.001).
LV functions of the study population.
| Normal (1) | INOCA (2) | CAD (3) | |||
|
| |||||
| LVEF | 67.94 ± 8.85 | 63.39 ± 11.98 |
| 60.14 ± 13.86 | 0.16 |
| PER | −3.56 ± 0.64 | −3.23 ± 0.76 |
| −3.13 ± 0.87 | 0.59 |
| PFR | 2.48 ± 0.73 | 2.33 ± 0.77 | 0.40 | 2.16 ± 0.69 | 0.21 |
| SSS | 0.00 ± 0.00 | 5.0(4.0–7.0) |
| 7.0(5.0–10.0) |
|
| ESV | 21.13 ± 10.62 | 31.32 ± 25.40 |
| 37.59 ± 30.29 | 0.24 |
| EDV | 63.07 ± 19.06 | 75.91 ± 32.88 |
| 83.67 ± 36.11 | 0.24 |
| PBW | 26.76 ± 8.92 | 32.19 ± 15.78 |
| 39.10 ± 30.43 | 0.09 |
| PSD | 6.33 ± 2.48 | 8.14 ± 5.47 |
| 9.90 ± 8.33 | 0.16 |
| ENTROPY | 32.22 ± 8.14 | 36.53 ± 9.19 |
| 38.53 ± 11.88 | 0.39 |
|
| |||||
| LVEF | 69.68 ± 11.76 | 65.40 ± 11.96 |
| 60.66 ± 14.38 |
|
| PER | −3.66 ± 0.94 | −3.43 ± 0.87 | 0.17 | −3.21 ± 0.86 | 0.16 |
| PFR | 2.68 ± 0.92 | 2.37 ± 0.70 |
| 2.16 ± 0.77 | 0.07 |
| SRS | 0.00 ± 0.00 | 1(0.0–3.0) |
| 2(2.0–4.0) |
|
| ESV | 18.44 ± 10.16 | 28.44 ± 24.57 |
| 34.22 ± 28.61 | 0.27 |
| EDV | 59.61 ± 19.19 | 73.59 ± 31.65 |
| 78.05 ± 34.98 | 0.67 |
| PBW | 27.03 ± 10.68 | 33.88 ± 16.02 |
| 40.71 ± 31.50 | 0.09 |
| PSD | 6.46 ± 2.94 | 8.17 ± 4.31 |
| 10.36 ± 8.76 | 0.05 |
| ENTROPY | 32.13 ± 9.23 | 37.22 ± 9.19 |
| 40.28 ± 11.90 | 0.09 |
| SDS | 0.00 ± 0.00 | 4(3.0–5.0) |
| 5(3.0–6.0) |
|
| TID | 1.09 ± 0.15 | 1.08 ± 0.12 | 0.78 | 1.09 ± 0.12 | 0.81 |
The bolded values and * both represent P < 0.05.
Stress-induced changes in LV functions and LVMD parameters between three groups.
| Normal | INOCA | CAD | |||||
| LVEF | Stress | 67.94 ± 8.85 | 0.24 | 63.39 ± 11.98 | 0.20 | 60.14 ± 13.86 | 0.78 |
| Rest | 69.68 ± 11.76 | 65.40 ± 11.96 | 60.66 ± 14.38 | ||||
| PER | Stress | −3.56 ± 0.64 | 0.35 | −3.23 ± 0.76 | 0.06 | −3.13 ± 0.87 | 0.45 |
| Rest | −3.66 ± 0.94 | −3.43 ± 0.87 | −3.21 ± 0.86 | ||||
| PFR | Stress | 2.48 ± 0.73 | 0.10 | 2.33 ± 0.77 | 0.67 | 2.16 ± 0.69 | 0.93 |
| Rest | 2.68 ± 0.92 | 2.37 ± 0.70 | 2.16 ± 0.77 | ||||
| ESV | Stress | 21.13 ± 10.62 | 0.07 | 31.32 ± 25.40 | 0.38 | 37.59 ± 30.29 | 0.38 |
| Rest | 18.44 ± 10.16 | 28.44 ± 24.57 | 34.22 ± 28.61 | ||||
| EDV | Stress | 63.07 ± 19.06 | 0.20 | 75.91 ± 32.88 | 0.58 | 83.67 ± 36.11 | 0.23 |
| Rest | 59.61 ± 19.19 | 73.59 ± 31.65 | 78.05 ± 34.98 | ||||
| PBW | Stress | 26.76 ± 8.92 | 0.85 | 32.19 ± 15.78 | 0.50 | 39.10 ± 30.43 | 0.69 |
| Rest | 27.03 ± 10.68 | 33.88 ± 16.02 | 40.71 ± 31.50 | ||||
| PSD | Stress | 6.33 ± 2.48 | 0.73 | 8.14 ± 5.47 | 0.95 | 9.90 ± 8.33 | 0.68 |
| Rest | 6.46 ± 2.94 | 8.17 ± 4.31 | 10.36 ± 8.76 | ||||
| ENTROPY | Stress | 32.22 ± 8.14 | 0.94 | 36.53 ± 9.19 | 0.56 | 38.53 ± 11.88 | 0.27 |
| Rest | 32.13 ± 9.23 | 37.22 ± 9.19 | 40.28 ± 11.90 |
Comparison of risk factors between MACEs and non-MACEs groups.
| MACEs group ( | Non-MACEs group ( | ||
|
| |||
| Age, years | 59.04 ± 10.23 | 62.69 ± 8.98 | 0.08 |
| Male gender, n (%) | 11(40.7%) | 55(60.4%) | 0.07 |
| Height, cm | 166.44 ± 7.72 | 166.83 ± 8.16 | 0.87 |
| Weight, Kg | 71.83 ± 12.43 | 67.77 ± 9.85 | 0.08 |
| Body mass index, kg/m2 | 25.81 ± 3.13 | 24.37 ± 3.14 |
|
| Hypertension, n (%) | 20(71.4%) | 53(58.2%) | 0.14 |
| Diabetes, n (%) | 2(7.4%) | 20(22.0%) | 0.09 |
| Dyslipidaemia, n (%) | 3(11.1%) | 30(33.0%) |
|
| Current smoker, n (%) | 4(14.8%) | 21(23.1%) | 0.36 |
|
| |||
| Aspirin, n (%) | 14(51.9%) | 45(49.5%) | 0.83 |
| Statins, n (%) | 19(70.4%) | 73(80.2%) | 0.28 |
| Beta blockers, n (%) | 13(48.1%) | 33(36.3%) | 0.27 |
| CCB, n (%) | 12(44.4%) | 30(33.0%) | 0.27 |
| ACEI or ARB, n (%) | 13(48.1%) | 9(9.9%) |
|
|
| |||
| EF | 57.29 ± 15.04 | 65.21 ± 10.33 |
|
| PER | −3.09 ± 0.94 | −3.27 ± 0.70 | 0.40 |
| PFR | 2.16 ± 1.06 | 2.39 ± 0.64 | 0.29 |
| SSS | 9(7–13) | 5(4–6) |
|
| ESV | 41.18 ± 31.13 | 28.39 ± 22.81 |
|
| EDV | 87.74 ± 40.53 | 72.40 ± 29.61 |
|
| PBW | 43.78 ± 26.09 | 28.74 ± 8.65 |
|
| PSD | 11.98 ± 9.67 | 7.00 ± 2.48 |
|
| ENTROPY | 42.09 ± 11.81 | 34.88 ± 7.57 |
|
| LVMD, n (%) | 17(63.0%) | 20(22.0%) |
|
|
| |||
| EF | 59.78 ± 14.78 | 67.05 ± 10.64 |
|
| PER | −3.12 ± 0.96 | −3.52 ± 0.83 |
|
| PFR | 2.02 ± 0.79 | 2.48 ± 0.64 |
|
| SRS | 4(2–6) | 1(0–2) |
|
| ESV | 38.89 ± 30.05 | 25.34 ± 21.94 |
|
| EDV | 86.81 ± 38.33 | 69.67 ± 28.46 |
|
| PBW | 41.55 ± 19.89 | 31.18 ± 13.45 |
|
| PSD | 10.55 ± 5.10 | 7.47 ± 3.80 |
|
| ENTROPY | 42.72 ± 9.74 | 35.60 ± 8.40 |
|
| LVMD, n (%) | 14(51.9%) | 19(20.9%) |
|
| SDS | 5(4–6) | 4(3–5) |
|
| TID | 1.07 ± 0.10 | 1.07 ± 0.13 | 0.95 |
The bolded values and * both represent P < 0.05.
FIGURE 3(A) Kaplan–Meier curves for MACEs according to stress LVMD. (B) Kaplan–Meier curves for MACEs according to rest LVMD.
FIGURE 4A 82-year-old female patient with INOCA (LAD stenosis 30%, SSS = 8, SDS = 4) presented LVMD under both stress and rest. After 20 months of follow-up, she was hospitalized for heart failure.
Univariate and multivariate cox regression analysis for predicting MACEs.
| Univariate analysis | Multivariate analysis | |||
| HR (95%CI) | HR (95%CI) | |||
| Female | 1.86(0.86–4.02) | 0.12 | 3.79(1.48–9.74) |
|
| Age, years | 0.97(0.93–1.01) | 0.17 | ||
| BMI, kg/m2 | 1.10(0.99–1.23) | 0.07 | ||
| Stress EF | 0.97(0.95–1.00) |
| ||
| SSS | 1.15(1.09–1.22) |
| 1.14(1.05–1.25) |
|
| Stress ESV | 1.01(1.00–1.02) | 0.11 | ||
| Stress EDV | 1.01(1.00–1.02) | 0.12 | ||
| Stress LVMD | 6.06(2.68–13.69) |
| 3.82(1.30–11.20) |
|
| Rest EF | 0.97(0.95–1.00) |
| ||
| SRS | 1.08(1.00–1.17) |
| ||
| SDS | 1.34(1.11–1.61) |
| ||
| Rest PFR | 0.50(0.30–0.84) |
| 0.57(0.35–0.95) |
|
| Rest ESV | 1.01(1.00–1.02) | 0.09 | ||
| Rest EDV | 1.01(1.00–1.02) | 0.09 | ||
| Rest LVMD | 2.75(1.29–5.86) |
| ||
The bolded values and * both represent P < 0.05.
FIGURE 5(A) Nomogram for predicting 1 and 3 years of MACEs risk. For individualized predictions, a vertical line is drawn upward based on the patient’s characteristics to calculate the corresponding total score. The 1-year and 3-year MACEs risk is then calculated by drawing a vertical line down from “Total Points” based on the sum. (B) Decision curve analysis for 1-year predict. (C) Decision curve analysis for 3-year predict.
FIGURE 6(A) ROC curves of nomogram for predict 1 and 3 years of MACEs risk. (B) Calibration curve for 1-year predict. (C) Calibration curve for 3-year predict.