| Literature DB >> 23324403 |
Timothy C Wong1, Kayla Piehler, Kathy S Puntil, Diego Moguillansky, Christopher G Meier, Joan M Lacomis, Peter Kellman, Stephen C Cook, David S Schwartzman, Marc A Simon, Suresh R Mulukutla, Erik B Schelbert.
Abstract
BACKGROUND: Echocardiography (echo) is a first line test to assess cardiac structure and function. It is not known if cardiovascular magnetic resonance (CMR) with late gadolinium enhancement (LGE) ordered during routine clinical practice in selected patients can add additional prognostic information after routine echo. We assessed whether CMR improves outcomes prediction after contemporaneous echo, which may have implications for efforts to optimize processes of care, assess effectiveness, and allocate limited health care resources. METHODS ANDEntities:
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Year: 2013 PMID: 23324403 PMCID: PMC3599652 DOI: 10.1186/1532-429X-15-6
Source DB: PubMed Journal: J Cardiovasc Magn Reson ISSN: 1097-6647 Impact factor: 5.364
Patient characteristics
| | | |
| Age (years) | 54 (42–65) | 55 (44–65) |
| Female | 41% | 36% |
| White race | 88% | 88% |
| Black race | 8.5% | 8.1% |
| | | |
| | | |
| Known or suspected cardiomyopathy | 31% | 36% |
| Possible coronary disease (stress testing or viability) | 31% | 30% |
| Vasodilator stress testing | 17% | 17% |
| Evaluation for arrhythmia substrate | 21% | 25% |
| Mass or thrombus | 3% | 3% |
| | | |
| | | |
| Inpatient | 33% | 36% |
| | | |
| | | |
| Hypertension | 45% | 51% |
| Diabetes | 17% | 19% |
| Dyslipidemia | 35% | 37% |
| Current cigarette smoking | 15% | 20% |
| Atrial fibrillation or flutter | 6% | 8% |
| Body mass index (kg/m2) | 28.1 (24.4-33.4) | 28.1 (24.1-33.2) |
| Obstructive coronary artery disease (>70% by angiography) | 19% | 20% |
| Prior coronary bypass | 8% | 8% |
| Prior percutaneous coronary intervention | 14% | 15% |
| Prior heart failure documented in medical records | 18% | 22% |
| | | |
| Glomerular filtration rate (mL/min/1.73 m2) | 82 (66–102) | 81 (66–105) |
| Ejection fraction by echocardiography (%) | 58 (34–63) | 58 (38–63) |
| Ejection fraction by CMR (%) | 58 (47–65) | 55 (38–63) |
| Late gadolinium enhancement (LGE) | 42% | 52% |
| Myocardial infarction by LGE | 19% | 22% |
Figure 1Generalizability is important for newer imaging modalities, and our survival data of consecutive patients stratified by cardiovascular magnetic resonance (CMR) findings reproduced the results of others. Our data (n = 1044) in panel A yielded similar relationships as initially described by Cheong et al., [5] reproduced in panel B (n = 857). Permission to reproduce the figure in panel B was granted by the publisher (Wolters Kluwer Health).
Figure 2Ejection fraction (EF) measured by contemporaneous echocardiography and cardiovascular magnetic resonance (CMR) correlate only moderately (panel A), and there is considerable scatter and misclassification. Bland-Altman analysis (panel B) reveals that this scatter does not result from systematic bias. Importantly, most of scatter occurs in the 30%-50% range of the EF spectrum where clinical decision making relies most heavily on EF measures as shown by the thin gray box in panel B. Of note, variation far exceeded the ∆ 5% increment used for EF reporting by echocardiography. In Panel C, despite similar median EF values and the absence of meaningful bias in the EF measures of the population, the scatter exhibited by the individual differences in echocardiography and CMR EF measures culminate in 102 individuals (23%) of the sample being categorized differently (highlighted in bold font).
Figure 3Graphical depiction of the Net Reclassification Improvement (NRI) where univariable Cox regression models with cardiovascular magnetic resonance (CMR) ejection fraction (EF) predicting all cause mortality (panel A) or death or cardiac transplant (panel B) are compared to Cox regression models containing echocardiography (echo) EF. Since the reclassification improved using CMR EF relative to echocardiography EF in both those with events and those without events, the NRI for all cause mortality and death/cardiac transplant are 0.51 (includes rounding error; panel A) and 0.61 (panel B), respectively, after summing these net improvements for events and nonevents.
Figure 4Kaplan Meier survival curves for all cause mortality (panel A) and death or cardiac transplantation (panel B) according to late gadolinium enhancement (LGE) accounting for variation in age, ejection fraction by echocardiography, and regional wall motion abnormalities detected by echocardiography.
Late gadolinium enhancement (LGE) added significant predictive ability for either death or transplant free survival beyond ejection fraction (EF), age, regional wall motion by echocardiography and gender in Cox regression models regardless of how EF was measured
| Mortality | CMR | 3.84 (1.11-13.4) | 0.61 (0.30-0.92) | 0.017 (0.005, 0.028) |
| Mortality | echocardiography | 4.44 (1.30-15.2) | 0.72 (0.40-0.98) | 0.024 (0.008, 0.040) |
| Transplant free survival | CMR | 4.02 (1.16-13.9) | 0.64 (0.35-0.93) | 0.018 (0.005, 0.030) |
| Transplant free survival | echocardiography | 4.79 (1.41-16.3) | 0.74 (0.46-0.99) | 0.027 (0.009, 0.044) |
All models stratified by gender and adjusted for age, regional wall motion abnormalities by echocardiography and ejection fraction (EF) by either echocardiography or CMR. The net reclassification improvement (NRI) and integrated discrimination improvement (IDI) reflect the added performance of the model after LGE data are added.