Echocardiographic predictors of right ventricular failure following left ventricular assist device implantation: Systematic review and meta- analysis
DOI:
https://doi.org/10.21542/gcsp.2025.35Abstract
Background: Right ventricular failure (RVF) is a significant complication following left ventricular assist device (LVAD) implantation, with no universally accepted predictors. This meta-analysis identifies the most reliable echocardiographic predictors.
Methods: OVID Medline was systematically searched for observational studies reporting ten preoperative echocardiographic parameters in patients who did and did not develop RVF post- LVAD. Random-effects meta-analyses were performed. Subgroup analyses and meta-regression assessed the influence of RVF definitions and clinical characteristics on predictive capacity. Logistic regression modeling identified key cutoffs.
Results: Thirty-nine studies involving 2,975 patients were included, with pooled RVF prevalence of 0.30 (0.26–0.34). Higher right ventricular end-diastolic diameter (RVEDD) (SMD: 0.368, p<0.0001, I2: 1.73%) and less negative right ventricular free wall strain (RVFWS) (SMD: 0.931, p<0.0001, I2: 82.9%) were significant predictors. Higher right ventricular end-diastolic area (RVEDA) was also reliable but weaker (SMD: 0.224, p=0.0282, I2: 0.00%). Lower tricuspid annular plane systolic excursion (TAPSE) was a strong predictor (SMD: -0.512, p<0.0001,) but less reliable due to high heterogeneity (I2: 86.1%). Subgroup analyses of TAPSE by RVF definition showed modestly reduced heterogeneity (43.7%). Predictive capacity was significantly better in more stable patients (i.e., no inotropes/IABP, higher INTERMACS status). Logistic regression identified increased RVF risk at RVEDD ≥41.5 mm (sensitivity: 50.0%, specificity: 83.3%) and RVFWS ≥- 11.3% (sensitivity: 88.9%, specificity: 88.9%).
Conclusions: RVEDD ≥41.5 mm and RVFWS ≥-11.3% are the strongest, most reliable predictors of RVF post-LVAD. Variations in RVF endpoint definitions only partially explain the observed heterogeneity, while patient characteristics significantly influence predictive accuracy. Future studies should explore subgroup-specific cutoffs.
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Copyright (c) 2025 Shruti Rajendra, Yousuf Salmasi, Espeed Khoshbin

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This is an open access article distributed under the terms of the Creative Commons Attribution license CC BY 4.0, which permits unrestricted use, distribution and reproduction in any medium, provided the original work is properly cited.