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Feasibility and prognostic role of machine learning-based FFRCT in patients with stent implantation.
- Source :
- European Radiology; Sep2021, Vol. 31 Issue 9, p6592-6604, 13p, 2 Diagrams
- Publication Year :
- 2021
-
Abstract
- Objectives: To investigate the feasibility and prognostic implications of coronary CT angiography (CCTA) derived fractional flow reserve (FFR<subscript>CT</subscript>) in patients who have undergone stents implantation. Methods: Firstly, the feasibility of FFR<subscript>CT</subscript> in stented vessels was validated. The diagnostic performance of FFR<subscript>CT</subscript> in identifying hemodynamically in-stent restenosis (ISR) in 33 patients with invasive FFR ≤ 0.88 as reference standard, intra-group correlation coefficient (ICC) between FFR<subscript>CT</subscript> and FFR was calculated. Secondly, prognostic value was assessed with 115 patients with serial CCTA scans after PCI. Stent characteristics (location, diameter, length, etc.), CCTA measurements (minimum lumen diameter [MLD], minimum lumen area [MLA], ISR), and FFR<subscript>CT</subscript> measurements (FFR<subscript>CT</subscript>, ΔFFR<subscript>CT</subscript>, ΔFFR<subscript>CT</subscript>/stent length) both at baseline and follow-up were recorded. Longitudinal analysis included changes of MLD, MLA, ISR, and FFR<subscript>CT</subscript>. The primary endpoint was major adverse cardiovascular events (MACE). Results: Per-patient accuracy of FFR<subscript>CT</subscript> was 0.85 in identifying hemodynamically ISR. FFR<subscript>CT</subscript> had a good correlation with FFR (ICC = 0.84). 15.7% (18/115) developed MACE during 25 months since follow-up CCTA. Lasso regression identified age and follow-up ΔFFR<subscript>CT</subscript>/length as candidate variables. In the Cox proportional hazards model, age (hazard ratio [HR], 1.102 [95% CI, 1.032–1.177]; p = 0.004) and follow-up ΔFFR<subscript>CT</subscript>/length (HR, 1.014 [95% CI, 1.006–1.023]; p = 0.001) were independently associated with MACE (c-index = 0.856). Time-dependent ROC analysis showed AUC was 0.787 (95% CI, 0.594–0.980) at 25 months to predict adverse outcome. After bootstrap validation with 1000 resamplings, the bias-corrected c-index was 0.846. Conclusions: Noninvasive ML-based FFR<subscript>CT</subscript> is feasible in patients following stents implantation and shows prognostic value in predicting adverse events after stents implantation in low-moderate risk patients. Key Points: • Machine-learning-based FFR<subscript>CT</subscript>is feasible to evaluate the functional significance of in-stent restenosis in patients with stent implantation. • Follow-up △FFR<subscript>CT</subscript>along with the stent length might have prognostic implication in patients with stent implantation and low-to-moderate risk after 2 years follow-up. The prognostic role of FFR<subscript>CT</subscript>in patients with moderate-to-high or high risk needs to be further studied. • FFR<subscript>CT</subscript>might refine the clinical pathway of patients with stent implantation to invasive catheterization. [ABSTRACT FROM AUTHOR]
- Subjects :
- PROPORTIONAL hazards models
CORONARY angiography
PROGNOSIS
Subjects
Details
- Language :
- English
- ISSN :
- 09387994
- Volume :
- 31
- Issue :
- 9
- Database :
- Complementary Index
- Journal :
- European Radiology
- Publication Type :
- Academic Journal
- Accession number :
- 152014461
- Full Text :
- https://doi.org/10.1007/s00330-021-07922-w