| Literature DB >> 35120459 |
Dirk Lossnitzer1, Selina Klenantz2,3, Florian Andre4, Johannes Goerich5, U Joseph Schoepf6, Kyle L Pazzo6, Andre Sommer5, Matthias Brado5, Friedemann Gückel5, Roman Sokiranski5, Tobias Becher2,3, Ibrahim Akin2,3, Sebastian J Buss5, Stefan Baumann2,3.
Abstract
BACKGROUND: Machine-Learning Computed Tomography-Based Fractional Flow Reserve (CT-FFRML) is a novel tool for the assessment of hemodynamic relevance of coronary artery stenoses. We examined the diagnostic performance of CT-FFRML compared to stress perfusion cardiovascular magnetic resonance (CMR) and tested if there is an additional value of CT-FFRML over coronary computed tomography angiography (cCTA).Entities:
Keywords: Atherosclerosis; Cardiovascular magnetic resonance imaging; Coronary CT angiography; Coronary artery disease; Fractional flow reserve derived from coronary computed tomography angiography; Myocardial ischemia
Mesh:
Year: 2022 PMID: 35120459 PMCID: PMC8817462 DOI: 10.1186/s12872-022-02467-2
Source DB: PubMed Journal: BMC Cardiovasc Disord ISSN: 1471-2261 Impact factor: 2.298
Fig. 1Flow chart. Development of study population. CT-FFRML = fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm, cCTA = coronary computed tomography angiography, CMR = Cardiovascular magnetic resonance imaging, CABG = coronary artery bypass graft
Fig. 280-year-old male patient with pre-test probability of CAD of 37% (CAD consortium (%)- basic model). a cCTA demonstrates a high-risk plaque in the main stem of the left coronary artery and in the proximal left anterior descending coronary artery (arrow). b CT-FFRML software provides a color-coded 3-dimensional mesh of the coronary tree and calculated a value of 0.98 in an area distal of the stenosis (arrow). c Stress perfusion CMR in three short axis slices shows no perfusion deficit and thus no myocardial ischemia. CAD = coronary artery disease; cCTA = coronary CT angiography; CT-FFRML = Fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm; CMR = cardiovascular magnetic resonance imaging
Fig. 353-year-old male patient with suspected CAD and arterial hypertension. a cCTA illustrates a moderately graded stenosis (50–69%) with unclear hemodynamic relevance caused by mixed structured plaques in the mid left anterior descending coronary artery (arrow). b Color-coded 3-dimensional mesh created by CT-FFRML software shows a flow-limiting stenosis with a measured value of 0.77 (arrow). c a midventricular short axis stress perfusion CMR image demonstrates a significant perfusion deficit in the left anterior descending coronary artery territory, which correlates with the myocardium subtended by the hemodynamically significant lesion identified on CT-FFRML; CAD = coronary artery disease; cCTA = coronary CT angiography; CT-FFRML = Fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm; CMR = cardiovascular magnetic resonance imaging
Baseline characteristics
| Parameter | Mean value ± standard deviation or frequency |
|---|---|
| Age (years) | 67 ± 9 |
| Men | 110 (78%) |
| Body-mass-index (kg/m2) | 28 ± 5 |
| Systolic blood pressure (mmHg) | 154 ± 20 |
| Diastolic blood pressure (mmHg) | 86 ± 11 |
| Heart rate (beats per min) | 65 ± 13 |
| Arterial hypertensiona | 77 (64%) |
| Family history for CAD | 55 (45%) |
| Hypercholesterolemiab | 47 (41%) |
| Diabetes mellitus | 24 (20%) |
| Smoker | 15 (12%) |
| Pre-test probability of CAD | 20 ± 12 |
| Cholesterol (mg/dl) | 188 ± 50 |
| High-density lipoprotein (mg/dl) | 52 ± 15 |
| Low-density lipoprotein (mg/dl) | 118 ± 42 |
| Triglycerides (mg/dl) | 158 ± 103 |
| Hemoglobin A1c (%) | 6.0 ± 0.9 |
| Creatinine (mg/dl) | 1.0 ± 0.2 |
| Statin | 63 (53%) |
| beta-blocker | 39 (37%) |
| Aspirin | 40 (34%) |
| Angiotensin-converting-enzyme inhibitor or AT1 receptor blocker | 30 (32%) |
| Calcium channel blocker | 13 (14%) |
| P2Y12 inhibitor | 4 (3%) |
| Nitrates | 3 (3%) |
Unless otherwise specified, data are numbers of patients with percentage in parentheses. Data are mean ± standard deviation (SD). aDefined as blood pressure >140 mmHg systolic, >90 mmHg diastolic, or use of an antihypertensive medication. bDefined as a total cholesterol level of >200 mg/dL or use of lipid lowering medication. CAD = coronary artery disease, BMI = body mass index
Findings of cCTA, CT-FFRML and stress perfusion CMR
| Parameter | Mean value ± standard deviation or frequency (%) |
|---|---|
| Agatston scorea | 657 ± 808 |
| Agatston score interquartile range | 759 |
| No. of patients Agatston score > 400 | 74 (54%) |
| Luminal stenosis ≥ 50% | 129 (91%) |
| Mean No. of vessels per patient | 1.7 ± 0.9 |
| Luminal stenosis ≥ 70% | 28 (20%) |
| Mean No. of vessels per patient | 0.3 ± 0.6 |
| CT-FFRML ≤ 0.8 | 27 (19%) |
| Significant perfusion deficitb | 17 (12%) |
Unless otherwise specified, data are numbers of patient, with percentages in parentheses. Data are mean ± standard deviation (SD) or frequency (%). aAgatston score measured in 138 patients. bDefined as two neighboring slices or in midventricular or basal part more than 60 degrees or in apical part more than 90 degrees or a transmural defect irrespective of location. (37) cCTA = coronary CT angiography; CT-FFRML = fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm; CMR = cardiovascular magnetic resonance imaging
Diagnostic performance of CT-FFRML, cCTA (≥ 50% stenosis) and cCTA (≥ 70% stenosis) using stress perfusion cardiovascular magnetic resonance imaging as reference standard
| cCTA (≥ 50%) | cCTA (≥ 70%) | CT-FFRML (≤ 0.80) | |
|---|---|---|---|
| Sensitivity (%) | 94 (71–100) | 59 (33–82) | 88 (64–99) |
| Specificity (%) | 9 (5–15) | 85 (78–91) | 90 (84–95) |
| PPV (%) | 12 (11–14) | 36 (24–50) | 56 (42–69) |
| NPV (%) | 92 (60–99) | 94 (90–96) | 99 (94–100) |
| Accuracy (%) | 19 (13–27) | 82 (75–88) | 90 (84–94) |
CT-FFRML = fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm; cCTA = coronary CT angiography; PPV = positive predictive value; NPV = negative predictive value
Fig. 4ROC of Agatston score, cCTA (stenosis ≥ 70%) and CT-FFRML with stress perfusion CMR as reference standard. The AUC for detection of ischemia inducing stenosis by CT-FFRML was 0.89. Agatston score and cCTA (stenosis ≥ 70%) provide AUC values of 0.70 and 0.74 (n = 138). CAD = coronary artery disease; cCTA = coronary CT angiography; CT-FFRML = Fractional flow reserve derived from coronary computed tomography angiography based on machine learning algorithm; CMR = cardiovascular magnetic resonance imaging