| Literature DB >> 30089110 |
Thomas D Stuckey1, Roger S Gammon2, Robi Goswami3, Jeremiah P Depta4, John A Steuter5, Frederick J Meine6, Michael C Roberts7, Narendra Singh8, Shyam Ramchandani9, Tim Burton9, Paul Grouchy9, Ali Khosousi9, Ian Shadforth10, William E Sanders10.
Abstract
BACKGROUND: Artificial intelligence (AI) techniques are increasingly applied to cardiovascular (CV) medicine in arenas ranging from genomics to cardiac imaging analysis. Cardiac Phase Space Tomography Analysis (cPSTA), employing machine-learned linear models from an elastic net method optimized by a genetic algorithm, analyzes thoracic phase signals to identify unique mathematical and tomographic features associated with the presence of flow-limiting coronary artery disease (CAD). This novel approach does not require radiation, contrast media, exercise, or pharmacological stress. The objective of this trial was to determine the diagnostic performance of cPSTA in assessing CAD in patients presenting with chest pain who had been referred by their physician for coronary angiography.Entities:
Mesh:
Year: 2018 PMID: 30089110 PMCID: PMC6082503 DOI: 10.1371/journal.pone.0198603
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Utilization of the Cardiac Phase Space Tomography Analysis (cPSTA) System.
Phase signal data are collected and transferred to cloud. The generated models and analysis are available for physician assessment. cPSTA System = Cardiac Phase Space Tomography Analysis System, CAD = coronary artery disease. Reprinted from presentation materials of A4L under a license, with permission from A4L and W20, original production 2016.
Fig 2Development and verification of machine-learned predictor.
The learning phase pairs “gold standard” results with phase signals for machine learning to develop algorithms. The verification phase tests the performance of the final algorithms on naïve signal data. cPSTA System = Cardiac Phase Space Tomography Analysis System. Reprinted from presentation materials of A4L under a license, with permission from A4L and W20, original production 2016.
Demographics of population.
| Characteristics | Development (n = 512) | Verification (n = 94) | p-value |
|---|---|---|---|
| Mean Age—Years (Range) | 61.5 ± 10.7 | 59.0 ± 9.8 | 0.04 |
| Male (%) | 60.2% | 69.1% | 0.11 |
| Female (%) | 39.8% | 30.9% | 0.11 |
| Mean BMI (Range) | 31.3 ± 7.0 | 32.5 ± 7.6 | 0.14 |
| Diabetes Mellitus (%) | 31.4% | 35.1% | 0.47 |
| Hypertension (%) | 72.9% | 75.5% | 0.70 |
| Hypercholesterolemia/Hyperlipidemia (%) | 71.3% | 70.2% | 0.90 |
| Angiographic Results = CAD Negative (%) | 69.1% | 73.4% | 0.46 |
| Angiographic Results = CAD Positive (%) | 30.9% | 26.6% | 0.46 |
Detecting flow-limiting CAD.
Machine-Learned Predictor (cPSTA) Compared to Exercise SPECT [7] and Exercise ECG [7, 26].
| Test | Sensitivity Range | Specificity Range |
|---|---|---|
| Rest cPSTA (N = 94) | 92% (95% CI = 74% to 100%) | 62% (95% CI = 51% to 74%) |
| Exercise SPECT | 82–88% | 70–88% |
| Exercise ECG | 54–75% | 64–75% |
* Negative Predictive Value for cPSTA was 96% (95% CI = 85% to 100%).