Comparing the Prognostic Value of Stress Myocardial Perfusion Imaging by Conventional and Cadmium-Zinc Telluride Single-Photon Emission Computed Tomography through a Machine Learning Approach.
Valeria CantoniRoberta GreenCarlo RicciardiRoberta AssanteLeandro DonisiEmilia ZampellaGiuseppe CesarelliCarmela NappiVincenzo SanninoValeria GaudieriTeresa MannarinoAndrea GenovaGiovanni De SiminiAlessia GiordanoAdriana D'AntonioWanda AcampaMario PetrettaAlberto CuocoloPublished in: Computational and mathematical methods in medicine (2021)
We compared the prognostic value of myocardial perfusion imaging (MPI) by conventional- (C-) single-photon emission computed tomography (SPECT) and cadmium-zinc-telluride- (CZT-) SPECT in a cohort of patients with suspected or known coronary artery disease (CAD) using machine learning (ML) algorithms. A total of 453 consecutive patients underwent stress MPI by both C-SPECT and CZT-SPECT. The outcome was a composite end point of all-cause death, cardiac death, nonfatal myocardial infarction, or coronary revascularization procedures whichever occurred first. ML analysis performed through the implementation of random forest (RF) and k-nearest neighbors (KNN) algorithms proved that CZT-SPECT has greater accuracy than C-SPECT in detecting CAD. For both algorithms, the sensitivity of CZT-SPECT (96% for RF and 60% for KNN) was greater than that of C-SPECT (88% for RF and 53% for KNN). A preliminary univariate analysis was performed through Mann-Whitney tests separately on the features of each camera in order to understand which ones could distinguish patients who will experience an adverse event from those who will not. Then, a machine learning analysis was performed by using Matlab (v. 2019b). Tree, KNN, support vector machine (SVM), Naïve Bayes, and RF were implemented twice: first, the analysis was performed on the as-is dataset; then, since the dataset was imbalanced (patients experiencing an adverse event were lower than the others), the analysis was performed again after balancing the classes through the Synthetic Minority Oversampling Technique. According to KNN and SVM with and without balancing the classes, the accuracy (p value = 0.02 and p value = 0.01) and recall (p value = 0.001 and p value = 0.03) of the CZT-SPECT were greater than those obtained by C-SPECT in a statistically significant way. ML approach showed that although the prognostic value of stress MPI by C-SPECT and CZT-SPECT is comparable, CZT-SPECT seems to have higher accuracy and recall.
Keyphrases
- machine learning
- pet ct
- coronary artery disease
- computed tomography
- end stage renal disease
- healthcare
- chronic kidney disease
- prognostic factors
- left ventricular
- high resolution
- newly diagnosed
- heart failure
- emergency department
- positron emission tomography
- ejection fraction
- type diabetes
- percutaneous coronary intervention
- magnetic resonance
- peritoneal dialysis
- heavy metals
- stress induced
- transcatheter aortic valve replacement
- data analysis
- adverse drug
- electronic health record