216 results on '"Fish, Mathews B."'
Search Results
2. Handling missing values in machine learning to predict patient-specific risk of adverse cardiac events: Insights from REFINE SPECT registry
3. Unsupervised learning to characterize patients with known coronary artery disease undergoing myocardial perfusion imaging
4. Time and event-specific deep learning for personalized risk assessment after cardiac perfusion imaging
5. Clinical phenotypes among patients with normal cardiac perfusion using unsupervised learning: a retrospective observational study
6. Myocardial Ischemic Burden and Differences in Prognosis Among Patients With and Without Diabetes: Results From the Multicenter International REFINE SPECT Registry
7. Mitigating bias in deep learning for diagnosis of coronary artery disease from myocardial perfusion SPECT images
8. Prevalence and predictors of automatically quantified myocardial ischemia within a multicenter international registry
9. Comparison of diabetes to other prognostic predictors among patients referred for cardiac stress testing: A contemporary analysis from the REFINE SPECT Registry
10. Direct Risk Assessment From Myocardial Perfusion Imaging Using Explainable Deep Learning
11. Machine learning to predict abnormal myocardial perfusion from pre-test features
12. Diagnostic safety of a machine learning-based automatic patient selection algorithm for stress-only myocardial perfusion SPECT
13. Deep Learning Analysis of Upright-Supine High-Efficiency SPECT Myocardial Perfusion Imaging for Prediction of Obstructive Coronary Artery Disease: A Multicenter Study
14. Prognostic value of early left ventricular ejection fraction reserve during regadenoson stress solid-state SPECT-MPI
15. Clinical Deployment of Explainable Artificial Intelligence of SPECT for Diagnosis of Coronary Artery Disease
16. The Updated Registry of Fast Myocardial Perfusion Imaging with Next-Generation SPECT (REFINE SPECT 2.0).
17. Automated quantitative analysis of CZT SPECT stratifies cardiovascular risk in the obese population: Analysis of the REFINE SPECT registry
18. Deep Learning for Prediction of Obstructive Disease From Fast Myocardial Perfusion SPECT A Multicenter Study
19. Impact of incomplete ventricular coverage on diagnostic performance of myocardial perfusion imaging
20. Impact of Early Revascularization on Major Adverse Cardiovascular Events in Relation to Automatically Quantified Ischemia
21. Upper reference limits of transient ischemic dilation ratio for different protocols on new-generation cadmium zinc telluride cameras: A report from REFINE SPECT registry
22. Rationale and design of the REgistry of Fast Myocardial Perfusion Imaging with NExt generation SPECT (REFINE SPECT)
23. 5-Year Prognostic Value of Quantitative Versus Visual MPI in Subtle Perfusion Defects: Results From REFINE SPECT
24. Clinical phenotypes among patients with normal cardiac perfusion using unsupervised learning: a retrospective observational study
25. Prognostic Value of Combined Clinical and Myocardial Perfusion Imaging Data Using Machine Learning
26. Relationship between quantitative and descriptive methods of studying blood flow through intrapulmonary arteriovenous anastomoses during exercise
27. “Same-Patient Processing” for multiple cardiac SPECT studies. 1. Improving LV segmentation accuracy
28. Time and event-specific deep learning for personalized risk assessment after cardiac perfusion imaging
29. Unsupervised learning to characterize patients with known coronary artery disease undergoing myocardial perfusion imaging
30. Mitigating bias in deep learning for diagnosis of coronary artery disease from myocardial perfusion SPECT images
31. Differences in Prognostic Value of Myocardial Perfusion Single-Photon Emission Computed Tomography Using High-Efficiency Solid-State Detector Between Men and Women in a Large International Multicenter Study
32. Handling missing values in machine learning to predict patient-specific risk of adverse cardiac events: Insights from REFINE SPECT registry
33. Explainable Deep Learning Improves Physician Interpretation of Myocardial Perfusion Imaging
34. Machine learning to predict abnormal myocardial perfusion from pre-test features
35. Comparison of diabetes to other prognostic predictors among patients referred for cardiac stress testing: A contemporary analysis from the REFINE SPECT Registry
36. Prognostically safe stress-only single-photon emission computed tomography myocardial perfusion imaging guided by machine learning: report from REFINE SPECT
37. Impact of Early Revascularization on Major Adverse Cardiovascular Events in Relation to Automatically Quantified Ischemia
38. Quantitative myocardial-perfusion SPECT: Comparison of three state-of-the-art software packages
39. Determining a minimum set of variables for machine learning cardiovascular event prediction: results from REFINE SPECT registry
40. Diagnostic safety of a machine learning-based automatic patient selection algorithm for stress-only myocardial perfusion SPECT
41. Prognostic Value of Phase Analysis for Predicting Adverse Cardiac Events Beyond Conventional Single-Photon Emission Computed Tomography Variables: Results From the REFINE SPECT Registry
42. Simplified normal limits and automated quantitative assessment for attenuation-corrected myocardial perfusion SPECT
43. Quantitation of Poststress Change in Ventricular Morphology Improves Risk Stratification
44. Determining a minimum set of variables for machine learning cardiovascular event prediction: results from REFINE SPECT registry.
45. Prognostic value of early left ventricular ejection fraction reserve during regadenoson stress solid-state SPECT-MPI
46. Prognostically safe stress-only single-photon emission computed tomography myocardial perfusion imaging guided by machine learning: report from REFINE SPECT
47. Quantitation of Post-Stress Change in Ventricular Morphology Improves Risk Stratification.
48. 5-Year Prognostic Value of Quantitative Versus Visual MPI in Subtle Perfusion Defects: Results From REFINE SPECT
49. Myocardial Ischemic Burden and Differences in Prognosis Among Patients With and Without Diabetes: Results From the Multicenter International REFINE SPECT Registry
50. Machine learning predicts per-vessel early coronary revascularization after fast myocardial perfusion SPECT: results from multicentre REFINE SPECT registry
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