Proceedings of the NHLBI Workshop on Artificial Intelligence in Cardiovascular Imaging: Translation to Patient Care.
暂无分享,去创建一个
Ravi K. Samala | D. Dey | S. Antani | P. Sengupta | A. Badano | T. Leiner | V. Sachdev | R. Arnaout | W. Bandettini | P. Slomka | M. Williams | Ed Margerrison | Huiqing Li | Louis Jacques | Sanjiv Shah
[1] R. Arnaout,et al. ENRICHing medical imaging training sets enables more efficient machine learning , 2023, J. Am. Medical Informatics Assoc..
[2] R. Arnaout,et al. Label-free segmentation from cardiac ultrasound using self-supervised learning , 2022, ArXiv.
[3] D. Dey,et al. Deep Learning–Based Attenuation Correction Improves Diagnostic Accuracy of Cardiac SPECT , 2022, The Journal of Nuclear Medicine.
[4] D. Dey,et al. Deep Learning for Explainable Estimation of Mortality Risk From Myocardial Positron Emission Tomography Images , 2022, Circulation. Cardiovascular imaging.
[5] D. Dey,et al. Deep Learning of Coronary Calcium Scores From PET/CT Attenuation Maps Accurately Predicts Adverse Cardiovascular Events. , 2022, JACC. Cardiovascular imaging.
[6] D. Dey,et al. Automated nonlinear registration of coronary PET to CT angiography using pseudo-CT generated from PET with generative adversarial networks , 2022, Journal of Nuclear Cardiology.
[7] P. Hert,et al. Transparency of AI in Healthcare as a Multilayered System of Accountabilities: Between Legal Requirements and Technical Limitations , 2022, Frontiers in Artificial Intelligence.
[8] D. Dey,et al. Explainable Deep Learning Improves Physician Interpretation of Myocardial Perfusion Imaging , 2022, The Journal of Nuclear Medicine.
[9] D. Dey,et al. Deep learning-enabled coronary CT angiography for plaque and stenosis quantification and cardiac risk prediction: an international multicentre study , 2022, The Lancet. Digital health.
[10] Matthew B. A. McDermott,et al. Underdiagnosis bias of artificial intelligence algorithms applied to chest radiographs in under-served patient populations , 2021, Nature Medicine.
[11] A. Moran,et al. Spending on Cardiovascular Disease and Cardiovascular Risk Factors in the United States: 1996 to 2016 , 2021, Circulation.
[12] E. V. van Beek,et al. Machine Learning with 18F-Sodium Fluoride PET and Quantitative Plaque Analysis on CT Angiography for the Future Risk of Myocardial Infarction , 2021, The Journal of Nuclear Medicine.
[13] D. Dey,et al. Metabolic syndrome, fatty liver, and artificial intelligence-based epicardial adipose tissue measures predict long-term risk of cardiac events: a prospective study , 2021, Cardiovascular Diabetology.
[14] P. Parizel,et al. Epicardial and pericardial fat analysis on CT images and artificial intelligence: a literature review. , 2021, Quantitative imaging in medicine and surgery.
[15] Gary S Collins,et al. Reporting guidelines for clinical trial reports for interventions involving artificial intelligence: the CONSORT-AI Extension , 2020, BMJ.
[16] Kipp W. Johnson,et al. Proposed Requirements for Cardiovascular Imaging-Related Machine Learning Evaluation (PRIME): A Checklist: Reviewed by the American College of Cardiology Healthcare Innovation Council. , 2020, JACC. Cardiovascular imaging.
[17] Gary S Collins,et al. Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI Extension , 2020, Nature Medicine.
[18] Angelica I. Avilés-Rivero,et al. Common pitfalls and recommendations for using machine learning to detect and prognosticate for COVID-19 using chest radiographs and CT scans , 2020, Nature Machine Intelligence.
[19] Lauren Wilcox,et al. A Human-Centered Evaluation of a Deep Learning System Deployed in Clinics for the Detection of Diabetic Retinopathy , 2020, CHI.
[20] Curtis P. Langlotz,et al. Video-based AI for beat-to-beat assessment of cardiac function , 2020, Nature.
[21] P Hendrik Pretorius,et al. Improving Diagnostic Accuracy in Low-Dose SPECT Myocardial Perfusion Imaging With Convolutional Denoising Networks , 2020, IEEE Transactions on Medical Imaging.
[22] P. Kellman,et al. The Prognostic Significance of Quantitative Myocardial Perfusion , 2020, Circulation.
[23] P. Kellman,et al. Automated Inline Analysis of Myocardial Perfusion MRI with Deep Learning , 2019, Radiology. Artificial intelligence.
[24] Tim Leiner,et al. Artificial Intelligence Will Transform Cardiac Imaging—Opportunities and Challenges , 2019, Front. Cardiovasc. Med..
[25] Erik Schultes,et al. The FAIR Guiding Principles for scientific data management and stewardship , 2016, Scientific Data.
[26] Deepak L. Bhatt,et al. ACC/AHA/STS Statement on the Future of Registries and the Performance Measurement Enterprise: A Report of the American College of Cardiology/American Heart Association Task Force on Performance Measures and The Society of Thoracic Surgeons. , 2015, Journal of the American College of Cardiology.
[27] J. West,et al. Disruptive Innovation , 2015 .
[28] Albert de Roos,et al. Cardiac radiology: centenary review. , 2014, Radiology.
[29] Majnu John,et al. Facial Recognition Software Success Rates for the Identification of 3D Surface Reconstructed Facial Images: Implications for Patient Privacy and Security , 2012, Journal of Digital Imaging.
[30] Andrew Y. Ng,et al. Retrieval-Based Chest X-Ray Report Generation Using a Pre-trained Contrastive Language-Image Model , 2021, ML4H@NeurIPS.
[31] Rohit Gupta,et al. Super-Resolution using GANs for Medical Imaging , 2020 .