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12:00 AM - Hepatology 2021
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World Nanotechnology Congress 2021
2021-03-29    
All Day
Nano Technology Congress 2021 provides you with a unique opportunity to meet up with peers from both academic circle and industries level belonging to Recent [...]
Nanomedicine and Nanomaterials 2021
2021-03-29    
All Day
NanoMed 2021 conference provides the best platform of networking and connectivity with scientist, YRF (Young Research Forum) & delegates who are active in the field [...]
Smart Materials and Nanotechnology
2021-03-29 - 2021-03-30    
All Day
Smart Material 2021 clears a stage to globalize the examination by introducing an exchange amongst ventures and scholarly associations and information exchange from research to [...]
Hepatology 2021
2021-03-30 - 2021-03-31    
All Day
Hepatology 2021 provides a great platform by gathering eminent professors, Researchers, Students and delegates to exchange new ideas. The conference will cover a wide range [...]
Annual Congress on  Dental Medicine and Orthodontics
2021-04-05 - 2021-04-06    
All Day
Dentistry Medicine 2021 is a perfect opportunity intended for International well-being Dental and Oral experts too. The conference welcomes members from every driving university, clinical [...]
World Climate Congress & Expo 2021
2021-04-06 - 2021-04-07    
All Day
Climatology is the study of the atmosphere and weather patterns over time. This field of science focuses on recording and analyzing weather patterns throughout the [...]
European Food Chemistry and Drug Safety Congress
2021-04-12 - 2021-04-13    
All Day
We invite you to meet us at the Food Chemistry Congress 2021, where we will ensure that you’ll have a worthwhile experience with scholars of [...]
Proteomics, Genomics & Bioinformatics
2021-04-12 - 2021-04-13    
All Day
Proteomics 2021 is one of the front platforms for disseminating latest research results and techniques in Proteomics Research, Mass spectrometry, Bioinformatics, Computational Biology, Biochemistry and [...]
Plant Science & Physiology
2021-04-17 - 2021-04-18    
All Day
The PLANT PHYSIOLOGY 2021 theme has broad interests, which address many aspects of Plant Biology, Plant Science, Plant Physiology, Plant Biotechnology, and Plant Pathology. Research [...]
Pollution Control & Sustainable 2021
2021-04-26 - 2021-04-27    
All Day
Pollution Control 2021 conference is organizing with the theme of “Accelerating Innovations for Environmental Sustainability” Conference Series llc LTD organizes environmental conferences series 1000+ Global [...]
Events on 2021-03-30
Hepatology 2021
30 Mar 21
Events on 2021-04-06
Events on 2021-04-17
Events on 2021-04-26
Latest News

New Research Finds Fast MRI Scans Generated with Artificial Intelligence Were as Accurate as Traditional MRI

mri scans

New Research Finds Fast MRI Scans Generated with Artificial Intelligence Were as Accurate as Traditional MRI

New research finds that rapid magnetic resonance imaging (MRI) scans generated with artificial intelligence (AI) were just as effective as, and were diagnostically interchangeable with, traditional MRI. The results could significantly improve the patient experience, expand access to MRIs, and potentially enable new use-cases for MRI.

For the study, researchers at NYU Grossman School of Medicine and Facebook AI built a neural network and trained it using the world’s largest open source data set of deidentified knee MRIs, which was created and shared by NYU Langone Health as part of the fastMRI initiative it launched with Facebook two years ago. By removing roughly three-fourths of the raw data used to create a scan, the AI model was able to generate a fastMRI scan that matched the scan created by the standard slower MRI process. Because the fastMRI scans require four times less data, patients can be imaged much faster and spend less time in the scanning machine.

Musculoskeletal radiologists reviewed two sets of knee MRIs from 108 patients, one set using the standard imaging techniques, and one set using the fastMRI AI model. The results, published in the American Journal of Roentgenology, found no significant differences in the radiologists’ evaluations. They radiologists found the same abnormalities and arrived at the same diagnoses regardless of whether they were examining the standard or the AI-generated MRIs. In addition, all the radiologists judged the AI-accelerated images to be of better overall quality than the traditional ones.

“This study is an important step toward clinical acceptance and utilization of AI-accelerated MRI scans, because it demonstrates for the first time that AI-generated images are essentially indistinguishable in appearance from standard clinical MRI exams and are interchangeable in regards to diagnostic accuracy,” says Michael P. Recht, MD, Chair and Louis Marx Professor of Radiology at NYU Langone, and lead author of the study. “This marks an exciting paradigm shift in how we are able to improve the patient experience and create images.”

Study Details

The study was designed to show that AI-generated images will reliably result in the same diagnoses and meet radiologists’ needs just as traditional images would. For the study, six musculoskeletal radiologists reviewed two sets of knee MRIs of 108 test patients who had been evaluated at NYU Langone Health.

Two sets of MRIs were generated for each patient case: one set using the standard imaging techniques, and one set using the fastMRI AI model. The radiologists evaluating the scans were not told which images were created with AI, and to limit the potential for recall bias, the evaluations of the standard images and AI-accelerated images were spaced at least one month apart.

The radiologists systematically evaluated the images for pathology, such as meniscal tears, ligament abnormalities, and cartilage defects, and noted these in a structured report. Reviewers were also asked to grade image quality and to say whether they believed that the image had been created with AI. After the radiologists had reviewed the AI-accelerated and traditional MRIs for each case, results were compared to see whether there were discrepancies in their diagnoses.

“We are highly encouraged by these results,” says Daniel K. Sodickson, MD, PhD, Vice Chair for Research in Radiology and director of the Center for Advanced Imaging Innovation and Research at NYULH. “We also encourage others to use the fastMRI data and open-source code to build upon our findings. Together, we will continue to push the boundaries of medical imaging, using AI not merely to replicate tasks performed by humans, but to generate entirely new capabilities – like ultrafast MRI – that enhance the care of patients.”

Next Steps for FastMRI

Next NYU Langone and Facebook AI researchers want to show that fastMRI works with other vital organs, such as the brain. As an open source project fastMRI has published its data, models, and code so that other researchers, as well as manufacturers of commercial MRI systems, can build on their work and contribute new ideas. The fastMRI team hopes this open approach will speed progress towards clinical implementation and lead to new ways to use AI to accelerate MRI scans.

Source