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11 Jun
2019-06-11 - 2019-06-13    
All Day
HIMSS and Health 2.0 European Conference Helsinki, Finland 11-13 June 2019 The HIMSS & Health 2.0 European Conference will be a unique three day event you [...]
7th Epidemiology and Public Health Conference
2019-06-17 - 2019-06-18    
All Day
Time : June 17-18, 2019 Dubai, UAE Theme: Global Health a major topic of concern in Epidemiology Research and Public Health study Epidemiology Meet 2019 in [...]
Inaugural Digital Health Pharma Congress
2019-06-17 - 2019-06-21    
All Day
Inaugural Digital Health Pharma Congress Join us for World Pharma Week 2019, where 15th Annual Biomarkers & Immuno-Oncology World Congress and 18th Annual World Preclinical Congress, two of Cambridge [...]
International Forum on Advancements in Healthcare - IFAH USA 2019
2019-06-18 - 2019-06-20    
All Day
International Forum on Advancements in Healthcare - IFAH (formerly Smart Health Conference) USA, will bring together 1000+ healthcare professionals from across the world on a [...]
Annual Congress on  Yoga and Meditation
2019-06-20 - 2019-06-21    
All Day
About Conference With the support of Organizing Committee Members, “Annual Congress on Yoga and Meditation” (Yoga Meditation 2019) is planned to be held in Dubai, [...]
Collaborative Care & Health IT Innovations Summit
2019-06-23 - 2019-06-25    
All Day
Technology Integrating Pre-Acute and LTPAC Services into the Healthcare and Payment EcosystemsHyatt Regency Inner Harbor 300 Light Street, Baltimore, Maryland, United States of America, 21202 [...]
2019 AHA LEADERSHIP SUMMIT
2019-06-25 - 2019-06-27    
All Day
Welcome Welcome to attendee registration for the 27th Annual AHA/AHA Center for Health Innovation Leadership Summit! The 2019 AHA Leadership Summit promotes a revolution in thinking [...]
Events on 2019-06-11
11 Jun
Events on 2019-06-17
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2019 AHA LEADERSHIP SUMMIT
25 Jun 19
San Diego
Latest News

Researchers at Mount Sinai use AI to detect COVID-19 in lung scans

Researchers from New York-based Mount Sinai Health System have combined artificial intelligence, imaging and clinical data to rapidly detect COVID-19 in patients. In a study published this week in Nature Medicine, researchers used AI algorithms in conjunction with chest CT scans and patient history to quickly diagnose patients who were positive for COVID-19 and improve the detection of patients who presented with normal CT scans.

“We were able to show that the AI model was as accurate as an experienced radiologist in diagnosing the disease, and even better in some cases where there was no clear sign of lung disease on CT,” said Dr. Zahi Fayad, director of the BioMedical Engineering and Imaging Institute at the Icahn School of Medicine at Mount Sinai, in a statement.

WHY IT MATTERS

Because the symptoms of COVID-19 are non-specific, it can be difficult to diagnose. Meanwhile, the SARS-CoV-2 virus-specific reverse transcriptase polymerase chain reaction (RT-PCR) test commonly used to identify COVID-positive patients can take up to two days to complete – and clinicians face the possibility of false negatives. RT-PCR test kits are also in short supply throughout many parts of the country. This, researchers say, reiterates the need for other ways to quickly and accurately diagnose patients with COVID-19.

Researchers relied on CT scans of more than 900 patients that had been admitted to 18 medical centers in 13 Chinese provinces. They included 419 confirmed COVID-19-positive cases and 486 COVID-19-negative scans. The team also had access to patients’ clinical information, including blood test results, age, sex and symptoms. Using patient data, Mount Sinai researchers developed an AI algorithm to produce separate probabilities of COVID-19 positivity based on CT images, clinical information and the two combined.

“In a test set of 279 patients, the AI system achieved an area under the curve of 0.92 and had equal sensitivity as compared to a senior thoracic radiologist,” researchers wrote. In addition, the algorithm correctly identified 17 of 25 patients whose RT-PCR results had tested positive for COVID-19 but who presented with normal CT scans; for comparison, radiologists had classified all the patients as COVID-negative.

Although clinicians in the United States do not frequently use CT scans to diagnose COVID-19, researchers say imaging can play a vital role in conserving hospital resources and treating patients quickly. “The high sensitivity of our AI model can provide a ‘second opinion’ to physicians in cases where CT is either negative (in the early course of infection) or shows nonspecific findings, which can be common,” said Fayad. “It’s something that should be considered on a wider scale, especially in the United States, where currently we have more spare capacity for CT scanning than in labs for genetic tests,” Fayad continued.

THE LARGER TREND

Researchers have increasingly relied on AI to diagnose and treat patients with the novel coronavirus. In March, cognitive computing platform vendor behold.ai announced it had developed an AI-based algorithm to flag chest X-rays from COVID-19. Calling its platform “instant triage,” behold.ai predicted it could help speed COVID-19 diagnosis.

“As we evaluate further positive cases from across the world, our results will be further validated,” said behold.ai Chief Medical Officer Dr. Tom Naunton Morgan. “This will increase the utility of our instant triage and potentially help reduce the burden on healthcare systems as more and more cases of pneumonia present and require rapid diagnosis,” Morgan said. Other technology vendors have adapted existing tuberculosis-detecting AI technology to help indicate COVID-affected lung tissue in chest X-rays.

ON THE RECORD

Mount Sinai researchers say their next steps will be to further develop the model to forecast patient outcomes and to share their results with other healthcare facilities. “This study is important because it shows that an artificial intelligence algorithm can be trained to help with early identification of COVID-19, and this can be used in the clinical setting to triage or prioritize the evaluation of sick patients early in their admission to the emergency room,” said Dr. Matthew Levin, director of the Mount Sinai Health System’s clinical data science team.

“This is an early proof [of] concept that we can apply to our own patient data to further develop algorithms that are more specific to our region and diverse populations,” said Levin. “This toolkit can easily be deployed worldwide to other hospitals, either online or integrated into their own systems,” said Fayad.