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Natural, Traditional & Alternative Medicine
2021-06-07 - 2021-06-08    
All Day
Natural, Traditional and Alternative Medicine mainly focuses on the latest and exciting innovations in every area of Natural Medicine & Natural Products, Complementary and Alternative [...]
Advances In Natural Medicines, Nutraceuticals & Neurocognition
2021-06-11 - 2021-06-12    
All Day
The two-days meeting goes to be an occurrence to appear forward to for its enlightening symposiums & workshops from established consultants of the sphere, exceptional [...]
Automation and Artificial Intelligence
2021-06-15 - 2021-06-16    
All Day
Conference Series invites all the experts and researchers from the Automation and Artificial Intelligence sector all over the world to attend “2nd International Conference on [...]
Green Chemistry and Technology 2021
2021-06-23 - 2021-06-24    
All Day
Green Chemistry and Technology is a global overview with the Theme:: “Sustainable Chemistry and its key role in waste management and essential public service to [...]
Food Science & Nutrition
2021-06-25 - 2021-06-26    
All Day
Food Science is a multi-disciplinary field involving chemistry, biochemistry, nutrition, microbiology, and engineering to give one the scientific knowledge to solve real problems associated with [...]
Food Safety and Health
2021-06-28 - 2021-06-29    
All Day
The main objective is to bring all the leading academic scientists, researchers and research scholars together to exchange and share their experiences and research results [...]
Food Microbiology
2021-06-28 - 2021-06-29    
All Day
This conference provide a platform to share the new ideas and advancing technologies in the field of Food Microbiology and Food Technology. The objective of [...]
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Case Studies Latest News

How AI and Big Data Are Shaping Healthcare

EMR Industry

Over the past decade, healthcare has emerged as one of the fastest-growing sectors of the economy. With rising concerns over pandemics like the coronavirus, the industry is poised for further expansion. To keep pace with the increasing demand for healthcare services and solutions, organizations around the world are leveraging advanced technologies such as AI, machine learning, and big data.

AI, in particular, is set to play a transformative role in healthcare. Acumen Research and Consulting projects the global AI healthcare market will reach $8 billion by 2026. Notably, AI and big data share significant synergies, using powerful data processing to tackle complex business and real-world challenges. Together, they offer a wide range of benefits for both individuals and organizations, including:

  • Enabling patient self-service through intelligent chatbots
  • Accelerating diagnoses with computer-assisted tools
  • Using image analysis to explore molecular structures in drug discovery and support radiologists in patient diagnosis
  • Personalizing treatments by leveraging deeper clinical insights

How AI Can Predict Heart Attacks
Plaque is formed from substances like cholesterol and fat that circulate in the bloodstream. Over time, this buildup causes arteries to narrow and harden. Much like a sink drain gets clogged by food particles and debris, arteries can become blocked by plaque, limiting blood flow and increasing the risk of heart attack or stroke.

A test known as coronary computed tomography angiography (CTA) captures 3D images of the heart and arteries, making plaque visible. However, measuring plaque levels from these images typically takes an expert 25–30 minutes. To speed up this process, researchers at Cedars Sinai developed an AI algorithm that can complete the task in just seconds.

By training the AI on 900 coronary CTA images previously reviewed by specialists, the computer learned to detect and quantify plaque on its own. The algorithm’s measurements also successfully predicted the likelihood of heart attacks within five years among 1,611 participants in a related study.