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Saturday, April 28, 2018

Artificial Intelligence and Healthcare in 2030 | iReviews News
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Artificial intelligence (AI) in healthcare is the use of algorithms and software to approximate human cognition in the analysis of complex medical data. Specifically AI is the ability for computer algorithms to approximate conclusions without direct human input. The primary aim of health-related AI applications is to analyze relationships between prevention or treatment techniques and patient outcomes. AI programs have been developed and applied to practices such as diagnosis processes, treatment protocol development, drug development, personalized medicine,and patient monitoring and care. Medical institutions such as The Mayo Clinic, Memorial Sloan Kettering Cancer Center, Massachusetts General Hospital, and National Health Service, have developed AI algorithms for their departments. Large technology companies such as IBM and Google, and startups such as Welltok and Ayasdi, have also developed AI algorithms for healthcare.


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History

Research in the 1960s and 1970s produced the first problem-solving program, or expert system, known as Dendral. While it was designed for applications in organic chemistry, it provided the basis for the subsequent system MYCIN, considered one of the most significant early uses of artificial intelligence in medicine. MYCIN and other systems such as INTERNIST-1 and CASNET did not achieve routine use by practitioners however.

The 1980s and 1990s brought the proliferation of the microcomputer and new levels of network connectivity. During this time there was recognition by researchers and developers that AI systems in healthcare must be designed to accommodate the absence of perfect data and build on the expertise of physician. Approaches involving fuzzy set theory, Bayesian networks, and artificial neural networks, have been applied to intelligent computing systems in healthcare.

Medical and technological advancements occurring over this half-century period that have simultaneously enabled the growth healthcare-related applications of AI include:

  • Improvements in computing power resulting in faster data collection and data processing
  • Increased volume and availability of health-related data from personal and healthcare-related devices
  • Growth of genomic sequencing databases
  • Widespread implementation of electronic health record systems
  • Improvements in natural language processing and computer vision, enabling machines to replicate human perceptual processes,
  • Enhanced the precision of robot-assisted surgery

Maps Artificial intelligence in healthcare



Current Research

Various specialties in medicine have showed an increase in research regarding AI. However the specialty that has gained the greatest attention is the field of Radiology.

Radiology

Such an ability to interpret imaging results may allow clinicians to be aided to detect a change in an image that is minuet in detail, or something that a clinician may have accidentally missed. Such a study that has incorporated AI in radiology is a study at Stanford which has results presenting that the algorithm that they created can detect Pneumonia better then radiologists. The radiology conference Radiological Society of North America has implemented a large part of its schedule to the use of AI in imaging.

Telehealth

The increase of Telemedicine, has shown the rise of possible AI application. The ability to monitor patients using AI, may allow for the communication of information to physicians if possible disease activity may have occurred. The use of a device such that a person may wear, may allow for constant monitoring of patient and also for the ability to notice changes that may be less distinguishable by humans.

Industry

The subsequent motive of large based health companies merging with other health companies, allow for greater health data accessibility. Greater health data may allow for more implementation of AI algorithms. The following are examples of large companies that have contributed to AI algorithms for use in healthcare.

IBM

IBM's Watson Oncology is in development at Memorial Sloan Kettering Cancer Center and Cleveland Clinic. IBM is also working with CVS Health on AI applications in chronic disease treatment and with Johnson & Johnson on analysis of scientific papers to find new connections for drug development.

Microsoft

Microsoft's Hanover project, in partnership with Oregon Health & Science University's Knight Cancer Institute, analyzes medical research to predict the most effective cancer drug treatment options for patients. Other projects include medical image analysis of tumor progression and the development of programmable cells.

Google

Google's DeepMind platform is being used by the UK National Health Service to detect certain health risks through data collected via a mobile app. A second project with the NHS involves analysis of medical images collected from NHS patients to develop computer vision algorithms to detect cancerous tissues.

Intel

Intel's venture capital arm Intel Capital recently invested in startup Lumiata which uses AI to identify at-risk patients and develop care options.

Startups

Predictive Medical Technologies uses intensive care unit data to identify patients likely to suffer cardiac incidents. Modernizing Medicine uses knowledge gathered from healthcare professionals as well as patient outcome data to recommend treatments. Nimblr.ai uses an A.I. Chatbot to connect scheduling Electronic health record systems and automate the confirmation and scheduling of patients.

Other

Digital consultant apps like Babylon in the UK use AI to give medical consultation based on personal medical history and common medical knowledge. Users report their symptoms into the app, which uses speech recognition to compare against a database of illnesses. Babylon then offers a recommended action, taking into account the user's medical history.


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Regulation

Currently no regulations exist specifically for the use of AI in healthcare. In May 2016, the White House announced its plan to host a series of workshops and formation of the National Science and Technology Council (NSTC) Subcommittee on Machine Learning and Artificial Intelligence. In October 2016, the group published The National Artificial Intelligence Research and Development Strategic Plan, outlining its proposed priorities for Federally-funded AI research and development (within government and academia). The report notes a strategic R&D plan for the subfield of health information technology is in development stages.

The only agency that has expressed concerned is the FDA. Bakul Patel, the Associate Center Director for Digital Health of the FDA is quoted saying in May 2017.

"We're trying to get people who have hands-on development experience with a product's full life cycle," says Bakul Patel, the FDA's associate director for digital health. "We already have some scientists who know artificial intelligence and machine learning, but we want complementary people who can look forward and see how this technology will evolve."


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Future Of The Field

Investments from the US government in healthcare initiatives that will rely on AI include its $1B proposed budget for the Cancer Moonshot and $215M proposed investment in the Precision Medicine Initiative.

As the field progress, clinicians will be faced with the option to adopt these new applications or continue with the current state of medicine. Research throughout the continuing years may point to promising results, however researchers may face the question of the efficacy of AI in translating it into clinical use. Such questions have brought upon potential need for regulations.


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See also

  • Clinical decision support system
  • Computer-aided diagnosis
  • Computer-aided simple triage
  • IBM Watson Healthcare
  • DeepMind Healthcare
  • Speech recognition software in healthcare

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References

Source of article : Wikipedia