Artificial Intelligence goes from the automation factor to an autonomous partner in the field of providing and financing healthcare, in accordance with Techvision 2025, a up-to-date report on the research and consulting giant.
The report stated that the success of this transformation was based on one critical factor: trust. In fact, 81% of health directors agree that the trust strategy must evolve in parallel with their technological strategy, the report said.
A Techvision 2025 is the subject of Himscast this week in which Andy Truscott Global Technology Accenture offers a deep immersion in results and discusses, among others, how hospitals and healthcare systems must build a digital core and integrate data and artificial intelligence.
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Talking points:
- What is Techvision 2025? What is his goal?
- What are some of the main statistical arrangements?
Hospitals and healthcare systems must build a digital core and integrate data and artificial intelligence to improve decisions and patient experience. - Organizations of healthcare suppliers must enable employees to authorize employees and train staff to accept AI, ensuring that they feel property and discover up-to-date conclusions.
- The need to create a trustworthy artificial intelligence to design artificial intelligence that reflects the values of the organization and builds the trust of patients.
- How will health care and other IT leaders in hospitals and healthcare systems trust AI?
More about this episode:
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CEDARS-SINAI CAIO: AI transforms the relationship between guardians and IT
UCSF creates a powerful system of artificial intelligence that increases oncological care
The second health improves the key KPI indicators thanks to home machinery
Wise Hospice Options uses artificial intelligence to shorten the time of e-confession from 20 seconds to 2
The Mount Sinai syndrome forms the AI algorithm to detect sleep disorders