Find resources and tools for Clinical & Business Intelligence in the healthcare IT industry to help you on your journey to turn data into action.
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Search HIMSSYour search returned 84 results.
- May 31, 2016
- January 19, 2016
Our ongoing web-based programs cover topics such as Data Warehousing, Data Lifecycle Management and Supporting Technologies, and more.
- January 27, 2015
Speaking to key healthcare industry stakeholders on Tuesday, Jan. 26, HHS Secretary Sylvia M. Burwell announced an ambitious plan to shift Medicare away from the fee-for-service payment model toward payment based on quality, value and cost-containment.
- September 24, 2015
This presentation provided an overview of the various forces in the healthcare ecosystem driving big data needs in healthcare systems emphasizing the role of health information technology, health reform and consumerism of health.
- December 16, 2014
A Health IT thought leader discusses the importance of user experience for healthcare analytics.
- January 12, 2015
Deploying C&BI to Enable the Future State of Care: Population Health Management
- January 13, 2015
Learn how organizations are leveraging ZynxCarebook’s mobile care coordination platform to improve communication and collaboration of care teams across the entire continuum.
- January 30, 2015
Data continues to flood into healthcare systems from multiple streams for multiple uses. And with patient-centric care taking center stage in 2015, Big Data will only grow in importance and complexity. Learn how to better manage this data.
- February 26, 2015
At this session, we’ll show how you can use tools already familiar to you, including Microsoft Excel, to manipulate and use data to enable better, faster decisions. We’ll give you examples of use cases, and show how you can use technology you already own and use in new ways.
- February 26, 2015
During this webinar, you’ll learn about CMS plans to link payments with performance on quality measures, how to operationalize real time monitoring of quality measures, and how to use integrated Predictive modeling to improve outcomes.