Health IT Analytics September 27, 2023
Shania Kennedy

Understanding data generation, collection, and processing can guide stakeholders looking to tackle various data analytics projects in healthcare.

As data analytics become more necessary to advance population and public health, healthcare stakeholders may find themselves increasingly working on analytics projects. The outcomes of these projects depend on many factors, but healthcare organizations can increase the likelihood of success by understanding the basics of the data lifecycle or data processing cycle.

The data processing cycle generally consists of the following steps: data generation, collection, processing, storage, management, analysis, visualization, interpretation, and disposal. While these phases are essentially the same across projects and industries, in healthcare, there are particular considerations that can help drive improved project outcomes.

This primer is the first...

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