/plushcap/analysis/acceldata/acceldata-effective-strategies-for-tackling-data-quality-issues-in-healthcare-2

Effective Strategies for Tackling Data Quality Issues in Healthcare

What's this blog post about?

The volume of healthcare data is rapidly increasing due to electronic medical records, medical imaging, and other technologies. Maintaining high-quality data is essential for accurate diagnoses, appropriate treatments, and improved patient outcomes. Poor data quality can result in misdiagnoses, treatment errors, and inefficient processes, jeopardizing patient safety and increasing costs. Common healthcare data quality concerns include inaccurate data entry, inconsistent data formats, missing data, duplicate records, outdated information, and their impact on clinical trials and research. Strategies to address these issues include adopting electronic health records, standardizing data formats and codes, implementing real-time data validation, deploying automated data-cleansing tools, and utilizing machine learning for data anomaly detection.

Company
Acceldata

Date published
Oct. 2, 2024

Author(s)
-

Word count
1410

Hacker News points
None found.

Language
English


By Matt Makai. 2021-2024.