No Code Data Quality Management for the Healthcare Industry

Achieve better data integration across IT systems in the healthcare industry for enhanced patient data record protection and improved medical services.

healthcare data matching

7 out of 100 medical records are either mismatched or duplicates of existing patient records

Imagine healthcare providers grappling with fragmented patient records, clinical errors resulting from inaccurate data, and compliance risks due to inconsistent information. This is why data quality in healthcare is important. These issues not only compromise patient care but also pose significant financial and reputational risks to healthcare organisations.

WinPure’s no-code data quality solution revolutionizes healthcare data management. By cleansing and enriching patient data, we empower healthcare professionals like you with accurate and comprehensive insights, leading to better clinical outcomes, streamlined operations, and enhanced regulatory compliance. Unlock the full potential of your healthcare data, delivering superior patient care and driving organizational excellence.

healthcare industry data challenges

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How WinPure enhances data quality in healthcare institutions

waiting times icon

Better patient targeting and lower waiting times

Help hospitals deliver quality healthcare with trustworthy data. Use WinPure to manage discrepancies and inaccuracies with real-time API integration and data cleansing for new and existing patient records.

multiple hospitals

Better coordination between multiple hospitals

Ensure high data quality in healthcare across internal and external systems for expedited medical care. Our fuzzy matching and entity resolution algorithm keeps data consistent while following HIPAA guidelines.

misdiagnosis rates

Minimise misdiagnosis rates

Process inter-agency and public requests faster with automated record linkage and data cleansing procedures in place. WinPure helps you deliver results faster by consolidating disparate data entries in one place.

operating costs

Arrest higher operating costs

Eliminate duplicate records and denied claims to improve operational efficiency and maintain cost-effectiveness. WinPure’s automated data deduplication and consolidation processes help you focus on the business.

Need help transforming your data?

Book a demo to get started

winpure solutions

Higher data quality in healthcare institutions results in increased value


of medical organizations say data helps improve health outcomes at the community level
Source: HIMSS


boost in matched patient data rates with standardized addresses based on USPS guidelines
Source: HIMSS


boost to patient data quality when electronic health data is integrated across multiple hospitals
Source: HIMSS

Centura Health

Fast & Accurate Data Matching Saves Precious Time

Centura Health connects individuals, families and neighborhoods across Colorado and western Kansas with more than 6,000 physicians and more than 21,000 of the best hearts and minds in health care.
Through their hospitals, senior living communities, health neighborhoods, home care and hospice services, they are making the region’s best health care accessible and affordable in every community they serve.

Read Case Study

Centura Health case study thumb

Recommended by industry leaders
Rated by leading platforms

Eric Branson
Eric Branson
Founder of Highr

Definitely recommend WinPure for anyone dealing with large quantities of data. The fuzzy matching is really intuitive and after a bit of testing with the settings it ends up being able to remove dupes better than anything else I've ever tried.

Alexander Goldenberg
Director of Information Technology and Operations

Using WinPure shaves hours off when comparing data from different sources. Its very fast and the results are brilliant. The product support and ease of use are great. The support team is very knowledgeable and easy to connect with.

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Edward B.
Company Owner

We perform multiple matching projects for our clients and WinPure has filled the bill for these. The product is very easy to use, incredibly fast and we can complete a large matches in a very short time.

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Richard F.
Company Owner

WinPure is a really great product, we've been using it with excellent results for many years now, for finding and removing duplicate records and to keep our lists and database more accurate.

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Cynthia T.
Director of Information Technology

WinPure Clean & Match Enterprise works really great to analyze data and find duplicated customer records. It saves us tons of money when mailing catalogs. This is a great product for the money and easy to use.

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Naveed B.
IT Consultant

A very powerful but easy to use tool for cleansing and removing duplicates from databases. I have used Clean & Match for many of my clients, and I am regularly recommending this product to other companies.

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Explore WinPure’s award-winning AI Data Quality platform packed with capabilities like:

  • Data Profiling
  • Data Cleansing & Standardization
  • Data/Fuzzy Matching
  • Data Deduplication
  • Entity Resolution
  • Address Verification

…. and much more!

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Frequently asked questions

What is data quality in healthcare?

Data quality refers to the degree to which data fulfils its intended purpose. In healthcare, it encompasses maintaining electronic health records (EHRs), diagnosing diseases, conducting research, and designing medical policies.

What are the key requirements for data quality in healthcare?

Data should be readily available, accessible and highly accurate, and should adhere to the correct patterns, formats, and domains.

How can healthcare organisations ensure data quality?

Healthcare organisations can standardise data entry, conduct regular audits, organise training and awareness sessions, and leverage technology solutions to improve overall data quality.