Healthcare industry
Hospitals
- Improve Patient Care
- Reduce the time required to access data
- Protect Personal Health Information (PHI) from the Electronic Health Record System (EHR , MHR)
- Increase data utilization and predictive analytics capabilities
- Address the lack of realistic data for software development and testing
Pharma & Life Sciences
- Share data and collaborate efficiently with health systems, payers, and related institutions to solve bigger problems faster
- Overcome data silos
- Perform studies and clinical trials to understand the drug product’s impact (efficacy) on this new disease
- Complete a full analysis in less than a month, with less effort
Academic Research
- Accelerate the pace of data-driven research by providing the ability to access data faster and easier
- Access to more data for hypothesis evaluation
- Solution for generating and sharing data in support of precision healthcare
- Check project feasibility before submitting for original data access
$67.4bn
expected AI Healthcare market value by 2027
60%
consumers lack sufficient access to patient data
95%
identify theft cases specifically target health records
60%
healthcare IT will use AI for automation and decision-making by 2024
Healthcare organizations and the role of data
Healthcare organizations’ data usage is important as it enables evidence-based medical decisions, personalized treatments, and medical research, ultimately leading to enhanced patient outcomes, improved operational efficiency, and advancements in medical knowledge and technologies.
Synthetic data can significantly benefit healthcare organizations by providing privacy-preserving alternatives. It enables the creation of realistic and non-sensitive datasets, empowering researchers, clinicians, and data scientists to innovate, validate algorithms, and conduct analysis without compromising patient privacy.
Why do healthcare organizations consider synthetic data?
Privacy-sensitive data
Health data is the most privacy-sensitive data with even stricter (privacy) regulations.
Urge to innovate with data
Check the inline on this text in this entire section – it’s not even
Data quality
Anonymization techniques destroy data quality, while data accuracy is crucial in health (e.g. for academic research and clinical trials).
Data exchange
The potential of data as a result of collaborative data exchange between health organizations, health systems, drug developers, and researchers is enormous.
Reduce costs
Healthcare organizations are under extreme pressure to reduce costs. This could be realized via analytics, for which data is needed.
Proud winners of the Global
SAS Hackathon
We are proud to announce that Syntho won in the healthcare and life sciences category after months of hard work on unlocking privacy-sensitive healthcare data with synthetic data as part of cancer research for a leading hospital.
Case studies
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Why Syntho?
organizations first
Time series and event data
Syntho supports time series data and event data (often also referred to as longitudinal data), which typically occurs in health data.
Healthcare data type
Syntho supports and has experience with the various data types from EHRs, MHRs, surveys, clinical trials, claims, patient registries and many more.
Product road map aligned
Syntho’s roadmap is aligned with strategic leading health organizations in the US and Europe.
Healthcare blog
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Save synthetic data in Healthcare
Explore the role of synthetic data in healthcare sector
What is synthetic data and why do healthcare organizations use it?
Value adding reference use cases in healthcare (like pharma, hospitals, health-tech, etc.)
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