THE HURDLES OF HEALTHCARE DATA AGGREGATION: IMPLICATIONS & INTEROPERABILITY
With the increasing importance of healthcare data in making clinical decisions, healthcare organizations are struggling to handle the huge amounts of data they produce. Healthcare Data Aggregation is the process of collecting and combining data from diverse sources to generate a broad sight of a patient’s health. Here we will discuss the hurdles of data aggregation in healthcare and the implications for data aggregation and interoperability.
The Challenges of Data Aggregation in Healthcare
1. Data Fragmentation: Healthcare data is generated by different sources such as EHRs, patient portals, and wearable devices. This leads to data fragmentation, making it difficult to consolidate data from various sources to make a complete outlook of a patient’s health.
2. Data Quality: Healthcare data is often incomplete, inaccurate, or inconsistent, making it difficult to rely on it for clinical decisionmaking. This is due to data entry errors, data silos, and the lack of data standards.
3. Data Security: Healthcare data is highly sensitive and confidential, making it essential to ensure that the data is secure and protected from unauthorized access or data breaches. This creates an additional challenge for healthcare organizations when sharing data across different systems and platforms.