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NextGen UGM 2025
2025-11-02 - 2025-11-05    
12:00 am
NextGen UGM 2025 is set to take place in Nashville, TN, from November 2 to 5 at the Gaylord Opryland Resort & Convention Center. This [...]
Preparing Healthcare Systems for Cyber Threats
2025-11-05    
2:00 pm
Healthcare is facing an unprecedented level of cyber risk. With cyberattacks on the rise, health systems must prepare for the reality of potential breaches. In [...]
MEDICA 2025
2025-11-17 - 2025-11-20    
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Expert Exchange in Medicine at MEDICA – Shaping the Future of Healthcare MEDICA unites the key players driving innovation in medicine. Whether you're involved in [...]
Events on 2025-11-02
NextGen UGM 2025
2 Nov 25
TN
Events on 2025-11-05
Events on 2025-11-17
MEDICA 2025
17 Nov 25
40474 Düsseldorf

Events

Articles

Algorithm Uses EHR Data To Identify Diabetes at Earliest Possible Date

diabetes

Researchers have developed an algorithm that can evaluate electronic health records to determine whether the patient has diabetes, FierceHealthIT reports.

Details of Algorithm

The algorithm, published in BioMedCentral, focuses on determining the earliest possible data of diagnosis in close to real time.

It evaluates information that is regularly documented and can be extracted from structured data fields, including:

  • Past medical history;
  • Problem list;
  • Medications; and
  • Laboratory results.

Each element is given a point value. After reaching a certain threshold, the algorithm identifies the presence of diabetes and calculates the earliest date that the disease could have been diagnosed.

Algorithm’s Accuracy

The researchers compared the algorithm’s findings with the opinion of a physician and found that the algorithm agreed on the date of diagnosis in 78.4% of cases.

It established a date of diagnosis that was within three months of the physician’s date in 94% of cases.

Experts say the algorithm could be effective in reaching patients who do not visit a physician regularly (Hall, FierceHealthIT, 8/2). Source