1 / 15

Data driven models to minimize hospital readmissions

Data driven models to minimize hospital readmissions. Miriam Paramore, EVP Strategy & Product Management, Emdeon David Talby, VP Engineering, Atigeo. Hospital Industry Subject to Hospital Readmission Penalties – Oct. 2012. 2 million. $280 million. $17.5 billion . 19%. 2,207.

alaina
Download Presentation

Data driven models to minimize hospital readmissions

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Data driven models to minimize hospital readmissions Miriam Paramore, EVP Strategy & Product Management, Emdeon David Talby, VP Engineering, Atigeo

  2. Hospital Industry Subject to Hospital Readmission Penalties – Oct. 2012 2 million $280 million $17.5 billion 19% 2,207 276 hospitals “Medicare Revises Readmissions Penalties – Again,” Kaiser Health News, March 14, 2013, http://www.kaiserhealthnews.org/stories/2013/march/14/revised-readmissions-statistics-hospitals-medicare.aspx

  3. Hospital Industry Subject to Hospital Readmission Penalties – Oct. 2012 “That may not sound like a lot, but for hospitals already struggling financially—especially those serving the poor—losing 1%-3% of their Medicare reimbursements could put them out of business.”

  4. Why are new readmissions predictive models necessary? Our dataset: • Hospital, outpatient & physician visits • Under a single master patient index • Cross-US geographic coverage

  5. Infrastructure requirements • Model based on the entire dataset • Model based on continuously updating data • Experiment with & combine multiple: • Modeling techniques • Feature combinations • Ways to combine the datasets • Data quality as an integral and critical component • Missing data, errors, fraud, outliers, flurries, … Yes, this is a big data problem

  6. Tens of modeling & statistical techniques apply • Without over-fitting • An ensemble approach applies • Combine multiple ‘weak’ models • Automated feature engineering applies • Don’t assume features, “let the data speak” More data = Fundamentally better prediction

  7. Do not train on one hospital / geography / specialty / patient demographic and blindly apply to others • Models must be tailored for each hospital location • Do not assume which variables are most important to change Models must be tailored

  8. Locality (epidemics) • Seasonality • Changes in the hospital or population • Impact of deploying the system • Combination of all of the above Automated feedback loop & retrain pipeline is a must Models must continuously evolve

  9. Yes, this is a big data problem • More data = Fundamentally better prediction • Models must be tailored • Models must continuously evolve Key things to remember

  10. Readmission Analysis Shows High Heart Failure Diagnoses

  11. Identify High Risk Patients at Registration

  12. Identify High Risk Patients at Registration: Case 1 • 24 Months • 192 treatments at 12 different locations • 8 outpatient visits in 2 separate facilities • 130 outpatient diagnostic or clinic visits in 14 different facilities • Most clinical care is rendered by a PCP internal medicine practice over 92 visits

  13. Identify Risks in Prescription History

  14. Follow High Risk Patients Post Discharge

More Related