Baxter Presents Data at ASHP Meeting Indicating Machine Learning May Enhance Infusion Pump Programming Safety
Baxter International Inc. (NYSE:BAX) announced findings from a study suggesting that machine learning and AI can enhance medication safety in hospitals. Conducted with MedAware, the research analyzed over 3.8 million infusions and found that AI could assist in adjusting Dose Error Reduction Systems (DERS) to reduce medication errors. The results indicated that 52% of outliers triggered hard limits, showcasing the need for better DERS limits. The study was presented at the ASHP 2021 Midyear Clinical Meeting, highlighting advancements in infusion pump technology for patient safety.
- Study suggests machine learning can improve medication safety by optimizing Dose Error Reduction Systems.
- Partnership with MedAware may enhance Baxter's development of next-gen infusion technology.
- 52% of outliers triggered hard limits indicating potential issues with current DERS limits.
- Challenges in maintaining clinically meaningful DERS limits across hospital drug libraries.
- Data suggest machine learning and artificial intelligence could help hospitals align drug libraries more closely to clinical practices, which may advance infusion safety
- Study conducted in partnership with MedAware, an expert in leveraging artificial intelligence (AI) technology to enhance medication safety monitoring
“This study shows promise around the potential to enhance patient safety by using machine learning platforms to build and maintain smart infusion drug libraries that dynamically review infusions and signal possible infusion errors,” said
Smart infusion pumps use Dose Error Reduction Systems (DERS) to help prevent medication errors by checking programmed doses against preset limits specific to a drug. If a programmed dose is outside the limits, the pump alerts clinicians and can either require confirmation before beginning delivery (a soft limit) or not allow delivery at all (a hard limit).1 Dose limits must be meaningful and consistent with clinical practice to prevent alert fatigue, which can impact patient safety by leading to alerts being ignored or safety systems bypassed. However, developing meaningful DERS limits across all drugs and care areas within a hospital’s drug library, and then deploying those changes through thousands of pumps throughout the hospital, is challenging and requires detailed analysis and significant resources to maintain. This study examined whether machine learning and AI algorithms could inform adjustments to DERS limits.
The study used MedAware’s machine learning technology to analyze 3,823,367 infusions performed on 20,542 Baxter infusion pumps over a 10-month period. Algorithms were applied to the data set to replicate a potential machine-learning approach to optimizing infusion pump programming safety. These algorithms identified “outliers,” which included infusions deviating from commonly programmed doses/rates for specific drugs, uncommon drug concentrations, and patient weight entries outside of common weight ranges.
The analysis found 44,819 pump programming entries that were outliers to common programming patterns, of which
“We are thrilled to evaluate our medication safety monitoring technology within Baxter’s smart infusion pumps,” said Dr.
About Baxter
Every day, millions of patients and caregivers rely on Baxter’s leading portfolio of critical care, nutrition, renal, hospital and surgical products. For 90 years, we’ve been operating at the critical intersection where innovations that save and sustain lives meet the healthcare providers that make it happen. With products, technologies and therapies available in more than 100 countries, Baxter’s employees worldwide are now building upon the company’s rich heritage of medical breakthroughs to advance the next generation of transformative healthcare innovations. To learn more, visit www.baxter.com and follow us on Twitter, LinkedIn and Facebook.
This release includes forward-looking statements concerning potential benefits associated with machine learning, artificial intelligence and infusion pump programming safety. The statements are based on assumptions about many important factors, including the following, which could cause actual results to differ materially from those in the forward-looking statements: demand for and market acceptance for new and existing products; product development risks; inability to create additional production capacity in a timely manner or the occurrence of other manufacturing or supply difficulties (including as a result of natural disasters, public health crises and epidemics/pandemics, regulatory actions or otherwise); satisfaction of regulatory and other requirements; actions of regulatory bodies and other governmental authorities; product quality, manufacturing or supply, or patient safety issues; changes in law and regulations; and other risks identified in Baxter's most recent filing on Form 10-K and Form 10-Q and other
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