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As more healthcare providers implement health IT systems, like e-medical records and computerized order entry, clinical decision support tools will increasingly aid doctors and nurses by analyzing patient data for trends and other pertinent information that should be acted upon. But clinical decision support tools are also already helping some clinicians analyze the reams of patient data that gets generated by medical monitoring gear.
Marianne Kolbasuk McGee
May 10, 2010
3 Min Read
As more healthcare providers implement health IT systems, like e-medical records and computerized order entry, clinical decision support tools will increasingly aid doctors and nurses by analyzing patient data for trends and other pertinent information that should be acted upon. But clinical decision support tools are also already helping some clinicians analyze the reams of patient data that gets generated by medical monitoring gear.When critically ill patients are hooked up to medical equipment to monitor breathing, blood pressure, heart rate and other functions, the gear typically displays "a lot of raw data" often as numbers or waves, said Karen Giuliano, a registered nurse and principal scientist of clinical outcomes research at Philips Healthcare, a maker of medical monitoring equipment.
However, the addition of clinical decision support tools can aid clinicians by allowing key data to be analyzed and displayed in a manner that helps nurses and doctors watch for very subtle, early signs that patients are developing complications or other medical issues. At Long Beach Memorial Medical Center in Long Beach Calif. clinicians recently participated in a study to evaluate how clinical decision support software can be used to help watch for trends that show early signs of sepsis in critically ill patients in simulated settings. "Sepsis is sneaky, often you don't realize a patient is septic till it's bad," says Sue Crockett, a registered nurse and director of clinical workforce development at Long Beach Memorial Medical Center and its Miller Children's Hospital. In the study, 75 critical care nurses were randomly assigned to working with either standard or enhanced bedside monitoring gear to recognize simulated cases of sepsis, an infection that can spread throughout a person's body, and a leading cause of death in intensive care patients. The study evaluated how different screen views of data can affect how clinicians recognize the signs and symptoms of sepsis, said Crockett. If caught early enough, the administration of antibiotics can help control the potentially deadly effects of the sepsis, which causes body-wide inflammation and other serious problems. Also, even when a patient doesn't die from sepsis, full recovery is often difficult. "Any opportunity to intervene early can help and save lives," said Crockett. The enhanced monitoring was loaded with Philips clinical decision support tools. The software allowed the devices to be programmed to provide clinicians with visual cues in watching for a combination of patient parameters that are early signs of sepsis, including decreased blood pressure and creeping up rates for heart beat and temperature. Long Beach Memorial found that compared to nurses using standard monitoring displays, the clinical decision support tools helped reduce the time it took for clinicians to recognize when patients were developing early signs of sepsis, allowing the treatment to be initiated sooner. Currently, Long Beach is training its clinical staff on how to use Philips clinical decision support tools for recognizing sepsis in critical care patients, said Crockett. Long Beach has several hundred critical care beds in its pediatric, women's and adult care facilities and expects to have the tools in "wide use in the coming months," she said. The monitoring data can also be fed into patients' Epic e-medical records, which Long Beach rolled out about two years ago, said Crockett. Philips clinical decision support software can be programmed to help clinical staff monitor and identify other occurrences in patients, said Guiliano. That includes systems that can watch for trouble with patients being cared on other medical floors, such as surgical wings. "We're making more enhancements so that the information comes only when the clinician wants it," said Patricia McGaffigan, who leads Philips Healthcare's clinical decision support efforts. Having "too many alerts" can contribute to so-called alert fatigue when clinicians begin to override or ignore too-frequent or unnecessary warnings. "We're working to broaden the intelligence of alarms" she said. Read our new report on how IP telephony is being used in healthcare settings. Download the report now (registration required).
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