Tools & Strategies News

Cancer Symptom Algorithm Assists Doctors in Foreseeing ED Visits

A recent study described how using a cancer symptom algorithm aided clinicians in predicting which patients are at high risk for unplanned emergency department visits.

Cancer symptom algorithm.

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By Mark Melchionna

- A study published in the Journal of the National Comprehensive Cancer Network (JNCCN) described how a cancer symptom algorithm provided insight into which patients may be at high risk for unplanned emergency department (ED) visits, which could provide additional benefits such as proactive care and lower costs.

As a nonprofit alliance of leading cancer centers, the National Comprehensive Cancer Network (NCCN) aims to improve care for patients while advancing research and education. Published in its journal, new research described how a novel tool could improve efficiency in the cancer care decision-making process while providing various potential other benefits, like reduced costs.

Using the Edmonton Symptom Assessment System-Revised (ESASr), researchers measured the most common symptoms that cancer patients exhibit. They classified subjective symptom complexity for each patient using the number and severity level of symptoms. They then correlated this information with the likelihood of having an ED visit within a week.