of dollars in US healthcare costs and is taking the lives of over 40,000 people in the US in 2017. With health firms reeling from the epidemic's costly consequences, artificial intelligence could offer some light at the end of the tunnel.Researchers developed a machine learning tool that proved to be powerful in assessing overdose risk.
The algorithms accurately identified individuals at high risk of an opioid overdose. The algorithms sorted 560,000 Medicare beneficiaries into risk-based groups. And the machine learning tool's groupings were almost entirely accurate: More than 90% of overdose episodes occurred in the high-risk group.
The AI-powered tool proved a better predictor than traditional methods. For example, the traditional method used by the Centers for Medicare and Medicaid Services classified 70% of people who experienced an overdose as low-risk.AI-powered tools can help health firms to channel their drug abuse spending where it's needed most and curb the opioid epidemic's consequences.
Machine learning could guide health firms to better allocate precious opioid prevention resources to patients who need them most. Three-quarters of beneficiaries were at low risk of experiencing an overdose. Providers and payers could develop more cost-efficient opioid prevention programs by targeting resources at the 25% of patients prescribed opioids who suffer 90% of overdoses.
And targeting opioid prevention resources at high-risk patients could increase the likelihood of preventing costly overdoses. If opioid prevention spending is concentrated among high-risk populations — versus spread out across the population — payers and providers may have a higher chance of preventing overdoses.
Education Education Latest News, Education Education Headlines
Similar News:You can also read news stories similar to this one that we have collected from other news sources.
Source: Forbes - 🏆 394. / 53 Read more »
Source: Forbes - 🏆 394. / 53 Read more »
Source: NBCNews - 🏆 10. / 86 Read more »