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Machine learning may be the right tool for predicting success of opioid dispensing outcomes

10.28.21 | Columbia University's Mailman School of Public Health

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October 28, 2021-- Prescription opioid laws alone do not do the job of predicting opioid dispensing patterns, according to a new study at Columbia University Mailman School of Public Health. An analysis of the laws, however, was adept at identifying patient data access and several pain management clinic conditions to forecast successful county prescription opioid dispensing models. The Columbia research used machine learning approaches (i.e., a series of computer algorithms), to accurately predict patterns and is the first study to rely on machine learning for analyses of opioid-related laws. The findings are published in the journal Epidemiology.

In the past 15 years, in response to the U.S. opioid crisis, states and the federal government have implemented numerous laws regulating opioid prescribing and dispensing. These include prescription drug monitoring programs (PDMPs), pain management clinic laws, and limits on initial opioid prescriptions, among others.

“The aim of our study was to identify individual and prescription opioid-related law provision combinations that were most predictive of high opioid dispensing and high-dose opioid dispensing in U.S. counties,” said Silvia Martins, MD, PhD, associate professor of epidemiology at Columbia Mailman School. “Our results showed that not all prescription drug monitoring programs laws are created equal or influence effectiveness, and there is a critical need for better evidence on how law variations might affect opioid-related outcomes. We found that a machine learning approach could help to identify what determines a successful prescription opioid dispensing model.”

Using 162 prescription opioid law provisions capturing prescription drug monitoring program access, reporting and administration features, pain management clinic provisions, and prescription opioid limits, the researchers examined various approaches and models to attempt to identify laws most predictive of county-level and high-dose dispensing in different overdose epidemic phases—the prescription opioid phase (2006-2009), the heroin phase (2010-2012), and the fentanyl phase (2013-2016)—to further explore pattern shifts over time.

PDMP patient data access provisions most consistently predicted high-dispensing and high-dose dispensing counties. Pain management clinic-related provisions did not generally predict dispensing measures in the prescription opioid phase but became more discriminant of high dispensing and high-dose dispensing counties over time, especially in the fentanyl period. Predictive performance across models was poor, suggesting prescription opioid laws alone do not strongly predict dispensing.

“While further research employing diverse study designs is needed to better understand how opioid laws generally, and specifically, can limit inappropriate opioid prescribing and dispensing to reduce opioid-related harms, we feel strongly that the results of our machine learning approach to identify salient law provisions and combinations associated with dispensing rates will be key for testing which law provisions and combinations of law provision work best in future research,” noted Martins.

The researchers observe that there are at least two major challenges to evaluating the impacts of prescription opioid laws on opioid dispensing. First, U.S. states often adopt widely different versions of the same general type of law, making it particularly important to examine the specific provisions that make these laws more or less effective in regards to opioid-related harms. Second, states tend to enact multiple law types simultaneously, making it difficult to isolate the effect of any one law or specific provisions.

Machine learning methods are increasingly being applied to similar high-dimensional data problems, and may offer a complementary approach to other forms of policy analysis including as a screening tool to identify policies and law provision interactions that require further attention,” said Martins.

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Co-authors are Emilie Bruzelius, Jeanette Stingone, Hanane Akbarnejad, Christine Mauro, Megan Marzial, Kara Rudolph, Katherine Keyes, and Deborah Hasin, Columbia University Mailman School; Katherine Wheeler-Martin and Magdalena Cerdá, NYU Grossman School of Medicine; Stephen Crystal and Hillary Samples, Rutgers University; and Corey Davis, Network for Public Health Law.

The study was supported by the National Institute on Drug Abuse, grants R01DA048572, 1R01DA047347, 1R01DA048860 and K01DA049950; the Agency for Healthcare Quality and Research, grant R18 HS023258; and the National Center for Advancing Translational Sciences and the New Jersey Health Foundation, grant UL1TR003017.

Columbia University Mailman School of Public Health

Founded in 1922, the Columbia University Mailman School of Public Health pursues an agenda of research, education, and service to address the critical and complex public health issues affecting New Yorkers, the nation and the world. The Columbia Mailman School is the seventh largest recipient of NIH grants among schools of public health. Its nearly 300 multi-disciplinary faculty members work in more than 100 countries around the world, addressing such issues as preventing infectious and chronic diseases, environmental health, maternal and child health, health policy, climate change and health, and public health preparedness. It is a leader in public health education with more than 1,300 graduate students from 55 nations pursuing a variety of master’s and doctoral degree programs. The Columbia Mailman School is also home to numerous world-renowned research centers, including ICAP and the Center for Infection and Immunity. For more information, please visit www.mailman.columbia.edu .

Epidemiology

10.1097/EDE.0000000000001404

Prescription Opioid Laws and Opioid Dispensing in US Counties

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Contact Information

Stephanie Berger
Columbia University's Mailman School of Public Health
sb2247@columbia.edu

How to Cite This Article

APA:
Columbia University's Mailman School of Public Health. (2021, October 28). Machine learning may be the right tool for predicting success of opioid dispensing outcomes. Brightsurf News. https://www.brightsurf.com/news/8X55QPM1/machine-learning-may-be-the-right-tool-for-predicting-success-of-opioid-dispensing-outcomes.html
MLA:
"Machine learning may be the right tool for predicting success of opioid dispensing outcomes." Brightsurf News, Oct. 28 2021, https://www.brightsurf.com/news/8X55QPM1/machine-learning-may-be-the-right-tool-for-predicting-success-of-opioid-dispensing-outcomes.html.