Cardiovascular disease is responsible for nearly a third of all deaths worldwide said the study.
Machine Learning In Cardiovascular Disease Improves If Social, Environmental Factors Included: Study
WASHINGTON — A new study has found that while Machine Learning can accurately predict cardiovascular disease and guide treatment, models that incorporate social determinants of health can capture risk and outcomes for diverse groups in a better way.
The findings of the study appeared in the American Journal of Preventive Medicine. The study was led by researchers at New York University’s School of Global Public Health and Tandon School of Engineering.
The research also said that there are opportunities to improve how social and environmental variables are factored into Machine Learning algorithms.
Cardiovascular disease is responsible for nearly a third of all deaths worldwide and disproportionately affects lower socioeconomic groups.
Increases in cardiovascular disease and deaths are attributed, in part, to social and environmental conditions that influence diet and exercise.
“Cardiovascular disease is increasing, particularly in low- and middle-income countries and among communities of color in places like the United States,” said Rumi Chunara, the study’s senior author.
“Because these changes are happening over such a short period of time, it is well known that our changing social and environmental factors, such as increased processed foods, are driving this change, as opposed to genetic factors which would change over much longer time scales.”
Machine Learning — a type of Artificial Intelligence used to detect patterns in data — is being rapidly developed in cardiovascular research and care to predict disease risk, incidence, and outcomes. Already, statistical methods are central in assessing cardiovascular disease risk and U.S. prevention guidelines.
Developing predictive models gives health professionals actionable information by quantifying a patient’s risk and guiding the prescription of drugs or other preventive measures.
Cardiovascular disease risk is typically computed using clinical information, such as blood pressure and cholesterol levels, but rarely take social determinants, such as neighborhood-level factors, into account.
Chunara and her colleagues sought to better understand how social and environmental factors are beginning to be integrated into Machine Learning algorithms for cardiovascular disease — what factors are considered, how they are being analyzed, and what methods improve these models.
“Social and environmental factors have complex, non-linear interactions with cardiovascular disease,” said Chunara. “Machine Learning can be particularly useful in capturing these intricate relationships.”
The researchers analyzed existing research on Machine Learning and cardiovascular disease risk, screening more than 1,600 articles and ultimately focusing on 48 peer-reviewed studies published in journals between 1995 and 2020.
They found that including social determinants of health in machine learning models improved the ability to predict cardiovascular outcomes like re-hospitalization, heart failure, and stroke.
“If you only do research in places like the United States or Europe, you’ll miss how social determinants and other environmental factors related to cardiovascular risk interact in different settings, and the knowledge generated will be limited,” said Chunara.
However, these models did not typically include the full list of community-level or environmental variables that are important in cardiovascular disease risk.
Some studies did include additional factors such as income, marital status, social isolation, pollution, and health insurance, but only five studies considered environmental factors such as the walkability of a community and the availability of resources like grocery stores.
“Our study shows that there is room to more systematically and comprehensively incorporate social determinants of health into cardiovascular disease statistical risk prediction models,” said Stephanie Cook, one of the study authors.
“In recent years, there has been a growing emphasis on capturing data on social determinants of health — such as employment, education, food, and social support — in electronic health records, which creates an opportunity to use these variables in Machine Learning studies and further improve the performance of risk prediction, particularly for vulnerable groups.”
The researchers also said there was a lack of geographic diversity in the studies, as the majority used data from the United States, countries in Europe, and China, neglecting many parts of the world experiencing increases in cardiovascular disease.
“Including social determinants of health in Machine Learning models can help us to disentangle where disparities are rooted and bring attention to where in the risk structure we should intervene,” said Chunara.
“For example, it can improve clinical practice by helping health professionals identify patients in need of referral to community resources like housing services and broadly reinforces the intricate synergy between the health of individuals and our environmental resources.”
(With inputs from ANI)
Edited by Abinaya Vijayaraghavan and Praveen Pramod Tewari