Analyzing Geospatial and Socioeconomic Disparities in Breast Cancer Screening Among Populations in the United States: Machine Learning Approach
JMIR Cancer2025Vol. 11, pp. e59882–e59882
Citations Over TimeTop 10% of 2025 papers
Soheil Hashtarkhani, Yiwang Zhou, Fekede Asefa Kumsa, Shelley I. White‐Means, David L. Schwartz, Arash Shaban‐Nejad
Abstract
These findings underscore the significance of social determinants and the accessibility of mammography services in explaining the variability of breast cancer screening rates in the United States, emphasizing the need for targeted policy interventions in areas with relatively lower screening rates.
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