The Association between the Burden of PM 2.5 -Related Neonatal Preterm Birth and Socio-Demographic Index from 1990 to 2019: A Global Burden Study
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Keywords
premature delivery; fine particulate matter; socio-demographic index; environment; air pollution; disease burden;All these keywords.
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