The impact of mortality underreporting on the association of ambient temperature and PM10 with mortality risk in time series study.
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Tao Liu | Wenjun Ma | K. Reinhold | Jianxiong Hu | G. He | Lifeng Lin | Xiao-jun Xu | W. Gong | J. Zhong | Ziqiang Lin | W. R. Lawrence | R. Meng | Sui Zhu | M. Yu
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