免费看黄色大片-久久精品毛片-欧美日韩亚洲视频-日韩电影二区-天天射夜夜-色屁屁ts人妖系列二区-欧美色图12p-美女被c出水-日韩的一区二区-美女高潮流白浆视频-日韩精品一区二区久久-全部免费毛片在线播放网站-99精品国产在热久久婷婷-午夜精品理论片-亚洲人成网在线播放

Long-term exposure to PM2.5 increases risk of diabetes: Chinese study

Source: Xinhua| 2019-03-11 19:47:16|Editor: ZX
Video PlayerClose

BEIJING, March 11 (Xinhua) -- A recent study has shown that long-term exposure to PM2.5, a major particle matter pollutant increases the risk of diabetes.

Diabetes causes substantial economic and health burdens worldwide. However, the association between air pollution and diabetes incidence is rarely reported in the developing countries, especially in China which has a relatively high PM2.5 concentrations.

Researchers from the Fuwai Hospital under the Chinese Academy of Medical Sciences as well as Emory University in the United States evaluated the association between long-term exposure to PM2.5 and diabetes incidence based on data collected from more than 88,000 Chinese adults. The research was published in the journal Environment International.

The research team used satellite-based PM2.5 concentrations to assess PM2.5 exposure for each subject during the period 2004-2015.

Results showed that the general risk of diabetes incidence increased by 15.7 percent for an increase of 10 micrograms per cubic meter of long-term PM2.5 concentration. The adverse effects of PM2.5 were larger among young-to middle-aged subjects, females, non-smokers and subjects with lower body mass index.

The study revealed that PM2.5 was an important risk factor for diabetes incidence in China and sustained improvement of air quality will help decrease the diabetes epidemic in China.

Lu Xiangfeng, one of the researchers, said the study would benefit policy making and intervention design in diabetes prevention.

"Our future work will focus on introducing spatiotemporal data of PM2.5 at higher resolution and indoor source of exposures to further detect the health effects of long-term exposure to PM2.5," Lu said.

TOP STORIES
EDITOR’S CHOICE
MOST VIEWED
EXPLORE XINHUANET
010020070750000000000000011100001378864331