Innovative taxes can be used to fill AIDS funding gap, UNAIDS head says

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UNAIDS Executive Director Michel Sidibe told Reuters in an interview on Wednesday that donors looking to fund the fight against AIDS "could raise funds through taxes," according to the news agency. Speaking on the sidelines of the International Conference on AIDS and Sexually Transmitted Infections in Addis Ababa, Ethiopia, Sidibe said, "If we have a global financial transaction tax, say of 0.5 percent, we will have $226 billion. Ten percent of that resource is enough for financing the fight against HIV/AIDS, stopping the epidemic, because we can reduce by 96 percent the number of new infections by putting people early on treatment. We can have taxation on cigarettes and alcohol. We can find different ways to mobilize new resources," according to Reuters (Maasho, 12/7).


http://www.kaiserhealthnews.orgThis article was reprinted from kaiserhealthnews.org with permission from the Henry J. Kaiser Family Foundation. Kaiser Health News, an editorially independent news service, is a program of the Kaiser Family Foundation, a nonpartisan health care policy research organization unaffiliated with Kaiser Permanente.

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