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A 1960s 'Hippie Clinic' In San Francisco Inspired A Medical Philosophy

Inside the Haight Ashbury Free Medical Clinic in its earliest days. The clinic opened on June 7, 1967, and treated 250 patients that day. It

Fifty years ago a community health clinic first opened its doors as a safe, sympathetic space for countercultural youth. Today its motto is the same: "Health care is a right, not a privilege."

(Image credit: Courtesy of Gene Anthony/David Smith Archives)

News : NPR http://ift.tt/2Ccp7eR December 30, 2017 at 03:00PM

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