Manual Therapy
Volume 17, Issue 1 , Pages 9-21 , February 2012

Clinical prediction rules in the physiotherapy management of low back pain: A systematic review

Received 16 January 2011 ,Revised 28 April 2011 ,Accepted 9 May 2011.

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PII: S1356-689X(11)00074-9

doi: 10.1016/j.math.2011.05.001

Manual Therapy
Volume 17, Issue 1 , Pages 9-21 , February 2012