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Evaluación de la irritabilidad dérmica y oftálmica de la formulación OLEOMASAJE. | Evaluation of the ophthalmic and dermal irritability of the OLEOMASAJE formulation.

, , , , and . Journal of Pharmacy & Pharmacognosy Research, 3 (4): 87-91 (ago 2015)

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