An Analytical Method for Multiclass Molecular Cancer Classification

A treating composition and method for treatment of shock and/or stress in animals. The composition comprises, in a preferred form, equal volume amounts of solutions of sodium acetate and sodium propionate. It may be administered orally, intravenously, subcutaneously, etc. The preferred dosage level is from about 0.25 cc. per pound of body weight to about 0.5 cc. per pound of body weight.

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