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Milrinone

Generic Name
Milrinone
Brand Names
-
Drug Type
Small Molecule
Chemical Formula
C12H9N3O
CAS Number
78415-72-2
Unique Ingredient Identifier
JU9YAX04C7
Background

Heart failure is a multifactorial condition that affects roughly 1-2% of the adult population. Often the result of long-term myocardial ischemia, cardiomyopathy, or other cardiac insults, heart failure results from an inability of the heart to perfuse peripheral tissues with sufficient oxygen and metabolites, resulting in complex systemic pathologies. Heart failure is underpinned by numerous physiological changes, including alteration in β-adrenergic signalling and cyclic adenosine monophosphate (cAMP) production, which affects the heart's contractile function and cardiac output. Milrinone is a second-generation bipyridine phosphodiesterase (PDE) inhibitor created through chemical modification of amrinone. As a PDE-III inhibitor, milrinone results in increased cAMP levels and improves cardiac function and peripheral vasodilation in acute decongested heart failure.

Milrinone was originally synthesized at the Sterling Winthrop Research Institute in the 1980s. It was approved by the FDA on December 31, 1987, and was marketed under the trademark PRIMACOR® by Sanofi-Aventis US before being discontinued.

Indication

Milrinone is indicated for the short-term (48 hours or less) treatment of patients with acute decompensated heart failure. Milrinone administration should occur together with close monitoring using appropriate electrocardiographic equipment and should occur in a facility equipped for the immediate treatment of potential cardiac events, including ventricular arrhythmias.

Associated Conditions
Acute Decompensated Heart Failure (ADHF), Congestive Heart Failure (CHF)
Associated Therapies
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nature.com
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