戊四氮
苯妥英钠
Lennox-Gastaut综合征
波峰
药理学
癫痫
神经科学
化学
抗惊厥药
医学
心理学
作者
Yun‐Chu Lin,Yi‐Chen Lai,Ping Chou,Shu‐Wei Hsueh,Tien‐Hung Lin,Chen‐Syuan Huang,Renwei Wang,Ya‐Chin Yang,Chung‐Chin Kuo
摘要
Objective Lennox–Gastaut syndrome (LGS) is an epileptic encephalopathy frequently associated with multiple types of seizures. The classical Na + channel inhibitors are in general ineffective against the seizures in LGS. Rufinamide is a new Na + channel inhibitor, but approved for the treatment of LGS. This is not consistent with a choice of antiseizure drugs (ASDs) according to simplistic categorical grouping. Methods The effect of rufinamide on the Na + channel, cellular discharges, and seizure behaviors was quantitatively characterized in native neurons and mammalian models of epilepsy, and compared with the other Na + channel inhibitors. Results With a much faster binding rate to the inactivated Na + channel than phenytoin, rufinamide is distinctively effective if the seizure discharges chiefly involve short bursts interspersed with hyperpolarized interburst intervals, exemplified by spike and wave discharges (SWDs) on electroencephalograms. Consistently, rufinamide, but not phenytoin, suppresses SWD‐associated seizures in pentylenetetrazol or AY‐9944 models, which recapitulate the major electrophysiological and behavioral manifestations in typical and atypical absence seizures, including LGS. Interpretation Na + channel inhibitors shall have sufficiently fast binding to exert an action during the short bursts and then suppress SWDs, in which cases rufinamide is superior. For the epileptiform discharges where the interburst intervals are not so hyperpolarized, phenytoin could be better because of the higher affinity. Na + channel inhibitors with different binding kinetics and affinity to the inactivated channels may have different antiseizure scope. A rational choice of ASDs according to in‐depth molecular pharmacology and the attributes of ictal discharges is advisable. ANN NEUROL 2021;89:1099–1113
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