A Model-Informed Drug Development Approach Supporting the Approval of an Unstudied Valbenazine Dose for Patients With Tardive Dyskinesia

被引:0
|
作者
Nguyen, Hoa Q. [1 ]
Kuan, Han-Yi Steve [1 ]
Crass, Ryan L. [2 ]
Quinlan, Lauren [2 ]
Chapel, Sunny [2 ]
Kim, Kristine [1 ]
Brar, Satjit [1 ]
Loewen, Gordon [1 ]
机构
[1] Neurocrine Biosci, San Diego, CA USA
[2] Ann Arbor Pharmacometr Grp, Ann Arbor, MI USA
关键词
efficacy; exposure-response; model-informed drug development; tardive dyskinesia; valbenazine;
D O I
10.1002/jcph.2498
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
Valbenazine is a highly potent and selective inhibitor of synaptic vesicular monoamine transporter 2. The current therapeutic doses of valbenazine for tardive dyskinesia (TD) are 40, 60, or 80 mg capsules, given orally, once daily (QD). While 40 and 80 mg were investigated in phase 3 KINECT (R) 3 trial and initially approved, the approval of valbenazine 60 mg was based on the analysis utilizing the Model-informed drug development (MIDD) approach, facilitated through the US Food and Drug Administration's MIDD Pilot Program. This study aimed to demonstrate the efficacy of 60 mg QD dose through model simulations using an established exposure-response (E-R) relationship between valbenazine active metabolite [+]-alpha-dihydrotetrabenazine exposure and the change from baseline in Abnormal Involuntary Movement Scale total score (AIMS-CFB). A longitudinal E-R model was constructed based on the 40 and 80 mg data from the KINECT 3 trial. The final Emax model adequately predicted dose-dependent improvement in the primary endpoint and was used to interpolate AIMS-CFB for 60 mg at week 6. The efficacy of the unstudied 60 mg dose regimen is expected to be within the range of doses studied clinically with predicted mean AIMS-CFB (95% confidence interval) of -2.69 (-3.30, -2.13) between observed mean AIMS-CFB for 40 mg of -1.92 and 80 mg of -3.39. Results from this analysis provided the key evidence to establish efficacy of 60 mg QD without the need for an additional clinical trial. The availability of valbenazine 60 mg dose fills an existing medical need for patients with TD who could benefit from this third effective dose.
引用
收藏
页码:1456 / 1465
页数:10
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