Pulliam Christopher L, Heldman Dustin A, Orcutt Tseganesh H, Mera Thomas O, Giuffrida Joseph P, Vitek Jerrold L
Great Lakes NeuroTechnologies, Cleveland, OH, USA.
Great Lakes NeuroTechnologies, Cleveland, OH, USA.
Parkinsonism Relat Disord. 2015 Apr;21(4):378-82. doi: 10.1016/j.parkreldis.2015.01.018. Epub 2015 Feb 11.
Deep brain stimulation (DBS) is a well-established treatment for Parkinson's disease (PD). Optimization of DBS settings can be a challenge due to the number of variables that must be considered, including presence of multiple motor signs, side effects, and battery life.
Nine PD subjects visited the clinic for programming at approximately 1, 2, and 4 months post-surgery. During each session, various stimulation settings were assessed and subjects performed motor tasks while wearing a motion sensor to quantify tremor and bradykinesia. At the end of each session, a clinician determined final stimulation settings using standard practices. Sensor-based ratings of motor symptom severities collected during programming were then used to develop two automated programming algorithms--one to optimize symptom benefit and another to optimize battery life. Therapeutic benefit was compared between the final clinician-determined DBS settings and those calculated by the automated algorithm.
Settings determined using the symptom optimization algorithm would have reduced motor symptoms by an additional 13 percentage points when compared to clinician settings, typically at the expense of increased stimulation amplitude. By adding a battery life constraint, the algorithm would have been able to decrease stimulation amplitude by an average of 50% while maintaining the level of therapeutic benefit observed using clinician settings for a subset of programming sessions.
Objective assessment in DBS programming can identify settings that improve symptoms or obtain similar benefit as clinicians with improvement in battery life. Both options have the potential to improve post-operative patient outcomes.
脑深部电刺激术(DBS)是治疗帕金森病(PD)的一种成熟疗法。由于需要考虑的变量众多,包括多种运动症状的存在、副作用和电池寿命等,DBS设置的优化可能具有挑战性。
9名帕金森病患者在术后约1个月、2个月和4个月到诊所进行程控。在每次程控过程中,评估各种刺激设置,患者佩戴运动传感器执行运动任务,以量化震颤和运动迟缓。在每次程控结束时,临床医生采用标准方法确定最终刺激设置。然后,利用程控期间收集的基于传感器的运动症状严重程度评分,开发两种自动程控算法——一种用于优化症状改善效果,另一种用于优化电池寿命。比较临床医生最终确定的DBS设置与自动算法计算出的设置之间的治疗效果。
与临床医生设置相比,使用症状优化算法确定的设置可使运动症状进一步减轻13个百分点,通常是以增加刺激幅度为代价。通过增加电池寿命限制,该算法能够将刺激幅度平均降低50%,同时在一部分程控过程中保持与临床医生设置所观察到的治疗效果水平。
DBS程控中的客观评估能够识别出可改善症状或获得与临床医生相似效果且能延长电池寿命的设置。这两种选择都有可能改善术后患者的预后。