脑深部刺激
集合(抽象数据类型)
匹配(统计)
神经科学
加权
个性化医疗
医学
刺激
计算机科学
物理医学与康复
心理学
疾病
生物信息学
生物
内科学
病理
帕金森病
程序设计语言
放射科
作者
Barbara Hollunder,Nanditha Rajamani,Shan Siddiqi,Carsten Finke,Andrea A. Kühn,Helen S. Mayberg,Michael Fox,Clemens Neudorfer,Andreas Horn
标识
DOI:10.1016/j.pneurobio.2021.102211
摘要
• We advocate a shift from disease- to symptom-centric connectomic DBS. • We propose personalization to individual symptom profiles to improve effectiveness. • Symptom network targets can be derived via group-level DBS analyses. • Relevant symptom network templates could then be matched to individual circuitry. • Stimulation targets may be optimized via individualized blends of symptom networks. At the group-level, deep brain stimulation leads to significant therapeutic benefit in a multitude of neurological and neuropsychiatric disorders. At the single-patient level, however, symptoms may sometimes persist despite “optimal” electrode placement at established treatment coordinates. This may be partly explained by limitations of disease-centric strategies that are unable to account for heterogeneous phenotypes and comorbidities observed in clinical practice. Instead, tailoring electrode placement and programming to individual patients’ symptom profiles may increase the fraction of top-responding patients. Here, we propose a three-step, circuit-based framework with the aim of developing patient-specific treatment targets that address the unique symptom constellation prevalent in each patient. First, we describe how a symptom network target library could be established by mapping beneficial or undesirable DBS effects to distinct circuits based on (retrospective) group-level data. Second, we suggest ways of matching the resulting symptom networks to circuits defined in the individual patient ( template matching ). Third, we introduce network blending as a strategy to calculate optimal stimulation targets and parameters by selecting and weighting a set of symptom-specific networks based on the symptom profile and subjective priorities of the individual patient. We integrate the approach with published literature and conclude by discussing limitations and future challenges.
科研通智能强力驱动
Strongly Powered by AbleSci AI