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Patient specific Parkinson's disease detection for adaptive deep brain stimulation

机译:特定于患者的帕金森氏病检测以适应性深部脑刺激

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Continuous deep brain stimulation for Parkinson's disease (PD) patients results in side effects and shortening of the pacemaker battery life. This can be remedied using adaptive stimulation. To achieve adaptive DBS, patient customized PD detection is required due to the inconsistency associated with biomarkers across patients and time. This paper proposes the use of patient specific feature extraction together with adaptive support vector machine (SVM) classifiers to create a patient customized detector for PD. The patient specific feature extraction is obtained using the extrema of the ratio between the PD and non-PD spectra bands of each patient as features, while the adaptive SVM classifier adjusts its decision boundary until a suitable model is obtained. This yields individualised features and classifier pairs for each patient. Datasets containing local field potentials of PD patients were used to validate the method. Six of the nine patient datasets tested achieved a classification accuracy greater than 98%. The adaptive detector is suitable for realization on chip.
机译:对帕金森氏病(PD)患者的连续深部脑刺激会导致副作用并缩短起搏器电池寿命。这可以使用适应性刺激来补救。为了实现自适应DBS,由于跨患者和跨时间的生物标志物的不一致,需要患者定制的PD检测。本文提出将患者特定特征提取与自适应支持向量机(SVM)分类器一起使用,以创建针对PD的患者定制检测器。使用每个患者的PD和非PD谱带之间的比率的极值作为特征来获得患者特定的特征,而自适应SVM分类器会调整其决策边界,直到获得合适的模型为止。这将为每个患者提供个性化的特征和分类器对。包含PD患者局部电场潜能的数据集用于验证该方法。所测试的九个患者数据集中有六个达到了超过98%的分类精度。自适应检测器适合在芯片上实现。

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