Bellino Gabriel Martin, Schiaffino Luciano, Battisti Marisa, Guerrero Juan, Rosado-Muñoz Alfredo
Faculty of Engineering, National University of Entre Ríos: route 11, Km 10, 3100 Oro Verde, Argentina.
Faculty of Life and Health Sciences, Autonomous University of Entre Ríos, Alem 217, 3100 Paraná, Argentina.
Entropy (Basel). 2019 Mar 29;21(4):346. doi: 10.3390/e21040346.
Deep Brain Stimulation (DBS) of the Subthalamic Nuclei (STN) is the most used surgical treatment to improve motor skills in patients with Parkinson's Disease (PD) who do not adequately respond to pharmacological treatment, or have related side effects. During surgery for the implantation of a DBS system, signals are obtained through microelectrodes recordings (MER) at different depths of the brain. These signals are analyzed by neurophysiologists to detect the entry and exit of the STN region, as well as the optimal depth for electrode implantation. In the present work, a classification model is developed and supervised by the K-nearest neighbour algorithm (KNN), which is automatically trained from the 18 temporal features of MER registers of 14 patients with PD in order to provide a clinical support tool during DBS surgery. We investigate the effect of different standardizations of the generated database, the optimal definition of KNN configuration parameters, and the selection of features that maximize KNN performance. The results indicated that KNN trained with data that was standardized per cerebral hemisphere and per patient presented the best performance, achieving an accuracy of 94.35% ( < 0.001). By using feature selection algorithms, it was possible to achieve 93.5% in accuracy in selecting a subset of six features, improving computation time while processing in real time.
丘脑底核(STN)的深部脑刺激(DBS)是治疗帕金森病(PD)患者运动技能的最常用手术方法,这些患者对药物治疗反应不佳或有相关副作用。在植入DBS系统的手术过程中,通过微电极记录(MER)在大脑不同深度获取信号。神经生理学家分析这些信号,以检测STN区域的进出以及电极植入的最佳深度。在本研究中,开发了一种由K近邻算法(KNN)监督的分类模型,该模型根据14例PD患者MER记录的18个时间特征自动训练,以便在DBS手术期间提供临床支持工具。我们研究了生成数据库的不同标准化的效果、KNN配置参数的最佳定义以及最大化KNN性能的特征选择。结果表明,使用按脑半球和患者标准化的数据训练的KNN表现最佳,准确率达到94.35%(<0.001)。通过使用特征选择算法,在选择六个特征的子集时,准确率可达93.5%,同时提高了实时处理时的计算速度。