Rajpurohit Vikram, Danish Shabbar F, Hargreaves Eric L, Wong Stephen
Rutgers - Robert Wood Johnson Medical School, USA.
Department of Surgery, Division of Neurosurgery, Rutgers - Robert Wood Johnson Medical School, USA.
Clin Neurophysiol. 2015 May;126(5):975-82. doi: 10.1016/j.clinph.2014.05.039. Epub 2014 Sep 3.
Microelectrode recording (MER) is used to identify the subthalamic nucleus (STN) during deep brain stimulation (DBS) surgery. Automated STN detection typically involves extracting quantitative features from MERs for classifier training. This study evaluates the ability of feature selection to identify optimal feature combinations for automated STN localization.
We extracted 13 features from 65 MERs for classifier training. For logistic regression (LR) classification, we compared classifiers identified by feature selection to those containing all possible feature combinations. We used classification error as our metric with hold-one-patient-out cross-validation. We also compared patient-specific vs. independent normalization on classifier performance.
Feature selection and patient-specific normalization were superior to non-optimized, patient-independent classifiers. Feature selection, patient-specific normalization, and both produced relative error reductions of 4.95%, 31.36%, and 38.92%, respectively. Three of four feature-selected LR classifiers performed better than 99% of classifiers with all possible feature combinations. Optimal feature combinations were not predictable from individual feature performance.
Feature selection reduces classification error in automated STN localization from MERs. Additional improvement from patient-specific normalization suggests these approaches are necessary for clinically reliable automation of MER interpretation.
These findings represent an incremental advance in automated functional localization of STN from MER in DBS surgery.
在脑深部电刺激(DBS)手术中,微电极记录(MER)用于识别丘脑底核(STN)。自动STN检测通常涉及从MER中提取定量特征以进行分类器训练。本研究评估特征选择识别自动STN定位最佳特征组合的能力。
我们从65个MER中提取了13个特征用于分类器训练。对于逻辑回归(LR)分类,我们将通过特征选择确定的分类器与包含所有可能特征组合的分类器进行比较。我们使用分类误差作为指标,采用留一患者交叉验证。我们还比较了患者特异性归一化与独立归一化对分类器性能的影响。
特征选择和患者特异性归一化优于未优化的、与患者无关的分类器。特征选择、患者特异性归一化以及两者结合分别使相对误差降低了4.95%、31.36%和38.92%。四个经特征选择的LR分类器中有三个的表现优于99%的包含所有可能特征组合的分类器。无法从单个特征性能预测最佳特征组合。
特征选择可降低MER自动STN定位中的分类误差。患者特异性归一化带来的进一步改善表明,这些方法对于MER解释的临床可靠自动化是必要的。
这些发现代表了DBS手术中MER自动功能定位STN方面的渐进式进展。