Fabrizio Sciscenti, Valentina Agostini, Laura Rizzi, Michele Lanotte, Marco Ghislieri
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An adaptive artifact removal algorithm was optimized to balance artifacts identification and STN signal preservation, and the features were selected among those recommended in literature through correlation analysis and ReliefF ranking. The pipeline was trained and validated on a public dataset (Dataset A, 46 patients) and tested on an independent dataset (Dataset B, 36 patients), from a different surgical center, to assess generalizability. Dataset B is made publicly available as well.<i>Main Results.</i>ML-STIM achieved 87.8 ± 1.7% accuracy on Dataset A and 83.8 ± 1.6% accuracy on Dataset B, significantly outperforming a state-of-the-art deep learning model (ResNet-AT,<i>p</i>< 0.01). The artifact removal step significantly improved classification specificity (<i>p</i>< 0.001). ML-STIM processed raw 10-second recordings in 139.4 ± 2.1 ms, demonstrating real-time feasibility.<i>Significance.</i>These results confirm ML-STIM as an accurate, interpretable, and computationally efficient solution for intraoperative STN identification in DBS surgeries.</p>","PeriodicalId":94096,"journal":{"name":"Journal of neural engineering","volume":" ","pages":""},"PeriodicalIF":3.8000,"publicationDate":"2025-08-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"ML-STIM: Machine Learning for SubThalamic nucleus Intraoperative Mapping.\",\"authors\":\"Fabrizio Sciscenti, Valentina Agostini, Laura Rizzi, Michele Lanotte, Marco Ghislieri\",\"doi\":\"10.1088/1741-2552/adf579\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><i>Objective.</i>Deep Brain Stimulation (DBS) of the SubThalamic Nucleus (STN) is effective in alleviating motor symptoms in medication-refractory patients with Parkinson's Disease (PD). Intraoperative identification of the STN relies on MicroElectrode Recordings (MERs), typically analyzed by trained operators. However, this approach is time-consuming and subject to variability. For this reason, this study proposes ML-STIM (Machine Learning for SubThalamic nucleus Intraoperative Mapping), a ML pipeline designed to automate STN classification from MERs, ensuring high accuracy and real-time performance.<i>Approach.</i>ML-STIM consists of MERs pre-processing, feature extraction, and classification using a MultiLayer Perceptron. An adaptive artifact removal algorithm was optimized to balance artifacts identification and STN signal preservation, and the features were selected among those recommended in literature through correlation analysis and ReliefF ranking. The pipeline was trained and validated on a public dataset (Dataset A, 46 patients) and tested on an independent dataset (Dataset B, 36 patients), from a different surgical center, to assess generalizability. 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引用次数: 0
摘要
目的:丘脑下核(STN)脑深部电刺激(DBS)能有效缓解难治性帕金森病(PD)患者的运动症状。术中STN的识别依赖于微电极记录(MERs),通常由训练有素的操作员进行分析。然而,这种方法是耗时的,并且受到可变性的影响。因此,本研究提出ML-STIM (Machine Learning For SubThalamic nucleus Intraoperative Mapping),这是一种机器学习管道,旨在从MERs中自动分类STN,确保高精度和实时性。方法:ML-STIM由MERs预处理、特征提取和使用多层感知器(MLP)的分类组成。优化自适应伪迹去除算法,平衡伪迹识别和STN信号保存,并通过相关分析和ReliefF排序从文献推荐的特征中选择特征。该管道在公共数据集(数据集a, 46名患者)上进行了训练和验证,并在来自不同手术中心的独立数据集(数据集B, 36名患者)上进行了测试,以评估通用性。数据集B也是公开可用的。主要结果:ML-STIM在数据集A上的准确率为87.8±1.7%,在数据集B上的准确率为83.8±1.6%,显著优于最先进的深度学习模型(ResNet-AT, p < 0.01)。伪影去除步骤显著提高了分类特异性(p < 0.001)。ML-STIM在139.4±2.1毫秒内处理原始的10秒录音,证明了实时的可行性。意义:这些结果证实ML-STIM是DBS手术中术中STN识别的准确、可解释且计算效率高的解决方案。
ML-STIM: Machine Learning for SubThalamic nucleus Intraoperative Mapping.
Objective.Deep Brain Stimulation (DBS) of the SubThalamic Nucleus (STN) is effective in alleviating motor symptoms in medication-refractory patients with Parkinson's Disease (PD). Intraoperative identification of the STN relies on MicroElectrode Recordings (MERs), typically analyzed by trained operators. However, this approach is time-consuming and subject to variability. For this reason, this study proposes ML-STIM (Machine Learning for SubThalamic nucleus Intraoperative Mapping), a ML pipeline designed to automate STN classification from MERs, ensuring high accuracy and real-time performance.Approach.ML-STIM consists of MERs pre-processing, feature extraction, and classification using a MultiLayer Perceptron. An adaptive artifact removal algorithm was optimized to balance artifacts identification and STN signal preservation, and the features were selected among those recommended in literature through correlation analysis and ReliefF ranking. The pipeline was trained and validated on a public dataset (Dataset A, 46 patients) and tested on an independent dataset (Dataset B, 36 patients), from a different surgical center, to assess generalizability. Dataset B is made publicly available as well.Main Results.ML-STIM achieved 87.8 ± 1.7% accuracy on Dataset A and 83.8 ± 1.6% accuracy on Dataset B, significantly outperforming a state-of-the-art deep learning model (ResNet-AT,p< 0.01). The artifact removal step significantly improved classification specificity (p< 0.001). ML-STIM processed raw 10-second recordings in 139.4 ± 2.1 ms, demonstrating real-time feasibility.Significance.These results confirm ML-STIM as an accurate, interpretable, and computationally efficient solution for intraoperative STN identification in DBS surgeries.