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Multi-patient learning increases accuracy for Subthalamic nucleus identification in deep brain stimulation

机译:多患者学习提高了深脑刺激中的亚饱和核鉴定的准确性

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Establishing the exact position of basal ganglia is key in several brain surgeries, particularly in deep brain stimulation for patients suffering from Parkinson’s disease. There have been recent attempts to introduce automatic systems with the ability to localize, with high accuracy, specific brain regions. These systems usually follow the classical supervised learning paradigm, in which training data from different patients are employed to construct a classifier that is patientindependent. In this paper, we show how by sharing information from different patients, it is possible to increase accuracy for targeting the Subthalamic Nucleus. We do this in the context of multi-task learning, where different but related tasks are used simultaneously to leverage the performance of a learning system. Results show that the multitask framework can outperform the traditional patient-independent scenario in two different real datasets.
机译:建立基底神经节的确切位置是几种脑手术中的关键,特别是对患有帕金森病的患者的深脑刺激。最近有尝试引入具有本地化能力的自动系统,具有高精度,特定的大脑区域。这些系统通常遵循经典的监督学习范式,其中采用来自不同患者的培训数据来构建患者依存的分类器。在本文中,我们展示了如何通过不同患者分享信息,可以提高靶向亚粒子核的准确性。我们在多任务学习的背景下这样做,其中不同但相关任务同时使用以利用学习系统的性能。结果表明,多任务框架可以在两个不同的真实数据集中优于传统的患者无关场景。

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