Unsupervised Detection of Sub-Territories of the Subthalamic Nucleus During DBS Surgery with Manifold Learning
Ido Cohen, Dan Valsky, Ronen Talmon

TL;DR
This paper introduces an unsupervised, data-driven method using manifold learning to detect the Subthalamic Nucleus and its sub-territory during DBS surgery, reducing reliance on expert-labeled data.
Contribution
The authors develop a novel unsupervised detection approach based on manifold learning and Mahalanobis distance, improving detection accuracy without requiring labeled training data.
Findings
Comparable STN detection accuracy to supervised methods
Superior DLOR detection performance
Effective in real surgical data from multiple patients
Abstract
During Deep Brain Stimulation(DBS) surgery for treating Parkinson's disease, one vital task is to detect a specific brain area called the Subthalamic Nucleus(STN) and a sub-territory within the STN called the Dorsolateral Oscillatory Region(DLOR). Accurate detection of the STN borders is crucial for adequate clinical outcomes. Currently, the detection is based on human experts, guided by supervised machine learning detection algorithms. Consequently, this procedure depends on the knowledge and experience of particular experts and on the amount and quality of the labeled data used for training the machine learning algorithms. In this paper, to circumvent the dependence and bias caused by the training data, we present a data-driven unsupervised method for detecting the STN and the DLOR during DBS surgery. Our method is based on an agnostic modeling approach for general target detection…
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Taxonomy
TopicsNeurological disorders and treatments · Parkinson's Disease Mechanisms and Treatments · Voice and Speech Disorders
MethodsDiffusion
