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Tests of clustering thalamic nuclei based on various dMRI models in the squirrel monkey brain

机译:基于各种dMRI模型的松鼠猴脑丘脑核聚集的测试

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Background: Clustering thalamic nuclei is important for both research and clinical purposes. For example, ventral intermediate nuclei in thalami serve as targets in both deep brain stimulation neurosurgery and radiosurgery for treating patients suffering from movement disorders (e.g., Parkinson's disease and essential tremor). Diffusion magnetic resonance imaging (dMRI) is able to reflect tissue microstructure in the central nervous system via fitting different models, such as, the diffusion tensor (DT), constrained spherical deconvolution (CSD), neurite orientation dispersion and density imaging (NODDI). diffusion kurtosis imaging (DKI) and the spherical mean technique (SMT). Purpose: To test which of the above-mentioned dMRI models is better for thalamic parcellation, we proposed a framework of κ-means clustering, implemented it on each model, and evaluated the agreement with histology. Method: An ex vivo monkey brain was scanned in a 9.4T MRI scanner at 0.3mm resolution with b values of 3000, 6000, 9000 and 12000 s/mm~2. AT-means clustering on each thalamus was implemented using maps of dMRI models fitted to the same data. Meanwhile, histological nuclei were identified by AChE and Nissl stains of the same brain. Overall agreement rate and agreement rate for each nucleus were calculated between clustering and histology. Sixteen thalamic nuclei on each hemisphere were included. Results: Clustering with the DKI model has slightly higher overall agreement rate but clustering with other dMRI models result in higher agreement rate in some nuclei. Conclusion: dMRI models should be carefully selected to better parcellate the thalamus. depending on the specific purpose of the parcellation.
机译:背景:丘脑核聚集对于研究和临床目的都很重要。例如,丘脑中腹侧中间核在深部脑刺激神经外科手术和放射外科手术中均作为靶标,用于治疗患有运动障碍(例如帕金森氏病和原发性震颤)的患者。扩散磁共振成像(dMRI)能够通过拟合不同的模型来反映中枢神经系统中的组织微结构,例如扩散张量(DT),约束球面反褶积(CSD),神经突取向弥散和密度成像(NODDI)。扩散峰度成像(DKI)和球均值技术(SMT)。目的:为了测试上述哪种dMRI模型更适合丘脑剥离,我​​们提出了κ-均值聚类的框架,在每个模型上实现该框架,并评估其与组织学的一致性。方法:在9.4T MRI扫描仪中以0.3mm的分辨率扫描离体猴脑,b值分别为3000、6000、9000和12000 s / mm〜2。使用适合相同数据的dMRI模型图在每个丘脑上进行AT均值聚类。同时,通过同一大脑的AChE和Nissl染色鉴定组织学核。在聚类和组织学之间计算每个核的总体一致率和一致率。每个半球上有16个丘脑核。结果:与DKI模型的聚类具有更高的总体协议率,但与其他dMRI模型的聚类导致某些核的更高协议率。结论:应仔细选择dMRI模型以更好地分割丘脑。取决于拆分的特定目的。

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