根据ICD-11解读紧张症的白质微观结构变化:复制和机器学习分析

IF 9.6 1区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Psychiatry Pub Date : 2024-12-02 DOI:10.1038/s41380-024-02821-0
Robin Peretzke, Peter F. Neher, Geva A. Brandt, Stefan Fritze, Sebastian Volkmer, Jonas Daub, Georg Northoff, Jonas Bohn, Yannick Kirchhoff, Saikat Roy, Klaus H. Maier-Hein, Andreas Meyer-Lindenberg, Dusan Hirjak
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引用次数: 0

摘要

紧张症是一种严重的精神运动障碍,以运动、情感和认知行为异常为特征。尽管先前的磁共振成像(MRI)研究表明,白质(WM)连接障碍在紧张症的发病机制中起着重要作用,但目前尚不清楚连接精神运动区域的白质束的微结构改变是否有助于更好地对紧张症患者进行分类。在这里,根据ICD-11标准,从两个独立的队列(whiteCAT/复制队列)中收集弥散加权MRI数据,这些队列中有(n = 45/n = 13)和没有(n = 56/n = 26)紧张症患者。使用Northoff (NCRS)和Bush-Francis (BFCRS)紧张症评定量表检查紧张症严重程度。我们使用基于束的空间统计(TBSS),束测(tractsig)和机器学习(ML)根据束测值以及新开发的工具RadTract生成的束测特征对紧张症患者进行分类。与非紧张症患者相比,紧张症患者在不同胼胝体节段(CC_1, CC_3, CC_4, CC_5和CC_6)的TractSeg测量显示分数各向异性(FA)改变。我们的分类结果表明,与传统的肌束测量值相比,接受肌束切开术训练的患者表现更高。此外,在CC_6中,我们利用whiteCAT数据中识别的tractomics特征成功训练了两个分类器。这些分类器分别应用于白色ecat和复制队列,显示出与白色ecat队列的接受者工作特征下面积(AUROC)值(0.79)和复制队列的0.76相当的性能。相比之下,FA量测法训练导致白色ecat组的AUROC值较低,为0.66,复制组为0.51。总之,这些发现强调了CC - WM微结构改变在紧张症病理生理中的意义。成功地使用基于ML的分类模型来识别紧张症患者有可能提高诊断精度。
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Deciphering white matter microstructural alterations in catatonia according to ICD-11: replication and machine learning analysis

Catatonia is a severe psychomotor disorder characterized by motor, affective and cognitive-behavioral abnormalities. Although previous magnetic resonance imaging (MRI) studies suggested white matter (WM) dysconnectivity in the pathogenesis of catatonia, it is unclear whether microstructural alterations of WM tracts connecting psychomotor regions might contribute to a better classification of catatonia patients. Here, diffusion-weighted MRI data were collected from two independent cohorts (whiteCAT/replication cohort) of patients with (n = 45/n = 13) and without (n = 56/n = 26) catatonia according to ICD-11 criteria. Catatonia severity was examined using the Northoff (NCRS) and Bush-Francis (BFCRS) Catatonia Rating Scales. We used tract-based spatial statistics (TBSS), tractometry (TractSeg) and machine-learning (ML) to classify catatonia patients from tractometry values as well as tractomics features generated by the newly developed tool RadTract. Catatonia patients showed fractional anisotropy (FA) alterations measured via TractSeg in different corpus callosum segments (CC_1, CC_3, CC_4, CC_5 and CC_6) compared to non-catatonia patients across both cohorts. Our classification results indicated a higher level of performance when trained on tractomics as opposed to traditional tractometry values. Moreover, in the CC_6, we successfully trained two classifiers using the tractomics features identified in the whiteCAT data. These classifiers were applied separately to the whiteCAT and replication cohorts, demonstrating comparable performance with Area Under the Receiver Operating Characteristics (AUROC) values of 0.79 for the whiteCAT cohort and 0.76 for the replication cohort. In contrast, training on FA tractometry resulted in lower AUROC values of 0.66 for the whiteCAT cohort and 0.51 for the replication cohort. In conclusion, these findings underscore the significance of CC WM microstructural alterations in the pathophysiology of catatonia. The successful use of an ML based classification model to identify catatonia patients has the potential to improve diagnostic precision.

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来源期刊
Molecular Psychiatry
Molecular Psychiatry 医学-精神病学
CiteScore
20.50
自引率
4.50%
发文量
459
审稿时长
4-8 weeks
期刊介绍: Molecular Psychiatry focuses on publishing research that aims to uncover the biological mechanisms behind psychiatric disorders and their treatment. The journal emphasizes studies that bridge pre-clinical and clinical research, covering cellular, molecular, integrative, clinical, imaging, and psychopharmacology levels.
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