Volkmann Heiko, Höglinger Günter U, Grön Georg, Bârlescu Lavinia A, Müller Hans-Peter, Kassubek Jan
Department of Neurology, University of Ulm, Ulm, Germany.
Department of Neurology, LMU University Hospital, Ludwig-Maximilians-Universität (LMU), Munich, Germany; German Center for Neurodegenerative Diseases (DZNE), Site, Munich, Germany; Munich Cluster for Systems Neurology (SyNergy), Munich, Germany.
Comput Biol Med. 2025 Feb;185:109518. doi: 10.1016/j.compbiomed.2024.109518. Epub 2024 Dec 10.
Quantitative magnetic resonance imaging (MRI) analysis has shown promise in differentiating neurodegenerative Parkinsonian syndromes and has significantly advanced our understanding of diseases like progressive supranuclear palsy (PSP) in recent years.
The aim of this study was to develop, implement and compare MRI analysis algorithms based on artificial intelligence (AI) that can differentiate PSP not only from healthy controls but also from Parkinson disease (PD), by analyzing changes in brain structure and microstructure. Specifically, this study focused on identifying regions of interest (ROIs) and tracts of interest (TOIs) that are crucial for the algorithms to provide clinically relevant performance indices for the distinction between disease variants.
MR data comprised diffusion tensor imaging (DTI - tractwise fractional anisotropy statistics (TFAS)) and T1-weighted (T1-w) data (texture analysis of the corpus callosum (CC)). One subject sample with 74 PSP patients and 63 controls was recorded at 3.0T at multiple sites. The other sample came from a single site, consisting of 66 PSP patients, 66 PD patients, and 44 controls, recorded at 1.5T. Four different machine learning algorithms (ML) and a deep learning (DL) neural network approach using Tensor Flow were implemented for the study. The training of the algorithms was performed on 80 % of the data, which included the entire single-site data and parts of the multiple-site data. The validation process was conducted on the remaining data, thereby consistently separating training and validation data.
A random forest algorithm and a DL neural network classified PSP and healthy controls with accuracies of 92 % and 95 %, respectively. Particularly, DTI derived measures for the pons, midbrain tegmentum, superior cerebral peduncle, putamen, and CC contributed to high accuracies. Furthermore, DL neural network classification of PSP and PD with 86 % accuracy showed the importance of 19 structures. The four most important features were DTI derived measures for prefrontal white matter, the fasciculus frontooccipitalis, the midbrain tegmentum, and the CC area II. This DL network achieved a sensitivity of 88 % and specificity of 85 %, resulting in a Youden-index of 0.72.
The primary goal of the present study was to compare multiple ML-methods and a DL approach to identify the least necessary set of brain structures to classify PSP vs. controls and PSP vs. PD by ranking them in a hierarchical order of importance. That way, this study demonstrated the potential of AI approaches to MRI as possible diagnostic and scientific tools to differentiate variants of neurodegenerative Parkinsonism.
定量磁共振成像(MRI)分析在鉴别神经退行性帕金森综合征方面显示出前景,并且近年来极大地推进了我们对诸如进行性核上性麻痹(PSP)等疾病的理解。
本研究的目的是开发、实施并比较基于人工智能(AI)的MRI分析算法,该算法通过分析脑结构和微观结构的变化,不仅能够将PSP与健康对照区分开来,还能将其与帕金森病(PD)区分开来。具体而言,本研究着重于识别感兴趣区域(ROI)和感兴趣束(TOI),这些对于算法提供区分疾病变体的临床相关性能指标至关重要。
MR数据包括扩散张量成像(DTI - 逐束分数各向异性统计(TFAS))和T1加权(T1 - w)数据(胼胝体(CC)的纹理分析)。一个包含74例PSP患者和63例对照的受试者样本在多个站点以3.0T进行记录。另一个样本来自单个站点,由66例PSP患者、66例PD患者和44例对照组成,在1.5T进行记录。本研究实施了四种不同的机器学习算法(ML)和一种使用Tensor Flow的深度学习(DL)神经网络方法。算法的训练在80%的数据上进行,其中包括整个单站点数据和部分多站点数据。验证过程在其余数据上进行,从而始终将训练数据和验证数据分开。
随机森林算法和DL神经网络对PSP和健康对照的分类准确率分别为92%和95%。特别地,脑桥、中脑被盖、大脑脚、壳核和CC的DTI衍生测量值有助于实现高准确率。此外,DL神经网络对PSP和PD的分类准确率为86%,显示出19个结构的重要性。四个最重要的特征是前额叶白质、额枕束、中脑被盖和CC区域II的DTI衍生测量值。该DL网络的灵敏度为88%,特异性为85%,约登指数为0.72。
本研究的主要目标是比较多种ML方法和一种DL方法,通过按重要性的层次顺序对脑结构进行排序,以确定对PSP与对照以及PSP与PD进行分类所需的最少脑结构集。通过这种方式,本研究证明了AI方法用于MRI作为区分神经退行性帕金森综合征变体的可能诊断和科学工具的潜力。