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opynfield: An Open-Source Python Package for the Analysis of Open Field Exploration Data. opynfield:一个开源的Python包,用于分析开放领域的勘探数据。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-10 DOI: 10.1007/s12021-025-09753-2
Ellen McMullen, Miguel de la Flor, Gemunu Gunaratne, Jason O'Connor, Gregg Roman

The open field test is widely used in behavioral neuroscience, providing insights into exploration, anxiety, and the learning processes associated with habituation to novelty. Analyses of exploratory behaviors in open field areas rely heavily on movement changes over time. These activity measures are susceptible to confounds from group differences in locomotor abilities and only provide an indirect measure of learning during exploration. Considerable effort has been placed on identifying additional measures of behavior that can better describe changes in exploration and habituation of novelty. Two measures for enhanced analysis of exploration are coverage and directional persistence (P++). Coverage measures the number of visits to segments of the arena boundary and represents the number of opportunities to habituate to the novelty of this boundary. P++ measures the probability of continued movement in the same direction, reflecting goal-directed exploration, which decreases as the animal habituates the novel arena. Our new Python package, opynfield, calculates coverage, P++, and activity measures from open field tracking data. We further introduce versions of coverage and the analysis of additional motion probabilities. The package includes new, in-depth statistical approaches and data visualizations. We demonstrate the applicability of opynfield using experiments with Drosophila melanogaster in which we (1) validate opynfield's statistical tests, (2) substantiate coverage as a measure of novelty habituation, and (3) characterize behavioral differences in exploration. We also illustrate the utility of opynfield for analyzing rodent exploration by applying it to data from an experiment with Mus musculus. By leveraging full-density tracking data, opynfield facilitates a more nuanced understanding of exploration, potentially leading to improved insights into animal behavior and changes in learning, locomotor activity, and anxiety.

开放场测试在行为神经科学中广泛应用,为探索、焦虑和与适应新事物相关的学习过程提供了见解。对野外勘探行为的分析在很大程度上依赖于运动随时间的变化。这些活动测量容易受到运动能力群体差异的干扰,并且只能间接测量探索过程中的学习情况。为了更好地描述对新奇事物的探索和习惯化的变化,人们已经付出了相当大的努力来确定行为的其他衡量标准。增强勘探分析的两个措施是覆盖和定向持久性(p++)。覆盖范围测量了对竞技场边界部分的访问次数,并代表了适应该边界的新颖性的机会数量。p++测量在同一方向上继续移动的可能性,反映目标导向的探索,随着动物适应新的竞技场,这种可能性会降低。我们的新Python包opynfield可以从开放字段跟踪数据中计算覆盖率、p++和活动度量。我们进一步介绍了覆盖的版本和附加运动概率的分析。该软件包包括新的、深入的统计方法和数据可视化。我们通过对黑腹果蝇的实验证明了opynfield的适用性,其中我们(1)验证了opynfield的统计测试,(2)证实了覆盖度作为新颖性习惯化的衡量标准,(3)表征了探索中的行为差异。我们还通过将视场应用于小家鼠实验数据来说明视场在分析啮齿动物探索方面的效用。通过利用全密度跟踪数据,opynfield促进了对探索的更细致的理解,有可能提高对动物行为和学习、运动活动和焦虑变化的见解。
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引用次数: 0
Optimizing Theta Burst Stimulation Protocols: A Computational Exploration of Novel Alpha-Beta and Alpha-Gamma Frequency Couplings. 优化θ脉冲刺激方案:新的α - β和α - γ频率耦合的计算探索。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-27 DOI: 10.1007/s12021-025-09758-x
Somayeh Mahmouie, Mehrdad Saviz, Golnaz Baghdadi, Farzad Towhidkhah

This computational study aimed to optimize the theta burst stimulation (TBS) protocols by systematically exploring the effects of novel frequency couplings combining alpha-band bursts (10 Hz) with pulses in beta (21-29 Hz) and gamma (30-100 Hz) ranges on cortical excitability. Utilizing a revised calcium-dependent plasticity model, we simulated intermittent (iTBS) and continuous (cTBS) TBS after-effects under conventional (5 Hz burst, 50 Hz pulse), Nyffeler's modified (6 Hz burst, 30 Hz pulse), and proposed alpha-beta/gamma frequency couplings. Model robustness was assessed via sensitivity analyses. Novel alpha-beta/gamma couplings consistently induced more pronounced Motor-Evoked Potential (MEP) after-effects. For iTBS/cTBS, alpha-beta coupling (10 Hz burst, 21 Hz pulse) yielded the highest facilitatory/inhibitory effect (14.25/-93.17), markedly surpassing Nyffeler's (7.71/-8.81) and conventional (5.48/-5.35). Alpha-gamma coupling (10 Hz burst, 30 Hz pulse) also showed superior effects. Sensitivity and uncertainty analyses confirmed higher responsiveness. Coupling alpha-band bursts with targeted beta/gamma pulse frequencies markedly enhances the efficacy of TBS-induced cortical plasticity. These findings provide a strong computational rationale for empirical validation and potential clinical translation to improve neuromodulation precision in neuropsychiatric disorders. This work introduces promising optimized TBS protocols that may elevate therapeutic outcomes and reduce treatment variability, advancing non-invasive brain stimulation interventions.

本计算研究旨在通过系统地探索将α波段脉冲(10 Hz)与β (21-29 Hz)和γ (30-100 Hz)脉冲结合在一起的新频率耦合对皮层兴奋性的影响,从而优化θ脉冲刺激(TBS)方案。利用修正的钙依赖塑性模型,我们模拟了传统(5 Hz突发,50 Hz脉冲)、Nyffeler改进(6 Hz突发,30 Hz脉冲)下间歇性(iTBS)和连续(cTBS) TBS的后效应,并提出了α - β / γ频率耦合。通过敏感性分析评估模型的稳健性。新的α - β / γ偶联持续诱导更明显的运动诱发电位(MEP)后效。对于iTBS/cTBS, α - β耦合(10 Hz爆发,21 Hz脉冲)产生了最高的促进/抑制效应(14.25/-93.17),明显超过了Nyffeler(7.71/-8.81)和常规(5.48/-5.35)。α - γ耦合(10 Hz突发,30 Hz脉冲)也表现出优越的效果。敏感性和不确定性分析证实了更高的响应性。α波段脉冲与目标β / γ脉冲频率的耦合显著增强了tbs诱导的皮质可塑性的效果。这些发现为经验验证和潜在的临床翻译提供了强有力的计算基础,以提高神经精神疾病的神经调节精度。这项工作介绍了有前途的优化TBS方案,可以提高治疗效果,减少治疗变异性,推进非侵入性脑刺激干预。
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引用次数: 0
Inferences on the Watts-Strogatz Model: A Study on Brain Functional Connectivity. 对Watts-Strogatz模型的推论:脑功能连通性研究。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-27 DOI: 10.1007/s12021-025-09756-z
Allan Falconi-Souto, Rodrigo M Cabral-Carvalho, André Fujita, João Ricardo Sato

Modelling real-world networks allows investigating the structure and the dynamics of such networks, which led to significant developments in various scientific fields. One of the most used models in these investigations is the Watts-Strogatz, with a structure composed of high clustering and short path lengths known as small-world networks. This model proposes an interesting gradient between regular and random networks, but its generating process, which relies on a single rewiring probability parameter, is hard to access and to manipulate. In order to study the mechanics of the Watts-Strogatz model, the present work proposes a new method based on deep neural networks that could estimate its probability p. To illustrate its applicability, neuroimaging and phenotypic resting-state fMRI data were used from patients with ADHD and typical development children, obtained from the ADHD-200 database. The neural network efficiently estimated the probability parameter, resulting in small-world graphs for functional brain connectivity with a mean ± s.e.m. p distribution of 0.804 ± 0.003. Despite no difference was found considering the gender or diagnosis of participants, the generalized linear model revealed age as a significant predictor of p (mean ± s.e.m.: 4.410 ± 0.877; p < 0.001), indicating a great effect of neurodevelopment on the brain network's structure. The proposed approach is promising in estimating the probability of the Watts-Strogatz model, and its application has the potential to improve investigations of network connectivity with a relatively efficient and simple framework.

模拟真实世界的网络可以研究这种网络的结构和动态,这导致了各个科学领域的重大发展。这些研究中最常用的模型之一是Watts-Strogatz模型,它的结构由高聚类和短路径长度组成,被称为小世界网络。该模型在规则网络和随机网络之间提出了一个有趣的梯度,但是它的生成过程依赖于一个单一的重新布线概率参数,很难访问和操纵。为了研究Watts-Strogatz模型的机制,本工作提出了一种基于深度神经网络的新方法,可以估计其概率p。为了说明其适用性,我们使用了ADHD患者和典型发育儿童的神经影像学和表型静息状态fMRI数据,这些数据来自ADHD-200数据库。神经网络有效地估计了概率参数,得到了脑功能连接的小世界图,其平均值为±s.e.m。P分布为0.804±0.003。尽管没有发现性别或参与者的诊断有差异,但广义线性模型显示年龄是p (mean±s.e.m)的显著预测因子。: 4.410±0.877;p
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引用次数: 0
3D Morphometric and Computational Modeling of the Human Fasciola Cinerea: A Hidden Gate of Memory Networks. 人类电影片形吸虫的三维形态测量和计算建模:记忆网络的隐藏之门。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-27 DOI: 10.1007/s12021-025-09757-y
Eren Ogut

The fasciola cinerea (FC) is a slender archicortical band at the posterior hippocampal tail, and its human morphology and network role are poorly defined. To generate a reproducible in vivo three-dimensional (3D) model of the FC, quantify its geometry, characterize structural and functional connectivity within posterior-medial memory networks, and test a tractography-constrained computational model in which the FC acts as a multiplicative gate. Open 7 T datasets, structural, diffusion, and resting-state functional magnetic resonance imaging (fMRI) were anchored to BigBrain and Julich-Brain priors. A semi-automated, atlas-guided pipeline was used to segment the FC and derive morphometrics (volume, thickness, width, curvature, and Laplace-Beltrami spectral shape). Reliability was assessed using the Dice, 95% Hausdorff distance, and test-retest intraclass correlation coefficient (ICC). Diffusion tractography was used to estimate the FC structural pathways toward retrosplenial (RSC), parahippocampal (PHC), posterior cingulate (PCC), and thalamic targets. Resting-state coupling was summarized using Fisher-z correlations and narrowband coherence. A Wilson-Cowan neural mass model, constrained by tractography, simulated FC-dependent FC-RSC coherence with morphometric scaling of gating gain. Segmentation was reliable (Dice = 0.78 ± 0.05; 95% Hausdorff = 1.62 ± 0.41 mm; ICC_volume = 0.88; ICC_thickness = 0.82). Group morphometrics: volume 84.3 ± 17.9 mm³, mean thickness 0.92 ± 0.15 mm, width 1.86 ± 0.31 mm, centerline length 14.2 ± 2.1 mm. FC showed preferential connectivity: FC→RSC 0.21 ± 0.09; FC→PHC 0.18 ± 0.08; FC→PCC 0.11 ± 0.06; FC→Thalamus 0.06 ± 0.04. Resting-state coupling was strongest for FC-RSC (z = 0.24 ± 0.12) with a slow-band coherence enhancement. Thickness predicted the FC→RSC strength (β = 0.17 per 0.1 mm) and FC-RSC z (β = 0.08 per 0.1 mm), and higher curvature was negatively related. The gating model reproduced empirical FC-RSC coherence (r = 0.52 ± 0.11), and morphometric scaling improved the fit (Δr = + 0.06). We provide an anatomically grounded and mathematically validated 3D FC model that links microstructures to mesoscale connectivity. Preferential posterior-medial coupling and morphometry-dependent gating support the FC as a modulatory interface in human memory networks and yield testable markers for individualized mapping and clinical translation.

筋膜体(FC)是位于海马后部尾部的细长皮质带,其人类形态和网络作用尚不清楚。为了生成可复制的FC体内三维(3D)模型,量化其几何形状,表征后内侧记忆网络中的结构和功能连接,并测试一个束状图约束的计算模型,其中FC充当乘法门。开放的7t数据集,结构、扩散和静息状态功能磁共振成像(fMRI)被锚定到BigBrain和Julich-Brain先验。使用半自动的atlas引导管道对FC进行分割,并获得形态计量学(体积、厚度、宽度、曲率和Laplace-Beltrami光谱形状)。采用Dice、95% Hausdorff距离和重测类内相关系数(test-retest class correlation coefficient, ICC)评估信度。弥散束造影用于估计FC通往脾后(RSC)、海马旁(PHC)、后扣带(PCC)和丘脑靶点的结构通路。利用Fisher-z相关和窄带相干对静态耦合进行了总结。Wilson-Cowan神经质量模型在神经束造影的约束下,通过门控增益的形态尺度模拟fc依赖的FC-RSC相干性。分割可靠(Dice = 0.78±0.05;95% Hausdorff = 1.62±0.41 mm; ICC_volume = 0.88; ICC_thickness = 0.82)。群体形态测量:体积84.3±17.9 mm³,平均厚度0.92±0.15 mm,宽度1.86±0.31 mm,中心线长度14.2±2.1 mm。FC表现出优先连通性:FC→RSC 0.21±0.09;Fc→phc 0.18±0.08;Fc→pcc 0.11±0.06;FC→丘脑0.06±0.04。FC-RSC的静息态耦合最强(z = 0.24±0.12),慢带相干性增强。厚度预测FC→RSC强度(β = 0.17 / 0.1 mm)和FC-RSC z (β = 0.08 / 0.1 mm),高曲率负相关。门控模型再现了经验FC-RSC一致性(r = 0.52±0.11),形态计量尺度改善了拟合(Δr = + 0.06)。我们提供了一个解剖学基础和数学验证的3D FC模型,将微观结构与中尺度连接联系起来。优先后内侧耦合和形态依赖性门控支持FC作为人类记忆网络的调节接口,并为个性化定位和临床翻译提供可测试的标记。
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引用次数: 0
RELICT-NI: Replica Detection in Synthetic Neuroimaging-A Study on Noncontrast CT and Time-of-Flight MRA. RELICT-NI:合成神经成像中的复制检测——非对比CT和飞行时间MRA的研究。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-10 DOI: 10.1007/s12021-025-09745-2
Orhun Utku Aydin, Alexander Koch, Adam Hilbert, Jana Rieger, Felix Lohrke, Fujimaro Ishida, Satoru Tanioka, Dietmar Frey

Background: Synthetic neuroimaging data has the potential to augment and improve the generalizability of deep learning models. However, memorization in generative models can lead to unintended leakage of sensitive patient information, limiting model utility and jeopardizing patient privacy.

Methods: We propose RELICT-NI (REpLIca deteCTion-NeuroImaging), a framework for detecting replicas in synthetic neuroimaging datasets. RELICT-NI evaluates image similarity using three complementary approaches: (1) image-level analysis, (2) feature-level analysis via a pretrained medical foundation model, and (3) segmentation-level analysis. RELICT-NI was validated on two clinically relevant neuroimaging use cases: non-contrast head CT with intracerebral hemorrhage (N = 774) and time-of-flight MR angiography of the Circle of Willis (N = 1,782). Expert visual scoring was used as the reference for identifying replicas. Balanced accuracy at the optimal threshold was reported to assess replica classification performance of each method.

Results: The reference visual rating identified 45 of 50 and 5 of 50 generated images as replicas for the NCCT and TOF-MRA use cases, respectively. For the NCCT use case, both image-level and feature-level analyses achieved perfect replica detection (balanced accuracy = 1) at optimal thresholds. A perfect classification of replicas for the TOF-MRA case was not possible at any threshold, with the segmentation-level analysis achieving the highest balanced accuracy (0.79).

Conclusions: Replica detection is a crucial but often neglected validation step in developing deep generative models in neuroimaging. The proposed RELICT-NI framework provides a standardized, easy-to-use tool for replica detection and aims to facilitate responsible and ethical synthesis of neuroimaging data.

Relevance statement: Our developed replica detection framework provides an important step towards standardized and rigorous validation practices of generative models in neuroimaging. Our method promotes the secure sharing of neuroimaging data and facilitates the development of robust deep learning models.

背景:合成神经成像数据具有增强和提高深度学习模型的可泛化性的潜力。然而,生成模型中的记忆可能导致患者敏感信息的意外泄露,限制了模型的实用性并危及患者隐私。方法:我们提出了RELICT-NI (REpLIca deteCTion-NeuroImaging),这是一个用于检测合成神经成像数据集中的副本的框架。RELICT-NI使用三种互补的方法来评估图像相似性:(1)图像级分析,(2)通过预训练的医学基础模型进行特征级分析,以及(3)分割级分析。RELICT-NI在两个临床相关的神经影像学用例中得到验证:脑出血的非对比头部CT (N = 774)和威利斯圈的飞行时间MR血管造影(N = 1782)。使用专家视觉评分作为识别复制品的参考。在最优阈值下的平衡精度被报道来评估每种方法的副本分类性能。结果:参考视觉评级分别确定了50张生成图像中的45张和50张生成图像中的5张作为NCCT和TOF-MRA用例的复制品。对于NCCT用例,图像级和特征级分析都在最佳阈值下实现了完美的副本检测(平衡精度= 1)。在任何阈值下都不可能对TOF-MRA病例的副本进行完美分类,分割水平分析获得了最高的平衡精度(0.79)。结论:复制检测是神经成像中开发深度生成模型的关键但经常被忽视的验证步骤。拟议的RELICT-NI框架提供了一个标准化的,易于使用的复制检测工具,旨在促进负责任和道德的神经成像数据合成。相关声明:我们开发的副本检测框架为神经成像生成模型的标准化和严格验证实践提供了重要的一步。我们的方法促进了神经成像数据的安全共享,并促进了鲁棒深度学习模型的开发。
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引用次数: 0
Workflow for the Creation of 3D Stereoscopic Models of Supra- and Infratentorial Brain Venous Anatomy and their Integration in a Virtual Reality Environment. 创建幕上和幕下脑静脉解剖三维立体模型的工作流程及其在虚拟现实环境中的集成。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-30 DOI: 10.1007/s12021-025-09752-3
Francesco Carbone, Toma Spiriev, Martin Trandzhiev, Michael Wolf-Vollenbröker, Kay M Körner, Andrea Steuwe, Matteo de Notaris, Vladimir Nakov, Jan F Cornelius

The recent advance in technology allows for the photorealistic digitalization of anatomical specimens that can now be presented through various dynamic visualization modalities, enabling a more interactive learning experience. This study explores a comprehensive workflow for reproducibly integrating photorealistic three-dimensional (3D) anatomical scans of the supra- and infratentorial venous system with stereoscopic visualization and virtual reality (VR) for anatomical learning. A formaldehyde-fixed head and neck specimen was injected with radiopaque dye into its vessels, and a post-mortem computed tomography (CT) venography was performed. A layered anatomical dissection of the intracranial venous system was performed. Photogrammetry surface scanning was employed to create 3D anatomical models, which were then post-processed to produce stereoscopic 3D images and videos using open-source software. In addition, the 3D models were formatted for immersive VR environment integration. Six photorealistic surface models and one CT venography-based reconstruction were generated. These were incorporated into several platforms: multiplayer VR environment using stand-alone headsets, and stereoscopic materials suitable for phone-based VR viewers, 3D multimedia projectors, or 3D monitors with passive or active glasses. These formats supported multiple learning scenarios (VR in single or multiplayer sessions), 3D stereoscopic lectures using 3D multimedia, real-time 3D stereoscopic visualization, or prerecorded videos for phone-based VR visualization. Building on these formats, the proposed workflow enables a realistic and spatially accurate representation of the anatomical data with photorealistic 3D models and facilitates the creation of accessible educational content for 3D stereoscopic presentations and immersive dedicated VR sessions, all through a user-friendly technical approach.

最近的技术进步允许解剖标本的逼真数字化,现在可以通过各种动态可视化方式呈现,从而实现更具互动性的学习体验。本研究探索了一种综合的工作流程,可将幕上静脉系统和幕下静脉系统的逼真三维(3D)解剖扫描与立体可视化和虚拟现实(VR)相结合,用于解剖学习。将甲醛固定的头颈部标本注入血管,并进行死后计算机断层扫描(CT)静脉造影术。对颅内静脉系统进行分层解剖。采用摄影测量表面扫描技术创建三维解剖模型,然后使用开源软件进行后处理,生成立体三维图像和视频。此外,还对三维模型进行了格式化,以便与沉浸式VR环境集成。生成了6个逼真的表面模型和1个基于CT静脉造影的重建模型。它们被整合到几个平台中:使用独立耳机的多人虚拟现实环境,适合基于手机的虚拟现实观众的立体材料,3D多媒体投影仪,或带有被动或主动眼镜的3D显示器。这些格式支持多种学习场景(单个或多人会话的VR),使用3D多媒体的3D立体讲座,实时3D立体可视化或预先录制的视频,用于基于手机的VR可视化。在这些格式的基础上,提出的工作流程可以通过逼真的3D模型对解剖数据进行逼真和空间准确的表示,并促进为3D立体演示和沉浸式专用VR会议创建可访问的教育内容,所有这些都通过用户友好的技术方法。
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引用次数: 0
A Study of Deep Clustering in Spike Sorting. 尖峰分类中深度聚类的研究。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-22 DOI: 10.1007/s12021-025-09751-4
Eugen-Richard Ardelean, Raluca Laura Portase
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引用次数: 0
Gaining Brain Insights by Tapping into the Black Box: Linking Structural MRI Features to Age and Cognition using Shapley-Based Interpretation Methods. 通过进入黑匣子获得大脑洞察力:使用基于shapley的解释方法将结构MRI特征与年龄和认知联系起来。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-22 DOI: 10.1007/s12021-025-09737-2
Julia Kropiunig, Øystein Sørensen

Global interpretability in machine learning holds great potential for extracting meaningful insights from neuroimaging data to improve our understanding of brain function. Although various approaches exist to identify key contributing features at both local and global levels, the high dimensionality and correlations in neuroimaging data require careful selection of interpretability methods to achieve reliable global insights into brain function using machine learning. In this study, we evaluate multiple interpretability techniques such as SHAP, which relies on feature independence, as well as recent advances that account for feature dependence in the context of global interpretability, and inherently global methods such as SAGE. To demonstrate the practical application, we trained XGBoost models to predict age and fluid intelligence using neuroimaging measures from the UK Biobank dataset. By applying these interpretability methods, we found that mean intensities in subcortical regions are consistently and significantly associated with brain aging, while the prediction of fluid intelligence is driven by contributions of the hippocampus and the cerebellum, alongside established regions such as the frontal and temporal lobes. These results underscore the value of interpretable machine learning methods in understanding brain function through a data-driven approach.

机器学习的全局可解释性在从神经成像数据中提取有意义的见解以提高我们对大脑功能的理解方面具有巨大的潜力。尽管存在各种方法来识别局部和全局层面的关键贡献特征,但神经成像数据的高维性和相关性需要仔细选择可解释性方法,以使用机器学习实现对大脑功能的可靠全局洞察。在本研究中,我们评估了多种可解释性技术,如依赖于特征独立性的SHAP,以及在全局可解释性背景下解释特征依赖性的最新进展,以及固有的全局方法,如SAGE。为了演示实际应用,我们使用来自UK Biobank数据集的神经成像测量方法训练XGBoost模型来预测年龄和流体智力。通过应用这些可解释性方法,我们发现皮层下区域的平均强度与大脑衰老一致且显著相关,而流体智力的预测是由海马和小脑以及额叶和颞叶等既定区域的贡献驱动的。这些结果强调了可解释的机器学习方法在通过数据驱动方法理解大脑功能方面的价值。
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引用次数: 0
Towards Robust Brain Midline Shift Detection: A YOLO-Based 3D Slicer Extension with a Novel Dataset. 迈向稳健的大脑中线移位检测:基于yolo的三维切片器扩展与一个新的数据集。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-14 DOI: 10.1007/s12021-025-09748-z
Meltem Kurt Pehlivanoğlu, Nur Banu Albayrak, Deniz Karhan, İhsan Doğan

Accurate detection of brain midline shift is critical for the diagnosis and monitoring of neurological conditions such as traumatic brain injuries, strokes, and tumors. This study aims to address the lack of dedicated datasets and tools for this task by introducing a novel dataset and a 3D Slicer extension, evaluating the effectiveness of multiple deep learning models for automatic detection of brain midline shift. We introduce the brain-midline-detection dataset, specifically designed for identifying three brain landmarks-Anterior Falx (AF), Posterior Falx (PF), and Septum Pellucidum (SP)-in MRI scans. A comprehensive performance evaluation was conducted using deep learning models including YOLOv5 (n, s, m, l), YOLOv8, and YOLOv9 (GELAN-C model). The best-performing model was integrated into the 3D Slicer platform as a custom extension, incorporating steps such as MRI preprocessing, filtering, skull stripping, registration, and midline shift computation. Among the evaluated models, YOLOv5l achieved the highest precision (0.9601) and recall (0.9489), while YOLOv5m delivered the best mAP@0.5:0.95 score (0.6087). YOLOv5n and YOLOv5s exhibited the lowest loss values, indicating high efficiency. Although YOLOv8s achieved a higher mAP@0.5:0.95 score (0.6382), its high loss values reduced its practical effectiveness. YOLOv9-GELAN-C performed the worst, with the highest losses and lowest overall accuracy. YOLOv5m was selected as the optimal model due to its balanced performance and was successfully integrated into 3D Slicer as an extension for automated midline shift detection. By offering a new annotated dataset, a validated detection pipeline, and open-source tools, this study contributes to more accurate, efficient, and accessible AI-assisted medical imaging for brain midline assessment.

脑中线移位的准确检测对于创伤性脑损伤、中风和肿瘤等神经系统疾病的诊断和监测至关重要。本研究旨在通过引入新的数据集和3D切片器扩展来解决该任务缺乏专用数据集和工具的问题,评估多种深度学习模型用于自动检测大脑中线移位的有效性。我们介绍了脑中线检测数据集,专门用于识别MRI扫描中的三个脑标志-前镰(AF),后镰(PF)和透明隔(SP)。采用深度学习模型YOLOv5 (n, s, m, l)、YOLOv8和YOLOv9 (GELAN-C模型)进行综合性能评价。表现最好的模型作为自定义扩展集成到3D切片器平台中,包括MRI预处理,滤波,颅骨剥离,配准和中线移位计算等步骤。在评价的模型中,YOLOv5l的准确率最高(0.9601),召回率最高(0.9489),而YOLOv5m的得分最高mAP@0.5:0.95分(0.6087)。YOLOv5n和YOLOv5s的损耗值最低,效率高。虽然YOLOv8s获得了更高的mAP@0.5:0.95分数(0.6382),但其高损耗值降低了其实际有效性。YOLOv9-GELAN-C表现最差,损失最大,整体准确率最低。YOLOv5m因其平衡的性能而被选为最佳模型,并成功集成到3D切片机中,作为自动中线移位检测的扩展。通过提供一个新的注释数据集、一个经过验证的检测管道和开源工具,本研究有助于更准确、高效和可访问的人工智能辅助脑中线评估医学成像。
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引用次数: 0
Dyslexia Data Consortium: A Comprehensive Platform for Neuroimaging Data Sharing, Analysis, and Advanced Research in Dyslexia. 失读症数据联盟:失读症神经影像数据共享、分析和高级研究的综合平台。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-08 DOI: 10.1007/s12021-025-09747-0
Rishikesh V Phatangare, Mark A Eckert, Li Luo, Kenneth I Vaden, James Z Wang

Neuroimaging studies have and continue to advance our understanding of the neurobiology of dyslexia. Integration of data from these studies has the potential to replicate findings, deepen understanding through theoretically focused research, and provide for unexpected discovery. This data integration can be important for questions where a sufficiently large and well-defined group of participants is necessary for sufficient experimental power, particularly for a complex disorder where age, language background, and cognitive profiles can impact imaging results. We have developed a data-sharing platform to provide a data repository, image processing resources, and data analysis tools, with an emphasis on data harmonization across retrospective datasets ( https://dyslexiadata.org ). Here, we summarize data sharing, download, imaging metrics, and quality and privacy considerations in the design of and resources available through this repository. By providing access to a relatively large multisite dataset, researchers can test hypotheses about reading development and disability, test novel data analysis methods, even within the platform, and advance understanding of dyslexia.

神经影像学研究已经并将继续推进我们对阅读障碍的神经生物学的理解。整合这些研究的数据有可能重复发现,通过以理论为重点的研究加深理解,并提供意想不到的发现。对于需要足够大且定义明确的参与者群体以获得足够实验能力的问题,特别是对于年龄、语言背景和认知特征可能影响成像结果的复杂疾病,这种数据整合非常重要。我们开发了一个数据共享平台,提供数据存储库、图像处理资源和数据分析工具,重点是跨回顾性数据集的数据协调(https://dyslexiadata.org)。在这里,我们总结了数据共享、下载、成像指标,以及在设计和通过该存储库提供的资源时需要考虑的质量和隐私问题。通过提供对相对较大的多站点数据集的访问,研究人员可以测试关于阅读发展和残疾的假设,测试新的数据分析方法,甚至在平台内,并推进对阅读障碍的理解。
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Neuroinformatics
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