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Generalized Coupled Matrix Tensor Factorization Method Based on Normalized Mutual Information for Simultaneous EEG-fMRI Data Analysis.
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-06 DOI: 10.1007/s12021-025-09716-7
Zahra Rabiei, Hussain Montazery Kordy

The complementary properties of both modalities can be exploited through the fusion of electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) data. Thus, a joint analysis of both modalities can be used in brain studies to estimate brain activity's shared and unshared components. This study introduces a comprehensive approach for jointly analyzing EEG and fMRI data using the advanced coupled matrix tensor factorization (ACMTF) method. The similarity of the components based on normalized mutual information (NMI) was defined to overcome the restrictive equality assumption of shared components in the common dimension of the ACMTF method. Because the mutual information (MI) measure can identify both linear and nonlinear relationships between the components, the proposed method can be viewed as a generalization of the ACMTF method; thus, it is called the generalized coupled matrix tensor factorization (GCMTF). The proposed GCMTF method was applied to simulated data, in which the components exhibited a nonlinear relationship. The results demonstrate that the average match score increased by 23.46% compared with the ACMTF model, even with different noise levels. Furthermore, applying this method to real data from an auditory oddball paradigm demonstrated that three shared components with frequency responses in the alpha and theta bands were identified. The proposed MI-based method cannot only extract shared components with any nonlinear or linear relationship but can also identify more active brain areas corresponding to an auditory oddball paradigm compared to ACMTF and other similar methods.

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引用次数: 0
Cardiac Heterogeneity Prediction by Cardio-Neural Network Simulation.
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-01 DOI: 10.1007/s12021-025-09717-6
Asif Mehmood, Ayesha Ilyas, Hajira Ilyas

The bidirectional interactions between brain and heart through autonomic nervous system is the prime focus of neuro-cardiology community. The computer models designed to analyze brain and heart signals are either complex in terms of molecular and cellular interactions or not capable of representing the complex ion channel dynamics. Therefore, scientists are unable to extract the overall behavior of organs by electrical response of heterogeneous cells of brain and heart. In this study, a unified model of excitable cells is proposed that can be modulated by adrenergic features. By implementing the proposed model, a network of one thousand sparsely coupled cardio-neural network is simulated. The major findings of study include i. cardiac heterogeneity in electrical behavior of cardiac myocytes is the prime factor of heart rate variability ii. Brain-heart interplay through electrical pulses holds the necessary information of brain and heart signals that can be analyzed through spiking neural networks iii. Heart rate variability can be predicted and monitored by spiking neural networks from electrophysiological recordings of brain and heart iv. Heart rate variability related to tachycardia and bradycardia depends upon the polarization protocols of cardiac myocytes during plateau phase of action potential. This study provides the modeling and simulation phase of brain-heart interface to predict the morbidity at early stages. The recent advancements in nano-electronics will make is possible to develop brain-heart interface as nano-chip to deploy in subject to stimulate the brain-heart interplay through electrophysiological signals.

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引用次数: 0
Determination of the Time-frequency Features for Impulse Components in EEG Signals.
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-23 DOI: 10.1007/s12021-024-09698-y
Natalia Filimonova, Maria Specovius-Neugebauer, Elfriede Friedmann

Accurately identifying the timing and frequency characteristics of impulse components in EEG signals is essential but limited by the Heisenberg uncertainty principle. Inspired by the visual system's ability to identify objects and their locations, we propose a new method that integrates a visual system model with wavelet analysis to calculate both time and frequency features of local impulses in EEG signals. We develop a mathematical model based on invariant pattern recognition by the visual system, combined with wavelet analysis using Krawtchouk functions as the mother wavelet. Our method precisely identifies the localization and frequency characteristics of the impulse components in EEG signals. Tested on task-related EEG data, it accurately detected blink components (0.5 to 1 Hz) and separated muscle artifacts (16 Hz). It also identified muscle response durations (298 ms) within the 1 to 31 Hz range in emotional reaction studies, offering insights into both individual and typical emotional responses. We further illustrated how the new method circumvents the uncertainty principle in low-frequency wavelet analysis. Unlike classical wavelet analysis, our method provides spectral characteristics of EEG impulses invariant to time shifts, improving the identification and classification of EEG components.

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引用次数: 0
Blood Flow Velocity Analysis in Cerebral Perforating Arteries on 7T 2D Phase Contrast MRI with an Open-Source Software Tool (SELMA). 基于开源软件工具(SELMA)的7T 2D期相对比MRI脑穿动脉血流速度分析。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-22 DOI: 10.1007/s12021-024-09703-4
S D T Pham, C Chatziantoniou, J T van Vliet, R J van Tuijl, M Bulk, M Costagli, L de Rochefort, O Kraff, M E Ladd, K Pine, I Ronen, J C W Siero, M Tosetti, A Villringer, G J Biessels, J J M Zwanenburg

Blood flow velocity in the cerebral perforating arteries can be quantified in a two-dimensional plane with phase contrast magnetic imaging (2D PC-MRI). The velocity pulsatility index (PI) can inform on the stiffness of these perforating arteries, which is related to several cerebrovascular diseases. Currently, there is no open-source analysis tool for 2D PC-MRI data from these small vessels, impeding the usage of these measurements. In this study we present the Small vessEL MArker (SELMA) analysis software as a novel, user-friendly, open-source tool for velocity analysis in cerebral perforating arteries. The implementation of the analysis algorithm in SELMA was validated against previously published data with a Bland-Altman analysis. The inter-rater reliability of SELMA was assessed on PC-MRI data of sixty participants from three MRI vendors between eight different sites. The mean velocity (vmean) and velocity PI of SELMA was very similar to the original results (vmean: mean difference ± standard deviation: 0.1 ± 0.8 cm/s; velocity PI: mean difference ± standard deviation: 0.01 ± 0.1) despite the slightly higher number of detected vessels in SELMA (Ndetected: mean difference ± standard deviation: 4 ± 9 vessels), which can be explained by the vessel selection paradigm of SELMA. The Dice Similarity Coefficient of drawn regions of interest between two operators using SELMA was 0.91 (range 0.69-0.95) and the overall intra-class coefficient for Ndetected, vmean, and velocity PI were 0.92, 0.84, and 0.85, respectively. The differences in the outcome measures was higher between sites than vendors, indicating the challenges in harmonizing the 2D PC-MRI sequence even across sites with the same vendor. We show that SELMA is a consistent and user-friendly analysis tool for small cerebral vessels.

在二维平面上,通过相衬磁成像(2D PC-MRI)可以量化脑穿动脉的血流速度。速度脉搏指数(PI)可以反映这些穿孔动脉的僵硬程度,这与几种脑血管疾病有关。目前,还没有针对这些小血管的2D PC-MRI数据的开源分析工具,阻碍了这些测量的使用。在这项研究中,我们提出了小血管标记(SELMA)分析软件,作为一种新颖的、用户友好的、开源的工具,用于分析脑穿孔动脉的流速。SELMA中分析算法的实现通过Bland-Altman分析对先前发表的数据进行了验证。SELMA的评分间信度评估了来自八个不同地点的三个MRI供应商的60名参与者的PC-MRI数据。SELMA的平均速度(vmean)和速度PI与原始结果非常相似(vmean:平均差±标准差:0.1±0.8 cm/s;速度PI:平均差值±标准差:0.01±0.1),而SELMA检测到的血管数量略高(未检测到的血管数量:平均差值±标准差:4±9),这可以用SELMA的血管选择范式来解释。使用SELMA的两个操作符之间绘制的感兴趣区域的骰子相似系数为0.91(范围为0.69-0.95),Ndetected, vmean和速度PI的总体类内系数分别为0.92,0.84和0.85。结果测量在不同地点之间的差异大于供应商之间的差异,这表明在协调2D PC-MRI序列方面存在挑战,即使是在同一供应商的不同地点。我们表明SELMA是一个一致的和用户友好的小脑血管分析工具。
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引用次数: 0
CDCG-UNet: Chaotic Optimization Assisted Brain Tumor Segmentation Based on Dilated Channel Gate Attention U-Net Model. CDCG-UNet:基于扩张通道门注意U-Net模型的混沌优化辅助脑肿瘤分割。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-22 DOI: 10.1007/s12021-024-09701-6
K Bhagyalaxmi, B Dwarakanath

Brain tumours are one of the most deadly and noticeable types of cancer, affecting both children and adults. One of the major drawbacks in brain tumour identification is the late diagnosis and high cost of brain tumour-detecting devices. Most existing approaches use ML algorithms to address problems, but they have drawbacks such as low accuracy, high loss, and high computing cost. To address these challenges, a novel U-Net model for tumour segmentation in magnetic resonance images (MRI) is proposed. Initially, images are claimed from the dataset and pre-processed with the Probabilistic Hybrid Wiener filter (PHWF) to remove unwanted noise and improve image quality. To reduce model complexity, the pre-processed images are submitted to a feature extraction procedure known as 3D Convolutional Vision Transformer (3D-VT). To perform the segmentation approach using chaotic optimization assisted Dilated Channel Gate attention U-Net (CDCG-UNet) model to segment brain tumour regions effectively. The proposed approach segments tumour portions as whole tumour (WT), tumour Core (TC), and Enhancing Tumour (ET) positions. The optimization loss function can be performed using the Chaotic Harris Shrinking Spiral optimization algorithm (CHSOA). The proposed CDCG-UNet model is evaluated with three datasets: BRATS 2021, BRATS 2020, and BRATS 2023. For the BRATS 2021 dataset, the proposed CDCG-UNet model obtained a dice score of 0.972 for ET, 0.987 for CT, and 0.98 for WT. For the BRATS 2020 dataset, the proposed CDCG-UNet model produced a dice score of 98.87% for ET, 98.67% for CT, and 99.1% for WT. The CDCG-UNet model is further evaluated using the BRATS 2023 dataset, which yields 98.42% for ET, 98.08% for CT, and 99.3% for WT.

脑肿瘤是最致命、最引人注目的癌症之一,儿童和成人都受其影响。脑肿瘤诊断的主要缺点之一是诊断晚和脑肿瘤检测设备的高成本。大多数现有方法使用ML算法来解决问题,但它们存在精度低、高损失和高计算成本等缺点。为了解决这些挑战,提出了一种新的U-Net模型用于磁共振图像(MRI)中的肿瘤分割。首先,从数据集中提取图像,并使用概率混合维纳滤波器(PHWF)进行预处理,以去除不必要的噪声并提高图像质量。为了降低模型的复杂性,预处理后的图像被提交到一个被称为3D卷积视觉变换(3D- vt)的特征提取过程中。采用混沌优化辅助扩张通道门(CDCG-UNet)模型对脑肿瘤区域进行有效分割。该方法将肿瘤部分分为全肿瘤(WT)、肿瘤核心(TC)和增强肿瘤(ET)位置。优化损失函数可以用混沌Harris收缩螺旋优化算法(CHSOA)来实现。提出的CDCG-UNet模型使用三个数据集进行评估:BRATS 2021, BRATS 2020和BRATS 2023。对于BRATS 2021数据集,所提出的CDCG-UNet模型在ET、CT和WT上的骰子得分分别为0.972、0.987和0.98。对于BRATS 2020数据集,所提出的CDCG-UNet模型在ET、CT和WT上的骰子得分分别为98.87%、98.67%和99.1%。使用BRATS 2023数据集进一步评估CDCG-UNet模型,ET、CT和WT的骰子得分分别为98.42%、98.08%和99.3%。
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引用次数: 0
Complementary Strategies to Identify Differentially Expressed Genes in the Choroid Plexus of Patients with Progressive Multiple Sclerosis. 鉴定进行性多发性硬化症患者脉络膜丛差异表达基因的补充策略。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-21 DOI: 10.1007/s12021-024-09713-2
Aline Beatriz Mello Rodrigues, Fabio Passetti, Ana Carolina Ramos Guimarães

Multiple sclerosis (MS) is a neurological disease causing myelin and axon damage through inflammatory and autoimmune processes. Despite affecting millions worldwide, understanding its genetic pathways remains limited. The choroid plexus (ChP) has been studied in neurodegenerative processes and diseases like MS due to its dysregulation, yet its role in MS pathophysiology remains unclear. Our work re-evaluates the ChP transcriptome in progressive MS patients and compares gene expression profiles using diverse methodological strategies. Samples from patient and healthy control RNASeq sequencing of brain tissue from post-mortem patients (GEO: GSE137619) were used. After an evaluation and quality control of these data, they had their transcripts mapped and quantified against the reference transcriptome GRCh38/hg38 of Homo sapiens using three strategies to identify differentially expressed genes in progressive MS patients. Functional analysis of genes revealed their involvement in immune processes, cell adhesion and migration, hormonal actions, amino acid transport, chemokines, metals, and signaling pathways. Our findings can offer valuable insights for progressive MS therapies, suggesting specific genes influence immune cell recruitment and potential ChP microenvironment changes. Combining complementary approaches maximizes literature coverage, facilitating a deeper understanding of the biological context in progressive MS.

多发性硬化症(MS)是一种神经系统疾病,通过炎症和自身免疫过程引起髓磷脂和轴突损伤。尽管影响着全世界数百万人,但对其遗传途径的了解仍然有限。脉络膜丛(ChP)在神经退行性过程和多发性硬化症等疾病中因其失调而被研究,但其在多发性硬化症病理生理中的作用尚不清楚。我们的工作重新评估进展性MS患者的ChP转录组,并使用不同的方法学策略比较基因表达谱。使用患者和健康对照的死后患者脑组织RNASeq测序样本(GEO: GSE137619)。在对这些数据进行评估和质量控制后,他们使用三种策略对其转录本进行了定位和量化,以对照智人的参考转录组GRCh38/hg38,以识别进展性MS患者的差异表达基因。基因的功能分析揭示了它们参与免疫过程、细胞粘附和迁移、激素作用、氨基酸运输、趋化因子、金属和信号通路。我们的研究结果可以为渐进式MS治疗提供有价值的见解,表明特定基因影响免疫细胞募集和潜在的ChP微环境变化。结合互补的方法最大限度地扩大了文献覆盖,促进了对进展性多发性硬化症的生物学背景的更深层次的理解。
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引用次数: 0
Predicting Paediatric Brain Disorders from MRI Images Using Advanced Deep Learning Techniques. 利用先进的深度学习技术从MRI图像预测儿童脑部疾病。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-16 DOI: 10.1007/s12021-024-09707-0
Yogesh Kumar, Priya Bhardwaj, Supriya Shrivastav, Kapil Mehta

The problem at hand is the significant global health challenge posed by children's diseases, where timely and accurate diagnosis is crucial for effective treatment and management. Conventional diagnosis techniques are typical, use tedious processes and generate inaccurate results since they are executed by human beings and cause delays in treatment that can be fatal. Considering these and other shortcomings there exists a need to have more efficient and accurate solutions based on artificial intelligence. Machine learning and more specifically, deep learning algorithms are of great help in analysing medical and clinical images to detect as well as classify diseases. In this paper, we propose a system for detecting various childhood diseases using a range of advanced Convolutional Neural Network models like EfficientNetB0, EfficientNetB3, Xception, InceptionV3, MobileNetV2, VGG19, DenseNet169, ResNet50V2, ResNet152V2, and the hybrid architecture InceptionResNetV2. These models are trained on MRI images of paediatric brain disorders to achieve high prediction accuracy. We use data visualization techniques such as segmentation and contour-based feature extraction to extract regions of interest before feeding the data into the models. The models are optimized using both ADAM and RMSprop optimizers. EfficientNetB0, when optimized with RMSprop, achieves an accuracy of 94.59%, a loss of 0.44, and an RMSE of 0.66. InceptionResNetV2, optimized with ADAM, achieves the highest accuracy of 97.59%, while EfficientNetB0 demonstrates the lowest loss (0.25) and RMSE (0.5). We also evaluate the models based on their precision, learning curves, recall, computational time, and F1 score, highlighting the effectiveness of AI-driven approaches for the diagnosis and management of children's diseases.

当前的问题是儿童疾病对全球健康构成的重大挑战,及时和准确的诊断对于有效治疗和管理至关重要。传统的诊断技术是典型的,使用繁琐的过程,产生不准确的结果,因为它们是由人类执行的,并导致可能致命的治疗延误。考虑到这些和其他缺点,我们需要基于人工智能的更有效、更准确的解决方案。机器学习,更具体地说,深度学习算法在分析医学和临床图像以检测和分类疾病方面有很大帮助。在本文中,我们提出了一个用于检测各种儿童疾病的系统,该系统使用了一系列先进的卷积神经网络模型,如EfficientNetB0、EfficientNetB3、Xception、InceptionV3、MobileNetV2、VGG19、DenseNet169、ResNet50V2、ResNet152V2和混合架构InceptionResNetV2。这些模型在小儿脑部疾病的MRI图像上进行训练,以达到较高的预测精度。在将数据输入模型之前,我们使用数据可视化技术,如分割和基于轮廓的特征提取来提取感兴趣的区域。使用ADAM和RMSprop优化器对模型进行了优化。使用RMSprop进行优化后,EfficientNetB0的准确率为94.59%,损失为0.44,RMSE为0.66。使用ADAM优化的InceptionResNetV2的准确率最高,达到97.59%,而效率netb0的损失最低(0.25),RMSE最低(0.5)。我们还根据模型的精度、学习曲线、召回率、计算时间和F1分数对模型进行了评估,强调了人工智能驱动方法在儿童疾病诊断和管理方面的有效性。
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引用次数: 0
Twenty Years of Neuroinformatics: A Bibliometric Analysis. 二十年的神经信息学:文献计量学分析。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-15 DOI: 10.1007/s12021-024-09712-3
Miguel Guillén-Pujadas, David Alaminos, Emilio Vizuete-Luciano, José M Merigó, John D Van Horn

This study presents a thorough bibliometric analysis of Neuroinformatics over the past 20 years, offering insights into the journal's evolution at the intersection of neuroscience and computational science. Using advanced tools such as VOS viewer and methodologies like co-citation analysis, bibliographic coupling, and keyword co-occurrence, we examine trends in publication, citation patterns, and the journal's influence. Our analysis reveals enduring research themes like neuroimaging, data sharing, machine learning, and functional connectivity, which form the core of Neuroinformatics. These themes highlight the journal's role in addressing key challenges in neuroscience through computational methods. Emerging topics like deep learning, neuron reconstruction, and reproducibility further showcase the journal's responsiveness to technological advances. We also track the journal's rising impact, marked by a substantial growth in publications and citations, especially over the last decade. This growth underscores the relevance of computational approaches in neuroscience and the high-quality research the journal attracts. Key bibliometric indicators, such as publication counts, citation analysis, and the h-index, spotlight contributions from leading authors, papers, and institutions worldwide, particularly from the USA, China, and Europe. These metrics provide a clear view of the scientific landscape and collaboration patterns driving progress. This analysis not only celebrates Neuroinformatics's rich history but also offers strategic insights for future research, ensuring the journal remains a leader in innovation and advances both neuroscience and computational science.

本研究对过去20年的神经信息学进行了全面的文献计量分析,为该期刊在神经科学和计算科学交叉领域的发展提供了见解。利用VOS查看器等高级工具和共被引分析、书目耦合和关键词共现等方法,我们研究了出版物、引文模式和期刊影响力的趋势。我们的分析揭示了神经成像、数据共享、机器学习和功能连接等持久的研究主题,这些主题构成了神经信息学的核心。这些主题突出了该期刊在通过计算方法解决神经科学中的关键挑战方面的作用。深度学习、神经元重建和可重复性等新兴主题进一步展示了该期刊对技术进步的响应能力。我们还追踪了该期刊日益增长的影响力,其标志是出版物和引用的大幅增长,特别是在过去十年中。这种增长强调了计算方法在神经科学中的相关性以及该杂志所吸引的高质量研究。关键的文献计量指标,如出版物数量、引文分析和h指数,聚焦来自世界各地,特别是来自美国、中国和欧洲的主要作者、论文和机构的贡献。这些指标提供了对科学前景和推动进步的协作模式的清晰视图。这种分析不仅颂扬了神经信息学的丰富历史,而且为未来的研究提供了战略见解,确保该杂志在创新和推进神经科学和计算科学方面保持领先地位。
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引用次数: 0
Patch-Wise Deep Learning Method for Intracranial Stenosis and Aneurysm Detection-the Tromsø Study. 基于贴片的深度学习颅内狭窄和动脉瘤检测方法——Tromsø研究。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-15 DOI: 10.1007/s12021-024-09697-z
Luca Bernecker, Ellisiv B Mathiesen, Tor Ingebrigtsen, Jørgen Isaksen, Liv-Hege Johnsen, Torgil Riise Vangberg

Intracranial atherosclerotic stenosis (ICAS) and intracranial aneurysms are prevalent conditions in the cerebrovascular system. ICAS causes a narrowing of the arterial lumen, thereby restricting blood flow, while aneurysms involve the ballooning of blood vessels. Both conditions can lead to severe outcomes, such as stroke or vessel rupture, which can be fatal. Early detection is crucial for effective intervention. In this study, we introduced a method that combines classical computer vision techniques with deep learning to detect intracranial aneurysms and ICAS in time-of-flight magnetic resonance angiography images. The process began with skull-stripping, followed by an affine transformation to align the images to a common atlas space. We then focused on the region of interest, including the circle of Willis, by cropping the relevant area. A segmentation algorithm was used to isolate the arteries, after which a patch-wise residual neural network was applied across the image. A voting mechanism was then employed to identify the presence of atrophies. Our method achieved accuracies of 76.5% for aneurysms and 82.4% for ICAS. Notably, when occlusions were not considered, the accuracy for ICAS detection improved to 85.7%. While the algorithm performed well for localized pathological findings, it was less effective at detecting occlusions, which involved long-range dependencies in the MRIs. This limitation was due to the architectural design of the patch-wise deep learning approach. Regardless, this can, in the future, be mitigated in a multi-scale patch-wise algorithm.

颅内动脉粥样硬化性狭窄(ICAS)和颅内动脉瘤是脑血管系统的常见疾病。ICAS导致动脉腔狭窄,从而限制血液流动,而动脉瘤则涉及血管膨胀。这两种情况都可能导致严重的后果,如中风或血管破裂,这可能是致命的。早期发现对有效干预至关重要。在本研究中,我们介绍了一种将经典计算机视觉技术与深度学习相结合的方法来检测飞行时间磁共振血管造影图像中的颅内动脉瘤和ICAS。这个过程从头骨剥离开始,然后进行仿射变换,使图像与公共地图集空间对齐。然后,我们通过裁剪相关区域来关注感兴趣的区域,包括威利斯圈。采用分割算法分离动脉,然后在图像上应用逐块残差神经网络。然后采用投票机制来确定萎缩的存在。我们的方法对动脉瘤的准确率为76.5%,对ICAS的准确率为82.4%。值得注意的是,当不考虑闭塞时,ICAS检测的准确率提高到85.7%。虽然该算法在局部病理发现方面表现良好,但在检测闭塞方面效果较差,这涉及mri的远程依赖性。这种限制是由于基于补丁的深度学习方法的架构设计。无论如何,在未来,这可以在多尺度补丁智能算法中得到缓解。
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引用次数: 0
Large Scale in vivo Acquisition, Segmentation and 3D Reconstruction of Cortical Vasculature using μ Doppler Ultrasound Imaging. 利用μ多普勒超声成像对皮层血管系统进行大规模体内采集、分割和三维重建。
IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-14 DOI: 10.1007/s12021-024-09706-1
Anoek Strumane, Théo Lambert, Jan Aelterman, Danilo Babin, Gabriel Montaldo, Wilfried Philips, Clément Brunner, Alan Urban

The brain is composed of a dense and ramified vascular network of arteries, veins and capillaries of various sizes. One way to assess the risk of cerebrovascular pathologies is to use computational models to predict the physiological effects of reduced blood supply and correlate these responses with observations of brain damage. Therefore, it is crucial to establish a detailed 3D organization of the brain vasculature, which could be used to develop more accurate in silico models. To this end, we have adapted our functional ultrasound imaging platform, previously designed for recording large scale activity, to enable rapid and reproducible acquisition, segmentation and reconstruction of the cortical vasculature. For the first time, it allows us to digitize the cortical 100 - μ m3 spatial resolution. Unlike most available strategies, our approach can be performed in vivo within minutes. Moreover, it is easy to implement since it requires neither exogenous contrast agents nor long post-processing time. Therefore, we performed a cortex-wide reconstruction of the vasculature and its quantitative analysis, including i) classification of descending arteries versus ascending veins in more than 1500 vessels/animal and ii) rapid estimation of their length. Importantly, we confirmed the relevance of our approach in a model of cortical stroke, which allows rapid visualization of the ischemic lesion. This development contributes to extending the capabilities of ultrasound neuroimaging to better understand cerebrovascular pathologies such as stroke, vascular cognitive impairment and brain tumors, and is highly scalable for the clinic.

大脑是由各种大小的动脉、静脉和毛细血管组成的密集而分叉的血管网络。评估脑血管病变风险的一种方法是使用计算模型来预测血液供应减少的生理影响,并将这些反应与脑损伤的观察相关联。因此,建立详细的脑血管三维组织是至关重要的,这可以用来开发更准确的计算机模型。为此,我们调整了我们的功能性超声成像平台,以前是为记录大规模活动而设计的,以实现皮质血管系统的快速、可重复的采集、分割和重建。这是第一次,它允许我们数字化皮层~ 100 μ m3的空间分辨率。与大多数可用的策略不同,我们的方法可以在几分钟内在体内进行。此外,它很容易实现,因为它既不需要外源性造影剂,也不需要长时间的后处理时间。因此,我们进行了全皮层血管系统重建及其定量分析,包括i)在1500多只血管/动物中对降动脉和升静脉进行分类,ii)快速估计其长度。重要的是,我们证实了我们的方法在皮质卒中模型中的相关性,该模型允许快速可视化缺血性病变。这一发展有助于扩展超声神经成像的能力,以更好地了解脑血管疾病,如中风、血管性认知障碍和脑肿瘤,并且在临床方面具有高度可扩展性。
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