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Comparison of monte carlo tally techniques for dosimetry in a transmission-type X-ray tube. 用于透射型 X 射线管剂量测定的蒙特卡洛统计技术比较。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-17 DOI: 10.1088/2057-1976/ad7bbf
Chen-Ju Feng,Chin-Hui Wu,Chin-Hsiung Lin,Shu-Wei Wu,Shih-Yong Luo,Ya-Ru Yang,Chao-Hua Lee,Shao-Chun Tseng,Shen-Hao Lee,Shih-Ming Hsu,Chin-Hui Wu
This study discussed comparing result accuracy and time cost under different tally methods using MCNP6 for a novel transmission X-ray tube which was designed for the Auger electron yield with specific material (eg. iodine). The assessment included photon spectrum, percent depth dose, mass-energy absorption coefficient corresponding to air and water, and figure of merit comparison. The mean energy of in-air phantom was from 41.8 keV (0 mm) to 40.9 keV (100 mm), and the mean energy of in-water phantom was from 41.41 keV (0 mm) to 45.2 keV (100 mm). The specific dose conversion factors based mass-energy absorption coefficient corresponding to different materials was established and the difference was less than 2% for the dose conversion of FMESH comparing to measurement data. FMESH had better figure of merit (FOM) than the F6 tally for the dose parameter assessment, which mean the dose calculation that focused on the superficial region could be assessed with more calculation efficiency by FMESH tally for this novel transmission X-ray tube. The results of this study could help develop treatment planning system (TPS) to quickly obtain the calculated data for phase space data establishment and heterogeneous correction under different physical condition settings. .
本研究讨论了使用 MCNP6 对新型透射 X 射线管进行不同统计方法下的结果准确性和时间成本比较,该 X 射线管是为特定材料(如碘)的奥格电子产率而设计的。评估内容包括光子光谱、深度剂量百分比、与空气和水相对应的质能吸收系数以及优点比较。空气中模型的平均能量为 41.8 keV(0 毫米)至 40.9 keV(100 毫米),水中模型的平均能量为 41.41 keV(0 毫米)至 45.2 keV(100 毫米)。根据不同材料的质能吸收系数确定了具体的剂量换算系数,与测量数据相比,FMESH 的剂量换算系数相差不到 2%。在剂量参数评估方面,FMESH 比 F6 计数值具有更好的优点(FOM),这意味着对于这种新型透射 X 射线管,FMESH 计数值能以更高的计算效率评估侧重于表层区域的剂量计算。本研究的结果有助于开发治疗计划系统(TPS),在不同的物理条件设置下快速获得相空间数据建立和异质校正的计算数据。
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引用次数: 0
A compact and low-frequency drive ultrasound transducer for facilitating cavitation-assisted drug permeation via skin. 用于促进空化辅助药物经皮肤渗透的紧凑型低频驱动超声换能器。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-16 DOI: 10.1088/2057-1976/ad7596
Shinya Yamamoto, Naohiro Sugita, Keita Tomioka, Tadahiko Shinshi

Low-frequency sonophoresis has emerged as a promising minimally invasive transdermal drug delivery method. However, effectively inducing cavitation on the skin surface with a compact, low-frequency ultrasound transducer poses a significant challenge. This paper presents a modified design of a low-frequency ultrasound transducer capable of generating ultrasound cavitation on the skin surfaces. The transducer comprises a piezoelectric ceramic disk and a bowl-shaped acoustic resonator. A conical slit structure was incorporated into the modified transducer design to amplify vibration displacement and enhance the maximum sound pressure. The FEM-based simulation results confirmed that the maximum sound pressure at the resonance frequency of 78 kHz was increased by 1.9 times that of the previous design. Ultrasound cavitation could be experimentally observed on the gel surface. Moreover, 3 min of ultrasound treatment significantly improved the caffeine permeability across an artificial membrane. These results demonstrated that this transducer holds promise for enhancing drug permeation by generating ultrasound cavitation on the skin surface.

低频声波电泳已成为一种前景广阔的微创透皮给药方法。然而,使用紧凑型低频超声换能器在皮肤表面有效诱导空化是一项重大挑战。本文介绍了一种能够在皮肤表面产生超声空化的低频超声换能器的改进设计。该换能器由一个压电陶瓷盘和一个碗形声学谐振器组成。在改进的换能器设计中加入了锥形缝隙结构,以放大振动位移并提高最大声压。基于有限元的模拟结果证实,共振频率为 78 kHz 时的最大声压比以前的设计提高了 1.9 倍。通过实验可以在凝胶表面观察到超声空化现象。此外,3 分钟的超声处理显著改善了咖啡因在人工膜上的渗透性。这些结果表明,这种传感器有望通过在皮肤表面产生超声空化来提高药物渗透性。
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引用次数: 0
Automatic segmentation of echocardiographic images using a shifted windows vision transformer architecture. 使用移位视窗视觉变换器架构自动分割超声心动图。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-13 DOI: 10.1088/2057-1976/ad7594
Souha Nemri, Luc Duong

Echocardiography is one the most commonly used imaging modalities for the diagnosis of congenital heart disease. Echocardiographic image analysis is crucial to obtaining accurate cardiac anatomy information. Semantic segmentation models can be used to precisely delimit the borders of the left ventricle, and allow an accurate and automatic identification of the region of interest, which can be extremely useful for cardiologists. In the field of computer vision, convolutional neural network (CNN) architectures remain dominant. Existing CNN approaches have proved highly efficient for the segmentation of various medical images over the past decade. However, these solutions usually struggle to capture long-range dependencies, especially when it comes to images with objects of different scales and complex structures. In this study, we present an efficient method for semantic segmentation of echocardiographic images that overcomes these challenges by leveraging the self-attention mechanism of the Transformer architecture. The proposed solution extracts long-range dependencies and efficiently processes objects at different scales, improving performance in a variety of tasks. We introduce Shifted Windows Transformer models (Swin Transformers), which encode both the content of anatomical structures and the relationship between them. Our solution combines the Swin Transformer and U-Net architectures, producing a U-shaped variant. The validation of the proposed method is performed with the EchoNet-Dynamic dataset used to train our model. The results show an accuracy of 0.97, a Dice coefficient of 0.87, and an Intersection over union (IoU) of 0.78. Swin Transformer models are promising for semantically segmenting echocardiographic images and may help assist cardiologists in automatically analyzing and measuring complex echocardiographic images.

超声心动图是诊断先天性心脏病最常用的成像方式之一。超声心动图图像分析对于获得准确的心脏解剖信息至关重要。语义分割模型可用于精确划分左心室的边界,并能准确和自动识别感兴趣区,这对心脏病专家来说非常有用。在计算机视觉领域,卷积神经网络(CNN) 架构仍占主导地位。在过去十年中,现有的卷积神经网络方法已被证明能高效地分割各种医学图像。然而,这些 解决方案通常难以捕捉长距离依赖关系,尤其是当涉及到 具有不同尺度和复杂结构的物体的图像时。在本研究中,我们提出了一种用于超声心动图图像语义分割的高效方法,该方法利用变形器架构的自我关注机制克服了这些挑战。所提出的解决方案可以提取长距离依赖关系,并高效处理不同尺度的对象,从而提高各种任务的性能。我们引入了移位窗口变换器模型(Swin Transformer),它既能编码解剖结构的内容,也能编码它们之间的关系。我们使用用于训练模型的 EchoNet-Dynamic 数据集对所提出的方法进行了验证。结果表明,该方法的准确率为 0.97,Dice 系数为 0.87,交集大于联合(Intersection over union,IoU)为 0.78。
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引用次数: 0
An hetero-modal deep learning framework for medical image synthesis applied to contrast and non-contrast MRI. 应用于对比和非对比核磁共振成像的医学图像合成的异模式深度学习框架。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-13 DOI: 10.1088/2057-1976/ad72f9
Daniel Gourdeau, Simon Duchesne, Louis Archambault

Some pathologies such as cancer and dementia require multiple imaging modalities to fully diagnose and assess the extent of the disease. Magnetic resonance imaging offers this kind of polyvalence, but examinations take time and can require contrast agent injection. The flexible synthesis of these imaging sequences based on the available ones for a given patient could help reduce scan times or circumvent the need for contrast agent injection. In this work, we propose a deep learning architecture that can perform the synthesis of all missing imaging sequences from any subset of available images. The network is trained adversarially, with the generator consisting of parallel 3D U-Net encoders and decoders that optimally combines their multi-resolution representations with a fusion operation learned by an attention network trained conjointly with the generator network. We compare our synthesis performance with 3D networks using other types of fusion and a comparable number of trainable parameters, such as the mean/variance fusion. In all synthesis scenarios except one, the synthesis performance of the network using attention-guided fusion was better than the other fusion schemes. We also inspect the encoded representations and the attention network outputs to gain insights into the synthesis process, and uncover desirable behaviors such as prioritization of specific modalities, flexible construction of the representation when important modalities are missing, and modalities being selected in regions where they carry sequence-specific information. This work suggests that a better construction of the latent representation space in hetero-modal networks can be achieved by using an attention network.

有些病症,如癌症和痴呆症,需要通过多种成像方式来全面诊断和评估疾病的程度。磁共振成像提供了这种多值性,但检查需要时间,而且可能需要注射造影剂。根据特定患者的现有情况灵活合成这些成像序列,有助于缩短扫描时间或避免注射造影剂。在这项工作中,我们提出了一种深度学习架构,可以从任何可用图像子集合成所有缺失的成像序列。该网络采用对抗式训练,生成器由并行三维 U-Net 编码器和解码器组成,可将其多分辨率表示与由与生成器网络共同训练的注意力网络学习的融合操作进行优化组合。我们将我们的合成性能与使用其他融合类型和可训练参数数量相当的三维网络(如均值/方差融合)进行比较。除一种情况外,在所有合成情况下,使用注意力引导融合的网络的合成性能都优于其他融合方案。我们还检查了编码表征和注意力网络输出,以深入了解合成过程,并发现了一些理想的行为,如特定模态的优先级、重要模态缺失时表征的灵活构建,以及在携带特定序列信息的区域选择模态。这项研究表明,使用注意力网络可以更好地构建异模式网络中的潜在表征空间。
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引用次数: 0
A novel procedure to automate the removal of PLI and motion artifacts using mode decomposition to enhance pattern recognition of sEMG signals for myoelectric control of prosthesis. 利用模式分解自动去除 PLI 和运动伪影的新程序,以提高用于假肢肌电控制的 sEMG 信号的模式识别能力。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-12 DOI: 10.1088/2057-1976/ad773a
Pratap Kumar Koppolu, Krishnan Chemmangat

Hand Movement Recognition (HMR) with sEMG is crucial for artificial hand prostheses. HMR performance mostly depends on the feature information that is fed to the classifiers. However, sEMG often captures noise like power line interference (PLI) and motion artifacts. This may extract redundant and insignificant feature information, which can degrade HMR performance and increase computational complexity. This study aims to address these issues by proposing a novel procedure for automatically removing PLI and motion artifacts from experimental sEMG signals. This will make it possible to extract better features from the signal and improve the categorization of various hand movements. Empirical mode decomposition and energy entropy thresholding are utilized to select relevant mode components for artifact removal. Time domain features are then used to train classifiers (kNN, LDA, SVM) for hand movement categorization, achieving average accuracies of 92.36%, 93.63%, and 98.12%, respectively, across subjects. Additionally, muscle contraction efforts are classified into low, medium, and high categories using this technique. Validation is performed on data from ten subjects performing eight hand movement classes and three muscle contraction efforts with three surface electrode channels. Results indicate that the proposed preprocessing improves average accuracy by 9.55% with the SVM classifier, significantly reducing computational time.

利用 sEMG 进行手部运动识别(HMR)对于人工假手至关重要。HMR 的性能主要取决于输入分类器的特征信息 。然而,sEMG 通常会捕捉到电源线干扰(PLI)和运动伪影等噪声。这可能会提取冗余和不重要的特征信息,从而降低 HMR 性能并增加计算复杂性。本研究旨在解决这些问题,提出了一种新颖的程序 ,用于自动去除实验 sEMG 信号中的 PLI 和运动伪影 ,从而可以从信号中提取更好的特征,提高对各种手部动作的分类能力 。利用经验模式分解和能量熵阈值来选择相关模式成分,以去除伪影。然后,利用时域特征来训练分类器(kNN、LDA、SVM) 进行手部动作分类,不同受试者的平均准确率分别达到 92.36%、93.63% 和 98.12%。此外,使用该技术还可将肌肉收缩力度分为低、中和高三个类别。对十名受试者使用三个表面电极通道进行八种手部动作和三种肌肉收缩力度的数据进行了验证。结果表明 ,与 SVM 分类器相比,建议的预处理方法将平均准确率提高了 9.55%,大大减少了计算时间。
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引用次数: 0
STORM Image Denoising and Information Extraction. STORM 图像去噪与信息提取。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-12 DOI: 10.1088/2057-1976/ad7a02
Yuer Lu,Yongfa Ying,Chengliang Huang,Xiang Li,Jinyan Cheng,Rongwen Yu,Lixiang Ma,Jianwei Shuai,Xuejin Zhou,Jinjin Zhong
Stochastic optical reconstruction microscopy (STORM) is extensively utilized in the fields of cell and molecular biology as a super-resolution imaging technique for visualizing cells and molecules. Nonetheless, the imaging process of STORM is frequently susceptible to noise, which can significantly impact the subsequent image analysis. Moreover, there is currently a lack of a comprehensive automated processing approach for analyzing protein aggregation states from a large number of STORM images. This paper initially applies our previously proposed denoising algorithm, UNet-Att, in STORM image denoising. This algorithm was constructed based on attention mechanism and multi-scale features, showcasing a remarkably efficient performance in denoising. Subsequently, we propose a collection of automated image processing algorithms for the ultimate feature extractions and data analyses of the STORM images. The information extraction workflow effectively integrates automated methods of image denoising, objective image segmentation and binarization, and object information extraction, and a novel image information clustering algorithm specifically developed for the morphological analysis of the objects in the STORM images. This automated workflow significantly improves the efficiency of the effective data analysis for large-scale original STORM images.
随机光学重建显微镜(STORM)作为一种超分辨率成像技术被广泛应用于细胞和分子生物学领域,用于观察细胞和分子。然而,STORM 的成像过程经常受到噪声的影响,这会严重影响后续的图像分析。此外,目前还缺乏一种全面的自动处理方法来分析大量 STORM 图像中的蛋白质聚集状态。本文首先将我们之前提出的去噪算法 UNet-Att 应用于 STORM 图像的去噪。该算法基于注意力机制和多尺度特征构建,在去噪方面表现出了显著的高效性。随后,我们提出了一系列自动图像处理算法,用于 STORM 图像的最终特征提取和数据分析。信息提取工作流程有效地整合了图像去噪、客观图像分割和二值化、物体信息提取等自动化方法,以及专门为 STORM 图像中的物体形态分析开发的新型图像信息聚类算法。这一自动化工作流程大大提高了对大规模原始 STORM 图像进行有效数据分析的效率。
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引用次数: 0
Mathematical modeling of18F-Fluoromisonidazole (18F-FMISO) radiopharmaceutical transport in vascularized solid tumors. 18F-Fluoromisonidazole (18F-FMISO)放射性药物在血管化实体瘤中运输的数学建模。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-12 DOI: 10.1088/2057-1976/ad7592
Mohammad Amin Abazari, M Soltani, Faezeh Eydi, Arman Rahmim, Farshad Moradi Kashkooli

18F-Fluoromisonidazole (18F-FMISO) is a highly promising positron emission tomography radiopharmaceutical for identifying hypoxic regions in solid tumors. This research employs spatiotemporal multi-scale mathematical modeling to explore how different levels of angiogenesis influence the transport of radiopharmaceuticals within tumors. In this study, two tumor geometries with heterogeneous and uniform distributions of capillary networks were employed to incorporate varying degrees of microvascular density. The synthetic image of the heterogeneous and vascularized tumor was generated by simulating the angiogenesis process. The proposed multi-scale spatiotemporal model accounts for intricate physiological and biochemical factors within the tumor microenvironment, such as the transvascular transport of the radiopharmaceutical agent, its movement into the interstitial space by diffusion and convection mechanisms, and ultimately its uptake by tumor cells. Results showed that both quantitative and semi-quantitative metrics of18F-FMISO uptake differ spatially and temporally at different stages during tumor growth. The presence of a high microvascular density in uniformly vascularized tumor increases cellular uptake, as it allows for more efficient release and rapid distribution of radiopharmaceutical molecules. This results in enhanced uptake compared to the heterogeneous vascularized tumor. In both heterogeneous and uniform distribution of microvessels in tumors, the diffusion transport mechanism has a more pronounced than convection. The findings of this study shed light on the transport phenomena behind18F-FMISO radiopharmaceutical distribution and its delivery in the tumor microenvironment, aiding oncologists in their routine decision-making processes.

18F-Fluoromisonidazole (18F-FMISO) 是一种极具潜力的正电子发射断层扫描放射性药物,可用于识别实体肿瘤中的缺氧区域。这项研究采用时空多尺度数学模型来探索不同程度的血管生成如何影响放射性药物在肿瘤内的传输。在这项研究中,采用了两种具有异质和均匀分布的毛细血管网络的肿瘤几何图形,以纳入不同程度的微血管密度。通过模拟血管生成过程,生成了异质血管化肿瘤的合成图像。所提出的多尺度时空模型考虑了肿瘤微环境中错综复杂的生理和生化因素,如放射性药物的跨血管传输、通过扩散和对流机制进入间质空间以及最终被肿瘤细胞吸收。结果显示,在肿瘤生长的不同阶段,18F-FMISO 吸收的定量和半定量指标在空间和时间上都有所不同。均匀血管化肿瘤中存在高微血管密度会增加细胞摄取,因为它能使放射性药物分子更有效地释放和快速分布。因此,与异质血管化肿瘤相比,细胞摄取率会更高。在肿瘤微血管异质分布和均匀分布的情况下,扩散运输机制比对流机制更为明显。本研究的发现揭示了 18F-FMISO 放射性药物在肿瘤微环境中分布和递送背后的传输现象,为肿瘤学家的常规决策过程提供了帮助。
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引用次数: 0
Detection of Invasive Ductal Carcinoma by Electrical Impedance Spectroscopy Implementing Gaussian Relaxation-Time Distribution (EIS-GRTD). 采用高斯弛豫时间分布的电阻抗能谱学(EIS-GRTD)检测浸润性导管癌
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-11 DOI: 10.1088/2057-1976/ad795f
Galih Setyawan,Kiagus Aufa Ibrahim,Ryoma Ogawa,Prima Asmara Sejati,Hiroshi Fujimoto,Hiroto Yamamoto,Masahiro Takei
Breast cancer detection and differentiation of breast tissues are critical for accurate diagnosis and treatment planning. This study addresses the challenge of distinguishing between invasive ductal carcinoma (IDC), normal glandular breast tissues (nGBT), and adipose tissue using electrical impedance spectroscopy combined with Gaussian relaxation-time distribution (EIS-GRTD). The primary objective is to investigate the relaxation-time characteristics of these tissues and their potential to differentiate between normal and abnormal breast tissues. We applied a single-point EIS-GRTD measurement to ten mastectomy specimens across a frequency range f = 4 Hz to 5 MHz. The method calculates the differential ratio of the relaxation-time distribution function ∆γ between IDC and nGBT, which is denoted by 〖∆γ〗^(IDC-nGBT), and ∆γ between IDC and adipose tissues, which is denoted by 〖∆γ〗^(IDC-adipose). As a result, the differential ratio of ∆γ between IDC and nGBT 〖∆γ〗^(IDC-nGBT) is 0.36, and between IDC and adipose 〖∆γ〗^(IDC-adipose) is 0.27, which included in the α-dispersion at τ^peak1= 0.033 ± 0.001 s. In all specimens, the relaxation-time distribution function γ of IDC γ^IDC is higher, and there is no intersection with γ of nGBT γ^nGBT and adipose γ^adipose. The difference in γ suggests potential variations in relaxation properties at the molecular or structural level within each breast tissue that contribute to the overall relaxation response. The average mean percentage error δ for IDC, nGBT, and adipose tissues are 5.90%, 6.33%, and 8.07%, respectively, demonstrating the model's accuracy and reliability. This study provides novel insights into the use of relaxation-time characteristic for differentiating breast tissue types, offering potential advancements in diagnosis methods. Future research will focus on correlating EIS-GRTD finding with pathological results from the same test sites to further validate the method's efficacy.
乳腺癌的检测和乳腺组织的区分对于准确诊断和治疗计划至关重要。本研究利用电阻抗光谱与高斯弛豫时间分布(EIS-GRTD)相结合,解决了区分浸润性导管癌(IDC)、正常腺体乳腺组织(nGBT)和脂肪组织的难题。主要目的是研究这些组织的弛豫时间特征及其区分正常和异常乳腺组织的潜力。我们对十个乳房切除标本进行了单点 EIS-GRTD 测量,频率范围为 f = 4 Hz 至 5 MHz。该方法计算了 IDC 和 nGBT 之间弛豫时间分布函数 ∆γ 的差值比,用〖∆γ〗^(IDC-nGBT)表示,以及 IDC 和脂肪组织之间的 ∆γ 的差值比,用〖∆γ〗^(IDC-adipose)表示。因此,IDC 与 nGBT 之间的〖Δγ〗^(IDC-nGBT)的差值比为 0.36,IDC 与脂肪组织之间的〖Δγ〗^(IDC-adipose)的差值比为 0.27,其中包括在 τ^peak1= 0.在所有标本中,IDC γ^IDC 的弛豫时间分布函数γ 都较高,与 nGBT γ^nGBT 和脂肪 γ^adipose 的γ 没有交集。γ的差异表明,每个乳腺组织在分子或结构水平上的弛豫特性可能存在差异,从而导致整体弛豫响应。IDC、nGBT 和脂肪组织的平均百分比误差δ分别为 5.90%、6.33% 和 8.07%,证明了模型的准确性和可靠性。这项研究为利用弛豫时间特征区分乳腺组织类型提供了新的见解,为诊断方法提供了潜在的进步。未来的研究将重点关注将 EIS-GRTD 发现与同一检测部位的病理结果进行关联,以进一步验证该方法的有效性。
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引用次数: 0
Innovative 3D bioprinting approaches for advancing brain science and medicine: a literature review. 推动脑科学和医学发展的创新三维生物打印方法:文献综述。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-11 DOI: 10.1088/2057-1976/ad795c
Xu Bocheng,Rodrigo França
This paper reviews 3D bioprinting technologies and Bio-inks materials in brain neuroscience applications. The integration of 3D bioprinting technology in neuroscience research offers a unique platform to create complex brain and tissue architectures that mimic the mechanical, architectural, and biochemical properties of native tissues, providing a robust tool for modeling, repair, and drug screening applications. The review provides discussions and conclusions to highlight the current research, research gaps and recommendations for the future research on 3D bioprinting in neuroscience. The investigation shows that 3D bioprinting has a great potential to fabricate brain-like tissue constructs, holds great promise for regenerative medicine and drug testing models, offering new avenues for studying brain diseases and potential treatments. It is also found that the future of bioinks requires continuous improvement and innovation to meet the needs of applications in the field of neuroscience, aiming to improve the functionality and performance of bioink materials for neural tissue engineering. .
本文回顾了三维生物打印技术和生物墨水材料在脑神经科学中的应用。三维生物打印技术在神经科学研究中的整合提供了一个独特的平台,可用于创建复杂的大脑和组织结构,模拟原生组织的机械、结构和生化特性,为建模、修复和药物筛选应用提供强大的工具。该综述提供了讨论和结论,强调了三维生物打印在神经科学领域的研究现状、研究差距以及对未来研究的建议。调查显示,三维生物打印在制造类脑组织构建物方面具有巨大潜力,在再生医学和药物测试模型方面大有可为,为研究脑部疾病和潜在治疗方法提供了新途径。研究还发现,未来的生物墨水需要不断改进和创新,以满足神经科学领域的应用需求,从而提高神经组织工程生物墨水材料的功能和性能。
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引用次数: 0
Mapping cognitive activity from electrocorticography field potentials in humans performing NBack task. 从人类执行 NBack 任务时的皮层电场电位绘制认知活动图。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-11 DOI: 10.1088/2057-1976/ad795e
Renee Johnston,Chadwick Boulay,Kai Miller,Adam Sachs
OBJECTIVEAdvancements in data science and assistive technologies have made invasive brain-computer interfaces (iBCIs) increasingly viable for enhancing the quality of life in physically disabled individuals. Intracortical micro-electrode implants are a common choice for such a communication system due to their fine temporal and spatial resolution. The small size of these implants makes the implantation plan critical for the successful exfiltration of information, particularly when targeting representations of task goals that lack robust anatomical correlates.APPROACHWorking memory processes including encoding, retrieval, and maintenance are observed in many areas of the brain. Using human electrocorticography recordings during a working memory experiment, we provide proof that it is possible to localize cognitive activity associated with the task and to identify key locations involved with executive memory functions. Results. From the analysis, we could propose an optimal iBCI implant location with the desired features. The general approach is not limited to working memory but could also be used to map other goal-encoding factors such as movement intentions, decision-making, and visual-spatial attention.SIGNIFICANCEDeciphering the intended action of a BCI user is a complex challenge that involves the extraction and integration of cognitive factors such as movement planning, working memory, visual spatial attention, and the decision state. Examining local field potentials from ECoG electrodes while participants engaged in tailored cognitive tasks can pinpoint location with valuable information related to anticipated actions. This manuscript demonstrates the feasibility of identifying electrodes involved in cognitive activity related to working memory during user engagement in the NBack task. Devoting time in meticulous preparation to identify the optimal brain regions for BCI implant locations will increase the likelihood of rich signal outcomes, thereby improving the overall BCI user experience. .
目的:数据科学和辅助技术的进步使侵入式脑机接口(iBCIs)在提高肢体残疾人生活质量方面变得越来越可行。皮质内微型电极植入物因其精细的时间和空间分辨率而成为此类通信系统的常见选择。这些植入物体积小,因此植入计划对于信息的成功渗入至关重要,尤其是在针对缺乏强大解剖相关性的任务目标表征时。方法工作记忆过程包括编码、检索和维持,在大脑的许多区域都能观察到。利用工作记忆实验过程中的人体皮层电图记录,我们证明有可能定位与任务相关的认知活动,并确定与执行记忆功能相关的关键位置。通过分析,我们提出了具有所需特征的最佳 iBCI 植入位置。这种通用方法并不局限于工作记忆,还可用于绘制其他目标编码因素的地图,如运动意图、决策和视觉空间注意力。在参与者参与定制的认知任务时检查心电电极的局部场电位,可以精确定位与预期行动相关的有价值信息。本手稿证明了在用户参与 NBack 任务期间识别参与工作记忆相关认知活动的电极的可行性。花时间精心准备以确定 BCI 植入位置的最佳脑区将增加获得丰富信号结果的可能性,从而改善 BCI 用户的整体体验。
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引用次数: 0
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Biomedical Physics & Engineering Express
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