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Fuzzy lattices assisted EJAYA Q-learning for automated pulmonary diseases classification. 用于肺病自动分类的模糊网格辅助 ejaya Q-learning
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-03 DOI: 10.1088/2057-1976/ad72f8
Amit Kukker, Rajneesh Sharma, Gaurav Pandey, Mohammad Faseehuddin

This work proposes a novel technique called Enhanced JAYA (EJAYA) assisted Q-Learning for the classification of pulmonary diseases, such as pneumonia and tuberculosis (TB) sub-classes using chest x-ray images. The work introduces Fuzzy lattices formation to handle real time (non-linear and non-stationary) data based feature extraction using Schrödinger equation. Features based adaptive classification is made possible through the Q-learning algorithm wherein optimal Q-values selection is done via EJAYA optimization algorithm. Fuzzy lattice is formed using x-ray image pixels and lattice Kinetic Energy (K.E.) is calculated using the Schrödinger equation. Feature vector lattices having highest K.E. have been used as an input features for the classifier. The classifier has been employed for pneumonia classification (normal, mild and severe) and Tuberculosis detection (presence or absence). A total of 3000 images have been used for pneumonia classification yielding an accuracy, sensitivity, specificity, precision and F-scores of 97.90%, 98.43%, 97.25%, 97.78% and 98.10%, respectively. For Tuberculosis 600 samples have been used. The achived accuracy, sensitivity, specificity, precision and F-score are 95.50%, 96.39%, 94.40% 95.52% and 95.95%, respectively. Computational time are 40.96 and 39.98 s for pneumonia and TB classification. Classifier learning rate (training accuracy) for pneumonia classes (normal, mild and severe) are 97.907%, 95.375% and 96.391%, respectively and for tuberculosis (present and absent) are 96.928% and 95.905%, respectively. The results have been compared with contemporary classification techniques which shows superiority of the proposed approach in terms of accuracy and speed of classification. The technique could serve as a fast and accurate tool for automated pneumonia and tuberculosis classification.

本研究提出了一种名为增强型 JAYA(EJAYA)的新技术,可辅助 Q-Learning 利用胸部 X 光图像对肺炎和肺结核(TB)等肺部疾病进行分类。这项工作引入了模糊网格形成,利用薛定谔方程处理基于特征提取的实时(非线性和非稳态)数据。通过 Q-learning 算法实现了基于特征的自适应分类,其中最佳 Q 值的选择是通过 EJAYA 优化算法完成的。利用 X 射线图像像素形成模糊晶格,并利用薛定谔方程计算晶格动能(K.E.)。具有最高 K.E. 的特征向量晶格被用作分类器的输入特征。该分类器已用于肺炎分类(正常、轻度和重度)和肺结核检测(存在或不存在)。肺炎分类共使用了 3000 幅图像,准确率、灵敏度、特异性、精确度和 F 值分别为 97.90%、98.43%、97.25%、97.78% 和 98.10%。肺结核使用了 600 个样本。准确率、灵敏度、特异性、精确度和 F 分数分别为 95.50%、96.39%、94.40%、95.52% 和 95.95%。肺炎和肺结核分类的计算时间分别为 40.96 秒和 39.98 秒。肺炎类别(正常、轻度和重度)的分类器学习率(训练准确率)分别为 97.907%、95.375% 和 96.391%,肺结核类别(存在和不存在)的分类器学习率(训练准确率)分别为 96.928% 和 95.905%。将结果与当代分类技术进行比较后发现,所提出的方法在准确性和分类速度方面都更胜一筹。该技术可作为肺炎和肺结核自动分类的快速而准确的工具。
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引用次数: 0
Comparative evaluation of image quality between virtual grid and grid portable radiographic systems. 虚拟网格和网格便携式放射成像系统图像质量的比较评估。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-03 DOI: 10.1088/2057-1976/ad7266
Azmul H Siddique, Gary Ge, Jie Zhang

Purpose. Virtual Grid (VG) is an image processing technique designed to address scattered radiation from radiographic systems without a physical grid. It aims to eliminate artifacts caused by grid misalignment and enhance radiographic workflow efficiency. We intend to evaluate image quality between Virtual Grid and grid-based radiographic systems across various patient thicknesses.Methods. A Fujifilm Virtual Grid and GE AMX-4 portable radiographic system was used. Image quality was assessed using MTF, NPS, LCR, and CNR. MTF calculations employed an edge-device method with a 0.1 mmCu sheet. For NPS evaluation, uniform images were acquired with multiple 30 × 30 cm solid water blocks (2 cm thick), overlaid in 2 cm increments to simulate patient sizes from 2cm to 40 cm. LCR and CNR were evaluated using a CIRS test plate with 9-hole depths for a hole diameter of 0.375'. The test object was placed on top of the detector then water blocks, while maintaining the same SID, beam quality, and exposure between the units. Visual assessments were conducted by four readers, quantifying perceived hole numbers. The weighted Cohen's Kappa and Welch's T-test were utilized for statistical analysis.Results. At 80% MTF, VG exhibited high contrast resolution of 1.1 l p/mm compared to 1.2 l p/mm for the grid system. VG demonstrated lower noise levels across all frequencies for equivalent patient thicknesses. Welch's T-test indicated no significant differences in LCR (P = 0.31) and CNR (P = 0.34) between the systems. However, qualitative observation demonstrated VG's better low contrast response for patient sizes ≥10 cm. The average weighted Cohen's Kappa value was 0.78.Conclusion. This work indicates the Virtual Grid technology can effectively mitigate scattered radiation to improve granularity and low-contrast resolution in an image compared to a grid system. Furthermore, it can potentially reduce patient dose.

目的:虚拟网格(VG)是一种图像处理技术,旨在解决没有物理网格的放射成像系统的散射辐射问题。其目的是消除因网格错位造成的伪影,并提高射线照相工作流程的效率。我们打算评估虚拟栅格和基于栅格的放射成像系统在不同患者厚度下的图像质量:使用富士虚拟网格和 GE AMX-4 便携式射线照相系统。使用 MTF、NPS、LCR 和 CNR 评估图像质量。MTF 计算采用的是 0.1 毫米铜片边缘装置法。在评估 NPS 时,使用多个 30x30 厘米的实心水块(2 厘米厚)采集均匀图像,以 2 厘米的增量叠加,模拟 2 厘米到 40 厘米的患者体型。使用孔径为 0.375 英寸、有 9 个孔深的 CIRS 测试板对 LCR 和 CNR 进行评估。测试对象被放置在探测器顶部,然后是水块,同时保持设备之间相同的 SID、光束质量和曝光量。由四名读者进行目测评估,量化感知的孔洞数量。采用加权科恩卡帕和韦尔奇 T 检验进行统计分析:在 MTF 为 80% 时,VG 的对比度分辨率为 1.1 lp/mm,而网格系统为 1.2 lp/mm。在患者厚度相当的情况下,VG 在所有频率上都表现出较低的噪声水平。韦尔奇 T 检验表明,两种系统的 LCR(P=0.31)和 CNR(P=0.34)没有明显差异。然而,定性观察结果表明,患者体型≥10 厘米时,VG 的低对比度响应更好。平均加权科恩卡帕值为 0.78:这项工作表明,与网格系统相比,虚拟网格技术可以有效地减少散射辐射,从而提高图像的颗粒度和低对比度分辨率。此外,它还有可能降低患者的剂量。
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引用次数: 0
Investigation of the beam quality and dose rate dependence of PAKAG polymer gel dosimeter in optical readout technique. 研究光学读出技术中 PAKAG 聚合物凝胶剂量计的光束质量和剂量率相关性。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-03 DOI: 10.1088/2057-1976/ad7032
Seyed Mohammad Mahdi Abtahi, Fatemeh Habibi

This study aims to evaluate the optical response dependence of the PAKAG polymer gel dosimeter on photon energy and dose rate. The produced gel dosimeters were irradiated using a Varian CL 21EX medical linear accelerator with delivered doses of 0, 2, 4, 6, 8, and 10 Gy. To examine the response dependence on the delivered dose rate, dose rates of 50, 100, 200, and 350 cGy min-1were investigated. Additionally, two incident beam qualities of 6 and 18 MV were examined to study the response dependence on the incident beam energy. The irradiated polymer gel dosimeters were readout using a UV-vis spectrophotometer in the 300 to 800 nm scan range. The results reveal that a wide variation in dose rate (50-350 cGy.min-1) influences the absorbance-dose response and the sensitivity of PAKAG gel. However, smaller variations did not show a significant effect on the response. Furthermore, the response changed insignificantly with beam quality for investigated energies. It was concluded that the optical reading response of the PAKAG polymer gel dosimeter is satisfactorily independent of external parameters, including dose rate and incident beam quality.

本研究旨在评估 PAKAG 聚合物凝胶剂量计对光子能量和剂量率的光学响应依赖性。使用瓦里安 CL 21EX 医用直线加速器对生产的凝胶剂量计进行辐照,辐照剂量分别为 0、2、4、6、8 和 10 Gy。为了研究反应与输出剂量率的关系,研究了 50、100、200 和 350 cGy/min 的剂量率。此外,还考察了 6 MV 和 18 MV 两种入射光束质量,以研究入射光束能量对反应的影响。使用紫外可见分光光度计在 300 至 800 nm 扫描范围内读出辐照后的聚合物凝胶剂量计。 结果显示,剂量率的较大变化(50-350 cGy.min-1)会影响吸光度-剂量响应和 PAKAG 聚合物凝胶剂量计的灵敏度。然而,较小的变化对响应的影响并不明显。结论是,PAKAG 聚合物凝胶剂量计的光学读数响应完全不受外部参数(包括剂量率和入射光束质量)的影响。
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引用次数: 0
Encapsulation of human natural killer cells into novel gelatin-based polymeric hydrogel networks. 将人类自然杀伤细胞包裹到新型明胶基聚合物水凝胶网络中。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-02 DOI: 10.1088/2057-1976/ad7609
Sibel Cendere, Ceren Yuksel, Ercument Ovali, Beste Kinikoglu, Ozgul Gok

In the innate immune system, natural killer (NK) cells are effector lymphocytes which control several tumor types and microbial infections by limiting disease spread and tissue damage. With tumor cell killing abilities, with no priming or prior activation, NKs are potential anti-cancer therapies. In clinical practice, NKs are used in intravenous injections as they typically grow as suspension, similar to other blood cells. In this study, we designed a novel and effective biomaterial-based platform for NK cell delivery, which included in-situ NK cell encapsulation into three-dimensional (3D) biocompatible polymeric scaffolds for potential anti-cancer treatments. Depending on physical cross-linking between an alginate (ALG) polymer and a divalent cation, two natural polymers (gelatin (GEL) and hyaluronic acid (HA)) penetrated into pores and generated an inter-penetrating hydrogel system with improved mechanical properties and stability. After extensive characterization of hydrogels, NK cells were encapsulated inside using our in-situ gelation procedure to provide a biomimetic microenvironment. .

在先天性免疫系统中,自然杀伤(NK)细胞是一种效应淋巴细胞,可通过限制疾病扩散和组织损伤来控制多种肿瘤类型和微生物感染。NK 细胞具有杀伤肿瘤细胞的能力,无需启动或事先激活,是一种潜在的抗癌疗法。在临床实践中,NK 通常以悬浮液的形式生长,与其他血细胞相似,因此被用于静脉注射。在这项研究中,我们设计了一种新颖有效的基于生物材料的 NK 细胞递送平台,其中包括将 NK 细胞原位封装到三维(3D)生物相容性聚合物支架中,用于潜在的抗癌治疗。根据藻酸盐(ALG)聚合物和二价阳离子之间的物理交联,两种天然聚合物(明胶(GEL)和透明质酸(HA))渗透到孔隙中,生成了一种具有更好机械性能和稳定性的相互渗透的水凝胶系统。在对水凝胶进行广泛表征后,利用我们的原位凝胶化程序将 NK 细胞封装在水凝胶中,以提供仿生微环境。
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引用次数: 0
Development of an individualized stable and force-reducing lower-limb exoskeleton. 开发个性化的稳定减力下肢外骨骼。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-30 DOI: 10.1088/2057-1976/ad686f
Guo-Shing Huang, Meng-Hua Yen, Chia-Chun Chang, Chung-Liang Lai, Chi-Chun Chen

In this study, an individualized and stable passive-control lower-limb exoskeleton robot was developed. Users' joint angles and the center of pressure (CoP) of one of their soles were input into a convolutional neural network (CNN)-long short-term memory (LSTM) model to evaluate and adjust the exoskeleton control scheme. The CNN-LSTM model predicted the fitness of the control scheme and output the results to the exoskeleton robot, which modified its control parameters accordingly to enhance walking stability. The sole's CoP had similar trends during normal walking and passive walking with the developed exoskeleton; they-coordinates of the CoPs with and without the exoskeleton had a correlation of 91%. Moreover, electromyography signals from the rectus femoris muscle revealed that it exerted 40% less force when walking with a stable stride length in the developed system than when walking with an unstable stride length. Therefore, the developed lower-limb exoskeleton can be used to assist users in achieving balanced and stable walking with reduced force application. In the future, this exoskeleton can be used by patients with stroke and lower-limb weakness to achieve stable walking.

本研究开发了一种个性化和稳定的被动控制下肢外骨骼机器人。用户的关节角度和一只脚底的压力中心(CoP)被输入到一个卷积神经网络(CNN)-长短期记忆(LSTM)模型中,以评估和调整外骨骼控制方案。CNN-LSTM 模型预测了控制方案的适宜性,并将结果输出给外骨骼机器人,后者相应地修改了控制参数,以提高行走稳定性。在正常行走和使用所开发的外骨骼进行被动行走时,鞋底的CoP具有相似的趋势;有外骨骼和无外骨骼时的CoP坐标相关性高达91%。此外,来自股直肌的肌电信号显示,在已开发的系统中以稳定步长行走时,股直肌的用力比以不稳定步长行走时少40%。因此,所开发的下肢外骨骼可用于帮助使用者实现平衡、稳定的行走,同时减少施力。未来,中风和下肢无力的患者可以使用这种外骨骼实现稳定行走。
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引用次数: 0
Deep learning with uncertainty estimation for automatic tumor segmentation in PET/CT of head and neck cancers: impact of model complexity, image processing and augmentation. 深度学习与不确定性估计用于头颈部癌症 PET/CT 中的自动肿瘤分割:模型复杂性、图像处理和增强的影响。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-30 DOI: 10.1088/2057-1976/ad6dcd
Bao Ngoc Huynh, Aurora Rosvoll Groendahl, Oliver Tomic, Kristian Hovde Liland, Ingerid Skjei Knudtsen, Frank Hoebers, Wouter van Elmpt, Einar Dale, Eirik Malinen, Cecilia Marie Futsaether

Objective.Target volumes for radiotherapy are usually contoured manually, which can be time-consuming and prone to inter- and intra-observer variability. Automatic contouring by convolutional neural networks (CNN) can be fast and consistent but may produce unrealistic contours or miss relevant structures. We evaluate approaches for increasing the quality and assessing the uncertainty of CNN-generated contours of head and neck cancers with PET/CT as input.Approach.Two patient cohorts with head and neck squamous cell carcinoma and baseline18F-fluorodeoxyglucose positron emission tomography and computed tomography images (FDG-PET/CT) were collected retrospectively from two centers. The union of manual contours of the gross primary tumor and involved nodes was used to train CNN models for generating automatic contours. The impact of image preprocessing, image augmentation, transfer learning and CNN complexity, architecture, and dimension (2D or 3D) on model performance and generalizability across centers was evaluated. A Monte Carlo dropout technique was used to quantify and visualize the uncertainty of the automatic contours.Main results. CNN models provided contours with good overlap with the manually contoured ground truth (median Dice Similarity Coefficient: 0.75-0.77), consistent with reported inter-observer variations and previous auto-contouring studies. Image augmentation and model dimension, rather than model complexity, architecture, or advanced image preprocessing, had the largest impact on model performance and cross-center generalizability. Transfer learning on a limited number of patients from a separate center increased model generalizability without decreasing model performance on the original training cohort. High model uncertainty was associated with false positive and false negative voxels as well as low Dice coefficients.Significance.High quality automatic contours can be obtained using deep learning architectures that are not overly complex. Uncertainty estimation of the predicted contours shows potential for highlighting regions of the contour requiring manual revision or flagging segmentations requiring manual inspection and intervention.

目的:放射治疗的靶体积通常由人工绘制,这不仅耗时,而且容易造成观察者之间和观察者内部的差异。使用卷积神经网络(CNN)进行自动轮廓绘制既快速又一致,但可能会产生不切实际的轮廓或遗漏相关结构。我们以 PET/CT 为输入,评估了提高 CNN 生成的头颈部癌症轮廓质量和评估其不确定性的方法。从两个中心回顾性地收集了两组头颈部鳞状细胞癌患者和基线 18F- 氟脱氧葡萄糖正电子发射断层扫描和计算机断层扫描图像(FDG-PET/CT)。原发肿瘤和受累结节的人工轮廓联合用于训练 CNN 模型,以生成自动轮廓。评估了图像预处理、图像增强、迁移学习和 CNN 复杂性、架构和维度(二维或三维)对模型性能和跨中心通用性的影响。蒙特卡洛放弃技术用于量化和可视化自动轮廓的不确定性。CNN 模型提供的轮廓与人工绘制的地面真实轮廓有很好的重合度(中位数 Dice 相似系数:0.75 - 0.77),与报告的观察者之间的差异和之前的自动轮廓绘制研究一致。对模型性能和跨中心通用性影响最大的是图像增强和模型维度,而不是模型复杂性、结构或高级图像预处理。对来自另一个中心的有限数量的患者进行迁移学习可提高模型的可推广性,而不会降低模型在原始训练队列中的性能。高模型不确定性与假阳性和假阴性体素以及低 Dice 系数有关。利用不过分复杂的深度学习架构可以获得高质量的自动轮廓。对预测轮廓的不确定性估计表明,有可能突出需要人工修改的轮廓区域,或标记需要人工检查和干预的分段。
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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 : 2024-08-30 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
Characterizing dispersion in bovine liver using ARFI-based shear wave rheometry. 利用基于 ARFI 的剪切波流变仪确定牛肝中的分散特性。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-30 DOI: 10.1088/2057-1976/ad6b31
Sanjay S Yengul, Paul E Barbone, Bruno Madore

Background:Dispersion presents both a challenge and a diagnostic opportunity in shear wave elastography (SWE).Shear Wave Rheometry(SWR) is an inversion technique for processing SWE data acquired using an acoustic radiation force impulse (ARFI) excitation. The main advantage of SWR is that it can characterize the shear properties of homogeneous soft media over a wide frequency range. Assumptions associated with SWR include tissue homogeneity, tissue isotropy, and axisymmetry of the ARFI excitation).Objective:Evaluate the validity of the SWR assumptions in ex vivo bovine liver.Approach:SWR was used to measure the shear properties of bovine liver tissue as function of frequency over a large frequency range. Assumptions associated with SWR (tissue homogeneity, tissue isotropy, and axisymmetry of the ARFI excitation) were evaluated through measurements performed at multiple locations and probe orientations. Measurements focused on quantities that would reveal violations of the assumptions.Main results:Measurements of shear properties were obtained over the 25-250 Hz range, and showed a 4-fold increase in shear storage modulus (from 1 to 4 kPa) and over a 10-fold increase in the loss modulus (from 0.2 to 3 kPa) over that decade-wide frequency range. Measurements under different conditions were highly repeatable, and model error was low in all cases.Significance and Conclusion:SWR depends on modeling the ARFI-induced shear wave as a full vector viscoelastic shear wave resulting from an axisymmetric source; it is agnostic to any specific rheological model. Despite this generality, the model makes three main simplifying assumptions. These results show that the modeling assumptions used in SWR are valid in bovine liver over a wide frequency band.

背景:在剪切波弹性成像(SWE)中,弥散既是一个挑战,也是一个诊断机会。剪切波流变仪(SWR)是一种反演技术,用于处理利用声辐射力脉冲(ARFI)激励获取的 SWE 数据。SWR 的主要优点是可以在很宽的频率范围内表征均质软介质的剪切特性。这里使用 SWR 测量牛肝组织的剪切特性。与 SWR 相关的假设包括组织均匀性、组织各向同性和 ARFI 激发的轴对称性:评估 SWR 假设在体外牛肝中的有效性:使用 SWR 测量牛肝组织在较大频率范围内随频率变化的剪切特性。通过在多个位置和探针方向进行测量,评估了与 SWR 相关的假设(均匀性、各向同性和轴对称性):对 25-250 Hz 范围内的剪切特性进行了测量,结果表明,在这十年的频率范围内,剪切存储模量增加了 4 倍(从 1 kPa 到 4 kPa),损耗模量增加了 10 倍多(从 0.2 kPa 到 3 kPa)。不同条件下的测量结果具有很高的重复性,模型误差在所有情况下都很低:SWR 依赖于将 ARFI 诱导的剪切波建模为轴对称源产生的全矢量粘弹性剪切波;它与任何特定的流变模型无关。尽管具有这种通用性,该模型仍做了三个主要的简化假设。这些结果表明,在 SWR 中使用的建模假设在牛肝中的宽频带内是有效的。
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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 : 2024-08-30 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 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 minutes 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
Mathematical Modeling of 18F-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 : 2024-08-30 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 of 18F-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 behind 18F-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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Biomedical Physics & Engineering Express
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