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Emerging innovations in polycaprolactone-chitosan-hydroxyapatite composite scaffolds for tissue engineering: a review. 聚己内酯-壳聚糖-羟基磷灰石复合材料在组织工程中的新进展。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-05 DOI: 10.1088/2057-1976/ae3e95
Mohammed Razzaq Mohammed

Polycaprolactone (PCL), chitosan (CS), and hydroxyapatite (HA) have emerged as complementary biomaterials for the design of advanced scaffolds in tissue engineering (TE). Individually, PCL offers excellent mechanical strength and formability but suffers from hydrophobicity and slow degradation. CS provides biocompatibility, antibacterial properties, and favorable cell-material interactions, yet its insufficient mechanical stability limits standalone use. HA, a bioactive ceramic, enhances osteoconductivity; nevertheless, it is brittle in pure form. Recent advances focus on integrating these three components into hybrid composites to harness their desired characteristics. Novel fabrication approaches, including electrospinning and 3D printing have been optimized to tailor scaffold architecture, porosity, and mechanical integrity. Studies highlight enhanced cellular adhesion and differentiation, as well as improved angiogenic and antibacterial performance when functionalized with bioactive agents or nanoparticles. For instance, the incorporation of nano-HA into the PCL/CS scaffolds markedly boosted skin fibroblast cells (HSF 1184) proliferation, yielding a 23% increase compared to PCL/CS scaffolds by day 3. Besides, HA-PCL/CS nanofibrous composite scaffolds demonstrated a marked improvement in mechanical stiffness, showing an increase of greater than 15% in modulus of elasticity compared to the PCL/CS scaffold. Despite these advances, challenges remain in achieving controlled degradation, uniform dispersion of components, and scalable, reproducible fabrication for clinical translation. This current review fills a critical gap by providing the first comprehensive analysis of advancements in PCL-CS-HA ternary TE systems, an area that remains unexplored despite existing reviews on individual materials and their binary combinations. It analyzes latest developments in PCL-CS-HA composites, highlighting their structure, characteristics, processing strategies, biological outcomes, and future directions.

聚己内酯(PCL)、壳聚糖(CS)和羟基磷灰石(HA)已成为组织工程(TE)先进支架设计的补充生物材料。单独而言,PCL具有优异的机械强度和成型性,但具有疏水性和缓慢降解的缺点。CS具有生物相容性、抗菌性能和良好的细胞-材料相互作用,但其机械稳定性不足限制了单独使用。透明质酸,一种生物活性陶瓷,增强骨导电性;然而,它在纯形式下是脆的。最近的进展集中在将这三种组件集成到混合复合材料中,以利用其所需的特性。包括静电纺丝和3D打印在内的新型制造方法已经优化,可以定制支架结构、孔隙度和机械完整性。研究强调,当与生物活性剂或纳米颗粒功能化时,可以增强细胞粘附和分化,改善血管生成和抗菌性能。例如,在PCL/CS支架中掺入纳米透明质酸显著促进了皮肤成纤维细胞(HSF 1184)的增殖,与PCL/CS支架相比,第3天的增殖率提高了23%。此外,HA-PCL/CS纳米纤维复合材料支架的机械刚度有明显改善,其弹性模量比PCL/CS支架提高了15%以上。尽管取得了这些进展,但在实现受控降解、组分均匀分散以及可扩展、可复制的临床翻译制造方面仍然存在挑战。本综述通过首次全面分析PCL-CS-HA三元TE系统的进展,填补了一个关键的空白,尽管已有对单个材料及其二元组合的综述,该领域仍未被探索。它分析了PCL-CS-HA复合材料的最新发展,重点介绍了它们的结构、特征、加工策略、生物学结果和未来方向。
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引用次数: 0
Hybrid GELAN-UNet: integrating medical priors for low-dose CT denoising. 混合GELAN-UNet:融合医学先验的低剂量CT去噪。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae3b47
Yingzhu Wang, Liang Zhang, Yuping Yan

Low-Dose Computed Tomography (LDCT) reduces radiation risk but introduces high noise levels that compromises diagnostic quality. To address this, we propose a Hybrid Generalized Efficient Layer Aggregation Network-UNet (GELAN-UNet) model, which incorporates medical priors into a progressive modular architecture. This design uses medically enhanced modules in shallower layers to capture fine details and computationally efficient blocks in deeper layers to reduce cost. Key innovations include a novel low-frequency retention path and an edge-aware attention mechanism, both crucial for preserving critical diagnostic structures. Evaluated on the public Mayo Clinic dataset, the proposed method achieves a superior peak signal-to-noise ratio (PSNR) of 45.28 dB - a 12.45% improvement over the original LDCT - while maintaining an optimal balance between denoising performance and computational efficiency. The critical importance of the low-frequency path, as revealed by ablation studies, validates the rationality of the hybrid strategy, which is further supported by comparisons with full medical and frequency-aware variants. This work delivers a high-performance denoising model alongside a practical, efficient architectural paradigm - rigorously validated through systematic exploration - for integrating domain-specific medical knowledge into deep learning frameworks.

低剂量计算机断层扫描(LDCT)降低了辐射风险,但引入了高噪音水平,影响了诊断质量。为了解决这个问题,我们提出了一种混合广义高效层聚合网络- unet (GELAN-UNet)模型,该模型将医学先验知识纳入渐进的模块化架构中。本设计在较浅的层中使用医学增强模块来捕获精细细节,在较深的层中使用计算效率高的模块来降低成本。关键的创新包括新的低频保留路径和边缘感知注意机制,两者对于保留关键的诊断结构至关重要。在梅奥诊所的公共数据集上进行了评估,该方法实现了45.28 dB的峰值信噪比(PSNR),比原始LDCT提高了12.45%,同时保持了去噪性能和计算效率之间的最佳平衡。正如消融研究所揭示的那样,低频路径的关键重要性验证了混合策略的合理性,并通过与完整的医疗和频率感知变体的比较进一步支持了这一点。这项工作提供了一个高性能的去噪模型,以及一个实用、高效的架构范例——通过系统探索严格验证——用于将特定领域的医学知识集成到深度学习框架中。
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引用次数: 0
Local artificial body for radiation analysis and testing (LABRAT®): additive manufacturing and dosimetric measurements of a heterogeneous mouse model phantom for pre-clinical radiation research. 局部辐射分析和测试人造体(LABRAT®):用于临床前辐射研究的异质小鼠模型幻影的增材制造和剂量学测量。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae3b48
Shalaine S Tatu-Qassim, John Paul C Cabahug, Jose Bernardo L Padaca, Laureen Ida M Ballesteros, Ulysses B Ante, Earl John T Geraldo, Vladimir M Sarmiento, Carlos Emmanuel P Garcia, Eugene P Guevara, Jan Risty L Marzon, Mark Christian E Manuel, Chitho P Feliciano

Purpose. This study presents a novel method for fabricating a heterogeneous, tissue-equivalent mouse phantom model using additive manufacturing, together with dosimetric verification for applications in dosimetry for pre-clinical radiation research.Methods. Local Artificial Body for Radiation Analysis and Testing (LABRAT®) mouse phantoms were developed based on the Digimouse model. After 3D rendering, a mold-and-assemble method of additive manufacturing was done using 1:1.3 polyurethane-resin material for lung tissue, 1:1 resin-hardener mixture for soft tissue, and resin with 30% hydroxyapatite for bone. Three types of phantoms were developed: LABRAT A (full mouse), LABRAT B (with ionization chamber provision), and LABRAT C (with axial slices along the head, upper lung, lower lung, abdomen, and spine for film dosimetry). Ionization chamber measurements were performed on LABRAT B under total-body irradiation (TBI) (0.5-2.0 Gy) using 130 kVp, 5.0 mA x-rays at a 23 cm source-to-phantom distance on top of a 5 cm PMMA slab. Film calibration and 2.5 Gy TBI were also conducted on LABRAT C to obtain axial dose maps. Computed tomography (CT) images were obtained, and CT numbers of the phantoms were extracted using Slicer 5.4.0.Results. The fabrication method produced identical LABRAT®phantoms suitable for pre-clinical dosimetry. In the open field plan, the measured dose for the LABRAT B phantom inside the acrylic mouse restrainer was observed to agree by up to ±2.6% of the prescribed dose. Film images revealed the corresponding dose maps in each axial slice, which show gradients corresponding to doses of 0 to 3 Gy. Mean CT numbers were -621 ± 119 HU (lung), 70 ± 40 HU (soft tissue), and 430 ± 138 HU (bone).Conclusion. A heterogeneous mouse phantom was successfully developed and validated for dose verification in pre-clinical irradiation. LABRAT®materials demonstrated appropriate anatomical and radiological equivalence, with accurate dosimetric performance and good geometric agreement with the Digimouse model.

摘要:目的:本研究提出了一种利用增材制造技术制备异质、组织等效小鼠模型的新方法,并进行了剂量学验证,用于临床前辐射研究的剂量学研究。方法:在Digimouse模型的基础上,开发了局部辐射分析与测试人工体(LABRAT®)小鼠模型。3D绘制完成后,采用1:1.3聚氨酯-树脂材料制备肺组织,1:1. 1树脂-硬化剂混合物制备软组织,30%羟基磷灰石树脂制备骨骼,采用模具组装的方法进行增材制造。建立了三种类型的模型:LABRAT A(全鼠)、LABRAT B(电离室)和LABRAT C(沿头部、上肺、下肺、腹部和脊柱轴向切片进行膜剂量测定)。电离室测量LABRAT B在全身照射(0.5-2.0 Gy)下,使用130 kVp, 5.0 mA x射线,在5cm PMMA板顶部的23 cm源-影距处进行。对LABRAT C进行膜校正和2.5 Gy TBI,获得轴向剂量图。获取CT图像,使用Slicer 5.4.0提取虚影的CT编号。 ;结果:该制备方法制备出相同的LABRAT®模型,适合临床前剂量测定。在开放场计划中,观察到丙烯酸小鼠约束器内LABRAT B模体的测量剂量最多为规定剂量的±2.6%。胶片图像显示了每个轴向切片对应的剂量图,显示了对应于0至3 Gy剂量的梯度。平均CT值为-621±119 HU(肺),70±40 HU(软组织),430±138 HU(骨)。结论:成功研制了异质小鼠体模,并对其进行了临床前照射剂量验证。LABRAT®材料表现出适当的解剖学和放射学等效性,具有准确的剂量学性能和与Digimouse模型良好的几何一致性。& # xD。
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引用次数: 0
Segmentation and calculation of lung fibrosis in IPF mice by 2.5D UNet. 2.5D UNet对IPF小鼠肺纤维化的分割计算。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae38e5
Yuemei Zheng, Tingting Weng, Yueyue Chang, Sijing Ma, Jian Zhang, Li Guo

Idiopathic pulmonary fibrosis significantly threatens patient survival and remains a condition with limited effective treatment options. There is an urgent need to expedite the exploration of idiopathic pulmonary fibrosis mechanisms and identify suitable therapeutic approaches. Non-invasive and rapid segmentation of lung tissue, coupled with fibrosis quantification, is essential for drug development and efficacy monitoring. In this study, 59 mice were divided into training, validation and test sets according to the ratio of 70%:15%:15%. Based on this ratio, we performed a six-fold cross-validation to ensure the reliability of our results and calculated the average performance across all test sets. At first, a 2.5D UNet was utilized to segment the lung tissue of mice, followed by the calculation of a fibrosis score based on the segmented output, which can be used to evaluate the degree of pulmonary fibrosis in mice. Dice score, precision and recall are used to evaluated the performance of 2.5D UNet. In the test set, the 2.5D UNet achieved an average Dice score of 0.938, precision of 0.941, and recall of 0.936 across the six-fold cross-validation. The fibrosis score effectively demonstrated the varying impacts of different modeling or treatment methods. The 2.5D UNet can effectively segment mice lung tissue and evaluate fibrosis scores, which lays a solid foundation for further research.

背景:特发性肺纤维化严重威胁患者的生存,并且仍然是一种有效治疗选择有限的疾病。迫切需要加快对特发性肺纤维化机制的探索,并确定合适的治疗方法。肺组织的无创快速分割,加上纤维化量化,对于药物开发和疗效监测至关重要。材料与方法:将59只小鼠按70%:15%:15%的比例分为训练组、验证组和测试组。基于这个比率,我们执行了六倍交叉验证,以确保结果的可靠性,并计算了所有测试集的平均性能。首先利用2.5D UNet对小鼠肺组织进行分割,根据分割输出计算纤维化评分,可用于评价小鼠肺纤维化程度。使用骰子分数、精度和召回率来评估2.5D UNet的性能。结果:2.5D UNet在小鼠肺组织分割中取得了良好的效果。在测试集中,经过6次交叉验证,2.5D UNet的平均Dice得分为0.938,精度为0.941,召回率为0.936。纤维化评分有效地显示了不同建模或治疗方法的不同影响。结论:2.5D UNet可有效分割小鼠肺组织并评估纤维化评分,为进一步研究奠定了坚实的基础。
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引用次数: 0
Comprehensive segmentation of focal cortical dysplasia by combining surface-based and whole-brain MRI deep learning algorithms: a proof-of-concept study. 结合基于表面和全脑MRI深度学习算法的局灶性皮质发育不良的综合分割:概念验证研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae3d3e
Yanniklas Kravutske, Mateus A Esmeraldo, Eduardo P Reis, Stefanie Chambers, Lukas Haider, Gregor Kasprian, Bruno P Soares

Introduction.Focal cortical dysplasia type II (FCD II) is a significant cause of drug-resistant epilepsy, and the full surgical resection of the lesion is linked with excellent disease-free outcomes. Its imaging hallmark is the white matter hyperintense funnel-shaped transmantle sign on T2-FLAIR magnetic resonance imaging (MRI). Manual delineation of this abnormality is challenging and inconsistent. Most current artificial intelligence (AI) segmentation tools focus on cortical features and do not fully evaluate the white matter component. We tested whether integrating an algorithm trained on white matter lesions may improve FCD II segmentation.Methods.We evaluated the combination of two AI algorithms, MELD Graph (surface-based FCD segmentation) and MindGlide (whole-brain/white-matter lesion segmentation tool) in 49 FCD cases with a radiologically confirmed transmantle sign. Segmentation accuracy was assessed against expert manual annotations using the Dice similarity coefficient and segmentation volumes.Results.MELD Graph detected the lesion in 31 cases, 22 of which had the transmantle sign included in the expert lesion mask. Among these, MindGlide detected the transmantle sign in eight cases (36%). The mean added Dice score was 0.033 (95% CI, 0.013-0.056). Overall Dice values of MELD Graph were 0.321 and increased to 0.354 with the addition of MindGlide. It also contributed additional lesion volume in these eight cases, ranging from 0.028 to 4.18 cm3, with a mean added volume of 0.77 cm3.Discussion.Despite not being trained on FCD data, MindGlide, when combined with MELD Graph, provided a modest improvement in FCD II segmentation, including the deep white matter component of the lesion that is not captured by MELD Graph.Conclusion.These findings provide preliminary evidence supporting the consideration of a sequential cortical and white matter segmentation approach in FCD II, which may guide further epilepsy-specific AI model development.

局灶性皮质发育不良II型(FCD II)是耐药癫痫的重要病因,完全手术切除病变与良好的无病预后有关。其影像学特征为T2-FLAIR磁共振成像(MRI)上的白质高强度漏斗状透射征。手工描述这种异常是具有挑战性和不一致的。目前大多数人工智能(AI)分割工具都侧重于皮质特征,而没有充分评估白质成分。我们测试了整合一种针对白质病变训练的算法是否可以改善FCD II的分割。方法:我们评估了两种人工智能算法MELD Graph(基于表面的FCD分割)和MindGlide(全脑/白质病变分割工具)对49例放射学证实的传导征象的FCD的组合。使用Dice相似系数和分割体积对专家手动注释进行分割精度评估。结果:MELD图检测到病变31例,其中22例病变专家掩膜中包含transmantle征象。其中,明立德检出transmantle征象8例(36%)。平均Dice评分为0.033 (95% CI, 0.013-0.056)。MELD Graph的总体Dice值为0.321,加入MindGlide后增加到0.354。在这8例病例中,它也增加了病变体积,范围为0.028 ~ 4.18 cm³,平均增加了0.77 cm³。讨论:尽管没有使用FCD数据进行训练,但MindGlide与MELD图结合使用时,在FCD II分割方面提供了适度的改进,包括MELD图未捕获的病变深部白质成分。结论:这些发现提供了初步证据,支持在FCD II中考虑顺序皮质和白质分割方法,这可能指导进一步的癫痫特异性AI模型的开发。
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引用次数: 0
Unet-like Transformer with variable shifted windows for low dose CT denoising. 具有可变移位窗口的unet样变压器,用于低剂量CT去噪。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae41c5
Jianfang Li, Fazhi Qi, Yakang Li, Juan Chen, Yijie Pu, Shengxiang Wang

Low-dose computed tomography (LDCT) is crucial for reducing radiation exposure in medical imaging, but it often yields noisy images with artifacts that compromise diagnostic accuracy. Recently, Transformer-based models have shown great potential for LDCT denoising by modeling long-range dependencies and global context. However, standard Transformers incur prohibitive computational costs when applied to high-resolution medical images. To address this challenge, we propose a novel pure Transformer architecture for LDCT image restoration, designed within a hierarchical U-Net framework. The core of our innovation is the integration of an agent attention mechanism into a variable shifted-window design. This agent attention module efficiently approximates global self-attention by using a small set of agent tokens to aggregate and broadcast global contextual information, thereby achieving a global receptive field with only linear computational complexity. By embedding this mechanism within a multi-scale U-Net structure, our model effectively captures both fine-grained local details and long-range structural dependencies without sacrificing computational efficiency. Comprehensive experiments on a public LDCT dataset demonstrate that our method achieves state-of-the-art performance, outperforming existing approaches in both quantitative metrics and qualitative visual comparisons.

低剂量计算机断层扫描(LDCT)对于减少医学成像中的辐射暴露至关重要,但它经常产生带有伪影的噪声图像,从而影响诊断的准确性。最近,基于变压器的模型通过建模长期依赖关系和全局上下文显示出LDCT去噪的巨大潜力。然而,当应用于高分辨率医学图像时,标准变形金刚会产生令人望而却步的计算成本。为了解决这一挑战,我们提出了一种新的纯变压器结构用于LDCT图像恢复,该结构在分层U-Net框架内设计。我们创新的核心是将代理注意力机制集成到可变移动窗口设计中。该智能体关注模块通过使用一小组智能体令牌来聚合和传播全局上下文信息,从而实现仅具有线性计算复杂度的全局接受场,从而有效地近似全局自关注。通过在多尺度U-Net结构中嵌入这种机制,我们的模型在不牺牲计算效率的情况下有效地捕获了细粒度的局部细节和远程结构依赖关系。在公共LDCT数据集上的综合实验表明,我们的方法达到了最先进的性能,在定量指标和定性视觉比较方面都优于现有方法。
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引用次数: 0
Learning the anatomical topology consistency driven by Wasserstein distance for weakly supervised 3D pancreas registration in multi-phase CT images. 学习基于Wasserstein距离驱动的多相CT弱监督三维胰腺配准的解剖拓扑一致性。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae3966
Jiayu Lin, Liwen Zou, Yiming Gao, Liang Mao, Ziwei Nie

Accurate and automatic registration of the pancreas between contrast-enhanced CT (CECT) and non-contrast CT (NCCT) images is crucial for diagnosing and treating pancreatic cancer. However, existing deep learning-based methods remain limited due to inherent intensity differences between modalities, which impair intensity-based similarity metrics, and the pancreas's small size, vague boundaries, and complex surroundings, which trap segmentation-based metrics in local optima. To address these challenges, we propose a weakly supervised registration framework incorporating a novel mixed loss function. This loss leverages Wasserstein distance to enforce anatomical topology consistency in 3D pancreas registration between CECT and NCCT. We employ distance transforms to build the small, uncertain and complex anatomical topology distribution of the pancreas. Unlike conventional voxel-wiseL1orL2loss, the Wasserstein distance directly measures the similarity between warped and fixed anatomical topologies of pancreas. Experiments on a dataset of 975 paired CECT-NCCT images from patients with seven pancreatic tumor types (PDAC, IPMN, MCN, SCN, SPT, CP, PNET), demonstrate that our method outperforms state-of-the-art weakly supervised approaches, achieving improvements of 3.2% in Dice score, reductions of 28.54% in false positive segmentation rate with 0.89% in Hausdorff distance. The source code will be made publicly available athttps://github.com/ZouLiwen-1999/WSMorph.

对比增强CT (CECT)和非对比CT (NCCT)图像之间胰腺的准确和自动配准对于胰腺癌的诊断和治疗至关重要。然而,现有的基于深度学习的方法仍然有限,因为模式之间固有的强度差异会损害基于强度的相似性度量,而且胰腺的小尺寸、模糊的边界和复杂的环境会使基于分割的度量陷入局部最优。为了解决这些挑战,我们提出了一个弱监督注册框架,其中包含了一个新的混合损失函数。这种损失利用沃瑟斯坦距离来加强CECT和NCCT之间三维胰腺配准的解剖拓扑一致性。我们使用距离变换来建立胰腺的小,不确定和复杂的解剖拓扑分布。与传统的体素L1或L2丢失不同,Wasserstein距离直接测量胰腺扭曲和固定解剖拓扑结构之间的相似性。在7种胰腺肿瘤类型(PDAC、IPMN、MCN、SCN、SPT、CP、PNET)患者的975张配对CECT-NCCT图像数据集上进行的实验表明,我们的方法优于最先进的弱监督方法,Dice评分提高了3.2%,假阳性分割率降低了28.54%,Hausdorff距离降低了0.89%。源代码将在https://github.com/ZouLiwen-1999/WSMorph上公开提供。
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引用次数: 0
Interobserver image registration variability impacts on stereotactic arrhythmia radioablation (STAR) target margins. 观察者间图像配准可变性对立体定向心律失常放射消融(STAR)靶边界的影响。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-04 DOI: 10.1088/2057-1976/ae3b44
Jeremy S Bredfeldt, Arianna Liles, Yue-Houng Hu, Dianne Ferguson, Christian Guthier, David Hu, Scott Friesen, Kolade Agboola, John Whitaker, Hubert Cochet, Usha Tedrow, Ray Mak, Kelly Fitzgerald

Background and purpose. To determine the interobserver variability in registrations of cardiac computed tomography (CT) images and to assess the margins needed to account for the observed variability in the context of stereotactic arrhythmia radioablation (STAR).Materials and methods.STAR targets were delineated on cardiac CTs for fifteen consecutive patients. Ten expert observers were asked to rigidly register the cardiac CT images to corresponding planning CT images. Registrations all started with a fully automated registration step, followed by manual adjustments. The targets were transferred from cardiac to planning CT using each of the registrations along with one consensus registration for each patient. The margin needed for the consensus target to encompass each of the observer and fully automated targets was measured.Results.A total of 150 registrations were evaluated for this study. Manual registrations required an average (standard deviation) of 5 min, 55 s (2 min, 10 s) to perform. The automated registration, without manual intervention, required an expansion of 6 mm to achieve 95% overlap for 97% of patients. For the manual registrations, an expansion of 4 mm achieved 95% overlap for 97% of the patients and observers. The remaining 3% required expansions from 4 to 9 mm. An expansion of 3 mm achieved 95% overlap in 88% of the cases. Some patients required larger expansions compared to others and small target volume was common among these more difficult cases. Neither breath-hold nor target position were observed to impact variability among observers. Some of the observers required larger expansions compared to others and those requiring the largest margins were not the same from patient to patient.Conclusion.Registration of cardiac CT to the planning CT contributed approximately 3 mm of uncertainty to the STAR targeting process. Accordingly, workflows in which target delineation is performed on cardiac CT should explicitly account for this uncertainty in the overall target margin assessment.

目的:确定心脏计算机断层扫描(CT)图像配准的观察者间变异性,并评估在立体定向心律失常放射消融术(STAR)中观察到的变异性所需的边缘。方法:连续15例患者在心脏ct上划定STAR靶点。要求10名专家观察员将心脏CT图像严格配准到相应的规划CT图像。注册都开始与一个完全自动化的注册步骤,其次是手动调整。目标从心脏CT转移到计划CT,使用每个注册以及每个患者的一个共识注册。测量了共识目标包含每个观察者和完全自动化目标所需的余量。结果:本研究共评估了150例注册患者。手动注册需要平均(标准偏差)5分55秒(2分10秒)来执行。在没有人工干预的情况下,自动登记需要扩大6毫米,以实现97%患者95%的重叠。对于手动注册,扩大4毫米,97%的患者和观察者实现95%的重叠。剩下的3%需要膨胀4 ~ 9mm。在88%的病例中,3毫米的扩张达到95%的重叠。与其他患者相比,一些患者需要更大的扩张,在这些更困难的病例中,小的靶体积是常见的。没有观察到屏气和目标位置对观察者之间的变异性有影响。一些观察者需要比其他人更大的扩张,而那些需要最大边缘的人在每个病人身上都不一样。结论:心脏CT与计划CT的配准对STAR定位过程的不确定性贡献了约3mm。因此,在心脏CT上进行目标划定的工作流程应明确考虑目标边缘评估中的这种不确定性。
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引用次数: 0
Investigating Functional Near-Infrared Spectroscopy Signal Variability: The Role of Processing Pipelines and Task Complexity. 研究功能性近红外光谱信号变异性:处理管道和任务复杂性的作用。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-03 DOI: 10.1088/2057-1976/ae4105
Joshua Dugdale, Garrett Scott Black, Jordan Alexander Borrell

Functional near-infrared spectroscopy (fNIRS) is a portable, non-invasive brain imaging method with growing applications in neurorehabilitation. However, signal variability, driven in part by differences in data processing pipelines, remains a major barrier to its clinical adoption. This study compares the robustness of two common processing approaches, General Linear Model (GLM) and Block Averaging (BA), in detecting cortical activation across task complexities. Eighteen neurotypical, healthy adults completed a simple hand grasp task and a more complex gross manual dexterity task while fNIRS data were recorded and analyzed using the BA and GLM pipelines. Results revealed significant effects of both pipeline and task complexity on oxygenated and deoxygenated hemoglobin amplitudes. BA produced significantly larger responses than GLM, and complex tasks elicited significantly greater activation than simple tasks. Notably, only the BA-Complex subgroup showed significant differences from all other conditions, suggesting BA more effectively detects task-related hemodynamic changes. These findings emphasize the need for careful analysis pipeline selection to reduce variability and enhance fNIRS reliability in neurorehabilitation research.

功能近红外光谱(fNIRS)是一种便携式、无创的脑成像方法,在神经康复领域的应用越来越广泛。然而,部分由数据处理管道差异驱动的信号变异性仍然是临床应用的主要障碍。本研究比较了两种常见的处理方法,一般线性模型(GLM)和块平均(BA)在检测跨任务复杂性的皮层激活方面的鲁棒性。18名神经正常的健康成人完成了简单的手抓任务和更复杂的总手灵巧任务,同时使用BA和GLM管道记录和分析了fNIRS数据。结果显示,管道和任务复杂性对氧合血红蛋白和脱氧血红蛋白振幅均有显著影响。BA比GLM产生更大的反应,复杂任务比简单任务产生更大的激活。值得注意的是,只有BA复合物亚组与其他所有情况有显著差异,这表明BA更有效地检测与任务相关的血流动力学变化。这些发现强调了在神经康复研究中需要仔细分析管道选择以减少可变性并提高fNIRS的可靠性。
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引用次数: 0
Wireless in-ear EEG system for auditory brain-computer interface applications in adolescents. 无线入耳式脑电系统在青少年听觉脑机接口中的应用。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-03 DOI: 10.1088/2057-1976/ae3b45
Jason Leung, Ledycnarf J Holanda, Laura Wheeler, Tom Chau

In-ear electroencephalography (EEG) systems offer several practical advantages over scalp-based EEG systems for non-invasive brain-computer interface (BCI) applications. However, the difficulty in fabricating in-ear EEG systems can limit their accessibility for BCI use cases. In this study, we developed a portable, low-cost wireless in-ear EEG device using commercially available components. In-ear EEG signals (referenced to left mastoid) from 5 adolescent participants were compared to scalp-EEG collected simultaneously during an alpha modulation task, various artifact induction tasks, and an auditory word-streaming BCI paradigm. Spectral analysis confirmed that the proposed in-ear EEG system could capture significantly increased alpha activity during eyes-closed relaxation in 3 of 5 participants, with a signal-to-noise ratio of 2.34 across all participants. In-ear EEG signals were most susceptible to horizontal head movement, coughing and vocalization artifacts but were relatively insensitive to ocular artifacts such as blinking. For the auditory streaming paradigm, the classifier decoded the presented stimuli from in-ear EEG signals only in 1 of 5 participants. Classification of the attended stream did not exceed chance levels. Contrast plots showing the difference between attended and unattended streams revealed reduced amplitudes of in-ear EEG responses relative to scalp-EEG responses. Hardware modifications are needed to amplify in-ear signals and measure electrode-skin impedances to improve the viability of in-ear EEG for BCI applications.

对于非侵入性脑机接口(BCI)应用,耳内脑电图(EEG)系统比基于头皮的脑电图系统提供了几个实际优势。然而,制造入耳式脑电图系统的困难限制了它们在脑机接口用例中的可访问性。在这项研究中,我们开发了一种便携式,低成本的无线入耳式脑电图设备,使用市售组件。将5名青少年参与者的耳内脑电图信号(参考左侧乳突)与在α调制任务、各种伪像诱导任务和听觉词流BCI范式中同时收集的头皮脑电图进行比较。频谱分析证实,在5名参与者中,有3名参与者的耳内脑电图系统可以捕捉到闭眼放松期间显著增加的α活动,所有参与者的信噪比为2.34。耳内脑电图信号最容易受到水平头部运动、咳嗽和发声伪影的影响,但对眨眼等眼部伪影相对不敏感。对于听觉流范式,分类器仅对5名参与者中的1名从耳内脑电图信号中解码呈现的刺激。参与流的分类未超过偶然级别。对比图显示了有看护流和无看护流之间的差异,显示耳内脑电反应的幅度相对于头皮脑电反应的幅度减小。需要对硬件进行改进,以放大入耳信号和测量电极-皮肤阻抗,以提高入耳脑电图在脑机接口应用中的可行性。
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Biomedical Physics & Engineering Express
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