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Surface tracking-assisted multi-cycle 4D MRI motion modeling for lung radiotherapy: a preliminary validation study. 表面跟踪辅助多周期4D MRI运动建模用于肺部放疗:初步验证研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-25 DOI: 10.1088/2057-1976/ae45ae
Mumtaz Hussain Soomro, Xiao Liang, Steve Roys, Junliang Xu, Narottam Lamichhane, Jiachen Zhuo, Thomas Ernst, Rao P Gullapalli, Erez Nevo, Amit Sawant

Objective. To validate a respiratory motion model that uses real-time electromagnetic (EM) surface tracking acquired concurrently with time-resolved multi-cycle 4D MRI (TRMC-MRI) to estimate respiration-induced changes within the entire irradiated volume.Approach. Four volunteer participants with no self-reported history of lung cancer or other pulmonary disease underwent TRMC-MRI using a golden-angle stack-of-stars 3D GRE sequence while breathing freely for 2 min. Concurrently, real-time thoracoabdominal surface motion was recorded using four MR-compatible electromagnetic (EM) sensors (EndoScout II). Each MR volume was temporally aligned with corresponding EM data, resulting in 2,000 paired samples per participant. Deformation vector fields (DVFs) were generated through deformable image registration between a selected reference volume and all subsequent volumes. To capture temporal anatomical changes, additional DVFs were computed via consecutive volume-to-volume registration (e.g., volume 2 to 1, 3 to 2, and so on). Two machine learning models were developed to map surface motion to internal DVFs using dimensionality reduction: one employing Principal Component Analysis (PCA), and the other using Independent Component Analysis (ICA). Estimated DVFs were applied to the reference volume to reconstruct dynamic MR images, which were evaluated against ground truth using mutual information (MI) and an image-derived diaphragm profile-based root mean squared error (RMSE).Main results. Our preliminary results demonstrated that both PCA- and ICA-based models achieved comparable MI scores (mean 62%; one-way ANOVA, p > 0.05). Adaptive median filtering significantly improved MI to approximately 66% on average (one-way ANOVA, p < 0.001), outperforming no filtering across all participants (Tukey's HSD, p < 0.05). Diaphragm profile analysis showed close agreement with ground truth, with mean RMSE of 3.77-4.71 mm (SD: 1.07-1.63 mm).Significance. This proof-of-concept study demonstrates the feasibility of a non-invasive respiratory motion model derived from EM-based surface tracking combined with TRMC-MRI, with potential applications in MR-guided and conventional radiotherapy.

目的:验证一种呼吸运动模型,该模型使用实时电磁(EM)表面跟踪与时间分辨多周期四维MRI (TRMC-MRI)同时获得,以估计整个辐照体积内呼吸引起的变化。方法:4名没有自我报告肺癌或其他肺部疾病病史的志愿者在自由呼吸2分钟的情况下,使用金角叠星3D GRE序列进行TRMC-MRI。同时,使用四个磁共振兼容电磁(EM)传感器(EndoScout II)记录实时胸腹表面运动。每个MR体积暂时与相应的EM数据对齐,每个参与者得到2000个配对样本。通过在选定的参考体和所有后续体之间进行可变形图像配准,生成变形向量场(dvf)。为了捕获颞骨解剖变化,通过连续的容积对容积配准(例如,容积2到1,容积3到2,等等)计算额外的dvf。开发了两个机器学习模型,使用降维方法将地表运动映射到内部dvf:一个使用主成分分析(PCA),另一个使用独立成分分析(ICA)。将估计的dvf应用于参考体积来重建动态MR图像,并使用互信息(MI)和基于图像的隔膜轮廓的均方根误差(RMSE)对其进行评估。主要结果:我们的初步结果表明,基于PCA和基于ica的模型都获得了相当的MI分数(平均62%;单向方差分析,p > 0.05)。自适应中位数滤波显著提高MI至平均约66%(单因素方差分析,p < 0.001),优于所有参与者的无滤波(Tukey’s HSD, p < 0.05)。横膈膜剖面分析显示与真实情况非常吻合,平均RMSE为3.77-4.71 mm (SD: 1.07-1.63 mm)。意义:这项概念验证研究证明了基于em的表面跟踪结合TRMC-MRI衍生的无创呼吸运动模型的可行性,在mr引导和常规放疗中具有潜在的应用前景。
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引用次数: 0
Performance evaluation of a flexible GAGG sheet for surface imaging of x-rays from computed tomography (CT) and linear accelerator (LINAC). 用于计算机断层扫描(CT)和直线加速器(LINAC) x射线表面成像的柔性GAGG片的性能评估。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-25 DOI: 10.1088/2057-1976/ae451e
Seiichi Yamamoto, Kohei Nakanishi, Katsunori Yogo, Yumiko Noguchi, Kuniyasu Okudaira, Takayoshi Nakaya, Masao Yoshino, Kei Kamada, Akira Yoshikawa, Teiji Nishio, Jun Kataoka

A flexible scintillator sheet made of Ce-doped Gd3Al2Ga3O12(GAGG) powder mixed with a two-part silicone adhesive enabled high-intensity imaging of proton beams on complex surfaces; however, its effectiveness for x-ray imaging remained unclear. To investigate this, we tested surface imaging with the GAGG sheet for both x-rays from computed tomography (CT) system and high-energy x-rays from linear accelerator (LINAC). For imaging of x-ray beam from CT system, we irradiated a flexible GAGG sheet with 140 kV x-rays, positioning it on a patient bed or curved surface of a cylindrical phantom. The resulting light emission on the GAGG sheet was captured by a CMOS camera. For LINAC x-ray imaging, we irradiated the GAGG sheet with 6 MV x-rays, setting it on a flat phantom or a human head phantom, and again captured the emitted light using a CMOS camera. In both CT and LINAC x-ray imaging, the light produced on the GAGG sheet was successfully captured at intervals as short as 100 ms, enabling real-time tracking of beams. The light output from CT x-rays was more than 50 times higher than that of plastic scintillator, while the light output from LINAC x-rays was 1.2 times higher. Given its adaptability to complex surfaces and high light emission for x-rays as well as real-time imaging capability, the flexible GAGG sheet shows potential for efficient surface beam imaging in both CT and LINAC x-ray applications.

一种由掺铈Gd3Al2Ga3O12(GAGG)粉末与双组分有机硅粘合剂混合制成的柔性闪烁片,实现了质子束在复杂表面上的高强度成像;然而,它对x射线成像的有效性仍不清楚。为了研究这一点,我们用GAGG薄片测试了计算机断层扫描(CT)系统的x射线和直线加速器(LINAC)的高能x射线的表面成像。对于CT系统x射线束的成像,我们用140千伏x射线照射柔性GAGG片,将其放置在病床或圆柱形幻影的曲面上。由此产生的光发射在GAGG片上被CMOS相机捕获。对于LINAC x射线成像,我们用6 MV x射线照射GAGG片,将其置于平面模体或人头模体上,并再次使用CMOS相机捕获发射光。在CT和LINAC x射线成像中,GAGG片上产生的光在短至100毫秒的间隔内被成功捕获,从而实现了光束的实时跟踪。CT x射线的光输出是塑料闪烁体的50倍以上,LINAC x射线的光输出是塑料闪烁体的1.2倍。鉴于其对复杂表面的适应性、x射线的高光发射以及实时成像能力,柔性GAGG片材在CT和LINAC x射线应用中都显示出高效表面束成像的潜力。
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引用次数: 0
A hybrid graph attention network with multi-dimensional features for enhanced EEG-based emotion recognition. 基于脑电图增强情感识别的多维特征混合图注意网络。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-25 DOI: 10.1088/2057-1976/ae462d
S M Atoar Rahman, Md Ibrahim Khalil, Hui Zhou, Ziyun Ding, Yu Guo

Emotion recognition using electroencephalogram (EEG) signals is a growing focus in affective computing due to its wide-ranging applications in human-computer interaction. However, many existing studies process EEG signals as independent one-dimensional time series, overlooking their multidimensional structure and dynamic segment relationships. To address this, we propose a novel Hybrid Graph Attention Network (H-GAT) model that integrates Graph Attention Networks (GAT), Convolutional Neural Networks (CNN), and Long Short-Term Memory (LSTM) networks. Our model effectively captures multi-dimensional dependencies in EEG data by modeling functional relationships between EEG segments, extracting local temporal patterns, and learning temporal dynamics. The EEG signals are transformed into a graph representation, where the adjacency matrix is generated from dynamic similarity measures computed by evaluating Pearson correlations between segment-wise feature vectors. This enables the GAT module to effectively model the functional relationships across EEG segments. Additionally, a CNN layer extracts local temporal patterns, while an LSTM captures the overall temporal dynamics. These features are then fused and passed through a fully connected layer for classification. Extensive experiments conducted on the SEED and DEAP datasets demonstrate the superiority of our model, achieving an average accuracy of 97.89 ± 0.50% for binary, 96.67 ± 0.72% for ternary, on SEED data, and 93.09 ± 1.02% for valence and 93.93 ± 1.14% for arousal on the DEAP dataset. Further, cross-dataset validation experiments confirm the model's strong generalization ability across heterogeneous EEG datasets. These results not only highlight the power of hybrid neural architectures but also demonstrate the model's transformative potential to progress emotion recognition, making it a robust and highly interpretable solution in the rapidly advancing field of affective computing.

由于在人机交互中的广泛应用,利用脑电图(EEG)信号进行情感识别已成为情感计算领域的研究热点。然而,现有的许多研究将脑电信号作为独立的一维时间序列处理,忽略了其多维结构和动态段关系。为了解决这个问题,我们提出了一种新的混合图注意网络(H-GAT)模型,该模型集成了图注意网络(GAT)、卷积神经网络(CNN)和长短期记忆(LSTM)网络。该模型通过建模脑电信号片段之间的功能关系、提取局部时间模式和学习时间动态来有效捕获脑电信号数据中的多维依赖关系。脑电图信号被转换成图形表示,其中邻接矩阵是基于动态相似度量生成的,通过评估分段特征向量之间的Pearson相关性计算。这使得GAT模块能够有效地对EEG段之间的功能关系进行建模。此外,CNN层提取局部时间模式,而LSTM捕获整体时间动态。然后将这些特征融合并通过一个完全连接的层进行分类。在SEED和DEAP数据集上进行的大量实验表明,我们的模型在SEED数据上的平均准确率为二进制97.89±0.50%,三元96.67±0.72%,在DEAP数据上的价态准确率为93.09±1.02%,唤醒准确率为93.93±1.14%。这些结果不仅突出了混合神经架构的强大功能,而且还展示了该模型在推进情感识别方面的变革潜力,使其成为快速发展的情感计算领域中强大且高度可解释的解决方案。
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引用次数: 0
Decoding inner speech with functional connectivity. 用功能连接解码内心语言。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-24 DOI: 10.1088/2057-1976/ae451b
Eduardo Abreu, Pedro Felipe Vazquez, Gabriela Castellano

Background:Inner-Speech (IS) based Brain-Computer Interfaces (BCIs) offer potential communication solutions for individuals with disabilities by decoding brain signals generated during speech imagination. While most IS-BCI systems rely on time-frequency EEG features, this study investigates functional connectivity-specifically, motif synchronization (MS)-to determine whether interactions between brain regions improve the discrimination of imagined words.Methods: We analyzed Electroencephalography (EEG) data from the 'Thinking Out Loud' dataset by Nietoet al2022, involving 10 participants mentally simulating four Spanish words ('Up,' 'Down,' 'Left,' 'Right'). Connectivity matrices were derived using the MS method, and node metrics (strength, PageRank) were calculated across 11 frequency bands. A two-stage classification framework was implemented: a support vector machine (SVM) ranked features by discriminatory power, followed by 5-fold cross-validation to identify optimal feature combinations.Results:The proposed approach achieved an average classification accuracy of 43.7%, comparable to previously reported results on the same dataset.Conclusions:Motif synchronization-based functional connectivity and graph metrics provide informative features for imagined speech BCIs by capturing cross-regional brain interactions. Further work is needed to improve robustness and generalization across sessions and subjects.

背景:基于内言语(IS)的脑机接口(bci)通过解码语音想象过程中产生的大脑信号,为残疾人提供了潜在的通信解决方案。虽然大多数IS-BCI系统依赖于时频脑电特征,但本研究调查了功能连接,特别是基序同步(MS),以确定大脑区域之间的相互作用是否能提高对想象词的识别。方法: ;我们通过 分析了来自“Thinking Out Loud”数据集的脑电数据;结果: ;该模型的平均分类准确率为45.8%。使用相同的数据集,优于之前的三个研究中的两个,同时提供了比第三个研究更大的泛化性(报告更高的准确性)。结论:功能连接特征,特别是基序同步,通过利用跨区域的大脑相互作用,在IS-BCI应用中显示出希望。这种方法促进了神经生理信号分析,可以增强辅助技术和认知研究。然而,需要更大的数据集来提高健壮性和验证可伸缩性。 。
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引用次数: 0
First-in-human evaluation of a microwave impedance-matching metasurface to improve transmission for non-invasive electromagnetic sensing of blood analytes. 微波阻抗匹配超表面的首次人体评估,以提高血液分析物非侵入性电磁传感的传输。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-23 DOI: 10.1088/2057-1976/ae44a1
Eleonora Razzicchia, Helena Cano-Garcia, Efthymios Kallos

Non-invasive biosensing faces major challenges due to impedance mismatch at the skin interface, which causes significant signal reflection and limits power transmission through biological tissues. In this paper, we propose and evaluate a novel, subwavelength-thick impedance-matching metasurface (MTS) designed for direct skin contact to enhance electromagnetic (EM) wave transmission in the Ka-band. Our evaluation includes controlled laboratory experiments and a first-in-human study. Using an in-house developed benchtop system, we performed transmission measurements through aqueous glucose solutions and, most importantly, through the hands of six human volunteers. Our results show that the MTS significantly enhances signal transmission into human skin tissue, yielding an average improvement of up to 5 dB in the 36-37 GHz frequency range compared to the bare-skin condition, thereby improving sensitivity for analyte detection without increasing system size or power consumption. These findings demonstrate the potential of MTS-based impedance-matching layers as practical, integrable solutions to overcome key hardware limitations in wearable biomedical sensing devices. The study represents the first human investigation of an impedance-matching MTS designed to improve microwave signal penetration for non-invasive sensing applications.

非侵入性生物传感面临着主要挑战,因为皮肤界面的阻抗不匹配会导致显著的信号反射,并限制了能量通过生物组织的传输。在本文中,我们提出并评估了一种新型的亚波长厚度阻抗匹配超表面(MTS),设计用于直接皮肤接触,以增强ka波段的电磁波传输。我们的评估包括对照实验室实验和首次人体研究。使用内部开发的台式系统,我们通过葡萄糖水溶液进行传输测量,最重要的是,通过六名志愿者的手进行传输测量。我们的研究结果表明,MTS显著增强了信号传输到人体皮肤组织,在36-37 GHz频率范围内,与裸露皮肤的情况相比,平均提高了5 dB,从而在不增加系统尺寸或功耗的情况下提高了分析物检测的灵敏度。这些发现证明了基于mts的阻抗匹配层作为克服可穿戴生物医学传感设备关键硬件限制的实用、可集成解决方案的潜力。该研究代表了人类对阻抗匹配MTS的首次研究,该MTS旨在提高非侵入性传感应用的微波信号穿透性。
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引用次数: 0
2D boundary shape detection based on camera for enhanced electrode placement in lung electrical impedance tomography. 基于相机的二维边界形状检测在肺电阻抗断层扫描中增强电极放置。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-23 DOI: 10.1088/2057-1976/ae2c8e
Leonard Brainaparte Kwee, Marlin Ramadan Baidillah, Muhammad Nurul Puji, Winda Astuti

Accurate electrode placement is critical for improving image fidelity in lung Electrical Impedance Tomography (EIT), yet current systems rely on simplified circular templates that neglect patient-specific anatomical variation. This paper presents a novel, low-cost pipeline that uses smartphone-based photogrammetry to generate individualized 3D torso reconstructions for boundary-aligned electrode placement. The method includes automated video frame extraction, mesh post-processing, interactive 2D boundary extraction, real-world anatomical scaling, and both manual and automatic electrode detection. We evaluate two photogrammetry pipelines-commercial (RealityCapture) and open-source (Meshroom + MeshLab)-across five subjects including a mannequin and four human participants. Results demonstrate sub-centimeter Mean Absolute Error (MAE 0.42-0.60 cm) and Mean Percentage Error (MPE 8.56-11.51%) in electrode placement accuracy. Repeatability analysis shows good consistency with Coefficient of Variation below 15% for MPE and 19% for MAE. The generated subject-specific finite element meshes achieve 98.79% accuracy in cross-sectional area compared to direct measurements. While the current implementation requires 15-30 minutes processing time and multiple software tools, it establishes a foundation for more precise and personalized bioimpedance imaging that could benefit both clinical EIT and broader applications in neurological and industrial domains.

准确的电极放置对于提高肺电阻抗断层扫描(EIT)的图像保真度至关重要,但目前的系统依赖于简化的圆形模板,忽视了患者特定的解剖变化。本文提出了一种新颖的低成本管道,该管道使用基于智能手机的摄影测量来生成个性化的3D躯干重建,用于边界对齐电极放置。该方法包括自动视频帧提取、网格后处理、交互式二维边界提取、真实世界解剖缩放以及手动和自动电极检测。我们评估了两个摄影测量管道-商业(RealityCapture)和开源(Meshroom + MeshLab) -跨越五个主题,包括一个人体模型和四个人类参与者。结果表明,电极放置精度的平均绝对误差(MAE)为0.42 ~ 0.60 cm,平均百分比误差(MPE)为8.56 ~ 11.51%。重复性分析结果表明,MPE变异系数小于15%,MAE变异系数小于19%,一致性较好。与直接测量相比,生成的特定对象有限元网格在横截面积上的精度达到98.79%。虽然目前的实现需要15-30分钟的处理时间和多个软件工具,但它为更精确和个性化的生物阻抗成像奠定了基础,这将有利于临床EIT以及神经学和工业领域的更广泛应用。
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引用次数: 0
Development of a microdosimetry-based method to derive cell survival rates for evaluating the biological effects of BNCT. 开发一种基于微剂量学的方法,以获得用于评估BNCT生物效应的细胞存活率。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-19 DOI: 10.1088/2057-1976/ae44a2
Ryusuke Yamazaki, Naonori Hu, Takushi Takata, Mai Nojiri, Liang Zhao, Hiroki Tanaka

Boron neutron capture therapy (BNCT) dose calculation often relies on fixed relative biological effectiveness (RBE) and compound biological effectiveness (CBE) values, despite their dependence on beam quality and tumor biology. We developed a microdosimetry-driven framework that predicts cell survival and RBE for BNCT by coupling PHITS lineal energy (T-SED) calculations with the microdosimetric kinetic (MK) model. MK parameters (α0,β,rd,y0) were derived for BNCT relevant cell lines (U87 glioblastoma, NB1RG skin fibroblasts, SAS human squamous carcinoma, and SCC7 murine squamous carcinoma) using low-LET reference datasets curated in the PIDE database and irradiation conditions reproduced in PHITS. The derived parameters successfully reproducedin vitrosurvival curves for various charged particles across different energies, and when applied to neutron fields representative of BNCT systems (Kyoto University Reactor thermal neutron beam, cyclotron-based epithermal neutron source using a beryllium target, and linear accelerator system using a lithium target), the framework also reproduced measuredin vitrodata. Predicted RBE at 10% survival (RBE10) agreed with measurements across cell lines and beam qualities, with only a slight deviation for SCC7 under the CICS spectrum and moderate deviations for SAS due to limited and heterogeneous low-LET datasets in PIDE. This method enables spectrum and cell-line specific estimation of biological effect, supporting replacement of fixed RBE/CBE with spectrum aware quantities to improve BNCT dose prescription and safety. The framework can also guide neutron-beam design by providing preliminary RBE estimates prior to construction of the moderator and beam shaping assembly. Incorporating intracellular boron microdistribution in future work is expected to refine CBE estimates and enhance biological accuracy in BNCT treatment planning. This framework provides a physics-based alternative to fixed RBE/CBE values.

硼中子俘获治疗(BNCT)的剂量计算通常依赖于固定的相对生物有效性(RBE)和复合生物有效性(CBE)值,尽管它们依赖于光束质量和肿瘤生物学。我们开发了一个微剂量驱动的框架,通过将PHITS线性能量(T SED)计算与微剂量动力学(MK)模型相结合,预测BNCT的细胞存活和RBE。利用PIDE数据库中的低LET参考数据集和PHITS中再现的辐照条件,推导出BNCT相关细胞系(U87胶质母细胞瘤、NB1RG皮肤成纤维细胞、SAS人鳞状癌和SCC7小鼠鳞状癌)的MK参数(α 0, β, rd, y)。推导的参数成功地再现了不同能量下各种带电粒子的体外存活曲线,当应用于具有代表性的BNCT系统(京都大学反应堆热中子束,基于回旋加速器的超热中子源,使用铍靶,以及使用锂靶的线性加速器系统)的中子场时,该框架也再现了体外测量数据。10%存活率的预测RBE (RBE₁0)与跨细胞系和光束质量的测量结果一致,CICS光谱下SCC7只有轻微偏差,SAS由于PIDE中有限和异构的低let数据集而有中等偏差。该方法可以对生物效应进行光谱和细胞系特异性估计,支持用光谱感知量替代固定的RBE/CBE,以改善BNCT的剂量处方和安全性。该框架还可以通过在建造慢慢剂和束形组件之前提供初步的RBE估计来指导中子束设计。在未来的工作中纳入细胞内硼微分布有望改善CBE估计并提高BNCT治疗计划的生物学准确性。这个框架为固定的RBE/CBE值提供了一个基于物理的替代方案。
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引用次数: 0
Drug repositioning by belief networks and ensemble method. 基于信念网络和集成方法的药物再定位。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-19 DOI: 10.1088/2057-1976/ae43f0
Manh Hung Le, Nam Anh Dao, Xuan Tho Dang

The approach of drug repositioning, recognized as an efficient strategy to reduce costs and shorten development timelines in the pharmaceutical industry, has garnered significant interest among researchers. With vast datasets rich in valuable insights, machine learning models are not only widely applied but also continuously enhanced to improve accuracy and reliability. However, the process still faces notable challenges due to the complexity of relationships between drugs, diseases, and target proteins within biological networks. This paper focuses on optimizing the predictive performance of drug-disease relationship models by identifying potential connections through a belief network framework. The approach enables selection of the most effective graph path for each drug-disease pair, thus improving prediction accuracy by prioritizing critical biological interactions. Leveraging an ensemble of four classification methods along with a voting mechanism, the belief network ensures high adaptability and reliability across various datasets and disease types. Experimental results demonstrate that proposed analytical framework achieves not only superior performance but also high reliability in identifying potential drug-disease associations. Case studies within the paper further validate the model's capability to discover promising drug candidates for challenging diseases, underscoring the practical significance.

药物重新定位的方法被认为是制药行业降低成本和缩短开发时间的有效策略,引起了研究人员的极大兴趣。随着大量的数据集丰富的有价值的见解,机器学习模型不仅广泛应用,而且不断增强,以提高准确性和可靠性。然而,由于生物网络中药物、疾病和靶蛋白之间关系的复杂性,这一过程仍然面临着显著的挑战。本文主要通过一个信念网络框架来识别潜在的联系,从而优化药物-疾病关系模型的预测性能。该方法能够为每个药物-疾病对选择最有效的图路径,从而通过优先考虑关键的生物相互作用来提高预测准确性。利用四种分类方法的集成和投票机制,信念网络确保了对各种数据集和疾病类型的高适应性和高可靠性。实验结果表明,所提出的分析框架在识别潜在的药物-疾病关联方面不仅具有优越的性能,而且具有高可靠性。本文中的案例研究进一步验证了该模型发现具有挑战性疾病的有希望的候选药物的能力,强调了其实际意义。
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引用次数: 0
Magnetic nanoparticles for cancer theranostics. 磁性纳米颗粒用于癌症治疗。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-02-19 DOI: 10.1088/2057-1976/ae44a0
Jaiden Hart, Linh Nguyen T Tran, Tamara Faranaz Ena, Niranjan A Natekar, Bahareh Rezaei, Yipeng Jiao, Hansong Zuo, Hanlei Wang, Vinit Chugh, Ebrahim Azizi, Ioannis H Karampelas, Rui He, Jenifer Gomez-Pastora, Kai Wu

Magnetic nanoparticles (MNPs) have emerged as a powerful tool in cancer theranostics due to their unique size-dependent magnetic properties, surface functionalization capabilities, and responsiveness to external magnetic fields. This review outlines different types of MNPs, including those composed of pure metals, metal oxides, and metallic alloys, and highlights their size-dependent magnetic behavior, such as superparamagnetism and dynamic magnetizations. We also explore the critical role of surface modification strategies in enhancing MNPs' biocompatibility, colloidal stability, and functional versatility for targeted biomedical applications. The applications of MNPs in cancer therapy are discussed, with a focus on magnetic hyperthermia, drug and gene delivery, and a combination of various therapies. Additionally, we examine their cancer diagnostic roles in imaging techniques such as magnetic resonance imaging (MRI) and magnetic particle imaging (MPI), and emerging magnetic biosensing technologies such as giant magnetoresistance (GMR), magnetic tunnel junction (MTJ), magnetic particle spectroscopy (MPS), and nuclear magnetic resonance (NMR)-based platforms. These advances collectively establish MNPs as key components in the future of personalized cancer diagnosis and treatment.

磁性纳米颗粒(MNPs)由于其独特的尺寸依赖性磁性,表面功能化能力和对外部磁场的响应性而成为癌症治疗的有力工具。本文概述了不同类型的MNPs,包括由纯金属、金属氧化物和金属合金组成的MNPs,并强调了它们的尺寸依赖的磁性行为,如超顺磁性和动态磁化。我们还探讨了表面修饰策略在提高MNPs的生物相容性、胶体稳定性和靶向生物医学应用的功能多功能性方面的关键作用。讨论了MNPs在癌症治疗中的应用,重点是磁热疗,药物和基因传递以及各种治疗方法的组合。此外,我们还研究了它们在成像技术中的癌症诊断作用,如磁共振成像(MRI)和磁颗粒成像(MPI),以及新兴的磁生物传感技术,如巨磁电阻(GMR)、磁隧道结(MTJ)、磁颗粒光谱(MPS)和基于核磁共振(NMR)的平台。这些进展共同使MNPs成为未来个性化癌症诊断和治疗的关键组成部分。
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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 : 2026-02-18 DOI: 10.1088/2057-1976/ae4105
Joshua A Dugdale, Garrett S Black, Jordan A 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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Biomedical Physics & Engineering Express
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