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A simple yet effective microfluidic device for thein-situformation of uniform-sized cell-laden microgels. 一种简单而有效的微流体装置,用于原位形成均匀大小的细胞负载微凝胶。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-18 DOI: 10.1088/2057-1976/ae291b
Hajar Mohamadzade Sani, Seyed Mostafa Hosseinalipour, Sarah Salehi, Koorosh Aieneh

Alginate microgels are attractive platforms for cell encapsulation, yet conventional gelation strategies often lead to heterogeneous crosslinking, unstable droplets, and reduced cell viability. Here, we present a paraffin oil-based flow-focusing microfluidic system that integratesin situandex situgelation to generate structurally homogeneous and monodisperse Ca-ALG microgels. Unlike conventional approaches that often suffer from unstable droplet formation or incomplete gelation, our method reliably produced uniform microgels with coefficients of variation consistently below 5% and maintained spherical morphology across a wide range of flow conditions. Scanning electron microscopy revealed a hierarchical porous architecture that supported nutrient and metabolite transport while providing structural stability. Encapsulated HEK-293 cells remained highly viable for more than two weeks, and spontaneous spheroid formation occurred within 24 h-an outcome rarely achieved in comparable systems and underscoring the functional relevance of this platform. Compared with existing microfluidic methods, this paraffin oil-driven dual gelation strategy offered superior reproducibility, droplet stability, and encapsulation efficiency. This study integrates and optimizes previously reported dual gelation strategies by employing paraffin oil in a flow-focusing device, establishing a simple, practical, and scalable solution to long-standing challenges in microgel-based encapsulation with strong potential to advance 3D culture, tissue engineering, and regenerative medicine.

海藻酸盐微凝胶是一种极具吸引力的细胞包封平台,但传统的凝胶策略往往会导致非均相交联、液滴不稳定和细胞活力降低。在这里,我们提出了一种基于石蜡油基的流动聚焦微流体系统,该系统集成了原位状态,可以生成结构均匀且单分散的Ca-ALG微凝胶。与传统方法不同的是,该方法通常会导致液滴形成不稳定或凝胶不完全,而我们的方法可以可靠地生产出均匀的微凝胶,其变化系数始终低于5%,并且在很宽的流动条件下保持球形形态。扫描电子显微镜显示了分层多孔结构,支持营养和代谢物运输,同时提供结构稳定性。封装的HEK-293细胞在两周内保持高存活率,24小时内发生自发球体形成,这一结果在类似系统中很少实现,并强调了该平台的功能相关性。与现有的微流体方法相比,这种石蜡油驱动的双凝胶策略具有更好的重现性、液滴稳定性和封装效率。本研究通过在流动聚焦装置中使用石蜡油,整合并优化了先前报道的双凝胶策略,建立了一种简单、实用、可扩展的解决方案,解决了微凝胶封装领域长期存在的挑战,具有推进3D培养、组织工程和再生医学的强大潜力。
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引用次数: 0
Real-time wireless signal processing for contactless heart rate monitoring with impulse-radio ultra-wideband radar technology. 脉冲无线电超宽带雷达非接触式心率监测的实时无线信号处理。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-18 DOI: 10.1088/2057-1976/ae183a
Siti Mahfuzah Fauzi, Latifah Munirah Kamarudin, Tiu Ting Yii

Impulse-radio ultra-wideband (IR-UWB) radar technology employs short-duration impulse waves with broad bandwidth for precise detection and tracking, offering a cost-effective, non-invasive alternative for portable heart rate monitoring. Its practical design supports long-term healthcare applications without adverse effects. However, effective implementation necessitates robust signal processing techniques to minimize interference from clutter signals and breathing harmonics, enabling the extraction of the target signal from background noise and interference. This study aims to provide real-time measurements through the implementation of signal processing algorithms such as Fast Fourier Transform (FFT), autocorrelation, and peak finding with a moving average filter (MAF) to extract heartbeat signals from background noise and interference. Algorithms were tuned for range parameters and bandpass filter order, with a Kaiser window-based FIR filter (order 250) selected for testing. The FFT algorithm achieved the highest accuracy of 85.6%, while peak finding with MAF and autocorrelation attained accuracies of 78.5% and 76.6%, respectively. The FFT algorithm demonstrated superior potential for real-time heart rate monitoring and was implemented in a graphical user interface (GUI) for data visualization.

脉冲无线电超宽带(IR-UWB)雷达技术采用短时间脉冲波和宽带宽进行精确检测和跟踪,为便携式心率监测提供了一种经济高效、无创的替代方案。其实用的设计支持长期医疗保健应用,没有副作用。然而,有效的实现需要强大的信号处理技术来减少杂波信号和呼吸谐波的干扰,从而能够从背景噪声和干扰中提取目标信号。本研究旨在通过实现信号处理算法,如快速傅里叶变换(FFT)、自相关和移动平均滤波器(MAF)的峰值发现,从背景噪声和干扰中提取心跳信号,从而提供实时测量。算法根据范围参数和带通滤波器的阶数进行了调整,选择了基于Kaiser窗口的FIR滤波器(阶数为250)进行测试。FFT算法达到了85.6%的最高准确率,而MAF和自相关的峰值发现准确率分别达到了78.5%和76.6%。FFT算法在实时心率监测方面表现出了卓越的潜力,并在图形用户界面(GUI)中实现了数据可视化。
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引用次数: 0
Dual-channel TRCA-net based on cross-subject positive transfer for SSVEP-BCI. 基于SSVEP-BCI跨主体正迁移的双通道TRCA-net。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-18 DOI: 10.1088/2057-1976/ae291c
Hui Xiong, Shuaiqi Chang, Jinzhen Liu

Objective. To enhance the decoding accuracy and information transfer rate of steady-state visual evoked potential-based brain-computer interface (SSVEP-BCI) systems and to reduce inter-subject variability for broader SSVEP-BCI applications, a dual-channel TRCA-net (DC-TRCA-net) method is proposed, based on cross-subject positive transfer. The proposed method incorporates an innovative Transfer-Accuracy-based Subject Selection (T-ASS) strategy and a deep learning network integrated with the SSVEP Domain Adaptation Network (SSVEP-DAN) to enhance SSVEP-BCI decoding performance. The T-ASS strategy constructs contribution scores by computing each subject's self-accuracy and transfer accuracy, and enables effective source subject selection while mitigating negative transfer risks. DC-TRCA-net is further developed to improve model generalization through cross-subject data augmentation. The effectiveness of the proposed method is validated on two large-scale public benchmark datasets. Experimental results demonstrate that DC-TRCA-net outperforms existing networks across both datasets, with particularly substantial performance gains observed in complex experimental scenarios.

为了提高基于视觉诱发电位的稳态脑机接口(SSVEP-BCI)系统的解码精度和信息传输速率,并在更广泛的SSVEP-BCI应用中降低受试者间的可变性,提出了一种基于跨受试者正迁移的双通道TRCA-net (DC-TRCA-net)方法。该方法结合了一种创新的基于迁移精度的主题选择(T-ASS)策略和与SSVEP领域自适应网络(SSVEP- dan)集成的深度学习网络,以提高SSVEP- bci解码性能。T-ASS策略通过计算每个被试的自我准确性和迁移准确性来构建贡献分数,在降低负迁移风险的同时实现有效的源被试选择。进一步发展dc - trca网络,通过跨学科数据增强来提高模型泛化。在两个大型公共基准数据集上验证了该方法的有效性。实验结果表明,DC-TRCA-net在两种数据集上的性能都优于现有网络,在复杂的实验场景中表现出特别显著的性能提升。
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引用次数: 0
Two Stage Fine-Tuned Multimodal Generative AI for Automated ECG Based Cardiovascular Report Generation. 基于ECG的心血管报告自动生成的两阶段微调多模态生成人工智能。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-17 DOI: 10.1088/2057-1976/ae2e01
Raida Hentati, Manel Hentati, Aymen Abid

The increasing prevalence of cardiovascular diseases (CVDs) calls for innovative diagnostic solutions that are both accurate and scalable. ElectroCardioGrams (ECGs) remain central to cardiac assessment: However, manual interpretation is time consuming and error-prone. To address this challenge, we propose a lightweight multimodal generative AI framework capable of automatically interpreting ECG images and producing structured clinical reports. The framework builds upon the SmolVLM-500M-Instruct model, fine-tuned via Quantized Low-Rank Adaptation (QLoRA) to enable efficient deployment on standard hardware. A custom multimodal ECG dataset ,comprising image report pairs curated from authoritative clinical sources and augmented to mitigate class imbalance, served as the foundation for training. The proposed architecture integrates a vision encoder, a cross-modal fusion mechanism, and a language decoder to effectively align visual ECG representations with diagnostic narratives. Experimental evaluations demonstrate significant improvements in BLEU, ROUGE-L, and BERTScore metrics through a two-phase fine-tuning strategy, highlighting the model's ability to generate clinically coherent and semantically rich reports. Overall, this work contributes a scalable, interpretable, and resource efficient AI framework for cardiac diagnostics, bridging the gap between state of the art deep learning research and real-world clinical practice.

心血管疾病(cvd)的日益流行需要既准确又可扩展的创新诊断解决方案。心电图(ECGs)仍然是心脏评估的核心:然而,人工解释既耗时又容易出错。为了应对这一挑战,我们提出了一种轻量级的多模态生成AI框架,能够自动解释ECG图像并生成结构化的临床报告。该框架建立在SmolVLM-500M-Instruct模型之上,通过量化低秩自适应(QLoRA)进行微调,以实现在标准硬件上的有效部署。一个自定义的多模态ECG数据集,包括从权威临床来源整理的图像报告对,并增强以减轻类别不平衡,作为训练的基础。所提出的架构集成了视觉编码器,跨模态融合机制和语言解码器,以有效地将视觉ECG表示与诊断叙述对齐。实验评估表明,通过两阶段的微调策略,BLEU、ROUGE-L和BERTScore指标有了显著改善,突出了该模型生成临床连贯和语义丰富报告的能力。总的来说,这项工作为心脏诊断提供了一个可扩展、可解释和资源高效的人工智能框架,弥合了最先进的深度学习研究与现实世界临床实践之间的差距。
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引用次数: 0
Derivation of tissue properties from basis-vector model weights for dual-energy CT-based Monte Carlo proton beam dose calculations. 基于双能量ct的蒙特卡罗质子束剂量计算中基向量模型权重的组织特性推导。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-17 DOI: 10.1088/2057-1976/ae2622
Maria Jose Medrano, Xinyuan Chen, Lucas Norberto Burigo, Joseph A O'Sullivan, Jeffrey F Williamson

Objective.We propose a novel method, basis vector model material indexing (BVM-MI), for predicting atomic composition and mass density from two independent basis vector model weights derived from dual-energy CT (DECT) for Monte Carlo (MC) dose planning.Approach. BVM-MI employs multiple linear regression on BVM weights and their quotient to predict elemental composition and mass density for 70 representative tissues. Predicted values were imported into the TOPAS MC code to simulate proton dose deposition to a uniform cylinder phantom composed of each tissue type. The performance of BVM-MI was compared to the conventional Hounsfield Unit material indexing method (HU-MI), which estimates elemental composition and density based on CT numbers (HU). Evaluation metrics included absolute errors in predicted elemental compositions and relative percent errors in calculated mass density and mean excitation energy. Dose distributions were assessed by quantifying absolute error in the depth of 80% maximum scored dose (R80) and relative percent errors in stopping power (SP) between MC simulations using HU-MI, BVM-MI, and benchmark compositions. Lateral dose profiles were analyzed at R80 and Bragg Peak (RBP) depths for three tissues showing the largest discrepancies in R80 depth.Main Results. BVM-MI outperformed HU-MI in elemental composition predictions, with mean root-mean-square error (RMSE) of 1.30% (soft tissue) and 0.1% (bony tissue), compared to 4.20% and 1.9% for HU-MI. R80 depth RMSEs were 0.2 mm (soft) and 0.1 mm (bony) for BVM-MI, versus 1.8 mm and 0.7 mm for HU-MI. Lateral dose profile analysis showed overall smaller dose errors for BVM-MI across core, halo, and proximal aura regions.Significance. Fully utilizing the two-parameter BVM space for material indexing significantly improved TOPAS MC dose calculations by factors of 7 to 9 in RMSE compared to the conventional HU-MI method demonstrating the potential of BVM-MI to enhance proton therapy planning, particularly for tissues with substantial elemental variability.

目的:我们提出了一种新的方法——基向量模型物质指数(BVM- mi),用于根据蒙特卡罗(MC)剂量规划中双能CT (DECT)得到的两个独立基向量模型权重预测原子组成和质量密度。方法:BVM- mi采用对BVM权重及其商的多元线性回归来预测70个代表性组织的元素组成和质量密度。将预测值输入到TOPAS MC代码中,模拟质子剂量沉积到由每种组织类型组成的均匀圆柱体幻影中。BVM-MI的性能与传统的Hounsfield单位材料指数法(HU- mi)进行了比较,后者根据CT数(HU)估计元素组成和密度。评估指标包括预测元素组成的绝对误差和计算质量密度和平均激发能的相对百分比误差。剂量分布通过量化使用HU-MI、BVM-MI和基准组合物的MC模拟之间80%最大评分剂量(R80)深度的绝对误差和停止功率(SP)的相对误差百分比来评估。主要结果:BVM-MI在元素组成预测方面优于HU-MI,平均均方根误差(RMSE)为1.30%(软组织)和0.1%(骨组织),而HU-MI的均方根误差为4.20%和1.9%。BVM-MI的R80深度rmse分别为0.2 mm(软)和0.1 mm(骨),HU-MI的R80深度rmse分别为1.8 mm和0.7 mm。横向剂量谱分析显示,BVM- mi在核心、光晕和近端光环区域的总体剂量误差较小 ; ;意义:与传统的HU-MI方法相比,充分利用双参数BVM空间进行物质指数,显著提高了TOPAS MC剂量计算的RMS系数为7至9,这表明BVM- mi有潜力增强质子治疗计划,特别是对于具有大量元素变变性的组织。
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引用次数: 0
An optimized EEG-based intrinsic brain network for depression detection using differential graph centrality. 一种基于脑电图的基于差分图中心性的抑郁症检测的优化脑内网络。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-17 DOI: 10.1088/2057-1976/ae2689
Nausheen Ansari, Yusuf Khan, Omar Farooq

Millions of adults suffer from Major Depressive Disorder (MDD), globally. Applying network theory to study functional brain dynamics often use fMRI modality to identify the perturbed connectivity in depressed individuals. However, the weak temporal resolution of fMRI limits its ability to access the fast dynamics of functional connectivity (FC). Therefore, Electroencephalography (EEG), which can track functional brain dynamics every millisecond, may serve as a diagnostic marker to utilizing the dynamics of intrinsic brain networks at the sensor level. This research proposes a unique neural marker for depression detection by analyzing long-range functional neurodynamics between the default mode network (DMN) and visual network (VN) via optimal EEG nodes. While DMN abnormalities in depression are well documented, the interactions between the DMN and VN, which reflect visual imagery at rest, remain unclear. Subsequently, a novel differential graph centrality index is applied to reduce a high-dimensional feature space representing EEG temporal neurodynamics, which produced an optimized brain network for MDD detection. The proposed method achieves an exceptional classification performance with an average accuracy, f1 score, and MCC of 99.76%, 0.998, and 0.9995 for the MODMA and 99.99%, 0.999 and 0.9998 for the HUSM datasets, respectively. The findings of this study suggests that a significant decrease in connection density within the beta band (15-30 Hz) in depressed individuals exhibits disrupted long-range inter-network topology, which could serve as a reliable neural marker for depression detection and monitoring. Furthermore, weak FC links between the DMN and VN indicate disengagement between the DMN and VN, which signifies progressive cognitive decline, weak memory, and disrupted thinking at rest, often accompanied by MDD.

全球有数百万成年人患有重度抑郁症(MDD)。将网络理论应用于脑功能动力学研究中,通常使用功能磁共振成像(fMRI)模式来识别抑郁症个体的连接紊乱。然而,fMRI较弱的时间分辨率限制了其获取功能连接(FC)快速动态的能力。因此,脑电图(EEG)可以跟踪每毫秒的脑功能动态,可以作为在传感器水平上利用脑内在网络动态的诊断标志。本研究通过分析默认模式网络(DMN)和视觉网络(VN)之间的远程功能神经动力学,提出了一种独特的抑郁检测神经标志物。虽然抑郁症的DMN异常已被充分记录,但DMN和VN之间的相互作用(反映休息时的视觉图像)仍不清楚。随后,采用一种新的差分图中心性指数(differential graph centrality index)对表征脑电图时间神经动力学的高维特征空间进行约化,生成了用于MDD检测的优化脑网络。 ;该方法取得了优异的分类性能,MODMA数据集的平均准确率、f1分数和MCC分别为99.76%、0.998和0.9995,HUSM数据集的平均准确率、f1分数和MCC分别为99.99%、0.999和0.9998。本研究结果表明,抑郁症患者β频段(15-30 Hz)内连接密度显著降低,远程网络间拓扑结构被破坏,这可以作为抑郁症检测和监测的可靠神经标志物。此外,DMN和VN之间的弱FC连接表明DMN和VN之间的分离,这意味着进行性认知能力下降,记忆力弱,休息时思维中断,通常伴有MDD。
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引用次数: 0
Evaluating corticokinematic coherence using electroencephalography and human pose estimation. 利用脑电图和人体姿势估计评估皮质运动一致性。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-16 DOI: 10.1088/2057-1976/ae27d5
E A Lorenz, X Su, N Skjæret-Maroni

Objective.While peripheral mechanisms of proprioception are well understood, the cortical processing of its feedback during dynamic and complex movements remains less clear. Corticokinematic coherence (CKC), which quantifies the coupling between limb movements and sensorimotor cortex activity, offers a way to investigate this cortical processing. However, ecologically valid CKC assessment poses technical challenges. Thus, by integrating Electroencephalography (EEG) with Human Pose Estimation (HPE), this study validates the feasibility and validity of a novel methodology for measuring CKC during upper-limb movements in real-world and virtual reality (VR) settings.Approach.Nine healthy adults performed repetitive finger-tapping (1 Hz) and reaching (0.5 Hz) tasks in real and VR settings. Their execution was recorded temporally synchronized using a 64-channel EEG, optical marker-based motion capture, and monocular deep-learning-based HPE via Mediapipe. Alongside the CKC, the kinematic agreement between both systems was assessed.Main results.CKC was detected using both marker-based and HPE-based kinematics across tasks and environments, with significant coherence observed in most participants. HPE-derived CKC closely matched marker-based measurements for most joints, exhibiting strong reliability and equivalent coherence magnitudes between real and VR conditions.Significance.This study validates a noninvasive and portable EEG-HPE approach for assessing cortical proprioceptive processing in ecologically valid settings, enabling broader clinical and rehabilitation applications.

目标。虽然本体感觉的外周机制已经被很好地理解,但在动态和复杂运动中,其反馈的皮层处理仍然不太清楚。皮质运动一致性(CKC)量化了肢体运动和感觉运动皮层活动之间的耦合,为研究这种皮层处理提供了一种方法。然而,生态有效的CKC评价提出了技术挑战。因此,通过将脑电图(EEG)与人体姿势估计(HPE)相结合,本研究验证了一种在现实世界和虚拟现实(VR)环境中测量上肢运动时CKC的新方法的可行性和有效性。 textit{方法。9名健康成年人在真实和虚拟现实环境中进行了重复的手指敲击(1hz)和伸手(0.5 Hz)任务。使用64通道脑电图、基于光学标记的运动捕捉和通过Mediapipe的基于rgb的单目HPE记录它们的执行时间同步。与CKC一起,评估了两个系统之间的运动学一致性。主要的结果。在任务和环境中使用基于标记和基于hpe的运动学来检测CKC,在大多数参与者中观察到显著的一致性。hpe衍生的CKC与大多数关节的基于标记的测量结果密切匹配,在真实和VR条件下显示出很强的可靠性和等效相干度。意义:本研究验证了一种无创脑电图- hpe方法,用于评估生态有效环境下皮层本体感觉加工,从而实现更广泛的临床和康复应用。
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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 : 2025-12-15 DOI: 10.1088/2057-1976/ae2c8e
Leonard Brainaparte Kwee, Marlin Ramadhan 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
Cross-domain correlation analysis to improve SSVEP signals recognition in brain-computer interfaces. 跨域相关分析提高脑机接口中SSVEP信号的识别。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-15 DOI: 10.1088/2057-1976/ae2772
Kaiwei Hu, Yong Wang, Kaixiang Tu, Hongxiang Guo, Jun Yan

The recognition of steady-state visual evoked potential (SSVEP) signals in brain-computer interface (BCI) systems is challenging due to the lack of training data and significant inter-subject variability. To address this, we propose a novel unsupervised transfer learning framework that enhances SSVEP recognition without requiring any subject-specific calibration. Our method employs a three-stage pipeline: (1) preprocessing with similarity-aware subject selection and Euclidean alignment to mitigate domain shifts; (2) hybrid feature extraction combining canonical correlation analysis (CCA) and task-related component analysis (TRCA) to enhance signal-to-noise ratio and phase sensitivity; and (3) weighted correlation fusion for robust classification. Extensive evaluations on the Benchmark and BETA datasets demonstrate that our approach achieves state-of-the-art performance, with average accuracies of 83.20% and 69.08% at 1 s data length, respectively-significantly outperforming existing methods like ttCCA and Ensemble-DNN. The highest information transfer rate reaches 157.53 bits min-1, underscoring the framework's practical potential for plug-and-play SSVEP-based BCIs.

由于缺乏训练数据和显著的主体间变异性,脑机接口(BCI)系统中稳态视觉诱发电位(SSVEP)信号的识别具有挑战性。为了解决这个问题,我们提出了一个新的无监督迁移学习框架,该框架可以增强SSVEP识别,而无需任何特定主题的校准。我们的方法采用了三个阶段的流水线:(1)预处理,采用相似性感知主题选择和欧几里得对齐来减轻域偏移;(2)结合典型相关分析(CCA)和任务相关分量分析(TRCA)的混合特征提取,提高信噪比和相位灵敏度;(3)加权相关融合实现鲁棒分类。对Benchmark和BETA数据集的广泛评估表明,我们的方法达到了最先进的性能,在15个数据长度下的平均准确率分别为83.20%和69.08%,显著优于现有的方法,如ttCCA和Ensemble-DNN。最高的信息传输速率达到157.53位/分钟,强调了该框架在即插即用的基于ssvep的bci中的实际潜力。
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引用次数: 0
Multisequence MRI-driven assessment of PD-L1 expression in non-small cell lung cancer: a pilot study. 非小细胞肺癌中PD-L1表达的多序列mri驱动评估:一项初步研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-11 DOI: 10.1088/2057-1976/ae2621
Agnese Robustelli Test, Chandra Bortolotto, Sithin Thulasi Seetha, Alessandra Marrocco, Carlotta Pairazzi, Gaia Messana, Leonardo Brizzi, Domenico Zacà, Robert Grimm, Francesca Brero, Manuel Mariani, Raffaella Fiamma Cabini, Giulia Maria Stella, Lorenzo Preda, Alessandro Lascialfari

Objective.Lung cancer remains the leading cause of cancer-related mortality worldwide, with Non-Small Cell Lung Cancer (NSCLC) accounting for approximately 85% of all cases. Programmed cell Death Ligand-1 (PD-L1) is a well-established biomarker that guides immunotherapy in advanced-stage NSCLC, currently evaluated via invasive biopsy procedures. This study aims to develop and validate a non-invasive pipeline for stratifying PD-L1 expression using quantitative analysis of IVIM parameter maps-diffusion (D), pseudo-diffusion (D*), perfusion fraction (pf)-and T1-VIBE MRI acquisitions.Approach.MRI data from 43 NSCLC patients were analysed and labelled as PD-L1 positive (≥1%) or negative (<1%) based on immunohistochemistry exam. After pre-processing, 1,171 radiomic features and 512 deep learning features were obtained. Three feature sets (radiomic, deep learning, and fusion) were tested with Logistic Regression, Random Forest, and XGBoost. Four discriminative features were selected using the Mann-Whitney U-test, and model performance was primarily assessed using the area under the receiver operating characteristic curve (AUC). Robustness was ensured through repeated stratified 5-fold cross-validation, bootstrap-derived confidence intervals, and permutation test.Main Results.Logistic Regression generally demonstrated the highest classification performance, with AUC values ranging from 0.78 to 0.92 across all feature sets. Fusion models outperformed or matched the performance of the best standalone radiomics or deep learning model. Among multisequence MRI, the IVIM-D fusion features yielded the best performance with an AUC of 0.92, followed by IVIM-D* radiomic features that showed a similar AUC of 0.91. For IVIM-pf and T1-VIBE derived features, the fusion model yielded the best AUC values of 0.87 and 0.90, respectively.Significance.The obtained results highlight the potential of a combined radiomic-deep learning approach to effectively detect PD-L1 expression from MRI acquisitions, paving the way for a non-invasive PD-L1 evaluation procedure.

目标。肺癌仍然是全球癌症相关死亡的主要原因,非小细胞肺癌(NSCLC)约占所有病例的85%。程序性细胞死亡配体-1 (PD-L1)是一种成熟的生物标志物,指导晚期非小细胞肺癌的免疫治疗,目前通过侵入性活检程序进行评估。本研究旨在通过定量分析IVIM参数图-扩散(D)、伪扩散(D*)、灌注分数(pf)和T1-VIBE MRI获取,建立和验证一种无创的PD-L1表达分层管道。方法:分析43例NSCLC患者的MRI数据,并将其标记为PD-L1阳性(≥1%)或阴性(主要结果)。逻辑回归通常表现出最高的分类性能,所有特征集的AUC值在0.78到0.92之间。融合模型的表现优于或与最好的独立放射组学或深度学习模型的表现相当。在多序列MRI中,IVIM-D融合特征的AUC最佳,为0.92,其次是IVIM-D*放射学特征,AUC相似,为0.91。对于IVIM-pf和T1-VIBE衍生的特征,融合模型的最佳AUC值分别为0.87和0.90。意义:获得的结果突出了放射学-深度学习联合方法在有效检测MRI采集的PD-L1表达方面的潜力,为非侵入性PD-L1评估程序铺平了道路。
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Biomedical Physics & Engineering Express
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