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Quantifying biological effects of spatially heterogeneous carbon ion dose distributions using EUD. 应用EUD定量研究空间非均质碳离子剂量分布的生物效应。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-22 DOI: 10.1088/2057-1976/ae36b0
Toshiro Tsubouchi, Misato Umemura, Kazumasa Minami, Naoto Saruwatari, Noriaki Hamatani, Masaaki Takashina, Masashi Yagi, Tatsuaki Kanai

This study aimed to experimentally investigate the cell survival responses of tumor and normal cell lines to spatially heterogeneous carbon ion dose distributions with varying peak-to-valley dose ratios (PVDRs) and linear energy transfer (LET) conditions, and to assess the utility of equivalent uniform dose (EUD) as a quantitative metric for analyzing these responses. HSGc-C5 (tumor) and Nuli-1 (normal tissue) cell lines were irradiated using carbon ion beams with different spatial dose patterns (Grid, Frame, Half) and two PVDR levels under low LET conditions (~10 keV μm-1). Additionally, high LET (~50 keV μm-1) Spread Out Bragg Peak (SOBP) Grid patterns were used for the HSGc-C5 cells. Clonogenic survival assays were performed to evaluate biological response. Survival data were analyzed both as a function of delivered physical dose and EUD, calculated using an LQ model-based formulation. Tumor cells exhibited enhanced cytotoxic effects under high LET and high PVDR conditions (the dose required to reach SF = 0.1 was approximately 40% lower at PVDR = 4.0 and 10% lower at PVDR = 1.64 compared with the simulation results), whereas normal cells showed a slight sparing effect under low LET irradiation. Even at the same total dose and PVDR, different spatial dose patterns produced measurable differences in survival, underscoring the impact of spatial heterogeneity. EUD-based analysis further enabled quantitative comparison between heterogeneous and uniform dose distributions. These findings indicate that spatial dose heterogeneity and LET can be leveraged to enhance tumor control while reducing normal tissue damage in carbon ion therapy. The EUD approach may offer a practical tool for treatment plan evaluation in spatially modulated particle therapy.

本研究旨在通过实验研究不同峰谷剂量比(pvdr)和线性能量转移(LET)条件下肿瘤和正常细胞系对空间异质性碳离子剂量分布的细胞存活反应,并评估等效均匀剂量(EUD)作为定量指标分析这些反应的效用。在低LET条件下(~10 keV/μm),用不同空间剂量模式(Grid、Frame、Half)和两种PVDR水平的碳离子束照射HSGc-C5(肿瘤)和Nuli-1(正常组织)细胞系。此外,HSGc-C5细胞采用了高LET (~50 keV/μm)铺展布拉格峰(SOBP)网格模式。进行克隆生存试验以评估生物反应。生存数据作为传递物理剂量和EUD的函数进行分析,使用基于LQ模型的公式计算EUD。肿瘤细胞在高LET和高PVDR条件下表现出增强的细胞毒性作用(与模拟结果相比,PVDR = 4.0时达到SF = 0.1所需的剂量降低了约40%,PVDR = 1.64时降低了10%),而正常细胞在低LET照射下表现出轻微的保留作用。即使在相同的总剂量和PVDR下,不同的空间剂量模式也会产生可测量的生存差异,强调了空间异质性的影响。基于eud的分析进一步实现了非均匀和均匀剂量分布之间的定量比较。这些发现表明,空间剂量异质性和LET可以在碳离子治疗中增强肿瘤控制,同时减少正常组织损伤。EUD方法可以为空间调制粒子治疗的治疗方案评估提供实用的工具。
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引用次数: 0
Haar-initialized parametric wavelet compression with attention-driven lightweight CNN for brain tumor classification on edge devices. 基于注意力驱动轻量级CNN的haar初始化参数小波压缩在边缘设备上的脑肿瘤分类。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-22 DOI: 10.1088/2057-1976/ae3760
Neena K A, Anil Kumar M N

This paper presents a lightweight hybrid framework that integrates a Haar-initialized Parametric Wavelet Transform (PWT) with a Convolutional Neural Network (CNN) enhanced by a multi-head Self-Attention mechanism for efficient and interpretable tumor identification from compressed Magnetic Resonance Imaging (MRI) brain image data. A Parametric Wavelet Transform (PWT) layer, initialized with Haar wavelet filters, performs compression and adaptive feature extraction from brain MRI images, enabling the model to learn optimal frequency decompositions while preserving diagnostic features. MRI images are preprocessed through this PWT layer to selectively extract and stack the approximation and diagonal detail subbands, reducing spatial redundancy and enhancing the representation of diagnostically salient structures. A custom lightweight CNN backbone extracts local features from frequency-domain representations. The integrated self-attention module captures salient features and enhances the discriminative power across wavelet-transformed inputs. Grad-CAM visualizations focussed on explaining the model's predictions and attended to tumor relevant regions. The primary contribution of the proposed model focuses on the overall performance with a classification accuracy of 95.88%, which is higher than the benchmark models of MobileNetV2 (93.1%) and MobileNetV3Small (94.80%) while preserving less trainable parameters and memory footprint. An ablation study confirms the individual contributions towards the overall model performance of PWT compression, the CNN backbone, and the self-attention module. Deploying the model on a Raspberry Pi 5 highlights the potential for real-time, point-of-care, edge-based medical imaging. This work is a pioneering integrated approach incorporating adaptive frequency-domain compression alongside attention-based refinement to produce interpretable and robust designs for embedded implementations of brain tumor classification.

本文提出了一个轻量级的混合框架,该框架集成了haar初始化参数小波变换(PWT)和卷积神经网络(CNN),该网络通过多头自注意机制增强,从压缩的磁共振成像(MRI)脑图像数据中高效和可解释的肿瘤识别。本研究提出了一种参数小波变换(PWT)层,用于脑MRI图像的有效压缩和自适应特征提取。使用Haar小波滤波器初始化,PWT层是可训练的,使模型能够直接从数据中学习最佳频率分解,同时保留关键的诊断特征。通过该PWT层对MRI图像进行预处理,选择性地提取和叠加近似(cA)和对角细节(cD)子带,有效减少空间冗余,增强诊断显著结构的表征,用于下游分类。自定义轻量级CNN主干从频域表示中提取局部特征。同时,集成的自注意模块学习相关模式,提高了小波变换输入之间的判别能力。使用Grad-CAM可视化来解决模型的可解释性,突出肿瘤相关区域,从而提高透明度和临床信任。基于实验结果,该框架的分类准确率达到96.0%,优于MobileNetV2(93.0%)和MobileNetV3Small(95.2%)等基准架构,同时保持更少的可训练参数(约280万)和更快的训练时间。我们进行了消融研究,以评估PWT压缩、CNN主干和自关注模块的各自贡献,确认每个组件在实现最佳性能方面的附加效益。该模型已成功部署在树莓派5上,证实其适合实时、即时护理、基于边缘的医学成像应用。总的来说,这项工作引入了一种自适应频域压缩、注意力驱动的细化和高效嵌入式部署的新组合,用于鲁棒和可解释的脑肿瘤分类。
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引用次数: 0
Creation and clinical utility of a 3D atlas-based model for visualising brain nuclei targeted by MR-guided focused ultrasound thalamotomy for tremor. 磁共振引导聚焦超声丘脑切开术治疗震颤的脑核可视化3D图谱模型的创建和临床应用。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-21 DOI: 10.1088/2057-1976/ae356f
Ayesha Jameel, Joely Smith, Sena Akgun, Peter Bain, Dipankar Nandi, Brynmor Jones, Rebecca Quest, Wladyslaw Gedroyc, Nada Yousif

Magnetic resonance guided focused ultrasound (MRgFUS) thalamotomy is an established treatment for tremor. MRgFUS utilises ultrasound to non-invasively thermally ablate or 'lesion' tremorgenic tissue. The success of treatment is contingent on accurate lesioning as assessed by tremor improvement and minimisation of adverse effects. However, coordinate planning and post-procedure lesion visualisation are difficult as the key targets, cannot be seen on standard clinical imaging. Thus, a computational tool is needed to aid target visualisation. A 3D atlas-based model was created using the Schaltenbrand-Wahren atlas. Key nuclei were manually delineated, interpolated and smoothed in 3D Slicer to create the model. Evaluation of targeting approaches across a seven-year period and patient-specific analyses of tremor treatments were performed. The anatomical position of MRgFUS lesions in the model were compared against varying clinical outcomes. The model provides an anatomical visualisation of how the change in targeting approach led to improved tremor suppression and a reduction in adverse effects for patients. This study demonstrates the successful development of a 3D atlas-based computational model of the brain target nuclei in MRgFUS thalamotomy and its clinical utility for tremor treatment analysis.

磁共振引导聚焦超声(MRgFUS)丘脑切开术是一种成熟的治疗震颤的方法。MRgFUS利用超声非侵入性热消融或“病变”震颤性组织。治疗的成功取决于通过震颤改善和不良反应最小化来评估的准确病变。然而,协调规划和术后病变可视化是困难的,因为关键目标不能在标准的临床影像学上看到。因此,需要一个计算工具来帮助目标可视化。使用Schaltenbrand-Wahren地图集创建了一个基于3D地图集的模型。在3D切片器中手动勾画、插值和平滑关键核以创建模型。对七年期间的靶向治疗方法进行了评估,并对震颤治疗进行了患者特异性分析。将模型中MRgFUS病变的解剖位置与不同的临床结果进行比较。该模型提供了一个解剖学可视化的改变如何靶向方法导致改善震颤抑制和减少患者的不良反应。本研究证明了MRgFUS丘脑切开术中基于三维图谱的脑靶核计算模型的成功开发及其在震颤治疗分析中的临床应用。
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引用次数: 0
Converging small-field electron therapy using 20-25 MeV electrons: a Monte Carlo feasibility study for deep-seated tumors. 20- 25mev电子会聚小场电子治疗:深部肿瘤的蒙特卡罗可行性研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-21 DOI: 10.1088/2057-1976/ae3764
Héctor M Garnica-Garza

Objective. In photon beam radiotherapy, modern delivery techniques have allowed to substantially reduce the beam energy needed for the safe and efficient irradiation of deep-seated targets, with even Co-60 beams being now able to irradiate targets at any depth. The purpose of this work is to determine if for electron radiotherapy, advanced beam delivery techniques allow the use of beam energies currently available in the clinic to treat target sites usually reserved for photons or very high energy charged particles.Methods. Segmented computed tomography images from three sites, brain, lung and prostate, were used to model radiotherapy treatments in two modalities: conformal 3D and converging small field. Monte Carlo simulation was used to calculate the absorbed dose distribution in each patient for conformal 3D very-high energy plans and converging small-field, low energy (< 50 MeV) electrons. For comparison, converging small field plans for 6 MV x-ray beams were also calculated.Main results. It is shown that , for the three test cases simulated in this work, electrons with energies in the 20-25 MeV range delivered via the converging small-field modality can produce treatment plans that rival those obtained via conformal very high energy electrons in terms of target dose homogeneity and sparing of the organs at risk. Furthermore, such electron plans also compare well to those obtained with the photon beams.Significance. While the consensus has always been that to reach deeper tumors, higher electron energies, in the order of 150-200 MeV are needed, this work shows that this is not the case and, when small, circular electron fields are delivered in a converging manner, energies below 30 MeV are enough to properly irradiate tumors located at relevant radiological depths for a variety of treatment sites.

目的:在光子束放射治疗中,现代传输技术已经允许大大减少安全有效地照射深层目标所需的光束能量,甚至Co-60光束现在也能够照射任何深度的目标。这项工作的目的是确定在电子放射治疗中,先进的束流传输技术是否允许使用目前临床上可用的束流能量来治疗通常为光子或高能带电粒子保留的目标部位。方法:利用脑、肺、前列腺3个部位的计算机断层扫描图像,以适形三维和会聚小场两种方式模拟放射治疗。采用蒙特卡罗模拟计算了适形三维甚高能量计划和会聚小场低能(< 50 MeV)电子在每位患者中的吸收剂量分布。为了比较,还计算了6 MV x射线束的会聚小场平面图。主要结果表明,在本研究模拟的三个测试案例中,通过会聚小场模式传递能量在20 -25 MeV范围内的电子,可以产生与通过适形高能电子获得的治疗方案相媲美的治疗方案,在靶剂量均匀性和对危险器官的保护方面。此外,这种电子图也可以与用光子束得到的图进行比较。意义:虽然一直以来的共识是,要到达更深的肿瘤,需要更高的电子能量,大约150 -200 MeV,但这项工作表明情况并非如此,当以会聚方式传递小的圆形电子场时,低于30 MeV的能量足以正确照射位于相关放射深度的肿瘤,用于各种治疗部位。
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引用次数: 0
Emerging roles and mechanisms of nanoparticles in cancer treatment: innovations and horizons. 纳米粒子在癌症治疗中的新作用和机制:创新和前景。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-21 DOI: 10.1088/2057-1976/ae3761
Asmat Ullah, Naveed Ullah Khan, Somia Shehzadi, Haroon Iqbal, Zhi Min Jin

On a global scale, cancer ranks high in mortality rate. There is a need for better technology since the current treatments are insufficient. Several new cancer treatments have been developed directly from the lab to the clinic; however, the manufacturing of nanomedicine products, made possible by the rapid expansion of nanotechnology, holds enormous potential for enhancing cancer treatment approaches. The advent of nanotechnology has opened the door to the possibility of multi-functionality and very precise targeting strategies. They have the potential to enhance the pharmacodynamic and pharmacokinetic profiles of conventional treatment approaches, potentially leading to a reevaluation of the effectiveness of current anti-cancer drugs. A novel technique to enhance traditional onco-immunotherapies, recruiting nanoparticle-based delivery systems, which are adaptable carriers for a broad range of molecular payloads. The delivery of molecular payloads to the target site and their release may be well-regulated. We summarize the latest developments in nanobiotechnology for improving immunotherapies and reshaping tumour microenvironments (TMEs) in this review. The current clinical challenges that impede the real-time implementation of cancer nanomedicine are discussed, and this review study consolidates existing knowledge and recent advancements in the use of nanoparticles for cancer therapy. This provides researchers, clinicians, and students with a comprehensive understanding of the current state of the field. Finally, potential future directions are highlighted to enhance the therapeutic efficacy and facilitate the clinical translation of cancer nanomedicine.

在全球范围内,癌症是死亡率最高的疾病。由于目前的治疗方法不足,因此需要更好的技术。已经有几种新的癌症治疗方法直接从实验室进入了临床,但是纳米技术的快速发展使纳米药物产品的生产成为可能,它在增强癌症治疗方法方面具有巨大的潜力。纳米技术的出现为多功能和非常精确的靶向策略打开了大门。它们有可能增强传统治疗方法的药效学和药代动力学特征,这可能导致对当前抗癌药物有效性的重新评估。一种新的技术来增强传统的肿瘤免疫疗法,招募基于纳米粒子的递送系统,它是广泛的分子有效载荷的适应性载体。分子有效载荷到靶点的传递和释放可能受到很好的调控。本文综述了纳米生物技术在改善免疫治疗和重塑肿瘤微环境(TMEs)方面的最新进展。本文讨论了当前阻碍肿瘤纳米药物实时实施的临床挑战,并对纳米药物用于癌症治疗的现有知识和最新进展进行了综述。这为研究人员、临床医生和学生提供了对该领域现状的全面了解。最后,提出了提高肿瘤纳米药物治疗效果和促进临床转化的潜在发展方向。
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引用次数: 0
Large-scale synthesis of gallic acid-derived carbon quantum dots as efficient photodynamic antimicrobial materials. 没食子酸衍生碳量子点作为高效光动力抗菌材料的大规模合成。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-21 DOI: 10.1088/2057-1976/ae3762
Jiayi Lin, Meina Li, Tianyang Shao, Dan Zhang, Jingzhe Zhang, Songyi Yang, Yue Zhao

Due to bacteria developing resistance to antibiotics, traditional antibacterial strategies face limitations. This study provides a microwave confined heating strategy for achieving gram-scale (yield: 10.8 g/batch) preparation of gallic acid-derived carbon dots (GA-CDs). Transmission electron microscopy results indicate that the GA-CDs possess a relatively small average particle size (2.92 ± 0.27 nm), which facilitates their penetration through the lipid bilayers of bacteria, thereby exhibiting superior antibacterial activity. The systematic analysis results indicate that the GA-CDs are primarily composed ofC, N, and O elements, featuring a highly carbonized graphite core, with some functional groups from the precursor retained on the core surface. Optical tests indicate that the GA- CDs have a maximum absorption wavelength at 457 nm and exhibit excellent photo-responsive reactive oxygen species performance. In addition, GA-CDs presents excellent photostability after continuous ultraviolet irradiation for 130 h. Excitation-independent tests indicate that the GA-CDs possess a stable energy level structure. Finally, experiments demonstrated that the minimum inhibitory concentration of the GA-CDs (16 μg mL-1) is significantly lower than that of pure gallic acid (5 mg mL-1), with a minimum bactericidal concentration of 50 μg mL-1. This work provides a high-yield strategy for fabricating long-wavelength-absorbing, ultrasmall gallic acid derived CDs, offering a promising photodynamic approach to circumvent antibiotic resistance.

在治疗细菌感染的过程中,抗生素的过量使用很容易导致抗生素耐药性的发展,从而造成严重的公共卫生问题。在这种情况下,光介导的抗菌策略由于其快速的杀菌效果和低可能性的诱导抗性而引起了相当大的关注。碳量子点(CQDs)主要由碳、氢和氧组成,由于其低毒性和良好的生物相容性而非常适合作为光动力治疗中的光敏剂。在这项工作中,我们以没食子酸为前驱体,采用微波限制加热策略,在5分钟内(每批6 g)大规模制备了高质量的氮掺杂CQDs (GA-CQDs)。系统分析表明,GA-CQDs具有均匀的粒径分布、稳定的能级结构和良好的光稳定性。值得注意的是,低浓度GA-CQDs在白光led照射下可以高效生成活性氧,从而对变形链球菌表现出优异的光动力抗菌效果,明显高于单独使用没食子酸。综上所述,本工作提供了一种简单的将抗生素转化为CQDs的方法,使其在抗菌药物领域具有更广阔的应用前景。
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引用次数: 0
The influence of transpulmonary pressure on pulmonary vascular resistance -a physiological study using echocardiography during CPAP. 经肺压力对肺血管阻力的影响——CPAP期间超声心动图的生理研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-20 DOI: 10.1088/2057-1976/ae36af
Simon Lindner, Burcu Link, Luisa Sophie Drotleff, Lena Doerflinger, Henning Johann Steffen, Ibrahim Akin, Daniel Duerschmied, Simone Britsch

Higher levels of PEEP are suspected to induce right heart dysfunction due to increased pulmonary vascular resistance (PVR). A U-shaped correlation of PVR and lung volume has been shown in animal models, with PVR increasing with lower and higher lung volumes. This physiological study aims to investigate the relation of transpulmonary pressure and PVR. Recruited healthy subjects underwent mask continuous airway pressure (CPAP), while esophageal manometry and echocardiographic assessment of PVR were performed. Of 43 screened subjects, 20 were identified in whom echocardiographic estimation of PVR was possible. During CPAP, echocardiographic PVR was lowest when transpulmonary pressures were close to 0 mbar, and increased as transpulmonary pressures became more positive, with a positive monotonic correlation (ρ = 0.337, p = 0.012). PVR with a transpulmonary pressure of 0 mbar was similar to PVR without CPAP (1.4 WU (IQR 1.3-1.5) versus 1.2 WU (IQR 1.2-1.5), p = 0.069). Our findings suggest that PVR could be lowest when airway pressure does not exceed intrathoracic pressure. Future studies should investigate this relationship in ventilated patients. Echocardiography might be suitable to monitor PVR in the presence of sufficiently traceable tricuspid regurgitation, however validation in ventilated patients is needed to determine clinical applicability.

由于肺动脉血管阻力(PVR)增加,高水平的PEEP被怀疑会诱发右心功能障碍。动物模型显示PVR与肺体积呈u型相关,肺体积越小,PVR越高。本生理研究旨在探讨经肺压力与PVR的关系。招募的健康受试者接受面罩持续气道压通气(CPAP),同时进行食管压力测量和超声心动图评估PVR。在43名筛选的受试者中,20名被确定为超声心动图估计PVR是可能的。在CPAP期间,超声心动图PVR在经肺压接近0 mbar时最低,随着经肺压的升高而升高,呈正单调相关(ρ = 0.337, p = 0.012)。经肺压力为0 mbar的PVR与未使用CPAP的PVR相似(1.4 WU (IQR 1.3-1.5) vs 1.2 WU (IQR 1.2-1.5), p = 0.069)。我们的研究结果表明,当气道压力不超过胸内压力时,PVR可能最低。未来的研究应在通气患者中调查这种关系。超声心动图可能适用于监测存在充分可追踪的三尖瓣反流的PVR,但需要在通气患者中验证以确定临床适用性。
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引用次数: 0
Explainable AI for pain perception: subject-independent EEG decoding using DeepSHAP and CNNs. 可解释的人工智能疼痛感知:使用DeepSHAP和cnn的受试者独立脑电图解码。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-15 DOI: 10.1088/2057-1976/ae34b4
Feyzi Alkım Aktaş, Aykut Eken, Osman Eroğul

Objective.Accurate classification of pain levels is essential for clinical monitoring, particularly in clinical populations with limited verbal communication. This study explores the feasibility of decoding pain from EEG using explainable deep learning.Approach.EEG signals from 50 subjects exposed to low and high pain stimuli were analyzed. A 1D convolutional neural network (CNN) was trained using leave-one-subject-out (LOSO) cross-validation. To enhance interpretability, DeepSHAP was applied to identify frequency-specific contributions of EEG features to the model's decisions.Main Results.The CNN achieved a classification accuracy of 95.85%, outperforming traditional classifiers (SVM, LDA, RF, etc.) on the same dataset. Explainability analysis showed that increased beta activity (14-15 Hz) was associated with high pain, while alpha (11-12 Hz) theta and delta bands correlated with lower pain states.Significance.This work demonstrates the potential of explainable deep learning in real-time, subject-independent pain decoding. The results support the integration of XAI techniques into EEG-based brain-computer interface (BCI) systems for objective pain monitoring.

目的:疼痛程度的准确分类对临床监测至关重要,特别是在语言交流有限的临床人群中。本研究探讨了利用可解释的深度学习从脑电图中解码疼痛的可行性。方法:分析了50名受试者暴露于低痛刺激和高痛刺激下的脑电图信号。采用LOSO交叉验证法训练一维卷积神经网络(CNN)。为了提高可解释性,我们应用DeepSHAP来识别脑电图特征对模型决策的特定频率贡献。主要结果:CNN在同一数据集上实现了95.85%的分类准确率,优于传统分类器(SVM、LDA、RF等)。可解释性分析表明,增加的β活动(14-15 Hz)与高疼痛状态相关,而α (11-12 Hz) θ和δ波段与低疼痛状态相关。这项工作证明了可解释深度学习在实时、独立于受试者的疼痛解码中的潜力。该结果支持将XAI技术集成到基于脑电图的脑机接口(BCI)系统中,用于客观疼痛监测。
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引用次数: 0
ACFSENet: an adaptive cross-frequency global sparse encoding network for end-to-end EEG emotion recognition. ACFSENet:一种用于端到端EEG情绪识别的自适应跨频全局稀疏编码网络。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-15 DOI: 10.1088/2057-1976/ae33c7
Wenxia Qi, Xingfu Wang, Wenjie Yang, Wei Wang

End-to-end EEG-based emotion recognition is attracting increasing attention due to its potential in human-computer interaction, mental health, and affective brain-computer interfaces (aBCIs). However, most existing methods overlook cross-frequency interactions in neural oscillations and suffer from high computational complexity, limiting their applicability in real-time or resource-constrained scenarios. To this end, we propose ACFSENet, a novel end-to-end neural architecture that integrates adaptive cross-frequency modeling with global sparse encoding. ACFSENet employs an adaptive frequency-aware mechanism to dynamically focus on subject- and task-specific local brain dynamics, thereby enhancing the flexibility of emotional representation. In addition, it incorporates a sparse attention mechanism with a temporal distillation structure to reduce computational complexity while preserving the ability to model long-range temporal dependencies. We evaluate ACFSENet using cross-block validation on three benchmark datasets: DEAP, SEED, and SEED-IV. Results demonstrate that ACFSENet outperforms state-of-the-art methods and achieves a favorable balance between recognition performance and computational efficiency.

端到端基于脑电图的情绪识别由于其在人机交互、心理健康和情感脑机接口(abci)方面的潜力而越来越受到关注。然而,大多数现有方法忽略了神经振荡中的交叉频率相互作用,并且计算复杂度高,限制了它们在实时或资源受限场景中的适用性。为此,我们提出了一种新的端到端神经结构ACFSENet,它将自适应交叉频率建模与全局稀疏编码相结合。ACFSENet采用自适应频率感知机制,动态关注特定于主体和任务的局部大脑动态,从而增强情绪表征的灵活性。同时,它结合了一个具有时间蒸馏结构的稀疏注意力机制,以降低计算复杂性,同时保持对长期时间依赖性的建模能力。我们在三个基准数据集(DEAP、SEED和SEED- iv)上使用跨块验证来评估ACFSENet。结果表明,ACFSENet优于目前最先进的方法,在识别性能和计算效率之间取得了良好的平衡。
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引用次数: 0
Interpretable deep learning for enhanced multi-class classification of gastrointestinal endoscopic images. 基于可解释性深度学习的胃肠内镜图像多类别分类。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-13 DOI: 10.1088/2057-1976/ae2b72
Astitva Kamble, Kushagra Parashar, Elbert Ronnie, Vani Bandodkar, Saakshi Dharmadhikary, Veena Anand, Pradyut Kumar Sanki, Mei X Wu, Biswabandhu Jana

Gastrointestinal (GI) endoscopy serves as a vital tool for assessing the GI tract and diagnosing related disorders. Recent progress in deep learning has shown significant improvements in identifying anomalies using sophisticated models and data augmentation strategies. This study introduces an enhanced approach to improve classification accuracy using 8,000 labeled endoscopic images from the Kvasir dataset, categorized into eight distinct classes. Leveraging EfficientNetB3 as the backbone, our proposed architecture eliminates the reliance on data augmentation while maintaining moderate model complexity. Our model achieves a test accuracy of 94.25%, alongside precision and recall of 94.29% and 94.24%, respectively. Furthermore, Local Interpretable Model-agnostic Explanation (LIME) saliency maps are employed to enhance interpretability by highlighting critical regions in the images that influence model predictions. To facilitate real-world usability, a user-friendly interface was developed using Gradio, enabling users to upload images, generate predictions, view confidence levels, and maintain a history of past results. This work underscores the importance of integrating high classification accuracy, interpretability, and accessibility in advancing medical imaging applications.

胃肠道内窥镜检查是评估胃肠道和诊断相关疾病的重要工具。深度学习的最新进展表明,在使用复杂模型和数据增强策略识别异常方面取得了重大进展。本研究介绍了一种增强的方法来提高分类精度,使用来自Kvasir数据集的8000个标记内窥镜图像,分为八个不同的类别。利用EfficientNetB3作为主干,我们提出的体系结构消除了对数据扩展的依赖,同时保持了适度的模型复杂性。我们的模型达到了94.25%的测试准确率,准确率和召回率分别为94.29%和94.24%。此外,局部可解释模型不可知解释(LIME)显著性图通过突出图像中影响模型预测的关键区域来增强可解释性。为了促进现实世界的可用性,使用gradient开发了一个用户友好的界面,使用户能够上传图像,生成预测,查看置信度,并维护过去结果的历史记录。这项工作强调了在推进医学成像应用中集成高分类准确性、可解释性和可访问性的重要性。
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Biomedical Physics & Engineering Express
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