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Hires-Diagnoser: A dual stream medical image diagnosis framework based on multi-level resolution adaptive sensing. hirres - diagnoser:一种基于多级分辨率自适应传感的双流医学图像诊断框架。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-11 DOI: 10.1088/2057-1976/ae2b74
Si-Chao Zhao, Jun-Jun Chen, Shi-Long Shi, Ge Deng, Xue-Jun Qiu

The enhancement of performance in medical image diagnosis relies on the collaborative representation of features across multiple scales and the ability to accurately capture local lesion characteristics and spatial context. Existing research has shown that conventional convolutional neural networks are constrained by their fixed local receptive field size, which limits their capacity to effectively model global semantic relationships across diverse regions. Although transformers utilizing self-attention mechanisms can capture long-range contextual information, they face challenges in identifying small lesions. To address these issues, this paper presents Hires-Diagnoser, a dual-stream framework for medical image diagnosis that accommodates multiple resolution levels. This framework features a parallel architecture that integrates ConvNeXt and Swin-Transformer branches. The ConvNeXt branch focuses on extracting local texture features through convolutional operations, while the Swin-Transformer branch is responsible for capturing global contextual dependencies via window-based self-attention. Additionally, a cross-modal correlation module (LCA) is introduced to facilitate dynamic interaction and adaptive fusion of features across varying resolutions. Experimental evaluations were conducted on four distinct datasets: RaabinWBC, Brain Tumor MRI, LC25000, and OCT-C8, yielding accuracy rates of 99.45%, 98.01%, 100%, and 97.58%, respectively, thus outperforming existing methods. By leveraging a cross-modal feature interaction mechanism, this framework achieves high performance and meticulous pathological interpretations, providing an effective and highly adaptable solution in the field of medical image diagnosis with significant application potential. .

医学图像诊断性能的提高依赖于跨多个尺度特征的协同表示以及准确捕获局部病变特征和空间背景的能力。现有研究表明,传统的卷积神经网络受限于其固定的局部感受野大小,这限制了其有效地模拟跨不同区域的全局语义关系的能力。尽管利用自我注意机制的变压器可以捕获远程上下文信息,但它们在识别小病变方面面临挑战。为了解决这些问题,本文提出了hire - diagnoser,这是一个用于医学图像诊断的双流框架,可容纳多个分辨率级别。这个框架的特点是一个集成了ConvNeXt和swing - transformer分支的并行架构。ConvNeXt分支专注于通过卷积操作提取局部纹理特征,而swing - transformer分支负责通过基于窗口的自关注捕获全局上下文依赖。此外,引入了一个跨模态相关模块(LCA),以促进不同分辨率下特征的动态交互和自适应融合。在RaabinWBC、脑肿瘤MRI、LC25000和OCT-C8四个不同的数据集上进行实验评估,准确率分别为99.45%、98.01%、100%和97.58%,优于现有方法。该框架利用跨模态特征交互机制,实现了高性能、细致化的病理解释,为医学图像诊断领域提供了一种高效、适应性强的解决方案,具有重要的应用潜力。
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引用次数: 0
Anin vitroinvestigation of 5-aminolevulinic acid and acridine orange as sensitizers in radiodynamic therapy for prostate and breast cancer. 5-氨基乙酰丙酸和吖啶橙作为增敏剂在前列腺癌和乳腺癌放射治疗中的体外研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-11 DOI: 10.1088/2057-1976/ae2688
Tristan K Gaddis, Dusica Cvetkovic, Dae-Myoung Yang, Lili Chen, C-M Charlie Ma

Purpose.Radiodynamic Therapy (RDT) is an emerging technique that enhances the therapeutic effects of radiation by using photosensitizers to amplify tumor cell damage while minimizing harm to normal tissues. Thisin vitroinvestigation compares the biocompatibility and sensitizing efficacy of two candidate photosensitizers, 5-aminolevulinic acid (5-ALA) and acridine orange (AO), in human breast adenocarcinoma (MCF7) and prostate adenocarcinoma (PC3) cell lines.Materials and Methods.MCF7 and PC3 cell lines were cultured and exposed to a range of 5-ALA and AO concentrations to assess biocompatibility using PrestoBlue viability assays. Based on these results, optimal concentrations were selected for irradiation experiments. Cells were then seeded in T-25 flasks and incubated with 5-ALA or AO prior to receiving 2 Gy or 4 Gy of megavoltage photon radiation (18 MV or 45 MV). Clonogenic assays were performed to determine the surviving fractions of the cells.Results. 5-ALA exhibited a broader biocompatibility profile than AO, remaining non-cytotoxic up to 100 μg ml-1. In contrast, AO showed cytotoxic effects above 1 μg ml-1. At 18 MV, limited radiosensitization was observed, except at higher 5-ALA concentrations. However, at 45 MV, both sensitizers significantly reduced cell survival, particularly at 4 Gy. The most pronounced effect was observed with 100 μg ml-15-ALA, which consistently resulted in lower surviving fractions than AO across both cell lines. Each sensitizer demonstrated differing effectiveness depending on the cell line and photon energy used.Conclusions. Both 5-ALA and AO enhanced the cytotoxic effects of radiation, but 5-ALA demonstrated superior biocompatibility and more consistent radiosensitization across both cell lines. Notably, the effectiveness of both sensitizers increased with higher photon energy, reinforcing the importance of beam energy in RDT design. These results underscore the advantages of 5-ALA over AO and highlight the need to optimize both sensitizer selection and radiation energy in clinical applications.

目的:放射动力学治疗(RDT)是一种新兴的技术,通过使用光敏剂来放大肿瘤细胞的损伤,同时最大限度地减少对正常组织的伤害,从而提高辐射的治疗效果。本实验比较了5-氨基乙酰丙酸(5-ALA)和吖啶橙(AO)两种候选光敏剂在人乳腺腺癌(MCF7)和前列腺腺癌(PC3)细胞系中的生物相容性和增敏效果。材料和方法:培养MCF7和PC3细胞系,并将其暴露于不同浓度的5-ALA和AO中,使用PrestoBlue活性测定法评估其生物相容性。在此基础上,选择了辐照实验的最佳浓度。然后将细胞接种于T-25烧瓶中,在接受2 Gy或4 Gy的超高电压光子辐射(18 MV或45 MV)之前,用5-ALA或AO孵育。进行克隆实验以确定细胞的存活部分。结果:5-ALA表现出比AO更广泛的生物相容性,在100 μ g/mL时保持无细胞毒性。相比之下,AO在1µg/mL以上表现出细胞毒作用。在18 MV下,除了较高的5-ALA浓度外,观察到有限的放射增敏。然而,在45毫伏时,两种增敏剂都显著降低了细胞存活率,尤其是在4毫伏时。在100µg/mL 5-ALA中观察到的效果最为明显,在两种细胞系中,其存活分数始终低于AO。每个敏化剂显示不同的有效性取决于细胞系和光子能量的使用。结论:5-ALA和AO都增强了辐射的细胞毒性作用,但5-ALA在两种细胞系中表现出更好的生物相容性和更一致的放射致敏性。值得注意的是,两种敏化剂的效率随着光子能量的增加而增加,这加强了光束能量在RDT设计中的重要性。这些结果强调了5-ALA相对于AO的优势,并强调了在临床应用中优化增敏剂选择和辐射能量的必要性。
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引用次数: 0
OCTSeg-UNeXt: an ultralight hybrid Conv-MLP network for retinal pathology segmentation in point-of-care OCT imaging. octsg - unext:一种用于即时OCT成像视网膜病理分割的超轻型混合卷积- mlp网络。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-11 DOI: 10.1088/2057-1976/ae2127
Shujun Men, Jiamin Wang, Yanke Li, Yuntian Bai, Lei Zhang, Li Huo

To enable efficient and accurate retinal lesion segmentation on resource-constrained point-of-care Optical Coherence Tomography (OCT) systems, we propose OCTSeg-UNeXt, an ultralight hybrid Convolution-Multilayer Perceptron (Conv-MLP) network optimized for OCT image analysis. Built upon the UNeXt architecture, our model integrates a Depthwise-Augmented Scale Context (DASC) module for adaptive multi-scale feature aggregation, and a Group Fusion Bridge (GFB) to enhance information interaction between the encoder and decoder. Additionally, we employ a deep supervision strategy during training to improve structural learning and accelerate convergence. We evaluated our model using three publicly available OCT datasets. The results of the comparative experiments and ablation experiments show that our method achieves powerful performance in multiple key indicators. Importantly, our method achieves this high performance with only 0.187 million parameters (Params) and 0.053 G Floating-Point Operations Per second (FLOPs), which is significantly lower than UNeXt (0.246M, 0.086G) and UNet (17M, 30.8G). These findings demonstrate the proposed method's strong potential for deployment in Point-of-Care Imaging (POCI) systems, where computational efficiency and model compactness are crucial.

为了在资源受限的医疗点光学相干断层扫描(OCT)系统上实现高效、准确的视网膜病变分割,我们提出了octsg - unext,这是一种针对OCT图像分析优化的超轻型混合卷积多层感知器(convl - mlp)网络。基于UNeXt架构,我们的模型集成了深度增强尺度上下文(DASC)模块,用于自适应多尺度特征聚合,以及组融合桥(GFB),以增强编码器和解码器之间的信息交互。此外,我们在训练过程中采用深度监督策略来改善结构学习并加速收敛。我们使用三个公开可用的OCT数据集来评估我们的模型。对比实验和烧蚀实验结果表明,该方法在多个关键指标上都取得了较好的性能。重要的是,我们的方法仅以0.18.7万个参数(Params)和0.053 G浮点运算每秒(FLOPs)实现了这种高性能,显著低于UNeXt (0.246M, 0.086G)和UNet (17M, 30.8G)。这些发现证明了所提出的方法在POCI系统中部署的强大潜力,在POCI系统中,计算效率和模型紧凑性至关重要。
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引用次数: 0
A multi-task cross-attention strategy to segment and classify polyps. 息肉的多任务交叉注意分割和分类策略。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-11 DOI: 10.1088/2057-1976/ae2b78
Franklin Sierra, Lina Ruiz, Fabio Martínez Carrillo

Polyps are the main biomarkers for diagnosing colorectal cancer. Their early detection and accurate characterization during colonoscopy procedures rely on expert observations. Nevertheless, such a task is prone to errors, particularly in morphological characterization. This work proposes a multi-task representation capable of segmenting polyps and stratifying their malignancy from individual colonoscopy frames. The approach employs a deep representation based on multi-head cross-attention, refined with morphological characterization learned from independent maps according to the degree of polyp malignancy. The proposed method was validated on the BKAI-IGH dataset, comprising 1200 samples (1000 white-light imaging and 200 NICE samples) with fine-grained segmentation masks. The results show an average IoU of 83.5% and a recall of 94%. Additionally, external dataset validation demonstrated the model's generalization capability. Inspired by conventional expert characterization, the proposed method integrates textural and morphological observations, allowing both tasks, polyp segmentation and the corresponding malignancy stratification. The proposed strategy achieves the state-of-the-art performance in public datasets, showing promising results and demonstrating its ability to generate a polyp representation suitable for multiple tasks.

息肉是诊断结直肠癌的主要生物标志物。结肠镜检查过程中的早期发现和准确表征依赖于专家观察。然而,这样的任务很容易出错,特别是在形态学表征方面。这项工作提出了一种多任务表示,能够从单个结肠镜检查框架中分割息肉并分层其恶性肿瘤。该方法采用基于多头交叉注意的深度表示,并根据息肉恶性程度从独立地图中学习形态学特征进行细化。该方法在BKAI-IGH数据集上进行了验证,该数据集包含1200个样本(1000个白光成像样本和200个NICE样本),具有细粒度分割掩模。结果显示,平均欠条率为83.5%,召回率为94%。此外,外部数据集验证证明了模型的泛化能力。受传统专家表征的启发,提出的方法将纹理和形态学观察结合起来,允许息肉分割和相应的恶性分层这两个任务。所提出的策略在公共数据集中实现了最先进的性能,显示出有希望的结果,并证明了其生成适合于多任务的息肉表示的能力。
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引用次数: 0
Assessing photoplethysmography signal quality for wearable devices during unrestricted daily activities. 在不受限制的日常活动中评估可穿戴设备的光电容积脉搏波信号质量。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-10 DOI: 10.1088/2057-1976/ae250f
Liang Wei, Yushun Gong, Yunchi Li, Jianjie Wang, Yongqin Li

Photoplethysmography (PPG) is widely used in wearable health monitors for tracking fundamental physiological parameters (e.g., heart rate and blood oxygen saturation) and advancing applications requiring high-quality signals-such as blood pressure assessment and cardiac arrhythmia detection. However, motion artifacts and environmental noise significantly degrade the accuracy of PPG-derived physiological measurements, potentially causing false alarms or delayed diagnoses in longitudinal monitoring cohorts. While signal quality assessment (SQA) provides an effective solution, existing methods show insufficient robustness in ambulatory scenarios. This study concentrates on PPG signal quality detection and proposes a robust SQA algorithm for wearable devices under unrestricted daily activities. PPG and acceleration signals were acquired from 54 participants using a self-made physiological monitoring headband during daily activities, segmented into 35712 non-overlapping 5-second epochs. Each epoch was annotated with: (1) PPG signal quality levels (good: 10817; moderate: 14788; poor: 10107), and (2) activity states classified as sedentary, light, moderate, or vigorous-intensity. The dataset was stratified into training (80%) and testing (20%) subsets to maintain proportional representation. Fourteen discriminative features were extracted from four domains: morphological characteristics, time-frequency distributions, physiological parameters estimation consistency and accuracy, and statistical properties of signal dynamics. Four machine learning algorithms were employed to train models for SQA. The random forest (95.6%) achieved the highest accuracy on the test set, but no significant differences (p = 0.471) compared to support vector machine (95.4%), naive Bayes (94.1%), and BP neural network (95.1%). Additionally, the classification accuracy showed no statistically significant variations (p = 0.648) across light (95.3%), moderate (96.0%), and vigorous activity (100%) when compared to sedentary (95.8%). All features exhibited significant differences (p < 0.05) across high/moderate/poor quality segments in all pairwise comparisons.The results indicate that the proposed feature set achieves robust SQA, maintaining consistently high classification accuracy across all activity intensities. This performance stability enables real-time implementation in wearable devices.

光容积脉搏波(PPG)广泛应用于可穿戴式健康监测仪,用于跟踪基本生理参数(如心率和血氧饱和度),并推进需要高质量信号的应用,如血压评估和心律失常检测。然而,运动伪影和环境噪声显著降低了ppg衍生生理测量的准确性,可能导致纵向监测队列中的误报或延迟诊断。虽然信号质量评估(SQA)提供了有效的解决方案,但现有方法在动态场景下的鲁棒性不足。本研究以PPG信号质量检测为核心,提出了一种鲁棒的SQA算法,适用于日常活动不受限制的可穿戴设备。使用自制生理监测头带采集54名参与者在日常活动中的PPG和加速度信号,将其分割为35712个不重叠的5秒周期。每个epoch注释:(1)PPG信号质量水平(良好:10817;中等:14788;差:10107),(2)活动状态分为平稳、轻度、中度或剧烈。数据集被分层为训练(80%)和测试(20%)子集,以保持比例表示。从形态学特征、时频分布、生理参数估计精度和信号动力学统计特性四个方面提取了14个判别特征。采用四种机器学习算法对SQA模型进行训练。随机森林(95.6%)在测试集上取得了最高的准确率,但与支持向量机(95.4%)、朴素贝叶斯(94.1%)和BP神经网络(95.1%)相比没有显著差异(p=0.471)。此外,与久坐(95.8%)相比,轻度(95.3%)、中度(97.6%)和剧烈运动(100%)的分类准确率没有统计学上的显著差异(p=0.648)。各特征差异均有统计学意义(p
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引用次数: 0
MLGF-GAN: a multi-level local-global feature fusion GAN for OCT image super-resolution. MLGF-GAN:用于OCT图像超分辨率的多级局部-全局特征融合GAN。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-10 DOI: 10.1088/2057-1976/ae2623
Tingting Han, Wenxuan Li, Jixing Han, Jihao Lang, Wenxia Zhang, Wei Xia, Kuiyuan Tao, Wei Wang, Jing Gao, Dandan Qi

Optical coherence tomography (OCT), a non-invasive imaging modality, holds significant clinical value in cardiology and ophthalmology. However, its imaging quality is often constrained by inherently limited resolution, thereby affecting diagnostic utility. For OCT-based diagnosis, enhancing perceptual quality that emphasizes human visual recognition ability and diagnostic effectiveness is crucial. Existing super-resolution methods prioritize reconstruction accuracy (e.g., PSNR optimization) but neglect perceptual quality. To address this, we propose a Multi-level Local-Global feature Fusion Generative Adversarial Network (MLGF-GAN) that systematically integrates local details, global contextual information, and multilevel features to fully exploit the recoverable information in the image. The Local Feature Extractor (LFE) employs Coordinate Attention-enhanced convolutional neural network (CNN) for lesion-focused local feature refinement, and the Global Feature Extractor (GFE) employs shifted-window Transformers to model long-range dependencies. The Multi-level Feature Fusion Structure (MFFS) hierarchically aggregates image features and adaptively processes information at different scales. The multi-scale (×2, ×4, ×8) evaluations conducted on coronary and retinal OCT datasets demonstrate that the proposed model achieves highly competitive perceptual quality across all scales while maintaining reconstruction accuracy. The generated OCT super-resolution images exhibit superior texture detail restoration and spectral consistency, contributing to improved accuracy and reliability in clinical assessment. Furthermore, cross-pathology experiments further demonstrate that the proposed model possesses excellent generalization capability.

光学相干断层扫描(OCT)是一种非侵入性成像方式,在心脏病学和眼科具有重要的临床价值。然而,其成像质量往往受到固有的有限分辨率的限制,从而影响诊断效用。在基于oct的诊断中,提高强调人的视觉识别能力和诊断有效性的感知质量至关重要。现有的超分辨率方法优先考虑重建精度(如PSNR优化),但忽略了感知质量。为了解决这个问题,我们提出了一个多层次的局部-全局特征融合生成对抗网络(MLGF-GAN),该网络系统地集成了局部细节、全局上下文信息和多层次特征,以充分利用图像中的可恢复信息。局部特征提取器(LFE)采用坐标注意力增强卷积神经网络(CNN)对病灶进行局部特征细化,全局特征提取器(GFE)采用移窗变形器对远程依赖关系进行建模。多层特征融合结构(MFFS)对图像特征进行分层聚合,并对不同尺度的信息进行自适应处理。对冠状动脉和视网膜OCT数据集进行的多尺度(×2, ×4, ×8)评估表明,所提出的模型在保持重建准确性的同时,在所有尺度上都具有高度竞争力的感知质量。生成的OCT超分辨率图像具有优异的纹理细节恢复和光谱一致性,有助于提高临床评估的准确性和可靠性。此外,交叉病理实验进一步证明了该模型具有良好的泛化能力。
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引用次数: 0
Unsupervised discovery of ischemic stroke phenotypes from multimodal MRI radiomics. 从多模态MRI放射组学中无监督地发现缺血性卒中表型。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-10 DOI: 10.1088/2057-1976/ae2624
Subasini Ramesh, Snekhalatha Umapathy

Objective.This study presents a fully unsupervised and label-independent radiomic pipeline designed to group different types of ischemic stroke lesions using multimodal Magnetic Resonance Imaging (MRI) . The aim is to address lesion heterogeneity and the absence of annotated outcomes, particularly in settings with limited resources.Approach. Three MRI sequences were analyzed: Fluid Attenuated Inversion Recovery (FLAIR), Apparent Diffusion Coefficient (ADC), and Susceptibility Weighted Imaging (SWI). Lesion identification was performed using percentile-based thresholds, and feature selection was guided by variance filtering with a minimum threshold of 0.001. The complexity of the data was reduced using Uniform Manifold Approximation and Projection (UMAP). Grouping of the lesions was conducted using K-means++, agglomerative hierarchical clustering with Ward linkage, and spectral clustering with a nearest neighbour affinity matrix. The quality and stability of the identified clusters were rigorously evaluated using established internal validation metrics. Feature significance was determined using Kruskal-Wallis testing with Bonferroni correction.Main results. The combination of UMAP with Agglomerative clustering produced the highest silhouette scores of 0.784 for three clusters and 0.778 for five clusters. Consensus stability was optimal, with a Proportion of Ambiguous Clustering score (PAC) of 0.000. Kruskal-Wallis analysis identified 25 significant features for the three-cluster solution and 36 for the five-cluster solution. The most discriminative features originated from ADC and SWI sequences. The five-cluster model revealed finer phenotypic separation and identified five borderline cases with low silhouette coefficients, indicating transitional lesion patterns.Significance. This unsupervised framework enables biologically meaningful lesion stratification without reliance on manual segmentation or outcome labels. It offers a scalable solution for deployment in low-resource environments and provides a robust foundation for future diagnostic and prognostic modelling in stroke imaging.

目的:本研究提出了一个完全无监督和标签无关的放射性管道,旨在利用多模态磁共振成像(MRI)对不同类型的缺血性脑卒中病变进行分组。目的是解决病变异质性和缺乏注释结果的问题,特别是在资源有限的情况下。方法:分析三种MRI序列:流体衰减反转恢复(FLAIR)、表观扩散系数(ADC)和敏感性加权成像(SWI)。病变识别使用基于百分位数的阈值进行,特征选择由方差滤波指导,最小阈值为0.001。采用均匀流形逼近和投影(UMAP)方法降低了数据的复杂度。病变的分组使用k - meme++, Ward链接的聚集分层聚类和最近邻居亲和矩阵的光谱聚类进行。使用已建立的内部验证指标严格评估鉴定集群的质量和稳定性。使用Kruskal-Wallis检验和Bonferroni校正来确定特征显著性。主要结果:UMAP与聚集聚类的结合产生了最高的剪影分数,三个聚类为0.784,五个聚类为0.778。共识稳定性最佳,模糊聚类分数(PAC)的比例为0.000。Kruskal-Wallis分析为三集群解决方案确定了25个重要特征,为五集群解决方案确定了36个重要特征。最具区别性的特征来自ADC和SWI序列。五聚类模型揭示了更精细的表型分离,并确定了5个轮廓系数较低的边缘病例,表明了过渡性病变模式。意义:这种无监督的框架实现了生物学上有意义的病变分层,而不依赖于人工分割或结果标签。它为低资源环境下的部署提供了可扩展的解决方案,并为未来卒中成像的诊断和预后建模提供了坚实的基础。
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引用次数: 0
Dynamic reward-augmented ensemble learning for EEG signal classification in major depressive disorder. 重度抑郁症脑电信号分类的动态奖励增强集成学习。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-10 DOI: 10.1088/2057-1976/ae2333
Jin Xu, Yu Ziwei, Xu Zhaojun

Major Depressive Disorder (MDD) diagnosis through Electroencephalography (EEG) is hindered by the non-stationary characteristics of neural oscillations and the limited adaptability of conventional classification frameworks. Static ensemble models, which rely on predetermined weight assignments, exhibit suboptimal performance in handling EEG variability induced by inter-individual neurophysiological diversity or environmental artifacts. Meanwhile, monolithic deep learning architectures often suffer from inadequate generalizability in clinical practice. To overcome these limitations, we present an Adaptive Agent-Based Ensemble Learning (AABEL) framework that integrates reinforcement learning (RL) with neurocomputational principles. AABEL pioneers three methodological advancements: (1) RL-Driven Adaptive Weighting: A meta-controller dynamically adjusts the contributions of convolutional (CNN), recurrent (GRU), and attention-based (Transformer) submodels through task-oriented reward signals, resolving the inflexibility of static ensemble paradigms. (2) Multiscale Neurodynamic Feature Fusion: Parallel processing branches extract complementary representations of EEG signals, including spatial-spectral patterns (CNN), temporal-contextual dynamics (GRU), and global interdependencies (Transformer), enabling holistic modeling of neuropathological signatures. (3) End-to-End Reward Propagation: An automated optimization pipeline eliminates manual aggregation rules by directly linking reward calculations to model weight updates. Utilizing the OpenNeuro ds003478 dataset, AABEL achieves superior classification metrics (accuracy: 98.06%, F1-score: 98.20%), outperforming static ensembles (e.g., Fuzzy Ensemble by 96% accuracy). The RL reward mechanism significantly enhances noise robustness, improving classification stability by 3.6%. By integrating dynamic reward-augmented learning with neurosignal processing, AABEL establishes a new paradigm for adaptive EEG-MDD diagnostics. This work bridges computational neuroscience and translational neuroengineering, offering a scalable framework for personalized mental health monitoring.

由于神经振荡的非平稳特征和传统分类框架的适应性有限,严重抑郁症(MDD)的脑电图诊断受到阻碍。静态集成模型依赖于预先确定的权重分配,在处理由个体间神经生理多样性或环境伪像引起的脑电图变异时表现不佳。同时,单片深度学习架构在临床实践中往往泛化能力不足。为了克服这些限制,我们提出了一种基于自适应智能体的集成学习(AABEL)框架,该框架将强化学习(RL)与神经计算原理相结合。AABEL率先在方法论上取得了三个进步:(1)rl驱动的自适应加权:元控制器通过面向任务的奖励信号动态调整卷积(CNN)、循环(GRU)和基于注意力的(Transformer)子模型的贡献,解决了静态集成范式的不灵活性问题。(2)多尺度神经动力学特征融合:并行处理分支提取EEG信号的互补表示,包括空间-频谱模式(CNN)、时间-上下文动态(GRU)和全局相互依赖性(Transformer),实现神经病理特征的整体建模。(3)端到端奖励传播:自动优化管道通过直接将奖励计算与模型权重更新联系起来,消除了人工聚合规则。利用OpenNeuro ds003478数据集,AABEL实现了优越的分类指标(准确率:98.06%,f1分数:98.20%),优于静态集成(例如,模糊集成准确率为96%)。RL奖励机制显著增强了噪声鲁棒性,将分类稳定性提高了3.6%。通过将动态奖励增强学习与神经信号处理相结合,AABEL为自适应脑电图- mdd诊断建立了一个新的范例。这项工作连接了计算神经科学和转化神经工程,为个性化的心理健康监测提供了一个可扩展的框架。
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引用次数: 0
DDU-Net: learning complex vascular topologies with KAN-Swin transformers and double dynamic upsampler. DDU-Net:用KAN-Swin变压器和双动态上采样器学习复杂血管拓扑。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-09 DOI: 10.1088/2057-1976/ae2335
Zhenhong Shang, Jun Li

To segment complex vascular topologies in Optical Coherence Tomography Angiography (OCTA), we introduce DDU-Net. This work addresses the theoretical limitations of standard Swin Transformers, whose internal Multi-Layer Perceptron (MLP) blocks use fixed activation functions, restricting their capacity to model non-linear vascular geometries. We propose the KAN-Swin Transformer, an encoder block that replaces this rigid component with an adaptive operator based on Kolmogorov-Arnold Networks (KANs). This new layer features B-spline-based learnable activation functions on network edges, rather than fixed functions on nodes, empowering the encoder to learn geometrically-aware representations specific to intricate morphologies like bifurcations and high-tortuosity segments. The decoder features a novel dual-path Double Dynamic Upsampler Module (DDUM), which processes edge-rich shallow features and semantic deep features in parallel before an attention-based fusion, avoiding feature contamination. An Information Compensation Module (ICM) further recovers fine details using multi-dilation convolutions. For challenging low-contrast Inner Vascular Complex (IVC) images, we introduce a multimodal fusion strategy, where a Feature Alignment Module (FAM) aligns probability maps from auxiliary modalities to enhance the IVC representation. Extensive experiments on five public datasets demonstrate that DDU-Net achieves state-of-the-art performance. Rigorous Wilcoxon signed-rank tests confirm these improvements are statistically significant, establishing DDU-Net as a reliable new baseline for quantitative clinical analysis. The code for DDU-Net is available on GitHub (https://github.com/steve706/DDUM_final).

为了在光学相干断层扫描血管造影(OCTA)中分割复杂的血管拓扑,我们引入了DDU-Net。这项工作解决了标准Swin变压器的理论局限性,其内部多层感知器(MLP)块使用固定的激活函数,限制了它们模拟非线性血管几何形状的能力。我们提出了KAN-Swin变压器,这是一个编码器块,它用基于Kolmogorov-Arnold网络(KANs)的自适应算子取代了这个刚性组件。这个新层在网络边缘上具有基于b样条的可学习激活函数,而不是节点上的固定函数,使编码器能够学习特定于复杂形态(如分叉和高扭曲度分段)的几何感知表示。该解码器采用了一种新颖的双路径双动态上采样模块(DDUM),在基于注意力的融合之前并行处理富边缘的浅层特征和语义深层特征,避免了特征污染。信息补偿模块(ICM)进一步利用多重展开卷积恢复精细细节。对于具有挑战性的低对比度内血管复合体(IVC)图像,我们引入了一种多模态融合策略,其中特征对齐模块(FAM)对齐来自辅助模态的概率图以增强IVC表示。在五个公共数据集上进行的大量实验表明,DDU-Net达到了最先进的性能。严格的Wilcoxon签名秩检验证实了这些改善在统计学上是显著的,将DDU-Net建立为定量临床分析的可靠新基线。DDU-Net的代码可在GitHub (https://github.com/steve706/DDUM_final)上获得。
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引用次数: 0
Insights from a discrete generalized beta distribution analysis of heart rate and blood pressure variability: an integrated approach to study end-stage renal disease. 心率和血压变异性的离散广义β分布分析的见解:研究终末期肾脏疾病的综合方法。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-12-09 DOI: 10.1088/2057-1976/ae250e
Alejandro Aguado-García, Claudia Lerma, Juan C Echeverría, Gertrudis Hortensia González-Gómez, Gustavo Martínez-Mekler

The study of inter-beat intervals (IBI) and systolic blood pressure (SBP) fluctuations is of public health importance. Here we obtain insights about their underlying dynamics by means of an innovative study of the distribution of their rank-ordered registers, provided by fits to the Discrete Generalized Beta Distribution (DGBD), for healthy subjects and patients with end-stage renal disease (ESRD), under an active standing maneuver. SBP and IBI non-invasive time series were recorded during supine position followed by active standing for nine ESRD patients and eighteen age-matched healthy subjects. Once the data were rank ordered, the three parameter DGBD function was fitted through the Levenberg-Marquardt non-linear algorithm. Taking into consideration the statistical interpretations of the parameters, the quantitative exploration of their dependence with regard to the cases examined and changes in body position provided new insights: (i) Evidence for the presence of regulatory mechanisms that preserve the tail symmetry of the IBI distributions in healthy subjects, which are not evident in ESRD patients; (ii) The identification of a more pronounced weight of low-magnitude fluctuations at active standing in the SBP time series, manifested as a broader statistical dispersion of blood pressure values; (iii) A quantitative determination of a more undermined SBP regulation in ESRD. Overall, a better understanding of the statistical behavior of IBI and SBP time series is achieved by means of the DGBD function. Through the variation of its parameters, the DGBD approach has the potential to become a marker for assessing or even predicting the impairment of cardiovascular control mechanisms.

心脏搏动间期(IBI)和收缩压(SBP)波动的研究具有重要的公共卫生意义。在这里,我们通过对健康受试者和终末期肾脏疾病(ESRD)患者在主动站立操作下的秩序寄存器分布的创新研究,获得了对其潜在动力学的见解。记录9名ESRD患者和18名年龄匹配的健康受试者在仰卧位后主动站立时的收缩压和IBI无创时间序列。将数据排序后,通过Levenberg-Marquardt非线性算法拟合三参数DGBD函数。考虑到对这些参数的统计解释,对它们与所检查病例和体位变化之间的依赖关系的定量探索提供了新的见解:i)存在维持健康受试者IBI分布尾部对称性的调节机制的证据,这在ESRD患者中并不明显;ii)在收缩压时间序列中识别出更明显的低量级波动权重,表现为血压值的统计离散度更大;iii) ESRD中更弱的收缩压调节的定量测定。总体而言,通过DGBD函数可以更好地理解IBI和SBP时间序列的统计行为。通过其参数的变化,DGBD方法有可能成为评估甚至预测心血管控制机制损害的标记物。
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Biomedical Physics & Engineering Express
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