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Computational modeling of paresthesia generated by SCS using a percutaneous lead: a proof-of-concept theoretical model based on an arbitrary somatotopic distribution. 利用经皮导线对SCS产生的感觉异常进行计算建模:基于任意体位分布的概念验证理论模型。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-16 DOI: 10.1088/2057-1976/ae4df4
Tom Le Tutour, Karim El Houari, Maxime Billot, Michel Rochette, Arnaud Germaneau, Philippe Rigoard

Objectives.Chronic pain affects over two billion people worldwide, significantly reducing quality of life and placing a substantial burden on healthcare systems and society. Neuropathic painoriginates from lesions of the central or peripheral nervous system. Despite pharmacological, surgical and paramedical management, many patients continue experiencing persistent pain. Epidural Spinal Cord Stimulation (SCS) has become an effective alternative treatment for neuropathic pain. That said, SCS efficacy is dependent on many parameters, including optimized spatial targeting based on paresthesia generated by chosen and tuned SCS. In this context, iterative programming designed to optimize targeting and pain relief puts a major burden on health-care professionals. The leveraging of FEM and other computational techniques would enhance understanding of SCS mechanisms, optimize parameter selection, and ultimately improve patient outcomes.Approach. In this work, we present parametrizable computational model that facilitates the study of computed paresthesia. This model used the typical workflow of two-step simulation often employed for electrical stimulation of neural structures. First, the electrical field generated within the spinal cord and its surroundings was computed using the Finite-Element Method (FEM). The effects this electric field had on axons were then assessed with Ordinary Differential Equations (ODEs). The geometry of this model was based on a section of the PAM50 template of the spinal cord and its surroundings. Somatotopy of the spinal cord is explicitly represented by the fiber's trajectories. Aβmyelinated fibers of the dorsal columns and roots are modelled using the McIntyre-Richardson-Grill (MRG) double cable model.Main results.The computational model produced paresthesia maps which generally followed expected projections in terms of lead laterality and rostro-caudal placement in paresthesia. Some interesting effects of rostro-caudal lead placement ata vertebral level were also observed and will be discussed.Significance. The computed paresthesia maps, which can be directly correlated to felt or measured paresthesia maps, represent a step towards clinical validation of in silico computational models of SCS.

目标:慢性疼痛影响全世界超过20亿人,显著降低生活质量,给卫生保健系统和社会带来沉重负担。神经性疼痛源于中枢或周围神经系统的损伤。尽管有药理学、外科和辅助医疗管理,许多患者仍然经历持续的疼痛。硬膜外脊髓刺激(SCS)已成为神经性疼痛的有效替代治疗方法。也就是说,SCS的功效取决于许多参数,包括基于选择和调整的SCS产生的感觉异常的优化空间靶向。在这方面,旨在优化目标和减轻疼痛的反复规划给保健专业人员带来了沉重负担。利用FEM和其他计算技术将加强对SCS机制的理解,优化参数选择,并最终改善患者的预后。方法: ;在这项工作中,我们提出了可参数化的计算模型,促进了计算机感觉异常的研究。该模型采用了电刺激神经结构的典型两步模拟工作流程。首先,采用有限元法计算脊髓及其周围产生的电场;然后用常微分方程(ode)评估电场对轴突的影响。该模型的几何形状基于脊髓及其周围PAM50模板的一部分。脊髓的躯体切除是由纤维的轨迹明确表示的。使用McIntyre-Richardson-Grill (MRG)双缆模型对背柱和根的a -髓鞘纤维进行建模。主要结果:计算模型产生的感觉异常图通常遵循感觉异常中导联偏侧性和弓尾侧位置的预期投影。我们还观察到在椎体水平放置头尾铅的一些有趣效果,并将对此进行讨论。意义: ;计算的感觉异常图可以直接与感觉或测量的感觉异常图相关,代表了向临床验证SCS计算机计算模型迈出的一步。 。
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引用次数: 0
Cervical implant fixation: a topical review of techniques and their importance. 颈椎植入物固定:技术及其重要性的局部回顾。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-13 DOI: 10.1088/2057-1976/ae4d4c
Subhasish Halder, Palash Biswas, Shishir Kumar Biswas, Anindya Malas, Jayanta Kumar Biswas

Cervical implant fixation is a critical surgical intervention for stabilizing the cervical spine, often necessitated by trauma, degenerative diseases, or spinal deformities. While spinal disc disease has historically been treated with fusion-based procedures, there has been a recent surge of interest in motion-preserving disc arthroplasties. The present study provides a topical narrative review of selected and recent literature on cervical implant fixation techniques, including anterior and posterior approaches, implant materials, biomechanical considerations, and reported clinical outcomes. Traditional fusion-based procedures have long been used to treat cervical disc disease, while recent years have seen increasing interest in motion-preserving techniques such as cervical disc arthroplasty. Developments in implant design and fixation strategies have contributed to improved radiographic and functional results compared with earlier systems, although each technique presents specific benefits and limitations. Cervical implant fixation has evolved into a highly sophisticated discipline that includes anterior, posterior, and motion-preserving techniques for treating a wide range of spinal conditions. This review summarises recent advances, common complications, and emerging trends in cervical fixation, and highlights existing research gaps to support future investigation and clinical decision-making.

颈椎内固定是稳定颈椎的重要手术干预,通常是外伤、退行性疾病或脊柱畸形所必需的。虽然椎间盘疾病历来以融合为基础的手术治疗,但最近对保持运动的椎间盘置换术的兴趣激增。本研究对颈椎植入物固定技术的部分文献和近期文献进行了综述,包括前路和后路入路、植入物材料、生物力学方面的考虑以及已报道的临床结果。传统的基于融合的手术长期用于治疗颈椎间盘疾病,而近年来人们对保持运动的技术(如颈椎间盘置换术)越来越感兴趣。与早期的系统相比,种植体设计和固定策略的发展有助于改善放射学和功能结果,尽管每种技术都有特定的优点和局限性。颈椎内固定已经发展成为一门高度复杂的学科,包括治疗各种脊柱疾病的前路、后路和运动保持技术。本文综述了颈椎固定的最新进展、常见并发症和新趋势,并强调了现有的研究差距,以支持未来的研究和临床决策。
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引用次数: 0
Effects of seasonal changes on the skin surface electrical susceptance. 季节变化对皮肤表面电纳的影响。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-13 DOI: 10.1088/2057-1976/ae4df1
Ardawan A Youssif, Dindar S Bari, Shanaz D Girgis, Rawaz A Abdulkarim, Ayat L Farouk, Haval Y Yacoob Aldosky, Ørjan G Martinsen

Human skin is continuously exposed to varying environmental conditions. While it is known that the skin's biophysical properties are influenced by seasonal changes, the impact of these conditions on its electrical characteristics-particularly skin surface susceptance-remains unclear. Therefore, this study aimed to investigate the effects of seasonal variations on skin surface susceptance using a low-frequency electrical technique. The investigation was performed on 46 (23 males and 23 females) apparently healthy volunteers. Readings of electrical skin surface susceptance were taken from the volar forearm in all four seasons between autumn 2024 and June 2025. Seasonal changes had a significant effect on skin surface susceptance, with the highest values recorded in summer and the lowest in winter. In addition, a highly significant (p< 0.05,r= 0.98) positive correlation was established between seasonal temperature and the skin surface susceptance, and a significant (p< 0.05,r= -0.97) negative correlation between seasonal temperature and the skin surface susceptance was obtained. No significant differences were observed between male and female groups in response to seasonal changes, indicating that gender is an unimportant factor in this context. Our results suggest that seasonal variations should be taken into consideration when using the skin electrical technique. In addition, this will be relevant in the applications of skin sensors and dermatology.

背景/目的:人体皮肤持续暴露在不同的环境条件下。虽然我们知道皮肤的生物物理特性受到季节变化的影响,但这些条件对皮肤电特性的影响——尤其是皮肤表面的电敏感性——仍然不清楚。因此,本研究旨在利用低频电技术研究季节变化对皮肤表面电纳的影响。方法:对46名健康志愿者(男23名,女23名)进行调查。从2024年秋季到2025年6月的四个季节,从前臂掌侧采集皮肤表面电纳的读数。结果:季节变化对皮肤表面电纳有显著影响,夏季最高,冬季最低。结论:我们的结果表明,在使用皮肤电技术时应考虑季节变化。此外,这将与皮肤传感器和皮肤病学的应用有关。
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引用次数: 0
Conversion factors between whole-body and organ doses in interventional cardiology: an italian multicentre study. 介入心脏病学中全身和器官剂量的转换因子:一项意大利多中心研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-13 DOI: 10.1088/2057-1976/ae4df2
Carlo Giordano, Sara Vitali, Maria Garioni, Jessika Camatti, Alessandra Terulla, Piergiorgio Marini, Loredana D'Ercole

The increasing use of ionizing radiation in interventional cardiology raises the need for reliable estimates of operator exposure, particularly for organs such as the eyes and hands. This retrospective study analyzed personal dosimetry records from interventional cardiologists working in three Italian hospitals. A total of 1,897 valid dosimetry measurements were analyzed across three centres, including whole-body Hp(10), eye lens Hp(3), and extremity Hp(0.07) doses. We derived the following conversion factors by using the third quartile of the ratio distributions from all centres: Hp(3)/Hp(10):1.1 and Hp(0.07)/Hp(10): 2.7. However, our data show high variability across all centres, which probably reflects differences in procedure complexity and operator positioning observed in routine interventional cardiology practice. These findings support the use of whole-body dosimetry as a practical surrogate for organ dose assessment when eye lens or extremity monitoring is unavailable. The proposed conversion factors (Hp(3)/Hp(10) = 1.1 and Hp(0.07)/Hp(10) = 2.7) provide a conservative and field-applicable tool to retrospectively estimate lens and hand doses in cases of incomplete dosimetry.

介入心脏病学中越来越多地使用电离辐射,增加了对操作人员暴露量的可靠估计的需要,特别是对眼睛和手等器官。这项回顾性研究分析了意大利三家医院的介入性心脏病专家的个人剂量学记录。我们分析了三个中心共1,897个有效剂量测量值,包括全身Hp(10)、眼晶体Hp(3)和四肢Hp(0.07)剂量。 ;我们利用所有中心比率分布的第三个四分位数推导出以下转换因子:Hp(3)/Hp(10):1.1和Hp(0.07)/Hp(10): 2.7。然而,我们的数据显示所有中心的差异很大,这可能反映了常规介入心脏病学实践中观察到的手术复杂性和操作员定位的差异。这些发现支持在没有晶状体或四肢监测的情况下,使用全身剂量法作为器官剂量评估的实用替代方法。建议的转换因子(Hp(3)/Hp(10)=1.1和Hp(0.07)/Hp(10)=2.7)提供了一种保守的、适用于现场的工具,用于在剂量测定不完全的情况下回顾性估计透镜和手剂量。& # xD。
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引用次数: 0
Artificial intelligence for T classification of TNM breast cancer in MRI imaging: enabling precision in treatment decisions. 人工智能在MRI影像中对TNM乳腺癌进行T分类:使治疗决策更加精确。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-13 DOI: 10.1088/2057-1976/ae4df0
Hamida Romdhane, Dorra Ben-Sellem

The integration of artificial intelligence (AI) into breast cancer management presents transformative potential for both diagnosis and treatment planning. This study introduces a resilient AI framework designed to accomplish, from breast MRI images, two critical tasks: (1) accurate and automated segmentation of breast tumors, and (2) T-stage classification of breast cancer in accordance with the 2018 eighth edition of TNM staging system.The dataset comprises sagittal MRI scans utilized for tumor segmentation through a U-Net architecture, which yielded high precision and specificity.Segmented images were utilized as input to a ResNet-50 convolutional neural network, which demonstrated robust classification performance across all T stage categories (T1mi, T1a, T1b, T1c, T2, T3, T4a, T4b, T4c, and T4d), highlighting its high precision, specificity, and F1-scores in accurately distinguishing tumor progression.The T-stage serves as a critical determinant in selecting appropriate treatment modalities, ranging from surgery and chemotherapy to radiotherapy or palliative care, and in estimating prognosis. Our classification results underscore the clinical significance of tumor size progression in early stages (T1mi-T2), where each incremental increase in diameter is associated with poorer outcomes. For advanced categories (T3-T4a-T4d), our model consistently highlighted a uniformly poor prognosis, irrespective of tumor dimensions, reinforcing the pivotal role of anatomical invasion in staging and therapeutic decisions. This AI framework represents a significant advancement in breast cancer automation, enabling more precise staging and fostering improved clinical decision-making and patient outcomes.

将人工智能(AI)整合到乳腺癌管理中,在诊断和治疗计划方面都具有变革性潜力。本研究引入了一个弹性人工智能框架,旨在从乳房MRI图像中完成两项关键任务:(1)准确、自动地分割乳房肿瘤;(2)根据2018年第八版TNM分期系统对乳腺癌进行t期分类。该数据集包括矢状面MRI扫描,用于通过U-Net架构进行肿瘤分割,这产生了高精度和特异性。从分割切片生成的3D重建显着提高了肿瘤边缘的可视化,提供了关键的空间洞察,支持更有效的治疗计划。将分割的图像作为ResNet-50卷积神经网络的输入,该网络在所有T分期类别(T1mi, T1a, T1b, T1c, T2, T3, T4a, T4b, T4c和T4d)中表现出稳健的分类性能,突出了其高精度,特异性和f1评分准确区分肿瘤进展。t期是选择合适的治疗方式(从手术和化疗到放疗或姑息治疗)和估计预后的关键决定因素。我们的分类结果强调了早期(T1mi-T2)肿瘤大小进展的临床意义,其中直径的每一次增加都与较差的预后相关。对于晚期类型(T3-T4a-T4d),我们的模型一致强调预后不良,无论肿瘤大小如何,这加强了解剖侵犯在分期和治疗决策中的关键作用。这一人工智能框架代表了乳腺癌自动化的重大进步,实现了更精确的分期,并促进了临床决策和患者预后的改善。
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引用次数: 0
MTC-MSFFNet: a multi-task classification model based on multi-source feature fusion for Alzheimer's disease. MTC-MSFFNet:基于多源特征融合的阿尔茨海默病多任务分类模型
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-12 DOI: 10.1088/2057-1976/ae510f
Junxi Gao

Predicting the stages of Alzheimer's disease (AD) is crucial for delaying disease progression and enabling early intervention. A large amount of existing research focuses on the classification of cognitively normal (CN), mild cognitive impairment (MCI), and AD. However, the two subtypes of MCI-stable mild cognitive impairment (sMCI) and progressive mild cognitive impairment (pMCI)-should not be overlooked. Therefore, this study aims to accurately diagnose the disease stage of patients (CN, MCI, or AD) and further distinguish between sMCI and pMCI. In this work, a multi-task classification model based on multi-source feature fusion, termed MTC-MSFFNet, is proposed to accomplish two diagnostic tasks: (1) CN vs. MCI vs. AD, and (2) sMCI vs. pMCI.We select the hippocampus (HIP) and entorhinal cortex (ERC) as feature maps for the three-class task, and the hippocampus (HIP) and gray matter (GM) for the sMCI/pMCI task. The MTC-MSFFNet integrates a multi-source feature fusion module which combining brain structure maps with structural magnetic resonance imaging (sMRI) data, a task-specific weight learning module guided by brain structural information, and dedicated task heads for each classification objective. The proposed method is evaluated on a mixed dataset constructed from the Alzheimer's Disease Neuroimaging Initiative (ADNI) and the Open Access Series of Imaging Studies (OASIS). Experimental results demonstrate that MTC-MSFFNet achieves an average accuracy of 98.09% for CN vs. MCI vs. AD classification and 95.16% for sMCI vs. pMCI classification. These results indicate that the proposed approach has significant potential to assist clinicians in developing targeted and personalized treatment plans.

预测阿尔茨海默病(AD)的阶段对于延缓疾病进展和早期干预至关重要。现有的大量研究集中在认知正常(CN)、轻度认知障碍(MCI)和AD的分类上。然而,mci的两种亚型——稳定型轻度认知障碍(sMCI)和进行性轻度认知障碍(pMCI)——不应被忽视。因此,本研究旨在准确诊断患者的疾病分期(CN、MCI或AD),并进一步区分sMCI和pMCI。在这项工作中,提出了一种基于多源特征融合的多任务分类模型,称为MTC-MSFFNet,以完成两个诊断任务:(1)CN与MCI与AD,以及(2)sMCI与pMCI。我们选择海马(HIP)和内鼻皮层(ERC)作为三级任务的特征图,选择海马(HIP)和灰质(GM)作为sMCI/pMCI任务的特征图。MTC-MSFFNet集成了将脑结构图与结构磁共振成像(sMRI)数据相结合的多源特征融合模块、以脑结构信息为指导的任务特定权重学习模块以及针对每个分类目标的专用任务头。该方法在由阿尔茨海默病神经成像倡议(ADNI)和开放获取系列成像研究(OASIS)构建的混合数据集上进行了评估。实验结果表明,MTC-MSFFNet对CN、MCI、AD分类的平均准确率为98.09%,对sMCI、pMCI分类的平均准确率为95.16%。这些结果表明,所提出的方法在帮助临床医生制定有针对性和个性化的治疗计划方面具有重要的潜力。
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引用次数: 0
Stability and error measurements in high-density electromyography of the middle deltoid in glenohumeral instability patients. Technical and practical implications of the experimental set-up. 盂肱部不稳患者中三角肌高密度肌电图的稳定性和误差测量。实验装置的技术和实际意义。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-12 DOI: 10.1088/2057-1976/ae4d4e
Laura Ramírez-Pérez, Amparo Zamora-Mogollo, Antonio Cuesta-Vargas

Glenohumeral instability is a highly prevalent injury characterized by the early appearance of physiological fatigue, which may affect muscle activation patterns. Understanding the variability of electromyographical activity may improve the comprehension of these changes. Therefore, this study aimed to determine the variability of high-density electromyographical activity in the middle deltoid of patients with glenohumeral instability. For this purpose, this study recruited 58 adults who had suffered at least one episode of shoulder dislocation during the year preceding enrollment. These patients had to perform a protocol of maximal (100% of maximum voluntary contraction (MVC) and submaximal (10%, 30%, 50%, and 70% of the MVC) isometric contractions in lateral abduction. To assess the neural control parameters, a grid of 64 electrodes was placed in the middle deltoid, recording the signal by using high-density electromyography. The results show a great variability in the number of identified motor units, with a progressive decrease across contraction levels, with significantly lower motor units at 50%, 70%, and 100% MVC compared with 10% and 30% MVC (one-way ANOVA, F(4,277) = 18.80; p < 0.001). In addition, the firing rate, the pulse rate, and the recruitment time demonstrated a direct relation to the MVC (r = 0.974, r = 0.990, r = 0.922). Moreover, the silhouette value was highly robust (0.85-0.90). Furthermore, this study suggested potential changes in motor unit recruitment behavior and spatial variability of electromyographical activity across the muscle. This study also proposed an identification of potential error sources and practical solutions to enhance this evaluation. In conclusion, high-density electromyography enabled the characterization of neuromuscular patterns in shoulder instability. However, while the findings support its feasibility for research applications, further research is needed to formally establish its validity.

肩关节不稳定是一种非常普遍的损伤,其特征是早期出现生理性疲劳,这可能影响肌肉的激活模式。了解肌电活动的可变性可以提高对这些变化的理解。因此,本研究旨在确定肱骨盂不稳患者中三角肌高密度肌电活动的变异性。为此,本研究招募了58名在入组前一年至少经历过一次肩关节脱位的成年人。这些患者必须在侧外展时执行最大(100%最大自主收缩(MVC))和次最大(10%、30%、50%和70% MVC)等距收缩的方案。为了评估神经控制参数,在中间三角肌上放置了64个电极的网格,通过高密度肌电图记录信号。结果显示,识别出的运动单元数量有很大的可变性,在收缩水平上逐渐减少,与10%和30% MVC相比,50%、70%和100% MVC时的运动单元显著减少(单向方差分析,F(4277) = 18.80;P < 0.001)。此外,放电率、脉冲率和招募时间与MVC有直接关系(r = 0.974, r = 0.990, r = 0.922)。此外,剪影值具有很强的稳健性(0.85 ~ 0.90)。此外,该研究还提示了运动单位招募行为和肌电活动的空间变异性的潜在变化。本研究还提出了潜在误差来源的识别和实际解决方案,以加强这一评估。总之,高密度肌电图能够表征肩部不稳定的神经肌肉模式。然而,虽然研究结果支持其研究应用的可行性,但需要进一步的研究来正式确立其有效性。
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引用次数: 0
Multimodal wearable sensor-based stress detection: machine learning pipeline with systematic feature selection and key biomarker insights. 基于多模态可穿戴传感器的应力检测:具有系统特征选择和关键生物标志物见解的机器学习管道。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-12 DOI: 10.1088/2057-1976/ae4c93
Shao Ming Ng, Jee-Hou Ho, Bee Ting Chan

The increasing awareness of stress-related health impacts has driven demand for accurate, non-invasive stress detection methods, particularly those leveraging wearable sensors. While multimodal sensing approaches have shown promise in enhancing mental stress assessment, the critical role of feature selection in optimizing model performance remains underexplored. This study presents a comprehensive machine learning pipeline for mental stress detection that integrates data preprocessing, feature extraction, systematic feature selection, and classification. Using data collected from 17 participants, we classified stress and relaxation states based on three physiological signals: electrodermal activity (EDA), electrocardiography (ECG), and electroencephalography (EEG). Multimodal sensor fusion was compared against unimodal approaches to assess performance improvements. To identify the most informative features and improve model accuracy, we applied four feature selection methods: Analysis of Variance (ANOVA), Chi-squared (Chi2), Kruskal-Wallis (KW), and Minimum Redundancy Maximum Relevance (MRMR). External validation was conducted using the public Stress Recognition in Automobile Drivers (SRAD) dataset. Our results demonstrated a 12.9% increase in classification accuracy using multimodal data, reaching up to 95.9%, with feature selection contributing an average gain of 4.8%. Among the methods, Chi2 consistently achieved the highest mean accuracy across various feature sets. Key biomarkers included ECG-based median, mean, and root-mean-square; EEG-based beta-to-alpha ratio and relative alpha power; and EDA-based mean and sum phasic activity. These findings highlight the importance of integrating systematic feature selection with multimodal sensor data to enhance the accuracy, robustness, and interpretability of mental stress detection systems.

人们越来越意识到压力对健康的影响,这推动了对准确、非侵入性压力检测方法的需求,特别是那些利用可穿戴传感器的方法。虽然多模态感知方法在增强精神压力评估方面显示出希望,但特征选择在优化模型性能方面的关键作用仍未得到充分探讨。本研究提出了一种集成数据预处理、特征提取、系统特征选择和分类的全面的心理压力检测机器学习管道。利用收集的17名参与者的数据,我们根据三种生理信号:皮电活动(EDA)、心电图(ECG)和脑电图(EEG)对应激和放松状态进行了分类。将多模态传感器融合与单模态方法进行比较,以评估性能改进。为了识别信息量最大的特征并提高模型的准确性,我们采用了四种特征选择方法:方差分析(ANOVA)、卡方(Chi2)、Kruskal-Wallis (KW)和最小冗余最大相关性(MRMR)。外部验证使用公共应力识别在汽车驾驶员(SRAD)数据集进行。我们的结果表明,使用多模态数据的分类准确率提高了12.9%,达到95.9%,其中特征选择的平均增益为4.8%。在这些方法中,Chi2在各种特征集上始终保持最高的平均准确率。关键生物标志物包括基于心电图的中位数、平均值和均方根;基于脑电图的β - α比和相对α功率;以及基于eda的平均和总相活性。这些发现强调了将系统特征选择与多模态传感器数据相结合的重要性,以提高心理压力检测系统的准确性、鲁棒性和可解释性。
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引用次数: 0
Comprehensive multimodal prediction of Alzheimer's disease. 阿尔茨海默病的综合多模式预测。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-10 DOI: 10.1088/2057-1976/ae4630
Farin Khan, Durgesh Pandit, Samarth Lalan, Mrunal Rane

Alzheimer's disease (AD) classification using machine learning has increasingly relied on multimodal inputs such as Magnetic Resonance Imaging (MRI), cognitive assessments, and biological markers. This study evaluates whether integrating these sources enhances predictive performance compared to using them independently. Neural networks were trained on data from the Alzheimer's Disease Neuroimaging Initiative (ADNI) to classify subjects into Cognitively Normal (CN), Mild Cognitive Impairment (MCI), and AD categories using unimodal, bimodal, and trimodal input configurations. Contrary to expectations, multimodal models did not consistently outperform unimodal ones. The highest test accuracy (81%) was achieved by both the cognitive-only and trimodal models, with the former also demonstrating superior class-wise performance. These findings suggest that neuropsychological features may carry greater diagnostic value than imaging or fluid biomarkers, underscoring the importance of more targeted data fusion strategies. Furthermore, the inclusion of biological markers did not significantly improve early MCI detection, likely due to their limited dimensionality and the model's constrained ability to extract meaningful patterns from such inputs.

使用机器学习的阿尔茨海默病(AD)分类越来越依赖于多模态输入,如磁共振成像(MRI)、认知评估和生物标志物。本研究评估了与独立使用这些资源相比,整合这些资源是否能提高预测性能。神经网络根据阿尔茨海默病神经影像学倡议(ADNI)的数据进行训练,使用单峰、双峰和三峰输入配置将受试者分为认知正常(CN)、轻度认知障碍(MCI)和AD类别。与预期相反,多模态模型并不总是优于单模态模型。只有认知模型和三模态模型都达到了最高的测试准确率(81%),前者也表现出了优越的分类性能。这些发现表明,神经心理学特征可能比成像或液体生物标志物具有更大的诊断价值,强调了更有针对性的数据融合策略的重要性。此外,生物标记物的加入并没有显著提高早期MCI的检测,这可能是由于它们的维度有限,以及模型从这些输入中提取有意义模式的能力有限。
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引用次数: 0
CCE-Net: a lightweight context contrast enhancement network and its application in medical image segmentation. CCE-Net:一种轻量级上下文对比度增强网络及其在医学图像分割中的应用。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-03-10 DOI: 10.1088/2057-1976/ae4108
Xiaojing Hou, Yonghong Wu

Efficient and accurate image segmentation models play a vital role in medical image segmentation, however, high computational cost of traditional models limits clinical deployment. Based on pyramid visual transformers and convolutional neural networks, this paper proposes a lightweight Context Contrast Enhancement Network (CCE-Net) that ensures efficient inference and achieves accurate segmentation through the contextual feature synergy mechanism and feature contrast enhancement strategy. The Local Context Fusion Enhancement module is designed to obtain more specific local detail information through cross-layer context fusion and bridge the semantic gap between the encoder and decoder. The Deep Feature Multi-scale Extraction module is proposed to fully extract the comprehensive information about the deepest features in the bottleneck layer of the model and provide more accurate global contextual features for the decoder. The Detail Contrast Enhancement Decoder module is designed to effectively solve the inherent problems of missing image details and blurred edges through adaptive dual-branch feature fusion and frequency-domain contrast enhancement operations. Experiments show that CCE-Net only requires 5.40M parameters and 0.80G FLOPs, and the average Dice coefficients on the Synapse and ACDC datasets are 82.25% and 91.88%, respectively, which are 37%-62% less than the parameters of mainstream models, promoting the transformation of lightweight medical AI models from laboratory research to clinical practice.

高效、准确的图像分割模型在医学图像分割中起着至关重要的作用,但传统模型计算成本高,限制了临床应用。本文基于金字塔视觉变换和卷积神经网络,提出了一种轻量级的上下文对比增强网络(CCE-Net),该网络通过上下文特征协同机制和特征对比度增强策略保证了高效推理和准确分割。局部上下文融合增强模块旨在通过跨层上下文融合获得更具体的局部细节信息,弥合编码器和解码器之间的语义差距。提出深度特征多尺度提取模块,充分提取模型瓶颈层最深层特征的综合信息,为解码器提供更准确的全局上下文特征。Detail Contrast Enhancement Decoder模块通过自适应双分支特征融合和频域对比度增强操作,有效解决图像细节缺失和边缘模糊等固有问题。实验表明,CCE-Net只需要5.40M参数和0.80G FLOPs,在Synapse和ACDC数据集上的平均Dice系数分别为82.25%和91.88%,比主流模型的参数降低了37%-62%,推动了轻量级医学AI模型从实验室研究向临床实践的转变。
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引用次数: 0
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Biomedical Physics & Engineering Express
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