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E-TBI: explainable outcome prediction after traumatic brain injury using machine learning. E-TBI:使用机器学习预测外伤性脑损伤后可解释的结果。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-27 DOI: 10.1007/s11517-025-03431-w
Thu Ha Ngo, Minh Hieu Tran, Hoang Bach Nguyen, Van Nam Hoang, Thi Lan Le, Hai Vu, Trung Kien Tran, Huu Khanh Nguyen, Van Mao Can, Thanh Bac Nguyen, Thanh-Hai Tran

Traumatic brain injury (TBI) is one of the most prevalent health conditions, with severity assessment serving as an initial step for management, prognosis, and targeted therapy. Existing studies on automated outcome prediction using machine learning (ML) often overlook the importance of TBI features in decision-making and the challenges posed by limited and imbalanced training data. Furthermore, many attempts have focused on quantitatively evaluating ML algorithms without explaining the decisions, making the outcomes difficult to interpret and apply for less-experienced doctors. This study presents a novel supportive tool, named E-TBI (explainable outcome prediction after TBI), designed with a user-friendly web-based interface to assist doctors in outcome prediction after TBI using machine learning. The tool is developed with the capability to visualize rules applied in the decision-making process. At the tool's core is a feature selection and classification module that receives multimodal data from TBI patients (demographic data, clinical data, laboratory test results, and CT findings). It then infers one of four TBI severity levels. This research investigates various machine learning models and feature selection techniques, ultimately identifying the optimal combination of gradient boosting machine and random forest for the task, which we refer to as GBMRF. This method enabled us to identify a small set of essential features, reducing patient testing costs by 35%, while achieving the highest accuracy rates of 88.82% and 89.78% on two datasets (a public TBI dataset and our self-collected dataset, TBI_MH103). Classification modules are available at https://github.com/auverngo110/Traumatic_Brain_Injury_103 .

创伤性脑损伤(TBI)是最普遍的健康状况之一,严重程度评估是治疗、预后和靶向治疗的第一步。现有的使用机器学习(ML)进行自动结果预测的研究往往忽视了TBI特征在决策中的重要性以及有限和不平衡的训练数据所带来的挑战。此外,许多尝试都集中在定量评估ML算法而不解释决策,这使得结果难以解释和应用于经验不足的医生。本研究提出了一种新的支持工具,称为E-TBI (TBI后可解释的结果预测),设计了一个用户友好的基于网络的界面,以帮助医生使用机器学习进行TBI后的结果预测。该工具具有可视化决策过程中应用的规则的能力。该工具的核心是一个特征选择和分类模块,该模块接收来自TBI患者的多模态数据(人口统计数据、临床数据、实验室测试结果和CT结果)。然后,它推断出四种脑损伤严重程度中的一种。本研究考察了各种机器学习模型和特征选择技术,最终确定了梯度增强机和随机森林的最佳组合,我们称之为GBMRF。该方法使我们能够识别一小部分基本特征,将患者检测成本降低35%,同时在两个数据集(公共TBI数据集和我们自己收集的数据集TBI_MH103)上实现了88.82%和89.78%的最高准确率。分类模块可在https://github.com/auverngo110/Traumatic_Brain_Injury_103上获得。
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引用次数: 0
Reconfiguration planning and structure parameter design of a reconfigurable cable-driven lower limb rehabilitation robot. 可重构缆索驱动下肢康复机器人重构规划及结构参数设计。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-07-14 DOI: 10.1007/s11517-025-03402-1
Jinghang Li, Keyi Wang, Yanzhuo Wang, Yi Yuan

Reconfigurable cable-driven parallel robots (RCDPRs) have attracted much attention as a novel type of cable-driven robot that can change their cable anchor position. The reconfigurable cable-driven lower limb rehabilitation robot (RCDLR) employs RCDPRs in lower limb rehabilitation to achieve multiple training modes. This paper investigates the reconfiguration planning and structural parameter design of the RCDLR. The RCDLR aims to fulfill the requirements of early passive rehabilitation training. Therefore, motion capture data are analyzed and mapped to the target trajectory of the RCDLR. Through dynamics modeling, the Wrench-Feasible Anchor-point Space (WFAS) is defined, from which an objective function for optimal reconfiguration planning is derived. The genetic algorithm is used to solve the optimal reconfiguration planning problem. Additionally, we propose the reconfigurability and safety coefficients as components of a structure parameter design method aimed at satisfying multiple target rehabilitation trajectories. Finally, numerical simulations are implemented based on the instance data and target trajectories to compute the specific structure parameters and verify the effectiveness of the reconfiguration planning method.

可重构缆索驱动并联机器人(Reconfigurable cable-driven parallel robots, RCDPRs)作为一种能够改变缆索锚点位置的新型缆索驱动机器人备受关注。可重构缆索驱动下肢康复机器人(reconfigurable cable-driven lower limb rehabilitation robot, RCDLR)将RCDPRs应用于下肢康复,实现多种训练模式。本文对RCDLR的重构规划和结构参数设计进行了研究。RCDLR旨在满足早期被动康复训练的要求。因此,对运动捕捉数据进行分析并映射到RCDLR的目标轨迹。通过动力学建模,定义了扳手-可行锚点空间,并由此导出了最优重构规划的目标函数。采用遗传算法求解最优重构规划问题。此外,我们提出了可重构性和安全系数作为结构参数设计方法的组成部分,旨在满足多个目标恢复轨迹。最后,基于实例数据和目标轨迹进行了数值仿真,计算了具体的结构参数,验证了重构规划方法的有效性。
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引用次数: 0
SAID-Net: enhancing segment anything model with implicit decoding for echocardiography sequences segmentation. 基于隐式解码的超声心动图序列分割增强片段任意模型。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-07-17 DOI: 10.1007/s11517-025-03419-6
Yagang Wu, Tianli Zhao, Shijun Hu, Qin Wu, Xin Huang, Yingxu Chen, Pengzhi Yin, Zhoushun Zheng

Echocardiography sequence segmentation is vital in modern cardiology. While the Segment Anything Model (SAM) excels in general segmentation, its direct use in echocardiography faces challenges due to complex cardiac anatomy and subtle ultrasound boundaries. We introduce SAID (Segment Anything with Implicit Decoding), a novel framework integrating implicit neural representations (INR) with SAM to enhance accuracy, adaptability, and robustness. SAID employs a Hiera-based encoder for multi-scale feature extraction and a Mask Unit Attention Decoder for fine detail capture, critical for cardiac delineation. Orthogonalization boosts feature diversity, and I 2 Net improves handling of misaligned contextual features. Tested on CAMUS and EchoNet-Dynamics datasets, SAID outperforms state-of-the-art methods, achieving a Dice Similarity Coefficient (DSC) of 93.2% and Hausdorff Distance (HD95) of 5.02 mm on CAMUS, and a DSC of 92.3% and HD95 of 4.05 mm on EchoNet-Dynamics, confirming its efficacy and robustness for echocardiography sequence segmentation.

超声心动图序列分割是现代心脏病学研究的重要内容。尽管分段任意模型(SAM)在一般分割方面表现出色,但由于心脏解剖结构复杂和超声边界微妙,其在超声心动图中的直接应用面临挑战。我们引入了一种新的框架,将隐式神经表征(INR)与SAM相结合,以提高准确性、适应性和鲁棒性。SAID采用基于层次的编码器进行多尺度特征提取,并采用掩模单元注意解码器进行精细细节捕获,这对心脏描绘至关重要。正交化提高了特征的多样性,i2net改进了对不对齐的上下文特征的处理。在CAMUS和EchoNet-Dynamics数据集上测试,SAID优于最先进的方法,在CAMUS上实现了93.2%的Dice Similarity Coefficient (DSC)和5.02 mm的Hausdorff Distance (HD95),在EchoNet-Dynamics上实现了92.3%的DSC和4.05 mm的HD95,证实了其在超声心动图序列分割方面的有效性和鲁棒性。
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引用次数: 0
A comprehensive approach to simulating bone fractures through bone model fragmentation guided by fracture patterns. 一种以骨折模式为导向的骨模型破碎模拟骨折的综合方法。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-26 DOI: 10.1007/s11517-025-03428-5
Gema Parra-Cabrera, Francisco Daniel Pérez-Cano, José Javier Reyes-Lagos, Juan José Jiménez-Delgado

Bone fractures are a common medical condition requiring accurate simulation for diagnosis and treatment planning. This study introduces a comprehensive method for simulating bone fractures using two-dimensional fracture patterns and real fractured bones applied to three-dimensional bone models. The approach begins with selecting and adjusting a fracture pattern, projecting it onto a 3D bone model and applying triangulation guided by quality metrics to simulate the cortical layer. Perturbation techniques add irregularities to the fracture surface, enhancing realism. Validation involved comparing simulated fragments with real fragments obtained from CT scans to ensure accuracy. Fracture patterns derived from real fragments were applied to non-fractured bone models to generate simulated fragments. A comparison of real and simulated fracture zones verified the minimal deviation in the results. Specifically, the distance between MMAR and MMAS scaled values varies between - 0.36 and 1.44, confirming the accuracy of the simulation. The resulting models have diverse applications, such as accurate surgical planning, enhanced training, and medical simulation. These models also support personalized medicine by improving patient-specific surgical interventions. This advancement has the potential to significantly enhance fracture treatment strategies and elevate overall patient care.

骨折是一种常见的医疗状况,需要准确的模拟诊断和治疗计划。本研究介绍了一种将二维骨折模式和真实骨折应用于三维骨模型的综合模拟骨折方法。该方法首先选择和调整骨折模式,将其投射到3D骨模型上,并应用质量指标指导的三角测量来模拟皮质层。扰动技术增加了裂缝表面的不规则性,增强了真实感。验证包括将模拟片段与从CT扫描中获得的真实片段进行比较,以确保准确性。从真实碎片中获得的骨折模式应用于非骨折骨模型以生成模拟碎片。通过对真实裂缝带和模拟裂缝带的比较,验证了结果的最小偏差。具体来说,MMAR与MMAS尺度值之间的距离在- 0.36 ~ 1.44之间,证实了模拟的准确性。由此产生的模型具有多种应用,例如精确的手术计划、增强的训练和医学模拟。这些模型还通过改进针对患者的手术干预来支持个性化医疗。这一进展有可能显著提高骨折治疗策略和提高患者的整体护理水平。
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引用次数: 0
IF-MMCL: an individual focused network with multi-view and multi-modal contrastive learning for cross-subject emotion recognition. IF-MMCL:一个具有多视角和多模态对比学习的个体关注网络。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-28 DOI: 10.1007/s11517-025-03430-x
Qiaoli Zhou, Jiawen Song, Yi Zhao, Shun Zhang, Qiang Du, Li Ke

Electroencephalography (EEG) usage in emotion recognition has garnered significant interest in brain-computer interface (BCI) research. Nevertheless, in order to develop an effective model for emotion identification, features need to be extracted from EEG data in terms of multi-view. In order to tackle the problems of multi-feature interaction and domain adaptation, we suggest an innovative network, IF-MMCL, which leverages multi-modal data in multi-view representation and integrates an individual focused network. In our approach, we build an individual focused network with multi-view that utilizes individual focused contrastive learning to improve model generalization. The network employs different structures for multi-view feature extraction and uses multi-feature relationship computation to identify the relationships between features from various views and modalities. Our model is validated using four public emotion datasets, each containing various emotion classification tasks. In leave-one-subject-out experiments, IF-MMCL performs better than the previous methods in model generalization with limited data.

脑电图(EEG)在情绪识别中的应用引起了脑机接口(BCI)研究的极大兴趣。然而,为了建立有效的情绪识别模型,需要从EEG数据中提取多视角特征。为了解决多特征交互和领域自适应问题,我们提出了一种创新的网络IF-MMCL,该网络利用多视图表示中的多模态数据,并集成了一个以个体为中心的网络。在我们的方法中,我们建立了一个具有多视图的个人聚焦网络,利用个人聚焦对比学习来提高模型泛化。该网络采用不同的结构进行多视图特征提取,并使用多特征关系计算来识别来自不同视图和模态的特征之间的关系。我们的模型使用四个公共情绪数据集进行验证,每个数据集都包含不同的情绪分类任务。在留下一个受试者的实验中,IF-MMCL在有限数据下的模型泛化效果优于以往的方法。
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引用次数: 0
Predicting internal carotid artery system risk based on common carotid artery by machine learning. 基于颈总动脉的机器学习预测颈内动脉系统风险。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-07-14 DOI: 10.1007/s11517-025-03413-y
Yuhao Tong, Qingyi Zhang, Feng Zhang, Weidong Mu, Steven W Su, Lin Liu

Early identification of internal carotid artery (ICA) system diseases is critical for preventing stroke and other cerebrovascular events. Traditional diagnostic methods rely heavily on clinician expertise and costly imaging, limiting accessibility. This study aims to develop an interpretable machine learning (ML) model using common carotid artery (CCA) features to predict ICA disease risk, enabling efficient screening. Clinical data from 1612 patients (806 high-risk vs. 806 low-risk ICA disease) were analyzed. CCA features-blood flow, intima-media thickness, internal diameter, age, and gender-were used to train five ML models. Model performance was evaluated via accuracy, sensitivity, specificity, AUC-ROC, and F1 score. SHAP analysis identified key predictors. The support vector machine (SVM) achieved optimal performance (accuracy, 84.9%; AUC, 92.6%), outperforming neural networks (accuracy, 81.4%; AUC, 89.8%). SHAP analysis revealed CCA blood flow (negative correlation) and intima-media thickness (positive correlation) as dominant predictors. This study demonstrates that CCA hemodynamic and structural features, combined with interpretable ML models, can effectively predict ICA disease risk. The SVM-based framework offers a cost-effective screening tool for early intervention, particularly in resource-limited settings. Future work will validate these findings in multi-center cohorts.

颈内动脉(ICA)系统疾病的早期识别对于预防中风和其他脑血管事件至关重要。传统的诊断方法严重依赖临床医生的专业知识和昂贵的成像,限制了可及性。本研究旨在开发一种可解释的机器学习(ML)模型,利用颈总动脉(CCA)特征来预测颈总动脉疾病风险,从而实现有效的筛查。分析了1612例患者的临床资料(806例高危与806例低危ICA疾病)。CCA特征-血流、内膜-中膜厚度、内径、年龄和性别被用来训练5个ML模型。通过准确性、敏感性、特异性、AUC-ROC和F1评分来评估模型的性能。SHAP分析确定了关键的预测因子。支持向量机(SVM)获得了最优的性能(准确率为84.9%;AUC, 92.6%),优于神经网络(准确率,81.4%;AUC, 89.8%)。SHAP分析显示,CCA血流(负相关)和内膜-中膜厚度(正相关)是主要预测因素。本研究表明,CCA血流动力学和结构特征,结合可解释的ML模型,可以有效预测ICA疾病风险。基于支持向量机的框架为早期干预提供了一种具有成本效益的筛查工具,特别是在资源有限的情况下。未来的工作将在多中心队列中验证这些发现。
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引用次数: 0
Rapid trauma classification under data scarcity: an emergency on-scene decision model combining natural language processing and machine learning. 数据稀缺下的创伤快速分类:一种结合自然语言处理和机器学习的应急现场决策模型。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-07-11 DOI: 10.1007/s11517-025-03414-x
Jun Tang, Tao Li, Liangming Liu, Dongdong Wu

Trauma has become a major cause of increased morbidity and mortality worldwide. In emergency response, the classification of injuries is crucial as it helps to quickly determine the criticality of the injured, allocate rescue resources rationally, and decide the priority order of treatment. However, emergency scenes are often chaotic environments, making it difficult for rescue personnel to collect complete and accurate information about the injured in a short period. The combination of artificial intelligence and emergency rescue is gradually changing the rescue model, improving the efficiency of rescue operations. We selected data from 26,810 trauma patients admitted to Chongqing Daping Hospital between 2013 and 2024. We propose a fast tiered medical treatment method with a two-layer structure under emergency limited data conditions, which integrates natural language processing (NLP) and machine learning (ML) techniques. The tiered medical treatment model utilizes NLP to capture semantic features of unstructured text data, while utilizing four ML algorithms to process structured numerical data. Additionally, we conducted external validation using 245 data entries from the Chongqing Emergency Center. The experimental results show that gradient boosting and logistic regression have the best performance in the two-layer ML algorithms. Based on these two algorithms, our model outperformed the multilayer perceptron (MLP) model on the test dataset, achieving an accuracy of 91.17%, which is 4.33% higher than that of the MLP model. The specificity, F1-score, and AUC of our model were 97.06%, 86.85%, and 0.949, respectively. For the external dataset, the model achieved accuracy, specificity, F1-score, and AUC of 87.35%, 95.78%, 80.37%, and 0.848, respectively. These results demonstrate the model's high generalizability and prediction accuracy. A model integrating NLP and ML techniques enables rapid tiered medical treatment based on limited data from the emergency scene, with significant advantages in terms of prediction accuracy.

创伤已成为世界范围内发病率和死亡率增加的主要原因。在应急响应中,伤情分类至关重要,有助于快速确定伤情的危重程度,合理分配救援资源,确定救治的优先顺序。然而,应急现场往往是混乱的环境,这使得救援人员很难在短时间内收集到完整和准确的伤员信息。人工智能与应急救援的结合正在逐步改变救援模式,提高救援行动效率。我们选择了2013年至2024年在重庆大坪医院住院的26810例创伤患者的数据。在紧急有限数据条件下,我们提出了一种结合自然语言处理(NLP)和机器学习(ML)技术的双层结构快速分层医疗方法。分层医疗模型利用NLP捕获非结构化文本数据的语义特征,同时利用四种ML算法处理结构化数值数据。此外,我们使用来自重庆急救中心的245个数据条目进行了外部验证。实验结果表明,梯度增强和逻辑回归是两层机器学习算法中性能最好的。基于这两种算法,我们的模型在测试数据集上优于多层感知器(MLP)模型,准确率达到91.17%,比MLP模型高出4.33%。模型的特异性为97.06%,f1评分为86.85%,AUC为0.949。对于外部数据集,该模型的准确率为87.35%,特异性为95.78%,f1评分为80.37%,AUC为0.848。结果表明,该模型具有较高的通用性和预测精度。一个整合了NLP和ML技术的模型能够基于来自紧急场景的有限数据进行快速分层医疗,在预测精度方面具有显著优势。
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引用次数: 0
Ensemble learning-based method for multiple sclerosis screening from retinal OCT images. 基于集成学习的视网膜OCT图像多发性硬化症筛查方法。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-02 DOI: 10.1007/s11517-025-03410-1
Yaroub Elloumi, Rostom Kachouri

Multiple sclerosis (MS) is a neurodegenerative disease that impacts retinal layer thickness. Thus, several works proposed to diagnose MS from the retinal optical coherence tomography (OCT) images. Recent clinical studies affirmed that thinning occurs on the four top layers, explicitly in the macular region. However, existing MS detection methods have not considered all MS symptoms, which may impact the MS detection performance. In this research, we propose a new automated method to detect MS from the retinal OCT images. The main principle is based on extracting the relevant retinal layers and figuring out the layer thicknesses, which are investigated to deduce the MS disease. The main challenge is to guarantee a higher performance biomarker extraction within an efficient exploration of OCT cuts. Our contribution consists of the following: (1) employing two DL architectures to segment separately sub-images based on their morphology, in order to enhance segmentation quality; (2) extracting thickness features from the four top layers; (3) dedicating a classifier for each OCT cut that is selected based on its position with respect to the macula center; and (4) merging the classifier knowledge through an ensemble learning approach. Our suggested method achieved 97% accuracy, 100% sensitivity, and 94% precision and specificity, which outperforms several state-of-the-art methods.

多发性硬化(MS)是一种影响视网膜层厚度的神经退行性疾病。因此,一些研究人员提出通过视网膜光学相干断层扫描(OCT)图像诊断多发性硬化症。最近的临床研究证实,变薄发生在四个顶层,特别是在黄斑区域。然而,现有的MS检测方法并没有考虑到MS的所有症状,这可能会影响MS检测的性能。在这项研究中,我们提出了一种新的从视网膜OCT图像中检测MS的自动化方法。其主要原理是在提取视网膜相关层并计算出层厚度的基础上,通过研究层厚度来推断多发性硬化症。主要的挑战是在有效的OCT切面探测中保证更高性能的生物标志物提取。我们的贡献包括:(1)采用两种深度学习架构根据子图像的形态分别分割子图像,以提高分割质量;(2)提取4个顶层的厚度特征;(3)根据相对于黄斑中心的位置,为每个OCT切割指定一个分类器;(4)通过集成学习方法合并分类器知识。该方法的准确度为97%,灵敏度为100%,精密度和特异性为94%,优于几种最先进的方法。
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引用次数: 0
S 3 TU-Net: Structured convolution and superpixel transformer for lung nodule segmentation. s3tu - net:用于肺结节分割的结构卷积和超像素转换器。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-20 DOI: 10.1007/s11517-025-03425-8
Yuke Wu, Xiang Liu, Yunyu Shi, Xinyi Chen, Zhenglei Wang, YuQing Xu, ShuoHong Wang

Accurate segmentation of lung adenocarcinoma nodules in computed tomography (CT) images is critical for clinical staging and diagnosis. However, irregular nodule shapes and ambiguous boundaries pose significant challenges for existing methods. This study introduces S3TU-Net, a hybrid CNN-Transformer architecture designed to enhance feature extraction, fusion, and global context modeling. The model integrates three key innovations: (1) structured convolution blocks (DWF-Conv/D2BR-Conv) for multi-scale feature extraction and overfitting mitigation; (2) S2-MLP Link, a spatial-shift-enhanced skip-connection module to improve multi-level feature fusion; and 3) residual-based superpixel vision transformer (RM-SViT) to capture long-range dependencies efficiently. Evaluated on the LIDC-IDRI dataset, S3TU-Net achieves a Dice score of 89.04%, precision of 90.73%, and IoU of 90.70%, outperforming recent methods by 4.52% in Dice. Validation on the EPDB dataset further confirms its generalizability (Dice, 86.40%). This work contributes to bridging the gap between local feature sensitivity and global context awareness by integrating structured convolutions and superpixel-based transformers, offering a robust tool for clinical decision support.

CT图像中肺腺癌结节的准确分割对临床分期和诊断至关重要。然而,不规则的结节形状和模糊的边界对现有的方法提出了重大挑战。本研究介绍了S3TU-Net,一种混合CNN-Transformer架构,旨在增强特征提取、融合和全局上下文建模。该模型集成了三个关键创新:(1)用于多尺度特征提取和过拟合缓解的结构化卷积块(DWF-Conv/D2BR-Conv);(2) S2-MLP Link,一种空间位移增强的跳跃连接模块,提高多层次特征融合;3)基于残差的超像素视觉转换器(RM-SViT),有效捕获远程依赖关系。在LIDC-IDRI数据集上进行评估,S3TU-Net在Dice上的得分为89.04%,精度为90.73%,IoU为90.70%,比目前的方法高出4.52%。在EPDB数据集上的验证进一步证实了其泛化性(Dice, 86.40%)。这项工作通过集成结构化卷积和基于超像素的变压器,弥合了局部特征敏感性和全局上下文感知之间的差距,为临床决策支持提供了一个强大的工具。
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引用次数: 0
Hard exudates segmentation for retinal fundus images based on longitudinal multi-scale fusion network. 基于纵向多尺度融合网络的视网膜眼底硬渗出物分割。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-01 Epub Date: 2025-08-13 DOI: 10.1007/s11517-025-03426-7
Shuang Liu, Xiangyu Jiang, Jie Zhang, Wei Zou

Accurate segmentation of hard exudate in fundus images is crucial for early diagnosis of retinal diseases. However, hard exudate segmentation is still a challenge task for accurately detecting small lesions and precisely locating the boundaries of ambiguous lesions. In this paper, the longitudinal multi-scale fusion network (LMSF-Net) is proposed for accurate hard exudate segmentation in fundus images. In this network, an adjacent complementary correction module (ACCM) is proposed on the encoding path for complementary fusion between adjacent encoding features, and a progressive iterative fusion module (PIFM) is designed on the decoding path for fusion between adjacent decoding features. Furthermore, a spatial awareness fusion module (SAFM) is proposed at the end of the decoding path for calibration and aggregation of the two decoding outputs. The proposed method can improve segmentation results of hard exudates with different scales and shapes. The experimental results confirm the superiority of the proposed method for hard exudate segmentation with AUPR of 0.6954, 0.9017, and 0.6745 on the DDR, IDRID, and E-Ophtha EX datasets, respectively.

眼底硬渗出物图像的准确分割对视网膜疾病的早期诊断至关重要。然而,对于小病灶的准确检测和模糊病灶边界的精确定位,硬渗出物分割仍然是一个具有挑战性的任务。本文提出了纵向多尺度融合网络(LMSF-Net)对眼底图像硬渗出物进行精确分割的方法。该网络在编码路径上提出了相邻互补校正模块(ACCM)用于相邻编码特征之间的互补融合,在解码路径上设计了渐进迭代融合模块(PIFM)用于相邻解码特征之间的融合。此外,在解码路径的末端提出了空间感知融合模块(SAFM),用于两个解码输出的校准和聚合。该方法可以改善不同尺度和形状的硬渗出物的分割效果。实验结果表明,该方法在DDR、IDRID和E-Ophtha EX数据集上的AUPR分别为0.6954、0.9017和0.6745,具有较好的分割效果。
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引用次数: 0
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Medical & Biological Engineering & Computing
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