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Ultrasound in Ti-Rads Classification of Thyroid Nodules at the Marie Curie Medical Clinic
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作者 Traore Ousmane Diakité Siaka +9 位作者 Sidibe Drissa Mansa N’Diaye Mamadou Diallo Aissata Bagayoko Ousmane Lansenou Camara Nagnoumague Coulibaly Modibo Cisse Issa Dembele Mamadou Sidibe Assan Traore Keita Adama Diaman 《Open Journal of Medical Imaging》 2024年第3期114-122,共9页
Introduction: A thyroid nodule is a localized hypertrophy within the thyroid parenchyma. The aim of our study was to study the benefit of ultrasound in the Ti-rads classification of thyroid nodules. Methodology: This ... Introduction: A thyroid nodule is a localized hypertrophy within the thyroid parenchyma. The aim of our study was to study the benefit of ultrasound in the Ti-rads classification of thyroid nodules. Methodology: This was a prospective study with a descriptive aim, with prospective collection, which took place over a period of 17 months at the “Marie Curie” medical clinic. The ultrasound machine used was a Voluson E8 from 2011 and the examinations were carried out by two radiologists and two experienced sonographers. The parameters studied were sociodemographic data;clinical data and ultrasound aspects of the Ti-rads classification in the management of nodules. Results: We collected 235 patients out of 738 patients referred to the service for a cervical ultrasound, i.e. a frequency of 31.84% of cases. There was a female predominance with 95.7% of cases and a sex ratio of 0.04. The average age of our patients was 50 years. We found on cervical ultrasound: Isthmo-lobar glandular hyperplasia in 99 patients, i.e. a frequency of 42.1%. The Ti-rads 3 classification was the most represented in 69.4% of cases. The benignity criterion represented 85.6% of cases in our patients and the malignancy criterion represented 14.4% of cases. Conclusion: The precise description of a thyroid nodule provided by ultrasound (Ti-rads) is essential in the management of nodules. 展开更多
关键词 ULTRASOUND Thyroid NODULES ti-rads “Marie Curie” Medical Clinic
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超声TI-RADS分类联合超声积分对甲状腺结节良恶性的诊断价值
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作者 薛娟 《影像研究与医学应用》 2026年第4期166-168,共3页
目的:探讨超声TI-RADS分类联合超声积分诊断甲状腺结节良恶性的应用价值。方法:回顾性选取2023年5月—2025年4月泗洪老年病医院收治的149例行甲状腺结节手术患者的临床资料,根据手术病理结果分为恶性组(n=60)与良性组(n=89)。所有患者... 目的:探讨超声TI-RADS分类联合超声积分诊断甲状腺结节良恶性的应用价值。方法:回顾性选取2023年5月—2025年4月泗洪老年病医院收治的149例行甲状腺结节手术患者的临床资料,根据手术病理结果分为恶性组(n=60)与良性组(n=89)。所有患者均在术前1个月行高频超声检查,并进行甲状腺影像报告与数据系统(TI-RADS)分类及超声积分评定。对比两种方法单一及联合诊断甲状腺结节良恶性的效能。结果:两组的性别、年龄、病变结节数量比较,差异无统计学意义(P>0.05)。良性组的TI-RADS分类情况优于恶性组,差异有统计学意义(P<0.05)。良性组的平均超声积分低于恶性组,差异有统计学意义(P<0.05)。TI-RADS分类与超声积分两者联合诊断甲状腺结节良恶性的曲线下面积(AUC)为0.889,均高于TI-RADS分类、超声积分单一检查。结论:甲状腺超声TI-RADS分类与超声积分在鉴别甲状腺结节良恶性方面具有协同互补作用,联合诊断能有效提升效能,优于单一检查方法。 展开更多
关键词 ti-rads分类 超声积分 甲状腺结节 高频超声
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Email Classification Using Horse Herd Optimization Algorithm
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作者 N Jaya Lakshmi Sangeetha Viswanadham +2 位作者 Appala Srinuvasu Muttipati B Chakradhar B Kiran Kumar 《Journal of Harbin Institute of Technology(New Series)》 2026年第1期69-80,共12页
In recent decades,the proliferation of email communication has markedly escalated,resulting in a concomitant surge in spam emails that congest networks and presenting security risks.This study introduces an innovative... In recent decades,the proliferation of email communication has markedly escalated,resulting in a concomitant surge in spam emails that congest networks and presenting security risks.This study introduces an innovative spam detection method utilizing the Horse Herd Optimization Algorithm(HHOA),designed for binary classification within multi⁃objective framework.The method proficiently identifies essential features,minimizing redundancy and improving classification precision.The suggested HHOA attained an impressive accuracy of 97.21%on the Kaggle email dataset,with precision of 94.30%,recall of 90.50%,and F1⁃score of 92.80%.Compared to conventional techniques,such as Support Vector Machine(93.89%accuracy),Random Forest(96.14%accuracy),and K⁃Nearest Neighbours(92.08%accuracy),HHOA exhibited enhanced performance with reduced computing complexity.The suggested method demonstrated enhanced feature selection efficiency,decreasing the number of selected features while maintaining high classification accuracy.The results underscore the efficacy of HHOA in spam identification and indicate its potential for further applications in practical email filtering systems. 展开更多
关键词 email classification optimization technique support vector machine binary classification machine learning
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Taxonomic classification of 80 near-Earth asteroids
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作者 Fan Mo Bin Li +9 位作者 HaiBin Zhao Jian Chen Yan Jin MengHui Tang Igor Molotov A.M.Abdelaziz A.Takey S.K.Tealib Ahmed.Shokry JianYang Li 《Earth and Planetary Physics》 2026年第1期196-204,共9页
Near-Earth objects are important not only in studying the early formation of the Solar System,but also because they pose a serious hazard to humanity when they make close approaches to the Earth.Study of their physica... Near-Earth objects are important not only in studying the early formation of the Solar System,but also because they pose a serious hazard to humanity when they make close approaches to the Earth.Study of their physical properties can provide useful information on their origin,evolution,and hazard to human beings.However,it remains challenging to investigate small,newly discovered,near-Earth objects because of our limited observational window.This investigation seeks to determine the visible colors of near-Earth asteroids(NEAs),perform an initial taxonomic classification based on visible colors and analyze possible correlations between the distribution of taxonomic classification and asteroid size or orbital parameters.Observations were performed in the broadband BVRI Johnson−Cousins photometric system,applied to images from the Yaoan High Precision Telescope and the 1.88 m telescope at the Kottamia Astronomical Observatory.We present new photometric observations of 84 near-Earth asteroids,and classify 80 of them taxonomically,based on their photometric colors.We find that nearly half(46.3%)of the objects in our sample can be classified as S-complex,26.3%as C-complex,6%as D-complex,and 15.0%as X-complex;the remaining belong to the A-or V-types.Additionally,we identify three P-type NEAs in our sample,according to the Tholen scheme.The fractional abundances of the C/X-complex members with absolute magnitude H≥17.0 were more than twice as large as those with H<17.0.However,the fractions of C-and S-complex members with diameters≤1 km and>1 km are nearly equal,while X-complex members tend to have sub-kilometer diameters.In our sample,the C/D-complex objects are predominant among those with a Jovian Tisserand parameter of T_(J)<3.1.These bodies could have a cometary origin.C-and S-complex members account for a considerable proportion of the asteroids that are potentially hazardous. 展开更多
关键词 near-Earth asteroids optical telescope photometric observation taxonomic classification
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A Novel Unsupervised Structural Attack and Defense for Graph Classification
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作者 Yadong Wang Zhiwei Zhang +2 位作者 Pengpeng Qiao Ye Yuan Guoren Wang 《Computers, Materials & Continua》 2026年第1期1761-1782,共22页
Graph Neural Networks(GNNs)have proven highly effective for graph classification across diverse fields such as social networks,bioinformatics,and finance,due to their capability to learn complex graph structures.Howev... Graph Neural Networks(GNNs)have proven highly effective for graph classification across diverse fields such as social networks,bioinformatics,and finance,due to their capability to learn complex graph structures.However,despite their success,GNNs remain vulnerable to adversarial attacks that can significantly degrade their classification accuracy.Existing adversarial attack strategies primarily rely on label information to guide the attacks,which limits their applicability in scenarios where such information is scarce or unavailable.This paper introduces an innovative unsupervised attack method for graph classification,which operates without relying on label information,thereby enhancing its applicability in a broad range of scenarios.Specifically,our method first leverages a graph contrastive learning loss to learn high-quality graph embeddings by comparing different stochastic augmented views of the graphs.To effectively perturb the graphs,we then introduce an implicit estimator that measures the impact of various modifications on graph structures.The proposed strategy identifies and flips edges with the top-K highest scores,determined by the estimator,to maximize the degradation of the model’s performance.In addition,to defend against such attack,we propose a lightweight regularization-based defense mechanism that is specifically tailored to mitigate the structural perturbations introduced by our attack strategy.It enhances model robustness by enforcing embedding consistency and edge-level smoothness during training.We conduct experiments on six public TU graph classification datasets:NCI1,NCI109,Mutagenicity,ENZYMES,COLLAB,and DBLP_v1,to evaluate the effectiveness of our attack and defense strategies.Under an attack budget of 3,the maximum reduction in model accuracy reaches 6.67%on the Graph Convolutional Network(GCN)and 11.67%on the Graph Attention Network(GAT)across different datasets,indicating that our unsupervised method induces degradation comparable to state-of-the-art supervised attacks.Meanwhile,our defense achieves the highest accuracy recovery of 3.89%(GCN)and 5.00%(GAT),demonstrating improved robustness against structural perturbations. 展开更多
关键词 Graph classification graph neural networks adversarial attack
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Graph Attention Networks for Skin Lesion Classification with CNN-Driven Node Features
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作者 Ghadah Naif Alwakid Samabia Tehsin +3 位作者 Mamoona Humayun Asad Farooq Ibrahim Alrashdi Amjad Alsirhani 《Computers, Materials & Continua》 2026年第1期1964-1984,共21页
Skin diseases affect millions worldwide.Early detection is key to preventing disfigurement,lifelong disability,or death.Dermoscopic images acquired in primary-care settings show high intra-class visual similarity and ... Skin diseases affect millions worldwide.Early detection is key to preventing disfigurement,lifelong disability,or death.Dermoscopic images acquired in primary-care settings show high intra-class visual similarity and severe class imbalance,and occasional imaging artifacts can create ambiguity for state-of-the-art convolutional neural networks(CNNs).We frame skin lesion recognition as graph-based reasoning and,to ensure fair evaluation and avoid data leakage,adopt a strict lesion-level partitioning strategy.Each image is first over-segmented using SLIC(Simple Linear Iterative Clustering)to produce perceptually homogeneous superpixels.These superpixels form the nodes of a region-adjacency graph whose edges encode spatial continuity.Node attributes are 1280-dimensional embeddings extracted with a lightweight yet expressive EfficientNet-B0 backbone,providing strong representational power at modest computational cost.The resulting graphs are processed by a five-layer Graph Attention Network(GAT)that learns to weight inter-node relationships dynamically and aggregates multi-hop context before classifying lesions into seven classes with a log-softmax output.Extensive experiments on the DermaMNIST benchmark show the proposed pipeline achieves 88.35%accuracy and 98.04%AUC,outperforming contemporary CNNs,AutoML approaches,and alternative graph neural networks.An ablation study indicates EfficientNet-B0 produces superior node descriptors compared with ResNet-18 and DenseNet,and that roughly five GAT layers strike a good balance between being too shallow and over-deep while avoiding oversmoothing.The method requires no data augmentation or external metadata,making it a drop-in upgrade for clinical computer-aided diagnosis systems. 展开更多
关键词 Graph neural network image classification DermaMNIST dataset graph representation
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Deep Learning for Brain Tumor Segmentation and Classification: A Systematic Review of Methods and Trends
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作者 Ameer Hamza Robertas Damaševicius 《Computers, Materials & Continua》 2026年第1期132-172,共41页
This systematic review aims to comprehensively examine and compare deep learning methods for brain tumor segmentation and classification using MRI and other imaging modalities,focusing on recent trends from 2022 to 20... This systematic review aims to comprehensively examine and compare deep learning methods for brain tumor segmentation and classification using MRI and other imaging modalities,focusing on recent trends from 2022 to 2025.The primary objective is to evaluate methodological advancements,model performance,dataset usage,and existing challenges in developing clinically robust AI systems.We included peer-reviewed journal articles and highimpact conference papers published between 2022 and 2025,written in English,that proposed or evaluated deep learning methods for brain tumor segmentation and/or classification.Excluded were non-open-access publications,books,and non-English articles.A structured search was conducted across Scopus,Google Scholar,Wiley,and Taylor&Francis,with the last search performed in August 2025.Risk of bias was not formally quantified but considered during full-text screening based on dataset diversity,validation methods,and availability of performance metrics.We used narrative synthesis and tabular benchmarking to compare performance metrics(e.g.,accuracy,Dice score)across model types(CNN,Transformer,Hybrid),imaging modalities,and datasets.A total of 49 studies were included(43 journal articles and 6 conference papers).These studies spanned over 9 public datasets(e.g.,BraTS,Figshare,REMBRANDT,MOLAB)and utilized a range of imaging modalities,predominantly MRI.Hybrid models,especially ResViT and UNetFormer,consistently achieved high performance,with classification accuracy exceeding 98%and segmentation Dice scores above 0.90 across multiple studies.Transformers and hybrid architectures showed increasing adoption post2023.Many studies lacked external validation and were evaluated only on a few benchmark datasets,raising concerns about generalizability and dataset bias.Few studies addressed clinical interpretability or uncertainty quantification.Despite promising results,particularly for hybrid deep learning models,widespread clinical adoption remains limited due to lack of validation,interpretability concerns,and real-world deployment barriers. 展开更多
关键词 Brain tumor segmentation brain tumor classification deep learning vision transformers hybrid models
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HCL Net: Deep Learning for Accurate Classification of Honeycombing Lung and Ground Glass Opacity in CT Images
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作者 Hairul Aysa Abdul Halim Sithiq Liyana Shuib +1 位作者 Muneer Ahmad Chermaine Deepa Antony 《Computers, Materials & Continua》 2026年第1期999-1023,共25页
Honeycombing Lung(HCL)is a chronic lung condition marked by advanced fibrosis,resulting in enlarged air spaces with thick fibrotic walls,which are visible on Computed Tomography(CT)scans.Differentiating between normal... Honeycombing Lung(HCL)is a chronic lung condition marked by advanced fibrosis,resulting in enlarged air spaces with thick fibrotic walls,which are visible on Computed Tomography(CT)scans.Differentiating between normal lung tissue,honeycombing lungs,and Ground Glass Opacity(GGO)in CT images is often challenging for radiologists and may lead to misinterpretations.Although earlier studies have proposed models to detect and classify HCL,many faced limitations such as high computational demands,lower accuracy,and difficulty distinguishing between HCL and GGO.CT images are highly effective for lung classification due to their high resolution,3D visualization,and sensitivity to tissue density variations.This study introduces Honeycombing Lungs Network(HCL Net),a novel classification algorithm inspired by ResNet50V2 and enhanced to overcome the shortcomings of previous approaches.HCL Net incorporates additional residual blocks,refined preprocessing techniques,and selective parameter tuning to improve classification performance.The dataset,sourced from the University Malaya Medical Centre(UMMC)and verified by expert radiologists,consists of CT images of normal,honeycombing,and GGO lungs.Experimental evaluations across five assessments demonstrated that HCL Net achieved an outstanding classification accuracy of approximately 99.97%.It also recorded strong performance in other metrics,achieving 93%precision,100%sensitivity,89%specificity,and an AUC-ROC score of 97%.Comparative analysis with baseline feature engineering methods confirmed the superior efficacy of HCL Net.The model significantly reduces misclassification,particularly between honeycombing and GGO lungs,enhancing diagnostic precision and reliability in lung image analysis. 展开更多
关键词 Deep learning honeycombing lung ground glass opacity Resnet50v2 multiclass classification
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An Improved Forest Fire Detection Model Using Audio Classification and Machine Learning
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作者 Kemahyanto Exaudi Deris Stiawan +4 位作者 Bhakti Yudho Suprapto Hanif Fakhrurroja MohdYazid Idris Tami AAlghamdi Rahmat Budiarto 《Computers, Materials & Continua》 2026年第1期2062-2085,共24页
Sudden wildfires cause significant global ecological damage.While satellite imagery has advanced early fire detection and mitigation,image-based systems face limitations including high false alarm rates,visual obstruc... Sudden wildfires cause significant global ecological damage.While satellite imagery has advanced early fire detection and mitigation,image-based systems face limitations including high false alarm rates,visual obstructions,and substantial computational demands,especially in complex forest terrains.To address these challenges,this study proposes a novel forest fire detection model utilizing audio classification and machine learning.We developed an audio-based pipeline using real-world environmental sound recordings.Sounds were converted into Mel-spectrograms and classified via a Convolutional Neural Network(CNN),enabling the capture of distinctive fire acoustic signatures(e.g.,crackling,roaring)that are minimally impacted by visual or weather conditions.Internet of Things(IoT)sound sensors were crucial for generating complex environmental parameters to optimize feature extraction.The CNN model achieved high performance in stratified 5-fold cross-validation(92.4%±1.6 accuracy,91.2%±1.8 F1-score)and on test data(94.93%accuracy,93.04%F1-score),with 98.44%precision and 88.32%recall,demonstrating reliability across environmental conditions.These results indicate that the audio-based approach not only improves detection reliability but also markedly reduces computational overhead compared to traditional image-based methods.The findings suggest that acoustic sensing integrated with machine learning offers a powerful,low-cost,and efficient solution for real-time forest fire monitoring in complex,dynamic environments. 展开更多
关键词 Audio classification convolutional neural network(CNN) environmental science forest fire detection machine learning spectrogram analysis IOT
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Enhancing Surface Water Classification:Integrating Time Series Features and Automated Sampling on Google Earth Engine
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作者 FU Yi YAO Yunlong +3 位作者 WANG Lei SHAN Yuanqi LI Weineng LIU Yuna 《Chinese Geographical Science》 2026年第2期337-350,I0007,共15页
Accurate extraction of surface water extent is a fundamental prerequisite for monitoring its dynamic changes.Although machine learning algorithms have been widely applied to surface water mapping,most studies focus pr... Accurate extraction of surface water extent is a fundamental prerequisite for monitoring its dynamic changes.Although machine learning algorithms have been widely applied to surface water mapping,most studies focus primarily on algorithmic outputs,with limited systematic evaluation of their applicability and constrained classification accuracy.In this study,we focused on the Songnen Plain in Northeast China and employed Sentinel-2 imagery acquired during 2020-2021 via the Google Earth Engine(GEE)platform to evaluate the performance of Classification and Regression Trees(CART),Random Forest(RF),and Support Vector Machine(SVM)for surface water classification.The classification process was optimized by incorporating automated training sample selection and integration of time series features.Validation with independent samples demonstrated the feasibility of automatic sample selection,yielding mean overall accuracies of 91.16%,90.99%,and 90.76%for RF,SVM,and CART,respectively.After integrating time series features,the mean overall accuracies of the three algorithms improved by 4.51%,5.45%,and 6.36%,respectively.In addition,spectral features such as MNDWI(Modified Normalized Difference Water Index),SWIR(Short Wave Infrared),and NDVI(Normalized Difference Vegetation Index)were identified as more important for surface water classification.This study establishes a more consistent framework for surface water mapping,offering new perspectives for improving and automating classification processes in the era of big and open data. 展开更多
关键词 surface water mapping machine learning classification performance Sentinel-2 Google Earth Engine(GEE) Songnen Plain China
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A Hybrid Deep Learning Multi-Class Classification Model for Alzheimer’s Disease Using Enhanced MRI Images
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作者 Ghadah Naif Alwakid 《Computers, Materials & Continua》 2026年第1期797-821,共25页
Alzheimer’s Disease(AD)is a progressive neurodegenerative disorder that significantly affects cognitive function,making early and accurate diagnosis essential.Traditional Deep Learning(DL)-based approaches often stru... Alzheimer’s Disease(AD)is a progressive neurodegenerative disorder that significantly affects cognitive function,making early and accurate diagnosis essential.Traditional Deep Learning(DL)-based approaches often struggle with low-contrast MRI images,class imbalance,and suboptimal feature extraction.This paper develops a Hybrid DL system that unites MobileNetV2 with adaptive classification methods to boost Alzheimer’s diagnosis by processing MRI scans.Image enhancement is done using Contrast-Limited Adaptive Histogram Equalization(CLAHE)and Enhanced Super-Resolution Generative Adversarial Networks(ESRGAN).A classification robustness enhancement system integrates class weighting techniques and a Matthews Correlation Coefficient(MCC)-based evaluation method into the design.The trained and validated model gives a 98.88%accuracy rate and 0.9614 MCC score.We also performed a 10-fold cross-validation experiment with an average accuracy of 96.52%(±1.51),a loss of 0.1671,and an MCC score of 0.9429 across folds.The proposed framework outperforms the state-of-the-art models with a 98%weighted F1-score while decreasing misdiagnosis results for every AD stage.The model demonstrates apparent separation abilities between AD progression stages according to the results of the confusion matrix analysis.These results validate the effectiveness of hybrid DL models with adaptive preprocessing for early and reliable Alzheimer’s diagnosis,contributing to improved computer-aided diagnosis(CAD)systems in clinical practice. 展开更多
关键词 Alzheimer’s disease deep learning MRI images MobileNetV2 contrast-limited adaptive histogram equalization(CLAHE) enhanced super-resolution generative adversarial networks(ESRGAN) multi-class classification
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High-precision classification of benthic habitat sediments in shallow waters of islands by multi-source data
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作者 Qiuhua TANG Ningning LI +4 位作者 Yujie ZHANG Zhipeng DONG Yongling ZHENG Jingjing BAO Jingyu ZHANG 《Journal of Oceanology and Limnology》 2026年第1期99-108,共10页
Benthic habitat mapping is an emerging discipline in the international marine field in recent years,providing an effective tool for marine spatial planning,marine ecological management,and decision-making applications... Benthic habitat mapping is an emerging discipline in the international marine field in recent years,providing an effective tool for marine spatial planning,marine ecological management,and decision-making applications.Seabed sediment classification is one of the main contents of seabed habitat mapping.In response to the impact of remote sensing imaging quality and the limitations of acoustic measurement range,where a single data source does not fully reflect the substrate type,we proposed a high-precision seabed habitat sediment classification method that integrates data from multiple sources.Based on WorldView-2 multi-spectral remote sensing image data and multibeam bathymetry data,constructed a random forests(RF)classifier with optimal feature selection.A seabed sediment classification experiment integrating optical remote sensing and acoustic remote sensing data was carried out in the shallow water area of Wuzhizhou Island,Hainan,South China.Different seabed sediment types,such as sand,seagrass,and coral reefs were effectively identified,with an overall classification accuracy of 92%.Experimental results show that RF matrix optimized by fusing multi-source remote sensing data for feature selection were better than the classification results of simple combinations of data sources,which improved the accuracy of seabed sediment classification.Therefore,the method proposed in this paper can be effectively applied to high-precision seabed sediment classification and habitat mapping around islands and reefs. 展开更多
关键词 Wuzhizhou Island marine remote sensing coastal mapping multi-spectral remote sensing shallow water reef seabed sediment classification benthic habitat mapping multi-source data fusion random forest(RF)
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超微血管成像技术联合超声造影对TI-RADS分级为4a级及4b级结节的鉴别诊断研究
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作者 吴佳欢 孙旭 王繁博 《黑龙江医药科学》 2025年第3期16-19,共4页
目的:拟采用超微血管成像技术(superb microvascular imaging,SMI)和超声造影(contrast-enhanced ultrasound,CEUS)相结合的方法,对甲状腺4a及4b级结节进行TI-RADS(thyroid imaging reporting and data system)分级。方法:对27例超声造... 目的:拟采用超微血管成像技术(superb microvascular imaging,SMI)和超声造影(contrast-enhanced ultrasound,CEUS)相结合的方法,对甲状腺4a及4b级结节进行TI-RADS(thyroid imaging reporting and data system)分级。方法:对27例超声造影证实的甲状腺结节进行回顾性分析,术前分别行2 D灰阶超声、超微血管显像和超声造影,并对其进行分组、定量计分,得到各组的工作特性曲线(receiver operating characteristic,ROC)。结果:(1)27例行超声造影检查的甲状腺结节中:TI-RADS分级联合超微血管成像与TI-RADS分级联合超声造影曲线下面积相比较(Z=-0.206,P=0.175),诊断效能差异无统计学意义(P>0.05),表明SMI与CEUS诊断效能近似;(2)27例行超声造影检查的甲状腺结节中:TI-RADS分级联合超微血管成像和超声造影与TI-RADS分级曲线下面积相比较(Z=-1.242,P=0.011),诊断效能差异有统计学意义(P<0.05)。结论:TI-RADS分级联合超微血管成像结合超声造影能够提高甲状腺结节诊断的准确性,能够为临床诊治提供较为准确指导;超微血管成像与超声造影在鉴别诊断甲状腺结节良恶性方面具有较高一致性。 展开更多
关键词 超微血管成像 ti-rads 超声造影 甲状腺结节
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代谢综合征对甲状腺结节患者ACR TI-RADS分级与中医体质分布的影响
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作者 罗小倩 张继峰 +3 位作者 胡灏 周正 周上军 温春图 《广州中医药大学学报》 2025年第12期2929-2935,共7页
【目的】比较合并与非合并代谢综合征(MS)的甲状腺结节(TN)患者在美国放射学会甲状腺影像报告和数据系统(ACR TI-RADS)分级及中医体质分布特征方面的差异,探讨MS对ACR TI-RADS分级的影响,为TN的中医个体化诊疗提供依据。【方法】采用横... 【目的】比较合并与非合并代谢综合征(MS)的甲状腺结节(TN)患者在美国放射学会甲状腺影像报告和数据系统(ACR TI-RADS)分级及中医体质分布特征方面的差异,探讨MS对ACR TI-RADS分级的影响,为TN的中医个体化诊疗提供依据。【方法】采用横断面调查方法,收集2024年6月至2025年2月在广州中医药大学东莞医院参与调查的TN患者的资料,包括性别、年龄、既往病史、腹围、体质量指数(BMI)、血压、空腹血糖(FPG)、血脂、甲状腺功能、甲状腺超声结果等,并通过填写中医体质辨识表对患者进行中医体质判定。根据MS诊断标准将患者分为单纯TN组(TN组)与TN合并MS组(TN+MS组),对比分析2组ACR TI-RADS分级与中医体质分布的差异。【结果】(1)共纳入219例TN患者(TN组121例,TN+MS组98例),较之TN组,TN+MS组男性比例(66.32%vs.48.76%),腹围、BMI、收缩压(SBP)、舒张压(DBP)、FPG及甘油三酯(TG)显著升高,高密度脂蛋白胆固醇(HDL-C)显著降低(均P<0.01)。(2)ACR TI-RADS分级比较,TN+MS女性组TR4-5级结节占比高于TN女性组(P<0.05),TN+MS男性组与TN男性组比较差异无统计学意义(P>0.05)。(3)TR4-5级患者女性比例(55.00%vs.38.99%)及SBP显著高于TR1-3级(均P<0.05)。(4)通过配对Logistic回归分析ACR TI-RADS的相关因素,将患者按性别完全匹配和年龄±1岁进行配对,以TR1-3级为对照,评估MS相关指标(BMI、SBP、DBP、FPG、TG、HDL-C)与TR4-5级的关联性,得出FPG升高与TN评级为TR4-5级的风险升高有关(OR=1.32,95%CI:1.02~1.70,P<0.05)。(5)中医体质分布特征方面,TN组以平和质、气郁质、痰湿质、阳虚质为主,TN+MS组以痰湿质、湿热质、平和质、气虚质为主。TN组气郁质比例大于TN+MS组,TN+MS组湿热质比例大于TN组(均P<0.05)。【结论】合并MS的女性TN患者ACR TIRADS分级升高,FPG水平与ACR TI-RADS高风险分级(TR4-5级)相关。合并MS患者的中医体质分布与单纯TN患者存在差异,在中医个体化诊疗中,要注意TN的差异化防治,单纯TN以疏肝理气、运脾化痰为主导,TN合并MS则应兼顾清热化瘀。 展开更多
关键词 甲状腺结节 代谢综合征 ACR ti-rads 中医体质 气郁质 湿热质
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Urban tree species classification based on multispectral airborne LiDAR 被引量:1
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作者 HU Pei-Lun CHEN Yu-Wei +3 位作者 Mohammad Imangholiloo Markus Holopainen WANG Yi-Cheng Juha Hyyppä 《红外与毫米波学报》 北大核心 2025年第2期211-216,共6页
Urban tree species provide various essential ecosystem services in cities,such as regulating urban temperatures,reducing noise,capturing carbon,and mitigating the urban heat island effect.The quality of these services... Urban tree species provide various essential ecosystem services in cities,such as regulating urban temperatures,reducing noise,capturing carbon,and mitigating the urban heat island effect.The quality of these services is influenced by species diversity,tree health,and the distribution and the composition of trees.Traditionally,data on urban trees has been collected through field surveys and manual interpretation of remote sensing images.In this study,we evaluated the effectiveness of multispectral airborne laser scanning(ALS)data in classifying 24 common urban roadside tree species in Espoo,Finland.Tree crown structure information,intensity features,and spectral data were used for classification.Eight different machine learning algorithms were tested,with the extra trees(ET)algorithm performing the best,achieving an overall accuracy of 71.7%using multispectral LiDAR data.This result highlights that integrating structural and spectral information within a single framework can improve the classification accuracy.Future research will focus on identifying the most important features for species classification and developing algorithms with greater efficiency and accuracy. 展开更多
关键词 multispectral airborne LiDAR machine learning tree species classification
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高频彩色多普勒超声及TI-RADS分类诊断甲状腺结节良恶性的价值 被引量:2
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作者 朱敏敏 《影像研究与医学应用》 2025年第5期145-148,共4页
目的:分析高频彩色多普勒超声及甲状腺影像学报告和数据系统(TI-RADS)分类诊断甲状腺结节良恶性的价值。方法:选取2021年2月—2023年5月江苏省如皋市第三人民医院收治的76例甲状腺结节患者为研究对象,均给予高频彩色多普勒超声及TI-RAD... 目的:分析高频彩色多普勒超声及甲状腺影像学报告和数据系统(TI-RADS)分类诊断甲状腺结节良恶性的价值。方法:选取2021年2月—2023年5月江苏省如皋市第三人民医院收治的76例甲状腺结节患者为研究对象,均给予高频彩色多普勒超声及TI-RADS分类诊断,以手术病理结果作为诊断的金标准,探讨该法对甲状腺结节病理性质的诊断价值。结果:76例甲状腺患者共检出182个甲状腺结节,其中良性结节101个,以2~3类为主,恶性结节81个,以4A、4B和5类为主。高频彩色多普勒超声及TI-RADS分类诊断的灵敏度、特异度、准确率、阳性预测值和阴性检测值(98.77%、99.01%、98.90%、98.77%、99.01%)均高于高频彩色多普勒超声(88.89%、92.08%、90.66%、90.00%、91.18%),差异有统计学意义(P<0.05)。结论:在甲状腺结节良恶性诊断中,行高频彩色多普勒超声及TI-RADS分类诊断,可有效鉴别结节病理性质,提高诊断整体精度水平,可在甲状腺结节的临床诊断和治疗中发挥准确可靠的指导作用,有利于甲状腺结节患者的预后转归,值得临床应用。 展开更多
关键词 高频彩色多普勒超声 ti-rads分类诊断 甲状腺结节 良性 恶性
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基于TI-RADS分级探讨甲状腺结节与中医证型的相关性
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作者 何勇 谢勤 华东平 《当代医药论丛》 2025年第23期135-138,共4页
目的:研究甲状腺结节(TN)不同TI-RADS超声分级与中医证型的相关性。方法:采集就诊于铜陵市中医医院150例不同TI-RADS分级TN患者的资料,分析患者在性别、中医证型方面的分布规律以及中医证型与不同TI-RADS分级之间的关联性。结果:150例T... 目的:研究甲状腺结节(TN)不同TI-RADS超声分级与中医证型的相关性。方法:采集就诊于铜陵市中医医院150例不同TI-RADS分级TN患者的资料,分析患者在性别、中医证型方面的分布规律以及中医证型与不同TI-RADS分级之间的关联性。结果:150例TN患者中医证型分布由高到低依次为痰瘀互结证、肝郁痰凝证、阴虚内热证及脾肾阳虚证;TI-RADS分级分布为TI-RADS 3级> 4a级> 2级。各TI-RADS分级(TI-RADS 2级、TI-RADS 3级、TI-RADS 4a级)患者性别分布差异显著(P<0.01),女性TN患者数量多于男性。不同中医证型患者的TI-RADS分级差异显著(P<0.05);痰瘀互结证、肝郁痰凝证在TI-RADS 2级、3级的分布比阴虚内热证、脾肾阳虚证多,而在TI-RADS 4a级分布上较阴虚内热证、脾肾阳虚证少。结论:TN不同TI-RADS分级与中医证型存在相关性。 展开更多
关键词 甲状腺结节 中医证型 ti-rads分级
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C-TIRADS与ACR TI-RADS在甲状腺结节中的诊断效能对比
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作者 刘晁均 刘淑华 《智慧健康》 2025年第14期24-26,共3页
目的 对比分析甲状腺结节超声恶性危险分层中国指南(C-TIRADS)与美国放射学会规范化的甲状腺影像报告和数据系统(ACR TI-RADS)诊断甲状腺结节的效能。方法 以2023年7—12月江阴市人民医院诊治的疑似甲状腺结节患者225例作为研究对象进... 目的 对比分析甲状腺结节超声恶性危险分层中国指南(C-TIRADS)与美国放射学会规范化的甲状腺影像报告和数据系统(ACR TI-RADS)诊断甲状腺结节的效能。方法 以2023年7—12月江阴市人民医院诊治的疑似甲状腺结节患者225例作为研究对象进行分析,对所有患者均进行彩色多普勒超声检查,将影像学结果参照C-TIRADS及ACR TI-RADS进行评估,以病理结果作为金标准,对比两种参考依据诊断甲状腺结节良恶性的效能。结果 病理结果显示,97例确诊为恶性甲状腺结节,128例确诊为良性。通过计算,C-TIRADS诊断甲状腺结节疾病的特异度高于ACR TI-RADS(P<0.05),而ACR TI RADS诊断甲状腺结节疾病的灵敏度高于C-TIRADS(P<0.05)。两项诊断的准确率对比,差异无统计学意义(P>0.05)。结论 临床诊断甲状腺结节疾病可参考C-TIRADS及ACR TI RADS标准,二者均有较高的准确率,但二者灵敏度与特异度间存在差异,应合理选择,以便为临床疾病诊断提供参考。 展开更多
关键词 C-TIRADS ACR ti-rads 甲状腺结节 诊断效能
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Impact of classification granularity on interdisciplinary performance assessment of research institutes and organizations 被引量:1
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作者 Jiandong Zhang Sonia Gruber Rainer Frietsch 《Journal of Data and Information Science》 2025年第2期61-79,共19页
Purpose:Interdisciplinary research has become a critical approach to addressing complex societal,economic,technological,and environmental challenges,driving innovation and integrating scientific knowledge.While interd... Purpose:Interdisciplinary research has become a critical approach to addressing complex societal,economic,technological,and environmental challenges,driving innovation and integrating scientific knowledge.While interdisciplinarity indicators are widely used to evaluate research performance,the impact of classification granularity on these assessments remains underexplored.Design/methodology/approach:This study investigates how different levels of classification granularity-macro,meso,and micro-affect the evaluation of interdisciplinarity in research institutes.Using a dataset of 262 institutes from four major German non-university organizations(FHG,HGF,MPG,WGL)from 2018 to 2022,we examine inconsistencies in interdisciplinarity across levels,analyze ranking changes,and explore the influence of institutional fields and research focus(applied vs.basic).Findings:Our findings reveal significant inconsistencies in interdisciplinarity across classification levels,with rankings varying substantially.Notably,the Fraunhofer Society(FHG),which performs well at the macro level,experiences significant ranking declines at meso and micro levels.Normalizing interdisciplinarity by research field confirmed that these declines persist.The research focus of institutes,whether applied,basic,or mixed,does not significantly explain the observed ranking dynamics.Research limitations:This study has only considered the publication-based dimension of institutional interdisciplinarity and has not explored other aspects.Practical implications:The findings provide insights for policymakers,research managers,and scholars to better interpret interdisciplinarity metrics and support interdisciplinary research effectively.Originality/value:This study underscores the critical role of classification granularity in interdisciplinarity assessment and emphasizes the need for standardized approaches to ensure robust and fair evaluations. 展开更多
关键词 Interdisciplinarity Paper-level classification system Organization evaluation
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