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A Systematic Literature Review of Machine Learning and Deep Learning Approaches for Spectral Image Classification in Agricultural Applications Using Aerial Photography
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作者 Usman Khan Muhammad Khalid Khan +4 位作者 Muhammad Ayub Latif Muhammad Naveed Muhammad Mansoor Alam Salman A.Khan Mazliham Mohd Su’ud 《Computers, Materials & Continua》 SCIE EI 2024年第3期2967-3000,共34页
Recently,there has been a notable surge of interest in scientific research regarding spectral images.The potential of these images to revolutionize the digital photography industry,like aerial photography through Unma... Recently,there has been a notable surge of interest in scientific research regarding spectral images.The potential of these images to revolutionize the digital photography industry,like aerial photography through Unmanned Aerial Vehicles(UAVs),has captured considerable attention.One encouraging aspect is their combination with machine learning and deep learning algorithms,which have demonstrated remarkable outcomes in image classification.As a result of this powerful amalgamation,the adoption of spectral images has experienced exponential growth across various domains,with agriculture being one of the prominent beneficiaries.This paper presents an extensive survey encompassing multispectral and hyperspectral images,focusing on their applications for classification challenges in diverse agricultural areas,including plants,grains,fruits,and vegetables.By meticulously examining primary studies,we delve into the specific agricultural domains where multispectral and hyperspectral images have found practical use.Additionally,our attention is directed towards utilizing machine learning techniques for effectively classifying hyperspectral images within the agricultural context.The findings of our investigation reveal that deep learning and support vector machines have emerged as widely employed methods for hyperspectral image classification in agriculture.Nevertheless,we also shed light on the various issues and limitations of working with spectral images.This comprehensive analysis aims to provide valuable insights into the current state of spectral imaging in agriculture and its potential for future advancements. 展开更多
关键词 Machine learning deep learning unmanned aerial vehicles multi-spectral images image recognition object detection hyperspectral images aerial photography
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Robust key point descriptor for multi-spectral image matching 被引量:3
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作者 Yueming Qin Zhiguo Cao +1 位作者 Wen Zhuo Zhenghong Yu 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2014年第4期681-687,共7页
Histogram of collinear gradient-enhanced coding (HCGEC), a robust key point descriptor for multi-spectral image matching, is proposed. The HCGEC mainly encodes rough structures within an image and suppresses detaile... Histogram of collinear gradient-enhanced coding (HCGEC), a robust key point descriptor for multi-spectral image matching, is proposed. The HCGEC mainly encodes rough structures within an image and suppresses detailed textural information, which is desirable in multi-spectral image matching. Experiments on two multi-spectral data sets demonstrate that the proposed descriptor can yield significantly better results than some state-of- the-art descriptors. 展开更多
关键词 collinear gradient-enhanced coding (CGEC) key pointdescriptor multi-spectral image matching.
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Transparent and Accurate COVID-19 Diagnosis:Integrating Explainable AI with Advanced Deep Learning in CT Imaging
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作者 Mohammad Mehedi Hassan Salman A.AlQahtani +1 位作者 Mabrook S.AlRakhami Ahmed Zohier Elhendi 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第6期3101-3123,共23页
In the current landscape of the COVID-19 pandemic,the utilization of deep learning in medical imaging,especially in chest computed tomography(CT)scan analysis for virus detection,has become increasingly significant.De... In the current landscape of the COVID-19 pandemic,the utilization of deep learning in medical imaging,especially in chest computed tomography(CT)scan analysis for virus detection,has become increasingly significant.Despite its potential,deep learning’s“black box”nature has been a major impediment to its broader acceptance in clinical environments,where transparency in decision-making is imperative.To bridge this gap,our research integrates Explainable AI(XAI)techniques,specifically the Local Interpretable Model-Agnostic Explanations(LIME)method,with advanced deep learning models.This integration forms a sophisticated and transparent framework for COVID-19 identification,enhancing the capability of standard Convolutional Neural Network(CNN)models through transfer learning and data augmentation.Our approach leverages the refined DenseNet201 architecture for superior feature extraction and employs data augmentation strategies to foster robust model generalization.The pivotal element of our methodology is the use of LIME,which demystifies the AI decision-making process,providing clinicians with clear,interpretable insights into the AI’s reasoning.This unique combination of an optimized Deep Neural Network(DNN)with LIME not only elevates the precision in detecting COVID-19 cases but also equips healthcare professionals with a deeper understanding of the diagnostic process.Our method,validated on the SARS-COV-2 CT-Scan dataset,demonstrates exceptional diagnostic accuracy,with performance metrics that reinforce its potential for seamless integration into modern healthcare systems.This innovative approach marks a significant advancement in creating explainable and trustworthy AI tools for medical decisionmaking in the ongoing battle against COVID-19. 展开更多
关键词 Explainable AI COVID-19 ct images deep learning
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Cardiac CT Image Segmentation for Deep Learning-Based Coronary Calcium Detection Using K-Means Clustering and Grabcut Algorithm 被引量:1
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作者 Sungjin Lee Ahyoung Lee Min Hong 《Computer Systems Science & Engineering》 SCIE EI 2023年第8期2543-2554,共12页
Specific medical data has limitations in that there are not many numbers and it is not standardized.to solve these limitations,it is necessary to study how to efficiently process these limited amounts of data.In this ... Specific medical data has limitations in that there are not many numbers and it is not standardized.to solve these limitations,it is necessary to study how to efficiently process these limited amounts of data.In this paper,deep learning methods for automatically determining cardiovascular diseases are described,and an effective preprocessing method for CT images that can be applied to improve the performance of deep learning was conducted.The cardiac CT images include several parts of the body such as the heart,lungs,spine,and ribs.The preprocessing step proposed in this paper divided CT image data into regions of interest and other regions using K-means clustering and the Grabcut algorithm.We compared the deep learning performance results of original data,data using only K-means clustering,and data using both K-means clustering and the Grabcut algorithm.All data used in this paper were collected at Soonchunhyang University Cheonan Hospital in Korea and the experimental test proceeded with IRB approval.The training was conducted using Resnet 50,VGG,and Inception resnet V2 models,and Resnet 50 had the best accuracy in validation and testing.Through the preprocessing process proposed in this paper,the accuracy of deep learning models was significantly improved by at least 10%and up to 40%. 展开更多
关键词 Deep learning VGG resnet ct image processing
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Analysis of Imaging Characteristics and Dynamic Changes of 3 Cases of Severe Novel Coronavirus Pneumonia in Qinghai Province
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作者 Yingfang Yu Ruiyun Zhao +3 位作者 Changde Li Fuqiang Ma Lingyun Guo Yang Li 《Journal of Clinical and Nursing Research》 2024年第3期120-126,共7页
Objective:To analyze the characteristics,dynamic changes,and outcomes of the first imaging manifestations of 3 patients with severe COVID-19 in our hospital.Methods:Computed tomography(CT)findings of 3 patients with s... Objective:To analyze the characteristics,dynamic changes,and outcomes of the first imaging manifestations of 3 patients with severe COVID-19 in our hospital.Methods:Computed tomography(CT)findings of 3 patients with severe COVID-19 who tested positive by the nucleic acid test in our hospital were selected,mainly focusing on the morphology,distribution characteristics,and dynamic changes of the first CT findings.Results:3 patients with severe pneumonia were older,with one aged 80.The first chest CT examination for all 3 patients differed.Imaging showed a leafy distribution of consolidation,primarily affecting the lower lobes of both lungs and extending subpleurally.A grid-like pattern was observed,along with changes in the consolidation and air bronchogram.These changes had slower absorption,especially in patients with underlying diseases.Conclusion:CT manifestations of severe COVID-19 have specific characteristics and the analysis of their characteristics and dynamic changes provide valuable insights for clinical treatment. 展开更多
关键词 COVID-19 imagING ct findings Dynamic changes
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A new imaging mode based on X-ray CT as prior image and sparsely sampled projections for rapid clinical proton CT
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作者 Yu-Qing Yang Wen-Cheng Fang +4 位作者 Xiao-Xia Huang Qiang Du Ming Li Jian Zheng Zhen-Tang Zhao 《Nuclear Science and Techniques》 SCIE EI CAS CSCD 2023年第8期64-74,共11页
Proton computed tomography(CT)has a distinct practical significance in clinical applications.It eliminates 3–5%errors caused by the transformation of Hounsfield unit(HU)to relative stopping power(RSP)values when usin... Proton computed tomography(CT)has a distinct practical significance in clinical applications.It eliminates 3–5%errors caused by the transformation of Hounsfield unit(HU)to relative stopping power(RSP)values when using X-ray CT for positioning and treatment planning systems(TPSs).Following the development of FLASH proton therapy,there are increased requirements for accurate and rapid positioning in TPSs.Thus,a new rapid proton CT imaging mode is proposed based on sparsely sampled projections.The proton beam was boosted to 350 MeV by a compact proton linear accelerator(LINAC).In this study,the comparisons of the proton scattering with the energy of 350 MeV and 230 MeV are conducted based on GEANT4 simulations.As the sparsely sampled information associated with beam acquisitions at 12 angles is not enough for reconstruction,X-ray CT is used as a prior image.The RSP map generated by converting the X-ray CT was constructed based on Monte Carlo simulations.Considering the estimation of the most likely path(MLP),the prior image-constrained compressed sensing(PICCS)algorithm is used to reconstruct images from two different phantoms using sparse proton projections of 350 MeV parallel proton beam.The results show that it is feasible to realize the proton image reconstruction with the rapid proton CT imaging proposed in this paper.It can produce RSP maps with much higher accuracy for TPSs and fast positioning to achieve ultra-fast imaging for real-time image-guided radiotherapy(IGRT)in clinical proton therapy applications. 展开更多
关键词 Proton ct Real-time image guidance image reconstruction Proton therapy
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Stacked Gated Recurrent Unit Classifier with CT Images for Liver Cancer Classification
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作者 Mahmoud Ragab Jaber Alyami 《Computer Systems Science & Engineering》 SCIE EI 2023年第3期2309-2322,共14页
Liver cancer is one of the major diseases with increased mortality in recent years,across the globe.Manual detection of liver cancer is a tedious and laborious task due to which Computer Aided Diagnosis(CAD)models hav... Liver cancer is one of the major diseases with increased mortality in recent years,across the globe.Manual detection of liver cancer is a tedious and laborious task due to which Computer Aided Diagnosis(CAD)models have been developed to detect the presence of liver cancer accurately and classify its stages.Besides,liver cancer segmentation outcome,using medical images,is employed in the assessment of tumor volume,further treatment plans,and response moni-toring.Hence,there is a need exists to develop automated tools for liver cancer detection in a precise manner.With this motivation,the current study introduces an Intelligent Artificial Intelligence with Equilibrium Optimizer based Liver cancer Classification(IAIEO-LCC)model.The proposed IAIEO-LCC technique initially performs Median Filtering(MF)-based pre-processing and data augmentation process.Besides,Kapur’s entropy-based segmentation technique is used to identify the affected regions in liver.Moreover,VGG-19 based feature extractor and Equilibrium Optimizer(EO)-based hyperparameter tuning processes are also involved to derive the feature vectors.At last,Stacked Gated Recurrent Unit(SGRU)classifier is exploited to detect and classify the liver cancer effectively.In order to demonstrate the superiority of the proposed IAIEO-LCC technique in terms of performance,a wide range of simulations was conducted and the results were inspected under different measures.The comparison study results infer that the proposed IAIEO-LCC technique achieved an improved accuracy of 98.52%. 展开更多
关键词 Liver cancer image segmentation artificial intelligence deep learning ct images parameter tuning
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Variant Wasserstein Generative Adversarial Network Applied on Low Dose CT Image Denoising
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作者 Anoud A.Mahmoud Hanaa A.Sayed Sara S.Mohamed 《Computers, Materials & Continua》 SCIE EI 2023年第5期4535-4552,共18页
Computed Tomography(CT)images have been extensively employed in disease diagnosis and treatment,causing a huge concern over the dose of radiation to which patients are exposed.Increasing the radiation dose to get a be... Computed Tomography(CT)images have been extensively employed in disease diagnosis and treatment,causing a huge concern over the dose of radiation to which patients are exposed.Increasing the radiation dose to get a better image may lead to the development of genetic disorders and cancer in the patients;on the other hand,decreasing it by using a Low-Dose CT(LDCT)image may cause more noise and increased artifacts,which can compromise the diagnosis.So,image reconstruction from LDCT image data is necessary to improve radiologists’judgment and confidence.This study proposed three novel models for denoising LDCT images based on Wasserstein Generative Adversarial Network(WGAN).They were incorporated with different loss functions,including Visual Geometry Group(VGG),Structural Similarity Loss(SSIM),and Structurally Sensitive Loss(SSL),to reduce noise and preserve important information on LDCT images and investigate the effect of different types of loss functions.Furthermore,experiments have been conducted on the Graphical Processing Unit(GPU)and Central Processing Unit(CPU)to compare the performance of the proposed models.The results demonstrated that images from the proposed WGAN-SSIM,WGAN-VGG-SSIM,and WGAN-VGG-SSL were denoised better than those from state-of-the-art models(WGAN,WGAN-VGG,and SMGAN)and converged to a stable equilibrium compared with WGAN and WGAN-VGG.The proposed models are effective in reducing noise,suppressing artifacts,and maintaining informative structure and texture details,especially WGAN-VGG-SSL which achieved a high peak-signalto-noise ratio(PNSR)on both GPU(26.1336)and CPU(25.8270).The average accuracy of WGAN-VGG-SSL outperformed that of the state-ofthe-art methods by 1 percent.Experiments prove that theWGAN-VGG-SSL is more stable than the other models on both GPU and CPU. 展开更多
关键词 Machine learning deep learning image denoising low dose ct loss function
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Research on Automatic Elimination of Laptop Computer in Security CT Images Based on Projection Algorithm and YOLOv7-Seg
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作者 Fei Wang Baosheng Liu +1 位作者 Yijun Tang Lei Zhao 《Journal of Computer and Communications》 2023年第9期1-17,共17页
In civil aviation security screening, laptops, with their intricate structural composition, provide the potential for criminals to conceal dangerous items. Presently, the security process necessitates passengers to in... In civil aviation security screening, laptops, with their intricate structural composition, provide the potential for criminals to conceal dangerous items. Presently, the security process necessitates passengers to individually present their laptops for inspection. The paper introduced a method for laptop removal. By combining projection algorithms with the YOLOv7-Seg model, a laptop’s three views were generated through projection, and instance segmentation of these views was achieved using YOLOv7-Seg. The resulting 2D masks from instance segmentation at different angles were employed to reconstruct a 3D mask through angle restoration. Ultimately, the intersection of this 3D mask with the original 3D data enabled the successful extraction of the laptop’s 3D information. Experimental results demonstrated that the fusion of projection and instance segmentation facilitated the automatic removal of laptops from CT data. Moreover, higher instance segmentation model accuracy leads to more precise removal outcomes. By implementing the laptop removal functionality, the civil aviation security screening process becomes more efficient and convenient. Passengers will no longer be required to individually handle their laptops, effectively enhancing the efficiency and accuracy of security screening. 展开更多
关键词 Instance Segmentation PROJEctION ct image 3D Segmentation Real-Time Detection
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A Robust Automated Framework for Classification of CT Covid-19 Images Using MSI-ResNet
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作者 Aghila Rajagopal Sultan Ahmad +3 位作者 Sudan Jha Ramachandran Alagarsamy Abdullah Alharbi Bader Alouffi 《Computer Systems Science & Engineering》 SCIE EI 2023年第6期3215-3229,共15页
Nowadays,the COVID-19 virus disease is spreading rampantly.There are some testing tools and kits available for diagnosing the virus,but it is in a lim-ited count.To diagnose the presence of disease from radiological i... Nowadays,the COVID-19 virus disease is spreading rampantly.There are some testing tools and kits available for diagnosing the virus,but it is in a lim-ited count.To diagnose the presence of disease from radiological images,auto-mated COVID-19 diagnosis techniques are needed.The enhancement of AI(Artificial Intelligence)has been focused in previous research,which uses X-ray images for detecting COVID-19.The most common symptoms of COVID-19 are fever,dry cough and sore throat.These symptoms may lead to an increase in the rigorous type of pneumonia with a severe barrier.Since medical imaging is not suggested recently in Canada for critical COVID-19 diagnosis,computer-aided systems are implemented for the early identification of COVID-19,which aids in noticing the disease progression and thus decreases the death rate.Here,a deep learning-based automated method for the extraction of features and classi-fication is enhanced for the detection of COVID-19 from the images of computer tomography(CT).The suggested method functions on the basis of three main pro-cesses:data preprocessing,the extraction of features and classification.This approach integrates the union of deep features with the help of Inception 14 and VGG-16 models.At last,a classifier of Multi-scale Improved ResNet(MSI-ResNet)is developed to detect and classify the CT images into unique labels of class.With the support of available open-source COVID-CT datasets that consists of 760 CT pictures,the investigational validation of the suggested method is estimated.The experimental results reveal that the proposed approach offers greater performance with high specificity,accuracy and sensitivity. 展开更多
关键词 Covid-19 ct images multi-scale improved ResNet AI inception 14 and VGG-16 models
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Multi-Spectral and Fluorescence Imaging in Prevention of Overdose of Herbicides: The Case of Maize
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作者 Anicet K. Kouakou Adama P. Soro +1 位作者 Alvarez K. Taky Jérémie T. Zoueu 《Spectral Analysis Review》 2017年第2期11-24,共14页
Evaluation of the impact of herbicides on maize was done through multi- spectral and multi-modal imaging and multi-spectral fluorescence imaging combined with statistical methods. Spectra containing 13 wavelengths ran... Evaluation of the impact of herbicides on maize was done through multi- spectral and multi-modal imaging and multi-spectral fluorescence imaging combined with statistical methods. Spectra containing 13 wavelengths ranging from 375 nm to 940 nm were derived from multi-spectral images in transmission, reflection and scattering mode and fluorescence images obtained using high-pass filters (F450 nm, F500 nm, F550 nm, F600 nm, F650 nm) on control maize samples and maize samples treated with Herbextra herbicide were used. The appearance of the spectra allowed us to characterize the effect of the herbicide on the maize pigment concentration. The fluorescence images allowed us to track the fate of absorbed energy and through PLS-DA and SVM-DA to discriminate the two leaf categories with very low error rates for the test, i.e. 4.9% and 2% respectively. The results of this technique can be used in the context of precision agriculture. 展开更多
关键词 MAIZE Herbextra multi-spectral imagING Multimodal imagING FLUORESCENCE PLS-DA SVM-DA
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Image J测量CT扫描图像脂肪面积的应用 被引量:11
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作者 何华 孙曾梅 +3 位作者 唐蜀西 周燚 蒋灵均 邬云红 《广东医学》 CAS 北大核心 2017年第2期255-258,共4页
目的探索一种可靠简便、不依赖CT图像工作站软件测量CT扫描图像腹部脂肪面积(VFA)的方法。方法对8名健康受试者行CT腹部平扫,定义采用西门子CT扫描仪自带软件测量VFA为方法 A,西门子CT扫描后的图像采用Image J软件来测量为方法 B。以方... 目的探索一种可靠简便、不依赖CT图像工作站软件测量CT扫描图像腹部脂肪面积(VFA)的方法。方法对8名健康受试者行CT腹部平扫,定义采用西门子CT扫描仪自带软件测量VFA为方法 A,西门子CT扫描后的图像采用Image J软件来测量为方法 B。以方法 A为金标准,评价方法 B测定结果的准确性及稳定性。结果 (1)准确性:方法 A与方法 B测定的内脏VFA和腹部脂肪总面积均高度相关(r=0.965 8,95%CI:0.817 7~0.994,P<0.001;r=0.997 7,95%CI:0.986 9~0.999 6,P<0.001);Bland-Altman检验证实方法 A与方法 B的一致性良好。方法 A与方法 B测量VFA的变异系数为4.86%。(2)稳定性:采用方法 B测量,观察者组内相关系数ICCs=1.0(95%CI:0.998~1.0),观察者间组内相关系数为ICCs=0.999 8(95%CI:0.999 4~1)。结论采用Image J软件分析腹部及腹内VFA结果准确稳定,不受专业软件的局限。 展开更多
关键词 ct图像 腹内脂肪面积 image J软件
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颅脑CT灌注成像及磁共振成像在脑梗死患者中的应用 被引量:1
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作者 荆梅 顾欣欣 《中国实用神经疾病杂志》 2024年第1期43-47,共5页
目的分析颅脑CT灌注成像及磁共振成像对脑梗死患者的诊断价值。方法选取2022-03—2023-05在江苏省中西医结合医院就诊的80例疑似脑梗死患者为研究对象,对比分析GE Revolution CT颅脑灌注成像、磁共振成像及联合检查的敏感性、特异性、... 目的分析颅脑CT灌注成像及磁共振成像对脑梗死患者的诊断价值。方法选取2022-03—2023-05在江苏省中西医结合医院就诊的80例疑似脑梗死患者为研究对象,对比分析GE Revolution CT颅脑灌注成像、磁共振成像及联合检查的敏感性、特异性、准确性,制作3种影像学检查的受试者工作特征(ROC)曲线。结果根据患者病情和临床综合诊断确诊,80例疑似脑梗死患者中脑梗死阳性69例(86.25%),脑梗死阴性11例(13.75%)。3种影像学检查方法的灵敏度、准确率比较,从高到低依次为联合检查、GE Revolution CT颅脑灌注成像检查、磁共振成像检查,差异有统计学意义(P<0.05)。GE Revolution CT颅脑灌注成像检查、磁共振成像检查、联合检查诊断脑梗死的ROC曲线下面积(AUC)分别为0.8109、0.7688、0.8682。结论GE Revolution CT颅脑灌注成像与磁共振成像检查的联合应用,有利于提高脑梗死患者诊断的灵敏度、准确率及AUC水平。 展开更多
关键词 脑梗死 GE Revolution ct 颅脑灌注成像 磁共振成像 灵敏度 准确率
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双能量CT非线性融合和噪声优化的虚拟单能量图像技术在喉鳞状细胞癌中的应用
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作者 何长久 刘杰克 +4 位作者 青浩渺 郭玲 胡仕北 周鹏 何乐民 《重庆医科大学学报》 CAS CSCD 北大核心 2024年第2期198-202,共5页
目的:探讨双能量CT线性融合图像(linear blending imaging,LBI)、非线性融合图像(nonlinear blending image,NBI)和噪声优化的虚拟单能量图像(noise-optimized virtual monoenergetic image,VMI+)技术在喉鳞状细胞癌中的应用价值。方法... 目的:探讨双能量CT线性融合图像(linear blending imaging,LBI)、非线性融合图像(nonlinear blending image,NBI)和噪声优化的虚拟单能量图像(noise-optimized virtual monoenergetic image,VMI+)技术在喉鳞状细胞癌中的应用价值。方法:回顾性分析2019年6月至2022年3月61例经病理证实为喉鳞状细胞癌患者的双能量CT资料。双能量图像采用LBI[融合系数为1(80 kV)和0.6(M0.6)]、NBI和VMI+(40 keV、55 keV)技术重建。比较5组图像的客观图像质量[对比噪声比(contrast-tonoise ratio,CNR)、肿瘤CT值、噪声]和主观图像质量(肿瘤边界评分和整体图像质量评分)。结果:40 keV的CNR、肿瘤CT值和肿瘤边界评分均明显高于80 kV、M0.6、NBI和55 keV,差异均有统计学意义(均P<0.05)。NBI的整体图像质量评分明显高于80 kV、M0.6、40 keV和55 keV,差异均有统计学意义(均P<0.05)。NBI的噪声明显低于80 kV、40 keV和55 keV,差异均有统计学意义(均P<0.05)。结论:在喉鳞状细胞癌的双能量CT中,采用VMI+技术(40 keV)能提供更好的CNR、肿瘤CT值和肿瘤边界,采用NBI技术能提供更低的噪声和更好的整体图像质量。 展开更多
关键词 双能量ct 喉鳞状细胞癌 非线性融合图像 噪声优化的虚拟单能量图像
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CTA/CTP评估在缺血性脑血管病介入治疗中的应用
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作者 周新华 陈良义 张丹彤 《中国CT和MRI杂志》 2024年第4期20-22,共3页
目的探讨CT血管成像(CTA)/CT灌注成像(CTP)在缺血性脑血管病介入治疗中的应用价值。方法选取2021年1月至2023年9月我院收治的200例缺血性脑血管病患者,均在入院后接受CTA及CTP检查,分析其影像资料,探究CTA及CTP缺血性脑血管病介入治疗... 目的探讨CT血管成像(CTA)/CT灌注成像(CTP)在缺血性脑血管病介入治疗中的应用价值。方法选取2021年1月至2023年9月我院收治的200例缺血性脑血管病患者,均在入院后接受CTA及CTP检查,分析其影像资料,探究CTA及CTP缺血性脑血管病介入治疗中的应用价值。结果脑血容量(CBV)比较:缺血半暗带>健侧>梗死区(P<0.05);脑血流量(CBF)比较:健侧>缺血半暗带>梗死区(P<0.05);平均通过时间(MTT)、目标组织中浓度达峰时间(TTP)、目标组织中所有残余功能全部达峰时间(Tmax)比较:健侧<缺血半暗带<梗死区(P<0.05)。CTA检出左侧、右侧大脑中动脉(MCA)闭塞或狭窄分别59例(29.50%)、91例(45.50%),左侧、右侧颈内动脉(ICA)闭塞分别16例(8.00%)、12例(6.00%),双侧ICA狭窄为6例(3.00%);代偿分支血管显影基本满意129例(64.50%),显影不足71例(35.50),其余16例(8.00%)患者CTA影像资料显示无异常,敏感度为92.00%。预后不良组患侧CBV、CBF小于预后良好组,MTT、TTP、Tmax长于预后良好组,代偿血管建立比例低于预后良好组(P<0.05)。采用受试者工作特征曲线分析显示,CBV、CBF、MTT、TTP、Tmax对介入治疗预后均有一定的预测效能(P<0.05),其曲线下面积分别为0.839、0.815、0.673、0.713、0.710,其中CBV预测效能最高,敏感性为83.20%,特异性为73.33%。结论CTA/CTP可反映大脑、颈内动脉狭窄或闭塞、代偿分支建立情况,也可反映血流灌注情况,在介入治疗合理时机的判断方面可提供准确依据,提高患者预后。 展开更多
关键词 ct血管成像 ct灌注成像 缺血性脑血管病 介入治疗 指导 预后
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一种新的术中X线与术前CT图像配准方法
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作者 崔家礼 王杰 +2 位作者 郭曦 陈彧 舒丽霞 《北京生物医学工程》 2024年第2期151-157,186,共8页
目的本研究旨在配准胸主动脉血管内修复术(thoracic endovascular aortic repair,TEVAR)术中X线与术前CT图像,为TEVAR支架植入提供精确安全的导航。然而,现有配准算法存在无法有效弥合投影CT图像生成的数字重建影像(digitally reconstru... 目的本研究旨在配准胸主动脉血管内修复术(thoracic endovascular aortic repair,TEVAR)术中X线与术前CT图像,为TEVAR支架植入提供精确安全的导航。然而,现有配准算法存在无法有效弥合投影CT图像生成的数字重建影像(digitally reconstructed radiography,DRR)与X线图像之间的域间差异和难以获得图像分割标签的问题。因此,需要提出新的方法来改善这一问题。方法本文提出了一种新的配准框架,该框架结合了基于生成对抗网络(generative adversarial network,GAN)的域自适应网络和基于Transformer的配准网络。基于GAN的域自适应网络将X线图像的风格迁移到DRR图像上,使两者在图像风格上更接近。基于Transformer的配准网络采用CNN与跨模态变换器(cross-modality transformer,CMT)相结合的模式,直接配准X线与CT图像,无需进行图像分割。结果本文在208对标定的TEVAR术中X线与CT图像对上对新的配准方法进行了验证。与其他域适应方法相比,本文所采用的CycleGAN网络作为风格转换模块,有效减小了DRR图像与X线图像之间的域间差异。消融实验结果进一步证实,配准网络中的全局局部感知模块(global-local perception module,GLPM)对提高配准精度具有明显作用,而空间缩减(spatial reduction,SR)则有效缩短了配准时间。通过对比现有方法和本文方法在真实患者X线与CT图像对上的配准效果,本文的方法在配准精度和成功率方面均表现出最佳性能。结论本文提出的新的X线与CT图像配准方法有效克服了现有方法存在的域间差异以及难以获得分割标签的问题。 展开更多
关键词 X线图像 ct图像 配准 域自适应 跨模态变换器
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面向肺炎CT图像识别的DL-CTNet模型
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作者 王威 黄文迪 +1 位作者 王新 王珑润 《计算机辅助设计与图形学学报》 EI CSCD 北大核心 2024年第1期122-132,共11页
肺炎常缺乏明显呼吸系症状,症状多不典型,易发生漏诊、错诊.利用深度学习技术辅助医务人员安全、高效地检测感染者是一种有效途径.针对COVID-19感染者CT图像的磨玻璃影、铺路石征、血管扩张等特点,提出一种可有效地提取CT图像中的局部... 肺炎常缺乏明显呼吸系症状,症状多不典型,易发生漏诊、错诊.利用深度学习技术辅助医务人员安全、高效地检测感染者是一种有效途径.针对COVID-19感染者CT图像的磨玻璃影、铺路石征、血管扩张等特点,提出一种可有效地提取CT图像中的局部与全局特征的轻量级模型——DL-CTNet.输入预处理的CT图像后,首先采用空洞卷积和动态双路径多尺度特征融合(D-DMFF)模块的2个支路提取浅层特征;然后使用局部与全局特征拼接模块(LGFC)中的D-DMFF模块提取局部特征、Swin Transformer提取全局特征,并通过拼接获得深层特征;最后经过全连接层输出分类标签.实验结果表明,在2个CT图像数据集上,验证了LGFC模块以及DL-CTNet的低复杂度与有效性;DL-CTNet的分类准确率高达98.613%,与其他方法相比,其能更准确地识别肺炎的CT图像. 展开更多
关键词 肺炎 胸部ct图像 卷积神经网络 TRANSFORMER
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南海神狐海域天然气水合物微观赋存特征的超分辨率CT图像识别
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作者 李承峰 叶旺全 +7 位作者 陈亮 桂斌 郝锡荦 孙建业 张永超 刘乐乐 陈强 郑荣儿 《海洋地质与第四纪地质》 CAS CSCD 北大核心 2024年第3期149-159,共11页
南海神狐海域是我国天然气水合物资源勘探开发的主要目标区之一,2017和2020年先后两次现场试验性开采证实了水合物资源的利用前景。目前,对该地区含水合物储层的精细评价还有待进一步提升,水合物在沉积物孔隙空间中的微观赋存形态是其... 南海神狐海域是我国天然气水合物资源勘探开发的主要目标区之一,2017和2020年先后两次现场试验性开采证实了水合物资源的利用前景。目前,对该地区含水合物储层的精细评价还有待进一步提升,水合物在沉积物孔隙空间中的微观赋存形态是其中的重要影响因素。针对水合物微观赋存形态CT图像表征存在的分辨率不足的问题,建立了一种基于自监督学习的数字图像超分辨率重建算法,实现了CT扫描图像空间分辨率的2倍和4倍提升。在此基础上,对南海神狐海域含水合物沉积物孔隙结构演化规律和水合物微观赋存特征进行了形态表征。由于南海沉积物中存在大量有孔虫壳体,水合物主要占据有孔虫壳体内部空间并堵塞了空隙间的连通喉道,显著降低了沉积物的气、水渗透能力;然而,水合物未能全部占据整个孔隙空间,仍然会有少量的气体和水残留,气体则主要分布于水合物颗粒内部,而水则主要分布在水合物颗粒表面,上述实验结果对地震、测井等现场勘探数据解释具有一定的指导意义。 展开更多
关键词 天然气水合物储层 微观赋存特征 超分辨率重建 ct图像
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基于人工智能的“三低”冠状动脉CTA影像质量和辐射剂量研究
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作者 刘铁 程悦 +2 位作者 于静 张晓东 沈文 《国际医学放射学杂志》 2024年第2期190-194,203,共6页
目的探讨基于人工智能(AI)影像后处理的“三低”(低剂量对比剂、对比剂低流率及低辐射剂量)冠状动脉CTA(CCTA)技术的影像质量和辐射剂量。方法前瞻性纳入疑似冠心病病人60例,平均年龄(56.3±3.9)岁。将病人随机分为行“三低”CCTA... 目的探讨基于人工智能(AI)影像后处理的“三低”(低剂量对比剂、对比剂低流率及低辐射剂量)冠状动脉CTA(CCTA)技术的影像质量和辐射剂量。方法前瞻性纳入疑似冠心病病人60例,平均年龄(56.3±3.9)岁。将病人随机分为行“三低”CCTA检查的研究组(30例)和行常规CCTA检查的对照组(30例)。根据Likert分级评分法对冠状动脉主支血管[包括左主干(LM)、左前降支(LAD)、左回旋支(LCX)及右冠状动脉(RCA)]进行影像质量主观评分。测量升主动脉(AA)、LM、LAD中段(mLAD)、LCX近端(pLCX)、RCA中段(mRCA)、右冠状动脉远段(dRCA)管腔及邻近脂肪CT值和噪声(SD)值,以及右心室(RV)及右侧心膈角区脂肪的CT值和SD值,并计算信噪比(SNR)和对比噪声比(CNR)。采用卡方检验或独立样本t检验比较2组病人一般资料、影像质量主观评分和评价指标,以及辐射剂量的差异。结果2组间LM、LAD、LCX、RCA影像质量主观评分的差异均无统计学意义(均P>0.05)。相比对照组,研究组AA、LM、mLAD、pLCX、mRCA、dRCA管腔CT值分别提高了32.5%、8.6%、11.7%、11.2%、9.2%和2.1%;2组RV的CT值、SNR、CNR的差异均无统计学意义(均P>0.05)。研究组的容积CT剂量指数(CTDIvol)、剂量长度乘积(DLP)、有效辐射剂量(ED)均低于对照组(均P<0.05)。结论基于AI影像后处理的“三低”CCTA可保证冠状动脉影像质量,且降低了辐射剂量,用于冠心病筛查具有很好的临床可行性。 展开更多
关键词 人工智能 冠状动脉ct血管成像 冠心病 影像质量
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基于高维PDE投影恢复的低剂量CT重建方法
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作者 牛善洲 唐诗洲 +3 位作者 黄舒彦 梁礼境 李硕 刘汉明 《南方医科大学学报》 CAS CSCD 北大核心 2024年第4期682-688,共7页
目的提出一种基于高维偏微分方程(PDE)投影恢复的低剂量CT重建方法。方法先将原始的投影数据映射到高维空间中,构造投影数据的高维表示,通过移动高维空间中的点来对高维表示进行更新,再使用偏微分方程对投影数据进行滤波,最后将恢复后... 目的提出一种基于高维偏微分方程(PDE)投影恢复的低剂量CT重建方法。方法先将原始的投影数据映射到高维空间中,构造投影数据的高维表示,通过移动高维空间中的点来对高维表示进行更新,再使用偏微分方程对投影数据进行滤波,最后将恢复后的数据使用FBP算法重建出最终CT图像。结果在Shepp-Logan体模实验中,与FBP,PWLS-QM和TGV-WLS方法相比,新方法在相对均方根误差指标上分别降低了68.87%、50.15%和27.36%,结构相似性上分别提高了23.50%,8.83%和1.62%,特征相似性上分别提高了17.30%、2.71%和2.82%。在腹部临床数据实验中,与FBP,PWLS-QM和TGV-WLS方法相比,新方法在相对均方根误差中分别降低了42.09%、31.04%和21.93%,结构相似性上分别提高了18.33%、13.45%和4.63%,特征相似性上分别提高了3.13%、1.46%和1.10%。结论本研究提出的新方法在有效去除低剂量CT图像中的条形伪影和噪声的同时,可以保持图像的空间分辨率。 展开更多
关键词 低剂量ct 偏微分方程 投影数据恢复 图像重建
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