Convolutional neural network

卷积神经网络
  • 文章类型: Journal Article
    OBJECTIVE: To assess artificial intelligence (AI) ability to evaluate intraprostatic prostate cancer (PCa) on prostate-specific membrane antigen positron emission tomography (PSMA PET) scans prior to active treatment (radiotherapy or prostatectomy).
    METHODS: This systematic review was registered on the International Prospective Register of Systematic Reviews (PROSPERO identifier: CRD42023438706). A search was performed on Medline, Embase, Web of Science, and Engineering Village with the following terms: \'artificial intelligence\', \'prostate cancer\', and \'PSMA PET\'. All articles published up to February 2024 were considered. Studies were included if patients underwent PSMA PET scan to evaluate intraprostatic lesions prior to active treatment. The two authors independently evaluated titles, abstracts, and full text. The Prediction model Risk Of Bias Assessment Tool (PROBAST) was used.
    RESULTS: Our search yield 948 articles, of which 14 were eligible for inclusion. Eight studies met the primary endpoint of differentiating high-grade PCa. Differentiating between International Society of Urological Pathology (ISUP) Grade Group (GG) ≥3 PCa had an accuracy between 0.671 to 0.992, sensitivity of 0.91, specificity of 0.35. Differentiating ISUP GG ≥4 PCa had an accuracy between 0.83 and 0.88, sensitivity was 0.89, specificity was 0.87. AI could identify non-PSMA-avid lesions with an accuracy of 0.87, specificity of 0.85, and specificity of 0.89. Three studies demonstrated ability of AI to detect extraprostatic extensions with an area under curve between 0.70 and 0.77. Lastly, AI can automate segmentation of intraprostatic lesion and measurement of gross tumour volume.
    CONCLUSIONS: Although the current state of AI differentiating high-grade PCa is promising, it remains experimental and not ready for routine clinical application. Benefits of using AI to assess intraprostatic lesions on PSMA PET scans include: local staging, identifying otherwise radiologically occult lesions, standardisation and expedite reporting of PSMA PET scans. Larger, prospective, multicentre studies are needed.
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  • 文章类型: Journal Article
    OBJECTIVE: Early detection of breast cancer has a significant effect on reducing its mortality rate. For this purpose, automated three-dimensional breast ultrasound (3-D ABUS) has been recently used alongside mammography. The 3-D volume produced in this imaging system includes many slices. The radiologist must review all the slices to find the mass, a time-consuming task with a high probability of mistakes. Therefore, many computer-aided detection (CADe) systems have been developed to assist radiologists in this task. In this paper, we propose a novel CADe system for mass detection in 3-D ABUS images.
    METHODS: The proposed system includes two cascaded convolutional neural networks. The goal of the first network is to achieve the highest possible sensitivity, and the second network\'s goal is to reduce false positives while maintaining high sensitivity. In both networks, an improved version of 3-D U-Net architecture is utilized in which two types of modified Inception modules are used in the encoder section. In the second network, new attention units are also added to the skip connections that receive the results of the first network as saliency maps.
    RESULTS: The system was evaluated on a dataset containing 60 3-D ABUS volumes from 43 patients and 55 masses. A sensitivity of 91.48% and a mean false positive of 8.85 per patient were achieved.
    CONCLUSIONS: The suggested mass detection system is fully automatic without any user interaction. The results indicate that the sensitivity and the mean FP per patient of the CADe system outperform competing techniques.
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  • 文章类型: Journal Article
    结肠癌是一种普遍且可能致命的疾病,需要早期和准确的诊断才能有效治疗。传统的结肠癌诊断方法往往在准确性和效率方面存在局限性。导致早期发现和治疗的挑战。为了应对这些挑战,本文介绍了一种利用人工智能的创新方法,特别是卷积神经网络(CNN)和FisherMantis优化器,用于自动检测结肠癌。深度学习技术的利用,特别是CNN,能够从医学成像数据中提取复杂的特征,提供了一个强大而有效的诊断模型。此外,FisherMantis优化器,一种生物启发的优化算法,其灵感来自于羚羊虾的狩猎行为,用于微调CNN的参数,提高其收敛速度和性能。这种混合方法旨在通过利用深度学习和自然优化的优势来解决传统诊断方法的局限性,以提高结肠癌诊断的准确性和有效性。在包含结肠癌图像的综合数据集上对所提出的方法进行了评估,结果证明了其优于传统诊断方法。CNN-FisherMantis优化器模型表现出高灵敏度,特异性,以及区分癌症和非癌结肠组织的总体准确性。生物优化算法与深度学习技术的集成不仅有助于结肠癌计算机辅助诊断工具的进步,而且有望增强对这种疾病的早期检测和诊断。从而促进及时干预和改善患者预后。各种CNN设计,如GoogLeNet和ResNet-50,用于捕获与结肠疾病相关的特征。然而,由于特征丰富,在特征提取和数据分类中都引入了不准确性。为了解决这个问题,使用FisherMantisOptimizer算法实现了特征减少技术,优于遗传算法和模拟退火等替代方法。在对不同指标的评估中获得了令人鼓舞的结果,包括灵敏度,特异性,准确度,和F1-Score,被发现是94.87%,96.19%,97.65%,96.76%,分别。
    Colon cancer is a prevalent and potentially fatal disease that demands early and accurate diagnosis for effective treatment. Traditional diagnostic approaches for colon cancer often face limitations in accuracy and efficiency, leading to challenges in early detection and treatment. In response to these challenges, this paper introduces an innovative method that leverages artificial intelligence, specifically convolutional neural network (CNN) and Fishier Mantis Optimizer, for the automated detection of colon cancer. The utilization of deep learning techniques, specifically CNN, enables the extraction of intricate features from medical imaging data, providing a robust and efficient diagnostic model. Additionally, the Fishier Mantis Optimizer, a bio-inspired optimization algorithm inspired by the hunting behavior of the mantis shrimp, is employed to fine-tune the parameters of the CNN, enhancing its convergence speed and performance. This hybrid approach aims to address the limitations of traditional diagnostic methods by leveraging the strengths of both deep learning and nature-inspired optimization to enhance the accuracy and effectiveness of colon cancer diagnosis. The proposed method was evaluated on a comprehensive dataset comprising colon cancer images, and the results demonstrate its superiority over traditional diagnostic approaches. The CNN-Fishier Mantis Optimizer model exhibited high sensitivity, specificity, and overall accuracy in distinguishing between cancer and non-cancer colon tissues. The integration of bio-inspired optimization algorithms with deep learning techniques not only contributes to the advancement of computer-aided diagnostic tools for colon cancer but also holds promise for enhancing the early detection and diagnosis of this disease, thereby facilitating timely intervention and improved patient prognosis. Various CNN designs, such as GoogLeNet and ResNet-50, were employed to capture features associated with colon diseases. However, inaccuracies were introduced in both feature extraction and data classification due to the abundance of features. To address this issue, feature reduction techniques were implemented using Fishier Mantis Optimizer algorithms, outperforming alternative methods such as Genetic Algorithms and simulated annealing. Encouraging results were obtained in the evaluation of diverse metrics, including sensitivity, specificity, accuracy, and F1-Score, which were found to be 94.87%, 96.19%, 97.65%, and 96.76%, respectively.
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  • 文章类型: Journal Article
    本研究的重点是开发一个模型,用于使用卷积神经网络(CNN)精确确定超声图像密度和分类,以快速,及时,和准确识别缺氧缺血性脑病(HIE)。通过使用DeltaECIE76值比较脉络丛和脑实质的超声图像上的两个感兴趣区域来测量图像密度。然后将这些区域组合并用作CNN模型的输入以进行分类。将图像的分类结果分为三组(Normal,中等,和密集)展示了高模型效率,总体准确率为88.56%,Normal的精度为90%,85%为中度,和88%为密集。总的F值是88.40%,表明分类的准确性和完整性的成功结合。这项研究具有重要意义,因为它可以快速准确地识别新生儿缺氧缺血性脑病,这对于及时实施适当的治疗措施和改善这些患者的长期结局至关重要。这种先进技术的应用使医务人员能够更有效地管理治疗,降低并发症的风险并提高HIE新生儿的护理质量。
    This study focuses on developing a model for the precise determination of ultrasound image density and classification using convolutional neural networks (CNNs) for rapid, timely, and accurate identification of hypoxic-ischemic encephalopathy (HIE). Image density is measured by comparing two regions of interest on ultrasound images of the choroid plexus and brain parenchyma using the Delta E CIE76 value. These regions are then combined and serve as input to the CNN model for classification. The classification results of images into three groups (Normal, Moderate, and Intensive) demonstrate high model efficiency, with an overall accuracy of 88.56%, precision of 90% for Normal, 85% for Moderate, and 88% for Intensive. The overall F-measure is 88.40%, indicating a successful combination of accuracy and completeness in classification. This study is significant as it enables rapid and accurate identification of hypoxic-ischemic encephalopathy in newborns, which is crucial for the timely implementation of appropriate therapeutic measures and improving long-term outcomes for these patients. The application of such advanced techniques allows medical personnel to manage treatment more efficiently, reducing the risk of complications and improving the quality of care for newborns with HIE.
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  • 文章类型: Journal Article
    皮肤病变分类对于皮肤疾病的早期发现和诊断至关重要。及时干预和治疗。然而,现有的分类方法在管理复杂的信息和皮肤图像中的远程依赖关系方面面临挑战。因此,这项研究旨在通过结合本地,全球,和分层特征,以提高皮肤病变分类的性能。我们在本研究中引入了一种新颖的双轨深度学习(DL)模型,用于皮肤病变分类。第一首曲目采用了经过修改的Densenet-169架构,该架构包含了协调注意模块(CoAM)。第二轨道采用包括特征金字塔网络(FPN)和全局上下文网络(GCN)的定制卷积神经网络(CNN)来捕获多尺度特征和全局上下文信息。来自第一轨道的局部特征和来自第二轨道的全局特征用于远程依赖性的精确定位和建模。通过利用DenseNet框架中的这些架构进步,与以前的方法相比,所提出的神经网络实现了更好的性能。使用HAM10000数据集训练和验证网络,达到93.2%的分类准确率。
    Skin lesion classification is vital for the early detection and diagnosis of skin diseases, facilitating timely intervention and treatment. However, existing classification methods face challenges in managing complex information and long-range dependencies in dermoscopic images. Therefore, this research aims to enhance the feature representation by incorporating local, global, and hierarchical features to improve the performance of skin lesion classification. We introduce a novel dual-track deep learning (DL) model in this research for skin lesion classification. The first track utilizes a modified Densenet-169 architecture that incorporates a Coordinate Attention Module (CoAM). The second track employs a customized convolutional neural network (CNN) comprising a Feature Pyramid Network (FPN) and Global Context Network (GCN) to capture multiscale features and global contextual information. The local features from the first track and the global features from second track are used for precise localization and modeling of the long-range dependencies. By leveraging these architectural advancements within the DenseNet framework, the proposed neural network achieved better performance compared to previous approaches. The network was trained and validated using the HAM10000 dataset, achieving a classification accuracy of 93.2%.
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  • 文章类型: Journal Article
    定向能量沉积电弧(DED电弧)的几个优点已经引起了相当多的研究关注,包括高沉积速率和低成本。然而,在制造过程中可能会出现不连续和气孔等缺陷。缺陷识别是增材制造过程监控和质量评估的关键。本研究提出了一种新的基于声信号的DED电弧缺陷识别方法,通过小波时频图。用连续小波变换,制造过程中现场采集的一维(1D)声信号被转换成二维(2D)时频图,验证,并测试卷积神经网络(CNN)模型。在这项研究中,对几个CNN模型进行了检查和比较,包括AlexNet,ResNet-18、VGG-16和MobileNetV3。模型的准确率为96.35%,97.92%,97.01%,98.31%,分别。研究结果表明,正常和异常声信号的能量分布在时域和频域上都有显著差异。验证了所提出的方法可以有效地识别制造过程中的缺陷,并提前了识别时间。
    Several advantages of directed energy deposition-arc (DED-arc) have garnered considerable research attention including high deposition rates and low costs. However, defects such as discontinuity and pores may occur during the manufacturing process. Defect identification is the key to monitoring and quality assessments of the additive manufacturing process. This study proposes a novel acoustic signal-based defect identification method for DED-arc via wavelet time-frequency diagrams. With the continuous wavelet transform, one-dimensional (1D) acoustic signals acquired in situ during manufacturing are converted into two-dimensional (2D) time-frequency diagrams to train, validate, and test the convolutional neural network (CNN) models. In this study, several CNN models were examined and compared, including AlexNet, ResNet-18, VGG-16, and MobileNetV3. The accuracy of the models was 96.35%, 97.92%, 97.01%, and 98.31%, respectively. The findings demonstrate that the energy distribution of normal and abnormal acoustic signals has significant differences in both the time and frequency domains. The proposed method is verified to identify defects effectively in the manufacturing process and advance the identification time.
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  • 文章类型: Journal Article
    呼吸是人体最基本的功能之一,呼吸异常可能表明潜在的心肺问题。监测呼吸异常可以帮助早期发现并降低心肺疾病的风险。在这项研究中,使用77GHz调频连续波(FMCW)毫米波(mmWave)雷达以非接触方式检测来自人体的不同类型的呼吸信号,以进行呼吸监测(RM)。为解决日常环境中噪声干扰对不同呼吸模式的识别问题,该系统利用毫米波雷达捕获的呼吸信号。首先,我们使用信号叠加方法滤除了大部分静态噪声,并设计了一个椭圆滤波器,以获得0.1Hz至0.5Hz之间更准确的呼吸波形图像。其次,结合方向梯度直方图(HOG)特征提取算法,K-最近邻(KNN),卷积神经网络(CNN)和HOG支持向量机(G-SVM)对四种呼吸模式进行分类,即,正常呼吸,缓慢而深呼吸,快速呼吸,和脑膜炎呼吸。整体精度达到94.75%。因此,这项研究有效地支持日常医疗监测。
    Breathing is one of the body\'s most basic functions and abnormal breathing can indicate underlying cardiopulmonary problems. Monitoring respiratory abnormalities can help with early detection and reduce the risk of cardiopulmonary diseases. In this study, a 77 GHz frequency-modulated continuous wave (FMCW) millimetre-wave (mmWave) radar was used to detect different types of respiratory signals from the human body in a non-contact manner for respiratory monitoring (RM). To solve the problem of noise interference in the daily environment on the recognition of different breathing patterns, the system utilised breathing signals captured by the millimetre-wave radar. Firstly, we filtered out most of the static noise using a signal superposition method and designed an elliptical filter to obtain a more accurate image of the breathing waveforms between 0.1 Hz and 0.5 Hz. Secondly, combined with the histogram of oriented gradient (HOG) feature extraction algorithm, K-nearest neighbours (KNN), convolutional neural network (CNN), and HOG support vector machine (G-SVM) were used to classify four breathing modes, namely, normal breathing, slow and deep breathing, quick breathing, and meningitic breathing. The overall accuracy reached up to 94.75%. Therefore, this study effectively supports daily medical monitoring.
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  • 文章类型: Journal Article
    随着物联网(IoT)的快速发展,传感器的复杂性和智能性不断发展,在智能家居中扮演越来越重要的角色,工业自动化,远程医疗。然而,这些智能传感器面临许多安全威胁,尤其是恶意软件攻击。识别和分类恶意软件对于防止此类攻击至关重要。随着传感器及其应用数量的增长,针对传感器的恶意软件激增。由于IoT环境中的带宽和资源有限,处理大量恶意软件样本具有挑战性。因此,在传输和分类之前压缩恶意软件样本可以提高效率。此外,在分类参与者之间共享恶意软件样本会带来安全风险,防止样品开采的必要方法。此外,复杂的网络环境也需要健壮的分类方法。为了应对这些挑战,本文提出了CSMC(压缩感知恶意软件分类),一种高效的基于压缩感知的恶意软件分类方法。此方法在共享和分类之前压缩恶意软件样本,从而促进更有效的共享和处理。通过引入深度学习,该方法可以在压缩过程中提取恶意软件家族特征,这是经典方法无法实现的。此外,该方法的不可逆性通过防止分类参与者利用恶意软件样本来增强安全性。实验结果表明,对于针对Windows和Android操作系统的恶意软件,CSMC优于许多基于压缩感知和机器或深度学习的现有方法。此外,对样本重建和噪声的实验证明了CSMC在安全性和鲁棒性方面的能力。
    With the rapid development of the Internet of Things (IoT), the sophistication and intelligence of sensors are continually evolving, playing increasingly important roles in smart homes, industrial automation, and remote healthcare. However, these intelligent sensors face many security threats, particularly from malware attacks. Identifying and classifying malware is crucial for preventing such attacks. As the number of sensors and their applications grow, malware targeting sensors proliferates. Processing massive malware samples is challenging due to limited bandwidth and resources in IoT environments. Therefore, compressing malware samples before transmission and classification can improve efficiency. Additionally, sharing malware samples between classification participants poses security risks, necessitating methods that prevent sample exploitation. Moreover, the complex network environments also necessitate robust classification methods. To address these challenges, this paper proposes CSMC (Compressed Sensing Malware Classification), an efficient malware classification method based on compressed sensing. This method compresses malware samples before sharing and classification, thus facilitating more effective sharing and processing. By introducing deep learning, the method can extract malware family features during compression, which classical methods cannot achieve. Furthermore, the irreversibility of the method enhances security by preventing classification participants from exploiting malware samples. Experimental results demonstrate that for malware targeting Windows and Android operating systems, CSMC outperforms many existing methods based on compressed sensing and machine or deep learning. Additionally, experiments on sample reconstruction and noise demonstrate CSMC\'s capabilities in terms of security and robustness.
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  • 文章类型: Journal Article
    部分自动化机器人系统,如相机支架,代表了提高手术效率和精度的关键一步。因此,本文介绍了一种使用卷积神经网络在腹腔镜手术中实时工具定位的方法。提出的模型,基于两个串联的沙漏模块,可以同时定位两个手术工具。这项研究利用了三个数据集:ITAP数据集,除了两个公开可用的数据集,即AtlasDione和EndoVis挑战赛。提出了基于沙漏的模型的三种变体,使用最佳模型实现高精度(92.86%)和帧速率(27.64FPS),适合集成到机器人系统。对独立测试集的评估得出的准确性略低,表明泛化性有限。使用Grad-CAM技术进一步分析了该模型,以深入了解其功能。总的来说,这项工作为腹腔镜手术的自动化方面提出了一个有希望的解决方案,通过减少手动内窥镜操作的需要,有可能提高手术效率。
    Partially automated robotic systems, such as camera holders, represent a pivotal step towards enhancing efficiency and precision in surgical procedures. Therefore, this paper introduces an approach for real-time tool localization in laparoscopy surgery using convolutional neural networks. The proposed model, based on two Hourglass modules in series, can localize up to two surgical tools simultaneously. This study utilized three datasets: the ITAP dataset, alongside two publicly available datasets, namely Atlas Dione and EndoVis Challenge. Three variations of the Hourglass-based models were proposed, with the best model achieving high accuracy (92.86%) and frame rates (27.64 FPS), suitable for integration into robotic systems. An evaluation on an independent test set yielded slightly lower accuracy, indicating limited generalizability. The model was further analyzed using the Grad-CAM technique to gain insights into its functionality. Overall, this work presents a promising solution for automating aspects of laparoscopic surgery, potentially enhancing surgical efficiency by reducing the need for manual endoscope manipulation.
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  • 文章类型: Journal Article
    在电子鼻(E-nose)系统中,气体类型识别和准确的浓度预测是一些最具挑战性的问题。本研究提出了一种基于时频注意力卷积神经网络(TFA-CNN)的模式识别方法。在网络中设计了时频注意块,目的在于挖掘并有效整合电子鼻信号中的时域和频域信息,提高瓦斯分类和浓度预测任务的性能。此外,开发了一种新的数据增强策略,操纵特征通道和时间维度,以减少传感器漂移和冗余信息的干扰,从而增强模型的鲁棒性和适应性。利用两种类型的金属氧化物半导体气体传感器,本研究对5种目标气体进行了定性和定量分析。评价结果表明,分类准确率可以达到100%,回归任务的判定系数(R2)最高可达0.99。Pearson相关系数(r)为0.99,平均绝对误差(MAE)为1.54ppm。实验测试结果与系统预测结果几乎一致,MAE为1.39ppm。本研究提供了一种结合时频域信息的网络学习方法,在电子鼻系统内的气体分类和浓度预测方面表现出高性能。
    In the electronic nose (E-nose) systems, gas type recognition and accurate concentration prediction are some of the most challenging issues. This study introduced an innovative pattern recognition method of time-frequency attention convolutional neural network (TFA-CNN). A time-frequency attention block was designed in the network, aiming to excavate and effectively integrate the temporal and frequency domain information in the E-nose signals to enhance the performance of gas classification and concentration prediction tasks. Additionally, a novel data augmentation strategy was developed, manipulating the feature channels and time dimensions to reduce the interference of sensor drift and redundant information, thereby enhancing the model\'s robustness and adaptability. Utilizing two types of metal-oxide-semiconductor gas sensors, this research conducted qualitative and quantitative analysis on five target gases. The evaluation results showed that the classification accuracy could reach 100%, and the coefficient of the determination (R2) score of the regression task was up to 0.99. The Pearson correlation coefficient (r) was 0.99, and the mean absolute error (MAE) was 1.54 ppm. The experimental test results were almost consistent with the system predictions, and the MAE was 1.39 ppm. This study provides a method of network learning that combines time-frequency domain information, exhibiting high performance in gas classification and concentration prediction within the E-nose system.
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