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DAU-Net: a novel U-Net with dual attention for retinal vessel segmentation.
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-22 DOI: 10.1088/2057-1976/ada9f0
Muwei Jian, Wenjing Xu, ChangQun Nie, Shuo Li, Songwen Yang, Xiaoguang Li

In fundus images, precisely segmenting retinal blood vessels is important for diagnosing eye-related conditions, such as diabetic retinopathy and hypertensive retinopathy or other eye-related disorders. In this work, we propose an enhanced U-shaped network with dual-attention, named DAU-Net, divided into encoder and decoder parts. Wherein, we replace the traditional convolutional layers with ConvNeXt Block and SnakeConv Block to strengthen its recognition ability for different forms of blood vessels while lightweight the model. Additionally, we designed two efficient attention modules, namely Local-Global Attention (LGA) and Cross-Fusion Attention (CFA). Specifically, LGA conducts attention calculations on the features extracted by the encoder to accentuate vessel-related characteristics while suppressing irrelevant background information; CFA addresses potential information loss during feature extraction by globally modeling pixel interactions between encoder and decoder features. Comprehensive experiments in terms of public datasets DRIVE, CHASE_DB1, and STARE demonstrate that DAU-Net obtains excellent segmentation results on all three datasets. The results show an AUC of 0.9818, ACC of 0.8299, and F1 score of 0.9585 on DRIVE; 0.9894, 0.8499, and 0.9700 on CHASE_DB1; and 0.9908, 0.8620, and 0.9712 on STARE, respectively. These results strongly demonstrate the effectiveness of DAU-Net in retinal vessel segmentation, highlighting its potential for practical clinical use.

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引用次数: 0
Development of a machine learning tool to predict deep inspiration breath hold requirement for locoregional right-sided breast radiation therapy patients. 一种机器学习工具的开发,用于预测局部区域右侧乳房放射治疗患者的深吸气屏气需求。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-22 DOI: 10.1088/2057-1976/ad9b30
Fletcher Barrett, Sarah Quirk, Kailyn Stenhouse, Karen Long, Michael Roumeliotis, Sangjune Lee, Roberto Souza, Philip McGeachy

Background and purpose. This study presents machine learning (ML) models that predict if deep inspiration breath hold (DIBH) is needed based on lung dose in right-sided breast cancer patients during the initial computed tomography (CT) appointment.Materials and methods. Anatomic distances were extracted from a single-institution dataset of free breathing (FB) CT scans from locoregional right-sided breast cancer patients. Models were developed using combinations of anatomic distances and ML classification algorithms (gradient boosting, k-nearest neighbors, logistic regression, random forest, and support vector machine) and optimized over 100 iterations using stratified 5-fold cross-validation. Models were grouped by the number of anatomic distances used during development; those with the highest validation accuracy were selected as final models. Final models were compared based on their predictive ability, measurement collection efficiency, and robustness to simulated user error during measurement collection.Results. This retrospective study included 238 patients treated between 2016 and 2021. Model development ended once eight anatomic distances were included, and the validation accuracy plateaued. The best performing model used logistic regression with four anatomic distances achieving 80.5% average testing accuracy, with minimal false negatives and positives (<27%). The anatomic distances required for prediction were collected within 3 min and were robust to simulated user error during measurement collection, changing accuracy by <5%.Conclusion. Our logistic regression model using four anatomic distances provided the best balance between efficiency, robustness, and ability to predict if DIBH was needed for locoregional right-sided breast cancer patients.

背景与目的:本研究提出了机器学习(ML)模型,根据右侧乳腺癌患者在初始计算机断层扫描(CT)预约期间的肺剂量预测是否需要深度吸气屏气(DIBH)。材料和方法。解剖距离是从单一机构的自由呼吸(FB) CT扫描数据集中提取的,这些数据集来自局部区域的右侧乳腺癌患者。使用解剖距离和ML分类算法(梯度增强、k近邻、逻辑回归、随机森林和支持向量机)的组合开发模型,并使用分层5倍交叉验证进行100多次迭代优化。根据发育过程中使用的解剖距离数量对模型进行分组;选择验证精度最高的模型作为最终模型。最后根据模型的预测能力、测量收集效率和对测量收集过程中模拟用户误差的鲁棒性进行了比较。& # xD;结果。这项回顾性研究纳入了2016年至2021年期间接受治疗的238例患者。一旦包含了8个解剖距离,模型开发就结束了,验证精度也趋于稳定。表现最好的模型使用逻辑回归,四个解剖距离达到80.5%的平均测试精度,假阴性和阳性最小(< 27%)。预测所需的解剖距离在3分钟内收集,并且在测量收集过程中对模拟用户误差具有鲁棒性,准确度变化< 5%。& # xD;结论。我们使用四个解剖距离的逻辑回归模型提供了效率、稳健性和预测局部区域右侧乳腺癌患者是否需要DIBH的能力之间的最佳平衡。 。
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引用次数: 0
Nyquist ghost elimination for diffusion MRI by dual-polarity readout at low b-values. 低b值双极性读出弥散MRI奈奎斯特鬼影消除。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-21 DOI: 10.1088/2057-1976/ada8b0
Oscar Jalnefjord, Nicolas Geades, Guillaume Gilbert, Isabella M Björkman-Burtscher, Maria Ljungberg

Dual-polarity readout is a simple and robust way to mitigate Nyquist ghosting in diffusion-weighted echo-planar imaging but imposes doubled scan time. We here propose how dual-polarity readout can be implemented with little or no increase in scan time by exploiting an observed b-value dependence and signal averaging. The b-value dependence was confirmed in healthy volunteers with distinct ghosting at low b-values but of negligible magnitude atb= 1000 s/mm2. The usefulness of the suggested strategy was exemplified with a scan using tensor-valued diffusion encoding for estimation of parameter maps of mean diffusivity, and anisotropic and isotropic mean kurtosis, showing that ghosting propagated into all three parameter maps unless dual-polarity readout was applied. Results thus imply that extending the use of dual-polarity readout to low non-zero b-values provides effective ghost elimination and can be used without increased scan time for any diffusion MRI scan containing signal averaging at low b-values.

双极性读数是一种简单而稳健的方法,可以减轻扩散加权回波平面成像中的奈奎斯特重影,但会增加扫描时间。我们在这里提出如何双极性读出可以实现很少或不增加扫描时间利用观察到的b值依赖和信号平均。在健康志愿者中证实了b值依赖性,在低b值时有明显的鬼影,但在b = 1000 s/mm2时可忽略。通过使用张量值扩散编码来估计平均扩散率、各向异性和各向同性平均峰度的参数图的扫描,证明了所建议策略的有效性,表明除非应用双极性读数,否则重影会传播到所有三个参数图中。因此,结果表明,将双极性读出扩展到低非零b值可以有效地消除虚影,并且可以在不增加扫描时间的情况下用于任何包含低b值信号平均的弥散MRI扫描。
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引用次数: 0
Systematic application of saliency maps to explain the decisions of convolutional neural networks for glaucoma diagnosis based on disc and cup geometry. 系统应用显著性图来解释卷积神经网络在青光眼诊断中的决策。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-21 DOI: 10.1088/2057-1976/ada8ad
Francisco Fumero, Jose Sigut, José Estévez, Tinguaro Díaz-Alemán

This paper systematically evaluates saliency methods as explainability tools for convolutional neural networks trained to diagnose glaucoma using simplified eye fundus images that contain only disc and cup outlines. These simplified images, a methodological novelty, were used to relate features highlighted in the saliency maps to the geometrical clues that experts consider in glaucoma diagnosis. Despite their simplicity, these images retained sufficient information for accurate classification, with balanced accuracies ranging from 0.8331 to 0.8890, compared to 0.8090 to 0.9203 for networks trained on the original images. The study used a dataset of 606 images, along with RIM-ONE DL and REFUGE datasets, and explored nine saliency methods. A discretization algorithm was applied to reduce noise and compute normalized attribution values for standard eye fundus sectors. Consistent with other medical imaging studies, significant variability was found in the attribution maps, influenced by the method, model, or architecture, and often deviating from typical sectors experts examine. However, globally, the results were relatively stable, with a strong correlation of 0.9289 (p < 0.001) between relevant sectors in our dataset and RIM-ONE DL, and 0.7806 (p < 0.001) for REFUGE. The findings suggest caution when using saliency methods in critical fields like medicine. These methods may be more suitable for broad image relevance interpretation rather than assessing individual cases, where results are highly sensitive to methodological choices. Moreover, the regions identified by the networks do not consistently align with established medical criteria for disease severity.

本文系统地评估了显著性方法作为卷积神经网络的可解释性工具,训练卷积神经网络使用仅包含眼盘和眼杯轮廓的简化眼底图像诊断青光眼。这些简化的图像是一种新颖的方法,用于将显著性图中突出显示的特征与专家在青光眼诊断中考虑的几何线索联系起来。尽管这些图像很简单,但它们保留了足够的信息来进行准确分类,其平衡精度范围为0.8331至0.8890,而在原始图像上训练的网络的平衡精度为0.8090至0.9203。研究使用了606张图像的数据集,以及RIM-ONE DL和REFUGE数据集,并探索了9种显著性方法。采用离散化算法对标准眼底扇区进行降噪和归一化归因计算。与其他医学成像研究一致,在归因图中发现了显著的可变性,受方法、模型或架构的影响,并且经常偏离专家检查的典型部门。然而,在全球范围内,结果相对稳定,我们数据集中相关部门与RIM-ONE DL之间的相关性为0.9289 (p < 0.001), REFUGE的相关性为0.7806 (p < 0.001)。研究结果表明,在医学等关键领域使用显著性方法时要谨慎。这些方法可能更适合广泛的图像相关性解释,而不是评估个别情况,其中结果对方法选择高度敏感。此外,网络确定的区域并不始终符合既定的疾病严重程度医学标准。
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引用次数: 0
Automatic segmentation of MRI images for brain radiotherapy planning using deep ensemble learning. 基于深度集成学习的MRI图像自动分割用于脑放疗规划。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-17 DOI: 10.1088/2057-1976/ada6ba
S A Yoganathan, Tarraf Torfeh, Satheesh Paloor, Rabih Hammoud, Noora Al-Hammadi, Rui Zhang

Backgroundand Purpose:This study aimed to develop and evaluate an efficient method to automatically segment T1- and T2-weighted brain magnetic resonance imaging (MRI) images. We specifically compared the segmentation performance of individual convolutional neural network (CNN) models against an ensemble approach to advance the accuracy of MRI-guided radiotherapy (RT) planning.Materials and Methods. The evaluation was conducted on a private clinical dataset and a publicly available dataset (HaN-Seg). Anonymized MRI data from 55 brain cancer patients, including T1-weighted, T1-weighted with contrast, and T2-weighted images, were used in the clinical dataset. We employed an EDL strategy that integrated five independently trained 2D neural networks, each tailored for precise segmentation of tumors and organs at risk (OARs) in the MRI scans. Class probabilities were obtained by averaging the final layer activations (Softmax outputs) from the five networks using a weighted-average method, which were then converted into discrete labels. Segmentation performance was evaluated using the Dice similarity coefficient (DSC) and Hausdorff distance at 95% (HD95). The EDL model was also tested on the HaN-Seg public dataset for comparison.Results. The EDL model demonstrated superior segmentation performance on both the clinical and public datasets. For the clinical dataset, the ensemble approach achieved an average DSC of 0.7 ± 0.2 and HD95 of 4.5 ± 2.5 mm across all segmentations, significantly outperforming individual networks which yielded DSC values ≤0.6 and HD95 values ≥14 mm. Similar improvements were observed in the HaN-Seg public dataset.Conclusions. Our study shows that the EDL model consistently outperforms individual CNN networks in both clinical and public datasets, demonstrating the potential of ensemble learning to enhance segmentation accuracy. These findings underscore the value of the EDL approach for clinical applications, particularly in MRI-guided RT planning.

背景与目的:本研究旨在开发和评估一种有效的脑磁共振成像(MRI)图像自动分割T1和t2加权的方法。我们特别比较了单个卷积神经网络(CNN)模型与集成方法的分割性能,以提高mri引导放射治疗(RT)计划的准确性。材料与方法。评估是在一个私人临床数据集和一个公开可用的数据集(HaN-Seg)上进行的。临床数据集中使用了55名脑癌患者的匿名MRI数据,包括t1加权、t1加权对比和t2加权图像。我们采用了一种EDL策略,该策略集成了五个独立训练的2D神经网络,每个神经网络都针对MRI扫描中的肿瘤和危险器官(OARs)进行精确分割。通过使用加权平均方法对五个网络的最终层激活(Softmax输出)进行平均,从而获得类概率,然后将其转换为离散标签。使用Dice相似系数(DSC)和95%的Hausdorff距离(HD95)来评估分割性能。EDL模型还在HaN-Seg公共数据集上进行了测试,以进行比较。EDL模型在临床和公共数据集上都表现出优异的分割性能。对于临床数据集,集成方法在所有分割上的平均DSC为0.7±0.2,HD95为4.5±2.5 mm,显著优于产生DSC值≤0.6和HD95值≥14 mm的单个网络。在HaN-Seg公共数据集中也观察到类似的改善。我们的研究表明,EDL模型在临床和公共数据集中始终优于单个CNN网络,证明了集成学习在提高分割精度方面的潜力。这些发现强调了EDL方法在临床应用中的价值,特别是在mri引导下的RT计划中。
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引用次数: 0
Enhanced AMD detection in OCT images using GLCM texture features with Machine Learning and CNN methods. 增强视网膜图像AMD检测的机器学习与GLCM分析。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-17 DOI: 10.1088/2057-1976/ada6bc
Loganathan R, Latha S

Global blindness is substantially influenced by age-related macular degeneration (AMD). It significantly shortens people's lives and severely impairs their visual acuity. AMD is becoming more common, requiring improved diagnostic and prognostic methods. Treatment efficacy and patient survival rates stand to benefit greatly from these upgrades. To improve AMD diagnosis in preprocessed retinal images, this study uses Grey Level Co-occurrence Matrix (GLCM) features for texture analysis. The selected GLCM features include contrast and dissimilarity. Notably, grayscale pixel values were also integrated into the analysis. Key factors such as contrast, correlation, energy, and homogeneity were identified as the primary focuses of the study. Various supervised machine learning (ML) and CNN techniques were employed on Optical Coherence Tomography (OCT) image datasets. The impact of feature selection on model performance is evaluated by comparing all GLCM features, selected GLCM features, and grayscale pixel features. Models using GSF features showed low accuracy, with OCTID at 23% and Kermany at 54% for BC, and 23% and 53% for CNN. In contrast, GLCM features achieved 98% for OCTID and 73% for Kermany in RF, and 83% and 77% in CNN. SFGLCM features performed the best, achieving 98% for OCTID across both RF and CNN, and 77% for Kermany. Overall, SFGLCM and GLCM features outperformed GSF, improving accuracy, generalization, and reducing overfitting for AMD detection. The Python-based research demonstrates ML's potential in ophthalmology to enhance patient outcomes.

全盲在很大程度上受年龄相关性黄斑变性(AMD)影响。它大大缩短了人们的寿命,并严重损害了他们的视力。AMD正变得越来越普遍,需要改进诊断和预后方法。这些升级将大大提高治疗效果和患者存活率。为了提高对预处理视网膜图像的AMD诊断,本研究采用灰度共生矩阵(GLCM)特征进行纹理分析。选择的GLCM特征包括对比和不相似。值得注意的是,灰度像素值也被整合到分析中。对比、相关性、能量和同质性等关键因素被确定为研究的主要焦点。各种监督机器学习(ML)和CNN技术被用于光学相干断层扫描(OCT)图像数据集。通过比较所有GLCM特征、选择的GLCM特征和灰度像素特征来评估特征选择对模型性能的影响。使用GSF特征的模型准确率较低,BC的OCTID为23%,Kermany为54%,CNN为23%和53%。相比之下,在RF中,GLCM特征在OCTID中达到98%,在Kermany中达到73%,在CNN中达到83%和77%。SFGLCM特征表现最好,在RF和CNN上的OCTID达到98%,在Kermany上达到77%。总体而言,SFGLCM和GLCM特征优于GSF,提高了AMD检测的准确性、泛化程度,并减少了过拟合。基于python的研究证明了机器学习在眼科中提高患者预后的潜力。
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引用次数: 0
Novel approach for quality control testing of medical displays using deep learning technology. 基于深度学习技术的医疗显示器质量控制测试新方法。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-15 DOI: 10.1088/2057-1976/ada6bd
Sho Maruyama, Fumiya Mizutani, Haruyuki Watanabe

Objectives:In digital image diagnosis using medical displays, it is crucial to rigorously manage display devices to ensure appropriate image quality and diagnostic safety. The aim of this study was to develop a model for the efficient quality control (QC) of medical displays, specifically addressing the measurement items of contrast response and maximum luminance as part of constancy testing, and to evaluate its performance. In addition, the study focused on whether these tasks could be addressed using a multitasking strategy.Methods:The model used in this study was constructed by fine-tuning a pretrained model and expanding it to a multioutput configuration that could perform both contrast response classification and maximum luminance regression. QC images displayed on a medical display were captured using a smartphone, and these images served as the input for the model. The performance was evaluated using the area under the receiver operating characteristic curve (AUC) for the classification task. For the regression task, correlation coefficients and Bland-Altman analysis were applied. We investigated the impact of different architectures and verified the performance of multi-task models against single-task models as a baseline.Results:Overall, the classification task achieved a high AUC of approximately 0.9. The correlation coefficients for the regression tasks ranged between 0.6 and 0.7 on average. Although the model tended to underestimate the maximum luminance values, the error margin was consistently within 5% for all conditions.Conclusion:These results demonstrate the feasibility of implementing an efficient QC system for medical displays and the usefulness of a multitask-based method. Thus, this study provides valuable insights into the potential to reduce the workload associated with medical-device management the development of QC systems for medical devices, highlighting the importance of future efforts to improve their accuracy and applicability.

目的:在使用医用显示器进行数字图像诊断时,严格管理显示设备以确保适当的图像质量和诊断安全至关重要。本研究的目的是建立一个医疗显示器的有效品质控制(QC)模型,特别是针对对比度响应和最大亮度的测量项目作为恒常性测试的一部分,并评估其性能。此外,研究重点是这些任务是否可以使用多任务策略来解决。方法:本研究中使用的模型是通过微调预训练模型并将其扩展到可以执行对比度响应分类和最大亮度回归的多输出配置来构建的。使用智能手机捕捉医疗显示器上显示的QC图像,并将这些图像作为模型的输入。使用分类任务的接收者工作特征曲线下面积(AUC)来评价分类任务的性能。对于回归任务,使用相关系数和Bland-Altman分析。我们研究了不同架构的影响,并验证了多任务模型与单任务模型作为基准的性能。结果:总体而言,分类任务实现了大约0.9的高AUC。回归任务的相关系数平均在0.6到0.7之间。尽管该模型倾向于低估最大亮度值,但在所有条件下误差范围始终在5%以内。结论:这些结果表明,在医疗显示器中实施高效QC系统是可行的,并且基于多任务的方法是有用的。因此,本研究提供了有价值的见解,以减少与医疗器械管理相关的工作量,以及医疗器械质量控制系统的发展,强调了未来努力提高其准确性和适用性的重要性。
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引用次数: 0
Noise reduction in abdominal acoustic recordings of maternal placental murmurs. 母体胎盘杂音的腹部声学记录降噪。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-15 DOI: 10.1088/2057-1976/ada6bb
Dagbjört Helga Eiríksdóttir, Gry Grønborg Hvass, Henrik Zimmermann, Johannes Jan Struijk, Samuel Emil Schmidt

Fetal phonocardiography is a well-known auscultation technique for evaluation of fetal health. However, murmurs that are synchronous with the maternal heartbeat can often be heard while listening to fetal heart sounds. Maternal placental murmurs (MPM) could be used to detect maternal cardiovascular and placental abnormalities, but the recorded MPMs are often contaminated by ambient interference and noise.Objective:The aim of this study was to compare noise reduction methods to reduce noise in the recorded MPMs. Approach:1) Bandpass filtering (BPF), 2) a multichannel noise reduction (MCh) using either Wiener filter (WF), Least-mean-square or Independent component analysis, 3) a combination of BPF with wavelet transient reduction (WTR) and 4) a combination of MCh and WTR. The methods were tested on signals recorded with two microphone units placed on the abdomen of pregnant women with an electrocardiogram (ECG) recorded simultaneously. The performance was evaluated using coherence and heart cycle duration error (HCDError) as compared with the ECG. Results: The mean of the absolute HCDErrorwas 32.7 ms for the BPF with all methods significantly lower (p < 0.05) than BPF. The lowest errors were obtained for WTR-WF where the HCDErrorranged 16.68-17.72 ms for seven different filter orders. All methods had significantly different coherence measure compared with BPF (p < 0.05). The lowest coherence was reached with WTR-WF (filter order 640) where the mean value decreased from 0.50 for BPF to 0.03.Significance:These results show how noise reduction techniques such as WF combined with wavelet denoising can greatly enhance the quality of MPM recordings.

胎儿心音图是一种众所周知的用于评估胎儿健康的听诊技术。然而,在听胎儿心音时,经常可以听到与母体心跳同步的杂音。母体胎盘杂音(MPM)可用于检测母体心血管和胎盘异常,但记录的MPM常受到环境干扰和噪声的污染。目的:比较不同降噪方法对声像图降噪效果的影响。方法:1)带通滤波(BPF), 2)使用维纳滤波器(WF),最小均方或独立分量分析进行多通道降噪(MCh), 3) BPF与小波瞬态降噪(WTR)的结合,4)MCh和WTR的结合。这些方法在放置在孕妇腹部的两个麦克风单元记录的信号上进行了测试,同时记录了心电图(ECG)。与ECG相比,使用相干性和心脏周期持续时间误差(HCDError)来评估其性能。结果:BPF的绝对hcdererror均值为32.7 ms,所有方法的hcdererror均显著降低。(p)意义:这些结果表明,WF与小波去噪相结合的降噪技术可以极大地提高MPM记录的质量。
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引用次数: 0
Automated Classification of Cardiac Arrhythmia using Short-Duration ECG Signals and Machine Learning. 使用短时心电信号和机器学习的心律失常自动分类。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-14 DOI: 10.1088/2057-1976/ada965
Amar Bahadur Biswakarma, Jagdeep Rahul, Kurmendra Kurmendra

Accurate detection of cardiac arrhythmias is crucial for preventing premature deaths. The current study employs a dual-stage Discrete Wavelet Transform (DWT) and a median filter to eliminate noise from ECG signals. Subsequently, ECG signals are segmented, and QRS regions are extracted for further preprocessing. The study considers five cardiac arrhythmias: normal beats, Premature Ventricular Contractions (PVC), Premature Atrial Contractions (PAC), Right Bundle Branch Block (R-BBB), and Left Bundle Branch Block (L-BBB) for classification. Nine distinct temporal features are extracted from the segmented QRS complex. These features are then applied to six different classifiers for arrhythmia classification. The classifiers' performance is evaluated using the MIT-BIH Arrhythmia Database (MIT-BIH AD). Support Vector Machine (SVM) and Ensemble Tree classifiers demonstrate superior performance in classifying the five different classes. Particularly, the Support Vector Machine classifier achieves high sensitivity (97.44%), specificity (99.36%), positive predictive value (97.44%), and accuracy (98.97%) with a Gaussian kernel. This comprehensive approach, integrating preprocessing, and feature extraction, holds promise for improving automatic cardiac arrhythmia classification in clinical trials.

准确检测心律失常对预防过早死亡至关重要。本研究采用双级离散小波变换(DWT)和中值滤波器来消除心电信号中的噪声。然后对心电信号进行分割,提取QRS区域进行进一步预处理。该研究考虑了五种心律失常:正常心跳、室性早搏(PVC)、房性早搏(PAC)、右束支传导阻滞(R-BBB)和左束支传导阻滞(L-BBB)进行分类。从分割的QRS复合体中提取了9个不同的时间特征。然后将这些特征应用于六种不同的心律失常分类器。使用MIT-BIH心律失常数据库(MIT-BIH AD)评估分类器的性能。支持向量机(SVM)和集成树(Ensemble Tree)分类器在五种不同的分类中表现出优异的性能。特别地,支持向量机分类器在高斯核下达到了高灵敏度(97.44%)、特异度(99.36%)、阳性预测值(97.44%)和准确率(98.97%)。这种综合的方法,集成了预处理和特征提取,有望改善临床试验中心律失常的自动分类。
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引用次数: 0
Technical validation of the Zeto wireless, dry electrode EEG system. Zeto无线干电极脑电图系统的技术验证。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2025-01-13 DOI: 10.1088/2057-1976/ada4b6
Zoltan Nadasdy, Adam S Fogarty, Robert S Fisher, Christopher T Primiani, Kevin D Graber

Objective.Clinical adoption of innovative EEG technology is contingent on the non-inferiority of the new devices relative to conventional ones. We present the four key results from testing the signal quality of Zeto's WR 19 EEG system against a conventional EEG system conducted on patients in a clinical setting.Methods.We performed 30 min simultaneous recordings using the Zeto WR 19 (zEEG) and a conventional clinical EEG system (cEEG) in a cohort of 15 patients. We compared the signal quality between the two EEG systems by computing time domain statistics, waveform correlation, spectral density, signal-to-noise ratio and signal stability.Results.All statistical comparisons resulted in signal quality non-inferior relative to cEEG. (i) Time domain statistics, including the Hjorth parameters, showed equivalence between the two systems, except for a significant reduction of sensitivity to electric noise in zEEG relative to cEEG. (ii) The point-by-point waveform correlation between the two systems was acceptable (r > 0.6; P < 0.001). (iii) Each of the 15 datasets showed a high spectral correlation (r > 0.99; P < 0.001) and overlapping spectral density across all electrode positions, indicating no systematic signal distortion. (iv) The mean signal-to-noise ratio (SNR) of the zEEG system exceeded that of the cEEG by 4.82 dB, equivalent to a 16% improvement. (v) The signal stability was maintained through the recordings.Conclusion.In terms of signal quality, the zEEG system is non-inferior to conventional clinical EEG systems with respect to all relevant technical parameters that determine EEG readability and interpretability. Zeto's WR 19 wireless dry electrode system has signal quality in the clinical EEG space at least equivalent to traditional cEEG recordings.

目的:创新脑电图技术的临床应用取决于新设备与传统设备相比是否无劣势。我们介绍了在临床环境中对患者进行的 Zeto WR19 脑电图系统与传统脑电图系统信号质量测试的四项主要结果:我们使用 Zeto WR19 (zEEG) 和传统临床脑电图系统 (cEEG) 对 15 名患者进行了 30 分钟的同步记录。我们通过计算时域统计、波形相关性、频谱密度、信噪比和信号稳定性来比较两种脑电图系统的信号质量:所有统计比较结果均表明,信号质量不劣于 cEEG。(i) 时域统计(包括 Hjorth 参数)显示,除了 zEEG 相对于 cEEG 对电噪声的敏感性显著降低之外,这两种系统的性能相当。(ii) 两种系统的逐点波形相关性可以接受(r>0.6;P0.99;P
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引用次数: 0
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Biomedical Physics & Engineering Express
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