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Automated feature selection for early keratoconus screening optimization. 早期圆锥角膜筛选优化的自动特征选择。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-20 DOI: 10.1088/2057-1976/ad9c7e
Abir Chaari, Imen Fourati Kallel, Houda Daoud, Ilhem Omri, Sonda Kammoun, Mondher Frikha

In this paper, an automated feature selection (FS) method is presented to optimize machine learning (ML) models' performances, enhancing early keratoconus screening. A total of 448 parameters were analyzed from a dataset comprising 3162 observations sourced from the swept source optical coherence tomography imaging system developed by the Chinese Academy of Sciences Institute of Automation (SS-1000 CASIA OCT) and electronic health records (EHR). To identify the most relevant features, the analysis of variance (ANOVA) method was used in this study. The performance of three classifiers namely K-Nearest Neighbors (KNN), Support Vector Machine (SVM), and Artificial Neural Networks (ANN) was evaluated, yielding classification accuracies of 96.79% and 96.68% for KNN, 98.95% and 97.08% for SVM, and 95.64% and 95.62% for ANN when distinguishing between 2 and 4 keratoconus classes, respectively. The results show that selecting 50 features can significantly improve the performance of the model while reducing the computation time. The automated feature selection method can also assist ophthalmologists in better understanding the links between various ocular characteristics and keratoconus, potentially leading to advances in early diagnosis, risk prediction, and clinical management of this condition.

本文提出了一种自动特征选择(FS)方法来优化机器学习(ML)模型的性能,增强圆锥角膜的早期筛查。数据集包括3162个观测数据,共分析了448个参数,这些观测数据来自中国科学院自动化研究所开发的扫描源光学相干断层成像系统(SS-1000 CASIA OCT)和电子健康记录(EHR)。为了确定最相关的特征,本研究采用方差分析(ANOVA)方法。对k -最近邻(KNN)、支持向量机(SVM)和人工神经网络(ANN)三种分类器的性能进行了评估,在区分2和4个圆锥角膜类别时,KNN的分类准确率分别为96.79%和96.68%,SVM的分类准确率为98.95%和97.08%,ANN的分类准确率分别为95.64%和95.62%。结果表明,选择50个特征可以显著提高模型的性能,同时减少计算时间。自动特征选择方法还可以帮助眼科医生更好地了解各种眼部特征与圆锥角膜之间的联系,从而有可能在该疾病的早期诊断、风险预测和临床管理方面取得进展。
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引用次数: 0
AI-Enhanced Interface for Colonic Polyp Segmentation Using DeepLabv3+ with Comparative Backbone Analysis. 使用DeepLabv3+进行结肠息肉分割的ai增强接口与比较主干分析。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-19 DOI: 10.1088/2057-1976/ada15f
Faruk Enes Oğuz, Ahmet Alkan

Polyps are one of the early stages of colon cancer. The detection of polyps by segmentation and their removal by surgical intervention is of great importance for making treatment decisions. Although the detection of polyps through colonoscopy images can lead to multiple expert needs and time losses, it can also include human error. Therefore, automatic, fast, and highly accurate segmentation of polyps from colonoscopy images is important. Many methods have been proposed, including deep learning-based approaches. In this study, a method using DeepLabv3+ with encoder-decoder structure and ResNet architecture as backbone network is proposed for the segmentation of colonic polyps. The Kvasir-SEG polyp dataset was used to train and test the proposed method. After images were preprocessed, the training of the proposed network was performed. The trained network was then tested and performance metrics were calculated, and additionally, a GUI (Graphical User Interface) was designed to enable the segmentation of colonoscopy images for polyp segmentation. The experimental results showed that the ResNet-50 based DeepLabv3+ model had high performance metrics such as DSC: 0.9609, mIoU: 0.9246, demonstrating its effectiveness in the segmentation of colonic polyps. In conclusion, our method utilizing DeepLabv3+ with a ResNet-50 backbone achieves highly accurate colonic polyp segmentation. The obtained results demonstrate its potential to significantly enhance colorectal cancer diagnosis and planning for polypectomy surgery through automated image analysis. .

息肉是结肠癌的早期阶段之一。息肉的分割检测和手术切除对制定治疗决策具有重要意义。虽然通过结肠镜检查图像检测息肉可能会导致多种专家需求和时间损失,但它也可能包括人为错误。因此,从结肠镜图像中自动、快速、高精度地分割息肉是非常重要的。已经提出了许多方法,包括基于深度学习的方法。本研究提出了一种基于DeepLabv3+的编码器-解码器结构和ResNet架构作为骨干网络的结肠息肉分割方法。使用Kvasir-SEG息肉数据集对该方法进行训练和测试。在对图像进行预处理后,对所提出的网络进行训练。然后对训练好的网络进行测试并计算性能指标,此外,还设计了GUI(图形用户界面)来分割结肠镜图像以进行息肉分割。实验结果表明,基于ResNet-50的DeepLabv3+模型具有较高的性能指标,DSC: 0.9609, mIoU: 0.9246,表明其对结肠息肉的分割是有效的。总之,我们使用DeepLabv3+和ResNet-50骨干的方法实现了高精度的结肠息肉分割。获得的结果表明,通过自动图像分析,它有可能显著提高结直肠癌的诊断和息肉切除手术的计划。 。
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引用次数: 0
Evaluation of artificial intelligence and optical image recognition techniques used in OneIso, an off-axis Winston-Lutz quality assurance phantom. 对OneIso中使用的人工智能和光学图像识别技术进行评估,OneIso是离轴温斯顿-卢茨质量保证模型。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-17 DOI: 10.1088/2057-1976/ada037
Elliot Grafil, Paul De Jean, Dante Capaldi, Lawrie B Skinner, Lei Xing, Amy S Yu

Single-isocenter multitarget (SIMT) stereotactic-radiosurgery (SRS) has recently emerged as a powerful treatment regimen for intracranial tumors. With high specificity, SIMT SRS allows for rapid, high-dose delivery while maintaining integrity of adjacent healthy tissues and minimizing neurocognitive damage to patients. Highly robust and accurate quality assurance (QA) tests are critical to minimize off-targets and damage to surrounding healthy tissues. We have developed a novel QA phantom, named OneIso, to accurately and precisely measure off-axis accuracy, via off-axis Winston-Lutz (OAWL), to assist SIMT SRS programs. In this study, a comparison of three different quantitative numerical methods were performed for isolating and measuring the position of ball-bearings (BBs) used in the OAWL measurement. The three methods evaluated were: 1) feature extraction technique combined with manual intervention 2) a proprietary software utilizing optical image recognition (OIR) techniques, and 3) a machine learning (ML) model employing convolutional neural networks (CNNs). These methods were used to analyze OAWL datasets gathered from a OneIso phantom deployed on a Varian TrueBeam. The precision of localizing positional BBs within the OneIso QA phantom, analysis speed, and robustness were compared across the methods. Significantly, the trained ML model utilizing CNNs was found to exhibit superior precision, analysis speed, and efficiency compared to the other two methods. These results highlight the benefit in shifting from manual and OIR methods to that of ML techniques. The incorporation of CNNs in automated QA analysis can achieve improved precision, allowing for more rapid and wider adoption of SIMT SRS for treating intracranial metastases while preserving integrity of surrounding healthy tissues.

单等中心多靶点(SIMT)立体定向放射手术(SRS)近年来成为颅内肿瘤的一种强有力的治疗方案。具有高特异性,SIMT SRS允许快速,高剂量递送,同时保持邻近健康组织的完整性,并最大限度地减少对患者的神经认知损伤。高度稳健和准确的质量保证(QA)测试对于最大限度地减少脱靶和对周围健康组织的损害至关重要。我们开发了一种名为OneIso的新型QA模体,通过离轴温斯顿-卢茨(OAWL)精确测量离轴精度,以协助SIMT SRS程序。在本研究中,比较了三种不同的定量数值方法,用于隔离和测量OAWL测量中使用的球轴承(BBs)的位置。评估的三种方法是:1)结合人工干预的特征提取技术;2)利用光学图像识别(OIR)技术的专有软件;3)采用卷积神经网络(cnn)的机器学习(ML)模型。这些方法用于分析从部署在瓦里安TrueBeam上的OneIso幻影收集的OAWL数据集。比较了不同方法在OneIso QA模型中定位bb的精度、分析速度和鲁棒性。值得注意的是,与其他两种方法相比,使用cnn训练的ML模型表现出更高的精度、分析速度和效率。这些结果突出了从手动和OIR方法转向ML技术的好处。在自动化QA分析中结合cnn可以提高精度,允许更快速和更广泛地采用SIMT SRS治疗颅内转移,同时保持周围健康组织的完整性。
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引用次数: 0
A Novel Approach in Cancer Diagnosis: Integrating Holography Microscopic Medical Imaging and Deep Learning Techniques - Challenges and Future Trends. 癌症诊断的新方法:整合全息显微医学成像和深度学习技术-挑战和未来趋势。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-13 DOI: 10.1088/2057-1976/ad9eb7
Asifa Nazir, Ahsan Hussain, Mandeep Singh, Assif Assad

Medical imaging is pivotal in early disease diagnosis, providing essential insights that enable timely and accurate detection of health anomalies. Traditional imaging techniques, such as Magnetic Resonance Imaging (MRI), Computer Tomography (CT), ultrasound, and Positron Emission Tomography (PET), offer vital insights into three-dimensional structures but frequently fall short of delivering a comprehensive and detailed anatomical analysis, capturing only amplitude details. Three-dimensional holography microscopic medical imaging provides a promising solution by capturing the amplitude (brightness) and phase (structural information) details of biological structures. In this study, we investigate the novel collaborative potential of Deep Learning (DL) and holography microscopic phase imaging for cancer diagnosis. The study comprehensively examines existing literature, analyzes advancements, identifies research gaps, and proposes future research directions in cancer diagnosis through the integrated Quantitative Phase Imaging (QPI) and DL methodology. This novel approach addresses a critical limitation of traditional imaging by capturing detailed structural information, paving the way for more accurate diagnostics. The proposed approach comprises tissue sample collection, holographic image scanning, pre-processing in case of imbalanced datasets, and training on annotated datasets using DL architectures like U-Net and Vision Transformer(ViT's). Furthermore, sophisticated concepts in DL, like the incorporation of Explainable AI techniques (XAI), are suggested for comprehensive disease diagnosis and identification. The study thoroughly investigates the advantages of integrating holography imaging and DL for precise cancer diagnosis. Additionally, meticulous insights are presented by identifying the challenges associated with this integration methodology.

医学成像在早期疾病诊断中至关重要,它提供了能够及时准确检测健康异常的基本见解。传统的成像技术,如磁共振成像(MRI)、计算机断层扫描(CT)、超声波和正电子发射断层扫描(PET),提供了对三维结构的重要见解,但往往无法提供全面和详细的解剖分析,只能捕获振幅细节。三维全息显微医学成像通过捕获生物结构的振幅(亮度)和相位(结构信息)细节提供了一个有前途的解决方案。在这项研究中,我们探讨了深度学习(DL)和全息显微相位成像在癌症诊断中的新型协作潜力。本研究通过综合定量相位成像(QPI)和DL方法对现有文献进行了全面的研究,分析了研究进展,确定了研究差距,并提出了癌症诊断的未来研究方向。这种新方法通过捕获详细的结构信息,解决了传统成像的一个关键限制,为更准确的诊断铺平了道路。提出的方法包括组织样本收集、全息图像扫描、不平衡数据集的预处理,以及使用U-Net和Vision Transformer(ViT)等DL架构对带注释的数据集进行训练。此外,DL中的复杂概念,如可解释人工智能技术(XAI)的结合,被建议用于全面的疾病诊断和识别。本研究深入探讨了全息成像与深度影像相结合在肿瘤精确诊断中的优势。此外,通过识别与此集成方法相关的挑战,提供了细致的见解。
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引用次数: 0
Rabbit heart bioartificial tissue: perfusion decellularization and characterization. 兔心脏生物人工组织:灌注脱细胞和表征。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-11 DOI: 10.1088/2057-1976/ad99de
Banu Seitzhaparova, Leya Timur, Baisunkar Mirasbek, Sanazar Kadyr, Timur Lesbekov, Aida Zhakypbekova, Cevat Erisken

Despite new approaches in the treatment of cardiovascular disease (CVD) such as percutaneous coronary intervention, coronary artery bypass graft, and left ventricular assist devices, which cannot fully compensate for the effectiveness of the original heart, heart transplantation still remains as the most effective solution. A growing body of literature recognizes the importance of developing a whole heart constructed from living tissues to provide an alternative option for patients suffering from diseases of the cardiovascular system. A potential solution that shows a promise is to generate cell-free, i.e., decellularized, scaffolds using native heart tissue to be later cellularized and transplanted. This study reports the decellularization process and efficiency in an effort to create a whole heart scaffold. The hearts harvested from rabbits were perfused and the final bioartificial scaffolds were characterized for the efficiency of decellularization in terms of DNA content, collagen, and glycosaminoglycan. The compressive biomechanical properties of decellularized and native hearts were also determined and compared. Findings revealed that the DNA content of decellularized hearts was significantly reduced while keeping collagen and GAG content unchanged. Biomechanical properties of the hearth became inferior upon removal of the nuclear material. Decellularized hearts have significant importance in treating CVD as they serve as bioartificial hearts, providing a more clinically relevant model for potential human use. Future work will focus on the recellularization of the heart using induced pluripotent or embryonic stem cells to test its functionality.

尽管经皮冠状动脉介入治疗、冠状动脉旁路移植术和左心室辅助装置等治疗心血管疾病的新方法不能完全弥补原心脏的有效性,但心脏移植仍然是最有效的解决方案。越来越多的文献认识到开发由活组织构建的完整心脏的重要性,为患有心血管系统疾病的患者提供了另一种选择。一个潜在的解决方案是产生无细胞的,即去细胞化的支架,使用天然心脏组织,然后再进行细胞化和移植。本研究报告了脱细胞过程和效率,以努力创造一个完整的心脏支架。对兔心脏进行灌注,最终的生物人工支架在DNA含量、胶原蛋白和糖胺聚糖方面的脱细胞效率进行了表征。对脱细胞心脏和天然心脏的压缩生物力学性能进行了测定和比较。结果表明,在保持胶原蛋白和GAG含量不变的情况下,脱细胞心脏的DNA含量显著降低。去除核材料后,炉膛的生物力学性能变差。脱细胞心脏在治疗心血管疾病方面具有重要意义,因为它们作为生物人工心脏,为潜在的人类应用提供了更临床相关的模型。未来的工作将集中在使用诱导多能干细胞或胚胎干细胞来测试心脏的再细胞化功能。
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引用次数: 0
Comparative finite element analysis between three surgical techniques for the treatment of type VI schatzker tibial plateau fractures. 三种手术方式治疗VI型胫骨平台schatzker骨折的比较有限元分析。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-11 DOI: 10.1088/2057-1976/ad98a2
Georgios Mitrogiannis, Orestis A Gkaintes, Christos Garnavos, Vassiliki T Potsika, Maria Roumpi, Ioannis Gkiatas, Ioannis D Gelalis, Vasileios S Nikolaou, Andreas F Mavrogenis, Nikolaos G Lasanianos, Tijana Geroski, Nenad Filipovic, Dimitrios I Fotiadis, Emilios Pakos, Georgios C Babis

Introduction. Open reduction internal fixation (ORIF) and external fixation are traditional surgical techniques for treating type VI Schatzker tibial plateau fractures. A newly developed technique integrates the intramedullary tibial nail with condylar bolts. This finite element study investigated the mechanical response of three surgical techniques for fixing type VI Schatzker tibial plateau fractures. We compared the intramedullary nail-bolt (IMNB) technique with the single lateral locking plate (SLLP) and dual plating (DP) techniques.Materials and Methods. A 4th generation Sawbone model of a left tibia with a Type VI tibial plateau fracture was scanned using computed tomography and reconstructed into a 3D model. The plates were digitally reconstructed using 3D scanning technology, while the screws, condylar bolt, and nail were replicated using commercial computer-aided design software. An application engineer guided by a surgeon, virtually positioned the bone-implant construct for the three surgical techniques to align with physical constructs from a previousin-vitrobiomechanical study. A commercial finite element analysis software was used for the computer simulation, with the tibial plateau subjected to uniaxial loads at 500, 1000, and 1500 Newton while the distal tip of the tibia remained fixed. Measurements of vertical subsidence, horizontal diastasis, and passive construct stiffness were recorded and compared to those of the previousin-vitrobiomechanical experiment.Results.DP had the highest stiffness, followed by IMNB and SLLP techniques. DP also resulted in smaller values for measured subsidence and diastasis compared to SLLP and IMNB. The simulation results aligned with those of thein-vitrobiomechanical study.Conclusions.The simulation results may further support the initial suggestion of thein-vitrobiomechanical study that the IMNB technique is a biomechanically suitable method for fixing Type VI Schatzker injuries.

简介:切开复位内固定(ORIF)和外固定是治疗VI型Schatzker胫骨平台骨折的传统手术技术。一项新发展的技术整合髓内胫骨钉与髁突螺栓。本有限元研究探讨了三种手术技术固定VI型Schatzker胫骨平台骨折的力学响应。我们将髓内钉-螺栓(IMNB)技术与单外侧锁定钢板(SLLP)和双钢板(DP)技术进行了比较。材料与方法:用计算机断层扫描左胫骨第四代锯骨模型并重建为三维模型。使用3D扫描技术对钢板进行数字化重建,同时使用商用计算机辅助设计软件对螺钉、髁突螺栓和钉子进行复制。一名应用工程师在一名外科医生的指导下,为三种外科技术虚拟定位骨种植体结构,使其与先前体外生物力学研究中的物理结构对齐。使用商业有限元分析软件进行计算机模拟,胫骨平台承受500、1000和1500牛顿的单轴载荷,而胫骨远端保持固定。记录了垂直沉降、水平位移和被动构体刚度的测量结果,并与之前的体外生物力学实验进行了比较。结果:DP技术的刚度最高,其次是IMNB和SLLP技术。与SLLP和IMNB相比,DP也导致了较小的沉降和流失测量值。模拟结果与体外生物力学研究结果一致 ;结论:模拟结果可能进一步支持体外生物力学研究的初步建议,即IMNB技术是一种生物力学上适合于固定VI型Schatzker损伤的方法。 。
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引用次数: 0
Digital Twin for EEG seizure prediction using time reassigned Multisynchrosqueezing transform-based CNN-BiLSTM-Attention mechanism model. 基于时间重分配多同步压缩变换的cnn - bilstm -注意机制模型的数字孪生脑电图发作预测。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-11 DOI: 10.1088/2057-1976/ad992c
Antara Ghosh, Debangshu Dey

The prediction of epileptic seizures is a classical research problem, representing one of the most challenging tasks in the analysis of brain disorders. There is active research into digital twins (DT) for various healthcare applications, as they can transform research into customized and personalized healthcare. The widespread adoption of DT technology relies on ample patient data to ensure precise monitoring and decision-making, leveraging Machine Learning (ML) and Deep Learning (DL) algorithms. Given the non-stationarity of EEG recordings, characterized by substantial frequency variations over time, there is a notable preference for advanced time-frequency methods in seizure prediction. This research proposes a DT-based seizure prediction system by applying an advanced time-frequency analysis approach known as Time-Reassigned MultiSynchroSqueezing Transform (TMSST) to EEG data to extract patient-specific impulse features and subsequently, a Deep Learning strategy, CNN-BiLSTM-Attention mechanism model is utilized in learning and classifying features for seizure prediction. The proposed architecture is named as 'Digital Twin-Net'. By estimating the group delay in the time direction, TMSST produces the frequency components that are responsible for the EEG signal's temporal behavior and those time-frequency signatures are learned by the developed CNN-BiLSTM-Attention mechanism model. Thus the combination acts as a digital twin of a patient for the prediction of epileptic seizures. The experimental results showed that the suggested approach achieved an accuracy of 99.70% when tested on 22 patients from the publicly accessible CHB-MIT dataset. The proposed method surpasses previous solutions in terms of overall performance. Consequently, the suggested method can be regarded as an efficient approach to EEG seizure prediction.

癫痫发作的预测是一个经典的研究问题,是分析脑部疾病中最具挑战性的任务之一。针对各种医疗保健应用程序的数字双胞胎(DT)正在积极研究,因为它们可以将研究转化为定制和个性化的医疗保健。DT技术的广泛采用依赖于充分利用机器学习(ML)和深度学习(DL)算法,以确保精确的监测和决策。鉴于脑电图记录的非平稳性,其特征是随时间的大量频率变化,因此在癫痫发作预测中有一个明显的偏好是先进的时频方法。本研究提出了一种基于dt的癫痫发作预测系统,该系统采用一种先进的时频分析方法,即时间重分配多同步压缩变换(TMSST)对脑电图数据进行提取,提取患者特定的脉冲特征,然后利用深度学习策略cnn - bilstm -注意力机制模型对特征进行学习和分类,用于癫痫发作预测。提出的架构被命名为“数字双网”。TMSST通过在时间方向上估计群体延迟,产生与脑电信号时间行为有关的频率分量,并通过建立的cnn - bilstm -注意机制模型学习这些时频特征。因此,这种组合就像病人的数字双胞胎,用于预测癫痫发作。实验结果表明,当对来自公开访问的CHB-MIT数据集的23名患者进行测试时,所建议的方法达到了99.70%的准确率。所提出的方法在整体性能方面优于以往的解决方案。因此,该方法可被认为是一种有效的脑电图癫痫发作预测方法。
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引用次数: 0
Machine Learning based Heart Murmur Detection and Classification. 基于机器学习的心脏杂音检测与分类。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-05 DOI: 10.1088/2057-1976/ad9aab
Ishan Fernando, Dileesha Kannangara, Santhusha Kodituwakku, Ravindu Asiri Sirithunga Maddumage, Samiru Gayan, Tharupraba Herath, Niroshan Lokunarangoda, Rukshani Liyanaarachchi

Cardiovascular diseases rank among the leading causes of mortality worldwide and the early identification of diseases is of paramount importance. This work focuses on developing a novel machine learning-based framework for early detection and classification of heart murmurs by analysing phonocardiogram signals. Our heart murmur detection and classification pipeline encompasses three classification settings. We first develop a set of methods based on transfer learning to determine the existence of heart murmurs and categorize them as present, absent, or unknown. If a murmur is present it will be classified as normal or abnormal based on its clinical outcome by using 1D convolution and audio spectrogram transformers. Finally, we use Wav2Vec encoder with raw audio data and AdaBoost abstain classifier for heart murmur quality identification. Heart murmurs are categorized based on their specific attributes, including murmur pitch, murmur shape, and murmur timing which are important for diagnosis. Using the PhysioNet 2022 dataset for training and validation, we achieve an 81.08% validation accuracy for murmur presence classification and a 68.23% validation accuracy for clinical outcome classification with 60.52% sensitivity and 74.46% specificity. The suggested approaches provide a promising framework for using phonocardiogram signals for the detection, classification, and quality analysis of heart murmurs. This has significant implications for the diagnosis and treatment of cardiovascular diseases.

心血管疾病是世界范围内导致死亡的主要原因之一,及早发现疾病至关重要。这项工作的重点是开发一种新的基于机器学习的框架,通过分析心音图信号来早期检测和分类心脏杂音。我们的心脏杂音检测和分类管道包括三种分类设置。我们首先开发了一套基于迁移学习的方法来确定心脏杂音的存在,并将其分类为存在、不存在或未知。如果杂音存在,将根据其临床 ;结果,通过使用1D卷积和音频频谱图变压器,将其分类为正常或异常。最后,我们使用原始音频数据的Wav2Vec编码器和AdaBoost放弃分类器进行心脏杂音质量识别。心脏杂音是根据其具体属性进行分类的,包括杂音音高、杂音形状和杂音时间,这些对诊断很重要。使用PhysioNet 2022数据集进行训练和验证,我们对杂音存在分类的验证准确率为81.08%,对临床结果分类的验证准确率为68.23%,敏感性为60.52%,特异性为74.46%。所建议的方法为使用心音图信号进行心脏杂音的检测、分类和质量分析提供了一个有前途的框架。这对心血管疾病的诊断和治疗具有重要意义。
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引用次数: 0
A new method to assess the performance of anti-scatter grids in x-ray projection imaging. 评估 X 射线投影成像中反散射网格性能的新方法。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-05 DOI: 10.1088/2057-1976/ad974c
P Monnin

Purpose.This work proposes a new method to assess the performance of radiographic anti-scatter grids (ASGs) without the use of a narrow primary beam, which is difficult to achieve.Method.Three general purpose ASGs were evaluated, two marketed ASGs and a low frequency and high ratio prototype ASG with molybdenum lamellae. A range of high scatter x-ray beams were used in a standardized geometry, with energies ranging from 60 kV to 121 kV, for five beam sizes between 10 × 10 and 30 × 30 cm2. The scatter fraction (SF) of each beam was measured in the image plane with and without ASG using the lead beam stop method with an extrapolation function derived from the scatter point spread function (PSF).Results.The primary, scatter and total transmissions of the three ASGs measured for the different x-ray beams allowed the calculation of the grid factor, contrast improvement factor and detective quantum efficiency (DQE) as functions of the input SF. The results obtained for the three ASGs are consistent with those obtained with the standard narrow-beam method and data published in the literature, confirmed the prime importance of the ASG primary transmission and revealed important variations in ASG performance, especially as a function of the input SF and beam size. The break-even input SFs at which the imaging system efficiency was improved by the ASG ranged between 0.18 and 0.52 for the different ASGs and beam characteristics.Significance.The method is proposed as an alternative to current ASG characterization techniques.

目的:这项研究提出了一种新的方法来评估射线抗散射网格(ASG)的性能,而无需使用难以实现的窄主光束:方法:评估了三种通用 ASG,两种市场上销售的 ASG 和一种带有钼薄片的低频高比原型 ASG。在标准几何形状中使用了一系列高散射 X 射线束,能量范围从 60 kV 到 121 kV,五种光束尺寸介于 10 x 10 和 30 x 30 cm2 之间。在有 ASG 和没有 ASG 的情况下,使用铅束止点法和从散射点扩散函数(PSF)得出的外推函数,在图像平面上测量每束光的散射分量(SF):针对不同的 X 射线光束测量了三种 ASG 的主透射率、散射率和总透射率,从而计算出网格系数、对比度改善系数和探测量子效率 (DQE) 与输入 SF 的函数关系。对三种 ASG 得出的结果与标准窄光束方法得出的结果和文献中公布的数据一致,证实了 ASG 初级传输的重要性,并揭示了 ASG 性能的重要变化,特别是作为输入 SF 和光束尺寸函数的变化。对于不同的 ASG 和光束特性,ASG 提高成像系统效率的盈亏平衡输入 SF 值介于 0.18 和 0.52 之间:意义:该方法可替代目前的 ASG 表征技术。
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引用次数: 0
Effect of tissue viscoelasticity on delivered mechanical power in a physical respiratory system model: distinguishing between airway and tissue resistance. 在物理呼吸系统模型中,组织粘弹性对输送机械动力的影响:区分气道和组织阻力。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-12-04 DOI: 10.1088/2057-1976/ad974b
Simon Walzel, Karel Roubik

Understanding the mechanics of the respiratory system is crucial for optimizing ventilator settings and ensuring patient safety. While simple models of the respiratory system typically consider only flow resistance and lung compliance, lung tissue resistance is usually neglected. This study investigated the effect of lung tissue viscoelasticity on delivered mechanical power in a physical model of the respiratory system and the possibility of distinguishing tissue resistance from airway resistance using proximal pressure measured at the airway opening. Three different configurations of a passive physical model of the respiratory system representing different mechanical properties (Tissue resistance model, Airway resistance model, and No-resistance model) were tested. The same volume-controlled ventilation and parameters were set for each configuration, with only the inspiratory flow rates being adjusted. Pressure and flow were measured with a Datex-Ohmeda S/5 vital signs monitor (Datex-Ohmeda, Madison, WI, USA). Tissue resistance was intentionally tuned so that peak pressures and delivered mechanical energy measured at airway opening were similar in Tissue and Airway Resistance models. However, measurements inside the artificial lung revealed significant differences, with Tissue resistance model yielding up to 20% higher values for delivered mechanical energy. The results indicate the need to revise current methods of calculating mechanical power delivery, which do not distinguish between tissue resistance and airway flow resistance, making it difficult to evaluate and interpret the significance of mechanical power delivery in terms of lung ventilation protectivity.

了解呼吸系统的力学原理对于优化呼吸机设置和确保患者安全至关重要。呼吸系统的简单模型通常只考虑流动阻力和肺顺应性,而肺组织阻力通常被忽略。本研究调查了肺组织粘弹性对呼吸系统物理模型中输送机械动力的影响,以及利用气道开口处测量的近端压力区分组织阻力和气道阻力的可能性。测试了代表不同机械特性的呼吸系统被动物理模型的三种不同配置(组织阻力模型、气道阻力模型和无阻力模型)。每种配置都设置了相同的容积控制通气和参数,仅调整了吸气流速。使用 Datex-Ohmeda S/5 生命体征监护仪(Datex-Ohmeda,美国威斯康星州麦迪逊市)测量压力和流量。组织阻力是有意调整的,以便在组织阻力模型和气道阻力模型中,气道开放时测得的峰值压力和输送的机械能相似。然而,在人工肺内进行的测量显示出明显的差异,组织阻力模型产生的输送机械能值高达 20%。这些结果表明有必要修改目前计算机械能输出的方法,因为这种方法没有区分组织阻力和气道流动阻力,因此很难评估和解释机械能输出对肺通气保护性的意义。
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Biomedical Physics & Engineering Express
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