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Deep learning-based high precision 3D ultrasound imaging for large size organ. 基于深度学习的大器官高精度三维超声成像。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-10-11 DOI: 10.1007/s11517-025-03453-4
Enxiang Shen, Qiyue Zhou, Caozhe Li, Haoyang Wang, Jie Yuan, Yun Ge, Ying Chen, Kanglian Zhao, Weijing Zhang, Di Zhao, Zhibin Jin

Three-dimensional (3D) ultrasound imaging offers a larger field of view and enables volumetric measurements. Among the versatile methods, free-hand 3D ultrasound imaging utilizing deep learning networks for spatial coordinate prediction exhibits advantages in terms of simplified device configuration and user-friendliness. However, this imaging method is restricted to predicting the relative spatial transformation between two consecutive 2D ultrasound images, resulting in substantial cumulative errors. When imaging large organs, cumulative errors can severely distort the 3D images. In this study, we proposed a labeling strategy based on the ultrasound image coordinate system, enhancing the network prediction accuracy. Meanwhile, pre-planning the scanning trajectory and using it to guide the network prediction significantly reduced cumulative error. Spinal 3D ultrasound imaging was performed on both healthy volunteers and scoliosis patients. Comparison of reconstruction results across different methods demonstrated that the proposed method improved the prediction accuracy by approximately 40% and reduced the cumulative error by nearly 80%. This method shows promise for application in various deep learning networks and different tissues and is expected to facilitate the broader clinical adoption of 3D ultrasound imaging.

三维(3D)超声成像提供了更大的视野,使体积测量成为可能。在多种方法中,利用深度学习网络进行空间坐标预测的徒手三维超声成像在简化设备配置和用户友好性方面具有优势。然而,该成像方法仅限于预测两幅连续二维超声图像之间的相对空间变换,导致累积误差较大。当成像大型器官时,累积误差会严重扭曲三维图像。在本研究中,我们提出了一种基于超声图像坐标系的标记策略,提高了网络的预测精度。同时,预先规划扫描轨迹并利用其指导网络预测,显著降低了累积误差。对健康志愿者和脊柱侧凸患者进行脊柱三维超声成像。不同重建方法的重建结果对比表明,该方法的预测精度提高了约40%,累计误差降低了近80%。该方法有望应用于各种深度学习网络和不同组织,并有望促进3D超声成像的广泛临床应用。
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引用次数: 0
Understanding the mismatch between in-vivo and in-silico rhinomanometry. 了解体内和硅鼻测量的不匹配。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-25 DOI: 10.1007/s11517-025-03450-7
Marco Atzori, Gabriele Dini Ciacci, Maurizio Quadrio

Numerical simulations and clinical measurements of nasal resistance are in quantitative disagreement. The order of magnitude of this mismatch, that sometimes exceeds 100%, is such that known sources of uncertainty cannot explain it. The goal of the present work is to examine a source of bias introduced by the design of medical devices, which has not been considered until now as a possible explanation. We study the effect of the location of the probe on the rhinomanometer that is meant to measure the ambient pressure. Rhinomanometry is carried out on a 3D silicone model of a patient-specific anatomy; a clinical device and dedicated sensors are employed side-by-side for mutual validation. The same anatomy is also employed for numerical simulations, with approaches spanning a wide range of fidelity levels. We find that the intrinsic uncertainty of the numerical simulations is of minor importance. To the contrary, the position of the pressure tap intended to acquire the external pressure in the clinical device is crucial, and can cause a mismatch comparable to that generally observed between in-silico and in-vivo rhinomanometry data. A source of systematic bias may therefore exist in rhinomanometers, designed under the assumption that measurements of the nasal resistance are unaffected by the flow development within the instruments.

鼻阻力的数值模拟和临床测量结果在定量上存在分歧。这种不匹配的数量级有时超过100%,以至于已知的不确定性来源无法解释它。目前工作的目标是检查由医疗设备的设计引入的偏见的来源,这还没有被认为是一个可能的解释,直到现在。我们研究了探头的位置对用于测量环境压力的鼻压计的影响。鼻压测量是在患者特定解剖结构的3D硅胶模型上进行的;临床设备和专用传感器并排使用,以进行相互验证。同样的解剖结构也用于数值模拟,方法跨越了广泛的保真度水平。我们发现数值模拟的内在不确定性是次要的。相反,用于在临床设备中获取外部压力的压力水龙头的位置是至关重要的,并且可能导致不匹配,可与通常在计算机和体内鼻测数据之间观察到的不匹配相媲美。因此,在假设鼻阻力测量不受仪器内部流动发展影响的情况下,鼻压力计可能存在系统性偏差。
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引用次数: 0
Generation of multimodal realistic computational phantoms as a test-bed for validating deep learning-based cross-modality synthesis techniques. 生成多模态真实计算模型作为验证基于深度学习的跨模态合成技术的测试平台。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-27 DOI: 10.1007/s11517-025-03437-4
Francesca Camagni, Anestis Nakas, Giovanni Parrella, Alessandro Vai, Silvia Molinelli, Viviana Vitolo, Amelia Barcellini, Agnieszka Chalaszczyk, Sara Imparato, Andrea Pella, Ester Orlandi, Guido Baroni, Marco Riboldi, Chiara Paganelli

The validation of multimodal deep learning models for medical image translation is limited by the lack of high-quality, paired datasets. We propose a novel framework that leverages computational phantoms to generate realistic CT and MRI images, enabling reliable ground-truth datasets for robust validation of artificial intelligence (AI) methods that generate synthetic CT (sCT) from MRI, specifically for radiotherapy applications. Two CycleGANs (cycle-consistent generative adversarial networks) were trained to transfer the imaging style of real patients onto CT and MRI phantoms, producing synthetic data with realistic textures and continuous intensity distributions. These data were evaluated through paired assessments with original phantoms, unpaired comparisons with patient scans, and dosimetric analysis using patient-specific radiotherapy treatment plans. Additional external validation was performed on public CT datasets to assess the generalizability to unseen data. The resulting, paired CT/MRI phantoms were used to validate a GAN-based model for sCT generation from abdominal MRI in particle therapy, available in the literature. Results showed strong anatomical consistency with original phantoms, high histogram correlation with patient images (HistCC = 0.998 ± 0.001 for MRI, HistCC = 0.97 ± 0.04 for CT), and dosimetric accuracy comparable to real data. The novelty of this work lies in using generated phantoms as validation data for deep learning-based cross-modality synthesis techniques.

医学图像翻译的多模态深度学习模型的验证受到缺乏高质量成对数据集的限制。我们提出了一个新的框架,利用计算幻影来生成逼真的CT和MRI图像,为从MRI生成合成CT (sCT)的人工智能(AI)方法的鲁棒验证提供可靠的真实数据集,特别是用于放疗应用。训练两个周期一致生成对抗网络(cyclegan),将真实患者的成像风格转移到CT和MRI图像上,生成具有逼真纹理和连续强度分布的合成数据。这些数据通过与原始幻影的配对评估、与患者扫描的非配对比较以及使用患者特异性放射治疗计划的剂量学分析来评估。对公共CT数据集进行额外的外部验证,以评估对未见数据的通用性。由此产生的配对CT/MRI幻象用于验证基于gan的模型,该模型用于颗粒治疗中腹部MRI产生的sCT,可在文献中获得。结果显示解剖结构与原始影像高度一致,直方图与患者影像高度相关(MRI HistCC = 0.998±0.001,CT HistCC = 0.97±0.04),剂量学准确度与真实数据相当。这项工作的新颖之处在于使用生成的幻影作为基于深度学习的跨模态合成技术的验证数据。
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引用次数: 0
Deep learning-based morphological analysis of human sperm. 基于深度学习的人类精子形态分析。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-02 DOI: 10.1007/s11517-025-03418-7
Yiran Xu, Yuqiu Chen, Boxuan Zhang, Yimo Yan, Hongen Liao, Ran Liu

Sperm head morphology has been identified as a characteristic that can be used to predict a male's semen quality. Here, harnessing the close relationship considering sperm head shape to quality and morphology, we propose a joint learning model for sperm head segmentation and morphological category prediction. In the model, the sperm category prediction and the ellipticity, calculated by using the segmented sperm head profile, are used to synthesize the morphology to which the sperm belongs. In traditional clinical testing, fertility experts analyze sperm morphology by 2D images of sperm samples, which cannot represent the whole character of their quality and morphological category. To overcome the problem that single-angle 2D images cannot accurately identify sperm morphology, we use a deep-learning-based tracking and detection system to dynamically acquire sperm images with multiple frames and angles and then use the multi-frame and multi-angle time-series images of sperm to determine sperm morphology based on the multi-task model proposed in this study. Performing better than 3D sperm reconstruction and traditional computer-assisted sperm assessment systems, this approach enables end-to-end analysis of viable spermatozoa, requiring minimal computing power and utilizing equipment already available in most embryology laboratories.

精子头部形态被认为是一种可以用来预测男性精液质量的特征。本文利用精子头部形状与质量和形态的密切关系,提出了一种用于精子头部分割和形态分类预测的联合学习模型。在该模型中,利用精子分类预测和精子头部轮廓分段计算的椭圆度来综合精子所属的形态。在传统的临床检测中,生育专家通过精子样本的二维图像来分析精子形态,这并不能代表精子质量和形态类别的全部特征。为了克服单角度二维图像无法准确识别精子形态的问题,我们采用基于深度学习的跟踪检测系统,动态获取多帧、多角度的精子图像,然后基于本研究提出的多任务模型,利用精子的多帧、多角度时间序列图像确定精子形态。这种方法比3D精子重建和传统的计算机辅助精子评估系统性能更好,能够对活精子进行端到端分析,只需要最小的计算能力,并利用大多数胚胎学实验室现有的设备。
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引用次数: 0
FetalMLOps: operationalizing machine learning models for standard fetal ultrasound plane classification. FetalMLOps:实现标准胎儿超声平面分类的机器学习模型。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-08 DOI: 10.1007/s11517-025-03436-5
Matteo Testi, Maria Chiara Fiorentino, Matteo Ballabio, Giorgio Visani, Massimo Ciccozzi, Emanuele Frontoni, Sara Moccia, Gennaro Vessio

Fetal standard plane detection is essential in prenatal care, enabling accurate assessment of fetal development and early identification of potential anomalies. Despite significant advancements in machine learning (ML) in this domain, its integration into clinical workflows remains limited-primarily due to the lack of standardized, end-to-end operational frameworks. To address this gap, we introduce FetalMLOps, the first comprehensive MLOps framework specifically designed for fetal ultrasound imaging. Our approach adopts a ten-step MLOps methodology that covers the entire ML lifecycle, with each phase meticulously adapted to clinical needs. From defining the clinical objective to curating and annotating fetal US datasets, every step ensures alignment with real-world medical practice. ETL (extract, transform, load) processes are developed to standardize, anonymize, and harmonize inputs, enhancing data quality. Model development prioritizes architectures that balance accuracy and efficiency, using clinically relevant evaluation metrics to guide selection. The best-performing model is deployed via a RESTful API, following MLOps best practices for continuous integration, delivery, and performance monitoring. Crucially, the framework embeds principles of explainability and environmental sustainability, promoting ethical, transparent, and responsible AI. By operationalizing ML models within a clinically meaningful pipeline, FetalMLOps bridges the gap between algorithmic innovation and real-world application, setting a precedent for trustworthy and scalable AI adoption in prenatal care.

胎儿标准平面检测在产前护理中是必不可少的,能够准确评估胎儿发育和早期识别潜在的异常。尽管机器学习(ML)在该领域取得了重大进展,但其与临床工作流程的集成仍然有限,主要原因是缺乏标准化的端到端操作框架。为了解决这一差距,我们介绍了FetalMLOps,这是第一个专门为胎儿超声成像设计的综合MLOps框架。我们的方法采用十步MLOps方法,涵盖整个ML生命周期,每个阶段都精心适应临床需求。从定义临床目标到管理和注释胎儿美国数据集,每一步都确保与现实世界的医疗实践保持一致。开发ETL(提取、转换、加载)流程是为了标准化、匿名化和协调输入,从而提高数据质量。模型开发优先考虑平衡准确性和效率的架构,使用临床相关的评估指标来指导选择。性能最好的模型是通过RESTful API部署的,遵循MLOps的持续集成、交付和性能监视的最佳实践。至关重要的是,该框架嵌入了可解释性和环境可持续性原则,促进了道德、透明和负责任的人工智能。通过在临床有意义的管道中操作ML模型,FetalMLOps弥合了算法创新和现实应用之间的差距,为产前护理中可信赖和可扩展的人工智能采用开创了先例。
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引用次数: 0
Effect of trunk angle on lower limb joint moment in different strategies of sit-to-stand-to-sit motion with healthy subjects. 健康受试者不同坐-立-坐运动策略下躯干角度对下肢关节力矩的影响。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-10-07 DOI: 10.1007/s11517-025-03451-6
Subodh Kumar Suman, Khyati Verma

Patients with lower limb impairments often face sit-to-stand-to-sit motion challenges. The patients utilize a greater trunk flexion angle at seat-off time to mitigate knee moment. Alternative methods of STSTS motion strategies are required to study and understand the various patterns to guide physical rehabilitation programs in clinical practice. Four different STSTS strategies-Natural, Full Flexion, Pelvis-spine alignment, and Frame-Assisted-were experimented with twenty healthy subjects in a 3D motion capture lab, and inverse kinematics and dynamics methods were used for motion analysis in Visual 3D. At seat-off time in full flexion, the maximum trunk flexion angle is 58.77(± 17.92) degrees, duration is 1.63 s, 27% of the cycle, which reduces knee moment by -0.466(± 0.2) N.m/kg, increased hip moment by 0.67(± 0.312) N.m/kg, and ankle moment by 0.225(± 0.09) N.m/kg for the compensation. The compensatory movement also occurred while sitting down. Frame-assisted STSTS motion reduced knee moments without increases in hip and ankle moments at the maximum of trunk flexion angle while standing and sitting, and its motion patterns are similar to pelvis-spine alignment and natural strategies. These findings provide valuable insights for physiotherapists to predict the current stage of the patient for clinical assessment and guide in the design and development of medical devices.

下肢损伤患者经常面临从坐到站再坐的运动挑战。患者在离座时使用较大的躯干屈曲角度来减轻膝关节力矩。需要STSTS运动策略的替代方法来研究和理解各种模式,以指导临床实践中的物理康复计划。在三维运动捕捉实验室中,对20名健康受试者进行了自然、完全屈曲、骨盆-脊柱对齐和帧辅助四种不同的STSTS策略的实验,并使用反运动学和动力学方法在Visual 3D中进行了运动分析。在完全屈曲时,躯干最大屈曲角度为58.77(±17.92)度,持续时间为1.63秒,占周期的27%,膝关节力矩减少-0.466(±0.2)N.m/kg,髋部力矩增加0.67(±0.312)N.m/kg,踝关节力矩增加0.225(±0.09)N.m/kg。这种代偿性运动在坐下时也会发生。框架辅助的STSTS运动在站立和坐姿时躯干屈曲角度最大时减少膝关节力矩,而不增加髋关节和踝关节力矩,其运动模式与骨盆-脊柱对齐和自然策略相似。这些发现为物理治疗师预测患者的临床评估和指导医疗器械的设计和开发提供了有价值的见解。
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引用次数: 0
The biomedical engineer's pledge: overview and context. 生物医学工程师的承诺:概述和背景。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-24 DOI: 10.1007/s11517-025-03443-6
Antoni Ivorra, Txetxu Ausín, Laura Becerra-Fajardo, Antonio J Del Ama, Jesús Minguillón, Aracelys García-Moreno, Jordi Aguiló, Filipe Oliveira Barroso, Bart Bijnens, Oscar Camara, Sara Capdevila, Roger Castellanos Fernandez, Rafael V Davalos, Jean-Louis Divoux, Ahmed Eladly, Dario Farina, Carla García Hombravella, Raquel González López, Cesar A Gonzalez, Jordi Grífols, Felipe Maglietti, Shahid Malik, Elad Maor, Guillermo Marshall, Berta Mateu Yus, Lluis M Mir, Juan C Moreno, Xavier Navarro, Núria Noguera, Andrés Ozaita, Gemma Piella, José L Pons, Rita Quesada, Pilar Rivera-Gil, Boris Rubinsky, Aurelio Ruiz Garcia, Albert Ruiz-Vargas, Maria Sánchez Sánchez, Andreas Schneider-Ickert, Ting Shu, Rosa Villa Sanz, Bing Zhang, Gema Revuelta

Although biomedical engineering (BME) is a profession with ethical responsibilities comparable to those in medicine, it has, until now, lacked a counterpart to the Hippocratic Oath. While professional societies have established codes of ethics for biomedical engineers, these documents lack the symbolic and ceremonial significance of an oath or pledge. By contrast, the recitation of the Hippocratic Oath, or its modern version, the "Physician's Pledge," serves as a powerful rite of passage for medical students, fostering a strong sense of ethical duty at the start of their professional journey. However, the content of the Hippocratic Oath includes elements specific to clinical practice and is not directly applicable to biomedical engineering. To fill this gap, we have created a "Biomedical Engineer's Pledge," comprising a preamble, ten promises, and a concluding statement, to inspire ethical awareness and establish a meaningful graduation tradition.

尽管生物医学工程(BME)是一个具有与医学相当的道德责任的职业,但到目前为止,它还没有一个与希波克拉底誓言相对应的职业。虽然专业协会已经为生物医学工程师制定了道德准则,但这些文件缺乏宣誓或誓言的象征意义和仪式意义。相比之下,背诵希波克拉底誓言(Hippocratic Oath),或其现代版本的“医师誓言”(Physician’s Pledge),对医学生来说是一种强有力的成人仪式,在他们职业生涯的开始培养了一种强烈的道德责任感。然而,希波克拉底誓言的内容包括临床实践特有的元素,并不直接适用于生物医学工程。为了填补这一空白,我们创建了一个“生物医学工程师的誓言”,包括一个序言、十个承诺和一个结束语,以激发道德意识,建立一个有意义的毕业传统。
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引用次数: 0
Comparison of augmented reality visualization approaches in minimally invasive neurosurgery guidance: 2D, tablet, HMD and autostereoscopic displays. 增强现实可视化方法在微创神经外科指导中的比较:2D、平板电脑、HMD和自立体显示。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-10-11 DOI: 10.1007/s11517-025-03460-5
Nan Zhang, Wentao Zhao, Tianqi Huang, Ming Feng, Hongen Liao, Hongbin Liu

Minimally invasive neurosurgery presents specific challenges due to the limited operative space and complex cranial anatomy, requiring highly precise and safe surgical guidance. Augmented Reality (AR) technology offers the potential to improve surgical accuracy and safety by overlaying critical digital information onto real-world surgical environments. In this study, we present a study that aims to compare four AR visualization methods-2D flat display, smart tablet, head-mounted display (HMD), and 3D autostereoscopic display-in guiding minimally invasive neurosurgical procedures, specifically focusing on ventriculocentesis. The effectiveness of the AR methods was evaluated through comprehensive user studies involving 32 participants (including 11 experienced surgeons), with assessment focused on critical performance metrics including accuracy, completion time, usability, and cognitive workload during simulated surgical procedures. Results demonstrated that 3D visualization methods significantly outperformed traditional 2D approaches in terms of puncture accuracy and angular precision. Specifically, surgeons showed a statistically significant improvement in localization accuracy, with mean error reduced from 2.69 mm to 1.67 mm, and angular deviation from 5.62° to 1.54°. In comparing the two 3D visualization systems, the HMD exhibited superior task completion efficiency, while the 3D autostereoscopic display demonstrated higher usability scores and lower perceived workload ratings. Notably, the 3D systems effectively reduced the performance disparity between novice and experienced practitioners, suggesting their potential to accelerate the learning curve for less experienced users. We conclude that AR holds significant potential to enhance performance and decision-making in minimally invasive neurosurgical guidance.

微创神经外科由于手术空间有限和复杂的颅骨解剖结构,需要高度精确和安全的手术指导,因此面临着特殊的挑战。增强现实(AR)技术通过将关键的数字信息叠加到真实的手术环境中,提供了提高手术准确性和安全性的潜力。在这项研究中,我们提出了一项研究,旨在比较四种AR可视化方法- 2d平板显示器,智能平板电脑,头戴式显示器(HMD)和3D自动立体显示器-指导微创神经外科手术,特别是脑室穿刺。通过涉及32名参与者(包括11名经验丰富的外科医生)的综合用户研究来评估AR方法的有效性,评估重点是关键性能指标,包括准确性、完成时间、可用性和模拟外科手术过程中的认知工作量。结果表明,三维可视化方法在穿刺精度和角度精度方面明显优于传统的二维方法。具体来说,外科医生在定位精度上有统计学上的显著提高,平均误差从2.69 mm减少到1.67 mm,角度偏差从5.62°减少到1.54°。在比较两种3D可视化系统时,HMD显示出更高的任务完成效率,而3D自动立体显示显示出更高的可用性得分和更低的感知工作量评分。值得注意的是,3D系统有效地减少了新手和有经验的从业者之间的性能差距,这表明它们有可能加速经验不足的用户的学习曲线。我们得出结论,AR在微创神经外科指导中具有显著的潜力,可以提高手术表现和决策能力。
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引用次数: 0
Sinus rhythm maintenance in persistent atrial fibrillation: 12-lead ECG multiscale entropy characterization. 持续性心房颤动的窦性心律维持:12导联心电图多尺度熵表征。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-10-10 DOI: 10.1007/s11517-025-03449-0
Eva M Cirugeda, Eva Plancha, Víctor M Hidalgo, Sofía Calero, José J Rieta, Raúl Alcaraz

Persistent atrial fibrillation is the most common sustained cardiac arrhythmia, frequently linked with increased mortality and morbidity. Electrical cardioversion (ECV) remains the gold standard for sinus rhythm (SR) restoration, even though presenting potential adverse effects and a high relapsing rate. Predicting ECV outcome from the 12-lead ECG could reduce healthcare costs while preventing complications in patients unlikely to maintain SR. To this end, atrial activity (AA) organization has been traditionally evaluated through the amplitude and dominant frequency of the fibrillatory waves at lead II. However, physiological systems are known to exhibit complex dynamics across multiple time-scales, making multiscale (MSE) entropy measures a more suitable tool, as they can incorporate relevant information that may have been previously overlooked. Here, the predictive power of different MSE-based indices for the ECV outcome in 58 patients is evaluated. AA was estimated using a QT segment cancellation algorithm. Patients were classified based on SR maintenance after a 30-day follow-up. Results show that traditionally used indices report the highest predictive rate over the limb leads (79%). However, they are outperformed by Refined MSE over precordial leads (87%). Moreover, when considering statistical modeling techniques such as support vector machines, the prediction accuracy is increased (98%). In conclusion, MSE-based indices computed from precordial leads can robustly predict ECV outcome with higher accuracy than traditional approaches.

持续性心房颤动是最常见的持续性心律失常,常与死亡率和发病率增加有关。电复律(ECV)仍然是窦性心律(SR)恢复的金标准,即使存在潜在的不良反应和高复发率。通过12导联心电图预测ECV结果可以降低医疗成本,同时防止不可能维持sr的患者出现并发症。为此,传统上通过导联II处的纤颤波幅度和主导频率来评估心房活动(AA)组织。然而,已知生理系统在多个时间尺度上表现出复杂的动态,使得多尺度(MSE)熵测量成为更合适的工具,因为它们可以包含以前可能被忽视的相关信息。本文对58例ECV患者的不同mse指标的预测能力进行了评估。使用QT段对消算法估计AA。在30天的随访后,根据SR维持情况对患者进行分类。结果显示,传统使用的指标对肢体导联的预测率最高(79%)。然而,精炼MSE优于心前导联(87%)。此外,当考虑统计建模技术(如支持向量机)时,预测精度提高(98%)。综上所述,从心前导联计算的基于mse的指数可以比传统方法更准确地预测ECV结果。
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引用次数: 0
Enhancing AI-based decision support system with automatic brain tumor segmentation for EGFR mutation classification. 基于脑肿瘤自动分割的EGFR突变分类增强ai决策支持系统。
IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-01 Epub Date: 2025-09-23 DOI: 10.1007/s11517-025-03447-2
Neslihan Gökmen, Ozan Kocadağlı, Serdar Cevik, Cagdas Aktan, Reza Eghbali, Chunlei Liu

Glioblastoma (GBM) carries poor prognosis; epidermal-growth-factor-receptor (EGFR) mutations further shorten survival. We propose a fully automated MRI-based decision-support system (DSS) that segments GBM and classifies EGFR status, reducing reliance on invasive biopsy. The segmentation module (UNet SI) fuses multiresolution, entropy-ranked shearlet features with CNN features, preserving fine detail through identity long-skip connections, to yield a Lightweight 1.9 M-parameter network. Tumour masks are fed to an Inception ResNet-v2 classifier via a 512-D bottleneck. The pipeline was five-fold cross-validated on 98 contrast-enhanced T1-weighted scans (Memorial Hospital; Ethics 24.12.2021/008) and externally validated on BraTS 2019. On the Memorial cohort UNet SI achieved Dice 0.873, Jaccard 0.853, SSIM 0.992, HD95 24.19 mm. EGFR classification reached Accuracy 0.960, Precision 1.000, Recall 0.871, AUC 0.94, surpassing published state-of-the-art results. Inference time is ≤ 0.18 s per slice on a 4 GB GPU. By combining shearlet-enhanced segmentation with streamlined classification, the DSS delivers superior EGFR prediction and is suitable for integration into routine clinical workflows.

胶质母细胞瘤(GBM)预后不良;表皮生长因子受体(EGFR)突变进一步缩短生存期。我们提出了一种全自动的基于mri的决策支持系统(DSS),该系统可以对GBM进行分类并对EGFR状态进行分类,从而减少对侵入性活检的依赖。该分割模块(UNet SI)融合了多分辨率、熵排序shearlet特征和CNN特征,通过身份长跳连接保留了精细的细节,得到了一个1.9 m参数的轻量级网络。肿瘤掩模通过512-D瓶颈被馈送到Inception ResNet-v2分类器。该管道在98次对比增强t1加权扫描上进行了五倍交叉验证(纪念医院;伦理24.12.2021/008),并在BraTS 2019上进行了外部验证。在Memorial队列中,UNet SI达到Dice 0.873, Jaccard 0.853, SSIM 0.992, HD95 24.19 mm。EGFR分类准确率达到0.960,精密度1.000,召回率0.871,AUC 0.94,超过了已发表的最新结果。在4gb GPU上,推理时间≤0.18 s /片。通过将shearlet增强分割与流线型分类相结合,DSS提供了卓越的EGFR预测,适合集成到常规临床工作流程中。
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