AFNET

AFNET
  • 文章类型: Journal Article
    目的:最近的试验数据证明了主动心律管理对心房颤动(AF)患者的有益作用,并支持低心律失常负担与低AF相关并发症风险相关的观点。本文件旨在总结心房颤动网络(AFNET)和欧洲心律协会(EHRA)第九届AFNET/EHRA共识会议的主要成果。
    结果:2023年9月,83名国际专家在明斯特举行了为期2天的会议。主要发现如下:(i)对于所有合适的房颤患者,主动节律管理应该是默认初始治疗的一部分。(ii)具有设备检测到的AF的患者具有低的AF负担和低的中风风险。抗凝可以预防某些中风,并增加严重但非致死性出血。(iii)需要更多的研究来改善房颤患者的卒中风险预测,尤其是那些具有低AF负担。生物分子,遗传学,和成像可以支持这一点。(iv)AF的存在应引发伴随心血管疾病的系统检查和综合治疗。(V)机器学习算法已经用于改进AF的检测或可能的发展。临床医生和数据科学家之间的合作需要利用数据科学应用于房颤患者的潜力。
    结论:与心律失常负担较高的患者相比,心律失常负担较低的房颤患者发生卒中和其他心血管事件的风险较低。结合主动节律控制,抗凝,速率控制,和伴随心血管疾病的治疗可以改善房颤患者的生活。
    OBJECTIVE: Recent trial data demonstrate beneficial effects of active rhythm management in patients with atrial fibrillation (AF) and support the concept that a low arrhythmia burden is associated with a low risk of AF-related complications. The aim of this document is to summarize the key outcomes of the 9th AFNET/EHRA Consensus Conference of the Atrial Fibrillation NETwork (AFNET) and the European Heart Rhythm Association (EHRA).
    RESULTS: Eighty-three international experts met in Münster for 2 days in September 2023. Key findings are as follows: (i) Active rhythm management should be part of the default initial treatment for all suitable patients with AF. (ii) Patients with device-detected AF have a low burden of AF and a low risk of stroke. Anticoagulation prevents some strokes and also increases major but non-lethal bleeding. (iii) More research is needed to improve stroke risk prediction in patients with AF, especially in those with a low AF burden. Biomolecules, genetics, and imaging can support this. (iv) The presence of AF should trigger systematic workup and comprehensive treatment of concomitant cardiovascular conditions. (v) Machine learning algorithms have been used to improve detection or likely development of AF. Cooperation between clinicians and data scientists is needed to leverage the potential of data science applications for patients with AF.
    CONCLUSIONS: Patients with AF and a low arrhythmia burden have a lower risk of stroke and other cardiovascular events than those with a high arrhythmia burden. Combining active rhythm control, anticoagulation, rate control, and therapy of concomitant cardiovascular conditions can improve the lives of patients with AF.
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  • 文章类型: Journal Article
    羊水体积(AFV)是诊断特定胎儿异常时的关键胎儿生物标志物。本研究提出了一种新的卷积神经网络(CNN)模型,AFNet,用于分割羊水(AF)以促进临床AFV评估。在手动分割和放射科医师验证的AF数据集上训练和测试AFNet。AFNet通过在注意块中使用有效的特征映射并在解码器中转置卷积来优于ResUNet++。我们的实验结果表明,AFNet在我们的数据集上实现了93.38%的平均交集。从而胜过其他最先进的模型。虽然AFNet的性能得分与UNet++模型相似,它这样做,同时只利用不到一半的参数数量。通过使用改进的CNN架构创建详细的AF数据集,我们能够在临床实践中量化AFV,这可以帮助诊断在妊娠期房颤疾病。
    Amniotic Fluid Volume (AFV) is a crucial fetal biomarker when diagnosing specific fetal abnormalities. This study proposes a novel Convolutional Neural Network (CNN) model, AFNet, for segmenting amniotic fluid (AF) to facilitate clinical AFV evaluation. AFNet was trained and tested on a manually segmented and radiologist-validated AF dataset. AFNet outperforms ResUNet++ by using efficient feature mapping in the attention block and transposing convolutions in the decoder. Our experimental results show that AFNet achieved a mean Intersection over Union (mIoU) of 93.38% on our dataset, thereby outperforming other state-of-the-art models. While AFNet achieves performance scores similar to those of the UNet++ model, it does so while utilizing merely less than half the number of parameters. By creating a detailed AF dataset with an improved CNN architecture, we enable the quantification of AFV in clinical practice, which can aid in diagnosing AF disorders during gestation.
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  • 文章类型: Journal Article
    尽管房颤(AF)的管理取得了显著进展,即使在目前的最佳治疗方案下,房颤的检测仍然很困难,房颤相关并发症也会导致不可接受的发病率和死亡率.本文件总结了心房颤动网络(AFNET)和欧洲心律协会(EHRA)第八届AFNET/EHRA共识会议的主要成果。2021年10月,83名国际专家在汉堡举行了为期2天的会议。跨学科的结果,根据最近发表的和未发表的意见,分组和全体会议中的混合讨论在这篇共识论文中进行了总结,以通过指导预防来支持对房颤患者的改善护理。个性化管理,和研究策略。主要结果是(I)新的证据支持一个简单的,可扩展,和实用的基于人群的房颤筛查途径;(ii)节律管理正在从旨在改善症状的治疗发展到预防房颤相关结局的综合领域,特别是在最近诊断为房颤的患者中;(iii)心房心肌病的改善表征可能有助于识别需要治疗的患者;(iv)房颤患者认知功能的标准化评估可能导致患者预后的改善;(v)人工智能(AI)可以支持所有上述目标。但需要先进的跨学科知识和合作以及更好的医学法律框架。实施新的循证房颤筛查和节律管理方法可以改善房颤患者的预后。通过进一步努力识别和靶向心房心肌病和认知障碍,其他益处是可能的。这可以通过AI来促进。
    Despite marked progress in the management of atrial fibrillation (AF), detecting AF remains difficult and AF-related complications cause unacceptable morbidity and mortality even on optimal current therapy. This document summarizes the key outcomes of the 8th AFNET/EHRA Consensus Conference of the Atrial Fibrillation NETwork (AFNET) and the European Heart Rhythm Association (EHRA). Eighty-three international experts met in Hamburg for 2 days in October 2021. Results of the interdisciplinary, hybrid discussions in breakout groups and the plenary based on recently published and unpublished observations are summarized in this consensus paper to support improved care for patients with AF by guiding prevention, individualized management, and research strategies. The main outcomes are (i) new evidence supports a simple, scalable, and pragmatic population-based AF screening pathway; (ii) rhythm management is evolving from therapy aimed at improving symptoms to an integrated domain in the prevention of AF-related outcomes, especially in patients with recently diagnosed AF; (iii) improved characterization of atrial cardiomyopathy may help to identify patients in need for therapy; (iv) standardized assessment of cognitive function in patients with AF could lead to improvement in patient outcomes; and (v) artificial intelligence (AI) can support all of the above aims, but requires advanced interdisciplinary knowledge and collaboration as well as a better medico-legal framework. Implementation of new evidence-based approaches to AF screening and rhythm management can improve outcomes in patients with AF. Additional benefits are possible with further efforts to identify and target atrial cardiomyopathy and cognitive impairment, which can be facilitated by AI.
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