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Adaptive physiology-informed correction for reliable remote photoplethysmography heart-rate monitoring. 可靠的远程光容积脉搏图心率监测的适应性生理校正。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-10 DOI: 10.1038/s41746-026-02386-y
Yunfei Tian, Shuo Li, Yanmin Zhu, Mohamed Elgendi, Edmund Y Lam

Contactless heart rate (HR) monitoring demonstrates significant potential for mobile health and telemedicine, but current remote photoplethysmography (rPPG) approaches remain vulnerable to various noise sources. While existing research has emphasized signal-level enhancement, correcting erroneous HR estimates remains underexplored. We present a plug-and-play adaptive correction algorithm that leverages cardiac dynamics constraints, adjusting HR estimates based on physiological priors of HR elevation and recovery. By mapping HR frequencies to indices and applying adaptive corrections, our method significantly reduces measurement errors with minimal computational load, even under challenging conditions. Across three public datasets, the algorithm increased the proportion of accurate measurements (mean absolute error ≤ 10 beats per minute) from 46.26% to 84.14% (LGI-PPGI), 48.03% to 69.21% (BUAA-MIHR), and 92.22% to 96.67% (UBFC-rPPG), outperforming existing correction techniques. The lightweight design facilitates seamless edge-side integration, providing a scalable solution for enhancing the reliability of contactless HR monitoring in mobile and remote healthcare settings.

非接触式心率(HR)监测显示了移动医疗和远程医疗的巨大潜力,但目前的远程光电容积脉搏图(rPPG)方法仍然容易受到各种噪声源的影响。虽然现有研究强调信号水平的增强,但纠正错误的HR估计仍未得到充分探索。我们提出了一种即插即用的自适应校正算法,该算法利用心脏动力学约束,根据心率升高和恢复的生理先验调整心率估计。通过将HR频率映射到指数并应用自适应校正,即使在具有挑战性的条件下,我们的方法也能以最小的计算负荷显著降低测量误差。在三个公共数据集中,该算法将精确测量(平均绝对误差≤10次/分钟)的比例从46.26%提高到84.14% (LGI-PPGI),从48.03%提高到69.21% (BUAA-MIHR),从92.22%提高到96.67% (UBFC-rPPG),优于现有的校正技术。轻巧的设计促进了无缝的边缘集成,为增强移动和远程医疗保健环境中非接触式人力资源监控的可靠性提供了可扩展的解决方案。
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引用次数: 0
Derivation and validation of a machine learning-driven score to predict the diagnostic yield of endomyocardial biopsy. 推导和验证机器学习驱动的评分来预测心内膜肌活检的诊断率。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-09 DOI: 10.1038/s41746-026-02421-y
Christian Basile, Christian L Polte, Piero Gentile, Entela Bollano, Araz Rawshani, Anders Oldfors, Charlotta Ljungman, Sven-Erik Bartfay, Pia Dahlberg, Clara Hjalmarsson, Marie Björkenstam, Elena Gualini, Antonio Cannatá, Patrizia Pedrotti, Andrea Garascia, Gianluigi Savarese, Aldo Pietro Maggioni, Kristjan Karason, Emanuele Bobbio

Despite its low diagnostic yield, endomyocardial biopsy (EMB) remains the gold standard for establishing a definitive diagnosis in many cardiomyopathies. We developed and validated a machine-learning-based score to predict the likelihood of diagnostic EMB using non-invasive data. We retrospectively analyzed 775 heart failure patients who underwent EMB. A random forest algorithm was selected for score development based on superior discriminative performance. The model was externally validated in an independent cohort (n = 171). The study population was predominantly male (72.1%), with half of the patients in NYHA class III-IV. EMB yielded a definitive diagnosis in 19.9% of cases, most commonly amyloidosis (50%). A predictive score (0-100 range) was derived from key non-invasive predictors. Right ventricular late gadolinium enhancement (LGE) on cardiac magnetic resonance emerged as the strongest predictor, followed by left ventricular and atrial LGE, NTproBNP levels, and renal function. The model demonstrated excellent discrimination, with an area under the curve of 0.92 (95% CI = 0.89-0.96) in cross-validation and 0.91 (95% CI = 0.86-0.98) in the testing set, with consistent performance on external validation (AUC 0.82, 95% CI = 0.76-0.89). This machine-learning-based score may provide a non-invasive tool to support EMB decision-making in clinical practice.

尽管诊断率低,但心肌内膜活检(EMB)仍然是许多心肌病明确诊断的金标准。我们开发并验证了一种基于机器学习的评分方法,利用非侵入性数据预测诊断性EMB的可能性。我们回顾性分析了775例接受EMB治疗的心力衰竭患者。基于更好的判别性能,选择随机森林算法进行评分开发。该模型在独立队列中进行外部验证(n = 171)。研究人群以男性为主(72.1%),其中一半患者为NYHA III-IV级。在19.9%的病例中,EMB给出了明确的诊断,最常见的是淀粉样变(50%)。从关键的非侵入性预测指标得出预测评分(0-100范围)。心脏磁共振右室晚期钆增强(LGE)是最强的预测因子,其次是左室和心房LGE、NTproBNP水平和肾功能。该模型具有良好的判别性,交叉验证曲线下面积为0.92 (95% CI = 0.89-0.96),测试集曲线下面积为0.91 (95% CI = 0.86-0.98),外部验证性能一致(AUC 0.82, 95% CI = 0.76-0.89)。这种基于机器学习的评分可以为临床实践中的EMB决策提供非侵入性工具。
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引用次数: 0
Toward integrated sleep health: multimodal AI in Hang Hao Meng agent. 迈向综合睡眠健康:航好孟代理的多模态AI。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-09 DOI: 10.1038/s41746-026-02432-9
Mingjian Cai, Sugai Liang, Shuai Zhen, Siwei Wei, Tao Sun, Junwei Liu, Hongjing Mao, Junhang Zhang

This Perspective introduces 'Hang Hao Meng', an AI-powered sleep health expert agent for comprehensive patient management. Leveraging large language models, multimodal analytics, and a digital-human interface, it delivers end-to-end services from screening to personalized treatment. Deployed at scale, the agent has provided triage for over four million individuals and completed 90,000+ screenings, demonstrating a scalable model for enhancing accessibility and personalized care in sleep medicine.

本透视介绍人工智能睡眠健康专家代理“航好孟”,全面管理患者。它利用大型语言模型、多模式分析和数字人机界面,提供从筛查到个性化治疗的端到端服务。经过大规模部署,该代理已经为400多万人提供了分诊,完成了9万多次筛查,展示了一种可扩展的模式,可以提高睡眠医学的可及性和个性化护理。
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引用次数: 0
Rapid prediction of cardiac activation in the left ventricle with geometric deep learning: a step towards cardiac resynchronization therapy planning 用几何深度学习快速预测左心室的心脏活动:心脏再同步化治疗计划的一步
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-07 DOI: 10.1038/s41746-026-02399-7
Ehsan Naghavi, Haifeng Wang, Vahid Ziaei-Rad, Julius Guccione, Ghassan Kassab, Vishnu Boddeti, Seungik Baek, Lik-Chuan Lee
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引用次数: 0
Accessible assessment of motor and cognitive symptoms in Parkinson’s disease: integrating large datasets, machine-learning, and videoconferencing 帕金森病运动和认知症状的无障碍评估:整合大数据集、机器学习和视频会议
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-07 DOI: 10.1038/s41746-026-02426-7
Avigail Lithwick Algon, William Saban
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引用次数: 0
People process technology and operations framework for establishing AI governance in healthcare organizations 人员处理技术和操作框架,用于在医疗保健组织中建立人工智能治理
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-07 DOI: 10.1038/s41746-026-02419-6
Jee Young Kim, Alifia Hasan, Suresh Balu, Mark Sendak
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引用次数: 0
xGNN4MI: explainability of graph neural networks in 12-lead electrocardiography for cardiovascular disease classification. xGNN4MI:图神经网络在12导联心电图心血管疾病分类中的可解释性。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-06 DOI: 10.1038/s41746-026-02367-1
Miriam Cindy Maurer, Philip Hempel, Kristin Elisabeth Steinhaus, Hryhorii Chereda, Marcus Vollmer, Dagmar Krefting, Nicolai Spicher, Anne-Christin Hauschild

The clinical deployment of artificial intelligence (AI) solutions for assessing cardiovascular disease (CVD) risk in 12-lead electrocardiography (ECG) is hindered by limitations in interpretability and explainability. To address this, we present xGNN4MI, an open-source framework for graph neural networks (GNNs) in ECG modeling for interpretable CVD prediction. Our framework facilitates modeling clinically relevant spatial relationships between ECG leads and their temporal dynamics. We integrated explainable AI (XAI) and developed a task-specific XAI evaluation and visualization workflow to identify ECG leads crucial to the model's decision-making process, enabling a systematic comparison with established clinical knowledge. We evaluated xGNN4MI on two challenging tasks: diagnostic superclass classification and localization of myocardial infarction. Our findings show that the interpretable ECG-GNN models demonstrate good performance across the tasks. XAI analysis revealed clinically meaningful training effects, such as differentiating between anteroseptal and inferior myocardial infarction. Our work demonstrates the potential of ECG-GNNs for providing trustworthy and interpretable AI-based CVD diagnosis.

人工智能(AI)解决方案在12导联心电图(ECG)中评估心血管疾病(CVD)风险的临床部署受到可解释性和可解释性限制的阻碍。为了解决这个问题,我们提出了xGNN4MI,这是一个开源框架,用于ECG建模中的图神经网络(gnn),用于可解释的CVD预测。我们的框架有助于建立心电图导联及其时间动态之间的临床相关空间关系。我们整合了可解释人工智能(XAI),并开发了特定任务的XAI评估和可视化工作流程,以识别对模型决策过程至关重要的ECG导联,从而能够与已建立的临床知识进行系统比较。我们评估了xGNN4MI在两个具有挑战性的任务:诊断超类分类和心肌梗死的定位。我们的研究结果表明,可解释的ECG-GNN模型在所有任务中都表现出良好的性能。XAI分析显示有临床意义的训练效果,如区分室间隔前和下壁心肌梗死。我们的工作证明了ecg - gnn在提供可信和可解释的基于人工智能的心血管疾病诊断方面的潜力。
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引用次数: 0
Independent and collaborative performance of large language models and healthcare professionals in diagnosis and triage. 大型语言模型和医疗保健专业人员在诊断和分类方面的独立和协作性能。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-06 DOI: 10.1038/s41746-026-02409-8
Mingyang Chen, Yijin Wu, Jiayi Ma, Xinhua Jia, Chen Gao, Fanghui Zhao, Youlin Qiao

Large language models (LLMs) show promising diagnostic and triage performance, yet direct comparisons with healthcare professionals (HCPs) and collaborative effects remain limited. We conducted a systematic review and meta-analysis of studies (January 2020 to September 2025) comparing the diagnostic or triage accuracy of LLMs, HCPs, or their collaboration across seven databases. Studies using multiple-choice formats rather than open diagnostic generation were excluded. We extracted top-1, top-3, top-5, and top-10 diagnostic and triage accuracies and pooled results using multilevel random-effects models to account for nested observations. Of 10,398 studies screened, 50 met criteria, evaluating 25 different LLMs across diverse medical specialties. The relative diagnostic accuracy of LLMs versus HCPs progressively improved from 0.89 (95% CI, 0.79-1.00) for top-1 to 0.91 (0.83-1.00) for top-3, 1.04 (0.89-1.22) for top-5, and 1.17 (0.87-1.57) for top-10 diagnoses, with significant model variability. LLM-assisted HCPs outperformed HCPs alone, with relative diagnostic accuracy of 1.13 (1.00-1.27) for top-1, 1.11 (1.01-1.23) for top-3, 1.42 (1.16-1.73) for top-5, and 1.33 (0.94-1.87) for top-10 diagnoses. Triage accuracy was similar between LLMs and HCPs (1.01 [0.94-1.09]). These findings show potential for LLM integration but methodological flaws in studies necessitate rigorous real-world evaluation before clinical implementation.

大型语言模型(llm)显示出有希望的诊断和分类性能,但与医疗保健专业人员(hcp)和协作效果的直接比较仍然有限。我们对研究进行了系统回顾和荟萃分析(2020年1月至2025年9月),比较了llm、hcp或他们在7个数据库中的合作的诊断或分诊准确性。采用多项选择格式而非开放式诊断生成的研究被排除在外。我们提取了前1名、前3名、前5名和前10名的诊断和分诊准确率,并使用多层随机效应模型汇总了结果,以解释嵌套的观察结果。在筛选的10,398项研究中,有50项符合标准,评估了不同医学专业的25个不同的法学硕士。LLMs与HCPs的相对诊断准确性逐渐提高,从前1名的0.89 (95% CI, 0.79-1.00)提高到前3名的0.91(0.83-1.00),前5名的1.04(0.89-1.22),前10名的1.17(0.87-1.57),具有显著的模型变异性。llm辅助的HCPs优于单独的HCPs, top-1的相对诊断准确率为1.13 (1.00-1.27),top-3的相对诊断准确率为1.11 (1.01-1.23),top-5的相对诊断准确率为1.42 (1.16-1.73),top-10的相对诊断准确率为1.33(0.94-1.87)。llm和HCPs的分诊准确率相似(1.01[0.94-1.09])。这些发现显示了法学硕士整合的潜力,但研究方法上的缺陷需要在临床实施之前进行严格的实际评估。
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引用次数: 0
Physics constrained graph neural network for real time prediction of intracranial aneurysm hemodynamics. 用于颅内动脉瘤血流动力学实时预测的物理约束图神经网络。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-06 DOI: 10.1038/s41746-026-02404-z
Vincent Lannelongue, Paul Garnier, Pablo Jeken-Rico, Aurèle Goetz, Philippe Meliga, Yves Chau, Elie Hachem

Intracranial aneurysms (IAs) are life-threatening vascular conditions requiring accurate risk assessment to guide treatment. Hemodynamic biomarkers such as wall shear stress and oscillatory shear index are promising predictors of rupture risk but remain underused clinically due to the high computational cost of traditional CFD methods. We propose a physics-constrained graph neural network (GNN) framework trained on high-fidelity CFD data to predict full 3D, time-resolved hemodynamic fields throughout the cardiac cycle. Our model incorporates enhanced node features and physics-based constraints to capture complex spatio-temporal flow behavior in near real time. It generalizes to varying inflow conditions and unseen patient-specific geometries with no fine-tuning. Additionally, we release a benchmark dataset of 105 patient-derived aneurysm geometries with CFD fields to support the machine learning (ML) community. This is the first GNN model applied to transient 3D aneurysmal flow prediction, paving the way for rapid, AI-driven hemodynamic analysis toward risk stratification and treatment planning.

颅内动脉瘤(IAs)是危及生命的血管疾病,需要准确的风险评估来指导治疗。壁面剪切应力和振荡剪切指数等血流动力学生物标志物是很有希望预测破裂风险的指标,但由于传统CFD方法的高计算成本,在临床上仍未得到充分应用。我们提出了一个基于高保真CFD数据训练的物理约束图神经网络(GNN)框架,用于预测整个心脏周期的全3D、时间分辨血流动力学场。我们的模型结合了增强的节点特征和基于物理的约束,以近乎实时地捕获复杂的时空流行为。它适用于不同的流入条件和不可见的患者特定几何形状,无需微调。此外,我们还发布了一个包含105个患者衍生动脉瘤几何形状的基准数据集,其中包含CFD字段,以支持机器学习(ML)社区。这是第一个应用于瞬态三维动脉瘤血流预测的GNN模型,为快速、人工智能驱动的血流动力学分析铺平了道路,从而实现风险分层和治疗计划。
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引用次数: 0
Wearable EEG devices in the detection of mild cognitive impairment: a systematic review. 可穿戴脑电图设备在轻度认知障碍检测中的应用:系统综述。
IF 15.1 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-06 DOI: 10.1038/s41746-026-02342-w
Chanchan He, Xiru Yu, Yuhe Zhang, Yuanning Li, Nan Jiang

Wearable electroencephalography (EEG) devices are miniaturized, portable, and wireless systems for long-term brain monitoring, demonstrating significant potential as accessible mild cognitive impairment (MCI) screening tools based on objective neurophysiological biomarkers. However, their performance in MCI detection remains unclear, and their translation to real-world applications faces several challenges. This study aimed to comprehensively evaluate wearable EEG for MCI detection, identify key characteristics that optimize classification performance and usability, and address gaps in effective design implementation. We conducted a systematic search across seven databases, screening 1562 records and analyzing 21 studies that examined 16 distinct wearable EEG devices for MCI detection. The results revealed considerable variation in classification accuracy (range: 46-95%). A system-level analysis of the entire wearable EEG system and data flow identified seven critical factors that optimize the trade-off between diagnostic performance, portability, and affordability: (1) moderate channel density; (2) frontal and parietal electrode placement; (3) elderly-friendly multi-domain cognitive tasks; (4) adaptive signal preprocessing; (5) multi-domain feature extraction; (6) ensemble classifiers; and (7) multimodal integration. Additionally, methodological considerations for future wearable EEG-based MCI detection research include: (1) standardize MCI diagnostic frameworks; (2) increase sample diversity; (3) optimizing device usability and technical specifications; (4) standardize recording protocols; (5) harmonizing data processing pipelines; (6) validate in real-world settings; (7) assess cost-effectiveness; and (8) implement comprehensive reporting guidelines. These insights enable further translational applications of wearable EEG-based MCI detection and provide a foundation for developing user-friendly systems that could transform early cognitive impairment screening in community and primary care settings.

可穿戴式脑电图(EEG)设备是用于长期大脑监测的小型化、便携式和无线系统,显示出基于客观神经生理生物标志物的可获得的轻度认知障碍(MCI)筛查工具的巨大潜力。然而,它们在MCI检测中的性能仍然不清楚,并且它们在实际应用中的转化面临着一些挑战。本研究旨在全面评估可穿戴EEG用于MCI检测,确定优化分类性能和可用性的关键特征,并解决有效设计实施中的空白。我们对7个数据库进行了系统搜索,筛选了1562条记录,并分析了21项研究,这些研究检查了16种不同的用于MCI检测的可穿戴脑电图设备。结果显示在分类精度上有相当大的差异(范围:46-95%)。对整个可穿戴脑电图系统和数据流的系统级分析确定了七个关键因素,以优化诊断性能、便携性和可负担性之间的权衡:(1)适度的通道密度;(2)额、顶叶电极放置;(3)老年人友好型多领域认知任务;(4)自适应信号预处理;(5)多域特征提取;(6)集成分类器;(7)多模态集成。此外,未来基于可穿戴脑电图的MCI检测研究的方法学考虑包括:(1)标准化MCI诊断框架;(2)增加样本多样性;(3)优化设备可用性和技术指标;(4)规范记录协议;(5)协调数据处理管道;(6)在现实环境中进行验证;(7)评估成本效益;(8)实施全面的报告准则。这些见解使基于脑电图的可穿戴式MCI检测能够进一步转化应用,并为开发用户友好的系统提供基础,这些系统可以改变社区和初级保健环境中的早期认知障碍筛查。
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引用次数: 0
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NPJ Digital Medicine
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