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MS360°: a conceptual digital-first, data-driven hybrid care framework for personalised multiple sclerosis management. MS360°:一个概念上的数字优先,数据驱动的个性化多发性硬化症管理混合护理框架。
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-06 DOI: 10.1038/s41746-026-02461-4
Isabel Voigt,Lars Masanneck,Marc Pawlitzki,Hernan Inojosa,Sven G Meuth,Tjalf Ziemssen
This perspective introduces MS360°, a conceptual hybrid care model for the management of multiple sclerosis (MS). It integrates traditional on-site assessments with digital health technologies (DHT) to enable more continuous, personalised, and proactive disease management. Current MS care is often fragmented, limiting timely interventions and patient engagement. MS360° addresses these challenges by introducing a digital-first hybrid framework for continuous data collection through remote monitoring, wearable sensors, and telemedicine. This data can be used to dynamically steer structured patient pathways and trigger targeted on-site assessments and interventions such as neurological examinations, imaging, laboratory assessments, and standardised functional tests based on predefined thresholds and patient profiles. The interaction of multidisciplinary teams, structured care pathways and bidirectional data flow enables timely clinical decision-making, stratified patient management and early detection of disease progression. Digital tools can further enhance patient engagement and lifestyle management, promoting adherence and outcomes. New technologies, including artificial intelligence and digital twins, are being discussed as potential future extensions for precision care, workflow optimisation, and risk prediction. MS360° provides a quality-driven conceptual framework, offering a roadmap for integrating digital innovations into patient-centred MS care.
这一观点介绍了MS360°,一个概念混合护理模式的管理多发性硬化症(MS)。它将传统的现场评估与数字卫生技术(DHT)相结合,以实现更持续、个性化和主动的疾病管理。目前的多发性硬化症治疗往往是分散的,限制了及时的干预和患者的参与。MS360°通过引入数字优先的混合框架,通过远程监控、可穿戴传感器和远程医疗进行连续数据收集,从而解决了这些挑战。这些数据可用于动态引导结构化的患者路径,并触发有针对性的现场评估和干预措施,如神经学检查、成像、实验室评估和基于预定义阈值和患者概况的标准化功能测试。多学科团队的相互作用、结构化的护理路径和双向数据流使及时的临床决策、分层的患者管理和早期发现疾病进展成为可能。数字工具可以进一步加强患者参与和生活方式管理,促进依从性和结果。包括人工智能和数字孪生在内的新技术正在被讨论,作为未来精准护理、工作流程优化和风险预测的潜在扩展。MS360°提供了一个质量驱动的概念框架,为将数字创新整合到以患者为中心的MS护理中提供了路线图。
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引用次数: 0
Evaluating a digital decision aid for atrial fibrillation rhythm control in a hybrid implementation-effectiveness trial. 在一项混合实施-有效性试验中评估心房颤动节律控制的数字决策辅助。
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-06 DOI: 10.1038/s41746-026-02405-y
Meghan Reading Turchioe,Afra Shamnath,David Slotwiner,Yihong Zhao,Deepak Saluja,Seth Goldbarg,JoonHyuk Kim,Paul Varosy,Angelo Biviano
Digital decision aids significantly improve shared decision-making outcomes, but barriers to implementation in clinical settings remain. We conducted a Hybrid Type 2 implementation-effectiveness trial of an atrial fibrillation rhythm control decision aid (clinicaltrials.gov NCT04993807; registered 08/06/2021) among 75 older adults across two sites. Guided by the RE-AIM framework, we assessed decision quality and implementation outcomes. While the decision aid was highly acceptable and broadly adopted, changes in decisional conflict and self-efficacy varied widely, with no significant average improvement across the cohort. Subgroup and qualitative analyses revealed that the decision aid was most effective when delivered to the right patient, at the right time, and in the right clinical context. Barriers included variability in health literacy, digital access, and timing of delivery relative to the clinical decision-making process. Findings underscore the challenges of deploying digital interventions within real-world workflows and highlight the importance of targeting decision support tools based on patient readiness, literacy, and care context.
数字化决策有助于显著改善共享决策结果,但在临床环境中实施的障碍仍然存在。我们在两个地点的75名老年人中进行了一项房颤节律控制决策辅助的混合型实施有效性试验(clinicaltrials.gov NCT04993807;注册日期为2021年6月8日)。在RE-AIM框架的指导下,我们评估了决策质量和实施结果。虽然决策辅助被高度接受和广泛采用,但决策冲突和自我效能的变化差异很大,在整个队列中没有显着的平均改善。亚组分析和定性分析显示,当在正确的时间和正确的临床环境中向正确的患者提供决策辅助时,决策辅助是最有效的。障碍包括卫生知识的可变性、数字获取以及相对于临床决策过程的交付时间。研究结果强调了在现实工作流程中部署数字干预措施的挑战,并强调了基于患者准备情况、素养和护理环境的目标决策支持工具的重要性。
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引用次数: 0
Clarifying validation terminologies in healthcare 澄清医疗保健中的验证术语
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02471-2
Amanda Dy, Sandra M. Buetow, Andrew J. Bredemeyer, Monika Lamba Saini, Fabienne Lucas, Shannon Bennett, Kim R. M. Blenman, Keith Wharton Jr., Sunil Singhal, M. E. de Baca, Kevin Schap, Matthew G. Hanna, Staci J. Kearney, Norman Zerbe, Roberto Salgado, Jithesh Veetil, Jansen N. Seheult, David S. McClintock, April Khademi, Jochen K. Lennerz
Validation is a cornerstone of reliability and trust in diagnostics, yet discipline-specific assumptions and unspoken contextual differences often lead to miscommunication, misalignment, and avoidable delays. As AI/ML becomes more integrated into healthcare, there is a growing necessity to re-examine how the term validation is used and understood. We highlight inconsistencies in the use of the term validation through an analysis of 94 themes across five domains, including Communication Science (n = 12), AI/ML (n = 26), Clinical and Laboratory Practice (n = 19), Regulatory Science (n = 22), and Business (n = 15). We emphasize how persistent reliance on domain-specific implied definitions impedes interdisciplinary alignment. Rather than advocating for a single definition, we derived five consensus proposals that collectively advocate for more specific and context-aware additions to the term validation to support clarity, reliability, and compliance across disciplines. Our goal is to support clearer communication and provide useful strategies that inform the development, regulation, and use of digital health technologies.
验证是诊断可靠性和信任的基石,但是特定学科的假设和未说出来的上下文差异经常导致错误沟通、不一致和可避免的延迟。随着AI/ML越来越多地集成到医疗保健中,越来越有必要重新审视术语验证的使用和理解方式。通过对五个领域94个主题的分析,我们强调了术语验证使用的不一致性,包括通信科学(n = 12)、人工智能/机器学习(n = 26)、临床和实验室实践(n = 19)、监管科学(n = 22)和商业(n = 15)。我们强调持久依赖于特定领域的隐含定义如何阻碍跨学科的协调。我们没有提倡单一的定义,而是得出了五个一致的建议,它们共同提倡对术语验证进行更具体和上下文敏感的添加,以支持跨学科的清晰度、可靠性和遵从性。我们的目标是支持更清晰的沟通,并提供有用的战略,为数字卫生技术的开发、管理和使用提供信息。
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引用次数: 0
Automated detection of new cerebral infarctions and prognostic implications using deep learning on serial MRI 在连续MRI上使用深度学习自动检测新的脑梗死和预后意义
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02511-x
Hwan-ho Cho, Joonwon Lee, Jeonghoon Bae, Dongwhane Lee, Hyung Chan Kim, Suk Yoon Lee, Jung Hwa Seo, Woo-Keun Seo, Jin-Man Jung, Hyunjin Park, Seongho Park
We developed and externally validated a deep learning model to automatically detect new ischemic lesions on serial FLAIR MRI scans in patients with stroke. Manual interpretation of follow-up imaging is labor-intensive and variable, and silent brain infarctions (SBIs) are frequently missed despite their prognostic importance. Using 25,451 paired slices from 1055 patients across two hospitals, we trained a convolutional neural network with supervised contrastive learning to classify new lesion occurrence. The model achieved an area under the receiver operating characteristic curve of 0.89 in both internal and external validation cohorts. To evaluate clinical relevance, we further analyzed an independent asymptomatic cohort of 307 patients with a median follow-up of two years. Patients classified as SBI-positive by the model showed a significantly higher risk of subsequent symptomatic stroke than those without SBI. In multivariable Cox regression adjusted for age and major vascular risk factors, model-positive patients had a 3.8-fold increased risk of stroke recurrence. These findings indicate that AI can identify clinically meaningful SBIs that are under-recognized in routine practice and independently associated with stroke recurrence. Automated lesion detection may provide a reproducible imaging biomarker for risk stratification, supporting standardized interpretation of follow-up MRI and informing secondary stroke prevention strategies.
我们开发并外部验证了一个深度学习模型,该模型可以在中风患者的连续FLAIR MRI扫描中自动检测新的缺血性病变。随访影像的人工解释是劳动密集型和可变的,尽管无症状脑梗死(sbi)具有预后重要性,但经常被遗漏。使用来自两家医院1055名患者的25,451对切片,我们训练了一个带有监督对比学习的卷积神经网络,以分类新病变的发生。在内部和外部验证队列中,该模型的受试者工作特征曲线下面积均为0.89。为了评估临床相关性,我们进一步分析了307例无症状患者的独立队列,中位随访时间为两年。经模型分类为SBI阳性的患者出现后续症状性卒中的风险明显高于无SBI的患者。在校正年龄和主要血管危险因素的多变量Cox回归中,模型阳性患者卒中复发风险增加3.8倍。这些研究结果表明,人工智能可以识别出在常规实践中未被充分认识且与卒中复发独立相关的有临床意义的sbi。自动病变检测可以为风险分层提供可重复的成像生物标志物,支持后续MRI的标准化解释,并为二级卒中预防策略提供信息。
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引用次数: 0
Shifting the retinal foundation models paradigm from slices to volumes for optical coherence tomography 将视网膜基础模型范例从切片转移到光学相干断层扫描的体积
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02496-7
Raphael Judkiewicz, Eran Berkowitz, Meishar Meisel, Tomer Michaeli, Joachim A. Behar
Optical Coherence Tomography (OCT) is essential in ophthalmology for cross-sectional imaging of the retina. Pretrained foundation models facilitate task-specific model development by enabling fine-tuning with limited labeled data. However, current foundation models rely on a single B-scan (usually the central slice), overlooking volumetric context. This research investigates video foundation models to capture full 3D retinal structure and improve diagnostic performance. V-JEPA, a state-of-the-art video foundation model, was benchmarked against retinal foundation models (RETFound, VisionFM) and a natural image foundation model (DINOv2). All were fine-tuned to detect Age-related Macular Degeneration or Glaucomatous Optic Neuropathy using five OCT datasets. V-JEPA consistently equaled or outperformed image-based models, achieving an average AUROC of 0.94 (0.80–0.99), versus 0.90 (0.76–0.98) for the best image model, a statistically significant improvement (p < 0.001). To our knowledge, this is the first application of transformer-based video models to volumetric OCT, highlighting their promise in 3D medical imaging.
光学相干断层扫描(OCT)是必不可少的眼科视网膜的横断成像。预训练的基础模型通过对有限的标记数据进行微调来促进特定于任务的模型开发。然而,目前的基础模型依赖于单个b扫描(通常是中心切片),忽略了体积背景。本研究研究视频基础模型,以捕捉全3D视网膜结构和提高诊断性能。V-JEPA是一种最先进的视频基础模型,与视网膜基础模型(RETFound, VisionFM)和自然图像基础模型(DINOv2)进行基准测试。使用5个OCT数据集对所有数据进行微调以检测年龄相关性黄斑变性或青光眼视神经病变。V-JEPA的平均AUROC为0.94(0.80-0.99),而最佳图像模型的平均AUROC为0.90(0.76-0.98),具有统计学上的显著提高(p < 0.001)。据我们所知,这是基于变压器的视频模型首次应用于体积OCT,突出了它们在3D医学成像中的前景。
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引用次数: 0
Autonomous AI-assisted diabetic retinopathy screening at primary care is associated with increased presentation to eye care by at risk patients 在初级保健中自主进行人工智能辅助的糖尿病视网膜病变筛查与高危患者到眼科就诊的增加有关
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02460-5
Ariel Leong, Risa M. Wolf, Roomasa Channa, Jiangxia Wang, Harold Lehmann, Michael D. Abramoff, T. Y. Alvin Liu
Adult patients with diabetes (n = 3745) seen at Johns Hopkins Medicine primary care sites were referred to the Wilmer Eye Institute either based on a primary care provider referral or autonomous AI diagnostic result (referral was made after a positive or non-diagnostic result). An inverse-probability-weighted regression, which incorporated propensity score matching on social determinants of health and relevant clinical variables, showed that implementation of an autonomous AI-assisted diabetic screening program in a primary care clinic was associated with increased presentation to eye care specialist care by African-Americans (p = 0.02). This is significant because African-Americans have traditionally been less likely to undergo annual screening exams and more likely to present with more severe forms of diabetic retinopathy (DR). The results suggest a potential association between office-based, AI-assisted DR screening and improved downstream ophthalmic access for African-American patients. However, given that the analysis was exploratory, this association should be interpreted cautiously and further validated.
在约翰霍普金斯医学院初级保健站点就诊的成年糖尿病患者(n = 3745)根据初级保健提供者转诊或自主人工智能诊断结果(在阳性或非诊断结果后转诊)转介到Wilmer眼科研究所。结合健康社会决定因素和相关临床变量的倾向评分匹配的反概率加权回归显示,在初级保健诊所实施自主人工智能辅助糖尿病筛查项目与非洲裔美国人到眼科专科护理就诊的增加有关(p = 0.02)。这一点很重要,因为非洲裔美国人传统上不太可能进行年度筛查检查,更有可能出现更严重的糖尿病视网膜病变(DR)。结果表明,基于办公室的人工智能辅助DR筛查与改善非洲裔美国患者的下游眼科准入之间存在潜在关联。然而,考虑到分析是探索性的,这种关联应该谨慎解释并进一步验证。
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引用次数: 0
Mechanisms of action for digital therapeutics. 数字疗法的作用机制。
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02502-y
Linea Schmidt,Benedikt Langenberger,Felix Schirmann,Simon Reif,Ariel Dora Stern
Digital therapeutics (DTx) are increasingly established, yet their mechanisms of action (MoA) remain underexplored. This article defines and categorizes DTx MoA through a novel conceptual framework, distinguishing them from conventional treatments. We specifically conceptualize therapeutic elements, cognitive-affective and behavioral changes, and segment the notion of "dose" into distinct categories. This actionable framework provides a systematic basis for enhancing DTx research, design, and clinical effectiveness.
数字疗法(DTx)越来越成熟,但其作用机制(MoA)仍未得到充分探索。本文通过一个新的概念框架对DTx MoA进行了定义和分类,并将其与传统治疗方法区分开来。我们特别概念化治疗元素,认知-情感和行为改变,并将“剂量”的概念划分为不同的类别。这个可操作的框架为加强DTx的研究、设计和临床效果提供了系统的基础。
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引用次数: 0
Artificial intelligence-enabled ultrasound diagnosis and stratification of follicular thyroid neoplasms: a multi-center study 人工智能支持的甲状腺滤泡性肿瘤超声诊断和分层:一项多中心研究
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02489-6
Jianming Li, Haoyan Zhang, Huan Zheng, Yuancheng Cang, Lin xue Qian, Ligang Cui, Xinping Wu, Baoding Chen, Man Lu, Yong Xu, Runqin Miao, Desheng Sun, Liping Liu, Ping Li, Changsong Xu, Li Ma, Guoyong Hua, Shengnan Huo, Yanjun Liu, Weide Dai, Kexin Lou, Xiang Xie, Liping Yang, Fang Mei, Bo Ping, Xin Yang, Jie Yu, Kun Wang, Ping Liang
Preoperatively distinguishing follicular thyroid carcinoma (FTC) from follicular thyroid adenoma (FTA) remains a significant clinical challenge. Current ultrasound risk stratification systems show limited efficacy for follicular neoplasms, and existing artificial intelligence (AI) approaches lack sufficient validation. We developed and validated a deep learning model using ultrasound images to differentiate FTC from FTA and classify FTC into invasion subtypes. This multicenter retrospective study incorporated data from 31 hospitals, using 1531 patients for model development and 900 across three external test sets for validation. The model demonstrated high diagnostic performance, with AUCs of 0.816–0.847 for FTC vs FTA discrimination across external test sets and robust performance across subtypes (AUC range 0.754–0.910), and generalized well to varied clinical settings. Triple-classification macro-AUCs were 0.818–0.861. It consistently outperformed radiologists and improved diagnostic accuracy as an assistive tool. Our AI model provides a reliable, non-invasive tool for preoperative diagnosis and risk stratification of follicular thyroid neoplasms.
术前区分滤泡性甲状腺癌(FTC)和滤泡性甲状腺腺瘤(FTA)仍然是一个重大的临床挑战。目前的超声风险分层系统对滤泡性肿瘤的疗效有限,现有的人工智能(AI)方法缺乏足够的验证。我们开发并验证了一个使用超声图像区分FTC和FTA的深度学习模型,并将FTC划分为入侵亚型。这项多中心回顾性研究纳入了来自31家医院的数据,使用1531名患者进行模型开发,900名患者通过三个外部测试集进行验证。该模型显示出较高的诊断性能,在外部测试集中FTC与FTA的AUC为0.816-0.847,在亚型中表现稳健(AUC范围为0.754-0.910),并且可以很好地推广到不同的临床环境。三级宏观auc为0.818 ~ 0.861。作为一种辅助工具,它的表现一直优于放射科医生,并提高了诊断的准确性。我们的人工智能模型为滤泡性甲状腺肿瘤的术前诊断和风险分层提供了可靠的、无创的工具。
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引用次数: 0
Performance of the 12-lead ECG in predicting short- and long-term risk of sudden cardiac death 12导联心电图在预测心源性猝死短期和长期风险中的作用
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-05 DOI: 10.1038/s41746-026-02456-1
Jussi A. Hernesniemi, Teemu Pukkila, Jani Rankinen, Antti Kallonen, Mikko Uimonen, Leo-Pekka Lyytikäinen, Kjell Nikus, Esa Räsänen, Juho Tynkkynen
We evaluated the performance of 12-channel ECG in predicting sudden cardiac death across different time intervals using a retrospective data set of 17,625 high-risk cardiac patients who underwent coronary angiography (2007–2018) with follow-up data until 2022. Extreme gradient boosting using 12SL Marquette software-derived parameters from digital ECG recording was used to train and validate models using a random 80/20 split. Model performance was evaluated in both unbalanced and risk-factor-balanced case-control sets. Using single ECG, both long-term (from baseline ECG) and short-term predictions (from the last recorded ECG) achieved a modest area under the curve (AUC) of 0.68 in the unbalanced validation and 0.59/0.63 in the balanced validation (long-/short-term). Adding clinical risk factor data resulted in AUC 0.70/0.71 (unbalanced) and 0.64/0.62 (balanced) for long- and short-term prediction. Adding data of observed ECG changes during follow-up for short-term prediction resulted in the best model performance (0.72/0.66; unbalanced/balanced).
我们评估了12通道ECG在不同时间间隔预测心源性猝死的性能,使用了17625名接受冠状动脉造影的高危心脏病患者(2007-2018)的回顾性数据集,随访数据直到2022年。使用12SL Marquette软件从数字心电记录中导出的参数进行极端梯度增强,使用随机80/20分割来训练和验证模型。在不平衡和风险因素平衡的病例对照集中评估模型的性能。使用单个ECG,长期(来自基线ECG)和短期预测(来自最后记录的ECG)在不平衡验证中实现了适度的曲线下面积(AUC) 0.68,在平衡验证(长期/短期)中实现了0.59/0.63。加入临床危险因素数据后,长期和短期预测AUC分别为0.70/0.71(不平衡)和0.64/0.62(平衡)。加入随访时观察到的心电图变化数据进行短期预测,模型性能最佳(0.72/0.66;不平衡/平衡)。
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引用次数: 0
Prediction of antibiotic-associated cutaneous adverse drug reactions using electronic health record foundation models. 使用电子健康记录基础模型预测抗生素相关皮肤药物不良反应
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-03-04 DOI: 10.1038/s41746-026-02503-x
Junmo Kim,Kyunghoon Kim,Jeong-Eun Yun,Yu-Kyoung Hwang,Min-Gyu Kang,Seok Kim,Sooyoung Yoo,Chaiho Shin,Suhyun Kim,Kwangsoo Kim,Sae-Hoon Kim
Cutaneous adverse drug reactions (CADRs) are the most common form of adverse drug reactions, ranging from mild rashes to life-threatening diseases, such as Stevens-Johnson syndrome and toxic epidermal necrolysis. However, there is no effective tool to predict antibiotic-associated CADRs. In this study, we propose an antibiotic-associated CADR prediction model using electronic health record (EHR) foundation models (FMs). EHR FMs are based on the pretraining-finetuning paradigms of language models, corresponding medical codes and their sequences to words and sentences. We included 802,131 inpatients across three tertiary hospitals in Korea, combining EHR data with nursing statements and reports to extract skin rash records. Our approach achieved the best predictive performance compared to all the other baseline models across all datasets. To enhance clinical relevance, we classified CADRs into immediate and delayed types and conducted a detailed sub-analysis. Finally, we found that properly configured EHR FMs can effectively predict the risk of developing antibiotics-associated CADRs, particularly for delayed-type reactions where predictive testing options are limited.
皮肤药物不良反应(CADRs)是最常见的药物不良反应形式,从轻微的皮疹到危及生命的疾病,如史蒂文斯-约翰逊综合征和中毒性表皮坏死松解症。然而,目前还没有有效的工具来预测抗生素相关的cadr。在这项研究中,我们提出了一个使用电子健康记录(EHR)基础模型(FMs)的抗生素相关CADR预测模型。电子病历模型是基于语言模型的预训练-微调范式、相应的医学代码及其对单词和句子的序列。我们纳入了韩国三家三级医院的802131名住院患者,将电子病历数据与护理声明和报告相结合,提取皮疹记录。与所有数据集的所有其他基线模型相比,我们的方法实现了最佳的预测性能。为了提高临床相关性,我们将cadr分为即时型和延迟型,并进行了详细的亚分析。最后,我们发现,适当配置的EHR FMs可以有效地预测发生抗生素相关cadr的风险,特别是对于预测测试选项有限的延迟型反应。
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引用次数: 0
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NPJ Digital Medicine
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