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Generative Artificial Intelligence for Medical Image Creation in Health Professions Education: a Scoping Review. 生成式人工智能在卫生专业教育中的医学图像创建:范围审查。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-10 DOI: 10.1007/s10916-026-02350-z
Kartik Gupta, Mila Ferri Latinovich, Madeleine Ferri Latinovich, Krishna Singh, Michael N Patlas, Ankush Jajodia
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引用次数: 0
From Prototype to Production: Three Priorities for Journal of Medical Systems in 2026. 从原型到生产:2026年医疗系统杂志的三个优先事项。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-10 DOI: 10.1007/s10916-026-02351-y
Allan F Simpao
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引用次数: 0
Optimizing Large Language Model Responses to Medical Queries: a Cross-sectional Study On the Effective Use of Chatgpt for Cancer-related Questions. 优化大型语言模型对医疗查询的响应:对癌症相关问题有效使用Chatgpt的横断面研究。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-10 DOI: 10.1007/s10916-026-02344-x
Xinran Shao, Yihan Sun, Xingai Ju, Jianchun Cui

Large language models (LLMs) are increasingly used for medical advice; despite this, their response readability and quality remain suboptimal. Current research focuses on evaluating LLM outputs, with little investigation into practical optimization strategies for clinical use. On August 9, 2025, we identified the top 25 search keywords for five common cancers via Google Trends and adapted them into six prompt types. Each was posed to ChatGPT-4o and ChatGPT-5 between August 10 and August 12, 2025 under two query conditions: isolated (single question per page) and aggregated (all questions for one cancer type on the same page). Readability was assessed using four indices: Flesch-Kincaid Grade Level (FKGL), Flesch Reading Ease (FKRE), Gunning Fog Index (GFI), and the Simple Measure of Gobbledygook (SMOG). Quality was evaluated on a 5-point Likert scale across accuracy, relevance, comprehensiveness, empathy, and falsehood. ChatGPT-5 generated responses with significantly fewer words (316.81 ± 12.96), sentences (19.79 ± 1.01), syllables (551.93 ± 24.55), and hard words (62.33 ± 3.60) than ChatGPT-4o (292.85 ± 14.52, p = 0.003; 18.77 ± 1.07, p = 0.039; 515.01 ± 27.89, p = 0.006; 58.35 ± 4.05, p = 0.005), while also achieving higher scores in accuracy (W = 2.116, p = 0.034), relevance (W = 2.454, p = 0.014), comprehensiveness (W = 2.574, p = 0.010), and empathy (W = 2.174, p = 0.030). The 6th-grade prompt markedly improved readability over other strategies (ChatGPT-5: FKRE:64.92 ± 8.56, GFI:8.10 ± 1.13, FKGL:8.74 ± 1.73, SMOG:6.97 ± 1.26; ChatGPT-4o:65.44 ± 7.43, GFI:8.04 ± 1.48, FKGL:8.73 ± 1.80, SMOG:6.86 ± 1.53). Aggregating queries on a single page yielded higher accuracy, relevance, and comprehensiveness scores compared to isolated questioning (ChatGPT-4o: W = 4.451, p < 0.001; W = 4.356, p < 0.001; W = 1.965, p = 0.049. ChatGPT-5: W = 3.234, p < 0.001; W = 2.697, p = 0.007; W = 3.885, p < 0.001). ChatGPT-5 produces more concise and qualitatively superior responses than ChatGPT-4o. The patient prompt generated responses with high readability and strong empathy, and is therefore recommended for patient use. Consequently, aggregating related questions on a single page is advised to obtain higher-quality answers.

大型语言模型(llm)越来越多地用于医疗建议;尽管如此,它们的响应可读性和质量仍然不够理想。目前的研究主要集中在评估法学硕士的产出,很少调查临床使用的实际优化策略。2025年8月9日,我们通过谷歌Trends确定了5种常见癌症的前25个搜索关键词,并将其改编为6种提示类型。在2025年8月10日至8月12日期间,每个人都在两种查询条件下被提交给chatgpt - 40和ChatGPT-5:孤立(每页单个问题)和聚合(同一页面上所有癌症类型的问题)。采用4个指标评估可读性:Flesch- kincaid Grade Level (FKGL)、Flesch Reading Ease (FKRE)、Gunning Fog Index (GFI)和Simple Measure of Gobbledygook (SMOG)。质量以5分李克特量表评估,包括准确性、相关性、全面性、同理心和虚假性。ChatGPT-5生成反应(316.81±12.96)显著减少单词,句子(19.79±1.01),音节(551.93±24.55),和难词(62.33±3.60)比ChatGPT-4o(292.85±14.52,p = 0.003; 18.77±1.07,p = 0.039; 515.01±27.89,p = 0.006; 58.35±4.05,p = 0.005),同时实现精度更高的分数(W = 2.116, p = 0.034),相关性(W = 2.454, p = 0.014),全面性(W = 2.574, p = 0.010),和移情(W = 2.174, p = 0.030)。6级提示比其他策略显著提高了可读性(ChatGPT-5: FKRE:64.92±8.56,GFI:8.10±1.13,FKGL:8.74±1.73,SMOG:6.97±1.26;chatgpt - 40:65.44±7.43,GFI:8.04±1.48,FKGL:8.73±1.80,SMOG:6.86±1.53)。与孤立的问题相比,在单个页面上聚合查询产生了更高的准确性、相关性和全能性得分(chatgpt - 40: W = 4.451, p
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引用次数: 0
The Limits of Humans in Data Gathering: Documentation Error Rates in the Electronic Health Record in the Operating Room. 人类在数据收集中的限制:手术室电子健康记录的文档错误率。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-09 DOI: 10.1007/s10916-026-02346-9
Andrew R Bradley, Abner Barbosa, Logan Younk, Naila Rocha, Peter F Nichol
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引用次数: 0
Deep Learning-based Assessment of Eyelid and Periorbital Parameters: Assisting Diagnosis and Treatment Planning in Blepharoptosis. 基于深度学习的眼睑和眶周参数评估:协助上睑下垂的诊断和治疗计划。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-04 DOI: 10.1007/s10916-026-02339-8
Pengjie Chen, Lixia Lou, Shengqiang Shi, Ji Shao, Yiming Sun, Huimin Li, Xuan Zhang, Yilu Cai, Ziying Zhou, Xingru Huang, Juan Ye

Blepharoptosis is a common eyelid disorder that impairs both vision and appearance, requiring accurate assessment for effective treatment. This study aimed to develop and evaluate a deep learning (DL)-based system for automatic measurement of eyelid and periorbital parameters and for classifying levator function (LF) in patients with blepharoptosis. We retrospectively included 1,177 patients who underwent ptosis surgery at a tertiary oculoplastic center from January 2016 to November 2021. LF was categorized into good (> 10 mm), fair (4-10 mm), and poor (≤ 4 mm) based on clinical evaluation. The DL model segmented eyelid and eyebrow regions and measured key parameters; manual measurements were performed for comparison. A multinomial logistic regression model incorporating DL-derived features and demographic data was used to predict LF grades. The DL system achieved high segmentation performance (Dice coefficient = 0.910) and strong agreement with manual measurements (ICC = 0.988 for MRD1; 0.902 for CBH). The regression model classified LF grades with an overall accuracy of 0.760 and an AUC of 0.829, within the range of ophthalmologist assessments (highest clinician accuracy = 0.767). This DL-based system offers an efficient, objective tool for periorbital assessment and LF grading, supporting personalized diagnosis and surgical planning in blepharoptosis management.

眼睑下垂是一种常见的眼睑疾病,会损害视力和外观,需要准确的评估才能有效治疗。本研究旨在开发和评估一种基于深度学习(DL)的系统,用于自动测量眼睑和眶周参数,并对上睑下垂患者的提上睑肌功能(LF)进行分类。我们回顾性纳入了2016年1月至2021年11月在三级眼科整形中心接受上睑下垂手术的1177例患者。根据临床评价将LF分为良好(bb0 ~ 10mm)、一般(4 ~ 10mm)和不良(≤4mm)。DL模型对眼睑和眉毛区域进行分割,并测量关键参数;手工测量进行比较。使用包含dl衍生特征和人口统计数据的多项逻辑回归模型来预测LF等级。DL系统获得了很高的分割性能(Dice系数= 0.910),并且与手工测量结果非常吻合(MRD1的ICC = 0.988; CBH的ICC = 0.902)。回归模型对LF分级的总体准确率为0.760,AUC为0.829,在眼科医生的评估范围内(最高临床医生准确率为0.767)。这个基于dl的系统为眶周评估和LF分级提供了有效、客观的工具,支持个性化诊断和上睑下垂治疗的手术计划。
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引用次数: 0
Risk Communication in Healthcare: The Management of Misunderstandings. 医疗风险沟通:误解的管理。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-02-03 DOI: 10.1007/s10916-026-02347-8
Monica Consolandi, Simone Magnolini, Mauro Dragoni

Risk communication represents a nuanced discourse within the healthcare sector, characterized by the topics' sensitivity and the potential for misunderstandings between healthcare providers and patients. This delicacy stems from the complexity of effectively conveying information about risks. Consequently, a primary obstacle lies in fostering healthcare providers' understanding of implicit communication nuances inherent in pre-operative risk discussions. This study aims to address this gap in the literature by examining the topic through the lens of the philosophy of language, specifically utilizing pragmatic analysis tools to elucidate implicit understandings in doctor-patient interactions. We employ this approach to scrutinize instances of pancreatic cancer diagnosis. Through empirical analysis of gathered data, we illustrate the inadequacies of current state-of-the-art models in accurately identifying misunderstandings within healthcare dialogues. In conclusion, we propose avenues for future research in this domain, underscoring the importance of further exploration into improving risk communication in healthcare settings.

风险沟通代表了医疗保健部门内微妙的话语,其特点是主题的敏感性和医疗保健提供者和患者之间潜在的误解。这种微妙源于有效传达风险信息的复杂性。因此,主要障碍在于促进医疗保健提供者对术前风险讨论中固有的隐含沟通细微差别的理解。本研究旨在通过语言哲学的视角来研究这一主题,特别是利用语用分析工具来阐明医患互动中的隐性理解,从而弥补文献中的这一空白。我们采用这种方法来仔细检查胰腺癌诊断的实例。通过对收集数据的实证分析,我们说明了当前最先进的模型在准确识别医疗保健对话中的误解方面的不足之处。总之,我们提出了该领域未来研究的途径,强调了进一步探索改善医疗保健环境中风险沟通的重要性。
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引用次数: 0
Deep Learning and Noninvasive Sensors for Detecting Physiological Dysregulation: A Scoping Review. 深度学习和无创传感器检测生理失调:范围综述。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-01-30 DOI: 10.1007/s10916-025-02332-7
Mariana González Garcés, Jerónimo Cárdenas Montoya, María Isabel Peña Martínez, Juanita Valencia García, Erwin Hernando Hernández Rincón
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引用次数: 0
A Clinically Oriented Framework for Real-Time Heart Rate Variability Analysis: A Novel Approach To Personalized and Robust Monitoring. 临床导向的实时心率变异性分析框架:一种个性化和鲁棒性监测的新方法。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-01-29 DOI: 10.1007/s10916-026-02342-z
Takashi Nakano, Masayuki Fujino, Masafumi Miyata, Tetsushi Yoshikawa

Heart rate variability (HRV) is a well-established, noninvasive measure of autonomic nervous system activity and is associated with clinical outcomes. Although real-time monitoring of HRV is valuable in clinical practice, its effectiveness is often compromised by major challenges: high inter-individual variability and frequent data contamination from procedural artifacts. To address these challenges, we developed and validated a computational framework for robust and personalized real-time HRV analysis oriented toward clinical application. The framework performs simultaneous analysis and visualization of both time- and frequency-domain HRV indices and incorporates an adaptive alert algorithm that personalizes alert thresholds using the interquartile range of each patient's own data. A workflow-integrated mechanism for manually annotating and excluding artifact-prone periods prevents procedural artifacts from skewing the statistical baselines, and a multi-scale visualization module provides a unified view of short-term fluctuations and long-term trends. While existing HRV tools are powerful for research or offline analysis, they often lack the integration of personalized alerting and workflow-oriented artifact management needed for bedside care. The proposed system uniquely combines personalized alerting, care-linked artifact exclusion, and multi-scale bedside visualization within a single real-time software package. The framework was validated using open-access electrocardiogram (ECG) databases and synthetic noise-contaminated signals, confirming robust R-wave detection across pediatric and adult recordings and under low signal-to-noise conditions. In addition, the framework was operationally validated at the bedside using ECG data from 24 newborn patients. By systematically addressing the core challenges of personalization and artifact management in a clinically integrated manner, this work represents a significant step toward translating real-time HRV analysis into routine vital sign management and, ultimately, improved patient outcomes.

心率变异性(HRV)是一种完善的、无创的自主神经系统活动测量方法,与临床结果相关。尽管HRV的实时监测在临床实践中很有价值,但其有效性经常受到主要挑战的影响:高度的个体间变异性和程序性人为因素造成的频繁数据污染。为了应对这些挑战,我们开发并验证了一个面向临床应用的可靠、个性化的实时HRV分析计算框架。该框架可同时对时域和频域HRV指数进行分析和可视化,并结合自适应警报算法,利用每位患者自身数据的四分位数范围个性化警报阈值。用于手动注释和排除容易产生工件的时期的工作流集成机制可防止程序性工件扭曲统计基线,多尺度可视化模块提供短期波动和长期趋势的统一视图。虽然现有的HRV工具在研究或离线分析方面功能强大,但它们通常缺乏床边护理所需的个性化警报和面向工作流的工件管理的集成。该系统独特地将个性化警报、与护理相关的工件排除和多尺度床边可视化结合在一个单一的实时软件包中。该框架使用开放获取的心电图(ECG)数据库和合成噪声污染信号进行了验证,证实了在低信噪比条件下,儿童和成人记录的r波检测具有鲁棒性。此外,使用24例新生儿的心电图数据在床边对该框架进行了操作验证。通过以临床集成的方式系统地解决个性化和人工制品管理的核心挑战,这项工作代表了将实时HRV分析转化为常规生命体征管理并最终改善患者预后的重要一步。
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引用次数: 0
The Co-student in my Laptop: Lessons from AI-Assisted Research. 我笔记本电脑里的同学:人工智能辅助研究的经验教训。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-01-21 DOI: 10.1007/s10916-026-02341-0
Gwénolé Abgrall, Xavier Monnet
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引用次数: 0
Reducing Work-Related Screen-Time in Healthcare Workers During Leisure Time (REDUCE SCREEN) - A Randomized Controlled Trial. 减少医疗工作者在闲暇时间与工作相关的屏幕时间(减少屏幕)——一项随机对照试验。
IF 5.7 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2026-01-17 DOI: 10.1007/s10916-026-02338-9
Karsten Bartels, Karan Shah, Emelind Sanchez Rodriguez, Julie T Hoffman, Megan L Rolfzen, Juana Mora Valdovinos, Afton L Hassett, Daniel I Sessler

The ubiquitous availability of work-related applications on personal devices makes healthcare workers prone to working during leisure time. We tested the hypothesis that an intervention to reduce work-related screen time during a weekend off reduces stress in healthcare workers. Pragmatic parallel design randomized controlled trial between November 2021 and November 2023. Healthcare workers using a smartphone with a work email application were eligible. Randomization was 1:1 to no treatment or a threefold educational intervention to: 1) activate automated responses to emails received, 2) reduce screen time, and 3) uninstall work applications from personal devices. The primary outcome was the change in participants' stress from pre- to post-weekend, measured with the Perceived Stress Scale-10. The secondary outcome was device screen time. Among 815 enrolled participants, 520 responded to the post-intervention survey. The median [Q1, Q3] change from baseline Perceived Stress Scale-10 scores was -2 [-7, 0] in controls and -4 [-9, 0] in the intervention group. The mean difference (intervention - control) in post-intervention Perceived Stress Scale-10 scores, adjusted for baseline stress, was -1.6 (95% CI: -2.6, -0.6; P = 0.002). The median [Q1, Q3] change from baseline screen time was 0 [-2, 1] hours in the controls and -1 [-3, 0] hours in the intervention group. A three-pronged educational intervention targeting work-related screen time among healthcare workers doubled stress reduction during a non-work weekend. Stress reduction in the intervention group was mediated by reduced screen time. Future research should investigate long-term effects and broader implementation of such interventions to promote well-being in the healthcare workforce. Trial Registration: https://clinicaltrials.gov/study/NCT05106647 . Identifier: NCT05106647, Registration date: November 4, 2021.

个人设备上无处不在的与工作相关的应用程序使医疗工作者倾向于在闲暇时间工作。我们测试了这样一个假设,即在周末休息期间减少与工作有关的屏幕时间的干预措施可以减轻医护人员的压力。实用平行设计随机对照试验于2021年11月至2023年11月。使用带有工作电子邮件应用程序的智能手机的医护人员符合条件。随机分组为1:1到无治疗或三倍教育干预:1)激活对收到的电子邮件的自动回复,2)减少屏幕时间,3)从个人设备上卸载工作应用程序。主要结果是参与者从周末前到周末后的压力变化,用感知压力量表-10来测量。次要结果是设备屏幕时间。在815名参与者中,520名参与了干预后调查。与基线感知压力量表-10评分相比,对照组的中位数[Q1, Q3]变化为-2[- 7,0],干预组为-4[- 9,0]。干预后感知压力量表-10得分的平均差异(干预-对照),根据基线压力调整,为-1.6 (95% CI: -2.6, -0.6; P = 0.002)。与基线屏幕时间相比,对照组的中位数[Q1, Q3]变化为0[- 2,1]小时,干预组为-1[- 3,0]小时。针对医护人员与工作相关的屏幕时间进行三管齐下的教育干预,使他们在非工作周末期间的压力减轻了一倍。干预组的压力减轻是通过减少屏幕时间来调节的。未来的研究应该调查这些干预措施的长期影响和更广泛的实施,以促进卫生保健工作人员的福祉。试验注册:https://clinicaltrials.gov/study/NCT05106647。标识符:NCT05106647,注册日期:2021年11月4日。
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引用次数: 0
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Journal of Medical Systems
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