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A systematic review and meta analysis on digital mental health interventions in inpatient settings 关于住院环境中数字心理健康干预措施的系统回顾和元分析
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-17 DOI: 10.1038/s41746-024-01252-z
Alexander Diel, Isabel Carolin Schröter, Anna-Lena Frewer, Christoph Jansen, Anita Robitzsch, Gertraud Gradl-Dietsch, Martin Teufel, Alexander Bäuerle

E-mental health (EMH) interventions gain increasing importance in the treatment of mental health disorders. Their outpatient efficacy is well-established. However, research on EMH in inpatient settings remains sparse and lacks a meta-analytic synthesis. This paper presents a meta-analysis on the efficacy of EMH in inpatient settings. Searching multiple databases (PubMed, ScienceGov, PsycInfo, CENTRAL, references), 26 randomized controlled trial (RCT) EMH inpatient studies (n = 6112) with low or medium assessed risk of bias were included. A small significant total effect of EMH treatment was found (g = 0.3). The effect was significant both for blended interventions (g = 0.42) and post-treatment EMH-based aftercare (g = 0.29). EMH treatment yielded significant effects across different patient groups and types of therapy, and the effects remained stable post-treatment. The results show the efficacy of EMH treatment in inpatient settings. The meta-analysis is limited by the small number of included studies.

电子心理健康(EMH)干预措施在心理健康疾病治疗中的重要性与日俱增。其门诊疗效已得到公认。然而,有关住院环境中电子心理健康干预的研究仍然很少,也缺乏荟萃分析。本文对EMH在住院环境中的疗效进行了荟萃分析。通过检索多个数据库(PubMed、ScienceGov、PsycInfo、CENTRAL、参考文献),纳入了26项随机对照试验(RCT)EMH住院研究(n = 6112),这些研究的偏倚风险评估为低或中等。研究发现,EMH治疗的总效果很小(g = 0.3)。混合干预(g = 0.42)和基于EMH的治疗后后续护理(g = 0.29)的效果都很明显。在不同的患者群体和治疗类型中,EMH治疗都产生了明显的效果,而且效果在治疗后保持稳定。结果表明,EMH疗法在住院环境中具有疗效。荟萃分析因纳入的研究数量较少而受到限制。
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引用次数: 0
A drug mix and dose decision algorithm for individualized type 2 diabetes management 个性化 2 型糖尿病管理的药物组合和剂量决策算法
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-17 DOI: 10.1038/s41746-024-01230-5
Mila Nambiar, Yong Mong Bee, Yu En Chan, Ivan Ho Mien, Feri Guretno, David Carmody, Phong Ching Lee, Sing Yi Chia, Nur Nasyitah Mohamed Salim, Pavitra Krishnaswamy

Pharmacotherapy guidelines for type 2 diabetes (T2D) emphasize patient-centered care, but applying this approach effectively in outpatient practice remains challenging. Data-driven treatment optimization approaches could enhance individualized T2D management, but current approaches cannot account for drug-specific and dose-dependent variations in safety and efficacy. We developed and evaluated an AI Drug mix and dose Advisor (AIDA) for glycemic management, using electronic medical records from 107,854 T2D patients in the SingHealth Diabetes Registry. Given a patient’s medical profile, AIDA leverages a predict-then-optimize approach to identify the minimal drug mix and dose changes required to optimize glycemic control, subject to clinical knowledge-based guidelines. On unseen data from large internal, external, and temporal validation sets, AIDA recommendations were estimated to improve post-visit glycated hemoglobin (HbA1c) by an average of 0.40–0.68% over standard of care (P < 0.0001). In qualitative evaluations on 60 diverse cases by a panel of three endocrinologists, AIDA recommendations were mostly rated as reasonable and precise. Finally, AIDA’s ability to account for drug-dose specifics offered several advantages over competing methods, including greater consistency with practice preferences and clinical guidelines for practical but effective options, indication-based treatments, and renal dosing. As AIDA provides drug-dose recommendations to improve outcomes for individual T2D patients, it could be used for clinical decision support at point-of-care, especially in resource-limited settings.

2 型糖尿病(T2D)的药物治疗指南强调以患者为中心的护理,但在门诊实践中有效应用这种方法仍具有挑战性。以数据为驱动的治疗优化方法可以加强 2 型糖尿病的个体化管理,但目前的方法无法解释药物在安全性和有效性方面的特异性和剂量依赖性变化。我们利用新加坡保健集团糖尿病登记处 107,854 名 T2D 患者的电子病历,开发并评估了用于血糖管理的人工智能药物组合和剂量顾问(AIDA)。根据患者的医疗档案,AIDA 采用预测-优化方法,根据基于临床知识的指南,确定优化血糖控制所需的最小药物组合和剂量变化。在来自大型内部、外部和时间验证集的未见数据中,AIDA 的建议估计可将就诊后的糖化血红蛋白 (HbA1c) 平均提高 0.40-0.68%(P < 0.0001)。在由三位内分泌专家组成的小组对 60 个不同病例进行的定性评估中,AIDA 的建议大多被评为合理、精确。最后,与其他竞争方法相比,AIDA 能够考虑药物剂量的具体情况,因此具有一些优势,包括更符合实践偏好和临床指南,可提供实用但有效的选择、基于适应症的治疗和肾脏剂量。由于 AIDA 提供的药物剂量建议可改善 T2D 患者的个体治疗效果,因此可用于护理点的临床决策支持,尤其是在资源有限的环境中。
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引用次数: 0
Deep behavioural representation learning reveals risk profiles for malignant ventricular arrhythmias 深度行为表征学习揭示恶性室性心律失常的风险特征
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-16 DOI: 10.1038/s41746-024-01247-w
Maarten Z. H. Kolk, Diana My Frodi, Joss Langford, Tariq O. Andersen, Peter Karl Jacobsen, Niels Risum, Hanno L. Tan, Jesper Hastrup Svendsen, Reinoud E. Knops, Søren Zöga Diederichsen, Fleur V. Y. Tjong

We aimed to identify and characterise behavioural profiles in patients at high risk of SCD, by using deep representation learning of day-to-day behavioural recordings. We present a pipeline that employed unsupervised clustering on low-dimensional representations of behavioural time-series data learned by a convolutional residual variational neural network (ResNet-VAE). Data from the prospective, observational SafeHeart study conducted at two large tertiary university centers in the Netherlands and Denmark were used. Patients received an implantable cardioverter-defibrillator (ICD) between May 2021 and September 2022 and wore wearable devices using accelerometer technology during 180 consecutive days. A total of 272 patients (mean age of 63.1 ± 10.2 years, 81% male) were eligible with a total sampling of 37,478 days of behavioural data (138 ± 47 days per patient). Deep representation learning identified five distinct behavioural profiles: Cluster A (n = 46) had very low physical activity levels and a disturbed sleep pattern. Cluster B (n = 70) had high activity levels, mainly at light-to-moderate intensity. Cluster C (n = 63) exhibited a high-intensity activity profile. Cluster D (n = 51) showed above-average sleep efficiency. Cluster E (n = 42) had frequent waking episodes and poor sleep. Annual risks of malignant ventricular arrhythmias ranged from 30.4% in Cluster A to 9.8% and 9.5% for Clusters D-E, respectively. Compared to low-risk profiles (D-E), Cluster A demonstrated a three-to-four fold increased risk of malignant ventricular arrhythmias adjusted for clinical covariates (adjusted HR 3.63, 95% CI 1.54–8.53, p < 0.001). These behavioural profiles may guide more personalised approaches to ventricular arrhythmia and SCD prevention.

我们的目标是通过对日常行为记录进行深度表征学习,识别并描述 SCD 高风险患者的行为特征。我们介绍了一个管道,该管道采用卷积残差变异神经网络(ResNet-VAE)学习的低维行为时间序列数据表示进行无监督聚类。研究使用了荷兰和丹麦两所大型三级大学中心开展的前瞻性观察性安全心脏研究的数据。患者在 2021 年 5 月至 2022 年 9 月期间接受了植入式心律转复除颤器 (ICD),并在连续 180 天内佩戴了使用加速度计技术的可穿戴设备。共有 272 名患者(平均年龄为 63.1 ± 10.2 岁,81% 为男性)符合条件,共获得 37,478 天的行为数据样本(每位患者 138 ± 47 天)。深度表征学习确定了五种不同的行为特征:群组 A(n = 46)的体力活动水平非常低,睡眠模式紊乱。B 组(n = 70)活动量大,主要是轻度至中度活动。C 组(n = 63)表现出高强度的活动特征。D 组(n = 51)的睡眠效率高于平均水平。E组(n = 42)频繁觉醒,睡眠质量差。恶性室性心律失常的年风险从 A 组的 30.4% 到 D-E 组的 9.8% 和 9.5% 不等。与低风险人群(D-E)相比,经临床协变量调整后,A 组患恶性室性心律失常的风险增加了三到四倍(调整后 HR 3.63,95% CI 1.54-8.53,p < 0.001)。这些行为特征可为室性心律失常和 SCD 的个性化预防方法提供指导。
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引用次数: 0
The case for inclusive co-creation in digital health innovation 数字医疗创新中的包容性共创案例
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-16 DOI: 10.1038/s41746-024-01256-9
Grace C. Nickel, Serena Wang, Jethro C. C. Kwong, Joseph C. Kvedar
This piece critiques the exclusion of healthcare practitioners (HCPs) from the digital health innovation process. Drawing on “Sync fast and solve things—best practices for responsible digital health” by Landers et al., the editorial argues for the importance of inclusive co-creation, in which clinicians play an active role in developing digital health solutions. It emphasizes that without the meaningful involvement of HCPs, digital health tools risk being clinically irrelevant.
这篇社论批评了将医疗从业人员(HCP)排除在数字医疗创新过程之外的做法。社论借鉴了 Landers 等人撰写的《快速同步,解决问题--负责任的数字医疗的最佳实践》一文,论证了包容性共同创造的重要性,即临床医生在开发数字医疗解决方案的过程中发挥积极作用。社论强调,如果没有医疗保健人员有意义的参与,数字医疗工具就有可能与临床无关。
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引用次数: 0
How might Hospital at Home enable a greener and healthier future? 居家医院如何实现更环保、更健康的未来?
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-16 DOI: 10.1038/s41746-024-01249-8
Dylan Powell, Fanny Burrows, Geraint Lewis, Stephen Gilbert
Traditional healthcare delivery models face mounting pressure from rising costs, increasing demand, and a growing environmental footprint. Hospital at Home (HaH) has been proposed as a potential solution, offering care at home through in-person, virtual, or hybrid approaches. Despite focus on expanding HaH provision and capacity, research has primarily explored patient care outcomes, patient satisfaction economic costs with a key gap in its environmental impact. By reducing this evidence gap, HaH may be better placed as a positive enabler in delivering healthier planet and population. This article explores the environmental opportunities and challenges associated with HaH compared to traditional hospital care and reinforces the case for further research to comprehensively quantify the environmental impact including any co-benefits. Our aim for this article is to spark conversation, and begin to help prioritise future research and analysis.
传统的医疗保健服务模式面临着成本上升、需求增加以及环境足迹不断扩大等越来越大的压力。家庭医院(HaH)作为一种潜在的解决方案已被提出,通过面对面、虚拟或混合方式提供家庭护理。尽管研究重点是扩大 "在家医院 "的提供范围和能力,但研究主要集中在患者护理效果、患者满意度、经济成本等方面,而在环境影响方面还存在很大差距。通过缩小这一证据差距,HaH 可以更好地发挥积极作用,为地球和人类带来更健康的生活。与传统医院护理相比,本文探讨了与 HaH 相关的环境机遇和挑战,并强调了进一步开展研究以全面量化环境影响(包括任何共同效益)的必要性。我们撰写这篇文章的目的在于引发讨论,并开始帮助确定未来研究和分析的优先次序。
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引用次数: 0
A randomized trial testing digital medicine support models for mild-to-moderate alcohol use disorder 测试轻度至中度酒精使用障碍数字医学支持模式的随机试验
IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-14 DOI: 10.1038/s41746-024-01241-2
Andrew Quanbeck, Ming-Yuan Chih, Linda Park, Xiang Li, Qiang Xie, Alice Pulvermacher, Samantha Voelker, Rachel Lundwall, Katherine Eby, Bruce Barrett, Randall Brown
This paper reports the results of a hybrid effectiveness-implementation randomized trial that systematically varied levels of human oversight required to support the implementation of a digital medicine intervention for persons with mild-to-moderate alcohol use disorder (AUD). Participants were randomly assigned to three groups representing possible digital health support models within a health system: self-monitored use (SM; n = 185), peer-supported use (PS; n = 186), or a clinically integrated model CI; (n = 187). Across all three groups, the percentage of self-reported heavy drinking days dropped from 38.4% at baseline (95% CI [35.8%, 41%]) to 22.5% (19.5%, 25.5%) at 12 months. The clinically integrated group showed significant improvements in mental health and quality of life compared to the self-monitoring group (p = 0.011). However, higher attrition rates in the clinically integrated group warrant consideration in interpreting this result. Results suggest that making a self-guided digital intervention available to patients may be a viable option for health systems looking to promote alcohol risk reduction. This study was prospectively registered at clinicaltrials.gov on 7/03/2019 (NCT04011644).
本文报告了一项混合效果-实施随机试验的结果,该试验系统地改变了对轻度至中度酒精使用障碍(AUD)患者实施数字医疗干预所需的人工监督水平。参与者被随机分配到代表医疗系统内可能的数字医疗支持模式的三组:自我监控使用(SM;n = 185)、同伴支持使用(PS;n = 186)或临床整合模式 CI;(n = 187)。在所有三组中,自我报告的大量饮酒天数比例从基线时的 38.4%(95% CI [35.8%,41%])下降到 12 个月时的 22.5%(19.5%,25.5%)。与自我监控组相比,临床综合组在心理健康和生活质量方面有显著改善(p = 0.011)。然而,临床综合组的自然减员率较高,在解释这一结果时应加以考虑。研究结果表明,对于希望促进降低酒精风险的医疗系统来说,向患者提供自我指导的数字干预可能是一个可行的选择。本研究于2019年3月7日在clinicaltrials.gov进行了前瞻性注册(NCT04011644)。
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引用次数: 0
Variational Bayes machine learning for risk adjustment of general outcome indicators with examples in urology 变异贝叶斯机器学习用于一般结果指标的风险调整,以泌尿外科为例
IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-14 DOI: 10.1038/s41746-024-01244-z
Harvey Jia Wei Koh, Dragan Gašević, David Rankin, Stephane Heritier, Mark Frydenberg, Stella Talic
Risk adjustment is often necessary for outcome quality indicators (QIs) to provide fair and accurate feedback to healthcare professionals. However, traditional risk adjustment models are generally oversimplified and not equipped to disentangle complex factors influencing outcomes that are out of a healthcare professional’s control. We present VIRGO, a novel variational Bayes model trained on routinely collected, large administrative datasets to risk-adjust outcome QIs. VIRGO uses detailed demographics, diagnosis, and procedure codes to provide individualized risk adjustment and explanations on patient factors affecting outcomes. VIRGO achieves state-of-the-art on external datasets and features capabilities of uncertainty expression, explainable features, and counterfactual analysis capabilities. VIRGO facilitates risk adjustment by explaining how patient factors led to adverse outcomes and expresses the uncertainty of each prediction, allowing healthcare professionals to not only explore patient factors with unexplained variance that are associated with worse outcomes but also reflect on the quality of their clinical practice.
结果质量指标(QIs)通常需要进行风险调整,以便向医疗专业人员提供公平、准确的反馈。然而,传统的风险调整模型通常过于简化,不具备将影响医疗专业人员无法控制的结果的复杂因素区分开来的能力。我们介绍的 VIRGO 是一种新颖的变异贝叶斯模型,它在日常收集的大型行政数据集上进行训练,用于对结果质量指标进行风险调整。VIRGO 使用详细的人口统计数据、诊断和手术代码来提供个性化的风险调整,并解释影响结果的患者因素。VIRGO 可在外部数据集上实现最先进的功能,并具有不确定性表达、可解释特征和反事实分析功能。VIRGO 通过解释患者因素是如何导致不良预后的,并表达每项预测的不确定性,从而促进风险调整,使医疗保健专业人员不仅能探索与不良预后相关的未解释变异患者因素,还能反思其临床实践的质量。
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引用次数: 0
Can social media encourage diabetes self-screenings? A randomized controlled trial with Indonesian Facebook users 社交媒体能否鼓励糖尿病自我筛查?针对印度尼西亚 Facebook 用户的随机对照试验
IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-13 DOI: 10.1038/s41746-024-01246-x
Manuela Fritz, Michael Grimm, Ingmar Weber, Elad Yom-Tov, Benedictus Praditya
Nudging individuals without obvious symptoms of non-communicable diseases (NCDs) to undergo a health screening remains a challenge, especially in middle-income countries, where NCD awareness is low but the incidence is high. We assess whether an awareness campaign implemented on Facebook can encourage individuals in Indonesia to undergo an online diabetes self-screening. We use Facebook’s advertisement function to randomly distribute graphical ads related to the risk and consequences of diabetes. Depending on their risk score, participants receive a recommendation to undergo a professional screening. We were able to reach almost 300,000 individuals in only three weeks. More than 1400 individuals completed the screening, inducing costs of about US$0.75 per person. The two ads labeled “diabetes consequences” and “shock” outperform all other ads. A follow-up survey shows that many high-risk respondents have scheduled a professional screening. A cost-effectiveness analysis suggests that our campaign can diagnose an additional person with diabetes for about US$9.
说服没有非传染性疾病(NCDs)明显症状的人接受健康检查仍然是一项挑战,尤其是在中等收入国家,这些国家对 NCD 的认识不足,但发病率却很高。我们评估了在 Facebook 上开展的宣传活动能否鼓励印度尼西亚的个人接受在线糖尿病自我筛查。我们利用 Facebook 的广告功能随机发布与糖尿病风险和后果相关的图形广告。根据参与者的风险评分,他们会收到接受专业筛查的建议。在短短三周内,我们就接触了近 30 万人。超过 1400 人完成了筛查,每人花费约 0.75 美元。标有 "糖尿病后果 "和 "震惊 "的两则广告的效果优于其他所有广告。一项后续调查显示,许多高危受访者已经安排了专业筛查。成本效益分析表明,我们的宣传活动能以约 9 美元的价格多诊断出一名糖尿病患者。
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引用次数: 0
Long-term changes in wearable sensor data in people with and without Long Covid Long Covid 患者和非 Long Covid 患者的可穿戴传感器数据的长期变化
IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-13 DOI: 10.1038/s41746-024-01238-x
Jennifer M. Radin, Julia Moore Vogel, Felipe Delgado, Erin Coughlin, Matteo Gadaleta, Jay A. Pandit, Steven R. Steinhubl
To better understand the impact of Long COVID on an individual, we explored changes in daily wearable data (step count, resting heart rate (RHR), and sleep quantity) for up to one year in individuals relative to their pre-infection baseline among 279 people with and 274 without long COVID. Participants with Long COVID, defined as symptoms lasting for 30 days or longer, following a SARS-CoV-2 infection had significantly different RHR and activity trajectories than those who did not report Long COVID and were also more likely to be women, younger, unvaccinated, and report more acute-phase (first 2 weeks) symptoms than those without Long COVID. Demographic, vaccine, and acute-phase sensor data differences could be used for early identification of individuals most likely to develop Long COVID complications and track objective evidence of the therapeutic efficacy of any interventions. Trial Registration: https://classic.clinicaltrials.gov/ct2/show/NCT04336020 .
为了更好地了解长期慢性阻塞性肺病对个人的影响,我们在 279 名感染者和 274 名未感染者中,研究了个人在长达一年的时间里每日可穿戴数据(步数、静息心率 (RHR) 和睡眠量)相对于感染前基线的变化。感染 SARS-CoV-2 后,症状持续 30 天或更长时间即为长 COVID,与未报告长 COVID 的参与者相比,有长 COVID 的参与者的 RHR 和活动轨迹明显不同,而且与无长 COVID 的参与者相比,有长 COVID 的参与者更可能是女性、更年轻、未接种疫苗,并报告更多的急性期(前两周)症状。人口统计学、疫苗和急性期传感器数据差异可用于早期识别最有可能出现长COVID并发症的个体,并跟踪任何干预措施治疗效果的客观证据。试验注册:https://classic.clinicaltrials.gov/ct2/show/NCT04336020。
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引用次数: 0
Results and implications for generative AI in a large introductory biomedical and health informatics course 大型生物医学和健康信息学入门课程中生成式人工智能的结果和影响
IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-09-13 DOI: 10.1038/s41746-024-01251-0
William Hersh, Kate Fultz Hollis
Generative artificial intelligence (AI) systems have performed well at many biomedical tasks, but few studies have assessed their performance directly compared to students in higher-education courses. We compared student knowledge-assessment scores with prompting of 6 large-language model (LLM) systems as they would be used by typical students in a large online introductory course in biomedical and health informatics that is taken by graduate, continuing education, and medical students. The state-of-the-art LLM systems were prompted to answer multiple-choice questions (MCQs) and final exam questions. We compared the scores for 139 students (30 graduate students, 85 continuing education students, and 24 medical students) to the LLM systems. All of the LLMs scored between the 50th and 75th percentiles of students for MCQ and final exam questions. The performance of LLMs raises questions about student assessment in higher education, especially in courses that are knowledge-based and online.
生成式人工智能(AI)系统在许多生物医学任务中表现出色,但很少有研究将它们的表现直接与高等教育课程中的学生进行比较评估。我们比较了学生在 6 个大型语言模型(LLM)系统提示下的知识评估得分,因为这些系统会被研究生、继续教育和医科学生选修的生物医学和健康信息学大型在线入门课程中的典型学生使用。最先进的 LLM 系统被提示回答多项选择题(MCQ)和期末考试题。我们将 139 名学生(30 名研究生、85 名进修生和 24 名医学生)的分数与 LLM 系统进行了比较。在 MCQ 和期末考试题中,所有 LLM 的得分都在学生的第 50 和 75 百分位数之间。法学硕士的表现提出了高等教育中学生评估的问题,尤其是在以知识为基础的在线课程中。
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引用次数: 0
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NPJ Digital Medicine
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