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A multimodal transformer system for noninvasive diabetic nephropathy diagnosis via retinal imaging
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1038/s41746-024-01393-1
Zheyi Dong, Xiaofei Wang, Sai Pan, Taohan Weng, Xiaoniao Chen, Shuangshuang Jiang, Ying Li, Zonghua Wang, Xueying Cao, Qian Wang, Pu Chen, Lai Jiang, Guangyan Cai, Li Zhang, Yong Wang, Jinkui Yang, Yani He, Hongli Lin, Jie Wu, Li Tang, Jianhui Zhou, Shengxi Li, Zhaohui Li, Yibing Fu, Xinyue Yu, Yanqiu Geng, Yingjie Zhang, Liqiang Wang, Mai Xu, Xiangmei Chen

Differentiating between diabetic nephropathy (DN) and non-diabetic renal disease (NDRD) without a kidney biopsy remains a major challenge, often leading to missed opportunities for targeted treatments that could greatly improve NDRD outcomes. To reform the traditional biopsy-all diagnostic paradigm and avoid unnecessary biopsy, we developed a transformer-based deep learning (DL) system for detecting DN and NDRD upon non-invasive multi-modal data of fundus images and clinical characteristics. Our Trans-MUF achieved an AUC of 0.980 (95% CI: 0.979 to 0.980) over the internal retrospective set and also had superior generalizability over a prospective dataset (AUC: 0.989, 95% CI: 0.987 to 0.990) and a multicenter, cross-machine and multi-operator dataset (AUC: 0.932, 95% CI: 0.931 to 0.939). Moreover, the nephrologists‘ diagnosis accuracy can be improved by 21%, through visualization assistance of the DL system. This paper lays a foundation for automatically differentiating DN and NDRD without biopsy. (Registry name: Correlation Study Between Clinical Phenotype and Pathology of Type 2 Diabetic Nephropathy. ID: NCT03865914. Date: 2017-11-30).

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引用次数: 0
Association between exposure to particulate matter and heart rate variability in vulnerable and susceptible individuals
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1038/s41746-024-01373-5
Yong Whi Jeong, Hayon Michelle Choi, Youhyun Park, Yongjin Lee, Ji Ye Jung, Dae Ryong Kang

Particulate matter (PM) exposure can reduce heart rate variability (HRV), a cardiovascular health marker. This study examines PM1.0 (aerodynamic diameters <1 μm), PM2.5 (≥1 μm and <2.5 μm), and PM10 (≥2.5 μm and <10 μm) effects on HRV in patients with environmental diseases as chronic disease groups and vulnerable populations as control groups. PM levels were measured indoors and outdoors for five days in 97 participants, with 24-h HRV monitoring via wearable devices. PM exposure was assessed by categorizing daily cumulative PM concentrations into higher and lower exposure days, while daily average PM concentrations were used for analysis. Results showed significant negative associations between exposure to single and mixtures of different PM metrics and HRV across all groups, particularly in chronic airway disease and higher air pollution exposed groups. These findings highlight that even lower PM levels may reduce HRV, suggesting a need for stricter standards to protect sensitive individuals.

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引用次数: 0
V3+ extends the V3 framework to ensure user-centricity and scalability of sensor-based digital health technologies
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1038/s41746-024-01322-2
Jessie P. Bakker, Roland Barge, Jacob Centra, Bryan Cobb, Chas Cota, Christine C. Guo, Bert Hartog, Nathalie Horowicz-Mehler, Elena S. Izmailova, Nikolay V. Manyakov, Samantha McClenahan, Stéphane Motola, Smit Patel, Oana Paun, Marian Schoone, Emre Sezgin, Thomas Switzer, Animesh Tandon, Willem van den Brink, Srinivasan Vairavan, Benjamin Vandendriessche, Bernard Vrijens, Jennifer C. Goldsack

We propose the addition of usability validation to the extended V3 framework, now “V3+”, and describe a pragmatic approach to ensuring that sensor-based digital health technologies can be used optimally at scale by diverse users. Alongside the original V3 components (verification; analytical validation; clinical validation), usability validation will ensure user-centricity of digital measurement tools, paving the way for more inclusive, reliable, and trustworthy digital measures within clinical research and clinical care.

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引用次数: 0
Machine learning based quantitative pain assessment for the perioperative period
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1038/s41746-024-01362-8
Gayeon Ryu, Jae Moon Choi, Hyeon Seok Seok, Jaehyung Lee, Eun-Kyung Lee, Hangsik Shin, Byung-Moon Choi

This study developed and evaluated a model for assessing pain during the surgical period using photoplethysmogram data from 242 patients. Pain levels were measured at 2 min intervals using a numerical rating scale or clinical criteria: preoperative, before and after intubation, before and after skin incision, and postoperative. Key features from the photoplethysmography waveform were extracted to build XGBoost-based models for intraoperative and postoperative pain assessment. The combined perioperative model was compared with a commercial surgical pain index, yielding area under the receiver operating characteristics curve scores of 0.819 and 0.927 for intraoperative and postoperative periods, respectively, compared to the commercial index’s scores of 0.829 and 0.577. These results highlight the models’ effectiveness in pain assessment throughout the surgical process, identifying waveform skewness and diastolic phase rate decrease as critical for intraoperative pain assessment and systolic phase area or baseline fluctuation as significant for postoperative pain assessment.

Clinical trial registration: Registration name: Clinical Research Information Service (CRIS). Registration site: http://cris.nih.go.kr. Number: KCT0005840. Principal Investigator: Dr. Byung-Moon Choi. Date of registration: January 28, 2021

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引用次数: 0
Transforming diagnosis through artificial intelligence
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1038/s41746-025-01460-1
Luciana D’Adderio, David W. Bates
Artificial intelligence (AI) is increasingly permeating the fabric of medicine, but getting full benefits will likely require fundamental changes in practice. Accepting this will be challenging for many clinicians. However, it may be necessary to ensure that AI’s ambitious promises translate into real-life improvement.
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引用次数: 0
Preserving information while respecting privacy through an information theoretic framework for synthetic health data generation 通过合成健康数据生成的信息理论框架,在保护信息的同时尊重隐私
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-23 DOI: 10.1038/s41746-025-01431-6
Nadir Sella, Florent Guinot, Nikita Lagrange, Laurent-Philippe Albou, Jonathan Desponds, Hervé Isambert

Generating synthetic data from medical records is a complex task intensified by patient privacy concerns. In recent years, multiple approaches have been reported for the generation of synthetic data, however, limited attention was given to jointly evaluate the quality and the privacy of the generated data. The quality and privacy of synthetic data stem from multivariate associations across variables, which cannot be assessed by comparing univariate distributions with the original data. Here, we introduce a novel algorithm (MIIC-SDG) for generating synthetic data from electronic records based on a multivariate information framework and Bayesian network theory. We also propose a new metric to quantitatively assess the trade-off between the Quality and Privacy Scores (QPS) of synthetic data generation methods. The performance of MIIC-SDG is demonstrated on different clinical datasets and favorably compares with state-of-the-art synthetic data generation methods, based on the QPS trade-off between several quality and privacy metrics.

从医疗记录中生成合成数据是一项复杂的任务,对患者隐私的担忧加剧了这一任务。近年来,合成数据的生成方法有多种,但对合成数据的质量和隐私性进行联合评价的研究较少。合成数据的质量和隐私源于变量之间的多变量关联,这不能通过将单变量分布与原始数据进行比较来评估。本文介绍了一种基于多变量信息框架和贝叶斯网络理论的电子记录合成数据生成算法(MIIC-SDG)。我们还提出了一种新的度量来定量评估合成数据生成方法的质量和隐私分数(QPS)之间的权衡。MIIC-SDG的性能在不同的临床数据集上得到了证明,并与最先进的合成数据生成方法进行了比较,该方法基于几个质量和隐私指标之间的QPS权衡。
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引用次数: 0
Impact of visual presentation of atherosclerotic carotid plaque on cardiovascular risk profile using mHealth technologies 使用移动健康技术观察颈动脉粥样硬化斑块视觉表现对心血管风险概况的影响
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-22 DOI: 10.1038/s41746-024-01423-y
Greta Ullrich, Alexander Bäuerle, Lisa Maria Jahre, Katrin Paldán, Jana Rosemeyer, Chiara Kalaitzidis, Christos Rammos, Martin Teufel, Tienush Rassaf, Julia Lortz

This randomized, controlled trial evaluated the impact of plaque visualization combined with daily tasks on cardiovascular risk profile and included 240 participants with coronary arterial disease. The intervention group received the PreventiPlaque app during the 12-month study period in addition to standard care. The app contained daily tasks that promoted lifestyle modifications and adherence to prescribed medication. It included ultrasound images of participants´ individual carotid plaque, which were updated regularly. The impact of plaque visualization and personalized app usage was evaluated, using a change in the SCORE2 as a primary endpoint. In the intervention group, the SCORE2 was significantly lower after the study period (t(120) = 6.43, padj < 0.001, dRM = 0.58). This demonstrates the efficacy of the PreventiPlaque app in supporting lifestyle modifications and medication adherence. These findings suggest that personalized mHealth interventions in combination with visual risk communication are valuable tools in secondary prevention. Trial Registration: The study was registered at ClinicalTrials.gov under the identifier NCT05096637 on 27 October 2021 and was approved by the local ethics committee of the University of Duisburg-Essen (20-9157-BO).

这项随机对照试验评估了斑块可视化结合日常任务对心血管风险概况的影响,纳入了240名冠状动脉疾病患者。在12个月的研究期间,干预组除了接受标准治疗外,还接受了预防斑块应用程序。这款应用包含了一些日常任务,可以促进生活方式的改变和对处方药的遵守。它包括参与者个人颈动脉斑块的超声图像,这些图像定期更新。评估斑块可视化和个性化应用程序使用的影响,使用SCORE2的变化作为主要终点。干预组在研究结束后SCORE2得分显著低于对照组(t(120) = 6.43, padj < 0.001, dRM = 0.58)。这证明了预防斑块应用程序在支持生活方式改变和药物依从性方面的功效。这些发现表明,结合视觉风险沟通的个性化移动健康干预措施是二级预防的宝贵工具。试验注册:该研究于2021年10月27日在ClinicalTrials.gov注册,编号为NCT05096637,并由杜伊斯堡-埃森大学当地伦理委员会批准(20-9157-BO)。
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引用次数: 0
Challenges and recommendations for enhancing digital data protection in Indian Medical Research and Healthcare Sector 加强印度医学研究和保健部门数字数据保护的挑战和建议
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-22 DOI: 10.1038/s41746-025-01448-x
Anubhuti Sood, Deepika Mishra, Varun Surya, Harpreet Singh, Rajesh Sundaresan, Debnath Pal, Raghu Dharmaraju, Rohit Satish, Shashwat Mishra, Nishant A. Chavan, Soham Mondal, Pavan Duggal, Venkateswaran K. Iyer

The Digital Personal Data Protection Act (DPDPA), 2023 of India provides a regulatory framework for use and security of personal digital data. However, instances, wherein the patients consult the clinicians via digital means of communication: the implications of DPDPA, 2023 for the medical personnel remain unclear. This paper critically discusses the gray areas encountered in the Indian medical ecosystem and DPDPA, 2023 and; lists the recommendations to address them.

印度2023年的《数字个人数据保护法》(DPDPA)为个人数字数据的使用和安全提供了监管框架。然而,患者通过数字通信方式咨询临床医生的情况:DPDPA, 2023对医务人员的影响尚不清楚。本文批判性地讨论了印度医疗生态系统和DPDPA中遇到的灰色地带,2023和;列出了解决这些问题的建议。
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引用次数: 0
Equitable artificial intelligence for glaucoma screening with fair identity normalization 公平的青光眼筛查人工智能与公平的身份标准化
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-20 DOI: 10.1038/s41746-025-01432-5
Min Shi, Yan Luo, Yu Tian, Lucy Q. Shen, Nazlee Zebardast, Mohammad Eslami, Saber Kazeminasab, Michael V. Boland, David S. Friedman, Louis R. Pasquale, Mengyu Wang

Glaucoma is the leading cause of irreversible blindness globally. Research indicates a disproportionate impact of glaucoma on racial and ethnic minorities. Existing deep learning models for glaucoma detection might not achieve equitable performance across diverse identity groups. We developed fair identify normalization (FIN) module to equalize the feature importance across different identity groups to improve model performance equity. The optical coherence tomography (OCT) measurements were used to categorize patients into glaucoma and non-glaucoma. The equity-scaled area under the receiver operating characteristic curve (ES-AUC) was adopted to quantify model performance equity. With FIN for racial groups, the overall AUC and ES-AUC increased from 0.82 to 0.85 and 0.77 to 0.81, respectively, with the AUC for Blacks increasing from 0.77 to 0.82. With FIN for ethnic groups, the overall AUC and ES-AUC increased from 0.82 to 0.84 and 0.77 to 0.80, respectively, with the AUC for Hispanics increasing from 0.75 to 0.79.

青光眼是全球不可逆转失明的主要原因。研究表明,青光眼对少数种族和民族的影响不成比例。现有的青光眼检测深度学习模型可能无法在不同身份群体中实现公平的表现。我们开发了公平识别规范化(FIN)模块来平衡不同身份组之间的特征重要性,以提高模型的性能公平性。使用光学相干断层扫描(OCT)测量将患者分为青光眼和非青光眼。采用接收者工作特征曲线下的股权比例面积(ES-AUC)来量化模型绩效股权。不同种族群体的总体AUC和ES-AUC分别从0.82上升到0.85和0.77上升到0.81,其中黑人群体的AUC从0.77上升到0.82。不同族裔群体的总体AUC和ES-AUC分别从0.82上升到0.84和0.77上升到0.80,其中西班牙裔群体的AUC从0.75上升到0.79。
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引用次数: 0
Computational frameworks transform antagonism to synergy in optimizing combination therapies 计算框架转化拮抗协同优化联合疗法
IF 15.2 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-19 DOI: 10.1038/s41746-025-01435-2
Jinghong Chen, Anqi Lin, Aimin Jiang, Chang Qi, Zaoqu Liu, Quan Cheng, Shuofeng Yuan, Peng Luo

While drug combinations are increasingly important in disease treatment, predicting their therapeutic interactions remains challenging. This review systematically analyzes computational methods for predicting drug combination effects through multi-omics data integration. We comprehensively assess key algorithms including DrugComboRanker and AuDNNsynergy, and evaluate integration approaches encompassing kernel regression and graph networks. The review elucidates artificial intelligence applications in predicting drug synergistic and antagonistic effects.

虽然药物组合在疾病治疗中越来越重要,但预测它们的治疗相互作用仍然具有挑战性。本文系统分析了通过多组学数据集成预测药物联合效应的计算方法。我们全面评估了包括DrugComboRanker和AuDNNsynergy在内的关键算法,并评估了包括核回归和图网络在内的集成方法。本文综述了人工智能在预测药物协同和拮抗作用方面的应用。
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引用次数: 0
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NPJ Digital Medicine
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