predictions

预测
  • 文章类型: Journal Article
    背景:术后感染仍然是医疗保健领域的重要挑战,导致高发病率,死亡率,和成本。术后细菌感染患者的准确识别和标记对于开发预测模型至关重要,验证生物标志物,并在临床实践中实施监测系统。
    目的:本范围审查旨在探索使用电子健康记录(EHR)数据识别术后感染患者的方法,以超越手动图表审查的参考标准。
    方法:我们在PubMed,Embase,WebofScience(核心合集),Cochrane图书馆,和Emcare(Ovid),针对预测和全自动监测的目标研究(即,无需手动检查)术后设置的多种细菌感染。对于预测建模研究,我们评估了使用的标记方法,将它们分类为手动或自动。我们评估了术后感染监测和标记所需的不同类型的EHR数据,以及与手动图表审查相比,全自动监视系统的性能。
    结果:我们在2003年至2023年之间发表的研究中确定了75种不同的方法和定义,用于识别术后感染的患者。手动标注是预测建模研究中的主要方法,65%(49/75)的确定方法使用结构化数据,45%(34/75)使用自由文本和临床笔记作为他们的数据源之一。应谨慎使用全自动监测系统,因为报告的阳性预测值在0.31至0.76之间。
    结论:目前没有证据支持完全自动化的标记和识别感染患者仅基于结构化的EHR数据。未来的研究应该集中在定义统一的定义上,以及优先开发更具可扩展性的产品,使用结构化EHR数据进行感染检测的自动化方法。
    BACKGROUND: Postoperative infections remain a crucial challenge in health care, resulting in high morbidity, mortality, and costs. Accurate identification and labeling of patients with postoperative bacterial infections is crucial for developing prediction models, validating biomarkers, and implementing surveillance systems in clinical practice.
    OBJECTIVE: This scoping review aimed to explore methods for identifying patients with postoperative infections using electronic health record (EHR) data to go beyond the reference standard of manual chart review.
    METHODS: We performed a systematic search strategy across PubMed, Embase, Web of Science (Core Collection), the Cochrane Library, and Emcare (Ovid), targeting studies addressing the prediction and fully automated surveillance (ie, without manual check) of diverse bacterial infections in the postoperative setting. For prediction modeling studies, we assessed the labeling methods used, categorizing them as either manual or automated. We evaluated the different types of EHR data needed for the surveillance and labeling of postoperative infections, as well as the performance of fully automated surveillance systems compared with manual chart review.
    RESULTS: We identified 75 different methods and definitions used to identify patients with postoperative infections in studies published between 2003 and 2023. Manual labeling was the predominant method in prediction modeling research, 65% (49/75) of the identified methods use structured data, and 45% (34/75) use free text and clinical notes as one of their data sources. Fully automated surveillance systems should be used with caution because the reported positive predictive values are between 0.31 and 0.76.
    CONCLUSIONS: There is currently no evidence to support fully automated labeling and identification of patients with infections based solely on structured EHR data. Future research should focus on defining uniform definitions, as well as prioritizing the development of more scalable, automated methods for infection detection using structured EHR data.
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  • 文章类型: Journal Article
    背景:慢性阻塞性肺疾病急性加重(AECOPD)与高死亡率相关,发病率,生活质量差,对患者和医疗保健系统构成沉重负担。迫切需要新的方法来预防或降低AECOPD的严重程度。国际上,这促使人们对远程患者监护(RPM)和数字医疗的潜力产生了更大的兴趣.RPM是指患者报告结果的直接传输,生理,和功能数据,包括心率,体重,血压,氧饱和度,身体活动,和肺功能(肺活量测定),通过自动化直接向医疗保健专业人员提供服务,基于Web的数据输入,或基于电话的数据输入。机器学习有可能通过提高AECOPD预测系统的准确性和精度来提高慢性阻塞性肺疾病的RPM。
    目的:本研究旨在进行双重系统评价。第一篇综述集中于将RPM用作治疗或改善AECOPD的干预措施的随机对照试验。第二篇综述研究了将机器学习与RPM相结合来预测AECOPD的研究。我们回顾了RPM和机器学习背后的证据和概念,并讨论了它们的优势。局限性,和可用系统的临床使用。我们已经生成了提供患者和医疗保健系统福利所需的建议列表。
    方法:全面的搜索策略,包括Scopus和WebofScience数据库,用于确定相关研究。共有2名独立审稿人(HMGG和CM)进行了研究选择,数据提取,和质量评估,通过协商一致解决差异。数据综合涉及使用关键评估技能计划清单和叙述性综合进行证据评估。报告遵循PRISMA(系统审查和荟萃分析的首选报告项目)指南。
    结果:这些叙述性综合显示,57%(16/28)RPM干预的随机对照试验未能达到AECOPD患者更好结局所需的证据水平。然而,将机器学习集成到RPM中证明了提高AECOPD预测准确性的前景,因此,早期干预。
    结论:这篇综述表明了将机器学习整合到RPM中预测AECOPD的过渡。我们讨论了具有改善AECOPD预测潜力的特定RPM指标,并强调了有关患者因素和RPM持续采用的研究空白。此外,我们强调对与RPM相关的患者和医疗保健负担进行更全面检查的重要性,随着实际解决方案的发展。
    BACKGROUND: Acute exacerbations of chronic obstructive pulmonary disease (AECOPD) are associated with high mortality, morbidity, and poor quality of life and constitute a substantial burden to patients and health care systems. New approaches to prevent or reduce the severity of AECOPD are urgently needed. Internationally, this has prompted increased interest in the potential of remote patient monitoring (RPM) and digital medicine. RPM refers to the direct transmission of patient-reported outcomes, physiological, and functional data, including heart rate, weight, blood pressure, oxygen saturation, physical activity, and lung function (spirometry), directly to health care professionals through automation, web-based data entry, or phone-based data entry. Machine learning has the potential to enhance RPM in chronic obstructive pulmonary disease by increasing the accuracy and precision of AECOPD prediction systems.
    OBJECTIVE: This study aimed to conduct a dual systematic review. The first review focuses on randomized controlled trials where RPM was used as an intervention to treat or improve AECOPD. The second review examines studies that combined machine learning with RPM to predict AECOPD. We review the evidence and concepts behind RPM and machine learning and discuss the strengths, limitations, and clinical use of available systems. We have generated a list of recommendations needed to deliver patient and health care system benefits.
    METHODS: A comprehensive search strategy, encompassing the Scopus and Web of Science databases, was used to identify relevant studies. A total of 2 independent reviewers (HMGG and CM) conducted study selection, data extraction, and quality assessment, with discrepancies resolved through consensus. Data synthesis involved evidence assessment using a Critical Appraisal Skills Programme checklist and a narrative synthesis. Reporting followed PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines.
    RESULTS: These narrative syntheses suggest that 57% (16/28) of the randomized controlled trials for RPM interventions fail to achieve the required level of evidence for better outcomes in AECOPD. However, the integration of machine learning into RPM demonstrates promise for increasing the predictive accuracy of AECOPD and, therefore, early intervention.
    CONCLUSIONS: This review suggests a transition toward the integration of machine learning into RPM for predicting AECOPD. We discuss particular RPM indices that have the potential to improve AECOPD prediction and highlight research gaps concerning patient factors and the maintained adoption of RPM. Furthermore, we emphasize the importance of a more comprehensive examination of patient and health care burdens associated with RPM, along with the development of practical solutions.
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  • 文章类型: Journal Article
    甲烷(CH4)的区域预算评估对于未来的气候和环境管理至关重要。来自水稻种植的CH4排放(CH4-水稻)是最重要的来源之一。然而,以往的研究主要集中在历史排放估算,缺乏对气候变化或人为政策干预下CH4-水稻未来变化的考虑,这阻碍了我们对长期趋势的理解和有针对性的减排努力的实施。这项研究调查了CH4-水稻在过去二十年中的时空变化,在气候变化情景和政策观点下,使用综合方法确定主要驱动因素并预测未来排放量。结果表明,在过去的二十年中,中国的CH4-水稻排放量在6.21和6.57Tgyr-1之间。空间分布的特点是南部减少,北部增加,与经济发展有关,饮食转变,技术进步,和气候变化。秸秆添加率(RSA)等因素,受精,土壤质地,温度,降水显著影响单位水稻产量的CH4排放量(CH4-urp),RSA被确定为最重要的耕作管理因素,解释了32%的差异。将RSA降低至8%有利于减少CH4-urp。情景分析表明,在以生产或需求为重点的政策下,CH4-大米预计增长0.3%至5.6%,而调整RSA可以使CH4-大米减少9.4%至10.0%。结构调整和区域合作是我国控制和减少CH4-水稻的有益出发点,优化产业布局有助于区域发展和CH4水稻控制。实施与维持田间和作物产量有关的政策可以提前实现水稻供需平衡。基于供需平衡的水稻种植动态调整可以有效减少CH4-水稻产量过剩。到2060年,还原效果可达到8.95%-12.01%。引入政策驱动的耕作管理措施作为参考指标有助于减少CH4-水稻。
    Regional budget assessments of methane (CH4) are critical for future climate and environmental management. CH4 emissions from rice cultivation (CH4-rice) constitute one of the most significant sources. However, previous studies mainly focus on historical emission estimates and lack consideration of future changes in CH4-rice under climate change or anthropogenic policy intervention, which hampers our understanding of long-term trends and the implementation of targeted emission reduction efforts. This study investigates the spatiotemporal variations of CH4-rice over the past two decades, using an integrated method to identify the major drivers and predict future emissions under climate change scenarios and policy perspectives. Results indicate that the CH4-rice emissions in China ranged between 6.21 and 6.57 Tg yr-1 over the past two decades, with a spatial distribution characterized by decreases in the south and increases in the north, associated with economic development, dietary shifts, technological advancements, and climate change. Factors such as the rate of straw added (RSA), fertilization, soil texture, temperature, and precipitation significantly influence CH4 emissions per unit rice production (CH4-urp), with RSA identified as the most significant tillage management factor, explaining 32 % of the variance. Lowering RSA to 8 % is beneficial for reducing CH4-urp. Scenario analysis indicates that under policies focusing on production or demand, CH4-rice is expected to increase by 0.3 % to 5.6 %, while adjusting RSA can reduce CH4-rice by 9.4 % to 10.0 %. Structural adjustments and regional cooperation serve as beneficial starting points for controlling and reducing CH4-rice in China, while optimizing industrial layouts contributes to regional development and CH4-rice control. Implementing policies related to maintaining field and crop yields can achieve a balance between rice supply and demand ahead of schedule. Dynamic adjustment of rice cultivation based on supply-demand balance can effectively reduce CH4-rice from excess rice production. By 2060, the reduction effect could reach 8.95 %-12.01 %. Introducing policy-driven tillage management measures as reference indicators facilitates the reduction of CH4-rice.
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  • 文章类型: Journal Article
    背景:COVID-19(PASC)的后遗症,也被称为长科维德,是急性COVID-19后一系列长期症状的广泛分组。这些症状可能发生在一系列生物系统中,导致在确定PASC的危险因素和该疾病的病因方面面临挑战。对预测未来PASC的特征的理解是有价值的,因为这可以为识别高风险个体和未来的预防工作提供信息。然而,目前有关PASC危险因素的知识有限。
    目的:使用来自国家COVID队列合作组织的55,257名患者(其中1名PASC患者与4名匹配对照)的样本,作为美国国立卫生研究院长期COVID计算挑战的一部分,我们试图从一组经筛选的临床知情协变量中预测PASC诊断的个体风险.国家COVID队列合作组织包括来自美国84个地点的2200多万患者的电子健康记录。
    方法:我们预测了个体PASC状态,给定协变量信息,使用SuperLearner(一种集成机器学习算法,也称为堆叠)来学习梯度提升和随机森林算法的最优组合,以最大化接收器算子曲线下的面积。我们基于3个级别评估了变量重要性(Shapley值):个体特征,时间窗口,和临床领域。我们使用一组随机选择的研究地点从外部验证了这些发现。
    结果:我们能够准确预测个体PASC诊断(曲线下面积0.874)。观察期长度的个体特征,急性COVID-19和病毒性下呼吸道感染期间卫生保健相互作用的数量对随后的PASC诊断最具预测性.暂时,我们发现基线特征是未来PASC诊断的最具预测性的,与之前的特征相比,during,或急性COVID-19后。我们发现医疗保健使用的临床领域,人口统计学或人体测量学,和呼吸因素是PASC诊断的最具预测性的因素。
    结论:这里概述的方法提供了一个开放源代码,使用超级学习者使用电子健康记录数据预测PASC状态的应用示例,可以在各种设置中复制。在个体预测因子和临床领域,我们一致发现,与医疗保健使用相关的因素是PASC诊断的最强预测因子.这表明,任何使用PASC诊断作为主要结果的观察性研究都必须严格考虑异质医疗保健的使用。我们的研究结果支持以下假设:临床医生可能能够在急性COVID-19诊断之前准确评估患者的PASC风险,这可以改善早期干预和预防性护理。我们的发现还强调了呼吸特征在PASC风险评估中的重要性。
    RR2-10.1101/2023.07.27.23293272。
    Postacute sequelae of COVID-19 (PASC), also known as long COVID, is a broad grouping of a range of long-term symptoms following acute COVID-19. These symptoms can occur across a range of biological systems, leading to challenges in determining risk factors for PASC and the causal etiology of this disorder. An understanding of characteristics that are predictive of future PASC is valuable, as this can inform the identification of high-risk individuals and future preventative efforts. However, current knowledge regarding PASC risk factors is limited.
    Using a sample of 55,257 patients (at a ratio of 1 patient with PASC to 4 matched controls) from the National COVID Cohort Collaborative, as part of the National Institutes of Health Long COVID Computational Challenge, we sought to predict individual risk of PASC diagnosis from a curated set of clinically informed covariates. The National COVID Cohort Collaborative includes electronic health records for more than 22 million patients from 84 sites across the United States.
    We predicted individual PASC status, given covariate information, using Super Learner (an ensemble machine learning algorithm also known as stacking) to learn the optimal combination of gradient boosting and random forest algorithms to maximize the area under the receiver operator curve. We evaluated variable importance (Shapley values) based on 3 levels: individual features, temporal windows, and clinical domains. We externally validated these findings using a holdout set of randomly selected study sites.
    We were able to predict individual PASC diagnoses accurately (area under the curve 0.874). The individual features of the length of observation period, number of health care interactions during acute COVID-19, and viral lower respiratory infection were the most predictive of subsequent PASC diagnosis. Temporally, we found that baseline characteristics were the most predictive of future PASC diagnosis, compared with characteristics immediately before, during, or after acute COVID-19. We found that the clinical domains of health care use, demographics or anthropometry, and respiratory factors were the most predictive of PASC diagnosis.
    The methods outlined here provide an open-source, applied example of using Super Learner to predict PASC status using electronic health record data, which can be replicated across a variety of settings. Across individual predictors and clinical domains, we consistently found that factors related to health care use were the strongest predictors of PASC diagnosis. This indicates that any observational studies using PASC diagnosis as a primary outcome must rigorously account for heterogeneous health care use. Our temporal findings support the hypothesis that clinicians may be able to accurately assess the risk of PASC in patients before acute COVID-19 diagnosis, which could improve early interventions and preventive care. Our findings also highlight the importance of respiratory characteristics in PASC risk assessment.
    RR2-10.1101/2023.07.27.23293272.
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  • 文章类型: Journal Article
    我们提出了一种预测人体药代动力学(PK)的新计算方法,该方法解决了早期药物设计的挑战。我们的研究介绍并描述了11个临床PK终点的大规模数据集,包含2700多个独特的化学结构来训练机器学习模型。为此,比较了多种高级培训策略,包括体外数据的整合和一个新的自我监督预训练任务。除了预测,我们的最终模型为每个数据点提供了有意义的认知不确定性.这使我们能够成功地识别出具有出色预测性能的区域,多个终点的绝对平均折叠误差(AAFE/几何平均折叠误差)小于2.5。一起,这些进步代表了朝着可操作的PK预测的重大飞跃,可以在药物设计过程的早期使用,以加快开发并减少对非临床研究的依赖。
    We present a novel computational approach for predicting human pharmacokinetics (PK) that addresses the challenges of early stage drug design. Our study introduces and describes a large-scale data set of 11 clinical PK end points, encompassing over 2700 unique chemical structures to train machine learning models. To that end multiple advanced training strategies are compared, including the integration of in vitro data and a novel self-supervised pretraining task. In addition to the predictions, our final model provides meaningful epistemic uncertainties for every data point. This allows us to successfully identify regions of exceptional predictive performance, with an absolute average fold error (AAFE/geometric mean fold error) of less than 2.5 across multiple end points. Together, these advancements represent a significant leap toward actionable PK predictions, which can be utilized early on in the drug design process to expedite development and reduce reliance on nonclinical studies.
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  • 文章类型: Journal Article
    分析从异构来源收集的大量数据对于特大城市的发展越来越重要,智慧城市技术的进步,并确保公民的高质量生活。本研究旨在开发用于分析和解释社交媒体数据的算法,以实时评估公民的意见,并验证和检查数据,以分析社会紧张局势并预测城市项目实施过程中的情况发展。使用交通系统开发领域的城市项目对开发的算法进行了测试。该研究的材料包括来自社交网络的数据,信使频道和聊天,视频托管平台,博客,微博,论坛,和审查网站。采用了跨学科的方法来分析数据,采用品牌分析等工具,TextAnalyst2.32,GPT-3.5,GPT-4,GPT-4o,和Tableau。数据分析的结果显示了相同的结果,表明用户之间的中立感知和围绕项目实施的社会紧张局势的不存在,允许预测局势的平静发展。此外,为了决策目的,提出了避免潜在冲突和消除社会紧张根源的建议。
    The analysis of large volumes of data collected from heterogeneous sources is increasingly important for the development of megacities, the advancement of smart city technologies, and ensuring a high quality of life for citizens. This study aimed to develop algorithms for analyzing and interpreting social media data to assess citizens\' opinions in real time and for verifying and examining data to analyze social tension and predict the development of situations during the implementation of urban projects. The developed algorithms were tested using an urban project in the field of transportation system development. The study\'s material included data from social networks, messenger channels and chats, video hosting platforms, blogs, microblogs, forums, and review sites. An interdisciplinary approach was utilized to analyze the data, employing tools such as Brand Analytics, TextAnalyst 2.32, GPT-3.5, GPT-4, GPT-4o, and Tableau. The results of the data analysis showed identical outcomes, indicating a neutral perception among users and the absence of social tension surrounding the project\'s implementation, allowing for the prediction of a calm development of the situation. Additionally, recommendations were developed to avert potential conflicts and eliminate sources of social tension for decision-making purposes.
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  • 文章类型: Journal Article
    背景:远程医疗和远程医疗是重要的家庭护理服务,用于支持个人在家中更独立地生活。历史上,这些技术对问题做出了反应。然而,最近一直在努力更好地利用这些服务的数据,以促进更积极和预测性的护理。
    目的:这篇综述旨在探索预测数据分析技术在家庭远程医疗和远程医疗中的应用方式。
    方法:PRISMA-ScR(系统审查的首选报告项目和范围审查的荟萃分析扩展)清单与Arksey和O\'Malley的方法论框架一起遵循。在MEDLINE发表的英文论文,Embase,并考虑了2012年至2022年的社会科学保费收集,并根据纳入或排除标准对结果进行了筛选.
    结果:总计,这篇综述包括86篇论文。本综述中的分析类型可以归类为异常检测(n=21),诊断(n=32),预测(n=22),和活动识别(n=11)。最常见的健康状况是帕金森病(n=12)和心血管疾病(n=11)。主要发现包括:缺乏使用常规收集的数据;诊断工具占主导地位;以及存在的障碍和机会,例如包括患者报告的结果,用于未来的远程医疗和远程医疗预测分析。
    结论:这篇综述中的所有论文都是小规模的飞行员,因此,未来的研究应该寻求将这些预测技术应用到更大的试验中。此外,将常规收集的护理数据和患者报告的结局进一步整合到远程医疗和远程医疗的预测模型中,为改善正在进行的分析提供了重要的机会,应进一步探讨.使用的数据集必须具有合适的大小和多样性,确保模型可推广到更广泛的人群,并且可以进行适当的训练,已验证,和测试。
    BACKGROUND: Telecare and telehealth are important care-at-home services used to support individuals to live more independently at home. Historically, these technologies have reactively responded to issues. However, there has been a recent drive to make better use of the data from these services to facilitate more proactive and predictive care.
    OBJECTIVE: This review seeks to explore the ways in which predictive data analytics techniques have been applied in telecare and telehealth in at-home settings.
    METHODS: The PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews) checklist was adhered to alongside Arksey and O\'Malley\'s methodological framework. English language papers published in MEDLINE, Embase, and Social Science Premium Collection between 2012 and 2022 were considered and results were screened against inclusion or exclusion criteria.
    RESULTS: In total, 86 papers were included in this review. The types of analytics featuring in this review can be categorized as anomaly detection (n=21), diagnosis (n=32), prediction (n=22), and activity recognition (n=11). The most common health conditions represented were Parkinson disease (n=12) and cardiovascular conditions (n=11). The main findings include: a lack of use of routinely collected data; a dominance of diagnostic tools; and barriers and opportunities that exist, such as including patient-reported outcomes, for future predictive analytics in telecare and telehealth.
    CONCLUSIONS: All papers in this review were small-scale pilots and, as such, future research should seek to apply these predictive techniques into larger trials. Additionally, further integration of routinely collected care data and patient-reported outcomes into predictive models in telecare and telehealth offer significant opportunities to improve the analytics being performed and should be explored further. Data sets used must be of suitable size and diversity, ensuring that models are generalizable to a wider population and can be appropriately trained, validated, and tested.
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  • 文章类型: Journal Article
    一些精神障碍或行为模型(例如,自杀)已经成功开发,允许在人口层面进行预测。然而,当前的人口统计学和临床变量既不敏感,也不具有足够的特异性,无法对个体进行可操作的临床预测.“大脑十年”的主要希望是生物学措施(生物标志物)将解决这些问题并导致精确的精神病学。然而,因为模型是基于社会人口统计学和临床数据,即使这些生物标志物在患者组和对照组参与者之间存在显着差异,它们仍然不够敏感,也不够具体,无法应用于个体患者。过去十年的技术进步提供了一种有希望的方法,这些方法基于新的措施,对于理解精神障碍和预测其轨迹可能至关重要。几种新工具使我们能够持续监控客观行为措施(例如,睡眠时间)和密集样本主观测量(例如,心情)。这种方法的承诺,称为数字表型,大约十年前就被认可了,将其对精神病学的潜在影响与显微镜对生物科学的影响进行比较。然而,尽管直觉认为收集密集采样数据(大数据)可以改善临床结果,最近的临床试验未显示结合数字表型可改善临床结局.这一观点提供了逐步发展和实施的方法,类似于在心血管疾病的预测和预防方面取得的成功,在精神病学中实现临床可操作的预测。
    Some models for mental disorders or behaviors (eg, suicide) have been successfully developed, allowing predictions at the population level. However, current demographic and clinical variables are neither sensitive nor specific enough for making individual actionable clinical predictions. A major hope of the \"Decade of the Brain\" was that biological measures (biomarkers) would solve these issues and lead to precision psychiatry. However, as models are based on sociodemographic and clinical data, even when these biomarkers differ significantly between groups of patients and control participants, they are still neither sensitive nor specific enough to be applied to individual patients. Technological advances over the past decade offer a promising approach based on new measures that may be essential for understanding mental disorders and predicting their trajectories. Several new tools allow us to continuously monitor objective behavioral measures (eg, hours of sleep) and densely sample subjective measures (eg, mood). The promise of this approach, referred to as digital phenotyping, was recognized almost a decade ago, with its potential impact on psychiatry being compared to the impact of the microscope on biological sciences. However, despite the intuitive belief that collecting densely sampled data (big data) improves clinical outcomes, recent clinical trials have not shown that incorporating digital phenotyping improves clinical outcomes. This viewpoint provides a stepwise development and implementation approach, similar to the one that has been successful in the prediction and prevention of cardiovascular disease, to achieve clinically actionable predictions in psychiatry.
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  • 文章类型: Journal Article
    背景:协调的护理系统有助于为疑似急性中风提供及时的治疗。在安大略省西北部(NWO),加拿大,社区分布广泛,几家医院提供各种诊断设备和服务。因此,资源有限,医疗保健提供者必须经常将中风患者转移到不同的医院,以确保在建议的时间范围内获得最适当的护理。然而,经常位于NWO的临时(locum)或在安大略省其他地区远程提供护理的医疗保健提供者可能在该地区缺乏足够的信息和经验,无法为具有时间敏感性的患者提供护理。次优决策可能会导致在获得明确的中风护理之前进行多次转移,导致不良结果和额外的医疗保健系统成本。
    目的:我们旨在开发一种工具来告知和协助NWO医疗保健提供者确定中风患者的最佳转移选择,以提供最有效的护理服务。我们旨在使用基于机器学习算法的综合地理映射导航和估计系统开发应用程序。这个应用程序使用与中风相关的关键时间线,包括患者最后一次被认为是好的,患者位置,治疗方案,以及不同医疗机构的成像可用性。
    方法:使用历史数据(2008-2020年),开发了一种使用机器学习方法的准确预测模型,并将其集成到移动应用程序中。这些数据包含有关空中(Ornge)和陆地医疗运输(3种服务)的参数,经过预处理和清洁。对于Ornge航空服务和陆地救护车医疗运输都涉及患者运输过程的情况,合并数据并确定运输旅程的时间间隔。数据被分发用于训练(35%),测试(35%),并对预测模型进行验证(30%)。
    结果:总计,从Ornge和陆地医疗运输服务的数据集中收集了70,623条记录,以开发预测模型。分析了各种学习模型;在预测输出变量方面,所有学习模型的性能均优于所有点的简单平均值。决策树模型提供了比其他模型更准确的结果。决策树模型表现非常好,根据测试的值,验证,和近距离内的模型。该模型用于开发“NWO导航中风”系统。该系统提供了准确的结果,并证明了移动应用程序可以成为医疗保健提供者在NWO中导航中风护理的重要工具,可能影响患者护理和结果。
    结论:NWO导航中风系统使用数据驱动,可靠,准确的预测模型,同时考虑所有变化,并同时与所有必需的急性卒中管理途径和工具相关联。使用历史数据进行了测试,下一步将涉及最终用户的可用性测试。
    BACKGROUND: A coordinated care system helps provide timely access to treatment for suspected acute stroke. In Northwestern Ontario (NWO), Canada, communities are widespread with several hospitals offering various diagnostic equipment and services. Thus, resources are limited, and health care providers must often transfer patients with stroke to different hospital locations to ensure the most appropriate care access within recommended time frames. However, health care providers frequently situated temporarily (locum) in NWO or providing care remotely from other areas of Ontario may lack sufficient information and experience in the region to access care for a patient with a time-sensitive condition. Suboptimal decision-making may lead to multiple transfers before definitive stroke care is obtained, resulting in poor outcomes and additional health care system costs.
    OBJECTIVE: We aimed to develop a tool to inform and assist NWO health care providers in determining the best transfer options for patients with stroke to provide the most efficient care access. We aimed to develop an app using a comprehensive geomapping navigation and estimation system based on machine learning algorithms. This app uses key stroke-related timelines including the last time the patient was known to be well, patient location, treatment options, and imaging availability at different health care facilities.
    METHODS: Using historical data (2008-2020), an accurate prediction model using machine learning methods was developed and incorporated into a mobile app. These data contained parameters regarding air (Ornge) and land medical transport (3 services), which were preprocessed and cleaned. For cases in which Ornge air services and land ambulance medical transport were both involved in a patient transport process, data were merged and time intervals of the transport journey were determined. The data were distributed for training (35%), testing (35%), and validation (30%) of the prediction model.
    RESULTS: In total, 70,623 records were collected in the data set from Ornge and land medical transport services to develop a prediction model. Various learning models were analyzed; all learning models perform better than the simple average of all points in predicting output variables. The decision tree model provided more accurate results than the other models. The decision tree model performed remarkably well, with the values from testing, validation, and the model within a close range. This model was used to develop the \"NWO Navigate Stroke\" system. The system provides accurate results and demonstrates that a mobile app can be a significant tool for health care providers navigating stroke care in NWO, potentially impacting patient care and outcomes.
    CONCLUSIONS: The NWO Navigate Stroke system uses a data-driven, reliable, accurate prediction model while considering all variations and is simultaneously linked to all required acute stroke management pathways and tools. It was tested using historical data, and the next step will to involve usability testing with end users.
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  • 文章类型: Journal Article
    背景:心力衰竭(HF)患者是德国最常再入院的成年患者。大多数HF患者因非心血管原因再次入院。了解医院以外的HF管理的相关性对于了解HF和导致再入院的因素至关重要。机器学习(ML)对来自法定健康保险(SHI)的数据的应用允许评估代表一般人群的大型纵向数据集,以支持临床决策。
    目的:本研究旨在评估ML方法在门诊SHI数据中预测HF患者初次入院后1年全因和特定HF再入院的能力,并确定重要的预测因素。
    方法:我们使用2012年至2018年德国AOKBaden-WürttembergSHI的门诊数据确定了HF患者。然后,我们对回归和ML算法进行了训练和应用,以预测HF首次入院后一年内的首次全因和特定于HF的再入院。我们拟合了一个随机森林,一个弹性网,逐步回归,以及使用诊断代码预测再入院的逻辑回归,药物暴露,人口统计(年龄,性别,国籍,和SHI内的覆盖类型),居住的乡村程度,并参与常见慢性病(1型和2型糖尿病,乳腺癌,慢性阻塞性肺疾病,和冠心病)。然后,我们根据其重要性和预测再入院的方向评估了HF再入院的预测因子。
    结果:我们的最终数据集包括97,529名HF患者,和78,044(80%)在观察期内再次入院。在经过测试的建模方法中,随机森林方法最好地预测了1年全因和HF特异性再入院,C统计量分别为0.68和0.69。1年全因再入院的重要预测因素包括泮托拉唑的处方,慢性阻塞性肺疾病,动脉粥样硬化,性别,rurality,并参与2型糖尿病和冠心病的疾病管理计划。HF特异性再入院的相关特征包括大量典型的HF合并症。
    结论:虽然我们确定的许多预测因子已知与HF的合并症有关,我们还发现了几个新颖的联想。疾病管理计划已被广泛证明是有效的管理慢性疾病;然而,我们的结果表明,在短期内,它们可能有助于针对再次入院风险增加的合并有并发症的HF患者.我们的结果还表明,生活在更农村的地方会增加再次入院的风险。总的来说,共病以外的因素与HF再入院风险相关.这一发现可能会影响门诊医生如何识别和监测有HF再入院风险的患者。
    BACKGROUND: Patients with heart failure (HF) are the most commonly readmitted group of adult patients in Germany. Most patients with HF are readmitted for noncardiovascular reasons. Understanding the relevance of HF management outside the hospital setting is critical to understanding HF and factors that lead to readmission. Application of machine learning (ML) on data from statutory health insurance (SHI) allows the evaluation of large longitudinal data sets representative of the general population to support clinical decision-making.
    OBJECTIVE: This study aims to evaluate the ability of ML methods to predict 1-year all-cause and HF-specific readmission after initial HF-related admission of patients with HF in outpatient SHI data and identify important predictors.
    METHODS: We identified individuals with HF using outpatient data from 2012 to 2018 from the AOK Baden-Württemberg SHI in Germany. We then trained and applied regression and ML algorithms to predict the first all-cause and HF-specific readmission in the year after the first admission for HF. We fitted a random forest, an elastic net, a stepwise regression, and a logistic regression to predict readmission by using diagnosis codes, drug exposures, demographics (age, sex, nationality, and type of coverage within SHI), degree of rurality for residence, and participation in disease management programs for common chronic conditions (diabetes mellitus type 1 and 2, breast cancer, chronic obstructive pulmonary disease, and coronary heart disease). We then evaluated the predictors of HF readmission according to their importance and direction to predict readmission.
    RESULTS: Our final data set consisted of 97,529 individuals with HF, and 78,044 (80%) were readmitted within the observation period. Of the tested modeling approaches, the random forest approach best predicted 1-year all-cause and HF-specific readmission with a C-statistic of 0.68 and 0.69, respectively. Important predictors for 1-year all-cause readmission included prescription of pantoprazole, chronic obstructive pulmonary disease, atherosclerosis, sex, rurality, and participation in disease management programs for type 2 diabetes mellitus and coronary heart disease. Relevant features for HF-specific readmission included a large number of canonical HF comorbidities.
    CONCLUSIONS: While many of the predictors we identified were known to be relevant comorbidities for HF, we also uncovered several novel associations. Disease management programs have widely been shown to be effective at managing chronic disease; however, our results indicate that in the short term they may be useful for targeting patients with HF with comorbidity at increased risk of readmission. Our results also show that living in a more rural location increases the risk of readmission. Overall, factors beyond comorbid disease were relevant for risk of HF readmission. This finding may impact how outpatient physicians identify and monitor patients at risk of HF readmission.
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