precision care

精准护理
  • 文章类型: Journal Article
    目的:本研究探讨精准护理联合间歇性充气加压(IPC)装置预防卵巢癌患者围手术期深静脉血栓(DVT)的效果。
    方法:回顾性分析2019年2月至2023年4月西安市人民医院卵巢癌手术患者136例。将患者分为两组:71例患者接受IPC干预的精准护理(研究组),其余患者接受标准护理(对照组)。分析的关键变量包括手术持续时间,术中失血,术后输血需求,肢体周长的变化,和凝血参数的变化激活部分凝血活酶时间(APTT),D-二聚体(D-D),纤维蛋白原(FIB),术前、术后凝血酶原时间(PT)。记录两组DVT的发生率,以确定深静脉血栓形成的危险因素。
    结果:两组间在手术时间上无显著差异,术中失血,术后输血率(P>0.05)。干预后,研究组有显著改善,与对照组相比,FIB和D-D水平降低,PT和APTT水平升高(P<0.05)。此外,研究组干预后的肢体周长差异明显较小,DVT发生率较低(P=0.003).精准护理结合IPC,干预前D-D<498.5,FIGOIII+IV期被确定为DVT发生的独立因素.
    结论:与常规护理相比,精准护理与IPC装置配合可显著降低卵巢癌患者围手术期DVT的风险。
    OBJECTIVE: This study investigated the efficacy of precision nursing combined with intermittent pneumatic compression (IPC) devices in preventing perioperative deep vein thrombosis (DVT) in patients with ovarian cancer.
    METHODS: A retrospective analysis was conducted on 136 ovarian cancer surgery patients at Xi\'an People\'s Hospital from February 2019 to April 2023. The patients were divided into two groups: 71 patients received precision nursing with IPC intervention (study group), while the remaining received standard nursing care (control group). Key variables analyzed included operation duration, intraoperative blood loss, postoperative blood transfusion requirements, changes in limb circumference, and variations in coagulation parameters activated partial thromboplastin time (APTT), D-Dimer (D-D), Fibrinogen (FIB), and Prothrombin Time (PT) before and after surgery. The incidence of DVT was recorded in both groups to determine risk factors for deep vein thrombosis.
    RESULTS: No significant differences were observed between the groups regarding operation duration, intraoperative blood loss, and postoperative blood transfusion rates (P > 0.05). Post-intervention, significant improvements were noted in the study group, with reduced FIB and D-D levels and increased PT and APTT levels compared to the control group (P < 0.05). Furthermore, the study group exhibited a significantly smaller post-intervention difference in limb circumference and a lower incidence of DVT (P=0.003). Precision nursing combined with IPC, pre-intervention D-D < 498.5, and FIGO stages III+IV were identified as independent factors against DVT development.
    CONCLUSIONS: Precision nursing paired with an IPC device significantly reduces the risk of perioperative DVT in ovarian cancer patients compared to conventional care.
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  • 文章类型: Journal Article
    物联网(IoT)技术的进步使智能和可穿戴传感器的实现成为可能,可用于为老年人提供负担得起且可获得的连续生物卫生学状态监测。这些监测数据的质量,然而,由于各种干扰引起的过多噪声而不能令人满意,如运动伪影。现有方法利用汇总统计,例如平均值或中值,去噪,不考虑数据中嵌入的生物卫生学模式。在这项研究中,提出了一种功能数据分析建模方法,通过从历史数据中学习个体受试者的昼夜心率(HR)模式来提高数据质量,通过融合新收集的数据进一步改进。这种提出的数据融合方法是基于贝叶斯推理框架开发的。一项前瞻性研究的HR分析证明了其有效性,该研究涉及居住在辅助生活或家庭环境中的老年人。结果表明,通过估计个性化的HR模式来进行个性化的医疗保健势在必行。此外,与原始HR和常规方法相比,所提出的校准方法提供了更准确(更小的平均误差)和更精确(更小的误差标准偏差)的HR估计,比如意思。
    The advancements of Internet of Things (IoT) technologies have enabled the implementation of smart and wearable sensors, which can be employed to provide older adults with affordable and accessible continuous biophysiological status monitoring. The quality of such monitoring data, however, is unsatisfactory due to excessive noise induced by various disturbances, such as motion artifacts. Existing methods take advantage of summary statistics, such as mean or median values, for denoising, without taking into account the biophysiological patterns embedded in data. In this research, a functional data analysis modeling method was proposed to enhance the data quality by learning individual subjects\' diurnal heart rate (HR) patterns from historical data, which were further improved by fusing newly collected data. This proposed data-fusion approach was developed based on a Bayesian inference framework. Its effectiveness was demonstrated in an HR analysis from a prospective study involving older adults residing in assisted living or home settings. The results indicate that it is imperative to conduct personalized healthcare by estimating individualized HR patterns. Furthermore, the proposed calibration method provides a more accurate (smaller mean errors) and more precise (smaller error standard deviations) HR estimation than raw HR and conventional methods, such as the mean.
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  • 文章类型: Journal Article
    目的:在社会经济和地区医疗保健差异的背景下,评估各种机器学习(ML)算法在预测晚期结直肠癌(CRC)诊断中的功效。
    方法:开发了一种创新的理论框架,以将个人和人口普查领域水平的社会健康决定因素(SDOH)与社会人口统计学因素相结合。使用AUC-ROC等关键性能指标对ML模型进行比较分析,以评估其预测准确性。时空分析用于识别晚期CRC诊断概率的差异。
    结果:梯度提升成为优越的模型,晚期CRC诊断的主要预测因素是解剖部位,诊断年份,年龄,靠近超级基金网站,和主要付款人。时空聚类突出显示了具有统计学意义的晚期诊断高概率的地理区域,强调需要有针对性的医疗干预措施。
    结论:这项研究强调了ML在提高肿瘤学预后预测方面的潜力,尤其是CRC。梯度增强模型,凭借其强大的性能,有望在医疗保健系统中部署,以帮助早期发现并制定局部癌症预防策略。该研究的方法表明,在公共卫生领域利用人工智能来缓解差距和改善癌症护理结果方面迈出了重要的一步。
    OBJECTIVE: To assess the efficacy of various machine learning (ML) algorithms in predicting late-stage colorectal cancer (CRC) diagnoses against the backdrop of socio-economic and regional healthcare disparities.
    METHODS: An innovative theoretical framework was developed to integrate individual- and census tract-level social determinants of health (SDOH) with sociodemographic factors. A comparative analysis of the ML models was conducted using key performance metrics such as AUC-ROC to evaluate their predictive accuracy. Spatio-temporal analysis was used to identify disparities in late-stage CRC diagnosis probabilities.
    RESULTS: Gradient boosting emerged as the superior model, with the top predictors for late-stage CRC diagnosis being anatomic site, year of diagnosis, age, proximity to superfund sites, and primary payer. Spatio-temporal clusters highlighted geographic areas with a statistically significant high probability of late-stage diagnoses, emphasizing the need for targeted healthcare interventions.
    CONCLUSIONS: This research underlines the potential of ML in enhancing the prognostic predictions in oncology, particularly in CRC. The gradient boosting model, with its robust performance, holds promise for deployment in healthcare systems to aid early detection and formulate localized cancer prevention strategies. The study\'s methodology demonstrates a significant step toward utilizing AI in public health to mitigate disparities and improve cancer care outcomes.
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  • 文章类型: Journal Article
    大多数类型的痴呆症,包括老年痴呆症,无法治愈。然而,有风险因素,比如肥胖或高血压,可以促进痴呆症的发展。对这些危险因素的整体治疗可以预防痴呆的发作或将其推迟到早期阶段。为了支持痴呆症危险因素的个体化治疗,本文提出了一种模型驱动的数字化平台。它可以使用来自目标群体的医疗物联网(IoMT)的智能设备来监测生物标志物。从这样的设备收集的数据可以用于以循环方式优化和调整患者的治疗。为此,GoogleFit和Withings等提供商已连接到该平台作为示例数据源。为了实现治疗和监测数据与现有医疗系统的互操作性,使用国际公认的标准,如FHIR。使用自主开发的领域特定语言来实现个性化治疗过程的配置和控制。对于这种语言,实现了一个相关的图表编辑器,它允许通过图形模型管理治疗过程。这种图形表示应该有助于治疗提供者更容易地理解和管理这些过程。为了研究这个假设,对12名参与者进行了可用性研究.我们能够证明,这种图形表示在审查系统时提供了清晰的优势,但缺乏易于设置(与向导式系统相比)。
    Most types of dementia, including Alzheimer\'s disease, are not curable. However, there are risk factors, such as obesity or hypertension, that can promote the development of dementia. Holistic treatment of these risk factors can prevent the onset of dementia or delay it in its early stages. To support individualized treatment of risk factors in dementia, this paper presents a model-driven digital platform. It enables monitoring of biomarkers using smart devices from the internet of medical things (IoMT) for the target group. The collected data from such devices can be used to optimize and adjust treatment in a patient in the loop manner. To this end, providers such as Google Fit and Withings have been connected to the platform as example data sources. To achieve treatment and monitoring data interoperability with existing medical systems, internationally accepted standards such as FHIR are used. The configuration and control of the personalized treatment processes are achieved using a self-developed domain-specific language. For this language, an associated diagram editor was implemented, which allows the management of the treatment processes through graphical models. This graphical representation should help treatment providers to understand and manage these processes more easily. To investigate this hypothesis, a usability study was conducted with twelve participants. We were able to show that such graphical representations provide advantages in clarity in reviewing the system, but lack in easy set-up (compared to wizard-style systems).
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  • 文章类型: Journal Article
    床通常是医院的个人护理单位,疗养院,和个人\'家。可以从来自床的感测数据导出丰富的护理相关信息。病人跌倒是医院的一个重要问题,其中许多与上下床有关。为了防止坠床,开发了一种用于离床检测的运动感应床垫。部署在床垫控制箱中的芯片上的机器学习算法基于30个感测区域的开/关压力模式来识别床上姿势,以捕获用户的离床意图。这项研究旨在探索如何从这种运动感测床垫的30个感应区域的开/关状态中获得的与睡眠相关的数据可用于多层精确护理信息,包括仪表板上的健康状态和生活模式聚类的大数据分析。这项研究描述了多层个性化护理相关信息如何进一步从运动感测床垫中获得,包括实时卧床/离床状态,每日记录,睡眠质量,延长的压力区域,和长期的生活模式。24个床垫和智能床垫护理系统(SMCS)安装在台湾的痴呆症疗养院进行现场试验。从2021年8月至10月,收集了12周的居民床上/下床数据。SMCS旨在通过集成的仪表板显示与护理相关的信息,并在检测到诸如床退出和患者睡眠和生活模式变化等事件时向护理人员发送提醒。最终目标是为护理人员提供精准护理,减轻他们的护理负担,提高护理质量。在现场审判结束时,我们采访了4名护理人员,了解他们对SMCS是否以及如何帮助他们工作的主观意见.护理人员的主要反应包括SMCS帮助护理人员注意到痴呆症患者的异常情况,与居民的家庭成员沟通,确认药物调整,以及标准护理程序是否适当进行。建议未来的研究侧重于基于用户个性化睡眠相关数据的综合护理策略建议。
    Bed is often the personal care unit in hospitals, nursing homes, and individuals\' homes. Rich care-related information can be derived from the sensing data from bed. Patient fall is a significant issue in hospitals, many of which are related to getting in and/or out of bed. To prevent bed falls, a motion-sensing mattress was developed for bed-exit detection. A machine learning algorithm deployed on the chip in the control box of the mattress identified the in-bed postures based on the on/off pressure pattern of 30 sensing areas to capture the users\' bed-exit intention. This study aimed to explore how sleep-related data derived from the on/off status of 30 sensing areas of this motion-sensing mattress can be used for multiple layers of precision care information, including wellbeing status on the dashboard and big data analysis for living pattern clustering. This study describes how multiple layers of personalized care-related information are further derived from the motion-sensing mattress, including real-time in-bed/off-bed status, daily records, sleep quality, prolonged pressure areas, and long-term living patterns. Twenty-four mattresses and the smart mattress care system (SMCS) were installed in a dementia nursing home in Taiwan for a field trial. Residents\' on-bed/off-bed data were collected for 12 weeks from August to October 2021. The SMCS was developed to display care-related information via an integrated dashboard as well as sending reminders to caregivers when detecting events such as bed exits and changes in patients\' sleep and living patterns. The ultimate goal is to support caregivers with precision care, reduce their care burden, and increase the quality of care. At the end of the field trial, we interviewed four caregivers for their subjective opinions about whether and how the SMCS helped their work. The caregivers\' main responses included that the SMCS helped caregivers notice the abnormal situation for people with dementia, communicate with family members of the residents, confirm medication adjustments, and whether the standard care procedure was appropriately conducted. Future studies are suggested to focus on integrated care strategy recommendations based on users\' personalized sleep-related data.
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  • 文章类型: Journal Article
    最近,数字应用程序已经进入市场,通过提供数字痴呆症筛查来实现痴呆症的早期诊断。其中一些应用程序使用机器学习(ML)来预测认知障碍。这项工作的目的是使用可解释人工智能(XAI)领域的方法,找到对称为DemPredict的移动应用程序预测的解释。为了评估哪种方法最适合,使用和比较了不同的XAI方法。然而,结果的可比性是一个关键挑战。通过评估可信度,稳定性,和方法的计算时间,可以为相应的算法确定最佳的XAI方法。
    Recently, digital apps have entered the market to enable the early diagnosis of dementia by offering digital dementia screenings. Some of these apps use Machine Learning (ML) to predict cognitive impairment. The aim of this work is to find explanations for the predictions of such a mobile application called DemPredict using methods from the field of Explainable Artificial Intelligence (XAI). In order to evaluate which method is best suited, different XAI approaches are used and compared. However, the comparability of the results is a key challenge. By evaluating the trustworthiness, stability, and computation time of the methods, it is possible to identify the optimal XAI approaches for the respective algorithms.
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  • 文章类型: Journal Article
    背景:医疗保健是一个复杂且发散的系统,具有不确定性,不可预测性,和多层次的利益相关者。利益相关者之间的关系是多方面和动态的,需要持续的人际关系,网络,和共同进化。关键是要有一个有证据的理论来解释这一现象,团结多方面的利益相关者的努力。
    目的:为了描述循证理论的发展,融合护理理论,召集医疗保健利益相关者共同努力,实现最佳健康结果。
    方法:融合护理理论是在理论提出者发表的实证研究和文献综述的基础上,采用理论综合方法发展起来的。经验证据分为:患者和家庭,医疗保健提供者,医疗机构,以及患者和医疗保健提供者的自我护理。
    结果:融合护理理论包括四个概念:包罗万象的组织护理,医疗保健专业协作护理,以人为本的精准护理,以及患者和医疗保健提供者的自我护理。实现融合护理是一个需要所有利益相关者共同努力的过程。从研究证据中出现了六个主要的促进者:能力,同情,问责制,信任,分享,和参与。
    结论:本文介绍了循证融合护理理论的发展过程。医疗系统很复杂,需要满足多个利益相关者的需求。融合医疗理论致力于团结医疗利益相关者,债券资源,并联合起来实现最佳医疗结果。该理论的基础是关怀文化,这是组织和团队行为的基本代码,也是最佳健康结果的基础。
    BACKGROUND: Healthcare is a complex and divergent system with uncertainty, unpredictability, and multi-layered stakeholders. The relationships among the stakeholders are multifaceted and dynamic, requiring continual interpersonal connections, networks, and co-evolution. It is pivotal to have an evidence-informed theory to explain the phenomenon, uniting the multifaceted stakeholders\' efforts.
    OBJECTIVE: To describe the development of an evidence-informed theory, the Convergent Care Theory, assembling healthcare stakeholders to work together and achieve optimal health outcomes.
    METHODS: The Convergent Care Theory was developed using a theory synthesis approach based on empirical research and literature reviews published by the theory-proposing author. The empirical evidence was categorized into: patients and families, healthcare providers, healthcare organizations, and patients\' and healthcare providers\' self-care.
    RESULTS: The Convergent Care Theory includes four concepts: all-inclusive organizational care , healthcare professional collaborative care, person-centered precision care, and patients \' and healthcare providers\' self-care. Achieving convergent care is a process requiring all stakeholders to work together. Six major facilitators emerged from the research evidence: competence, compassion, accountability, trusting, sharing, and engaging.
    CONCLUSIONS: This article introduced the development process of the evidence-informed Convergent Care Theory. Healthcare systems are complex, with multiple stakeholders\' needs to meet. The Convergent Care Theory strives to unite healthcare stakeholders, bond resources, and join forces to achieve optimal healthcare outcomes. The underpinning of the theory is a caring culture, which is an underlying code for organizational and team behaviors and the foundation of optimal health outcomes.
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    文章类型: Journal Article
    OBJECTIVE: To investigate the effect of risk management combined with intraoperative precision care on the efficacy and safety of interventional embolization therapy for elderly patients with cerebral aneurysms.
    METHODS: In this prospective randomized controlled study, we included 60 elderly patients with cerebral aneurysm treated with interventional embolization. The patients were randomly divided into an experiment group (n=30) and a control group (n=30). The control group received conventional care during the interventional procedure, while the experiment group received risk management combined with precision care. The outcome of the procedure, time to disappearance of clinical symptoms, length of hospitalization, incidence of complications, neurological function and quality of life before and 3 months after the procedure in both groups were assessed and compared.
    RESULTS: Compared with the control group, the experiment group had significantly less intraoperative bleeding, shorter operative time (all P<0.001), shorter time to disappearance of clinical symptoms and shorter hospitalization (all P<0.001), and a lower rate of surgical complications (P<0.05). Three months after the operation, the experiment group had better neurological function and quality of life, with significantly lower mRs scores (modified Rankin scale), NIHSS (National Institute of Health Stroke Scale) and higher SF-36 scores (MOS item short from health survey) than those of the control group (both P<0.001).
    CONCLUSIONS: Risk management combined with precision care can effectively improve the surgical safety of interventional embolization in elderly patients with cerebral aneurysm, reduce the incidence of surgical complications, and thus improve the prognosis.
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  • 文章类型: Journal Article
    关于与肥胖相关的多发病率组合如何随着体重的增加而改变,知之甚少。这项研究采用了来自国家CernerHealthFacts数据仓库的数据,以使用网络分析按体重等级识别多患病率模式的变化。为154528名中年患者生成了以下类别的网络:正常体重,超重,和1、2和3类肥胖。结果显示,除了所考虑的82种疾病中的三种外,所有疾病的体重等级的患病率均存在显着差异(P值<0.05)。多发病(不包括肥胖)患者的百分比从正常体重患者的55.1%增加,超重为57.88%,70.39%患有1类肥胖,73.99%患有2类肥胖,3类肥胖占71.68%,随着从超重到1级肥胖的进展,增加幅度最大。大多数流行的疾病集群仅从正常体重的高血压和背痛扩展,在超重时增加关节紊乱,1类肥胖的血脂,2级肥胖中的糖尿病,和睡眠障碍和慢性肾病3级肥胖。识别与体重增加相关的多发病模式对于肥胖相关慢性疾病的精确护理至关重要,并且可以帮助临床医生在出现其他并发症之前识别和解决临床前疾病。
    Little is known regarding how multimorbidity combinations associated with obesity change with increase in body weight. This study employed data from the national Cerner HealthFacts Data Warehouse to identify changes in multimorbidity patterns by weight class using network analysis. Networks were generated for 154 528 middle-aged patients in the following categories: normal weight, overweight, and classes 1, 2, and 3 obesity. The results show significant differences (P-value<0.05) in prevalence by weight class for all but three of 82 diseases considered. The percentage of patients with multimorbidity (excluding obesity) increases from in 55.1% in patients with normal weight, to 57.88% with overweight, 70.39% with Class 1 obesity, 73.99% with Class 2 obesity, and 71.68% in Class 3 obesity, increasing most substantially with the progression from overweight to class 1 obesity. Most prevalent disease clusters expand from only hypertension and dorsalgia in normal weight, to add joint disorders in overweight, lipidemias in class 1 obesity, diabetes in class 2 obesity, and sleep disorders and chronic kidney disease in class 3 obesity. Recognition of multimorbidity patterns associated with weight increase is essential for true precision care of obesity-associated chronic conditions and can help clinicians identify and address preclinical disease before additional complications arise.
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