• 文章类型: Journal Article
    一氧化二氮在医学上用作麻醉剂;在食品工业中用作调味品的推进剂;并因其欣快感和解离作用而消遣。我们报告了三例一氧化二氮误用导致严重的,有症状的钴胺素(维生素B12)缺乏,其中一氧化二氮的迹象本身使用,以及毒性的迹象,被观察到,包括掌骨头上的特征性掌骨老茧,还有冻伤.这些体征可能有助于临床医生识别一氧化二氮的使用并及时诊断一氧化二氮的毒性。
    Nitrous oxide is used medically as an anesthetic agent; in the food industry as a propellant for condiments; and recreationally for its euphoric and dissociative effects. We report three cases of nitrous oxide misuse causing severe, symptomatic cobalamin (vitamin B12) deficiency in which signs of nitrous oxide use per se, as well as signs of toxicity, were observed, including characteristic palmar calluses over the metacarpal heads, and frostbite. These signs may assist clinicians in the recognition of nitrous oxide use and the timely diagnosis of nitrous oxide toxicity.
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  • 文章类型: Journal Article
    不断增长的网络攻击使维护医疗机构的医疗保健信息系统(HIS)安全变得更具挑战性,特别是对于提供患者门户以访问患者信息的医院,例如电子健康记录(EHR)。
    这项工作旨在评估台湾EEC(EMR交流中心)成员医院的患者门户安全风险,并分析患者门户安全之间的关联,医院位置,合同类别和医院类型。
    我们首先收集了EEC成员医院的基本信息,包括医院的位置,合同类别和医院类型。然后,由著名的漏洞扫描仪评估了各个医院的患者门户安全性,UPGUARD,评估网站是否容易受到高级别的攻击,如拒绝服务攻击或勒索软件攻击。根据他们的UPSCAN分数,医院被分为四个安全等级:绝对低风险,中低风险,中高风险和高风险。最后,安全等级之间的关联,合同类别和医院类型采用卡方检验进行分析。
    我们共调查了373家EEC成员医院。其中,20个医院患者门户被评为“绝对低风险”,104个医院患者门户为“中低风险”,99个医院患者门户为“中高风险”,150个医院患者门户为“高风险”。进一步调查显示,EEC成员医院的患者门户安全性与合同类别和医院类型显着相关(P<0.001)。
    分析结果表明,大型医院普遍具有较高的安全级别,这意味着低级和小规模医院的安全性可能需要加强或加强。我们建议医院应重视患者门户的安全风险评估,以保护患者信息隐私。
    UNASSIGNED: Growing cyberattacks have made it more challenging to maintain healthcare information system (HIS) security in medical institutes, especially for hospitals that provide patient portals to access patient information, such as electronic health record (EHR).
    UNASSIGNED: This work aims to evaluate the patient portal security risk of Taiwan\'s EEC (EMR Exchange Center) member hospitals and analyze the association between patient portal security, hospital location, contract category and hospital type.
    UNASSIGNED: We first collected the basic information of EEC member hospitals, including hospital location, contract category and hospital type. Then, the patient portal security of individual hospitals was evaluated by a well-known vulnerability scanner, UPGUARD, to assess website if vulnerable to high-level attacks such as denial of service attacks or ransomware attacks. Based on their UPSCAN scores, hospitals were classified into four security ratings: absolute low risk, low to medium risk, medium to high risk and high risk. Finally, the associations between security rating, contract category and hospital type were analyzed using chi-square tests.
    UNASSIGNED: We surveyed a total of 373 EEC member hospitals. Among them, 20 hospital patient portals were rated as \"absolute low risk\", 104 hospital patient portals as \"low to medium risk\", 99 hospital patient portals as \"medium to high risk\" and 150 hospital patient portals as \"high risk\". Further investigation revealed that the patient portal security of EEC member hospitals was significantly associated with the contract category and hospital type (P<0.001).
    UNASSIGNED: The analysis results showed that large-scale hospitals generally had higher security levels, implying that the security of low-tier and small-scale hospitals may warrant reinforcement or strengthening. We suggest that hospitals should pay attention to the security risk assessment of their patient portals to preserve patient information privacy.
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  • 文章类型: Journal Article
    背景:识别高危患者并将其从初级保健医生(PCP)转诊给眼保健专业人员仍然是一个挑战。大约190万美国人由于未诊断或未治疗的眼科疾病而患有视力丧失。在眼科,人工智能(AI)用于预测青光眼进展,识别糖尿病视网膜病变(DR),并对眼部肿瘤进行分类;然而,AI尚未用于分类眼科转诊的初级保健患者。
    目的:本研究旨在构建和比较机器学习(ML)方法,适用于PCP的电子健康记录(EHR),能够将患者转诊给眼部护理专家。
    方法:访问Optum取消识别的EHR数据集,743,039例患者有5种主要视力状况(年龄相关性黄斑变性[AMD],视觉上显著的白内障,DR,青光眼,或眼表疾病[OSD])在年龄和性别上与无眼部疾病的743,039名对照完全匹配。每个患者的非眼科参数在142和182之间输入到5ML方法中:广义线性模型,L1正则化逻辑回归,随机森林,极端梯度提升(XGBoost),和J48决策树。比较每种病理的模型性能以选择最具预测性的算法。对每个结果的所有算法评估曲线下面积(AUC)。
    结果:XGBoost表现出最佳性能,显示,分别,对于视觉上有意义的白内障,预测准确性和AUC为78.6%(95%CI78.3%-78.9%)和0.878,77.4%(95%CI76.7%-78.1%)和0.858为渗出性AMD,非渗出性AMD为79.2%(95%CI78.8%-79.6%)和0.879,72.2%(95%CI69.9%-74.5%)和需要药物的OSD0.803,青光眼为70.8%(95%CI70.5%-71.1%)和0.785,85.0%(95%CI84.2%-85.8%),1型非增生性糖尿病视网膜病变(NPDR)为0.924,82.2%(95%CI80.4%-84.0%),1型增殖性糖尿病视网膜病变(PDR)为0.911,2型NPDR为81.3%(95%CI81.0%-81.6%)和0.891,2型PDR为82.1%(95%CI81.3%-82.9%)和0.900。
    结论:部署的5ML方法能够成功识别比值比(ORs)升高的患者,因此能够对患者进行分诊,对于眼病,从青光眼的2.4(95%CI2.4-2.5)到1型NPDR的5.7(95%CI5.0-6.4),平均OR为3.9。这些模型的应用可以使PCP更好地识别和分诊有可治疗眼科病理风险的患者。早期识别患有未识别的视力威胁疾病的患者可能会导致更早的治疗和减轻的经济负担。更重要的是,这样的分诊可以改善患者的生活。
    BACKGROUND: Identification and referral of at-risk patients from primary care practitioners (PCPs) to eye care professionals remain a challenge. Approximately 1.9 million Americans suffer from vision loss as a result of undiagnosed or untreated ophthalmic conditions. In ophthalmology, artificial intelligence (AI) is used to predict glaucoma progression, recognize diabetic retinopathy (DR), and classify ocular tumors; however, AI has not yet been used to triage primary care patients for ophthalmology referral.
    OBJECTIVE: This study aimed to build and compare machine learning (ML) methods, applicable to electronic health records (EHRs) of PCPs, capable of triaging patients for referral to eye care specialists.
    METHODS: Accessing the Optum deidentified EHR data set, 743,039 patients with 5 leading vision conditions (age-related macular degeneration [AMD], visually significant cataract, DR, glaucoma, or ocular surface disease [OSD]) were exact-matched on age and gender to 743,039 controls without eye conditions. Between 142 and 182 non-ophthalmic parameters per patient were input into 5 ML methods: generalized linear model, L1-regularized logistic regression, random forest, Extreme Gradient Boosting (XGBoost), and J48 decision tree. Model performance was compared for each pathology to select the most predictive algorithm. The area under the curve (AUC) was assessed for all algorithms for each outcome.
    RESULTS: XGBoost demonstrated the best performance, showing, respectively, a prediction accuracy and an AUC of 78.6% (95% CI 78.3%-78.9%) and 0.878 for visually significant cataract, 77.4% (95% CI 76.7%-78.1%) and 0.858 for exudative AMD, 79.2% (95% CI 78.8%-79.6%) and 0.879 for nonexudative AMD, 72.2% (95% CI 69.9%-74.5%) and 0.803 for OSD requiring medication, 70.8% (95% CI 70.5%-71.1%) and 0.785 for glaucoma, 85.0% (95% CI 84.2%-85.8%) and 0.924 for type 1 nonproliferative diabetic retinopathy (NPDR), 82.2% (95% CI 80.4%-84.0%) and 0.911 for type 1 proliferative diabetic retinopathy (PDR), 81.3% (95% CI 81.0%-81.6%) and 0.891 for type 2 NPDR, and 82.1% (95% CI 81.3%-82.9%) and 0.900 for type 2 PDR.
    CONCLUSIONS: The 5 ML methods deployed were able to successfully identify patients with elevated odds ratios (ORs), thus capable of patient triage, for ocular pathology ranging from 2.4 (95% CI 2.4-2.5) for glaucoma to 5.7 (95% CI 5.0-6.4) for type 1 NPDR, with an average OR of 3.9. The application of these models could enable PCPs to better identify and triage patients at risk for treatable ophthalmic pathology. Early identification of patients with unrecognized sight-threatening conditions may lead to earlier treatment and a reduced economic burden. More importantly, such triage may improve patients\' lives.
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  • 文章类型: Case Reports
    一名49岁的女性患有复杂的疝气,包括直接和间接腹股沟疝,Spigelian疝,还有Pantaloon疝气,出现在病例报告中。通过全面的体格检查和影像学检查证实了诊断。这导致了列支敦士登的修复手术。疝气的外科手术包括艰苦的解剖,疝囊减少,植入假肢网.该实例强调了个性化治疗方案的价值,并提请注意疝气手术的复杂解剖细节。分析彼此相似的情况强调了定制策略以改善患者预后的必要性。
    A 49-year-old woman with a complicated hernia presentation, including direct and indirect inguinal hernias, Spigelian hernias, and Pantaloon hernias, is presented in the case report. The diagnosis was verified by a comprehensive physical examination and imaging, which resulted in a Lichtenstein operation for repair. The surgical procedure for hernia comprised of painstaking dissection, reduction of the hernia sac, and implantation of a prosthetic mesh. The instance emphasizes the value of individualized treatment programs and draws attention to the intricate anatomical details of hernia surgery. Analyzing situations that are similar to one another highlights the necessity of customized strategies to improve patient outcomes.
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  • 文章类型: Journal Article
    背景:上呼吸道感染(URI)的抗生素处方高达50%是不合适的。减少不必要的抗生素处方的临床决策支持(CDS)系统已被实施到电子健康记录中。但是提供商对它们的使用受到限制。
    目的:作为委托协议,我们采用了经过验证的电子健康记录集成临床预测规则(iCPR)基于CDS的注册护士(RN)干预措施,包括分诊以识别低视力URI患者,然后进行CDS指导的RN访视。它于2022年2月实施,作为纽约4个学术卫生系统内43个初级和紧急护理实践的随机对照阶梯式楔形试验。威斯康星州,还有犹他州.虽然问题出现时得到了务实的解决,需要对实施障碍进行系统评估,以更好地理解和解决这些障碍。
    方法:我们进行了回顾性案例研究,从专家访谈中收集有关临床工作流程和分诊模板使用的定量和定性数据,研究调查,与实践人员进行例行检查,和图表回顾实施iCPR干预措施的第一年。在更新的CFIR(实施研究综合框架)的指导下,我们描述了在动态护理中对RN实施URIiCPR干预的初始障碍.CFIR结构被编码为缺失,中性,弱,或强大的执行因素。
    结果:在所有实施领域中发现了障碍。最强的障碍是在外部环境中发现的,随着这些因素的不断下降,影响了内部环境。由COVID-19驱动的当地条件是最强大的障碍之一,影响执业工作人员的态度,并最终促进以工作人员变化为特征的工作基础设施,RN短缺和营业额,和相互竞争的责任。有关RN实践范围的政策和法律因州和机构对这些法律的适用而异,其中一些允许RNs有更多的临床自主权。这需要在每个研究地点采用不同的研究程序来满足实践要求。增加创新的复杂性。同样,体制政策导致了与现有分诊的不同程度的兼容性,房间,和文档工作流。有限的可用资源加剧了这些工作流冲突,以及任选参与的实施气氛,很少有参与激励措施,因此,与其他临床职责相比,相对优先级较低。
    结论:在医疗保健系统之间和内部,患者摄入和分诊的工作流程存在显著差异.即使在相对简单的临床工作流程中,工作流程和文化差异明显影响了干预采用。本研究的收获可以应用于现有工作流程中的新的和创新的CDS工具的其他RN委托协议实现,以支持集成和改进吸收。在实施全系统临床护理干预时,必须考虑该州文化和工作流程的可变性,卫生系统,实践,和个人水平。
    背景:ClinicalTrials.govNCT04255303;https://clinicaltrials.gov/ct2/show/NCT04255303。
    BACKGROUND: Up to 50% of antibiotic prescriptions for upper respiratory infections (URIs) are inappropriate. Clinical decision support (CDS) systems to mitigate unnecessary antibiotic prescriptions have been implemented into electronic health records, but their use by providers has been limited.
    OBJECTIVE: As a delegation protocol, we adapted a validated electronic health record-integrated clinical prediction rule (iCPR) CDS-based intervention for registered nurses (RNs), consisting of triage to identify patients with low-acuity URI followed by CDS-guided RN visits. It was implemented in February 2022 as a randomized controlled stepped-wedge trial in 43 primary and urgent care practices within 4 academic health systems in New York, Wisconsin, and Utah. While issues were pragmatically addressed as they arose, a systematic assessment of the barriers to implementation is needed to better understand and address these barriers.
    METHODS: We performed a retrospective case study, collecting quantitative and qualitative data regarding clinical workflows and triage-template use from expert interviews, study surveys, routine check-ins with practice personnel, and chart reviews over the first year of implementation of the iCPR intervention. Guided by the updated CFIR (Consolidated Framework for Implementation Research), we characterized the initial barriers to implementing a URI iCPR intervention for RNs in ambulatory care. CFIR constructs were coded as missing, neutral, weak, or strong implementation factors.
    RESULTS: Barriers were identified within all implementation domains. The strongest barriers were found in the outer setting, with those factors trickling down to impact the inner setting. Local conditions driven by COVID-19 served as one of the strongest barriers, impacting attitudes among practice staff and ultimately contributing to a work infrastructure characterized by staff changes, RN shortages and turnover, and competing responsibilities. Policies and laws regarding scope of practice of RNs varied by state and institutional application of those laws, with some allowing more clinical autonomy for RNs. This necessitated different study procedures at each study site to meet practice requirements, increasing innovation complexity. Similarly, institutional policies led to varying levels of compatibility with existing triage, rooming, and documentation workflows. These workflow conflicts were compounded by limited available resources, as well as an implementation climate of optional participation, few participation incentives, and thus low relative priority compared to other clinical duties.
    CONCLUSIONS: Both between and within health care systems, significant variability existed in workflows for patient intake and triage. Even in a relatively straightforward clinical workflow, workflow and cultural differences appreciably impacted intervention adoption. Takeaways from this study can be applied to other RN delegation protocol implementations of new and innovative CDS tools within existing workflows to support integration and improve uptake. When implementing a system-wide clinical care intervention, considerations must be made for variability in culture and workflows at the state, health system, practice, and individual levels.
    BACKGROUND: ClinicalTrials.gov NCT04255303; https://clinicaltrials.gov/ct2/show/NCT04255303.
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  • 文章类型: Journal Article
    背景:吸烟是导致全球每年800多万人死亡的关键危险因素。必须获得有关吸烟习惯的信息,以推进研究和实施预防措施,例如筛查高危人群。在大多数国家,包括丹麦,吸烟习惯没有系统记录,充其量记录在电子健康记录(EHR)的非结构化自由文本段中.这将需要研究人员和临床医生手动浏览大量非结构化数据,这是吸烟习惯很少被纳入大型研究的主要原因之一。我们的目标是开发机器学习模型,以将患者的吸烟状况与他们的EHR进行分类。
    方法:这项研究提出了一种有效的自然语言处理(NLP)管道,能够对患者的吸烟状况进行分类并为决策提供解释。拟议的NLP管道包括四个不同的组件,它们是;(1)考虑预处理技术来解决缩写,标点符号,和其他文本不规则性,(2)四种前沿特征提取技术,即嵌入,BERT,Word2Vec,和CountVectorizer,用于提取最佳特征,(3)利用基于堆叠的集成(SE)模型和卷积长短期记忆神经网络(CNN-LSTM)来识别吸烟状态,和(4)局部可解释模型不可知的解释的应用,以解释由检测模型呈现的决策。在2009年1月1日至2018年12月31日期间,从丹麦南部地区收集了23,132例疑似肺癌患者的EHR。医学专业人员将数据注释为“吸烟者”和“非吸烟者”,并进一步分类为“活跃吸烟者”,\'前吸烟者\',和“从不吸烟”。随后,带注释的数据集用于开发二进制和多类分类模型。对各种模型体系结构之间的检测性能进行了广泛的比较。
    结果:实验验证的结果证实了模型之间的一致性。然而,对于二元分类,采用CNN-LSTM架构的BERT方法通过实现精度优于其他模型,召回,对于从不吸烟者和主动吸烟者,F1得分在97%至99%之间。在多类别分类中,CNN-LSTM架构的嵌入技术在特定类别的评估中产生了最有利的结果,从不吸烟者的绩效指标为97%,主动吸烟者的绩效指标为86%至89%,从不吸烟者的绩效指标为91-92%。
    结论:我们提出的NLP管道实现了高水平的分类性能。此外,我们给出了最佳性能检测模型的决策解释。未来的工作将扩大模型的能力,以分析更长的笔记和更广泛的类别,以最大限度地发挥其在进一步研究和筛选应用中的效用。
    BACKGROUND: Smoking is a critical risk factor responsible for over eight million annual deaths worldwide. It is essential to obtain information on smoking habits to advance research and implement preventive measures such as screening of high-risk individuals. In most countries, including Denmark, smoking habits are not systematically recorded and at best documented within unstructured free-text segments of electronic health records (EHRs). This would require researchers and clinicians to manually navigate through extensive amounts of unstructured data, which is one of the main reasons that smoking habits are rarely integrated into larger studies. Our aim is to develop machine learning models to classify patients\' smoking status from their EHRs.
    METHODS: This study proposes an efficient natural language processing (NLP) pipeline capable of classifying patients\' smoking status and providing explanations for the decisions. The proposed NLP pipeline comprises four distinct components, which are; (1) considering preprocessing techniques to address abbreviations, punctuation, and other textual irregularities, (2) four cutting-edge feature extraction techniques, i.e. Embedding, BERT, Word2Vec, and Count Vectorizer, employed to extract the optimal features, (3) utilization of a Stacking-based Ensemble (SE) model and a Convolutional Long Short-Term Memory Neural Network (CNN-LSTM) for the identification of smoking status, and (4) application of a local interpretable model-agnostic explanation to explain the decisions rendered by the detection models. The EHRs of 23,132 patients with suspected lung cancer were collected from the Region of Southern Denmark during the period 1/1/2009-31/12/2018. A medical professional annotated the data into \'Smoker\' and \'Non-Smoker\' with further classifications as \'Active-Smoker\', \'Former-Smoker\', and \'Never-Smoker\'. Subsequently, the annotated dataset was used for the development of binary and multiclass classification models. An extensive comparison was conducted of the detection performance across various model architectures.
    RESULTS: The results of experimental validation confirm the consistency among the models. However, for binary classification, BERT method with CNN-LSTM architecture outperformed other models by achieving precision, recall, and F1-scores between 97% and 99% for both Never-Smokers and Active-Smokers. In multiclass classification, the Embedding technique with CNN-LSTM architecture yielded the most favorable results in class-specific evaluations, with equal performance measures of 97% for Never-Smoker and measures in the range of 86 to 89% for Active-Smoker and 91-92% for Never-Smoker.
    CONCLUSIONS: Our proposed NLP pipeline achieved a high level of classification performance. In addition, we presented the explanation of the decision made by the best performing detection model. Future work will expand the model\'s capabilities to analyze longer notes and a broader range of categories to maximize its utility in further research and screening applications.
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  • DOI:
    文章类型: Case Reports
    背景:神经反馈(NF)疗法是使用操作性调节的大脑训练,包括实时显示大脑活动,以教导人们如何调节大脑功能。我们想为7/10经历严重创伤事件的患者提供治疗,包括身体伤害并伴有两个月的睡眠困难,噩梦,侵入性的想法,情绪调节困难,注意力难以集中。由于情绪调节的复杂性和困难伴随着严重的睡眠障碍,决定结合神经反馈进行药物治疗。除了药物治疗之外,经过几次培训,观察到明显的松弛,注意力得到改善,患者能够恢复工作和正常的社会功能。此外,侵入性思维在强度和频率上都有所下降。
    BACKGROUND: Neurofeedback (NF) therapy is brain training using operant conditioning including real-time displays of brain activity to teach people how to regulate their brain function. We would like to present a treatment for a patient who experienced severe traumatic events on 7/10 including physical injury accompanied by difficulty sleeping for two months, nightmares, intrusive thoughts, difficulties in emotional regulation and difficulty in concentrating. Due to the complexity and difficulties in emotional regulation accompanied by severe sleep disturbances, it was decided to treat with medication in combination with neurofeedback. After several training sessions in addition to pharmaceutical treatment, significant relaxation was observed, there was an improvement in concentration and the patient was able to return to his work and normal social functioning. In addition, intrusive thoughts decreased in intensity and frequency.
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  • 文章类型: Randomized Controlled Trial
    背景:电子健康记录(EHR)的推出代表了德国医疗保健系统数字化转型的核心组成部分。虽然EHR承诺更有效,更安全,从系统的角度对患者进行更快的治疗,EHR的成功实施在很大程度上取决于患者。在最近的一项调查中,四分之三的德国人表示他们打算使用EHR,而其他研究表明,使用技术的意图并不是实际使用的可靠和充分的预测指标。
    目的:控制患者使用EHR的意图,我们调查了与疾病时程相关的疾病特异性风险认知和疾病相关的病耻感是否解释了患者将医学报告上传到EHR的决策中的额外差异.
    方法:在一项在线用户研究中,241名德国参与者被要求与随机分配的医学报告互动,该报告在疾病相关的污名(高与低)和疾病时间过程(急性与慢性)方面有系统的变化,并决定是否将其上传到EHR。
    结果:疾病相关的污名(比值比0.154,P<.001)抵消了使用意向和上传决定之间的一般正相关关系(比值比2.628,P<.001),而疾病的时间进程显示没有影响。
    结论:即使患者通常打算使用EHR,与社会污名相关的疾病相关的风险认知可能会阻止人们将相关医疗报告上传到EHR。为了确保这一关键技术在数字化医疗保健系统中的可靠使用,全面保证有关EHR安全标准的透明和易于理解的信息,即使对于通常赞成使用EHR的人群也是如此。
    BACKGROUND: The rollout of the electronic health record (EHR) represents a central component of the digital transformation of the German health care system. Although the EHR promises more effective, safer, and faster treatment of patients from a systems perspective, the successful implementation of the EHR largely depends on the patient. In a recent survey, 3 out of 4 Germans stated that they intend to use the EHR, whereas other studies show that the intention to use a technology is not a reliable and sufficient predictor of actual use.
    OBJECTIVE: Controlling for patients\' intention to use the EHR, we investigated whether disease-specific risk perceptions related to the time course of the disease and disease-related stigma explain the additional variance in patients\' decisions to upload medical reports to the EHR.
    METHODS: In an online user study, 241 German participants were asked to interact with a randomly assigned medical report that varied systematically in terms of disease-related stigma (high vs low) and disease time course (acute vs chronic) and to decide whether to upload it to the EHR.
    RESULTS: Disease-related stigma (odds ratio 0.154, P<.001) offset the generally positive relationship between intention to use and the upload decision (odds ratio 2.628, P<.001), whereas the disease time course showed no effect.
    CONCLUSIONS: Even if patients generally intend to use the EHR, risk perceptions such as those related to diseases associated with social stigma may deter people from uploading related medical reports to the EHR. To ensure the reliable use of this key technology in a digitalized health care system, transparent and easy-to-comprehend information about the safety standards of the EHR are warranted across the board, even for populations that are generally in favor of using the EHR.
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  • 文章类型: Journal Article
    背景:由于诊断较晚,胰腺导管腺癌(PDAC)的生存率仍然很低。电子健康记录(EHR)可用于研究这种罕见疾病,但目前在美国尚不存在用于识别PDAC的有效算法。
    目的:使用退伍军人健康管理局(VHA)EHR数据开发并验证一种用于识别PDAC患者的算法。
    方法:我们开发了两种算法来识别2002年至2023年在VHA中患有PDAC的患者。算法要求在以下领域中≥1或≥2个领域诊断外分泌胰腺癌:(i)VA国家癌症注册,(ii)住院患者,或(iii)肿瘤学环境中的门诊就诊。在符合上述标准≥1的个体中,3名胃肠病学家对100人的随机样本进行审查,以判定PDAC状态.我们还裁定50名患者不符合任何一种算法的资格。这些患者作为住院患者死亡,并且碱性磷酸酶值在满足PDAC的上述标准中≥2的患者的四分位数范围内。这些专家裁决使我们能够计算算法的阳性和阴性预测值。
    结果:在1,080万人中,25,533符合≥1个标准(PPV83.0%,卡帕统计0.93)和13,693名个体符合≥2标准(PPV95.2%,卡帕统计量1.00)。PDAC的NPV为100%。
    结论:一种算法结合了容易获得的EHR数据元素来识别PDAC患者,获得了优异的PPV和NPV。该算法可能使PDAC的未来流行病学研究成为可能。
    BACKGROUND: Survival in pancreatic ductal adenocarcinoma (PDAC) remains poor due to late diagnosis. Electronic Health Records (EHRs) can be used to study this rare disease, but validated algorithms to identify PDAC in the United States EHRs do not currently exist.
    OBJECTIVE: To develop and validate an algorithm using Veterans Health Administration (VHA) EHR data for the identification of patients with PDAC.
    METHODS: We developed two algorithms to identify patients with PDAC in the VHA from 2002 to 2023. The algorithms required diagnosis of exocrine pancreatic cancer in either ≥ 1 or ≥ 2 of the following domains: (i) the VA national cancer registry, (ii) an inpatient encounter, or (iii) an outpatient encounter in an oncology setting. Among individuals identified with ≥ 1 of the above criteria, a random sample of 100 were reviewed by three gastroenterologists to adjudicate PDAC status. We also adjudicated fifty patients not qualifying for either algorithm. These patients died as inpatients and had alkaline phosphatase values within the interquartile range of patients who met ≥ 2 of the above criteria for PDAC. These expert adjudications allowed us to calculate the positive and negative predictive value of the algorithms.
    RESULTS: Of 10.8 million individuals, 25,533 met ≥ 1 criteria (PPV 83.0%, kappa statistic 0.93) and 13,693 individuals met ≥ 2 criteria (PPV 95.2%, kappa statistic 1.00). The NPV for PDAC was 100%.
    CONCLUSIONS: An algorithm incorporating readily available EHR data elements to identify patients with PDAC achieved excellent PPV and NPV. This algorithm is likely to enable future epidemiologic studies of PDAC.
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  • 文章类型: Journal Article
    COVID-19大流行强调了对全国性卫生信息技术解决方案的需求,该解决方案可以在手动病例报告的基础上进行改进,并减轻美国医疗保健系统的临床和行政负担。我们描述了发展,实施,以及在全国范围内扩展电子案件报告(eCR),包括其对公共卫生监测和大流行准备的影响。
    多学科团队开发并实施了基于标准的,共享,可扩展,以及2014-2020年可互操作的eCR基础设施。从2020年1月27日至2023年1月7日,该团队进行了全国范围的扩大工作,并确定了具有eCR功能的电子健康记录(EHR)产品的数量,基础设施内可用的可报告条件的数量,以及卫生保健组织(HCO)和管辖公共卫生机构(PHA)与eCR基础设施的技术联系。该团队还进行了数据质量研究,以确定HCO是否停止手动病例报告和eCR及时性的早期结果。
    在研究期间,开发或开发中的具有eCR功能的EHR产品数量增加了11倍(从3个增加到33个),可报告条件的数量增加了28倍(从6个增加到173个),连接到eCR基础设施的HCO数量增加了143倍(从153个增加到22000个),与eCR基础设施连接的管辖PHA数量增加了2.75倍(从24个增加到66个)。使用PHA进行的数据质量审查导致部分HCO在13个PHA辖区中停止手动病例报告并使用eCR独家病例报告。eCR的时效性<1分钟。
    eCR的发展可以通过产生比人工病例报告更及时和完整的数据,同时减轻报告负担,从而彻底改变公共卫生病例监测。
    UNASSIGNED: The COVID-19 pandemic highlighted the need for a nationwide health information technology solution that could improve upon manual case reporting and decrease the clinical and administrative burden on the US health care system. We describe the development, implementation, and nationwide expansion of electronic case reporting (eCR), including its effect on public health surveillance and pandemic readiness.
    UNASSIGNED: Multidisciplinary teams developed and implemented a standards-based, shared, scalable, and interoperable eCR infrastructure during 2014-2020. From January 27, 2020, to January 7, 2023, the team conducted a nationwide scale-up effort and determined the number of eCR-capable electronic health record (EHR) products, the number of reportable conditions available within the infrastructure, and technical connections of health care organizations (HCOs) and jurisdictional public health agencies (PHAs) to the eCR infrastructure. The team also conducted data quality studies to determine whether HCOs were discontinuing manual case reporting and early results of eCR timeliness.
    UNASSIGNED: During the study period, the number of eCR-capable EHR products developed or in development increased 11-fold (from 3 to 33), the number of reportable conditions available increased 28-fold (from 6 to 173), the number of HCOs connected to the eCR infrastructure increased 143-fold (from 153 to 22 000), and the number of jurisdictional PHAs connected to the eCR infrastructure increased 2.75-fold (from 24 to 66). Data quality reviews with PHAs resulted in select HCOs discontinuing manual case reporting and using eCR-exclusive case reporting in 13 PHA jurisdictions. The timeliness of eCR was <1 minute.
    UNASSIGNED: The growth of eCR can revolutionize public health case surveillance by producing data that are more timely and complete than manual case reporting while reducing reporting burden.
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