Decision Support Systems, Clinical

决策支持系统 ,临床
  • 文章类型: Journal Article
    背景:医学知识图谱提供了可解释的决策支持,帮助临床医生提供及时的诊断和治疗建议。然而,在现实世界的临床实践中,患者前往不同的医院寻求各种医疗服务,导致不同医院的患者数据分散。由于数据安全问题,数据碎片化限制了知识图的应用,因为单医院数据无法为生成精确的决策支持和全面的解释提供完整的证据。研究知识图谱系统多中心集成的新方法,信息敏感的医疗环境,使用零散的患者记录进行决策支持,同时保持数据隐私和安全性。
    目的:本研究旨在提出一种面向电子健康记录(EHR)的知识图谱系统,用于与多中心零散的患者医疗数据进行协作推理,同时保护数据隐私。
    方法:该研究引入了EHR知识图谱框架和新的协作推理过程,用于利用多中心碎片信息。该系统部署在每个医院中,并使用统一的语义结构和观察医疗结果伙伴关系(OMOP)词汇来标准化本地EHR数据集。该系统将本地EHR数据转换为语义格式并执行语义推理以生成中间推理结果。生成的中间发现使用hypernym概念来分离原始医疗数据。中间发现和哈希加密的患者身份通过区块链网络进行同步。多中心中间发现进行了最终推理和临床决策支持,而无需收集原始EHR数据。
    结果:通过一项应用研究对该系统进行了评估,该研究涉及利用多中心片段化的EHR数据来提醒非肾脏病临床医生注意被忽略的慢性肾脏病(CKD)患者。该研究涵盖了3家医院的非肾病科1185名患者。患者至少访问了两家医院。其中,通过使用多中心EHR数据进行协作推理,确定124例患者符合CKD诊断标准,而单独来自个别医院的数据不能促进这些患者CKD的识别.临床医生的评估表明,78/91(86%)患者为CKD阳性。
    结论:所提出的系统能够有效地利用多中心片段化的EHR数据进行临床应用。应用研究显示了该系统具有迅速和全面的决策支持的临床优势。
    BACKGROUND: The medical knowledge graph provides explainable decision support, helping clinicians with prompt diagnosis and treatment suggestions. However, in real-world clinical practice, patients visit different hospitals seeking various medical services, resulting in fragmented patient data across hospitals. With data security issues, data fragmentation limits the application of knowledge graphs because single-hospital data cannot provide complete evidence for generating precise decision support and comprehensive explanations. It is important to study new methods for knowledge graph systems to integrate into multicenter, information-sensitive medical environments, using fragmented patient records for decision support while maintaining data privacy and security.
    OBJECTIVE: This study aims to propose an electronic health record (EHR)-oriented knowledge graph system for collaborative reasoning with multicenter fragmented patient medical data, all the while preserving data privacy.
    METHODS: The study introduced an EHR knowledge graph framework and a novel collaborative reasoning process for utilizing multicenter fragmented information. The system was deployed in each hospital and used a unified semantic structure and Observational Medical Outcomes Partnership (OMOP) vocabulary to standardize the local EHR data set. The system transforms local EHR data into semantic formats and performs semantic reasoning to generate intermediate reasoning findings. The generated intermediate findings used hypernym concepts to isolate original medical data. The intermediate findings and hash-encrypted patient identities were synchronized through a blockchain network. The multicenter intermediate findings were collaborated for final reasoning and clinical decision support without gathering original EHR data.
    RESULTS: The system underwent evaluation through an application study involving the utilization of multicenter fragmented EHR data to alert non-nephrology clinicians about overlooked patients with chronic kidney disease (CKD). The study covered 1185 patients in nonnephrology departments from 3 hospitals. The patients visited at least two of the hospitals. Of these, 124 patients were identified as meeting CKD diagnosis criteria through collaborative reasoning using multicenter EHR data, whereas the data from individual hospitals alone could not facilitate the identification of CKD in these patients. The assessment by clinicians indicated that 78/91 (86%) patients were CKD positive.
    CONCLUSIONS: The proposed system was able to effectively utilize multicenter fragmented EHR data for clinical application. The application study showed the clinical benefits of the system with prompt and comprehensive decision support.
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  • 文章类型: Journal Article
    背景:用药错误和相关药物不良事件(ADE)是全球发病率和死亡率的主要原因。近年来,预防用药错误已成为医疗保健系统的高度优先事项。为了提高用药安全性,计算机化的临床决策支持系统(CDSS)越来越多地集成到药物治疗过程中。因此,越来越多的研究调查了CDSS的药物安全性相关有效性.然而,使用的结果度量是异质的,导致不明确的证据。这项研究的主要目的是总结和分类用于评估CDSS对初级和长期护理药物安全性影响的介入研究的结果。
    方法:我们系统地搜索了PubMed,Embase,CINAHL,和Cochrane图书馆用于评估CDSS靶向药物安全性和患者相关结局的干预研究。我们提取了方法论特征,纳入研究的结果和实证结果。结果被分配到三个主要类别:与过程相关的,与伤害有关的,和成本相关。使用证据项目风险偏差工具评估偏差风险。
    结果:32项研究符合纳入标准。几乎所有的研究(n=31)都使用了过程相关的结果,其次是与伤害相关的结果(n=11)。只有三项研究使用了与成本相关的结果。大多数研究仅使用一个类别的结果,没有研究使用所有三个类别的结果。纳入研究的结果的定义和可操作性差异很大,甚至在结果类别中。总的来说,关于CDSS有效性的证据参差不齐。15项研究中有9项与过程相关的主要结果(60%),但仅有五分之一的与伤害相关的主要结果(20%)。纳入的研究面临许多方法论问题,这些问题限制了其结果的可比性和普遍性。
    结论:关于CDSS有效性的证据目前尚无定论,部分原因是文献中不一致的结果定义和方法学问题。因此,需要额外的高质量研究来提供CDSS有效性的全面说明。这些研究应遵循既定的方法学准则和建议,并使用一套全面的危害性,与过程和成本相关的结果,具有商定和一致的定义。
    CRD42023464746。
    BACKGROUND: Medication errors and associated adverse drug events (ADE) are a major cause of morbidity and mortality worldwide. In recent years, the prevention of medication errors has become a high priority in healthcare systems. In order to improve medication safety, computerized Clinical Decision Support Systems (CDSS) are increasingly being integrated into the medication process. Accordingly, a growing number of studies have investigated the medication safety-related effectiveness of CDSS. However, the outcome measures used are heterogeneous, leading to unclear evidence. The primary aim of this study is to summarize and categorize the outcomes used in interventional studies evaluating the effects of CDSS on medication safety in primary and long-term care.
    METHODS: We systematically searched PubMed, Embase, CINAHL, and Cochrane Library for interventional studies evaluating the effects of CDSS targeting medication safety and patient-related outcomes. We extracted methodological characteristics, outcomes and empirical findings from the included studies. Outcomes were assigned to three main categories: process-related, harm-related, and cost-related. Risk of bias was assessed using the Evidence Project risk of bias tool.
    RESULTS: Thirty-two studies met the inclusion criteria. Almost all studies (n = 31) used process-related outcomes, followed by harm-related outcomes (n = 11). Only three studies used cost-related outcomes. Most studies used outcomes from only one category and no study used outcomes from all three categories. The definition and operationalization of outcomes varied widely between the included studies, even within outcome categories. Overall, evidence on CDSS effectiveness was mixed. A significant intervention effect was demonstrated by nine of fifteen studies with process-related primary outcomes (60%) but only one out of five studies with harm-related primary outcomes (20%). The included studies faced a number of methodological problems that limit the comparability and generalizability of their results.
    CONCLUSIONS: Evidence on the effectiveness of CDSS is currently inconclusive due in part to inconsistent outcome definitions and methodological problems in the literature. Additional high-quality studies are therefore needed to provide a comprehensive account of CDSS effectiveness. These studies should follow established methodological guidelines and recommendations and use a comprehensive set of harm-, process- and cost-related outcomes with agreed-upon and consistent definitions.
    UNASSIGNED: CRD42023464746.
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  • 文章类型: Journal Article
    COVID-19大流行继续挑战全球医疗保健系统,需要用于临床决策支持的高级工具。在COVID-19症状学和疾病严重程度预测的复杂性中,迫切需要强大的决策支持系统,以帮助医疗保健专业人员及时做出明智的决策。为了应对这一紧迫的需求,我们介绍BayesCovid,集成贝叶斯网络模型和深度学习技术的新型决策支持系统。BayesCovid自动化数据预处理,并利用先进的计算方法来解开COVID-19症状动态中的复杂模式。通过结合贝叶斯网络和贝叶斯深度学习模型,BayesCovid提供了一个全面的解决方案,用于发现症状和预测疾病严重程度之间的隐藏关系。实验验证表明,BayesCovid具有很高的预测精度(83.52-98.97%)。我们的工作代表了在解决迫切需要为管理COVID-19病例的复杂性量身定制的临床决策支持系统方面迈出的重要一步。通过为医疗保健专业人员提供从复杂的计算分析中得出的可行见解,BayesCovid旨在加强临床决策,优化资源分配,并在与COVID-19大流行的持续斗争中改善患者的预后。
    The COVID-19 pandemic continues to challenge healthcare systems globally, necessitating advanced tools for clinical decision support. Amidst the complexity of COVID-19 symptomatology and disease severity prediction, there is a critical need for robust decision support systems to aid healthcare professionals in timely and informed decision-making. In response to this pressing demand, we introduce BayesCovid, a novel decision support system integrating Bayesian network models and deep learning techniques. BayesCovid automates data preprocessing and leverages advanced computational methods to unravel intricate patterns in COVID-19 symptom dynamics. By combining Bayesian networks and Bayesian deep learning models, BayesCovid offers a comprehensive solution for uncovering hidden relationships between symptoms and predicting disease severity. Experimental validation demonstrates BayesCovid \'s high prediction accuracy (83.52-98.97%). Our work represents a significant stride in addressing the urgent need for clinical decision support systems tailored to the complexities of managing COVID-19 cases. By providing healthcare professionals with actionable insights derived from sophisticated computational analysis, BayesCovid aims to enhance clinical decision-making, optimise resource allocation, and improve patient outcomes in the ongoing battle against the COVID-19 pandemic.
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  • 文章类型: Editorial
    暂无摘要。
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  • 文章类型: Journal Article
    背景:COVID-19大流行对急性冠状动脉综合征(ACS)患者的护理质量和临床结局的有害影响,因此需要在大流行环境下对预后预测模型进行严格的重新评估。本研究旨在阐明大流行期间ACS患者30天死亡率预测模型的适应性。
    方法:纳入了2020年12月至2023年4月期间来自32个机构的2041例连续ACS患者。数据集包括因ACS入院并在住院期间接受冠状动脉造影诊断的患者。全球急性冠状动脉事件注册(GRACE)和机器学习模型的预测准确性,KOTOMI,对ST段抬高型急性心肌梗死(STEMI)和非ST段抬高型急性冠脉综合征(NSTE-ACS)患者的30天死亡率进行了评估.
    结果:STEMI的受试者工作特征曲线下面积(AUROC)在GRACE中为0.85(95%CI0.81至0.89),在KOTOMI中为0.87(95%CI0.82至0.91)。0.020(95%CI-0.098-0.13)差异不显著。对于NSTE-ACS,GRACE中各自的AUROC为0.82(95%CI0.73至0.91),KOTOMI中的AUROC为0.83(95%CI0.74至0.91),也显示差异不显著0.010(95%CI-0.023至0.25)。两种模型的预测准确性在STEMI患者中具有一致性,而在大流行期之间,NSTE-ACS患者的差异不大。
    结论:即使在大流行时期,预测模型也能保持ACS患者30天死亡率的高准确性。尽管观察到边际变化。
    BACKGROUND: The detrimental repercussions of the COVID-19 pandemic on the quality of care and clinical outcomes for patients with acute coronary syndrome (ACS) necessitate a rigorous re-evaluation of prognostic prediction models in the context of the pandemic environment. This study aimed to elucidate the adaptability of prediction models for 30-day mortality in patients with ACS during the pandemic periods.
    METHODS: A total of 2041 consecutive patients with ACS were included from 32 institutions between December 2020 and April 2023. The dataset comprised patients who were admitted for ACS and underwent coronary angiography for the diagnosis during hospitalisation. The prediction accuracy of the Global Registry of Acute Coronary Events (GRACE) and a machine learning model, KOTOMI, was evaluated for 30-day mortality in patients with ST-elevation acute myocardial infarction (STEMI) and non-ST-elevation acute coronary syndrome (NSTE-ACS).
    RESULTS: The area under the receiver operating characteristics curve (AUROC) was 0.85 (95% CI 0.81 to 0.89) in the GRACE and 0.87 (95% CI 0.82 to 0.91) in the KOTOMI for STEMI. The difference of 0.020 (95% CI -0.098-0.13) was not significant. For NSTE-ACS, the respective AUROCs were 0.82 (95% CI 0.73 to 0.91) in the GRACE and 0.83 (95% CI 0.74 to 0.91) in the KOTOMI, also demonstrating insignificant difference of 0.010 (95% CI -0.023 to 0.25). The prediction accuracy of both models had consistency in patients with STEMI and insignificant variation in patients with NSTE-ACS between the pandemic periods.
    CONCLUSIONS: The prediction models maintained high accuracy for 30-day mortality of patients with ACS even in the pandemic periods, despite marginal variation observed.
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  • 文章类型: Journal Article
    背景:肺活量测定是一种即时肺功能检查,有助于支持慢性肺部疾病的诊断和监测。在初级保健中,肺活量测定的质量和解释准确性是可变的。这项研究旨在评估人工智能(AI)决策支持软件是否提高了初级保健临床医生在解释肺活量测定方面的表现,对照参考标准(专家解释)。
    方法:并行,两组,统计学家盲目,英国初级保健临床医生的随机对照试验,指的是谁,或解释,肺活量测定。接受过呼吸医学专科培训至顾问级别的人员被排除在外。228名初级保健临床医生参与者的最低目标将以1:1的分配进行随机分配,以评估50名去识别,通过具有(干预组)或不具有(对照组)AI决策支持软件报告的在线平台进行真实世界患者肺活量测定会议。结果将涵盖初级保健临床医生肺活量测定解释表现,包括技术质量评估措施,肺活量测定模式识别和诊断预测,与参考标准相比。还将评估临床医生对肺活量测定解释的自我评估信心。主要结果是50次肺活量测定中参与者的首选诊断与参考诊断相符的比例。非配对t检验和协方差分析将用于估计干预组和对照组之间主要结果的差异。
    背景:威尔士卫生研究局已对该研究进行了审查并给予了好评(参考:22/HRA/5023)。结果将提交在同行评审的期刊上发表,在相关的国家和国际会议上提出,通过社交媒体传播,患者和公共路线,并直接与利益相关者共享。
    背景:NCT05933694。
    BACKGROUND: Spirometry is a point-of-care lung function test that helps support the diagnosis and monitoring of chronic lung disease. The quality and interpretation accuracy of spirometry is variable in primary care. This study aims to evaluate whether artificial intelligence (AI) decision support software improves the performance of primary care clinicians in the interpretation of spirometry, against reference standard (expert interpretation).
    METHODS: A parallel, two-group, statistician-blinded, randomised controlled trial of primary care clinicians in the UK, who refer for, or interpret, spirometry. People with specialist training in respiratory medicine to consultant level were excluded. A minimum target of 228 primary care clinician participants will be randomised with a 1:1 allocation to assess fifty de-identified, real-world patient spirometry sessions through an online platform either with (intervention group) or without (control group) AI decision support software report. Outcomes will cover primary care clinicians\' spirometry interpretation performance including measures of technical quality assessment, spirometry pattern recognition and diagnostic prediction, compared with reference standard. Clinicians\' self-rated confidence in spirometry interpretation will also be evaluated. The primary outcome is the proportion of the 50 spirometry sessions where the participant\'s preferred diagnosis matches the reference diagnosis. Unpaired t-tests and analysis of covariance will be used to estimate the difference in primary outcome between intervention and control groups.
    BACKGROUND: This study has been reviewed and given favourable opinion by Health Research Authority Wales (reference: 22/HRA/5023). Results will be submitted for publication in peer-reviewed journals, presented at relevant national and international conferences, disseminated through social media, patient and public routes and directly shared with stakeholders.
    BACKGROUND: NCT05933694.
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  • 文章类型: Journal Article
    背景:该项目是在南非夸祖鲁-纳塔尔省(KZN)开发新的眼科电子注册表的更广泛努力的一部分。注册应包括一个临床决策支持系统,以减少人为错误的可能性,并应适用于我们多元化的医院,无论是电子健康记录(EHR)还是纸质记录。
    方法:纳入2019年和2020年连续白内障手术出院的术后处方。KZN的四家选定的州立医院促进了比较,每家医院都有不同的处方药物系统:电子,打勾表,墨水印章和手写的健康记录。将错误类型与医院系统进行比较,以识别易于纠正的错误。通过四步过程寻求潜在的错误补救措施。
    结果:1661个处方中有1307个错误,分为20种错误类型。技术水平的提高并没有降低错误率,但确实减少了错误类型的种类。高科技脚本的错误最多,但是当删除易于纠正的错误时,EHR的错误率最低,手写的错误率最高。
    结论:不断增加的技术,本身,似乎没有减少处方错误。技术确实如此,然而,似乎减少了潜在错误类型的可变性,这使得许多错误更容易纠正。贡献:定期审核是大大减少处方错误的有效工具,技术水平越高,这些审计干预措施越有效。通过使用混合电子注册表来打印正式的医疗记录,可以将此优点转移到纸质笔记上。
    BACKGROUND:  This project is part of a broader effort to develop a new electronic registry for ophthalmology in the KwaZulu-Natal (KZN) province in South Africa. The registry should include a clinical decision support system that reduces the potential for human error and should be applicable for our diversity of hospitals, whether electronic health record (EHR) or paper-based.
    METHODS:  Post-operative prescriptions of consecutive cataract surgery discharges were included for 2019 and 2020. Comparisons were facilitated by the four chosen state hospitals in KZN each having a different system for prescribing medications: Electronic, tick sheet, ink stamp and handwritten health records. Error types were compared to hospital systems to identify easily-correctable errors. Potential error remedies were sought by a four-step process.
    RESULTS:  There were 1307 individual errors in 1661 prescriptions, categorised into 20 error types. Increasing levels of technology did not decrease error rates but did decrease the variety of error types. High technology scripts had the most errors but when easily correctable errors were removed, EHRs had the lowest error rates and handwritten the highest.
    CONCLUSIONS:  Increasing technology, by itself, does not seem to reduce prescription error. Technology does, however, seem to decrease the variability of potential error types, which make many of the errors simpler to correct.Contribution: Regular audits are an effective tool to greatly reduce prescription errors, and the higher the technology level, the more effective these audit interventions become. This advantage can be transferred to paper-based notes by utilising a hybrid electronic registry to print the formal medical record.
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  • 文章类型: Journal Article
    先进的诊断成像模式,包括超声检查,计算机断层扫描,磁共振成像(MRI),是评估和管理急诊儿科患者的关键组成部分。成像技术的进步导致了更快,更准确的工具来改善患者护理的可用性。尽管取得了这些进展,这对医生来说很重要,医师助理,和护士从业人员了解与儿童高级成像相关的风险和局限性,并限制被认为价值低的成像研究,如果可能的话。本技术报告提供了针对急诊科通常考虑高级成像的特定条件的成像策略摘要。作为政策声明的伴奏,本文件提供了优化高级成像的资源和策略,包括临床决策支持机制,远程放射学,共同决策,以及将接受明确治疗的患者推迟成像的理由。
    Advanced diagnostic imaging modalities, including ultrasonography, computed tomography, and magnetic resonance imaging (MRI), are key components in the evaluation and management of pediatric patients presenting to the emergency department. Advances in imaging technology have led to the availability of faster and more accurate tools to improve patient care. Notwithstanding these advances, it is important for physicians, physician assistants, and nurse practitioners to understand the risks and limitations associated with advanced imaging in children and to limit imaging studies that are considered low value, when possible. This technical report provides a summary of imaging strategies for specific conditions where advanced imaging is commonly considered in the emergency department. As an accompaniment to the policy statement, this document provides resources and strategies to optimize advanced imaging, including clinical decision support mechanisms, teleradiology, shared decision-making, and rationale for deferred imaging for patients who will be transferred for definitive care.
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  • 文章类型: Journal Article
    背景:临床医学为应用机器学习(ML)模型提供了一个有前途的领域。然而,尽管许多研究在医疗数据分析中使用ML,只有一小部分影响了临床护理。本文强调了在医疗数据分析中使用ML的重要性,认识到单独的ML可能无法充分捕获临床数据的全部复杂性,从而倡导在ML中整合医学领域知识。
    方法:该研究对将医学知识整合到ML中的先前努力进行了全面回顾,并将这些整合策略映射到ML管道的各个阶段。包括数据预处理,特征工程,模型训练,和输出评估。该研究通过糖尿病预测的案例研究进一步探讨了这种整合的意义和影响。这里,临床知识,包含规则,因果网络,间隔,和公式,集成在ML管道的每个阶段,产生了一系列集成模型。
    结果:这些发现突出了集成在准确性方面的好处,可解释性,数据效率,并遵守临床指南。在一些情况下,集成模型的性能优于纯数据驱动的方法,强调领域知识通过改进的泛化来增强ML模型的潜力。在其他情况下,整合有助于增强模型的可解释性,并确保符合既定的临床指南.值得注意的是,知识集成也被证明在有限的数据场景下有效地保持性能。
    结论:通过临床案例研究说明各种整合策略,这项工作为激励和促进未来的整合努力提供了指导。此外,该研究认为,需要完善领域知识表示并微调其对ML模型的贡献,这是对集成的两个主要挑战,并旨在促进该方向的进一步研究。
    BACKGROUND: Clinical medicine offers a promising arena for applying Machine Learning (ML) models. However, despite numerous studies employing ML in medical data analysis, only a fraction have impacted clinical care. This article underscores the importance of utilising ML in medical data analysis, recognising that ML alone may not adequately capture the full complexity of clinical data, thereby advocating for the integration of medical domain knowledge in ML.
    METHODS: The study conducts a comprehensive review of prior efforts in integrating medical knowledge into ML and maps these integration strategies onto the phases of the ML pipeline, encompassing data pre-processing, feature engineering, model training, and output evaluation. The study further explores the significance and impact of such integration through a case study on diabetes prediction. Here, clinical knowledge, encompassing rules, causal networks, intervals, and formulas, is integrated at each stage of the ML pipeline, resulting in a spectrum of integrated models.
    RESULTS: The findings highlight the benefits of integration in terms of accuracy, interpretability, data efficiency, and adherence to clinical guidelines. In several cases, integrated models outperformed purely data-driven approaches, underscoring the potential for domain knowledge to enhance ML models through improved generalisation. In other cases, the integration was instrumental in enhancing model interpretability and ensuring conformity with established clinical guidelines. Notably, knowledge integration also proved effective in maintaining performance under limited data scenarios.
    CONCLUSIONS: By illustrating various integration strategies through a clinical case study, this work provides guidance to inspire and facilitate future integration efforts. Furthermore, the study identifies the need to refine domain knowledge representation and fine-tune its contribution to the ML model as the two main challenges to integration and aims to stimulate further research in this direction.
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  • 文章类型: Journal Article
    基于人工智能(AI)的临床决策支持系统正在依靠更大量和种类的二次使用数据。然而,不确定性,可变性,现实世界数据环境中的偏见仍然对健康人工智能的发展构成重大挑战,其常规临床使用,及其监管框架。健康AI应该在其整个生命周期中对现实环境具有弹性,包括培训和预测阶段以及生产过程中的维护,健康人工智能法规应该相应地发展。数据质量问题,随时间或跨站点的可变性,信息不确定性,人机交互,基本权利保障是最相关的挑战之一。如果健康人工智能没有针对这些现实世界的数据效应进行弹性设计,数据驱动的医疗决策可能会危及数百万人的安全和基本权利。在这个观点中,我们回顾挑战,requirements,和方法在健康中的弹性AI,并提供了一个研究框架,以提高下一代基于AI的临床决策支持的可信性。
    Artificial intelligence (AI)-based clinical decision support systems are gaining momentum by relying on a greater volume and variety of secondary use data. However, the uncertainty, variability, and biases in real-world data environments still pose significant challenges to the development of health AI, its routine clinical use, and its regulatory frameworks. Health AI should be resilient against real-world environments throughout its lifecycle, including the training and prediction phases and maintenance during production, and health AI regulations should evolve accordingly. Data quality issues, variability over time or across sites, information uncertainty, human-computer interaction, and fundamental rights assurance are among the most relevant challenges. If health AI is not designed resiliently with regard to these real-world data effects, potentially biased data-driven medical decisions can risk the safety and fundamental rights of millions of people. In this viewpoint, we review the challenges, requirements, and methods for resilient AI in health and provide a research framework to improve the trustworthiness of next-generation AI-based clinical decision support.
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