Clinical data

临床数据
  • 文章类型: Journal Article
    多重耐药细菌的上升是公认的对世界健康的威胁,需要实施有效的治疗。这一问题已被世界卫生组织确定为全球议程上的最高优先事项。某些菌株,如光滑念珠菌,克鲁斯念珠菌,念珠菌,耳念珠菌,选择隐球菌物种,和机会性曲霉或镰刀菌,对许多抗真菌药物有显著的内在耐药性。这种固有的耐药性和随后的次优临床结果强调了增强治疗替代方案和管理方案的关键必要性。有效治疗真菌感染的挑战,加上研发新药的时间过长,强调了探索替代治疗途径的迫切需要。其中,药物再利用成为一种特别有希望和迅速的解决方案,提供具有成本效益的解决方案和安全利益。在对抗危及生命的耐药性真菌感染的斗争中,重新利用现有药物的想法鼓励了对已建立和新化合物作为最后手段的研究。本章旨在提供当代抗真菌药物的全面概述,以及它们的主要抵抗机制。此外,它旨在深入了解非传统药物的抗菌特性,从而为抗真菌疗法的发展提供了一个整体的视角。
    The rise of multidrug-resistant bacteria is a well-recognized threat to world health, necessitating the implementation of effective treatments. This issue has been identified as a top priority on the global agenda by the World Health Organization. Certain strains, such as Candida glabrata, Candida krusei, Candida lusitaniae, Candida auris, select cryptococcal species, and opportunistic Aspergillus or Fusarium species, have significant intrinsic resistance to numerous antifungal medicines. This inherent resistance and subsequent suboptimal clinical outcomes underscore the critical imperative for enhanced therapeutic alternatives and management protocols. The challenge of effectively treating fungal infections, compounded by the protracted timelines involved in developing novel drugs, underscores the pressing need to explore alternative therapeutic avenues. Among these, drug repurposing emerges as a particularly promising and expeditious solution, providing cost-effective solutions and safety benefits. In the fight against life-threatening resistant fungal infections, the idea of repurposing existing medications has encouraged research into both established and new compounds as a last-resort therapy. This chapter seeks to provide a comprehensive overview of contemporary antifungal drugs, as well as their key resistance mechanisms. Additionally, it seeks to provide insight into the antimicrobial properties of non-traditional drugs, thereby offering a holistic perspective on the evolving landscape of antifungal therapeutics.
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  • 文章类型: Journal Article
    糖尿病是一个广泛流行的主要公共卫生挑战,通常导致并发症,例如糖尿病肾病(DN)-一种逐渐损害肾功能的慢性疾病。在这种情况下,重要的是要评估机器学习模型是否可以利用临床数据中固有的时间因素来比当前的临床模型更快,更准确地预测DN的发展风险。
    本文献综述使用了三个不同的数据库:Scopus,WebofScience,和PubMed。仅包括2015年1月至2022年12月之间以英文撰写的文章。
    我们纳入了11项研究,从中我们讨论了一些能够从临床数据中提取知识的算法,将动态方面纳入患者评估,探索它们随时间的演变。我们还介绍了不同方法的比较,他们的表现,优势,缺点,解释,以及时间因素对糖尿病肾病预测更成功的价值。
    我们的分析表明,一些研究忽略了时间因素,而其他人则部分利用了它。更多地使用电子健康记录(EHR)数据固有的时间方面,结合组学数据的整合,可能导致更可靠和更强大的预测模型的发展。
    UNASSIGNED: Diabetes is a major public health challenge with widespread prevalence, often leading to complications such as Diabetic Nephropathy (DN)-a chronic condition that progressively impairs kidney function. In this context, it is important to evaluate if Machine learning models can exploit the inherent temporal factor in clinical data to predict the risk of developing DN faster and more accurately than current clinical models.
    UNASSIGNED: Three different databases were used for this literature review: Scopus, Web of Science, and PubMed. Only articles written in English and published between January 2015 and December 2022 were included.
    UNASSIGNED: We included 11 studies, from which we discuss a number of algorithms capable of extracting knowledge from clinical data, incorporating dynamic aspects in patient assessment, and exploring their evolution over time. We also present a comparison of the different approaches, their performance, advantages, disadvantages, interpretation, and the value that the time factor can bring to a more successful prediction of diabetic nephropathy.
    UNASSIGNED: Our analysis showed that some studies ignored the temporal factor, while others partially exploited it. Greater use of the temporal aspect inherent in Electronic Health Records (EHR) data, together with the integration of omics data, could lead to the development of more reliable and powerful predictive models.
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  • 文章类型: Journal Article
    (1)目的:在本研究中,开发了一种基于回归的多模态深度学习模型,用于利用手部X线图像和临床数据进行骨龄评估(BAA)。包括患者性别和实际年龄,作为输入数据。(2)方法:使用来自2974名儿科患者的手部X线图像数据集建立基于回归的多模态BAA模型。该模型使用EfficientNetV2S卷积神经网络(CNN)和由简单深度神经网络(DNN)处理的临床数据(性别和实际年龄)集成了手部X射线照片。这种方法增强了模型的鲁棒性和诊断精度,解决与不平衡的数据分布和有限的样本量相关的挑战。(3)结果:该模型在BAA上表现出良好的性能,总体平均绝对误差(MAE)为0.410,均方根误差(RMSE)为0.637,准确率为91.1%。亚组分析显示,女性≤11岁(MAE:0.267,RMSE:0.453,准确度:95.0%)和>11岁(MAE:0.402,RMSE:0.634,准确度92.4%)的准确度高于男性≤13岁(MAE:0.665,RMSE:0.912,准确度:79.7%)和>13岁(MAE:0.647,RMSE:8302,准确度:4.6,(4)结论:该模型在BAA上表现出总体良好的性能,与男性儿科相比,女性儿科表现更好,女性儿科表现特别强劲≤11岁。
    (1) Objective: In this study, a regression-based multi-modal deep learning model was developed for use in bone age assessment (BAA) utilizing hand radiographic images and clinical data, including patient gender and chronological age, as input data. (2) Methods: A dataset of hand radiographic images from 2974 pediatric patients was used to develop a regression-based multi-modal BAA model. This model integrates hand radiographs using EfficientNetV2S convolutional neural networks (CNNs) and clinical data (gender and chronological age) processed by a simple deep neural network (DNN). This approach enhances the model\'s robustness and diagnostic precision, addressing challenges related to imbalanced data distribution and limited sample sizes. (3) Results: The model exhibited good performance on BAA, with an overall mean absolute error (MAE) of 0.410, root mean square error (RMSE) of 0.637, and accuracy of 91.1%. Subgroup analysis revealed higher accuracy in females ≤ 11 years (MAE: 0.267, RMSE: 0.453, accuracy: 95.0%) and >11 years (MAE: 0.402, RMSE: 0.634, accuracy 92.4%) compared to males ≤ 13 years (MAE: 0.665, RMSE: 0.912, accuracy: 79.7%) and >13 years (MAE: 0.647, RMSE: 1.302, accuracy: 84.6%). (4) Conclusion: This model showed a generally good performance on BAA, showing a better performance in female pediatrics compared to male pediatrics and an especially robust performance in female pediatrics ≤ 11 years.
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  • 文章类型: Journal Article
    背景:深度学习的最新进展对眼科产生了重大影响,尤其是青光眼,全球不可逆失明的主要原因。在这项研究中,我们使用基于临床数据的深度学习模型开发了一种可靠的青光眼检测预测模型,社会和行为危险因素,和1652名参与者的人口统计数据,在826名对照受试者和826名青光眼患者之间平均分配。
    方法:我们从对照和青光眼患者的电子健康记录(EHR)中提取结构数据。三个不同的机器学习分类器,随机森林和梯度提升算法,以及来自TensorFlow的Keras库的序列模型,被用来对我们的数据集进行预测分析。关键性能指标,如准确性、F1得分,精度,召回,并计算接收器工作特征曲线下面积(AUC)以训练和优化这些模型。
    结果:随机森林模型的准确率达到了67.5%,ROCAUC为0.67,优于梯度提升和顺序模型,其中记录的准确率为66.3%和64.5%,分别。我们的结果强调了关键的预测因素,如眼压,家族史,和身体质量指数,证实他们在青光眼风险评估中的作用。
    结论:这项研究证明了利用现成的临床,生活方式,和EHR通过深度学习模型检测青光眼的人口统计数据。虽然我们的模型,仅使用EHR数据,与结合成像数据的方法相比,精度较低,它仍然为初级保健机构的早期青光眼风险评估提供了一个有希望的途径.观察到的模型性能和特征重要性的差异表明,根据个体患者特征定制检测策略的重要性,可能导致更有效和个性化的青光眼筛查和干预。
    BACKGROUND: Recent advancements in deep learning have significantly impacted ophthalmology, especially in glaucoma, a leading cause of irreversible blindness worldwide. In this study, we developed a reliable predictive model for glaucoma detection using deep learning models based on clinical data, social and behavior risk factor, and demographic data from 1652 participants, split evenly between 826 control subjects and 826 glaucoma patients.
    METHODS: We extracted structural data from control and glaucoma patients\' electronic health records (EHR). Three distinct machine learning classifiers, the Random Forest and Gradient Boosting algorithms, as well as the Sequential model from the Keras library of TensorFlow, were employed to conduct predictive analyses across our dataset. Key performance metrics such as accuracy, F1 score, precision, recall, and the area under the receiver operating characteristics curve (AUC) were computed to both train and optimize these models.
    RESULTS: The Random Forest model achieved an accuracy of 67.5%, with a ROC AUC of 0.67, outperforming the Gradient Boosting and Sequential models, which registered accuracies of 66.3% and 64.5%, respectively. Our results highlighted key predictive factors such as intraocular pressure, family history, and body mass index, substantiating their roles in glaucoma risk assessment.
    CONCLUSIONS: This study demonstrates the potential of utilizing readily available clinical, lifestyle, and demographic data from EHRs for glaucoma detection through deep learning models. While our model, using EHR data alone, has a lower accuracy compared to those incorporating imaging data, it still offers a promising avenue for early glaucoma risk assessment in primary care settings. The observed disparities in model performance and feature significance show the importance of tailoring detection strategies to individual patient characteristics, potentially leading to more effective and personalized glaucoma screening and intervention.
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  • 文章类型: Journal Article
    目的:探讨肝酶与卵巢癌(OC)的关系。并验证其作为生物标志物的潜力及其在OC中的作用机制。方法对OC和碱性磷酸酶(ALP)等酶水平进行全基因组关联研究,天冬氨酸转氨酶(AST),丙氨酸转氨酶,和γ-谷氨酰转移酶进行了分析。单变量和多变量孟德尔随机化(MR),在施泰格试验的补充下,鉴定出与OC有潜在因果关系的酶。来自GSE130000数据集的单细胞转录组学精确定位的关键细胞簇,能够进一步检查酶编码基因的表达。预测控制这些基因的转录因子(TF)构建TF-mRNA网络。此外,回顾性分析健康个体和OC患者的肝酶水平,同时评估与癌症抗原125(CA125)和人附睾蛋白4(HE4)的相关性。
    结果:共有283个单核苷酸多态性(SNPs)和209个与ALP和AST相关的SNPs,分别。使用逆方差加权方法,单因素MR(UVMR)分析显示ALP(P=0.050,OR=0.938)和AST(P=0.017,OR=0.906)与OC风险呈负相关,表明它们作为保护因素的作用。多变量MR(MVMR)证实了ALP对OC的因果关系(P=0.005,OR=0.938),而没有反向因果关系。关键细胞簇,包括T细胞,卵巢细胞,内皮细胞,巨噬细胞,癌症相关成纤维细胞(CAFs),并鉴定了上皮细胞,上皮细胞显示高表达编码AST和ALP的基因。值得注意的是,TFs如TCE4与GOT2和ALPL基因的调控有关。OC患者样本显示血液和肿瘤组织中ALP水平降低,观察到ALP和CA125水平之间呈负相关。
    结论:这项研究建立了AST和ALP与OC之间的因果关系,将其视为保护因素。编码这些酶的基因在上皮细胞中的表达增加为开发新型疾病标志物和OC的靶向治疗提供了理论基础。
    OBJECTIVE: To investigate the association between liver enzymes and ovarian cancer (OC), and to validate their potential as biomarkers and their mechanisms in OC. Methods Genome-wide association studies for OC and levels of enzymes such as Alkaline phosphatase (ALP), Aspartate aminotransferase (AST), Alanine aminotransferase, and gamma-glutamyltransferase were analyzed. Univariate and multivariate Mendelian randomization (MR), complemented by the Steiger test, identified enzymes with a potential causal relationship to OC. Single-cell transcriptomics from the GSE130000 dataset pinpointed pivotal cellular clusters, enabling further examination of enzyme-encoding gene expression. Transcription factors (TFs) governing these genes were predicted to construct TF-mRNA networks. Additionally, liver enzyme levels were retrospectively analyzed in healthy individuals and OC patients, alongside the evaluation of correlations with cancer antigen 125 (CA125) and Human Epididymis Protein 4 (HE4).
    RESULTS: A total of 283 single nucleotide polymorphisms (SNPs) and 209 SNPs related to ALP and AST, respectively. Using the inverse-variance weighted method, univariate MR (UVMR) analysis revealed that ALP (P = 0.050, OR = 0.938) and AST (P = 0.017, OR = 0.906) were inversely associated with OC risk, suggesting their roles as protective factors. Multivariate MR (MVMR) confirmed the causal effect of ALP (P = 0.005, OR = 0.938) on OC without reverse causality. Key cellular clusters including T cells, ovarian cells, endothelial cells, macrophages, cancer-associated fibroblasts (CAFs), and epithelial cells were identified, with epithelial cells showing high expression of genes encoding AST and ALP. Notably, TFs such as TCE4 were implicated in the regulation of GOT2 and ALPL genes. OC patient samples exhibited decreased ALP levels in both blood and tumor tissues, with a negative correlation between ALP and CA125 levels observed.
    CONCLUSIONS: This study has established a causal link between AST and ALP with OC, identifying them as protective factors. The increased expression of the genes encoding these enzymes in epithelial cells provides a theoretical basis for developing novel disease markers and targeted therapies for OC.
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  • 文章类型: Journal Article
    通过早期检测(改善)改善妊娠结局是一个多中心,欧洲IIa期临床研究。IMPROvED的主要目的是能够评估和改进基于新兴生物标志物技术的创新原型先兆子痫风险评估测试。在这里,我们描述了改进的个人资料,并邀请研究人员进行合作。
    从爱尔兰的产科中招募了4,038名低风险的单胎妊娠(N=1,501),英国(N=1,108),荷兰(N=810),瑞典(N=619),2013年11月至2017年8月。参与者在约11周接受研究助产士的采访(可选访问),~15周,~20周,妊娠约34周(可选就诊),和产后(分娩后72小时内)。
    临床数据包括有关孕产妇社会人口统计学的信息,病史,和在妊娠15周时收集的生活方式因素,和产妇测量,在每次研究访问时收集。生物库样本包括血液,尿液,和在整个怀孕期间在所有单位的每次研究访视时收集的头发,以及在爱尔兰和瑞典出生时收集的脐带/血液样本。总共74.0%(N=2,922)的人没有复杂的怀孕,3.1%(N=122)发生先兆子痫,3.6%(N=143)有自发性早产,10.5%(N=416)的婴儿小于胎龄儿。我们在妊娠15周和20周时评估了一组代谢物生物标志物和一组蛋白质生物标志物,用于先兆子痫风险评估。它们转化为具有临床应用的测试,由商业实体进行,受到技术问题和测试要求变化的阻碍。蛋白质面板上的工作被放弃了,而使用代谢物生物标志物进行子痫前期风险评估的工作正在进行中。
    根据改进研究的最初目标,这些数据和生物样本库现在可用于国际合作,以开展高质量的不良妊娠结局的原因和预防研究。
    UNASSIGNED: Improved Pregnancy Outcomes via Early Detection (IMPROvED) is a multi-centre, European phase IIa clinical study. The primary aim of IMPROvED is to enable the assessment and refinement of innovative prototype preeclampsia risk assessment tests based on emerging biomarker technologies. Here we describe IMPROvED\'s profile and invite researchers to collaborate.
    UNASSIGNED: A total of 4,038 low-risk nulliparous singleton pregnancies were recruited from maternity units in Ireland (N=1,501), United Kingdom (N=1,108), The Netherlands (N=810), and Sweden (N=619) between November 2013 to August 2017. Participants were interviewed by a research midwife at ~11 weeks (optional visit), ~15 weeks, ~20 weeks, ~34 weeks\' gestation (optional visit), and postpartum (within 72-hours following delivery).
    UNASSIGNED: Clinical data included information on maternal sociodemographic, medical history, and lifestyle factors collected at ~15 weeks\' gestation, and maternal measurements, collected at each study visit. Biobank samples included blood, urine, and hair collected at each study visit throughout pregnancy in all units plus umbilical cord/blood samples collected at birth in Ireland and Sweden. A total of 74.0% (N=2,922) had an uncomplicated pregnancy, 3.1% (N=122) developed preeclampsia, 3.6% (N=143) had a spontaneous preterm birth, and 10.5% (N=416) had a small for gestational age baby. We evaluated a panel of metabolite biomarkers and a panel of protein biomarkers at 15 weeks and 20 weeks\' gestation for preeclampsia risk assessment. Their translation into tests with clinical application, as conducted by commercial entities, was hampered by technical issues and changes in test requirements. Work on the panel of proteins was abandoned, while work on the use of metabolite biomarkers for preeclampsia risk assessment is ongoing.
    UNASSIGNED: In accordance with the original goals of the IMPROvED study, the data and biobank are now available for international collaboration to conduct high quality research into the cause and prevention of adverse pregnancy outcomes.
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  • 文章类型: Journal Article
    原发性硬化性胆管炎(PSC)是一种罕见的,进行性疾病,以胆管炎症和纤维化为特征,缺乏可靠的疾病活动预后生物标志物。机器学习应用于血清的广泛蛋白质组学分析,允许发现疾病存在的标志物,严重程度,和肝硬化以及CCL24参与的探索,CCL24是一种具有纤维炎症活性的趋化因子。对30名健康对照和45名PSC患者的血清进行了邻近延伸分析,量化2870种蛋白质的表达,并用于训练弹性网络模型。对模型贡献最大的蛋白质被测试与增强的肝纤维化(ELF)评分的相关性,并用于进行途径分析。使用主成分分析(PCA)对肝硬化的存在进行统计建模,和受试者工作特征(ROC)曲线用于评估潜在生物标志物的可用性。该模型成功预测了PSC的存在,其中排名靠前的蛋白质与细胞粘附有关,免疫反应,和炎症,对于疾病存在,每个受试者操作者特征(AUROC)曲线下面积大于0.9,对于ELF评分大于0.8。路径分析显示与PSC相关的功能富集,与富含CCL24水平患者的通路重叠。肝硬化患者的CCL24水平较高。这种数据驱动的方法来表征PSC及其严重程度,突出了潜在的血清蛋白生物标志物和CCL24在疾病中的重要性。暗示其在PSC的治疗潜力。
    Primary sclerosing cholangitis (PSC) is a rare, progressive disease, characterized by inflammation and fibrosis of the bile ducts, lacking reliable prognostic biomarkers for disease activity. Machine learning applied to broad proteomic profiling of sera allowed for the discovery of markers of disease presence, severity, and cirrhosis and the exploration of the involvement of CCL24, a chemokine with fibro-inflammatory activity. Sera from 30 healthy controls and 45 PSC patients were profiled with proximity extension assay, quantifying the expression of 2870 proteins, and used to train an elastic net model. Proteins that contributed most to the model were tested for correlation to enhanced liver fibrosis (ELF) score and used to perform pathway analysis. Statistical modeling for the presence of cirrhosis was performed with principal component analysis (PCA), and receiver operating characteristics (ROC) curves were used to assess the useability of potential biomarkers. The model successfully predicted the presence of PSC, where the top-ranked proteins were associated with cell adhesion, immune response, and inflammation, and each had an area under receiver operator characteristic (AUROC) curve greater than 0.9 for disease presence and greater than 0.8 for ELF score. Pathway analysis showed enrichment for functions associated with PSC, overlapping with pathways enriched in patients with high levels of CCL24. Patients with cirrhosis showed higher levels of CCL24. This data-driven approach to characterize PSC and its severity highlights potential serum protein biomarkers and the importance of CCL24 in the disease, implying its therapeutic potential in PSC.
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  • 文章类型: Journal Article
    背景:有必要协调和标准化临床研究病例报告表(CRF)中使用的数据变量,以促进在多个临床研究中收集的患者数据的合并和共享。对于专注于传染病的临床研究尤其如此。公共卫生可能高度依赖于这些研究的结果。因此,有一种更高的紧迫性来产生有意义的,可靠的见解,理想情况下基于高样本数量和质量数据。核心数据元素的实施和互操作性标准的合并可以促进统一的临床数据集的创建。
    目的:本研究的目的是比较,协调,并标准化变量,这些变量集中在6项国际传染病临床研究中用作CRF一部分的诊断测试中,最终,然后为正在进行的和未来的研究提供全研究通用数据元素(CDE),以促进跨试验收集数据的互操作性和可比性.
    方法:为了确定CDE,我们回顾并比较了包含在所有6项传染病研究中和所有研究中用于数据收集的CRF的元数据。我们检查了医学系统化命名法-临床术语中国际语义标准代码的可用性,国家癌症研究所词库,和逻辑观察标识符名称和代码系统,用于明确表示构成CDE的诊断测试信息。然后,我们提出了2个数据模型,这些模型结合了已识别的CDE的语义和句法标准。
    结果:在分析范围内考虑的216个变量中,我们确定了11个CDE来描述诊断测试(特别是,血清学和测序)用于传染病:病毒谱系/进化枝;测试日期,type,表演者,和制造商;目标基因;定量和定性结果;和样本标识符,type,和收集日期。
    结论:确定用于感染性疾病的CDE是促进整个临床研究中数据子集的交换和可能合并的第一步(并且,大型研究项目),以进行可能的共享分析,以增加发现的力量。为了互操作性,临床研究数据的协调和标准化路径可以以两种方式铺就。首先,映射到标准术语确保每个数据元素的(变量)定义是明确的,并且它有一个,跨研究的独特解释。第二,这些数据的交换是通过以标准交换格式“包装”来辅助的,如快速医疗保健互操作性资源或临床数据交换标准联盟的临床数据采集标准协调模型。
    It is necessary to harmonize and standardize data variables used in case report forms (CRFs) of clinical studies to facilitate the merging and sharing of the collected patient data across several clinical studies. This is particularly true for clinical studies that focus on infectious diseases. Public health may be highly dependent on the findings of such studies. Hence, there is an elevated urgency to generate meaningful, reliable insights, ideally based on a high sample number and quality data. The implementation of core data elements and the incorporation of interoperability standards can facilitate the creation of harmonized clinical data sets.
    This study\'s objective was to compare, harmonize, and standardize variables focused on diagnostic tests used as part of CRFs in 6 international clinical studies of infectious diseases in order to, ultimately, then make available the panstudy common data elements (CDEs) for ongoing and future studies to foster interoperability and comparability of collected data across trials.
    We reviewed and compared the metadata that comprised the CRFs used for data collection in and across all 6 infectious disease studies under consideration in order to identify CDEs. We examined the availability of international semantic standard codes within the Systemized Nomenclature of Medicine - Clinical Terms, the National Cancer Institute Thesaurus, and the Logical Observation Identifiers Names and Codes system for the unambiguous representation of diagnostic testing information that makes up the CDEs. We then proposed 2 data models that incorporate semantic and syntactic standards for the identified CDEs.
    Of 216 variables that were considered in the scope of the analysis, we identified 11 CDEs to describe diagnostic tests (in particular, serology and sequencing) for infectious diseases: viral lineage/clade; test date, type, performer, and manufacturer; target gene; quantitative and qualitative results; and specimen identifier, type, and collection date.
    The identification of CDEs for infectious diseases is the first step in facilitating the exchange and possible merging of a subset of data across clinical studies (and with that, large research projects) for possible shared analysis to increase the power of findings. The path to harmonization and standardization of clinical study data in the interest of interoperability can be paved in 2 ways. First, a map to standard terminologies ensures that each data element\'s (variable\'s) definition is unambiguous and that it has a single, unique interpretation across studies. Second, the exchange of these data is assisted by \"wrapping\" them in a standard exchange format, such as Fast Health care Interoperability Resources or the Clinical Data Interchange Standards Consortium\'s Clinical Data Acquisition Standards Harmonization Model.
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  • 文章类型: Journal Article
    三尖瓣反流,或TR,是一个难以管理的条件。除了EVOQUE,经皮瓣膜成形术,和手术修复,TriClipG4系统已添加到TR的介入治疗选择中。最近,美国食品和药物管理局(FDA)批准使用TriClipG4设备治疗有症状的患者,接受过最佳药物治疗但手术风险中等或更高的重度TR.这篇评论试图对程序特征进行彻底的审查,学习曲线,设备的结果,并将TriClipG4系统与其他TR介入治疗进行了比较。TriClipG4将在关键临床试验中取得有希望的结果,具有成本效益,提高患者的生活质量。此外,它与其他常规技术和设备相比具有独特的优势。
    Tricuspid valve regurgitation, or TR, is a difficult-to-manage condition. In addition to EVOQUE, percutaneous annuloplasty, and surgical repair, the TriClip G4 system has been added to the interventional therapeutic choices for TR. Recently, the Food and Drug Administration (FDA) approved the use of the TriClip G4 device to treat patients with symptomatic, severe TR who have received optimal medication therapy but are at intermediate or higher risk of surgery. This review attempts to offer a thorough examination of the procedural features, learning curves, results of the device and compares the TriClip G4 system to other interventional therapies for TR. TriClip G4 has shown to have promising results in pivotal clinical trials, be cost-effective, and improve the quality of life of patients. Furthermore, it has its unique advantages against other conventional techniques and devices.
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  • 文章类型: Published Erratum
    [这更正了文章DOI:10.3389/fpubh.2024.1302256。].
    [This corrects the article DOI: 10.3389/fpubh.2024.1302256.].
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