International Classification of Diseases, Tenth Revision

  • 文章类型: Journal Article
    机器学习在医疗保健中的应用通常需要使用分层代码,例如国际疾病分类(ICD)和解剖治疗化学(ATC)系统。这些代码对疾病和药物进行分类,分别,从而形成广泛的数据维度。无监督特征选择解决了“维度的诅咒”,并通过减少无关或冗余特征的数量并避免过度拟合,有助于提高监督学习模型的准确性和性能。无监督特征选择技术,比如过滤器,包装器,和嵌入式方法,被实现为选择具有最内在信息的最重要的功能。然而,由于ICD和ATC代码的庞大数量以及这些系统的层次结构,他们面临挑战。
    本研究的目的是比较冠状动脉疾病患者ICD和ATC代码数据库的几种无监督特征选择方法的性能和复杂性的不同方面,并选择代表这些患者的最佳特征集。
    我们比较了艾伯塔省51,506名冠状动脉疾病患者的2个ICD和1个ATC代码数据库的几种无监督特征选择方法,加拿大。具体来说,我们用拉普拉斯分数,多集群数据的无监督特征选择,自动编码器启发的无监督特征选择,主要特征分析,和混凝土自动编码器有和没有ICD或ATC树的重量调整,从超过9000ICD和2000ATC代码中选择100个最佳功能。我们根据其重建初始特征空间和预测出院后90天死亡率的能力评估了选定的特征。我们还通过ICD或ATC树中的平均代码级别比较了所选特征的复杂性,以及使用Shapley分析的死亡率预测任务中特征的可解释性。
    在特征空间重构和死亡率预测中,具体的基于自动编码器的方法优于其他技术。特别是,权重调整后的混凝土自动编码器变体展示了改进的重建精度和显著的预测性能增强,经DeLong和McNemar检验证实(P<0.05)。混凝土自动编码器首选更通用的代码,他们一致准确地重建了所有特征。此外,与大多数替代方案相比,通过重量调整的混凝土自动编码器选择的特征在死亡率预测中产生了更高的Shapley值。
    这项研究在无监督的背景下仔细检查了ICD和ATC代码数据集中的5种特征选择方法。我们的发现强调了具体的自动编码器方法在选择代表整个数据集的显着特征方面的优越性,为后续机器学习研究提供潜在资产。我们还为专门为ICD和ATC代码数据集量身定制的具体自动编码器提供了一种新颖的权重调整方法,以增强所选功能的可泛化性和可解释性。
    UNASSIGNED: The application of machine learning in health care often necessitates the use of hierarchical codes such as the International Classification of Diseases (ICD) and Anatomical Therapeutic Chemical (ATC) systems. These codes classify diseases and medications, respectively, thereby forming extensive data dimensions. Unsupervised feature selection tackles the \"curse of dimensionality\" and helps to improve the accuracy and performance of supervised learning models by reducing the number of irrelevant or redundant features and avoiding overfitting. Techniques for unsupervised feature selection, such as filter, wrapper, and embedded methods, are implemented to select the most important features with the most intrinsic information. However, they face challenges due to the sheer volume of ICD and ATC codes and the hierarchical structures of these systems.
    UNASSIGNED: The objective of this study was to compare several unsupervised feature selection methods for ICD and ATC code databases of patients with coronary artery disease in different aspects of performance and complexity and select the best set of features representing these patients.
    UNASSIGNED: We compared several unsupervised feature selection methods for 2 ICD and 1 ATC code databases of 51,506 patients with coronary artery disease in Alberta, Canada. Specifically, we used the Laplacian score, unsupervised feature selection for multicluster data, autoencoder-inspired unsupervised feature selection, principal feature analysis, and concrete autoencoders with and without ICD or ATC tree weight adjustment to select the 100 best features from over 9000 ICD and 2000 ATC codes. We assessed the selected features based on their ability to reconstruct the initial feature space and predict 90-day mortality following discharge. We also compared the complexity of the selected features by mean code level in the ICD or ATC tree and the interpretability of the features in the mortality prediction task using Shapley analysis.
    UNASSIGNED: In feature space reconstruction and mortality prediction, the concrete autoencoder-based methods outperformed other techniques. Particularly, a weight-adjusted concrete autoencoder variant demonstrated improved reconstruction accuracy and significant predictive performance enhancement, confirmed by DeLong and McNemar tests (P<.05). Concrete autoencoders preferred more general codes, and they consistently reconstructed all features accurately. Additionally, features selected by weight-adjusted concrete autoencoders yielded higher Shapley values in mortality prediction than most alternatives.
    UNASSIGNED: This study scrutinized 5 feature selection methods in ICD and ATC code data sets in an unsupervised context. Our findings underscore the superiority of the concrete autoencoder method in selecting salient features that represent the entire data set, offering a potential asset for subsequent machine learning research. We also present a novel weight adjustment approach for the concrete autoencoders specifically tailored for ICD and ATC code data sets to enhance the generalizability and interpretability of the selected features.
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  • 文章类型: Journal Article
    背景:COVID-19大流行加强了对医疗保健安全和质量的关注,强调使用国际疾病分类等标准化指标的重要性,第十次修订(ICD-10)。在这方面,ICD-10集群Y62-Y69作为卫生保健系统的安全性和质量的代理评估,允许研究人员评估医疗事故。到目前为止,广泛的研究和报告支持需要更多关注卫生保健的安全和质量。该研究旨在利用大流行的独特挑战来探索大流行期间的医疗保健安全和质量趋势,流行病内,大流行后阶段,使用ICD-10簇Y62-Y69作为其评估的关键工具。
    目的:本研究旨在对与ICD-10群集Y62-Y69相关的发病率进行全面的回顾性分析,以捕捉整个疾病前期的线性和非线性趋势,流行病内,和大流行后8年的阶段。因此,它试图了解这些趋势如何为医疗保健安全和质量改进提供信息,政策,和未来的研究。
    方法:本研究使用TriNetX平台提供的大量数据,使用观测,回顾性设计并应用曲线拟合分析和二次模型来理解8年(2015年至2023年)发病率之间的关系.这些技术将能够识别数据中细微的趋势,有助于更深入地了解COVID-19大流行对医疗事故的影响。预期的结果旨在概述COVID-19大流行期间医疗保健安全和质量的复杂模式,使用全球现实世界数据得出稳健和可推广的结论。这项研究将探讨医疗保健实践和结果的重大转变,特别关注心血管和肿瘤护理中的地理变化和关键临床状况,确保全面分析大流行在不同地区和医疗领域的影响。
    结果:这项研究目前处于数据收集阶段,通过意大利卫生部的RicercaCorrente计划于2023年11月获得资金。通过TriNetX平台进行的数据收集预计将于2024年5月完成,涵盖2015年1月至2023年12月的8年时间。这个数据集跨越大流行前,大流行内部,以及大流行后的早期阶段,能够使用ICD-10群集Y62-Y69全面分析医疗事故的趋势。最终分析预计将于2024年6月完成。这项研究的发现旨在为提高医疗安全和质量提供可行的见解,反思大流行对全球医疗体系的变革性影响。
    结论:本研究预计将为卫生保健安全和质量文献做出重大贡献。它将为医疗保健专业人员提供可行的见解,政策制定者,和研究人员。它将强调干预和资金的关键领域,以通过检查医疗事故的发生率来提高全球医疗安全和质量,during,在大流行之后。此外,全球现实世界数据的使用通过提供医疗保健安全和质量的实用观点来增强研究的力量,为由数据提供信息并适合全球具体情况的举措铺平道路。这种方法可确保调查结果在不同的医疗保健环境中适用和可行。为全球对医疗保健安全和质量的理解和改进做出了重大贡献。
    PRR1-10.2196/54838。
    BACKGROUND: The COVID-19 pandemic has sharpened the focus on health care safety and quality, underscoring the importance of using standardized metrics such as the International Classification of Diseases, Tenth Revision (ICD-10). In this regard, the ICD-10 cluster Y62-Y69 serves as a proxy assessment of safety and quality in health care systems, allowing researchers to evaluate medical misadventures. Thus far, extensive research and reports support the need for more attention to safety and quality in health care. The study aims to leverage the pandemic\'s unique challenges to explore health care safety and quality trends during prepandemic, intrapandemic, and postpandemic phases, using the ICD-10 cluster Y62-Y69 as a key tool for their evaluation.
    OBJECTIVE: This research aims to perform a comprehensive retrospective analysis of incidence rates associated with ICD-10 cluster Y62-Y69, capturing both linear and nonlinear trends across prepandemic, intrapandemic, and postpandemic phases over an 8-year span. Therefore, it seeks to understand how these trends inform health care safety and quality improvements, policy, and future research.
    METHODS: This study uses the extensive data available through the TriNetX platform, using an observational, retrospective design and applying curve-fitting analyses and quadratic models to comprehend the relationships between incidence rates over an 8-year span (from 2015 to 2023). These techniques will enable the identification of nuanced trends in the data, facilitating a deeper understanding of the impacts of the COVID-19 pandemic on medical misadventures. The anticipated results aim to outline complex patterns in health care safety and quality during the COVID-19 pandemic, using global real-world data for robust and generalizable conclusions. This study will explore significant shifts in health care practices and outcomes, with a special focus on geographical variations and key clinical conditions in cardiovascular and oncological care, ensuring a comprehensive analysis of the pandemic\'s impact across different regions and medical fields.
    RESULTS: This study is currently in the data collection phase, with funding secured in November 2023 through the Ricerca Corrente scheme of the Italian Ministry of Health. Data collection via the TriNetX platform is anticipated to be completed in May 2024, covering an 8-year period from January 2015 to December 2023. This dataset spans pre-pandemic, intra-pandemic, and early post-pandemic phases, enabling a comprehensive analysis of trends in medical misadventures using the ICD-10 cluster Y62-Y69. The final analytics are anticipated to be completed by June 2024. The study\'s findings aim to provide actionable insights for enhancing healthcare safety and quality, reflecting on the pandemic\'s transformative impact on global healthcare systems.
    CONCLUSIONS: This study is anticipated to contribute significantly to health care safety and quality literature. It will provide actionable insights for health care professionals, policy makers, and researchers. It will highlight critical areas for intervention and funding to enhance health care safety and quality globally by examining the incidence rates of medical misadventures before, during, and after the pandemic. In addition, the use of global real-world data enhances the study\'s strength by providing a practical view of health care safety and quality, paving the way for initiatives that are informed by data and tailored to specific contexts worldwide. This approach ensures the findings are applicable and actionable across different health care settings, contributing significantly to the global understanding and improvement of health care safety and quality.
    UNASSIGNED: PRR1-10.2196/54838.
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  • 文章类型: Journal Article
    背景:计算机辅助临床编码(CAC)工具旨在帮助临床编码人员分配标准化代码,例如ICD-10(国际疾病统计分类,第十次修订),临床文本,如出院摘要。保持这些标准化代码的完整性对于卫生系统的运作和确保用于次要目的的数据具有高质量都很重要。临床编码是一项容易出错的繁琐任务,以及现代分类系统的复杂性,如ICD-11(国际疾病分类,第十一次修订)对实施提出了重大障碍。迄今为止,只有少数用户研究;因此,关于CAC系统在减轻编码负担和提高编码整体质量方面的作用,我们的理解仍然有限。
    目的:用户研究的目的是生成定性和定量数据,以测量CAC系统的有用性,Easy-ICD,这是为了推荐ICD-10代码而开发的。具体来说,我们的目标是评估我们的工具是否可以减轻临床编码人员的负担并提高编码质量.
    方法:用户研究基于交叉随机对照试验研究设计,我们测量临床编码人员使用我们的CAC工具时的表现与不使用时的表现。性能是通过将代码分配给简单和复杂的临床文本以及编码质量所需的时间来衡量的。也就是说,代码分配的准确性。
    结果:我们希望该研究能够为我们提供CAC系统与手动编码过程相比的有效性的度量,在时间使用和编码质量方面。这项研究的积极成果将意味着CAC工具具有减轻医护人员负担的潜力,并将对采用基于人工智能的CAC创新来改善编码实践产生重大影响。预计结果将于2024年夏季公布。
    结论:计划中的用户研究承诺更好地了解CAC系统对现实生活中的临床编码的影响,特别是关于编码时间和质量。Further,这项研究可能会增加关于如何有意义地利用当前临床文本挖掘能力的新见解,为了减轻临床编码人员的负担,从而降低障碍,为采用现代编码系统铺平更可持续的道路,例如新的ICD-11。
    背景:clinicaltrials.govNCT06286865;https://clinicaltrials.gov/study/NCT06286865。
    DERR1-10.2196/54593。
    BACKGROUND: Computer-assisted clinical coding (CAC) tools are designed to help clinical coders assign standardized codes, such as the ICD-10 (International Statistical Classification of Diseases, Tenth Revision), to clinical texts, such as discharge summaries. Maintaining the integrity of these standardized codes is important both for the functioning of health systems and for ensuring data used for secondary purposes are of high quality. Clinical coding is an error-prone cumbersome task, and the complexity of modern classification systems such as the ICD-11 (International Classification of Diseases, Eleventh Revision) presents significant barriers to implementation. To date, there have only been a few user studies; therefore, our understanding is still limited regarding the role CAC systems can play in reducing the burden of coding and improving the overall quality of coding.
    OBJECTIVE: The objective of the user study is to generate both qualitative and quantitative data for measuring the usefulness of a CAC system, Easy-ICD, that was developed for recommending ICD-10 codes. Specifically, our goal is to assess whether our tool can reduce the burden on clinical coders and also improve coding quality.
    METHODS: The user study is based on a crossover randomized controlled trial study design, where we measure the performance of clinical coders when they use our CAC tool versus when they do not. Performance is measured by the time it takes them to assign codes to both simple and complex clinical texts as well as the coding quality, that is, the accuracy of code assignment.
    RESULTS: We expect the study to provide us with a measurement of the effectiveness of the CAC system compared to manual coding processes, both in terms of time use and coding quality. Positive outcomes from this study will imply that CAC tools hold the potential to reduce the burden on health care staff and will have major implications for the adoption of artificial intelligence-based CAC innovations to improve coding practice. Expected results to be published summer 2024.
    CONCLUSIONS: The planned user study promises a greater understanding of the impact CAC systems might have on clinical coding in real-life settings, especially with regard to coding time and quality. Further, the study may add new insights on how to meaningfully exploit current clinical text mining capabilities, with a view to reducing the burden on clinical coders, thus lowering the barriers and paving a more sustainable path to the adoption of modern coding systems, such as the new ICD-11.
    BACKGROUND: clinicaltrials.gov NCT06286865; https://clinicaltrials.gov/study/NCT06286865.
    UNASSIGNED: DERR1-10.2196/54593.
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  • 文章类型: Journal Article
    背景:国际疾病分类,第十一次修订(ICD-11)改善了肿瘤分类。
    目的:我们旨在研究ICD-11与中国国际疾病分类临床修改相比的变化,第十次修订(ICD-10-CCM)用于肿瘤分类,并提供支持向ICD-11过渡的证据。
    方法:我们从世界卫生组织和中华人民共和国国家卫生健康委员会下载了公开数据文件。ICD-10-CCM肿瘤编码用ICD-11编码工具手动重新编码,生成ICD-10-CCM/ICD-11映射表。现有文件和ICD-10-CCM/ICD-11映射表用于比较编码,分类,以及ICD-10-CCM和ICD-11之间肿瘤的表达特征。
    结果:肿瘤的ICD-11编码结构发生了巨大变化。它在编码粒度方面提供了优势,编码容量,表达的灵活性。总的来说,27.4%(207/755)的ICD-10代码和38%(1359/3576)的ICD-10-CCM代码经历了分组变化,差异有统计学意义(χ21=30.3;P<.001)。值得注意的是,67.8%(2424/3576)的ICD-10-CCM码可以完全由ICD-11码表示。另外7%(252/3576)可以由统一资源标识符完全描述。ICD-11在4个ICD-10-CCM组间表达能力差异有统计学意义(χ23=93.7;P<.001),改变组和不变组之间也有相当大的差异(χ21=74.7;P<.001)。表达能力与分组变化呈负相关(r=-.144;P<.001)。在ICD-10-CCM/ICD-11映射表中,60.5%(2164/3576)的代码是后协调的。协调后的前3名结果是特定解剖(1907/3576,53.3%),组织病理学(201/3576,5.6%),和替代严重程度2(70/3576,2%)。后协调的表达能力没有得到充分体现。
    结论:ICD-11包括许多肿瘤分类的改进,尤其是新的编码系统,提高表达能力,和良好的语义互操作性。向ICD-11过渡将不可避免地给临床医生带来挑战,编码员,政策制定者和IT技术人员,许多准备工作将是必要的。
    BACKGROUND: The International Classification of Diseases, Eleventh Revision (ICD-11) improved neoplasm classification.
    OBJECTIVE: We aimed to study the alterations in the ICD-11 compared to the Chinese Clinical Modification of the International Classification of Diseases, Tenth Revision (ICD-10-CCM) for neoplasm classification and to provide evidence supporting the transition to the ICD-11.
    METHODS: We downloaded public data files from the World Health Organization and the National Health Commission of the People\'s Republic of China. The ICD-10-CCM neoplasm codes were manually recoded with the ICD-11 coding tool, and an ICD-10-CCM/ICD-11 mapping table was generated. The existing files and the ICD-10-CCM/ICD-11 mapping table were used to compare the coding, classification, and expression features of neoplasms between the ICD-10-CCM and ICD-11.
    RESULTS: The ICD-11 coding structure for neoplasms has dramatically changed. It provides advantages in coding granularity, coding capacity, and expression flexibility. In total, 27.4% (207/755) of ICD-10 codes and 38% (1359/3576) of ICD-10-CCM codes underwent grouping changes, which was a significantly different change (χ21=30.3; P<.001). Notably, 67.8% (2424/3576) of ICD-10-CCM codes could be fully represented by ICD-11 codes. Another 7% (252/3576) could be fully described by uniform resource identifiers. The ICD-11 had a significant difference in expression ability among the 4 ICD-10-CCM groups (χ23=93.7; P<.001), as well as a considerable difference between the changed and unchanged groups (χ21=74.7; P<.001). Expression ability negatively correlated with grouping changes (r=-.144; P<.001). In the ICD-10-CCM/ICD-11 mapping table, 60.5% (2164/3576) of codes were postcoordinated. The top 3 postcoordinated results were specific anatomy (1907/3576, 53.3%), histopathology (201/3576, 5.6%), and alternative severity 2 (70/3576, 2%). The expression ability of postcoordination was not fully reflected.
    CONCLUSIONS: The ICD-11 includes many improvements in neoplasm classification, especially the new coding system, improved expression ability, and good semantic interoperability. The transition to the ICD-11 will inevitably bring challenges for clinicians, coders, policy makers and IT technicians, and many preparations will be necessary.
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  • 文章类型: Journal Article
    Although autopsy diagnosis includes routinely, a thorough evaluation of all available pathological results and also of any available clinical data, the contribution of this clinical information to the diagnostic yield of the autopsy has not been analyzed. We aimed to determine to which degree the use of clinical data improves the diagnostic accuracy of the complete diagnostic autopsy (CDA) and the minimally invasive autopsy (MIA), a simplified pathological postmortem procedure designed for low-income sites. A total of 264 coupled MIA and CDA procedures (112 adults, 57 maternal deaths, 54 children, and 41 neonates) were performed at the Maputo Hospital, Mozambique. We compared the diagnoses obtained by the MIA blind to clinical data (MIAb), the MIA adding the clinical information (MIAc), and the CDA blind to clinical information (CDAb), with the results of the gold standard, the CDA with clinical data, by comparing the International Classification of Diseases, Tenth Revision codes and the main diagnostic classes obtained with each evaluation strategy (MIAb, MIAc, CDAb, CDAc). The clinical data increased diagnostic coincidence to the MIAb with the gold standard in 30 (11%) of 264 cases and modified the CDAb diagnosis in 20 (8%) of 264 cases. The increase in concordance between MIAb and MIAc with the gold standard was significant in neonatal deaths (κ increasing from 0.404 to 0.618, P = .0271), adult deaths (κ increasing from 0.732 to 0.813, P = .0221), and maternal deaths (κ increasing from 0.485 to 0.836, 0.;P < .0001). In conclusion, the use of clinical information increases the precision of MIA and CDA and may strengthen the performance of the MIA in resource-limited settings.
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