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ATC-ICD: enabling domain experts to explore and evaluate machine learning models estimating diagnoses from filled predictions

机译:ATC-ICD:启用域专家探索和评估机器学习模型估算填充预测的诊断

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IntroductionAdministrative and reimbursement data from the Austrian health care system is linked and utilized for research and to support policy makers. Lacking standardized, reliable and systematic coding of diagnoses in the outpatient sector, statistical and machine learning models are developed to estimate individual diagnoses coded as ICD-10 based on filled prescriptions (ATC codes), hence called “ATC-ICD models”.Evaluating the performance of such models, presenting predictions on a global as well as individual level, comparing different technological approaches and establishing trust by providing an intuitive insight into results for non-technical users are the aim of this project.MethodATC-ICD models are presented utilizing interactive web interfaces based on the R shiny package. As one size does not fit all, customized applications are required for different models and points of view. Applying modularization of reoccurring functionality and retaining design principles like a common dashboard layout facilitates the development and training of users. Software containers and centralized infrastructure providing e.g. backup, encryption and authentication enables efficient deployment of new application and their maintenance.ResultsWe developed interactive web-based dashboards enabling experts to explore the prediction of single ATC-ICD models and compare the output of different approaches. The possibility to export and annotate results allows us to collect expert opinions, enhance understanding and gain acceptance conveniently. The combination of various dynamic controls, e.g. to filter, search, sort and cluster results, provides flexible access to complex models and large datasets. Linked and interactive graphs and tables help to understand valid and identify erroneous results much faster than with raw output and printed reports.ConclusionPresenting ATC-ICD models renders them accessible to data scientists and domain experts. It allows us to collect valuable feedback and gain trust in complex, hard to understand methodologies and results.
机译:奥地利医疗保健系统的简介情况和报销数据被联系起来,用于研究和支持政策制定者。缺乏在门诊部门,统计和机器学习模型中诊断的标准化,可靠和系统编码,以估计基于填充的处方(ATC代码)编码为ICD-10编码的个体诊断,因此称为“ATC-> ICD模型”.evaluating这些模型的表现,在全球范围内呈现预测,并通过为非技术用户的结果提供直观的洞察来比较不同的技术方法和建立信任是该项目的目的。呈现了ICD模型的目的。利用基于R闪亮包的交互式Web界面。由于一个尺寸不适合所有,不同的模型和视角都需要定制应用程序。像常见仪表板布局一样应用重新灼录功能和保留设计原则的模块化有助于用户的开发和培训。软件容器和集中式基础设施,提供e.g.备份,加密和身份验证允许高效地部署新应用程序及其维护.ResultWe开发了基于交互式Web的仪表板,使专家能够探索单个ATC-> ICD模型的预测,并比较不同方法的输出。出口和注释结果的可能性使我们能够收集专家意见,方便地增强理解和获得接受。各种动态控制的组合,例如,要过滤,搜索,排序和群集结果,请提供对复杂模型和大型数据集的灵活访问。链接和交互式图形和表有助于了解有效,并识别错误的结果比原始输出和打印报告更快.ClusionPresenting ATC-> ICD模型使其可访问数据科学家和域名专家。它允许我们收集有价值的反馈并获得复杂的信任,难以理解方法和结果。

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