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The annotation station: an open-source technology for annotating large biomedical databases

机译:注释站:一种用于注释大型生物医学数据库的开源技术

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The authors present a new framework for annotating large databases of multichannel clinical data such as MIMIC II. MIMIC II is an ICU database which includes both regularly sampled (but often discontinuous) high rate data (such as ECG and BP waveforms) and low resolution data (such as waveform derived averages, lab results, medication changes, fluid balances, and nurse-verified signal values) which are often sparse, asynchronous and irregularly sampled. Because of the extremely rich high-dimensional nature of MIMIC II medical data, we require a vast quantity of labeled data in order to test and validate ICU decision-support algorithms. MIMIC II presents a new annotation challenge which cannot be met by currently existing annotation structures due to the heterogeneous data types and unavailability of data. We have constructed a hardware/software configuration known as the "annotation station", a quad-monitor, time synchronized, viewing tool which displays all of this data in an organized fashion. The software gives the user the opportunity to produce annotations in a practicable format that serve the goals of the MIMIC II project. The annotation structure must apply to all the numeric signals in MIMIC as well as nonnumeric data such as nursing notes, discharge summaries and patient histories. Furthermore, in order for the annotation framework to adequately represent the state of the patient to a human or machine, it must involve clinical coding using accepted medical lexicons and causal linkage of one annotation to another. This linkage is the basis of causal reasoning between significant events in different streams of the data. The annotations also include subjective expert assessments of a patient's hemodynamic state and trajectory. These assessments provide objective and subjective labels for assessing algorithms that track trends in the data with a view to producing intelligent alarms.
机译:作者提出了一个新的框架,用于注释大型数据库的多通道临床数据,如模拟II。模拟II是ICU数据库,包括定期采样(但通常不连续)高速率数据(如ECG和BP波形)和低分辨率数据(例如波形导出的平均值,实验室结果,药物改变,流体余额和护理经过验证的信号值)通常稀疏,异步和不规则采样。由于模拟II医疗数据的极其丰富的高维性质,我们需要大量标记的数据来测试和验证ICU决策支持算法。模仿II呈现了一种新的注释挑战,由于异构数据类型和数据不可用的目前现有的注释结构无法满足。我们构建了称为“注释站”的硬件/软件配置,Quad-Monitor,时间同步,查看工具,可以有组织的方式显示所有这些数据。该软件使用户有机会以可行的格式生产注释,这些格式为模拟II项目的目标提供服务。注释结构必须适用于模拟中的所有数字信号以及诸如护理票据,排放摘要和患者历史的非数字数据。此外,为了使注释框架充分代表患者的状态到人或机器,它必须使用接受的医疗词典和一个注释对另一个注释的因果关系涉及临床编码。这种联系是数据不同流中的重要事件之间的因果推理的基础。注释还包括患者血液动力学状态和轨迹的主观专家评估。这些评估提供了客观和主观标签,用于评估轨道上的算法,以便为生产智能警报进行视图。

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