BIG DATA AND VISUAL ANALYTICS IN PEDIATRIC ONCOLOGY AND HEMATOLOGY

Slinin A.S., Kostin F.N., Starikov M.O.
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Abstract

The potential of big data in healthcare relies on the ability to detect patterns and turn high volumes of data into actionable knowledge for precision medicine and decision makers. Due to constantly increasing amount of data, healthcare systems around the world are facing challenges associated with data processing and analysis while keeping costs under control. There is a number of examples where the use of big data in healthcare already provides solutions that optimize patient care and generate value for healthcare institutions. However, a further increase in the amount and variety of dynamically changing data in healthcare systems requires that all the relevant stakeholders collaborate and adapt the design and performance of their systems. To this end, it is necessary both to invest in the human capital and to build the technological infrastructure to house and converge a huge volume of healthcare data. It is also important to provide a set of tools that can improve data analytics by creating interactive visual interfaces to help analysts navigate and make sense of massive datasets. Here we provide an overview of international advanced initiatives related to big data analytics in various sectors of public healthcare that are aimed at obtaining new knowledge, improving clinical care and rationalizing epidemiological surveillance. Here we also share our own experience of applying visual analytics tools in the "Electronic Passport of Pediatric Oncology and Hematology Service." This passport was created by specialists from the Dmitry Rogachev National Medical Research Center of Pediatric Hematology, Oncology and Immunology of Ministry of Healthcare of Russia in order to improve the quality of specialized care in the Russian regions. This software solution is based on data from checklists and questionnaires (baseline assessment) completed during an outreach event and its preparation as well as from correspondence regarding the implemented corrective measures (baseline and follow-up assessments). This system is an important tool that helps improve the quality of monitoring of the pediatric oncology and hematology service. The structured electronic database allows the user to rank the Russian regions based on a whole range of parameters as well as to generate recommendations for process optimization in regional institutions. In such a complex information system, a user-friendly interface for the processing of large volumes of heterogeneous dynamic data is crucially important.
儿童肿瘤学和血液学中的大数据和可视化分析
大数据在医疗保健领域的潜力依赖于检测模式的能力,并将大量数据转化为精准医疗和决策者可操作的知识。由于数据量不断增加,世界各地的医疗保健系统在控制成本的同时面临着与数据处理和分析相关的挑战。在许多例子中,在医疗保健领域使用大数据已经提供了优化患者护理和为医疗保健机构创造价值的解决方案。然而,医疗保健系统中动态变化数据的数量和种类的进一步增加要求所有相关利益相关者协作并调整其系统的设计和性能。为此,有必要对人力资本进行投资,并建立技术基础设施,以容纳和融合大量医疗保健数据。提供一组工具也很重要,这些工具可以通过创建交互式可视化界面来帮助分析人员导航和理解大量数据集,从而改进数据分析。在这里,我们概述了与公共医疗保健各个部门的大数据分析相关的国际先进举措,旨在获得新知识,改善临床护理和合理化流行病学监测。在此,我们也将分享我们在“儿童肿瘤和血液学服务电子护照”中应用可视化分析工具的经验。该护照是由俄罗斯卫生部德米特里·罗加乔夫国家儿童血液学、肿瘤学和免疫学医学研究中心的专家创建的,目的是提高俄罗斯地区的专业护理质量。该软件解决方案基于在推广活动及其准备期间完成的核对表和问卷(基线评估)以及关于实施的纠正措施(基线和后续评估)的通信中的数据。该系统是一个重要的工具,有助于提高儿童肿瘤和血液学服务的监测质量。结构化的电子数据库允许用户根据一系列参数对俄罗斯地区进行排名,并为区域机构的流程优化提出建议。在如此复杂的信息系统中,处理大量异构动态数据的用户友好界面至关重要。
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