通过生物医学大数据挖掘改善患者预后

Q1 Computer Science
C. Suter-Crazzolara
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引用次数: 9

摘要

数字化正在改变当今的医疗保健。医疗信息的大数据分析使诊断、治疗和个性化药物的开发成为可能,提供前所未有的治疗。这可以改善患者的治疗效果,同时控制成本。在这篇综述中,讨论了卫生数据革命的机遇、挑战和解决方案。跨大型数据集的集成和近乎即时响应分析可以支持护理人员和研究人员更快地测试和抛弃假设。医生希望将患者与其他类似的患者进行比较,了解并与同行交流治疗的最佳做法,跨越大队列和参数集。医生和病人之间的实时互动变得越来越重要,允许病人“现场”支持,而不是每隔几周进行一次互动。来自许多学科(生物医学、支付方、政府)的研究人员希望解释大型匿名数据集,以揭示候选药物行为、治疗方案、临床试验或报销的趋势,并根据这些见解采取行动。然而,这些机遇也面临着严峻的挑战。生物医学信息以结构化和非结构化格式(医生信函、患者记录、组学数据、设备数据)的数据筒仓形式提供。数据隐私问题也阻碍了生物医学信息的有效利用。这导致了一个高度监管的行业,因此医疗保健领域的数字化进展比其他行业要慢。本文总结了如何使用大数据的集成和解释来打破数据孤岛,并为更好的患者治疗结果、基于价值的护理和创建智能医疗保健企业铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Better Patient Outcomes Through Mining of Biomedical Big Data
Digitalization is changing healthcare today. Big data analytics of medical information allows diagnostics, therapy and development of personalized medicines, to provide unprecedented treatment. This leads to better patient outcomes, while containing costs. In this review, opportunities, challenges and solutions for this health-data revolution are discussed. Integration and near-instant-response analytics across large datasets ¬can support care-givers and researchers to test and discard hypotheses more quickly. Physicians want to compare a patient to other similar patients, to learn and communicate about treatment best-practices with peers, across large cohorts and sets of parameters. Real-time interactions between physician and patient are becoming more important, allowing ‘live’ support of patients instead of single interactions once every few weeks. Researchers from many disciplines (biomedical, payers, governments) want to interpret large anonymized datasets, to uncover trends in drug-candidate behavior, treatment regimens, clinical trials or reimbursements, and to act on those insights. These opportunities are however met by daunting challenges. Biomedical information is available in data silos of structured and unstructured formats (doctor letters, patient records, omics data, device data). Efficient usage of biomedical information is also hampered by data privacy concerns. This has led to a highly-regulated industry, as a result of which digitalization in healthcare has progressed slower than in other industries. This review concludes with examples of how integration and interpretation of big data can be used to break down data silos and pave the way to better patient outcomes, value-based care, and the creation of an intelligent enterprise for healthcare.
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来源期刊
Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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