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Prospects and Challenges for Clinical Decision Support in the Era of Big Data

机译:大数据时代临床决策支持的前景与挑战

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摘要

Recently, there has been burgeoning interest in developing more effective and robust clinical decision support systems (CDSSs) for oncology. This has been primarily driven by the demands for more personalized and precise medical practice in oncology in the era of so-called big data (BD), an era that promises to harness the power of large-scale data flow to revolutionize cancer treatment. This interest in BD analytics has created new opportunities as well as new unmet challenges. These include: routine aggregation and standardization of clinical data, patient privacy, transformation of current analytical approaches to handle such noisy and heterogeneous data, and expanded use of advanced statistical learning methods on the basis of confluence of modern statistical methods and machine learning algorithms. In this review, we present the current status of CDSSs in oncology, the prospects and current challenges of BD analytics, and the promising role of integrated modern statistics and machine learning algorithms in predicting complex clinical end points, individualizing treatment rules, and optimizing dynamic personalized treatment regimens. We discuss issues pertaining to these topics and present application examples from an aggregate of experiences. We also discuss the role of human factors in improving the use and acceptance of such enhanced CDSSs and how to mitigate possible sources of human error to achieve optimal performance and wider acceptance.
机译:最近,人们对开发更有效,更强大的肿瘤学临床决策支持系统(CDSS)产生了浓厚的兴趣。这主要是由于在所谓的大数据(BD)时代对肿瘤学更加个性化和精确的医学实践的需求所推动的,BD是一个有望利用大规模数据流的力量彻底改变癌症治疗的时代。对BD分析的这种兴趣创造了新的机遇,也带来了新的未解决的挑战。这些措施包括:临床数据的常规汇总和标准化,患者隐私,对处理此类嘈杂数据和异构数据的当前分析方法的转变,以及在现代统计方法和机器学习算法融合的基础上,扩展使用高级统计学习方法。在这篇综述中,我们介绍了CDSS在肿瘤学中的现状,BD分析的前景和当前挑战,以及集成的现代统计学和机器学习算法在预测复杂的临床终点,个性化治疗规则和优化动态个性化方面的有希望的作用。治疗方案。我们讨论与这些主题有关的问题,并从经验中总结出应用示例。我们还将讨论人为因素在改进此类增强CDSS的使用和接受中的作用,以及如何减轻人为错误的可能来源,以实现最佳性能和更广泛的接受度。

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