患者反应数据集:挑战与机遇

Randall Wald, T. Khoshgoftaar
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引用次数: 4

摘要

随着生物信息学领域的重要性日益提高,越来越多的研究开始研究利用基因微阵列数据集来了解癌症。尽管大部分研究都集中在哪些基因在癌变组织和非癌变组织之间表达不同,但同样重要的问题是,哪些基因对预测癌症治疗的成功最有用。病人对特定治疗的反应如何取决于他们癌症的具体情况,单靠活组织检查无法检测到遗传标记;因此,基因芯片是该领域越来越有价值的研究工具。由于所有患者之间的预期相似性(因为他们共享一种癌症类型),确定哪些基因标记可以预测治疗的成功反应的问题不同于更一般的癌症识别和癌症分类问题,因此将这些数据集集合作为一组与其他癌症相关的微阵列数据集分开来理解是很重要的。目前的工作调查了使用基因微阵列数据集进行患者反应预测任务的研究,特别是使用这些数据发现预测患者反应的最佳基因的研究。我们讨论了被调查论文的方法和程序,以及哪些方法被用于基因选择,并提出了未来工作的想法和策略,进一步探索如何最好地识别基因特征,这些特征可以在临床上用于帮助选择针对特定癌症的最佳治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Patient response datasets: Challenges and opportunities
As the field of bioinformatics has grown in importance, more and more studies have investigated the use of gene microarray datasets to understand cancer. Although much of this research has focused on which genes are differently-expressed between cancerous and non-cancerous tissues, an equally important question is which genes are most useful for predicting the success of cancer treatment. How well a patient will respond to a given treatment depends on the specifics of their cancer, and biopsies alone cannot detect genetic markers; thus, gene chips are an increasingly valuable research tool in this field. The problem of identifying which gene markers are predictive of successful response to treatment differs from more general cancer-identification and cancer-classification problems due to the expected similarities among all patients (since they share a cancer type), and thus it is important to understand this collection of datasets as a group separate from other cancer-related microarray datasets. The present work surveys research using gene microarray datasets for the task of patient response prediction, in particular research which uses this data to discover the best genes for predicting patient response. We discuss the methods and procedures of the surveyed papers and which approaches were used for gene selection, and present ideas and strategies for future work which further explores how to best identify gene signatures which can be used clinically to help select the best treatment for a given cancer.
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