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Application of Machine Learning Techniques to Acute Myeloid Leukemia.

机译:机器学习技术在急性髓性白血病中的应用。

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摘要

This thesis is inspired by the position paper "Predictive, personalized, preventive, participatory (P4) cancer medicine" [1]. The basic concept of P4 medicine was "The right patient with the right drug at the right dose at the right time.". In other words, the goal is to tailor medical treatment to the individual characteristics, needs, and preferences of a patient during all stages of care, including prevention, diagnosis, treatment, and follow-up [1]. In this thesis, we used Acute Myeloid Leukemia (AML) as our case study because if untreated, AML progresses rapidly and is typically fatal within weeks or months, and also because genomic data were available. It has also been shown that AML is associated with gene mutations [2], and hence, genomic approaches have the potential to contribute to this heterogeneous cancer.;We applied machine learning algorithms to build predictive models using biomedical data profiling AML patients. Specifically, in chapter 1 we introduced the problem and related works of our projects and in chapter 2 we introduced background knowledge of all the algorithms and technologies being used. In chapter 3, we report the identification of 24-gene signature predictive of the relapse of low-risk AML patients. These 24 genes could be used to distinguish a future patient will be relapse or non-relapse. Our findings in chapter 3 were derived by mining gene expression data of AML patients generated from microarray technology and next generation sequencing technology. We would like to note the limitations of this "personalized medicine" approach: further clinical evidence and trials would be needed to elucidate the underlying biological mechanisms. In chapter 4, we applied correlation analyses to high-throughput drug sensitivity data to identify gene mutations that could be potential candidates to explain patients' responses to AML drugs. In chapter 5, we concluded our projects and given an overview of possible future works. In this thesis, we focused on AML as our case study. However, our methods could be applicable to other diseases for which data are available.
机译:本论文的灵感来自立场文件“预测性,个性化,预防性,参与性(P4)癌症医学” [1]。 P4药物的基本概念是“在正确的时间以正确的剂量使用正确的药物的正确患者”。换句话说,目标是在护理的所有阶段,包括预防,诊断,治疗和随访中,根据患者的个体特征,需求和喜好调整药物治疗[1]。在本文中,我们使用急性髓细胞性白血病(AML)作为案例研究,因为如果不进行治疗,AML会迅速发展,并且通常在数周或数月内致命,并且还因为可以获得基因组数据。研究还表明,AML与基因突变有关[2],因此,基因组方法有可能促成这种异质性癌症。我们应用机器学习算法,通过对AML患者进行生物医学数据分析来建立预测模型。具体而言,在第1章中,我们介绍了项目的问题和相关工作,在第2章中,介绍了所使用的所有算法和技术的背景知识。在第3章中,我们报告了鉴定可预测低风险AML患者复发的24基因签名。这24个基因可用于区分未来患者将复发还是未复发。我们在第3章中的发现是通过挖掘从微阵列技术和下一代测序技术产生的AML患者的基因表达数据得出的。我们想指出这种“个性化医学”方法的局限性:需要进一步的临床证据和试验来阐明潜在的生物学机制。在第4章中,我们对高通量药物敏感性数据进行了相关分析,以鉴定可能解释患者对AML药物反应的潜在候选基因突变。在第5章中,我们结束了我们的项目,并对可能的未来工作进行了概述。在本文中,我们将反洗钱作为案例研究。但是,我们的方法可能适用于可获得数据的其他疾病。

著录项

  • 作者

    Wei, Qi.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Computer science.
  • 学位 Masters
  • 年度 2016
  • 页码 68 p.
  • 总页数 68
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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