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Machine Learning for Childhood Acute Lymphoblastic Leukaemia Gene Expression Data Analysis: A Review

机译:机器学习对儿童急性淋巴细胞白血病基因表达数据的分析:综述。

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Among childhood cancer, acute lymphoblastic leukaemia (ALL) has been the most extensively studied propelled by the desire to improve survival rate. DNA microarray technology has expanded rapidly providing an extensive source of data that promise to pave the way for better prognosis and diagnosis of cancer and identify key targets for drug development. DNA microarray data analysis has been carried out using statistical analysis as well as machine learning and data mining approaches. In this paper, we present a comprehensive review of machine learning approaches that have been used on ALL microarray data. Followed by the research conducted by biological and medical childhood leukaemia research groups, machine learning has been used to enhance cancer diagnosis and subtype classification, development of novel therapeutic approaches and accurate identification of risk stratification of patients. These methods have been used in four major areas of microarray data analysis: gene selection, clustering, classification and pathway analysis. Each machine learning algorithm has its own advantages and drawbacks. Highlights of these as well as some outstanding future research and challenges are summarized in this paper. This review aims to serve as a starting point for those interested in microarray analysis in general and cancer research in particular.
机译:在儿童期癌症中,急性淋巴细胞白血病(ALL)已被提高生存率的愿望所推动。 DNA微阵列技术迅速发展,提供了广泛的数据来源,有望为更好地预测和诊断癌症以及确定药物开发的关键目标铺平道路。 DNA微阵列数据分析已使用统计分析以及机器学习和数据挖掘方法进行。在本文中,我们将对已用于ALL微阵列数据的机器学习方法进行全面回顾。在由儿童生物学和医学上的白血病研究小组进行的研究之后,机器学习已被用于增强癌症的诊断和亚型分类,开发新的治疗方法以及准确识别患者的风险分层。这些方法已用于微阵列数据分析的四个主要领域:基因选择,聚类,分类和途径分析。每种机器学习算法都有其自身的优缺点。本文总结了这些方面的亮点以及未来的一些杰出研究和挑战。这篇综述的目的是为那些对一般微阵列分析感兴趣,尤其是对癌症研究感兴趣的人们提供一个起点。

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