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Mining genetic and transcriptomic data using machine learning approaches in Parkinson’s disease

机译:采用帕金森病的机器学习方法采矿遗传和转录组数据

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High-throughput techniques have generated abundant genetic and transcriptomic data of Parkinson’s disease (PD) patients but data analysis approaches such as traditional statistical methods have not provided much in the way of insightful integrated analysis or interpretation of the data. As an advanced computational approach, machine learning, which enables people to identify complex patterns and insight from data, has consequently been harnessed to analyze and interpret large, highly complex genetic and transcriptomic data toward a better understanding of PD. In particular, machine learning models have been developed to integrate patient genotype data alone or combined with demographic, clinical, neuroimaging, and other information, for PD outcome study. They have also been used to identify biomarkers of PD based on transcriptomic data, e.g., gene expression profiles from microarrays. This study overviews the relevant literature on using machine learning models for genetic and transcriptomic data analysis in PD, points out remaining challenges, and suggests future directions accordingly. Undoubtedly, the use of machine learning is amplifying PD genetic and transcriptomic achievements for accelerating the study of PD. Existing studies have demonstrated the great potential of machine learning in discovering hidden patterns within genetic or transcriptomic information and thus revealing clues underpinning pathology and pathogenesis. Moving forward, by addressing the remaining challenges, machine learning may advance our ability to precisely diagnose, prognose, and treat PD.
机译:高通量技术产生了帕金森病(PD)患者的丰富遗传和转录组数据,但数据分析方法,如传统统计方法,尚未提供富有洞察力的综合分析或解释数据的方式。作为一种先进的计算方法,使人们能够识别来自数据的复杂模式和洞察力的机器学习,因此已经利用分析和解释了对PD的更好理解的大,高度复杂的遗传和转录组数据。特别是,已经开发了机器学习模型,用于将患者基因型数据单独整合或与人口统计,临床,神经影像和其他信息相结合,用于PD结果研究。它们还被用于鉴定基于转录组数据的PD的生物标志物,例如来自微阵列的基因表达谱。本研究概述了使用PD中遗传和转录组数据分析的机器学习模型的相关文献,指出了剩余的挑战,并相应地表明了未来的方向。毫无疑问,使用机器学习正在放大PD遗传和转录组成的成果,以加速PD的研究。现有研究已经证明了在遗传或转录组信息中发现隐藏的模式的机器学习的巨大潜力,从而揭示了支撑病理和发病机制的线索。通过解决剩余的挑战,机器学习可能提高我们精确诊断,预测和治疗PD的能力。

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