Division of Medical AI Research and Development, National Cancer Center Research Institute, Tokyo 104-0045, Japan.
Cancer Translational Research Team, RIKEN Center for Advanced Intelligence Project, Tokyo 103-0027, Japan.
Biomolecules. 2021 Apr 12;11(4):565. doi: 10.3390/biom11040565.
Although the incidence of central nervous system (CNS) cancers is not high, it significantly reduces a patient's quality of life and results in high mortality rates. A low incidence also means a low number of cases, which in turn means a low amount of information. To compensate, researchers have tried to increase the amount of information available from a single test using high-throughput technologies. This approach, referred to as single-omics analysis, has only been partially successful as one type of data may not be able to appropriately describe all the characteristics of a tumor. It is presently unclear what type of data can describe a particular clinical situation. One way to solve this problem is to use multi-omics data. When using many types of data, a selected data type or a combination of them may effectively resolve a clinical question. Hence, we conducted a comprehensive survey of papers in the field of neuro-oncology that used multi-omics data for analysis and found that most of the papers utilized machine learning techniques. This fact shows that it is useful to utilize machine learning techniques in multi-omics analysis. In this review, we discuss the current status of multi-omics analysis in the field of neuro-oncology and the importance of using machine learning techniques.
虽然中枢神经系统(CNS)癌症的发病率不高,但它显著降低了患者的生活质量,并导致高死亡率。发病率低也意味着病例少,进而意味着信息量少。为了弥补这一点,研究人员试图使用高通量技术从单次测试中增加可用信息的数量。这种方法被称为单组学分析,但只取得了部分成功,因为一种类型的数据可能无法恰当地描述肿瘤的所有特征。目前尚不清楚哪种类型的数据可以描述特定的临床情况。解决这个问题的一种方法是使用多组学数据。当使用多种类型的数据时,选择的数据类型或它们的组合可能会有效地解决临床问题。因此,我们对神经肿瘤学领域使用多组学数据进行分析的论文进行了全面调查,发现大多数论文都利用了机器学习技术。这一事实表明,在多组学分析中利用机器学习技术是有用的。在这篇综述中,我们讨论了神经肿瘤学领域多组学分析的现状,以及使用机器学习技术的重要性。