Biomolecules (Apr 2021)

A New Era of Neuro-Oncology Research Pioneered by Multi-Omics Analysis and Machine Learning

  • Satoshi Takahashi,
  • Masamichi Takahashi,
  • Shota Tanaka,
  • Shunsaku Takayanagi,
  • Hirokazu Takami,
  • Erika Yamazawa,
  • Shohei Nambu,
  • Mototaka Miyake,
  • Kaishi Satomi,
  • Koichi Ichimura,
  • Yoshitaka Narita,
  • Ryuji Hamamoto

DOI
https://doi.org/10.3390/biom11040565
Journal volume & issue
Vol. 11, no. 4
p. 565

Abstract

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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.

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