4.7 Review

Artificial intelligence in clinical research of cancers

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 23, Issue 1, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbab523

Keywords

drug discovery; clinical research of cancers; deep learning; artificial intelligence

Funding

  1. National Natural Science Foundation of China [62072212]
  2. Development Project of Jilin Province of China [20200401083GX, 20200003, 2020LY500L06, 20200403172SF]
  3. Guangdong Key Project for Applied Fundamental Research [2018KZDXM076]
  4. Jilin Province Key Laboratory of Big Data Intelligent Computing [20180622002JC]

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The extensive application of Artificial Intelligence (AI) in the biomedical domain, particularly in cancer research, has achieved expert-level performance. However, only a few AI-based applications have been approved for real-world use. This article summarizes the progress of AI in cancer research over the past two decades and discusses the challenges and future prospects of AI in cancer treatment.
Several factors, including advances in computational algorithms, the availability of high-performance computing hardware, and the assembly of large community-based databases, have led to the extensive application of Artificial Intelligence (AI) in the biomedical domain for nearly 20 years. AI algorithms have attained expert-level performance in cancer research. However, only a few AI-based applications have been approved for use in the real world. Whether AI will eventually be capable of replacing medical experts has been a hot topic. In this article, we first summarize the cancer research status using AI in the past two decades, including the consensus on the procedure of AI based on an ideal paradigm and current efforts of the expertise and domain knowledge. Next, the available data of AI process in the biomedical domain are surveyed. Then, we review the methods and applications of AI in cancer clinical research categorized by the data types including radiographic imaging, cancer genome, medical records, drug information and biomedical literatures. At last, we discuss challenges in moving AI from theoretical research to real-world cancer research applications and the perspectives toward the future realization of AI participating cancer treatment.

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