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Trends and Potential of Machine Learning and Deep Learning in Drug Study at Single-Cell Level 被引量:1

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摘要 Cancer treatments always face challenging problems,particularly drug resistance due to tumor cell heterogeneity.The existing datasets include the relationship between gene expression and drug sensitivities;however,the majority are based on tissue-level studies.Study drugs at the single-cell level are perspective to overcome minimal residual disease caused by subclonal resistant cancer cells retained after initial curative therapy.Fortunately,machine learning techniques can help us understand how different types of cells respond to different cancer drugs from the perspective of single-cell gene expression.Good modeling using single-cell data and drug response information will not only improve machine learning for cell-drug outcome prediction but also facilitate the discovery of drugs for specific cancer subgroups and specific cancer treatments.In this paper,we review machine learning and deep learning approaches in drug research.By analyzing the application of these methods on cancer cell lines and single-cell data and comparing the technical gap between single-cell sequencing data analysis and single-cell drug sensitivity analysis,we hope to explore the trends and potential of drug research at the single-cell data level and provide more inspiration for drug research at the single-cell level.We anticipate that this review will stimulate the innovative use of machine learning methods to address new challenges in precision medicine more broadly.
作者 Ren Qi Quan Zou
出处 《Research》 SCIE EI CSCD 2023年第4期145-162,共18页 研究(英文)
基金 The work was supported by the National Natural Science Foundation of China(nos.62131004,and 62201129) the Sichuan Provincial Science Fund for Distinguished Young Scholars(2021JDJQ0025) the Municipal Government of Quzhou under grant numbers 2021D004 and 2022D023 the Zhejiang Provincial Post-doctor Excellent Scientific Research Project Fund for ZJ2022038.
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