Statistical and machine learning methods for spatially resolved transcriptomics data analysis

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作者
Zexian Zeng
Yawei Li
Yiming Li
Yuan Luo
机构
[1] Peking University,Center for Quantitative Biology, Academy for Advanced Interdisciplinary Studies
[2] Peking University,Peking
[3] Harvard T.H. Chan School of Public Health,Tsinghua Center for Life Sciences, Academy for Advanced Interdisciplinary Studies
[4] Northwestern University Feinberg School of Medicine,Department of Data Sciences, Dana Farber Cancer Institute
[5] Northwestern University Clinical and Translational Sciences Institute,Division of Health and Biomedical Informatics, Department of Preventive Medicine
[6] Northwestern University,Institute for Augmented Intelligence in Medicine
[7] Northwestern University,Center for Health Information Partnerships
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摘要
The recent advancement in spatial transcriptomics technology has enabled multiplexed profiling of cellular transcriptomes and spatial locations. As the capacity and efficiency of the experimental technologies continue to improve, there is an emerging need for the development of analytical approaches. Furthermore, with the continuous evolution of sequencing protocols, the underlying assumptions of current analytical methods need to be re-evaluated and adjusted to harness the increasing data complexity. To motivate and aid future model development, we herein review the recent development of statistical and machine learning methods in spatial transcriptomics, summarize useful resources, and highlight the challenges and opportunities ahead.
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