Trajectory inference in single cell data: A systematic literature review

Ishrat Jahan Emu, Sumon Ahmed
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引用次数: 0

Abstract

Recent advances in single-cell transcriptomics have made it possible to explore the dynamic mechanisms of immunology in a high-throughput and objective manner. Unsupervised trajectory inference methods attempt to automatically reconstruct the developmental path cells are following by using a mixture of cells at various stages of development. In the past few years, there have been a multitude of new techniques for deducing the trajectory of a single cell from its data. This paper proposes that new researchers might focus on these criteria by examining the strategies and challenges of existing methodologies. Using specific databases (Scopus, Google Scholar and IEEE Xplore), these single cell data trajectory inference studies from 2016 to 2022 were reviewed. We have adhered to the PRISMA structure. Three databases and the most recent works on trajectory inference have been selected. The majority of studies compared their results to those of previously established methods. Several challenges were identified. Additionally, we attempted to identify the most recent work strategies. This may aid future researchers in locating suitable strategies.
单细胞数据的轨迹推断:系统的文献综述
单细胞转录组学的最新进展,使我们能够以高通量和客观的方式探索免疫学的动态机制。无监督轨迹推断方法试图通过使用处于不同发育阶段的细胞混合来自动重建细胞的发育路径。在过去的几年里,有许多新技术可以从单个细胞的数据中推断出它的运动轨迹。本文建议新的研究人员可以通过检查现有方法的策略和挑战来关注这些标准。使用特定的数据库(Scopus, Google Scholar和IEEE Xplore),回顾了2016年至2022年这些单细胞数据轨迹推断研究。我们坚持棱镜架构。选择了三个数据库和最新的轨迹推断工作。大多数研究将其结果与先前建立的方法进行了比较。确定了几个挑战。此外,我们试图确定最新的工作策略。这可能有助于未来的研究人员找到合适的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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