Beyond benchmarking and towards predictive models of dataset-specific single-cell RNA-seq pipeline performance

IF 10.1 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Genome Biology Pub Date : 2024-06-17 DOI:10.1186/s13059-024-03304-9
Cindy Fang, Alina Selega, Kieran R. Campbell
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Abstract

The advent of single-cell RNA-sequencing (scRNA-seq) has driven significant computational methods development for all steps in the scRNA-seq data analysis pipeline, including filtering, normalization, and clustering. The large number of methods and their resulting parameter combinations has created a combinatorial set of possible pipelines to analyze scRNA-seq data, which leads to the obvious question: which is best? Several benchmarking studies compare methods but frequently find variable performance depending on dataset and pipeline characteristics. Alternatively, the large number of scRNA-seq datasets along with advances in supervised machine learning raise a tantalizing possibility: could the optimal pipeline be predicted for a given dataset? Here, we begin to answer this question by applying 288 scRNA-seq analysis pipelines to 86 datasets and quantifying pipeline success via a range of measures evaluating cluster purity and biological plausibility. We build supervised machine learning models to predict pipeline success given a range of dataset and pipeline characteristics. We find that prediction performance is significantly better than random and that in many cases pipelines predicted to perform well provide clustering outputs similar to expert-annotated cell type labels. We identify characteristics of datasets that correlate with strong prediction performance that could guide when such prediction models may be useful. Supervised machine learning models have utility for recommending analysis pipelines and therefore the potential to alleviate the burden of choosing from the near-infinite number of possibilities. Different aspects of datasets influence the predictive performance of such models which will further guide users.
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超越基准测试,建立特定数据集单细胞 RNA-seq 管线性能的预测模型
单细胞 RNA 测序(scRNA-seq)的出现推动了 scRNA-seq 数据分析管道中所有步骤(包括过滤、归一化和聚类)计算方法的重大发展。大量的方法及其产生的参数组合产生了一系列可能的组合管道来分析 scRNA-seq 数据,这就产生了一个显而易见的问题:哪种方法最好?有几项基准研究对各种方法进行了比较,但经常发现不同方法的性能因数据集和管道特性而异。另外,大量的 scRNA-seq 数据集和监督机器学习的进步提出了一个诱人的可能性:能否预测出特定数据集的最佳管道?在这里,我们将 288 个 scRNA-seq 分析管道应用于 86 个数据集,并通过一系列评估聚类纯度和生物学合理性的指标来量化管道的成功率,从而开始回答这个问题。我们建立了有监督的机器学习模型,根据一系列数据集和管道特征预测管道的成功率。我们发现,预测结果明显优于随机结果,而且在很多情况下,预测结果良好的管道所提供的聚类结果与专家标注的细胞类型标签相似。我们确定了与强大预测性能相关的数据集特征,这些特征可以指导此类预测模型何时有用。有监督的机器学习模型可用于推荐分析管道,因此有可能减轻从近乎无限的可能性中做出选择的负担。数据集的不同方面会影响此类模型的预测性能,这将进一步为用户提供指导。
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来源期刊
Genome Biology
Genome Biology Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
21.00
自引率
3.30%
发文量
241
审稿时长
2 months
期刊介绍: Genome Biology stands as a premier platform for exceptional research across all domains of biology and biomedicine, explored through a genomic and post-genomic lens. With an impressive impact factor of 12.3 (2022),* the journal secures its position as the 3rd-ranked research journal in the Genetics and Heredity category and the 2nd-ranked research journal in the Biotechnology and Applied Microbiology category by Thomson Reuters. Notably, Genome Biology holds the distinction of being the highest-ranked open-access journal in this category. Our dedicated team of highly trained in-house Editors collaborates closely with our esteemed Editorial Board of international experts, ensuring the journal remains on the forefront of scientific advances and community standards. Regular engagement with researchers at conferences and institute visits underscores our commitment to staying abreast of the latest developments in the field.
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