Single-cell sequencing technologies offer unprecedented resolution to inspect transcriptomes and generate critical biological insights. As the number of cells and cell types increase in single-cell studies, the effort required to analyze the data surges dramatically, especially when comparative explorations need to be performed on large datasets with different cell types and various sample attributes, such as clinical samples from different age and ancestry groups. Due to the sequential nature of single-cell data analysis, many steps involving multiple method choices and parameter options need to be considered. The computational skills required for integrative and comparative analyses of large datasets with various sample attributes represent a substantial obstacle for many researchers. To address this challenge, we have developed scRICA, a systematic workflow tailored for integrative and comparative single-cell RNA sequencing (scRNA-seq) analysis. This approach streamlines the analytical process, ensuring efficient utilization of computational resources and facilitating scalability for large-scale datasets. With scRICA, researchers can conduct integrative and comparative scRNA-seq analyses with ease, empowering them to derive meaningful insights from their data in a timely manner. scRICA offers a versatile approach by allowing users to input various parameter options from a metadata table, which are inherited throughout the entire analysis workflow. This functionality greatly enhances the efficiency of programming for comparative analyses involving multiple sample attributes. As an R package, scRICA provides a user-friendly interface within the R environment, making it accessible to researchers familiar with R programming. Additionally, scRICA offers a command line execution option, allowing users to seamlessly integrate it into their computational pipelines or execute analyses on High-Performance Computing (HPC) systems. This combination of features ensures flexibility, ease of use, and scalability, making scRICA a valuable tool for comprehensive and efficient single-cell RNA sequencing analysis.
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