Benchmarking of analytical combinations for COVID-19 outcome prediction using single-cell RNA sequencing data

Author:

Cao Yue1234,Ghazanfar Shila123,Yang Pengyi12536,Yang Jean1236

Affiliation:

1. The University of Sydney School of Mathematics and Statistics, , NSW 2006 , Australia

2. The University of Sydney Charles Perkins Centre, , NSW 2006 , Australia

3. University of Sydney Sydney Precision Data Science Centre, , NSW 2006 , Australia

4. Laboratory of Data Discovery for Health Limited (D24H) , Science Park, Hong Kong SAR , China

5. The University of Sydney Children’s Medical Research Institute, Faculty of Medicine and Health, , NSW 2145 , Australia

6. Laboratory of Data Discovery for Health Limited (D24H), Science Park , Hong Kong SAR , China

Abstract

Abstract The advances of single-cell transcriptomic technologies have led to increasing use of single-cell RNA sequencing (scRNA-seq) data in large-scale patient cohort studies. The resulting high-dimensional data can be summarized and incorporated into patient outcome prediction models in several ways; however, there is a pressing need to understand the impact of analytical decisions on such model quality. In this study, we evaluate the impact of analytical choices on model choices, ensemble learning strategies and integrate approaches on patient outcome prediction using five scRNA-seq COVID-19 datasets. First, we examine the difference in performance between using single-view feature space versus multi-view feature space. Next, we survey multiple learning platforms from classical machine learning to modern deep learning methods. Lastly, we compare different integration approaches when combining datasets is necessary. Through benchmarking such analytical combinations, our study highlights the power of ensemble learning, consistency among different learning methods and robustness to dataset normalization when using multiple datasets as the model input.

Funder

National Health and Medical Research Council

AIR@innoHK programme of the Innovation and Technology Commission of Hong Kong

Chan Zuckerberg Initiative Single Cell Biology Data Insights

Australian Research Council Discovery Early Career Researcher Awards

University of Sydney Postgraduate Award Stipend Scholarship

Research Training Program Tuition Fee Offset

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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