scNovel: a scalable deep learning-based network for novel rare cell discovery in single-cell transcriptomics

Author:

Zheng Chuanyang1,Wang Yixuan1,Cheng Yuqi2,Wang Xuesong1,Wei Hongxin3,King Irwin1,Li Yu14567

Affiliation:

1. Department of Computer Science and Engineering , CUHK, Hong Kong SAR , China

2. College of Computing, Georgia Institute of Technology , Atlanta, GA , USA

3. MLR Lab, Southern University of Science and Technology

4. The CUHK Shenzhen Research Institute , Hi-Tech Park, Nanshan, Shenzhen 518057 , China

5. Institute for Medical Enginering and Science, Massachusetts Institute of Technology , Cambridge, MA , USA

6. Wyss Institute for Biologically Inspired Engineering, Harvard University , Boston, MA , USA

7. Broad Institute of MIT and Harvard, Cambridge , MA , USA

Abstract

Abstract Single-cell RNA sequencing has achieved massive success in biological research fields. Discovering novel cell types from single-cell transcriptomics has been demonstrated to be essential in the field of biomedicine, yet is time-consuming and needs prior knowledge. With the unprecedented boom in cell atlases, auto-annotation tools have become more prevalent due to their speed, accuracy and user-friendly features. However, existing tools have mostly focused on general cell-type annotation and have not adequately addressed the challenge of discovering novel rare cell types. In this work, we introduce scNovel, a powerful deep learning-based neural network that specifically focuses on novel rare cell discovery. By testing our model on diverse datasets with different scales, protocols and degrees of imbalance, we demonstrate that scNovel significantly outperforms previous state-of-the-art novel cell detection models, reaching the most AUROC performance(the only one method whose averaged AUROC results are above 94%, up to 16.26% more comparing to the second-best method). We validate scNovel’s performance on a million-scale dataset to illustrate the scalability of scNovel further. Applying scNovel on a clinical COVID-19 dataset, three potential novel subtypes of Macrophages are identified, where the COVID-related differential genes are also detected to have consistent expression patterns through deeper analysis. We believe that our proposed pipeline will be an important tool for high-throughput clinical data in a wide range of applications.

Funder

Research Grants Council of the Hong Kong Special Administrative Region

Innovation and Technology Commission of the Hong Kong Special Administrative Region

Chinese University of Hong Kong

Publisher

Oxford University Press (OUP)

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