DeepSCP: utilizing deep learning to boost single-cell proteome coverage.
Bing WangYue WangYu ChenMengmeng GaoJie RenYueshuai GuoChenghao SituYaling QiHui ZhuYan LiXue-Jiang GuoPublished in: Briefings in bioinformatics (2022)
Multiplexed single-cell proteomes (SCPs) quantification by mass spectrometry greatly improves the SCP coverage. However, it still suffers from a low number of protein identifications and there is much room to boost proteins identification by computational methods. In this study, we present a novel framework DeepSCP, utilizing deep learning to boost SCP coverage. DeepSCP constructs a series of features of peptide-spectrum matches (PSMs) by predicting the retention time based on the multiple SCP sample sets and fragment ion intensities based on deep learning, and predicts PSM labels with an optimized-ensemble learning model. Evaluation of DeepSCP on public and in-house SCP datasets showed superior performances compared with other state-of-the-art methods. DeepSCP identified more confident peptides and proteins by controlling q-value at 0.01 using target-decoy competition method. As a convenient and low-cost computing framework, DeepSCP will help boost single-cell proteome identification and facilitate the future development and application of single-cell proteomics.
Keyphrases
- single cell
- deep learning
- rna seq
- mass spectrometry
- low cost
- convolutional neural network
- high throughput
- artificial intelligence
- affordable care act
- healthcare
- machine learning
- mental health
- bioinformatics analysis
- high resolution
- small molecule
- protein protein
- high performance liquid chromatography
- electronic health record