Multi-omics identify LRRC15 as a COVID-19 severity predictor and persistent pro-thrombotic signals in convalescence
Creators
- 
    
      Jack S Gisby1
  
  
    
      
        
        
          
- Norzawani B Buang1
- Artemis Papadaki1
- Candice L Clarke1
- Talat H Malik1
- Nicholas Medjeral-Thomas1
- Damiola Pinheiro1
- Paige M Mortimer1
- Shanice Lewis1
- Eleanor Sandhu1
- Stephen P McAdoo1
- Maria F Prendecki1
- Michelle Willicombe1
- Matthew C Pickering1
- Marina Botto1
- David C Thomas1
- 
    
      James E Peters1
  
  
    
      
        
        
          
- 1. Imperial College London
Description
RNA sequencing, SomaLogic proteomics and flow cytometry data were generated for two cohorts of end-stage kidney disease patients with COVID-19. The Wave 1 cohort consists of samples collected from patients during the first wave of COVID-19 in early 2020, while samples were collected for the Wave 2 cohort in the following year.
This data deposition includes the RNA-seq counts, SomaScan proteomics, flow cytometry and clinical metadata associated with the study. For further information about the study and data, see the associated GitHub repository (https://github.com/jackgisby/covid-longitudinal-multi-omics) or our pre-print (https://doi.org/10.1101/2022.04.29.22274267). The repository also contains code to replicate our analysis of the data.
The raw RNA-seq reads were processed using the nf-core RNA-seq v3.2 pipeline before htseq-count was used to generate a raw counts matrix, which is included in this deposition (htseq_counts.csv). Three files make up the proteomics data: sample_technical_meta.csv, feature_meta.csv and soma_abundance.csv. The first two files contain metadata columns for the samples and protein features, respectively. The final file includes the unprocessed protein abundance data. The files general_panel.csv and t_cell_panel.csv contain the flow cytometry data, split into the general and T-cell panels, respectively. Finally, clinical metadata is available for the two cohorts described in this study (w1_metadata.csv, w2_metadata.csv).
The features in the clinical metadata include:
| Column Name | Data Type | Description | 
|---|---|---|
| sample_id | Character | Unique identifier for samples | 
| individual_id | Character | Unique identifier for individuals | 
| ethnicity | Character | The individual's ethnicity (asian, white, black or other) | 
| sex | Character | The individual's sex (M or F) | 
| calc_age | Integer | Age in years | 
| ihd | Character | Information on coronary heart disease | 
| previous_vte | Character | Whether individuals have had venous thromboembolism | 
| copd | Character | Whether individuals have chronic obstructive pulmonary disease | 
| diabetes | Character | Whether individuals have diabetes, and, if so, the type of diabetes | 
| smoking | Character | Smoking status | 
| cause_eskd | Character | Cause of ESKD | 
| WHO_severity | Character | The peak (WHO) severity for the patient over the disease course | 
| WHO_temp_severity | Character | The (WHO) severity at time of sampling | 
| fatal_disease | Logical | Whether the disease was fatal | 
| case_control | Character | Whether the individual was COVID-19 POSITIVEorNEGATIVEat time of sampling. Convalescent patients are denoted by the labelRECOVERY | 
| radiology_evidence_covid | Character | Evidence of COVID-19 from radiology | 
| time_from_first_symptoms | Integer | The number of days since the individual first experienced COVID symptoms at time of sampling | 
| time_from_first_positive_swab | Integer | The number of days since the individual's first positive swab was taken at time of sampling | 
Notes
Files
      
        feature_meta.csv
        
      
    
    
      
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Additional details
Funding
- UK Research and Innovation
- COVID-19: Longitudinal immunological and multi-omic profiling of haemodialysis patients MR/V027638/1