Latent Tuberculosis Infection Diagnosis among Household Contacts in a High Tuberculosis-Burden Area: a Comparison between Transcript Signature and Interferon Gamma Release Assay.
Sheetal KaulVivek NairShweta BirlaShikha DhawanSumit RathoreVishal KhannaSheelu LohiyaShakir AliShamim MannanKirankumar RadePawan MalhotraDinesh GuptaAshwani KhannaAsif MohmmedPublished in: Microbiology spectrum (2022)
Diagnosis of latent tuberculosis infection (LTBI) using biomarkers in order to identify the risk of progressing to active TB and therefore predicting a preventive therapy has been the main bottleneck in eradication of tuberculosis. We compared two assays for the diagnosis of LTBI: transcript signatures and interferon gamma release assay (IGRA), among household contacts (HHCs) in a high tuberculosis-burden population. HHCs of active TB cases were recruited for our study; these were confirmed to be clinically negative for active TB disease. Eighty HHCs were screened by IGRA using QuantiFERON-TB Gold Plus (QFT-Plus) to identify LTBI and uninfected cohorts; further, quantitative levels of transcript for selected six genes ( TNFRSF10C , ASUN , NEMF , FCGR1B , GBP1 , and GBP5 ) were determined. Machine learning (ML) was used to construct models of different gene combinations, with a view to identify hidden but significant underlying patterns of their transcript levels. Forty-three HHCs were found to be IGRA positive (LTBI) and thirty-seven were IGRA negative (uninfected). FCGR1B , GBP1 , and GBP5 transcripts differentiated LTBI from uninfected among HHCs using Livak method. ML and ROC (Receiver Operator Characteristic) analysis validated this transcript signature to have a specificity of 72.7%. In this study, we compared a quantitative transcript signature with IGRA to assess the diagnostic ability of the two, for detection of LTBI cases among HHCs of a high-TB burden population; we concluded that a three gene ( FCGR1B, GBP1 , and GBP5 ) transcript signature can be used as a biomarker for rapid screening. IMPORTANCE The study compares potential of transcript signature and IGRA to diagnose LTBI. It is first of its kind study to screen household contacts (HHCs) in high TB burden area of India. A transcript signature ( FCGR1B, GBP1 , & GBP5 ) is identified as potential biomarker for LTBI. These results can lead to development of point-of-care (POC) like device for LTBI screening in a high TB burdened area.
Keyphrases
- mycobacterium tuberculosis
- rna seq
- machine learning
- pulmonary tuberculosis
- high throughput
- stem cells
- hiv infected
- hiv aids
- mesenchymal stem cells
- single cell
- dendritic cells
- gene expression
- immune response
- artificial intelligence
- deep learning
- risk assessment
- adverse drug
- hepatitis c virus
- climate change
- electronic health record
- dna methylation
- human health
- smoking cessation
- replacement therapy
- silver nanoparticles