Context:
The Genome India Project, a national initiative aimed at mapping the genetic diversity of India, has published its preliminary findings in Nature Genetics. This milestone marks a major step toward advancing precision medicine, disease diagnostics, and population-specific healthcare in India.
Key Highlights:
- Scope of Study:
- Genotyped 10,074 healthy and unrelated individuals from 85 populations (32 tribal and 53 non-tribal groups).
- After quality filters, the findings are based on 9,772 individuals (4,696 males and 5,076 females).
- Sample collection included nearly 20,000 individuals across the country.
- Data deposited in the Indian Biological Data Centre, Faridabad.
- Population Representation:
- Tribal Groups: Tibeto-Burman, Indo-European, Dravidian, Austro-Asiatic.
- Non-Tribal Groups: Tibeto-Burman, Indo-European, Dravidian.
- Each non-tribal group had a median of 159 samples, while tribal groups had 75 samples on average.
- Genetic Discoveries:
- 180 million genetic variants identified across the sampled genomes.
- Categories include:
- Disease-associated variants
- Rare and population-specific variants
- Variants unique to India
- Variants exclusive to small ethnic or tribal groups
- Medical & Research Implications:
- Findings pave the way for:
- Low-cost diagnostic tools
- Targeted therapies
- Customized drug response analysis
- Identification of adverse drug reaction genes
- Enables precision medicine in India, leveraging genetic diversity for personalized healthcare solutions.
- Findings pave the way for:
- Next Steps:
- Detailed analyses linking genome data with blood biochemistry and anthropometric information.
- A comprehensive research paper to follow in the coming months.
Significance of GenomeIndia Project:
- First-of-its-kind nationwide effort to capture genomic diversity of Indian populations.
- Essential for improving healthcare equity, addressing regional health disparities, and boosting biomedical research.
- Supports India’s efforts in global genomics and contributes to international datasets with India-specific data.