PUBLISHER: Coherent Market Insights | PRODUCT CODE: 1424375
PUBLISHER: Coherent Market Insights | PRODUCT CODE: 1424375
The global AI in omics studies market size is expected to reach US$ 4,515.4 Mn by 2030, from US$ 639.8 Mn in 2023, exhibiting a compound annual growth rate (CAGR) of 32.2% during the forecast period.
Report Coverage | Report Details | ||
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Base Year: | 2022 | Market Size in 2023/2024: | US$ 639.8 Mn |
Historical Data for: | 2018 to 2021 | Forecast Period: | 2023 - 2030 |
Forecast Period 2023/2024 to 2030/2031 CAGR: | 32.20% | 2030/2031 Value Projection: | US$ 4,515.4 Mn |
The global AI in omics studies market is expected to see significant growth due to the increasing adoption of artificial intelligence in various omics fields such as genomics, proteomics, and metabolomics. AI tools are being widely used for big data analytics and precision medicine to gain deeper insights into diseases and develop personalized treatment options for patients. The ability of AI to analyze massive omics datasets and identify complex patterns is also propelling its usage in areas like drug discovery and personalized therapeutics.
Market Dynamics:
The key drivers fueling the global AI in omics studies market include growing investments by pharmaceutical companies in AI for drug discovery, rising demand for precision medicine, and increasing government funding for omics research. Additionally, the growing volumes of omics data being generated and the need to leverage this data effectively are driving the adoption of AI. However, data privacy and security concerns, reluctance to adopt new technologies, and a lack of a skilled AI workforce are some of the factors hindering market growth. Meanwhile, the emergence of cloud-based omics data analytics platforms and the expansion of the startup ecosystem in the AI and healthcare spaces are expected to create significant growth opportunities for market players.
Moreover, with the advent of next-generation sequencing and advancements in quantitative proteomics and metabolomics technologies, omics studies have been revolutionized in recent years. These high-throughput technologies have enabled the generation of massive amounts of multi-omics data at an unprecedented scale and speed. Technologies like whole genome and whole exome sequencing are increasingly used not just for research purposes but also in clinical settings for diagnostics and prognostics. Technologies such as Ribonucleic acid sequencing have enabled the profiling of transcriptomes at the single-cell level, providing details into specific cell types, disease conditions, etc. Proteomics technologies like SWATH-MS have improved protein coverage and quantitation capabilities. Metabolomics technologies are now capable of identifying and quantifying several metabolites simultaneously from biological samples. These advancing quantitative omics technologies are facilitating multi-omics integration studies and providing deeper insights into biological systems. The availability of such large-scale, quantitative, and integrated omics datasets is expected to drive significant discovery and insights into disease mechanisms, biomarkers, and therapeutic targets in the coming years. This will further fuel the growth in omics based research and applications across various disease areas.