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The Global AI in Drug Discovery Market was valued at USD 750.04 Million in 2022 and is expected to experience substantial growth throughout the forecast period, projecting a Compound Annual Growth Rate (CAGR) of 10.18% and expected to reach USD 1327.65 Million through 2028. Artificial intelligence (AI), a discipline within computer science, is focused on emulating intelligent behavior. It empowers computers to simulate human and animal-like thinking and task execution, while learning from mistakes. AI predominantly employs algorithms designed for efficient task completion with minimal errors. By harnessing deep learning and machine learning algorithms, AI applies personalized knowledge to perform a wide array of tasks. The application of AI in drug discovery holds immense significance, contributing to disease tracking, facilitating the development of treatments, and even predicting the emergence of mutated animal viruses. AI has revolutionized research and development in drug discovery, leading to breakthroughs in treating chronic diseases.Speak directly to the analyst to clarify any post sales queries you may have.
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Key Market Drivers
Reduced Time in Medication Research
The drive to accelerate the drug discovery process has spurred demand for artificial intelligence (AI) in pharmaceutical research, consequently propelling market growth. Traditional methods often take years to optimize compounds for human evaluation, while AI-powered startups could potentially accomplish the same in a matter of days or months. Increased healthcare budgets and advancements in healthcare infrastructure further contribute to market expansion. The integration of AI for efficient drug activity exploration is also driving demand in the drug development sector. AI-driven approaches streamline drug discovery stages, minimizing costs and time-consuming failures. AI algorithms enable rapid analysis of compound libraries, precise candidate prioritization, and accurate property predictions, ultimately expediting effective drug development.Collaboration between Tech Giants and Pharma
Strategic agreements between technology giants like Microsoft and pharmaceutical companies like Novartis have paved the way for AI algorithm integration into the pharmaceutical landscape. Partnerships such as Nvidia's collaboration with Schrödinger to enhance predictive capabilities in molecular forecasting have significantly influenced the AI in Drug Discovery Market. Emerging enterprises like Exscientia focus on AI-based methodologies, attracting substantial investments. Companies such as Recursion Pharmaceuticals are developing tools to accelerate the identification of potential drug candidates using AI. Moreover, IT firms like IBM, Microsoft, and Google are investing and partnering with pharmaceutical companies to propel the advancement of AI in Drug Discovery Market.Rise in Chronic Diseases
The prevalence of chronic diseases like diabetes, COPD, coronary artery disease, arthritis, asthma, hepatitis, and cancer has surged globally. This is attributed to the growing geriatric population, evolving lifestyles, and urbanization. The International Diabetes Federation reports that diabetes affected 537 million individuals globally in 2021. Predictions estimate around 643 million new cancer cases annually by 2030. China, for instance, accounts for over 50% of all lung cancer cases in the Asia Pacific region. AI is transforming personalized medicine through patient data integration, enabling precision healthcare, and enhancing treatment outcomes. It revolutionizes disease diagnosis, monitoring, and treatment, leading to more effective and tailored therapeutic interventions.Technological Advancements
Advancements in AI technologies such as machine learning, deep learning, and natural language processing have significantly enhanced AI's capabilities in analyzing complex biological data. These advancements enable the integration of diverse data sources, including genomics, proteomics, and clinical data, leading to comprehensive insights and rapid decision-making in drug discovery. The exponential growth of biological data, including genomic sequences, protein structures, and drug-target interactions, offers ample opportunities for AI-driven analysis and modeling. Large-scale datasets empower AI algorithms to identify patterns, predict compound properties, and generate innovative hypotheses, enabling informed and data-driven decisions in drug discovery.Key Market Challenges
Data Quality and Availability
AI relies heavily on high-quality, diverse, and comprehensive data for model development. In drug discovery, data privacy, intellectual property, and regulatory considerations are significant challenges. Obtaining reliable, well-curated datasets, especially those representing diverse patient populations and disease types, poses obstacles for AI-driven drug discovery. Addressing transparency concerns due to the opacity of AI models, especially deep learning models, is crucial. Regulators, clinicians, and patients seek transparent decision-making, making interpretability essential. Validating AI models and ensuring regulatory compliance present challenges. AI models must meet stringent standards and demonstrate robust performance to gain regulatory approval. Developing a regulatory framework catering to AI's unique considerations in drug discovery is vital for widespread adoption.Technical Challenges
Although AI has made significant progress, data quality remains a substantial obstacle in using AI methods for drug development. Addressing challenges related to data ownership and confidentiality is imperative. Ongoing efforts aim to optimize current AI technologies in drug discovery.Key Market Trends
R&D Expansion
Increased research and development activities, coupled with the use of cloud-based services, fuel growth in the AI in Drug Discovery Market. Emerging economies and advancements in biotechnology further accelerate the market's development. The COVID-19 pandemic significantly boosted the use of AI in drug development, especially in identifying and screening existing drugs for COVID-19 treatment. AI's effectiveness in identifying active substances for various diseases contributed to its growth during the pandemic.Personalized Medicine and Precision Healthcare
AI's integration of patient data, including genetic and clinical information, has the potential to revolutionize personalized medicine. It predicts individual responses to therapies and optimizes treatment strategies, leading to more effective disease diagnosis, monitoring, and treatment.Segmental Insights
Component Types
In terms of component types, Services are expected to dominate the AI in Drug Discovery Market in 2022, exhibiting the highest CAGR until 2028. The growth of services is driven by their advantages and strong demand among end users. Software also plays a significant role, with emerging companies focusing on deep learning solutions and generative models, facilitating innovative molecule design.Therapeutic Area
The oncology segment is projected to experience the highest CAGR during the forecast period due to AI's adoption in discovering cancer drugs and collaborations between pharmaceutical companies and AI providers.Regional Insights
North America
North America is set to lead the market due to high AI adoption, advanced healthcare infrastructure, and active clinical research in AI and drug discovery. Noteworthy research institutions and key developments further contribute to the region's dominance in AI-driven drug discovery.Key Market Players
- GNS Healthcare
- BioSymetrics
- BPGbio, Inc.
- Atomwise Inc.
- Owkin Inc.
- NVIDIA Corporation
- IBM Corporation
- Microsoft Corporation
- Aria Pharmaceuticals, Inc.
- Insilico Medicine Inc.
Report Scope:
In this report, the Global AI in Drug Discovery Market has been segmented into the following categories, in addition to the industry trends which have also been detailed below:AI in Drug Discovery Market, By Component Type:
- Software
- Services
AI in Drug Discovery Market, By Drug Type:
- Small Molecule
- Large Molecule
AI in Drug Discovery Market, By Application Type:
- Preclinical Testing
- Drug Optimization
- Repurposing
- Target Identification
- Candidate Screening
- Others
AI in Drug Discovery Market, By Therapeutic Area:
- Oncology
- Neurodegenerative Diseases
- Cardiovascular Diseases
- Rare Diseases
- Others
AI in Drug Discovery Market, By Region:
- North America
- United States
- Canada
- Mexico
- Europe
- France
- United Kingdom
- Italy
- Germany
- Spain
- Asia-Pacific
- China
- India
- Japan
- Australia
- South Korea
- South America
- Brazil
- Argentina
- Colombia
- Middle East & Africa
- South Africa
- Saudi Arabia
- UAE
- Kuwait
- Turkey
- Egypt
Competitive Landscape
Company Profiles: Detailed analysis of the major companies present in the Global AI in Drug Discovery Market.Available Customizations:
Global AI in Drug Discovery market report with the given market data, the publisher offers customizations according to a company's specific needs.This product will be delivered within 1-3 business days.
Table of Contents
1. Service Type Overview2. Research Methodology3. Executive Summary4. Voice of Customer11. Market Dynamics12. Market Trends & Developments13. Global AI in Drug Discovery Market: SWOT Analysis15. Strategic Recommendations16. About the Publisher & Disclaimer
5. Global AI in Drug Discovery Market Outlook
6. North America AI in Drug Discovery Market Outlook
7. Europe AI in Drug Discovery Market Outlook
8. Asia-Pacific AI in Drug Discovery Market Outlook
9. South America AI in Drug Discovery Market Outlook
10. Middle East and Africa AI in Drug Discovery Market Outlook
14. Competitive Landscape
Companies Mentioned
- GNS Healthcare
- BioSymetrics
- BPGbio, Inc.
- Atomwise Inc.
- Owkin Inc.
- NVIDIA Corporation
- IBM Corporation
- Microsoft Corporation
- Aria Pharmaceuticals, Inc.
- Insilico Medicine Inc.
Table Information
Report Attribute | Details |
---|---|
No. of Pages | 183 |
Published | October 2023 |
Forecast Period | 2023 - 2028 |
Estimated Market Value ( USD | $ 750.04 Million |
Forecasted Market Value ( USD | $ 1327.65 Million |
Compound Annual Growth Rate | 10.1% |
Regions Covered | Global |
No. of Companies Mentioned | 10 |