AI Drug Discovery

Artificial intelligence is identifying and testing new therapies faster than ever.

Overview

AI promises accurate and faster drug discovery

AI drug discovery is the process of applying advanced algorithms and machine learning to analyze large biological and chemical datasets to find potential drug candidates. AI’s ability to rapidly and precisely analyze highly complex scientific data enables faster drug development at lower costs, aiding in reviving the declining R&D efficiency in the pharmaceutical industry. Studies have shown that using AI in drug discovery reduces the time taken by a factor of 15 and increases success rates. In addition, the application of AI in drug discovery is creating new opportunities in areas like rare diseases and personalized medicine. These developments have resulted in many large pharmaceutical companies collaborating with AI companies to gain access to drug discovery services to speed up regulatory approvals and market entry for their drug candidates.

However, the widespread adoption of AI in drug discovery is tempered by several challenges, including a shortage of high-quality, unbiased data, restrictions on data sharing, complexities in patenting AI-generated drugs, and the high demand for scarce AI talent. These risks must be navigated carefully to fully harness AI's potential in revolutionizing drug discovery.

Industry Updates

View all updatesicon
Market Sizing

The global AI Drug Discovery market could reach USD 4.8 billion–14.4 billion by 2027

Conservative case

USD 0.0 Bn

Base case

USD 0.0 Bn

Expansion case

USD 0.0 Bn

Use cases


AI drug discovery, as the name implies, is primarily applied across applications such as drug discovery and development, digital pathology, and diagnosis in the healthcare sector. Biotechnology companies have integrated AI into their drug discovery and development processes, leveraging its capabilities to identify antibody and drug candidates and drug targets. This integration spans from preclinical stages—where AI aids in lead optimization—to the efficient design and management of clinical trials, revolutionising the entire pharmaceutical development pipeline. 

In addition, AI platforms play a role in identifying biomarkers for diagnosing diseases like cancer and assessing disease progression within the healthcare sector.

We have identified key AI drug discovery use cases below:

Market Mapping


The AI drug discovery industry consists of:

AI SaaS companies: A large number of startups in the AI drug discovery space operate as AI SaaS (Software-as-a-Service) companies providing their ML platform to other pharma companies. These pure play startups often specialize in a specific stage of the drug discovery process, and have not expanded into latter stages of drug development.

AI drug discovery and development companies: Majority of the well funded startups in the AI drug discovery space operate as drug discovery and development companies. These are biotechnology companies that have integrated AI as a core component of their in-house drug development process. They typically have a few in-house drug development programs and also collaborate with pharma companies to develop certain drugs.

Pharma incumbents: Large pharma companies operate in this space through collaborations with AI startups or tech companies or by developing in-house AI capabilities.

Tech incumbents: Tech companies which are known for their strong AI capabilities have also entered the industry and offer machine learning tools to support drug discovery. Tech incumbents simply offer ML tools and are not specialized in any particular segment. Hence, they are not included in the market map.

Over 90% of the startups are at the seed/early stages. Most AI SaaS platform operators are yet to achieve stable revenue despite collaborations with pharma companies. AI biotechnology startups have not commercialized their drug with only a few reaching the clinical trial stage.

Incumbents
Growth
Early
Seed
Pre-Seed
AI Drug Discovery & Development
?
AI SaaS | Data Aggregation and Research
?
AI SaaS | Biomarker Development
?
AI SaaS | Preclinical Experiments
?
AI SaaS | Drug Discovery
?
EvolutionaryScale
EvolutionaryScale
EvolutionaryScale
EvolutionaryScale
EvolutionaryScale

The Disruptors


Disruptors’ value proposition comes from their specialization and unique technology

Both artificial intelligence (AI) Software-as-a-Service (SaaS) companies and AI-driven biotechnology startups often collaborate with big pharma companies to leverage from the benefits of synergy or due to the lack of funding/expertise to develop drugs in-house. Given that most big pharma companies have also integrated AI into their drug development process in some form, disruptors’ value proposition comes from their specialization and unique technologies.

Funding History

Competitive Analysis


Filter by a segment or companies of your choice
expand
 
Loading...
Loading...
Loading...
Loading...
Product Overview
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
Product Metrics
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
Company profile
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...
-
Loading...
Loading...
Loading...
Loading...

Incumbents


Collaborations with artificial intelligence companies companies remain common among big pharma

Incumbents consist of large pharma companies which have integrated artificial intelligence (AI) into their drug development process in some form or entered into collaborations with AI startups and technology companies that offer AI-driven solutions for drug discovery.

Leading big pharma companies have developed in-house AI capabilities, but have not disclosed the extent to which AI is being used in the drug development process. All leading big pharma companies are actively engaged in collaborations with AI startups or tech companies. This is because building in-house capabilities to match the specialization offered by startups is challenging, especially with the scarcity of personnel skilled in both AI and biology.

In House Development
M&A
Partnership
Investment
Loading...
Loading...
Loading...
Loading...
Loading...
Loading...
Loading...

Notable Investors


?
Funding data are powered by Crunchbase
arrow
menuarrow
close

Contact us

Gain access to all industry hubs, market maps, research tools, and more
Get a demo

Overview

AI promises accurate and faster drug discovery   

AI drug discovery is the process of applying advanced algorithms and machine learning to analyze large biological and chemical datasets to find potential drug candidates. It is enabled by large structured and unstructured scientific data and AI and deep learning (DL) algorithms capable of rapidly screening basic research data to build predictive models that help gain insights into disease mechanisms. AI’s ability to rapidly and precisely analyze these highly complex scientific data enables faster drug development at lower costs, aiding in reviving the declining R&D efficiency in the pharmaceutical industry. 
On average, the time from discovering a molecule to commercialization is around 10 to 12 years, with only one in 10 drug candidates successfully entering the clinical trial stage. These are the main challenges the traditional drug development process currently faces. However, studies have shown that using AI in drug discovery reduces the time taken by a factor of 15 and increases the success rates of drug candidates. For example, AI startup Insilico Medicine identified and validated a new drug compound for fibrosis in a record time of 46 days using its AI platform. This is compared to the average of two to five years in the traditional drug development process. These developments have resulted in many large pharmaceutical companies collaborating with AI companies to gain access to drug discovery services to speed up regulatory approvals and market entry for their drug candidates. In addition, the application of AI in drug discovery is opening new opportunities in areas like rare diseases and personalized medicine. AI can potentially disrupt the entire drug development process, including the latter stages such as clinical trials; however, the drug discovery segment has seen the highest level of applications.
Although no fully AI-developed drug is on the market as of 2024, the technology has already facilitated the advancement of several drug candidates into clinical trials. For example, a drug discovered by AI startup Exscientia’s drug discovery platform reached clinical trials within just one year, whereas in a traditional setting, a similar drug is normally expected to reach this stage in about five years. 

AI applications in drug discovery

13_AI_Drug_Discovery_Overview_Image1
Source: Created by SPEEDA EDGE based on Deloitte’s research

AI-integrated biotech companies and AI SaaS providers make up the AI Drug Discovery industry

Click here to learn more
Get a demo

By using this site, you agree to allow SPEEDA Edge and our partners to use cookies for analytics and personalization. Visit our privacy policy for more information about our data collection practices.