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What is the Role of Generative Ai in Drug Discovery
Generative AI is basically a branch of artificial intelligence that is used to create content such as audio, video pictures, and much more like that in the reflection of prior knowledge. To introduce and develop new medicines with minor side effects to the market is known as drug discovery. Generative AI tools and techniques help the researchers to produce specific drugs to overcome the disease.
Generative AI catalyzes this process by identifying the disease-causing agent and discovering the drug compounds. These compounds will interact with the disease-causing agent followed to destroy its structure. Generative AI is more advanced and there are built-in algorithms or techniques to identify the problems. This advanced technology helps a lot in the discovery and treatment of drugs.
Main Steps Taken by Generative AI in Drug Discovery
Here are some steps that are so helpful in drug discovery.
Step 1: Data Collection
In the very first step, the AI generative gathers all the data about
the concerning disease. This collected data is used in the preparation of the simulation. Simulation means an exact copy of a real system. AI generative collects all information about
- Target disease-causing agent
- Drug compound
- Interaction between target and chemical compound
Step 2: Model Training
Following are some generative AI models: –
- Generative Adversarial Network (GANs)
- Transformers
- Auto-g
The second step is to feed all the collected information or data into the generative AI model and then train the model according to the data. The main purpose of model training is to build a power in the model to understand the facts like
- Interaction of both molecules
- By which mechanism a molecule affects the protein
- Anatomy of both molecules
After training the AI generative model becomes enabled to start the formation of new more efficient compounds with less toxicity. In the case of a previous molecule, the generative AI molecule modifies the molecule and makes it more effective.
Step 3: Formation of the Improved Molecule
The molecule formed after the training of AI generative models has features like the following. All these features enhance the adaptability of the compound and make it more competitive.
- Potential to fight against target biological molecule
- Effective metabolism
- Catalytic property
- Minor side effects
Step 4: Virtual screening
Screening refers to the simulation of the desired molecule to ease the researchers and save their time and resources as well. Generative AI sorts out the effective and useful compounds for advancement saving the time of researchers.
Step 5: Optimization of Molecule
Optimization of the molecule is performed to meet the requirements such as to ensure that the molecule meets all the properties that make an efficient and effective medication. And To ensure that generative AI designed the compound with very minor negative effects
Step 6: Clinical Trials
The clinical trial of the compound is a very complex and difficult procedure to be done. Generative AI predicts the effectiveness of drug candidates on volunteers or patients. In this way the tough procedure of clinical trials becomes easy. Generative AI works on a molecular level, solves complexities and saves time and resources.
Step 7: ADMET
The next phase after the clinical trial is to check the validity of some Generative AI properties. These properties are
- Absorption
- Distribution
- Metabolism
- Excretion
- Toxicity
All the above-mentioned properties were checked and confirmed through proper experimentation. Generative AI simulates and predicts how drugs interact with a patient’s body. This helps to reduce the chances of error and saves time and resources.
Step 8: Submission and Approval
After all the validation and experimentation, the results are submitted to some regulatory bodies. The regulatory bodies review the efficiency of the drug. After a successful review, the drug is ready to be launched in the market.
Role of Generative AI in Drug Discovery: –
Generative AI plays an important role in drug discovery and a few points explain its importance..
1: De Novo Drug Design:
In De Novo drug design, the generative AI uses scratch and creates a novel drug candidate. Generative AI accelerates the process of drug discovery. De Novo drug design optimizes the drug in the reflection of some important factors such as
- Binding ability of drug candidate
- Suitability of chemical
- Toxicity
2: Bio Markers
The generative AI model analyzes the huge amount of data on protein and genome levels. By analyzing the data the models are able to discover the specific biomarkers. The biomarkers analyze the level of the disease by following steps
- Detect the occurrence of disease
- Headway and progress of diseases
- Disease intensity
Researchers use generative AI biomarkers for the modification of drug candidates. In this way, researchers are able to provide specific medication to the patients.
3: Compound Library
Enriching the compound library by using algorithms is another crucial role of generative AI in drug discovery. It suggests specific modifications of existing compounds, increasing safety and sustainability. Compound library expansion examines the data on a molecular level. Generative AI estimates the possible modification in the features of a drug candidate. Then researcher perform tests and can make a powerful drug.
Generative AI tools list
Here are some tools that increase the efficiency of generative AI to create super content for discoveries. These tools are also very useful for the discovery of drugs.
1: ChemDraw
2: Chemia
3: StarDrop
4:CDD Vault
5:Augusta
Important Techniques of Generative AI in Drug Discovery
No doubt generative AI is playing a crucial role in drug discovery. There are some technologies that empower AI and it works more efficiently. The names and workings of these techniques are mentioned below.
1: Generative Adversarial Networks
There are two networks of Generative Adversarial Networks which are the following.
- Generator
- Discriminator
The task of the generator is to generate entirely new data and in case of drug discovery, it will be molecular structure. The discriminator is used to produce authentic results and sort out the real data. It is used to produce a vast amount of molecules that are later used by researchers for examination.
2: Reinforcement Learning
This technique works on the learning of the model through the reward-punishment system. This generative AI strategy improves the molecular structure and creates the best design.
- In the case of the drug discovery model learns
- How drug candidate interacts with the ecosystem
- How the user responds.
3: Natural Language Processing
Natural language processing is a technique by which an AI model learns to pull out important information from human written content. In this way, this strategy helps researchers to work with different parameters of drug discovery.
Advantages of Generative AI in Drug Discovery
There are so many advantages of generative AI in drug discovery because it has so many advanced algorithms. Some of their advantages are listed here.
1: Faster Discovery
Generative AI uses different techniques and tools to create unique data. These techniques and tools work on a molecular level and fastens the procedure of drug discovery.
2: Reduction in Expenses
The molecular level of drug discovery reduces all the expenses of research, testing in labs, and many others. Generative AI tools help the researcher to save their resources and funds.
3: Real-world Application of Generative AI
There are so many real-time applications and usages of generative AI that play important role in the medical field. Pandemic COVID-19, cancer, drugs discovered and Alzheimer’s are some examples of it.
Conclusion
Drugs are a very dangerous disease and their discovery is a very lengthy, expensive, and research-based process. The researcher works in lab testing and other time-consuming processes. Generative AI makes it easy and faster by working on a molecular level. It helps to produce selective drugs for specific diseases. In this article, you can see the Role of Generative AI in drug discovery. Some multiple techniques and methods are discussed in this article that are used in Generative AI detection and discovery of drugs.