Why is Artificial Intelligence Crucial for Biotechnology?

Why is Artificial Intelligence Crucial for Biotechnology?

Biotechnology lies in the middle of biology and technology. Through modern technologies, it uses biological processes, organisms, cells, molecules, and systems to create new products for the benefit of humanity and the planet. In addition, it contains laboratory research and development through bioinformatics to explore and extract from biomass through biochemical engineering to develop high-value products. Biotechnology operates in various fields, such as agriculture, medical, animal, industrial, and others.

White biotechnology, related to creating products demanding chemical processes from biomass, can also be one of the solutions to the energy crisis by producing biofuel. The latter can be used for vehicles or heating.

Each organization working in the biotechnology sphere maintains voluminous sets of data stored in databases. This data must also be filtrated and analyzed to be valid and applicable. Such operations as drug manufacturing, chemical analysis, enzyme studies, and other biological processes should be backed by computerized solid tools for high performance and accuracy, as well as helps to reduce manual errors.

One of the most helpful technologies that help to manage the biological processes, drug production, supply chain, and deal with data within biotech is Artificial Intelligence.

It interacts with data received through scientific literature and clinical data trial. AI also manages incommensurable clinical trial datasets and enables virtual screening and analyze the high volume of data. As a result, it reduces clinical trial costs and results in discoveries and insights for any field in which biotech operates.

More predictable data makes it easier to build work processes and operations, enhances the speed of performance and the accuracy of the procedures, and makes decision-making more efficient. 79% claim that AI technology impacts workflows and becomes crucial to productivity.

All of these results are becoming more cost-effective solutions. The estimated revenue gained with the help of AI grew by $1.2 TN in the last three years.

Advantages of using artificial intelligence in biotechnology.

AI applies in various fields, but the most significant is the use of AI in medical care. Although such technology’s ability as data categorization and making predictive analyses are beneficial for any scientific sphere.

Managing and analyzing data

The scientific data is constantly expanding and has to be arranged in a meaningful way. This process is complicated and time-consuming: scientists must go through repetitive and heavy tasks, which must be performed with great attention.

The data they work with is a big part of the research process, which results in high cost and energy loss in case of failure. Moreover, many kinds of research don’t result in practical solutions, as they fail to be translated into human language. AI programs assist in the automation of data maintenance and analysis. Open source platforms empowered by artificial intelligence help reduce the repetitive, manual, and time-consuming duties lab workers have to perform, enabling them to focus on innovation-driven operations.

Gene modification, chemical compositions, pharmacologic investigations, and other critical informatics tasks are thoroughly examined for shorter and more reliable outcomes.

Effective data maintenance is indeed crucial to every scientific sector. However, the most significant advantage of AI is its ability to organize and systemize data into forms and make predictable outcomes.

Driving innovations in the medical sphere

Over the past ten years, we faced the urgent need for innovations in the manufacturing and deploying pharmaceuticals, industrial chemicals, food-grade chemicals, and other raw materials connected to biochemistry.


AI in Biotechnology is essential for fostering innovation throughout a drug’s or chemical compound’s lifecycle and in labs.

It assists in finding the right combination of chemicals through computing permutations and combinations of different compounds without manual lab testings. In addition, cloud computing makes the distribution of raw materials used within biotech more efficient.

In 2021 the research lab DeepMind developed the most comprehensive human protein map using AI. Proteins fulfill various tasks in the human organism – from building tissue to conquering diseases. Their molecular structure dictates their purpose, which can have thousands of iterations—knowing how protein folds help to understand its function so that scientists can figure out numerous biological processes, such as how the human body works or create new treatments and medicines.

Such platforms give access to data about discoveries for scientists all over the world.

The AI tools help decode data for uncovering the mechanisms of particular diseases in different regions and help make analytical models accurate for their geography. Before using AI, time-consuming and costly experiments were performed to determine the structure of the proteins. And now, about 180,000 protein structures made by the program are available through the Protein Data Bank for free to be used by scientists.

Machine Learning helps make lines diagnosis more accurate, using actual findings to enhance diagnostic tests. And the more tests are performed, the more precise results are generated.

AI is a great tool to enhance electronic health records with evidence-based medications and clinical decision support systems.

Artificial Intelligence is also frequently employed in genetic manipulation, radiology, customized medicine, medication management, and other fields. For example, according to the current study, AI improved breast cancer screening accuracy and efficiency compared to a standard breast radiologist. As well as another research claims that lung cancer can be spotted faster by neural networks than by trained radiologists. Another AI application is to detect diseases more accurately through X-rays, MRIs, and CT scans through AI-driven software.

Reduces time of research

New illnesses spread quickly across countries due to globalization. We witnessed it with COVID-2019; as a result, biotechnology has to speed up its production of necessary medications and vaccines to stand against such illnesses.

Artificial intelligence and machine learning maintain the process of detecting the proper compounds, assisting in their synthesis in labs, helping to analyze data for effectiveness, and supplying them to the market. The use of AI in biotech reduces the time in operations performance from 5-10 years to 2-3 years.

Boosting harvest production

Biotechnology is critical in genetically engineering plants to generate richer harvests. The role of AI-based technologies is increasing in studying crop characteristics, comparing qualities, and projecting realistic output. The agricultural biotech also uses robotics, a branch of artificial intelligence, for manufacturing, collecting, and other critical tasks.

By combining such data as weather forecasts, farming characteristics, and the accessibility of seeds, compost, and chemicals, AI aids in planning future patterns in material circulation.

AI in Industrial biotechnology

IoT and AI are widely used in producing vehicles, fuels, fibers, and chemicals. AI analyzes the data collected by IoT to transform it into valuable data for improving the production process and product quality by forecasting outcomes.

Computer simulations and AI come up with the expected molecular design. Strains are being produced through robotics and machine learning to test the accuracy of developing the desired molecule.

To sum up

Though this is just the start of using AI in biotech, many improvements can already be offered to various spheres. Moreover, the growing development of the software empowered by Artificial Intelligence in biotech demonstrates that it can be used for multiple processes, operations, and tactics to obtain a competitive advantage.

It can not only drive innovations but also be a valuable tool to reduce costs by making more accurate tests and predicting results without the actual performance of the experiments in the lab.

As well as find the future necessities of humanity in healthcare and agriculture, forecast potential losses, and make prognoses for companies where they should target their resources for more effective production and supply.

Featured Image Credit: Provided by the Author; Thank you!

Source link

Share This

Leave a Reply

Your email address will not be published.