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Biomolecular Engineering AI-Driven Protein Design Breakthrough Enables Tailored Therapeutic Solutions

Source: Technical University of Munich (TUM) 3 min Reading Time

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A new method combining AI-based software and gradient descent optimization enables the design of large, customized proteins with precise functions. This breakthrough allows scientists to create proteins tailored for therapies, diagnostics, and other applications, marking a significant step forward in biomolecular engineering.

Researchers have developed a new method for designing de novo proteins with tailored properties. Their approach leverages the structure prediction capabilities of Alpha Fold 2, combining them with an optimization process known as gradient descent and a virtual superposition of amino acids. The photo shows part of the team. Left: First author Christopher Frank, right: Prof. Dr. Hendrik Dietz, Professor of Biomolecular Nanotechnology at the Technical University of Munich (TUM).(Source:  Andreas Heddergott/ TU Muenchen)
Researchers have developed a new method for designing de novo proteins with tailored properties. Their approach leverages the structure prediction capabilities of Alpha Fold 2, combining them with an optimization process known as gradient descent and a virtual superposition of amino acids. The photo shows part of the team. Left: First author Christopher Frank, right: Prof. Dr. Hendrik Dietz, Professor of Biomolecular Nanotechnology at the Technical University of Munich (TUM).
(Source: Andreas Heddergott/ TU Muenchen)

Protein design aims to create customized antibodies for therapies, biosensors for diagnostics, or enzymes for chemical reactions. An international research team has now developed a method for designing large new proteins better than before and producing them with the desired properties in the laboratory. Their approach involves a new way of using the capabilities of the AI-based software Alphafold 2, for which the Nobel Prize in Chemistry was awarded in 2024.

Whether as building blocks, transport systems, enzymes, or antibodies, proteins play a vital role in our bodies. Researchers are, therefore, trying to recreate them or to design so-called de novo proteins that do not occur in nature. Such artificial proteins are designed to bind to certain viruses or transport drugs, for example. Scientists are increasingly using machine learning to design them. Recently, advances in this field were honored with the Nobel Prize in Chemistry: This year's Nobel Prize went to David Baker, a pioneer of de novo protein design, and to the developers of the software Alphafold 2 Demis Hassabis and John Jumper. This software makes it possible to predict protein structures on the computer with high accuracy.

An international team led by Hendrik Dietz, Professor of Biomolecular Nanotechnology at the Technical University of Munich (TUM), and Sergey Ovchinnikov, Professor of Biology at MIT, has now developed a method that uses Alphafold 2’s accurate structure prediction together with a so-called gradient descent approach for efficient protein design. It was published in the journal Science.

Gradient descent is a common method for model optimization. In a step-by-step process, it can be used to identify deviations from the desired target function and adjust the parameters until the optimal result is achieved. In protein design, gradient descent can be used to compare the structure of new proteins predicted by Alphafold 2 with the desired protein structure. This allows scientists to further optimize their newly designed amino acid chain and the resulting structure. The latter largely determines the stability and function of the protein and depends on subtle energetic interactions.

Virtual Superposition of the Building Blocks

The new method makes it possible to design large new proteins better than before and to tailor them to the desired properties, for example, to bind precisely to other proteins. Their design process differs from previous approaches in several ways.

„We have designed the process for new proteins so that we initially ignore the limits of what is physically possible. Usually, only one of the 20 possible building blocks is assumed at each point of the amino acid chain. Instead, we use a variant in which all possibilities are virtually superimposed,“ says Christopher Frank, doctoral candidate at the Chair of Biomolecular Nanotechnology and first author of the study.

This virtual superposition cannot be directly translated into an actually producible protein. But it allows the protein to be iteratively optimized. “We improve the arrangement of the amino acids in several iterations until the new protein is very close to the desired structure," says Christopher Frank. This optimized structure is then used to determine the amino acid sequence that can actually be assembled to a protein in the laboratory.

The ultimate test for all newly designed proteins: does the actual structure correspond to the predicted construct and the desired function? Using the new method, the team designed more than 100 proteins virtually, produced them in the laboratory and tested them experimentally. „We were able to show that the structures that we designed are very close to the structures that are actually produced,” says Christopher Frank.

Using their new method, they were able to produce proteins consisting of up to 1000 amino acids. “This brings us closer to the size of antibodies, and — just as with antibodies — we can then integrate several desired functions into such a protein,” explains Hendrik Dietz. „These could, for example, be motifs for recognizing and suppressing pathogens.”

Original Article: Scalable protein design using optimization in a relaxed sequence space; Science; DOI:10.1126/science.adq1741

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