Periodic Reporting for period 1 - MOLiNTEL (Molecular Basis of Intelligence)
Período documentado: 2021-07-01 hasta 2023-06-30
First, we have built a software framework called Function Sampling Technique (FST) that is capable of efficiently sampling the relevant dynamics and states of the protein corresponding to the function of the protein are explored. The engine behind the software uses Artificial Intelligence (AI) and Machine Learning (ML) to explore the structural landscape of the protein and encourages the discovery of hitherto unencountered states specifically so that they are along paths that explore the function of the protein. These states are then enriched so that a robust model of the structure-function relationship can be built. This software has been currently released through a publicly available repository on the platform GitHub to be shared in open access. We are currently in the process of submitting the publication corresponding to its implementation. For the MONiNTEL project, we have used FST to generate models to understand the activation mechanism of two members of the iGluR family, the NMDA-receptor, and the AMPA-receptor.
Second, using the FST software we have unraveled the mechanism of activation of the NMDA-Receptor. We have also discovered its active state structure, which was hitherto unknown in literature in a fully atomistic form. Using our ML and AI-based tools we have also discovered the structural mechanism through which it undergoes deactivation in the absence of neuronal signaling and the mechanism of its “desensitization” i.e. the behavior where the receptor’s signaling capacity is diminished in response to a prolonged state of activation. A research article combining these results is currently under preparation to be submitted soon.
Third, we have developed a new methodology termed apples2apples which we are using to compare the dynamics of proteins from the same family (such as members of the iGluR family). In this approach, we use bioinformatics approaches combined with AI techniques to create a common descriptive framework to examine the dynamics of the proteins. This common framework allows us to discriminate if the proteins have the same or differing mechanisms that allow them to perform their function. This approach has been successfully implemented and the members of the iGluR family are under investigation to understand the origins of how two structurally similar proteins have differential behavior in their dynamics.
Aside from the scientific results, one of the key objectives of this MSCA fellowship was the training of the grant holder. One of the main stated goals in the application on that front was to train the grant holder as a scientific adviser. During the two-year span of the fellowship, two master's degree projects and one bachelor's thesis project have been completed on the topic associated with the grant. Both master's degree holders achieved the highest grade (5/5) in their submissions at the University of Helinski. Also, the applicant has been involved as a co-supervisor in a PhD thesis to be submitted this year.