Development of novel 3D classification methods for Cryo-Electron Microscopy
2024
Lauzirika Zarrabeitia, Oier | Sorzano Sánchez, Carlos Óscar | García Santos, Narciso
Cryogenic Electron Microscopy (CryoEM) has emerged as a powerful technique for high-resolution imaging of biological samples such as proteins. One of the key challenges in CryoEM is the heterogeneity of the samples, meaning that a single dataset may contain multiple conformations or compositions of the specimens. This is specially a problem, as most of the Single Particle Analysis (SPA) image processing algorithms rely on the assumption that all projections originate from the same 3D structure. 3D classification is an essential process to address this issue. During the process of 3D classification, projections are labeled according to the structure they originate from, such that once segregated, the homogeneity assumption holds true. In this thesis, we propose a novel 3D classification method that leverages graph algorithms to enhance the accuracy and efficiency of state-of-the-art implementations. Most of these modern implementations fall victim of the initial solution bias problem, a well documented issue in the scientific literature. In essence, these implementations iteratively refine a randomly generated initial solution, running the risk of falling into local minimas. The method proposed here deterministically provides an initial solution where classes are maximally separated, so that subsequent iterations are biased towards the correct solution. In addition, fewer of these iterations are necessary until convergence, decreasing the overall execution time. To validate the effectiveness of this approach, several experimental datasets were carefully chosen and employed in comprehensive testing. Moreover, we have performed the same tests with state-of-the-art solutions, aiming to qualitatively assess the benefits of out approach. In fact, results consistently supported the former assertions. To sum up, in this work we present a new 3D classification algorithm that has proven to obtain superior results, both in terms of quality and performance. We believe that these leaps in 3D classification can incur in better image processing pipelines for SPA, increasing the productivity of structural biologists.
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تم تزويد هذا السجل من قبل Universidad Politécnica de Madrid