Members
Overall Objectives
Application Domains
New Software and Platforms
New Results
Partnerships and Cooperations
Dissemination
Bibliography
XML PDF e-pub
PDF e-Pub


Section: New Results

Flexible molecular fitting

Participants : Alexandre Hoffmann, Sergei Grudinin.

We have started a PhD on flexible molecular fitting. The first part of the PhD aims at developing a new method for non-rigid molecular fitting. The problem is the following : We have two proteins 𝒫1 and 𝒫2 and we know d1:3, the electron density of 𝒫1 and (Yk)k=0Natoms-1, the average positions of the atoms of 𝒫2. Assuming we can generate an artificial electron density d2:3 from (Yk)k=0Natoms-1, our problem is to find a transformation of the atoms T:33 that minimizes the L2 distance between d1 and d2.

In image processing this problem is usually solved using the optimal transport theory, but this method assumes that both densities have the same L2 norm, which is not necessarily the case for the fitting problem. To solve this problem, one instead starts by splitting T into a rigid transformation Trigid (which is a combination of translation and rotation) and a flexible transformation Tflexible. Two classes of methods have been developed to find Trigid :

We have already developed several algorithms based on the FFT to find Trigid and we now want to develop an efficient algorithm to find Tflexible.

The majority of algorithms first finds the best Trigid and then use Normal Mode Analysis (NMA) to improve their fitting, the problem with such a method is that one can miss the optimal solution. We aim at developing a method that uses convex optimization to find the best Tflexible for each Trigid sampled on a grid, and therefore find the best T possible on a grid.

The rest of the PhD will be focused on the improvement of the modeling of the atom's motion, by using machine learning algorithms and methods that go beyond linear NMA. We hope that such an improvement can improve the quality of the fitting method.