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      <div class="TdmEntry">Research Program<ul><li><a href="uid6.html&#10;&#9;&#9;  ">Introduction</a></li><li><a href="uid7.html&#10;&#9;&#9;  ">Modeling interfaces and contacts</a></li><li><a href="uid10.html&#10;&#9;&#9;  ">Modeling macro-molecular assemblies</a></li><li><a href="uid13.html&#10;&#9;&#9;  ">Modeling the flexibility of macro-molecules</a></li><li><a href="uid15.html&#10;&#9;&#9;  ">Algorithmic foundations</a></li></ul></div>
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	    Raweb 
	    2016</a> | <a href="http://www.inria.fr/en/teams/abs">Presentation of the Project-Team ABS</a> | <a href="http://team.inria.fr/abs/">ABS Web Site
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        <h2>Section: 
      Highlights of the Year</h2>
        <h3 class="titre3">Highlights of the Year</h3>
        <p>In 2016, several achievements are worth noticing in three realms,
namely in computer science, computational structural biology, and
software.</p>
        <a name="uid21"/>
        <h4 class="titre4">Computer Science</h4>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
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          <b>Optimal transportation problems with connectivity constraints</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid30">[21]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b> Optimal transportation theory provides a rich framework to compare
<i>measures</i>, both in the continuous and discrete settings. In
this work, we study generalization of discrete transportation
problems, when the supply and demand nodes are endowed with a graph
structure; due to these constraints, our study focuses on transport
plans respecting selected connectivity constrains. Our contributions
encompass a formalization of these problems, as well as hardness
results and heuristic algorithms.</p>
        <p class="notaparagraph"><b>Assessment:</b> To the best of our knowledge, this work is the first one focusing on
transport plans with connectivity constraints. One of the key
applications targeted is the comparison of potential energy
landscapes (PEL) in biophysics. Our algorithms provide a novel way to
compare PEL, a topic overlooked so far.</p>
        <p/>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
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          <b>Clustering stability revealed by matchings between clusters of clusters</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid31">[22]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b> Clustering is a fundamental problem in data science, yet, the variety
of clustering methods and their sensitivity to parameters make
clustering hard. This work provides a new tier of methods to
compare two clusterings, by computing meta-clusters within each
clustering– a meta-cluster is a group of clusters, together with a
matching between these.</p>
        <p class="notaparagraph"><b>Assessment:</b>  Our methods will help assess the coherence between two clusterings,
in two respects: by stressing the (lack of) stability of clustering
while varying the parameters of a given algorithm, and by allowing a
detailed comparisons of various algorithms.</p>
        <p/>
        <a name="uid22"/>
        <h4 class="titre4">Computational Structural Biology</h4>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
          </span>
          <b>Novel structural parameters of Ig-Ag complexes yield a quantitative description of interaction specificity and binding affinity</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid32">[23]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b> Understanding the specificity of antibodies for the targeted
antigens, and predicting the affinity an antibody - antigen
complexes is a central question in structural immunology. Using
novel parameters acting as proxys for important biophysical
quantities, we obtained affinity predictions of unprecedented
accuracy, and were able to provide a quantitative explanation for
the specific role of so-called <i>complementarity determining
regions</i> – in particular CDR3 of heavy chains. See details in
section <a title="Modeling interfaces and contacts" href="./uid57.html#uid59">6.1.2</a>.</p>
        <p class="notaparagraph"><b>Assessment:</b> Our affinity predictions are the most accurate known to date, and show that for certain classes
of IG - Ag complexes, the affinity prediction problem may be solved from databases of high resolution
crystal structures.</p>
        <p/>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
          </span>
          <b>Energy landscapes and persistent minima</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid33">[15]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b>  Potential energy landscapes (PEL) of molecular systems are complex
high-dimensional height functions. In this work, we introduced
several tools from graph theory, optimization, and computational
topology, so as to identify prominent features of PEL – prosaically
distinguishing the signal from the noise. See details in section
<a title="Modeling the flexibility of macro-molecules" href="./uid61.html#uid62">6.3.1</a>.</p>
        <p class="notaparagraph"><b>Assessment:</b>  Our work calls for important developments in two directions. The
first one is concerned with the <i>calibration / learning</i> of
features of PEL. The second one is the systematic comparison of
force fields used in biophysics, as from current knowledge, deciding which force
field is best for a given task or system is an open issue.</p>
        <p/>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
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          <b>Hybridizing rapidly growing random trees and basin hopping yields an improved exploration of energy landscapes</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid34">[18]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b>  We developed a novel exploration algorithm for high-dimensional non
convex (potential) energy functions used in biophysics. Our
algorithm exploits the ability of <i>basin hopping</i> to locate
low-lying local minima, and that of <i>rapidly exploring random
tree</i> to foster the exploration of yet unexplored regions. See
details in section <a title="Modeling the flexibility of macro-molecules" href="./uid61.html#uid63">6.3.2</a>.</p>
        <p class="notaparagraph"><b>Assessment:</b> Our exploration algorithm outperform the two classical algorithms it
is derived from. To strike a major impact, though, our exploration
strategy needs to be complemented by enhanced thermodynamic sampling
algorithms, able to bridge the gap between structures on the one
hand, and thermodynamics / dynamics on the other hand.</p>
        <p/>
        <a name="uid23"/>
        <h4 class="titre4">Software</h4>
        <p class="notaparagraph">
          <span class="math">
            <math xmlns="http://www.w3.org/1998/Math/MathML">
              <mo>▸</mo>
            </math>
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          <b>The Structural Bioinformatics Library</b>
        </p>
        <p class="notaparagraph">
          <b>Reference:</b>
          <a href="./bibliography.html#abs-2016-bid35">[20]</a>
        </p>
        <p class="notaparagraph"><b>In a nutshell:</b> The SBL was released in 2015. In 2016, two important milestones were
achieved, with the addition of several important packages, notably
geared towards the generation and the analysis of conformational
ensembles, and the publication of <a href="./bibliography.html#abs-2016-bid35">[20]</a>–to
appear in Bioinformatics.</p>
        <p class="notaparagraph"><b>Assessment:</b>  As outlined by the reviewers of <a href="./bibliography.html#abs-2016-bid35">[20]</a>, the SBL
is to the best of our knowledge the first library proposing a
coherent framework, in terms of algorithms, data structures and
biophysical models, to tackle the most important problems in
structural bioinformatics.
Our paper presenting the SBL being in press as of December 2016,
statistics on users and downloads will be reported in the 2017
activity report.</p>
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