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  <title>NITRC News Group Forum: gsoc-project-idea-14--producing-publication-ready-brain-network-analysis-results-and-visualisations-from-the-command-line</title>
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  <description> &lt;p&gt;Hi &lt;a class=&quot;mention&quot; href=&quot;/u/kirstiejane&quot;&gt;@KirstieJane&lt;/a&gt; . I’m interested to work on this topic as part of the GSoC 2019. I’ve worked on nilearn, matplotlib and networkx. Currently, I’m working on structural connectivity analysis of normal and diseased brains using complex networks and machine learning. In order to start with this topic, I was thinking of using scona and networkx to generate a connectivity matrix. Could you please let me know whether this would be a good way to get started on this topic? If this is not a good idea then could you please suggest some tasks for the same?&lt;/p&gt; </description>
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