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Overall Manuscript Structure #2
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Also wanted to tag @YosephBarash and @davek44 who have been active in this area for their thoughts. |
What is the format of the text itself? GitHub markdown? |
Does this need to actually have anything to do with "systems pharmacology"? |
@michaelmhoffman It should probably roughly touch on topics that could be construed as systems pharmacology. My read is that the precision medicine perspective + deep learning on genomic/transcriptomic/proteomic/etc data gets us close enough. Format of the text itself will be markdown [eventually I'll convert it to LaTeX and reformat]. I think we will use something like [@doi:doi_link] for citations. @dhimmel has code to automatically pull down doi metadata and covert to bibtex. |
Reinforcement learning perhaps? http://karpathy.github.io/2016/05/31/rl/ gives a brief intro. I'm not aware of examples in biology or medicine. |
Reinforcement learning hooked up to some experimental system would be fun. |
@cgreene, the code is here. Let me know when formatting time comes and I can help with the auto-conversion of citations. |
@agitter thanks! How about the following citation conventions:
You can do multiple citations using: |
@dhimmel proposed citation conventions look good to me. Do you want to file a PR to add it to the contribution instructions? |
@cgreene there are a lot of Imaging + Bio deep learning papers out there. Should we take a more targeted approach for logging them as issues, such as focusing on those that pertain to human disease and medicine, instead of trying to catalog everything? What might be the main points of this subsection? |
@agitter : I guess I'd say, if one could make an argument that it's relevant to our current guiding question [which I think still needs a bit of refinement - but probably an increase in specificity, not a decrease] then those are the ones for which we should file an issue. |
Going to close this now that the discussion has been captured in subsequent issues. |
@dhimmel This issue was closed, but I wanted to ask a follow up question now that we're starting to write. The citation conventions above will be great for making the citations machine-readable for automated bibliography construction. Do you have any ideas for how to make them human-readable as well? For example, in latex/bibtex I might use |
DOIs have some semantic meaning (often contain a journal abbreviation). But we could define another category such as |
I defer to you and Daniel. On Thu, Oct 27, 2016, 8:14 AM Anthony Gitter [email protected]
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* Enable tag citations See #2 (comment). * Reflow text to satisfy codeclimate
Related to comment at greenelab/deep-review#2 (comment)
* Enable tag citations See greenelab/deep-review#2 (comment). * Reflow text to satisfy codeclimate
Related to comment at greenelab/deep-review#2 (comment)
* Enable tag citations See greenelab/deep-review#2 (comment). * Reflow text to satisfy codeclimate
The overall aims of the Headline Review articles are outlined in the README. Here's a document structure that I am playing around with to target the review at this question: What would need to be true for deep learning to transform how we categorize, study, and treat individuals to maintain or restore health?
There are some wonderful github-based reading groups/lists by @pimentel @hussius @gokceneraslan. If any of you have feedback as we structure this review, please provide it. If you'd like to participate - dive in!
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