Comments (10)
hi @arfon I'll review this entry.
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/ cc @openjournals/joss-reviewers - would anyone be willing to review this submission?
If you would like to review this submission then please comment on this thread so that others know you're doing a review (so as not to duplicate effort). Something as simple as :hand: I am reviewing this
will suffice.
Reviewer instructions
- Please work through the checklist at the start of this issue.
- If you need any further guidance/clarification take a look at the reviewer guidelines here http://joss.theoj.org/about#reviewer_guidelines
- Please make a publication recommendation at the end of your review
Any questions, please ask for help by commenting on this issue!
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I've had a short look at the software: it is a one page shiny app where you can chose two US universities and a timerange and the app displays the number of papers in PUBMED.
Regarding Have the functional claims of the software been confirmed?
: IMO yes, but IMO there could be a lot more things to build around the idea of analysing such data than simply choosing a date range and showing a bar plot (e.g. numbers over years). :-)
There are no tests.
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General Checks
- version - there is no github release or git tag for v1.0.0
Documetation
- example usage - there's no documented example usage. a screenshot on how to use would be nice
- automated tests - there are none. maybe take a look at Selenium to do basic verification of certain gui elments
- community guidelines - there is no CONTRIBUTING.md file or equivalent
Software paper
- statement of need - The summary should focus more on the motivation with building the software rather that how it works.
Reviewer conclusion
I agree with @JanSchulz that more work to do more work of analyzing the data and have greater justification on its contribution before being accepted.
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OK thanks for the input @aespinosa & @JanSchulz.
@vpnagraj - is sounds like there are a few major things to address before we can move forward with this submission.
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Thank you all for taking the time to review the submission.
I will take a step back and try to address the issues around functionality / research applications for this software.
Is there currently a process in place for re-submitting? How long will the paper remain under review?
Thanks again for the feedback.
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I will take a step back and try to address the issues around functionality / research applications for this software.
Excellent.
Is there currently a process in place for re-submitting? How long will the paper remain under review?
We're happy to leave this pending until you've made your improvements to the package. Please comment on this thread when you're ready for a re-review.
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@vpnagraj - have you had a chance to take a look at making improvements to this submission? Also, if you're not interested in pursuing this submission to JOSS any longer we can withdraw your submission,.
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@arfon i appreciate the follow up ... i don't have a timeline for the proposed edits, so i think it's best to withdraw the submission
thank you again for the comments and review on this project
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