Apr 27, 2026

Sentinel Atlas: A Centralized Platform for Multi-Source Epidemic Surveillance Data

Chris Harig, Yeng Mun Liaw, Vidur Kumar, Umar Zafar

We propose Sentinel Atlas, a centralized platform that aggregates fragmented, multi-source pathogen and wastewater surveillance data into a standardized, open-access infrastructure to enable real-time epidemiological forecasting and proactive pandemic defense.

Reviewer's Comments

Reviewer's Comments

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The project correctly identified that it's hard to get any kind of harmonized pandemic data that has useful granularity. I also think the predictions element could work very well, although you have to be careful with the quality threshold you set for these. I really liked the live/stale status tagging, as many of these systems are only maintained for a short time.

I think this sort of thing has been tried a couple times (EpiGraphHub, Unified COVID-19 Dataset) so I think engaging with why previous efforts stalled would substantially strengthen the contribution.

You don't really make an argument for data fragmentation being the primary argument, you just make the claim. Unpacking this would be useful.

Solid infrastructure work addressing a real problem. The honest framing is that this is a proposal with early infrastructure, not a validated platform. The crowdsourcing pipeline is the most novel contribution but is unvalidated. There is no demonstrated end-to-end test — no submitted forecast, no approved pull request, no leaderboard entry. The team could have dog-fooded this themselves: four team members submitting simple naive forecasts would have proven the pipeline works and produced a real result to show. Without that, it's infrastructure whose core function remains undemonstrated.

The paper undersells what was actually built. A leaderboard scoring system, automated prediction repos, multi-pane workspace, and news feed are all in the repository but absent from the submission.

- Include an example for a finding that was uniquely possible through your platform. That way you can show a concrete application and highlight the marginal value this tool provides.

- Try to make the UI on the website a bit more intuitive - I played around with it for a bit but was never able to get to the map view.

- Small thing but follow the WHO recommendation to say mpox over 'monkey pox'

- A lot of DC policymakers are talking about the need for this integrated biointelligence you provide, so that's great!

Cite this work

@misc {

title={

(HckPrj) Sentinel Atlas: A Centralized Platform for Multi-Source Epidemic Surveillance Data

},

author={

Chris Harig, Yeng Mun Liaw, Vidur Kumar, Umar Zafar

},

date={

4/27/26

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.