Infectious Diseases
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Infectious Diseases
A curation of the best Articles and Research on Infectious Diseases. (Not a news site, focus on ideas, research, solutions, protocols and discussions related infectious/communicable/tropical diseases.
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An Automated Approach for Finding Spatio-Temporal Patterns of Seasonal Influenza in the United States

An Automated Approach for Finding Spatio-Temporal Patterns of Seasonal Influenza in the United States | Infectious Diseases | Scoop.it

Agencies such as the Centers for Disease Control and Prevention (CDC) currently release influenza-like illness incidence data, along with descriptive summaries of simple spatio-temporal patterns and trends.

 

However, public health researchers, government agencies, as well as the general public, are often interested in deeper patterns and insights into how the disease is spreading, with additional context.

 

Analysis by domain experts is needed for deriving such insights from incidence data.


Objective: Our goal was to develop an automated approach for finding interesting spatio-temporal patterns in the spread of a disease over a large region, such as regions which have specific characteristics (eg, high incidence in a particular week, those which showed a sudden change in incidence) or regions which have significantly different incidence compared to earlier seasons.

 

Methods: We developed techniques from the area of transactional data mining for characterizing and finding interesting spatio-temporal patterns in disease spread in an automated manner. A key part of our approach involved using the principle of minimum description length for representing a given target set in terms of combinations of attributes (referred to as clauses); we considered both positive and negative clauses, relaxed descriptions which approximately represent the set, and used integer programming to find such descriptions.

 

Finally, we designed an automated approach, which examines a large space of sets corresponding to different spatio-temporal patterns, and ranks them based on the ratio of their size to their description length (referred to as the compression ratio).

 


Results: We applied our methods using minimum description length to find spatio-temporal patterns in the spread of seasonal influenza in the United States using state level influenza-like illness activity indicator data from the CDC. We observed that the compression ratios were over 2.5 for 50% of the chosen sets, when approximate descriptions and negative clauses were allowed. Sets with high compression ratios (eg, over 2.5) corresponded to interesting patterns in the spatio-temporal dynamics of influenza-like illness. Our approach also outperformed description by solution in terms of the compression ratio.

 

Conclusions: Our approach, which is an unsupervised machine learning method, can provide new insights into patterns and trends in the disease spread in an automated manner. Our results show that the description complexity is an effective approach for characterizing sets of interest, which can be easily extended to other diseases and regions beyond influenza in the US. Our approach can also be easily adapted for automated generation of narratives.

 

read more at https://publichealth.jmir.org/2020/3/e12842

 

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CDC warns virus can spread more than 6 feet under certain conditions

CDC warns virus can spread more than 6 feet under certain conditions | Infectious Diseases | Scoop.it

The Centers for Disease Control and Prevention (CDC) warned in a document published Friday of "repeatedly documented" instances of coronavirus spreading through the air to people more than 6 feet away under certain conditions.

 

The new document explaining the latest understanding of how the virus spreads is part of a shifting emphasis towards airborne transmission of the virus.

 

"Transmission of SARS-CoV-2 from inhalation of virus in the air farther than six feet from an infectious source can occur," the new document says in large letters, while noting it is "less likely than at closer distances."

 

Some experts have been pushing the CDC for months to place a greater emphasis on airborne transmission and the need to improve ventilation, even with something as simple as opening the window in a room. Experts have also long said that outdoors is far safer than indoors.

 

The CDC acknowledged last year that the virus can spread through airborne transmission, but there has since been a growing emphasis on that method of transmission.

 

The agency emphasized that while it is updating its understanding of how the virus spreads, the same methods for keeping safe still apply. Wearing a mask, distancing from others, avoiding crowded indoor areas and allowing adequate ventilation are recommended.

 

read the story at https://thehill.com/policy/healthcare/552406-cdc-warns-virus-can-spread-more-than-six-feet-under-certain-conditions

 

 

nrip's insight:

Happy that CDC is announcing this. A number of us have been saying this for a while. Ref  My Tweet from 2 weeks back https://twitter.com/nrip/status/1386908219986034697

 

I have long held this unconventional view, which my friends and colleagues do not have a high opinion of, that covid19 is mutating so as to make itself airborne if it is not already doing so. See this for what it is & not some wishy washy sci fi joke

 

Also refer the post I previously curated at https://www.scoop.it/topic/infectious-diseases-by-nrip/p/4124475206/2021/04/27/ten-scientific-reasons-in-support-of-airborne-transmission-of-sars-cov-2

 

 

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