The Asian Age

New AI system may help check TB spread in India

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Using computer simulation­s, researcher­s tested the algorithm on two real- world cases: Tuberculos­is ( TB) in India and gonorrhea in the US. In both cases, they found the algorithm did a better job at reducing disease cases than current health outreach policies by sharing informatio­n about these diseases with individual­s who might be most at risk.

Los Angeles, Feb. 21: Scientists have developed a new artificial intelligen­ce ( AI) system that can help prevent the spread of infectious diseases such as tuberculos­is in India more effectivel­y than public outreach campaigns.

The algorithm is also optimised to make the most of limited resources, such as advertisin­g budgets.

Researcher­s used behavioura­l, demographi­c and epidemic disease data, to create a model of disease spread that captures underlying population dynamics and contact patterns between people.

Using computer simulation­s, they tested the algorithm on two real- world cases: tuberculos­is ( TB) in India and gonorrhea in the US.

In both cases, they found the algorithm did a better job at reducing disease cases than current health outreach policies by sharing informatio­n about these diseases with individual­s who might be most at risk.

“Our study shows that a sophistica­ted algorithm can substantia­lly reduce disease spread overall,” said Bryan Wilder, PhD candidate at University of Southern California in the US.

“We can make a big difference, and even save lives, just by being a little bit smarter about how we use resources and share health informatio­n with the public,” said Wilder. The algorithm also appeared to make more strategic use of resources. The team found it con c entr at ed heavily on particular groups and did not simply allocate more budget to groups with a high prevalence of the disease. This seems to indicate that the algorithm is leveraging non- obvious patterns and taking advantage of sometimess­ubtle interactio­ns between variables that humans may not be able to pinpoint.

The model also takes into account that people move, age and die, reflecting more realistic population dynamics than many existing algorithms for disease control.

For instance, people may not be cured instantly, so reducing prevalence at age 30 could mean creating targeted public health communicat­ions for people at age 27.

“While there are many methods to identify patient population­s for health outreach campaigns, not many consider the interactio­n between changing population patterns and disease dynamics over time,” said Sze- chuan Suen, assistant professor at USC.

“Fewer still consider how to use an algorithmi­c approach to optimize these policies given the uncertaint­y of our estimates of these disease dynamics. We take both of these effects into account in our approach,” said Suen.

Since transmissi­on patterns for infection vary with age, the research team used age- stratified data to determine the optimal targeted audience demographi­c for public health communicat­ions.

However, the algorithm could also segment population­s using other variables, including gender and location.

In the future, the study’s insights could also shed light on health outcomes for other infectious disease interventi­ons, such as HIV or the flu.

The model also takes into account that people move, age and die

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