久久亚洲国产成人影院-久久亚洲国产的中文-久久亚洲国产高清-久久亚洲国产精品-亚洲图片偷拍自拍-亚洲图色视频

Global EditionASIA 中文雙語Fran?ais
World
Home / World / Europe

AI used to fight drug resistance

By ANGUS McNEICE in London | China Daily Global | Updated: 2019-08-14 09:12
Share
Share - WeChat
[Photo/IC]

Artificial intelligence targets antibiotic resistance in animals and humans

Scientists in the United Kingdom and China have announced plans to use artificial intelligence on chicken farms in order to combat the problem of antibiotic resistance in both farm animals and humans.

The new initiative will use machine learning to find ways to track and prevent disease on poultry farms, reducing the need for antibiotic treatment in chickens and therefore lowering the risk of antibiotic-resistant bacteria transferring to people.

The research will be led by animal health experts from the University of Nottingham and Nimrod Veterinary Products in the UK as well as two Chinese partners-New Hope Liuhe in Chengdu and the China National Center for Food Safety Risk Assessment.

"Antibiotic resistance is a worldwide problem and it's getting worse and worse. Some of these superbugs are resistant to everything, we don't know how to treat them," University of Nottingham veterinary professor Tania Dottorini told China Daily. "On farms, superbugs are not confined to animals, they spread to humans and to the environment, it's an exponential spread. If we don't understand how to stop this, it's going to be really bad."

The new project is part of Farmwatch, which is a UK-China agricultural initiative supported by 1.5 million pounds ($1.8 million) in joint funding from British agency Innovate UK and China's Ministry of Science and Technology.

Around 700,000 deaths a year stem from antibiotic resistance, according to a report commissioned by the UK government. If left unchecked, drug resistance could lead to 10 million deaths a year by 2050, which is more than the number of people who now die from cancer annually.

Farms, where otherwise healthy animals are given medication as a preventative measure, act as breeding grounds for anti-bioticresistant strains of bacteria that transfer to people.

Antibiotics work by disrupting function in certain parts of a bacterial cell. Bacteria become resistant to antibiotics through genetic mutations that alter those areas of the cell, meaning the medication can no longer target them.

The more a strain of bacteria is exposed to an antibiotic, the more likely it is to become resistant. Large numbers of people and animals are given antibiotics when they don't need them, so reducing unnecessary consumption is crucial in the fight against so-called superbugs.

A study by the University of Calgary in Canada found that restricting the use of antibiotics in healthy farm animals can reduce the prevalence of antibiotic resistance by up to 39 percent.

The researchers from Nottingham and China will take thousands of samples from the animals, humans, and the environment at nine farms across three Chinese provinces during three years. They will also measure other variables, such as humidity and temperature.

"What is causing infection? What is causing the insurgency of antibiotic resistance? To find out, we have to combine information from different sources," said Dottorini. "We are like detectives trying to investigate where the problems are, so we can reconstruct the chain of events."

Scientists will then use big data and AI software to analyze the information, and search for patterns and clues to determine where disease outbreaks and instances of resistance arise. This information will help farmers take preventative measures against future outbreaks, lessening the need for antibiotic use.

"When you have a large-scale data set, the human mind can't cope with that, it's too complex," Dottorini said of machine learning. "We need something that is able to understand the relationship across a big amount of information."

Dottorini said that, if successful, these methods should be easily transferable to other farm studies in China and abroad.

 

Most Viewed in 24 Hours
Top
BACK TO THE TOP
English
Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
License for publishing multimedia online 0108263

Registration Number: 130349
FOLLOW US
主站蜘蛛池模板: 国产精品一区二区三区免费 | 又黄又骚 | 在线观看a网站 | 国内国产真实露脸对白 | 国产成人免费在线观看 | 色噜噜亚洲男人的天堂 | 亚洲二区在线观看 | 玖草在线视频 | 国产不卡在线播放 | 久久在线视频免费观看 | 亚洲国产剧情在线精品视 | 久久精品成人欧美大片免费 | 国产精品视频一区二区三区 | 国产精品免费看 | 欧美性精品hd在线观看 | 国产成人三级经典中文 | 久久精品视频大全 | 国内精品一区二区2021在线 | 国产不卡一区二区三区免费视 | 久久成人精品视频 | 国产精品1区2区3区在线播放 | 久久一| 国产精品hd在线播放 | 九九九国产在线 | a级毛片免费观看视频 | 久久精品视频大全 | 欧美f| 99视频国产热精品视频 | 亚洲九九色 | 99视频在线精品免费观看18 | 一级做a爱过程免费视 | 国产一级片播放 | 成人免费福利网站在线看 | 亚洲 欧美 91 | 日韩欧美一级毛片精品6 | 国产三级视频在线 | 日韩欧美一区二区精品久久 | 91在线精品亚洲一区二区 | 在线观看国产精成人品 | 高清国产精品久久久久 | 亚洲国产成人在线 |