男女羞羞视频在线观看,国产精品黄色免费,麻豆91在线视频,美女被羞羞免费软件下载,国产的一级片,亚洲熟色妇,天天操夜夜摸,一区二区三区在线电影
Global EditionASIA 中文雙語Fran?ais
China
Home / China / HK Macao

Macao-led research develops AI model to predict pathogenic variants of COVID-19

Xinhua | Updated: 2023-08-02 11:29
Share
Share - WeChat

MACAO -- An international team led by researchers at the Macao University of Science and Technology in south China has developed an artificial intelligence (AI) model that can predict the pathogenic variants of COVID-19.

Named UniBind, the model can predict which variants of COVID-19 can increase the infectibility of the virus or help it develop resistance to antibodies or vaccines, through analyzing the over 6 million pieces of viral sequence data generated from global monitoring, according to the team.

The study was published in the latest edition of Nature Medicine, a monthly journal.

Zhang Kang, professor of medicine at the university who had led the research, said the model can integrate and analyze data from different experimental sources and modalities, unlike most existing AI methods that can only make predictions by analyzing a certain kind of experimental data.

The team said it had used UniBind to simulate over 30,000 virtual variants and correctly predicted the evolutions of current main strains such as XBB and BQ mutations of Omicron.

The model further predicted that top ranked mutations such as A475N and S494K are likely to possess high immune escape properties and may drive future viral evolutions.

Results also showed the model can accurately predict the affinity of different viruses and their mutations to different species, which is significant to discovering the intermediate hosts of epidemics and predicting viruses' trans-species transmission paths.

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: 曲麻莱县| 安泽县| 阿荣旗| 土默特右旗| 广灵县| 绍兴市| 即墨市| 玉屏| 兴城市| 南阳市| 维西| 谷城县| 彝良县| 鹿泉市| 本溪市| 水富县| 泊头市| 托里县| 巴塘县| 云和县| 察隅县| 霞浦县| 穆棱市| 沙河市| 祥云县| 丹江口市| 双鸭山市| 通渭县| 九江县| 蒙阴县| 吉隆县| 桐梓县| 鸡东县| 苏尼特右旗| 新蔡县| 石棉县| 湖南省| 烟台市| 曲周县| 怀宁县| 姚安县| 宁海县| 南乐县| 姚安县| 林西县| 全南县| 古丈县| 固始县| 东丰县| 青铜峡市| 东宁县| 光山县| 辽中县| 彰化县| 吴忠市| 集贤县| 克拉玛依市| 府谷县| 禄劝| 黄冈市| 柞水县| 孟津县| 镇巴县| 锡林浩特市| 花莲县| 海淀区| 丹东市| 尚志市| 克山县| 康保县| 科技| 建昌县| 阿坝县| 慈利县| 甘南县| 新龙县| 隆林| 宁国市| 荆门市| 无棣县| 阳新县| 股票|