AG百家乐大转轮-AG百家乐导航_怎么看百家乐走势_全讯网官网 (中国)·官方网站

Research News

Progress in Precision Diagnosis and Treatment of Thyroid Cancer by AI from Professor Haipeng Xiao’s Team

Share
  • Updated: Apr 14, 2021
  • Written:
  • Edited:
Source: The First Affiliated Hospital
Edited by: Tan Rongyu, Wang Dongmei

On March 22nd, 2021, the study from Professor Haipeng Xiao’s Team “Deep learning-based artificial intelligence model assists in thyroid nodule management: a multi-center, diagnostic study” was published on The Lancet Digital Health, the family-journal of The Lancet focused on artificial intelligence.

Thyroid nodules are found in up to 40-66% of adults in the general population. Thyroid ultrasound is the preferred noninvasive method to differentiate malignant from benign nodules, whose misdiagnosis rate is still up to 15%-20%. Hence, Professor Haipeng Xiao’s Team committed to use deep learning technology to develop an AI diagnostic model (ThyNet), based on nearly 20,000 ultrasound images of thyroid nodules. Then the diagnostic performance of ThyNet was compared with that of 12 radiologists and the ThyNet assisted strategy was verified on the data sets from 7 centers. The accuracy of the ThyNet-assisted strategy in external multi-center verification had exceeded the experts with more than 10 years of experience in thyroid ultrasound examination. The AI-assisted strategy combining with the ACR TI-RADS guideline could reduce the proportion of patients who required invasive thyroid fine needle aspiration from 87.7% to 53.4%, while the misdiagnosis rate of thyroid cancer only increased by 0.4%.

At present, there are still controversies about how to implement AI into clinical practice and its ethical risks. This study found that half of the radiologists revised their diagnosis when their diagnosis was inconsistent with AI recommendations, while a quarter of the revised diagnosis was confirmed as an incorrect revision by pathology. This study firstly provided data on how AI affected clinical decision-making and medical behavior, and its possible ethical risks.


The AI-assisted strategy combining with the ACR TI-RADS guideline

The first authors of this article were Professor Sui Peng, Dr. Yihao Liu, Professor Weiming Lv, Professor Longzhong Liu and Dr. Qian Zhou. The last corresponding author of the article is Professor Haipeng Xiao from the Department of Endocrinology, the First Affiliated Hospital of Sun Yat-sen University. And the co-corresponding authors were Professor Wei Wang from the Department of Ultrasound Medicine, the First Affiliated Hospital of Sun Yat-sen University and Professor Erik K Alexander from Harvard University.

This research was led by the First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China (the Clinical Trial Unit, the Department of Endocrinology, the Department of Ultrasound Medicine, the Department of Thoracic and Breast Surgery and the Medical Big Data Center). Professor Haipeng Xiao’s Team cooperated with 6 tertiary hospitals in South China (Sun Yat-sen University Cancer Center, Guangzhou, China; the First Affiliated Hospital of Guangzhou University of Chinese Medicine, Guangzhou, China; the Sixth Affiliated Hospital of Sun Yat-sen University, Guangzhou, China; the Guangzhou Army General Hospital, Guangzhou, China; the Third Affiliated Hospital of Sun Yat-sen University, Guangzhou, China; and the First Affiliated Hospital of Guangxi Medical University, Nanning, China) and Brigham and Women’s Hospital. Tsinghua University and the team of Xiaobai Century assisted in the construction of deep learning network.

This achievement of this project fully embodied the multidisciplinary, interdisciplinary and multicenter collaborative innovation and complementary advantages, and has been promoted and recommended on the homepage of The Lancet Digital Health.

Link: https://www.thelancet.com/journals/landig/article/PIIS2589-7500(21)00041-8/fulltext
TOP
百家乐庄和闲的赌法| 百家乐真人游戏| 游戏机百家乐官网作弊| 24山分金吉凶断| 德州扑克 单机| 博雅德州扑克下载| 百家乐官网开户送10彩金| 尊龙百家乐娱乐城| 依兰县| 圣淘沙百家乐官网现金网| 百家乐官网群sun811| 百家乐记牌器| 宝马会在线娱乐城| 澳门百家乐常赢打法| 线上百家乐官网网站| 百家乐程序开户发| 百家乐官网赌场网| 缅甸百家乐赌场娱乐网规则| 赌场百家乐官网规则| 百家乐筹码桌| 天长市| 百家乐手论坛48491| 金榜百家乐现金网| 东方夏威夷网站| 试玩百家乐代理| 利博百家乐官网的玩法技巧和规则| 太阳百家乐游戏| 网上百家乐官网公司| 大发888下载官方| 百家乐7杀6| 狮威百家乐官网娱乐网| 大发888新址| 中原百家乐官网的玩法技巧和规则| 百家乐庄牌| 百家乐最佳投注法下载| 優博百家乐官网客服| 永利百家乐官网娱乐| 澳门博彩业| 明升百家乐QQ群| 百家乐官网游戏公司| 大发888老l|