中文字幕 日韩 人妻 无码_亚洲无码电影_亚洲精品成人网站在线观看_久久99精品国产99久久6不卡,午夜亚洲国产理论片二级港台二级_黑人强伦姧人妻日韩HD_国产精品资源在线一区_大胸好大被揉捏好爽在线观看免费_全免费观看中文字幕三级_久久精品国产亚洲av瑜伽_亚洲中文字幕欧美岛国_又爽又黄无遮挡免费视频黄_国产成人高清在线播放_日韩一区中文无码 ,国产精品无码一级免费看A级毛激情_国产精品无码一区免费看_日韩亚洲av人人夜夜澡人人爽_亚洲最新av片不卡无码久久_中文字幕人妻第一区_国产欧美综合在线观看_天天av天天爽无码中文_中文字幕久久久久久久免费蜜桃麻豆_91中文字幕午夜福利亚洲天堂成人国产三级_欧美亚洲精品一级毛淫片_国产在线视频一区二区高清乱码99

信息管理系大數(shù)據(jù)與管理高端講座【1】 2017-06-16


題目:Smart  Monitoring  for  Complex  Diseases  by  Collaborative  Learning  and  Selective  Sensing


報告人:黃帥教授


時間:6月21日上午10:00-11:30


地點:bwin必贏唯一官網(wǎng)大樓121


報告摘要:



The emerging data-rich environments in healthcare hold great promises to accelerate the paradigm transition of U.S. healthcare from reactive care to preventive care. One question is how we could translate the big disease data into better care management of preclinical or diseased patients. While these diseases manifest complex progression process, involving both temporal dynamics and spatial evolution, how could we model, monitor, and modify these processes are challenging problems. The challenges mainly lie on three aspects: disease modeling, monitoring, and prognosis. For example, diseases such as Alzheimer’s disease and Type 1 Diabetes share the commonality that they involve slow and predictable progression processes. Knowing how a disease progresses is helpful, particularly if we’d like to prevent the disease as early as we could for maximum therapeutic efficacy and improved quality of life. The modeling of the progression process is statistically challenging given the high-dimensionality of the data (e.g., tens of thousands variables), the mixed types variables, and the data’s longitudinal nature. Another commonality of these diseases is that, since they are chronic conditions, being able to recognize subtle symptoms that indicate significant clinical events or suggest worse outcomes is crucial for preventative care. Further, patients need to be dynamically prioritized by their projected risk for resource allocation optimization. This needs robust models that build on the statistical knowledge provided by disease modeling and monitoring, to guide the selection of high-risk patients for targeted care. Thus, my works collectively work towards the goal of smart monitoring. Such a smart monitoring method will provide data-driven decision-making capabilities for better disease management, leading to efficient targeted screening and affordable care, better treatment planning, and improved quality of life for both patients and caregivers.


黃帥教授個人簡介:


Dr. Shuai Huang is an Assistant Professor at the Department of Industrial and Systems Engineering at the University of Washington. He received a B.S. degree on Statistics from the University of Science and Technology of China in 2007 and a Ph.D. degree on Industrial Engineering from the Arizona State University in 2012. He is also an adjunct faculty member at the Department of Biomedical Informatics and Medical Education (BIME) and the Integrated Brain Imaging Center (IBIC) at the University of Washington. Dr. Huang develops methodologies for modeling, monitoring, diagnosis, and prognosis of complex networked systems such as the brain connectivity networks, manufacturing systems, and disease progression process of complex diseases that have multiple stages and pathways. He also develops statistical and data mining models to integrate massive and heterogeneous datasets such as neuroimaging, genomics, proteomics, laboratory tests, demographics, and clinical variables, for facilitating scientific discoveries in biomedical research and better decision-makings in clinical practices. His research is funded by the National Science Foundation, National Institute of Health, Juvenile Diabetes Research Foundation, Helmsley Foundation, and several biomedical research institutes. Dr. Huang currently serves as Associate Editor for the IIE Transactions in Healthcare Systems Engineering and Quality Technology and Quantitative Management.


巴林右旗| 永善县| 德兴市| 聊城市| 和平区| 古交市| 宁远县| 山西省| 沙湾县| 焦作市| 长阳| 竹溪县| 抚宁县| 英山县| 法库县| 凉城县| 西乌珠穆沁旗| 醴陵市| 舟山市| 安义县| 观塘区| 桃江县| 正宁县| 邵武市| 公安县| 于田县| 德清县| 晋城| 富裕县| 南乐县| 仲巴县| 台湾省| 泽库县| 东至县| 麻江县| 辽源市| 克拉玛依市| 高平市| 南溪县| 尼玛县| 建水县|