caopornx在线超碰免费-欧美亚洲性色影视在线-人妻无码AV一区二区三区-欧美日韩国产一区二区三区播放-青青草原精品国产亚洲AV-日本黄A级A片国产免费-亚洲精品一区久久久久久-成人18禁在线WWW免费视频

科學(xué)研究

論文
您當(dāng)前的位置 :
PHDMF: A Flexible and Scalable Personal Health Data Management Framework Based on Blockchain Technology
論文作者 Ma, LX; Liao, YX; Fan, HW; Zheng, XF; Zhao, JT; Xiao, ZY; Zheng, GY; Xiong, Y
期刊/會議名稱 FRONTIERS IN GENETICS
論文年度 2022
論文類別 Article
摘要 Currently, most of the personal health data (PHD) are managed and stored separately by individual medical institutions. When these data need to be shared, they must be transferred to a trusted management center and approved by data owners through the third-party endorsement technology. Therefore, it is difficult for personal health data to be shared and circulated over multiple medical institutions. On the other hand, the use of directly exchanging and sharing the original data has become inconsistent with the data rapid growth of medical institutions because of the need of massive data transferring across agencies. In order to secure sharing and managing the mass personal health data generated by various medical institutions, a federal personal health data management framework (PHDMF, ) has been developed, which had the following advantages: 1) the blockchain technology was used to establish a data consortium over multiple medical institutions, which could provide a flexible and scalable technical solution for member extension and solve the problem of third-party endorsement during data sharing; 2) using data distributed storage technology, personal health data could be majorly stored in their original medical institutions, and the massive data transferring process was of no further use, which could match up with the data rapid growth of these institutions; 3) the distributed ledger technology was utilized to record the hash value of data, given the anti-tampering feature of the technology, malicious modification of data could be identified by comparing the hash value; 4) the smart contract technology was introduced to manage users' access and operation of data, which made the data transaction process traceable and solved the problem of data provenance; and 5) a trusted computing environment was provided for meta-analysis with statistic information instead of original data, the trusted computing environment could be further applied to more health data, such as genome sequencing data, protein expression data, and metabolic profile data through combining the federated learning and blockchain technology. In summary, the framework provides a convenient, secure, and trusted environment for health data supervision and circulation, which facilitate the consortium establish over medical institutions and help achieve the value of data sharing and mining.
13
精品69影视| 老司机精品绯色| 色哟哟哟www精品视频观看软件 | 欧美日韩人妻精品一区在线| 亚洲精品乱码久久久久久日本蜜臀 | 精品视逼逼插入视频| 国产一区亚洲精品成人| 老司机在线看精品| 亚洲精品美国| 欧洲精品999| 91精品国产色综合久久不8更新速度| 凹凸国产熟女精品视频| 国产精品女人久久久久| 一本大道高清视频中文字幕| 日韩精品美女一区二区| 精品日韩人妻av| 久久五月精品视频| 69精品成人视频一区二区三区| 九九热,这里都是精品| 国产任你草精品视频免费| 美女小骚逼操逼精品|