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Corrigendum to“The complexation of insulin with sodium N-[8-(2-hydroxybenzoyl)amino]-caprylate for enhanced oral delivery:Effects of concentration,ratio,and pH”[Chinese Chemical Letters 33(2022)1889-1894]
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作者 Huixian Weng Lefei Hu +8 位作者 Lei Hu Yihan Zhou Aohua Wang Ning Wang Wenzhe Li Chunliu Zhu Shiyan Guo Miaorong Yu Yong Gan 《Chinese Chemical Letters》 2025年第8期674-674,共1页
The authors regret that an error in Fig.3E in this article was found while we reviewing the published data.An inadvertent mistake occurred in the process of assembling images.The picture of the Ms215μg/mL group was w... The authors regret that an error in Fig.3E in this article was found while we reviewing the published data.An inadvertent mistake occurred in the process of assembling images.The picture of the Ms215μg/mL group was wrongly placed. 展开更多
关键词 RATIO correction assembling imagesthe sodium n hydroxybenzoyl amino caprylate PH insulin complexation published dataan oral delivery
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二乙酰酒石酸酐柱前手性衍生化反相高效液相色谱法拆分心得安对映体 被引量:1
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作者 邱宗荫 王凌志 +2 位作者 赵华 张晓萍 李惠芝 《分析化学》 SCIE EI CAS CSCD 北大核心 1995年第3期268-272,共5页
以(R,R)-O,O-二乙酰基酒石酸酐作柱前手性衍生化试剂,用ODS柱拆分了心得安对映体.探讨了衍生化反应条件.研究了pH及流动相组成对色谱保留行为的影响.发现心得安的两种非对映异构体衍生物的荧光响应有显著差别.对心得安对映体的半制备色... 以(R,R)-O,O-二乙酰基酒石酸酐作柱前手性衍生化试剂,用ODS柱拆分了心得安对映体.探讨了衍生化反应条件.研究了pH及流动相组成对色谱保留行为的影响.发现心得安的两种非对映异构体衍生物的荧光响应有显著差别.对心得安对映体的半制备色谱拆分规律作了新的探讨.确定了用 Shim-pack CLC-ODS柱进行半制备色谱拆分的最佳条件,得到的光学异构体纯度在99%以上. 展开更多
关键词 HPLC 心得安 对映体拆分 dataan
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Editorial for the special issue on heterogenous computing
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作者 Shanjiang Tang Yusen Li 《CCF Transactions on High Performance Computing》 2024年第2期113-114,共2页
In the current era of AI and Big Data,an increasing and significant amount of computing power is needed for many applications and algorithms such as AIGC models,face detection,autonomous driving and atmosphere simulat... In the current era of AI and Big Data,an increasing and significant amount of computing power is needed for many applications and algorithms such as AIGC models,face detection,autonomous driving and atmosphere simulation.Recently,there is a significant amount of interest among the community in improving AI and big data applications with heterogenous computing,which refers to a computing system using different types of computing cores such as GPU,NPU,ASIC,DSP and FPGA.It can improve the performane and enery efficiency by dispatching different workloads to processors that are designed for specialized processing and specific purposes.This issue aims to cover challenges that can hamper efficiency and utilization for AI and big data applications on heterogenous computing systems,such as efficient utilization of the raw hardware,I/O management,task scheduling,etc. 展开更多
关键词 types computing cores heterogenous computingwhich big dataan aigc modelsface detectionautonomous driving computing system AI heterogenous computing big data
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