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样本架转向搬运装置的研究与应用
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作者 牛杰 姜宗品 +2 位作者 牛文明 赵鹏 王超 《医疗装备》 2023年第18期23-26,共4页
目前,在全自动体外诊断设备领域多个仪器串联或并联时,样本架输送方向与仪器检测方向常无法保持一致,故需将样本架旋转至特定角度后进行传送。而现有旋转搬运装置存在结构复杂、兼容性差、适应性差、效率低、可靠性低以及占用空间较大... 目前,在全自动体外诊断设备领域多个仪器串联或并联时,样本架输送方向与仪器检测方向常无法保持一致,故需将样本架旋转至特定角度后进行传送。而现有旋转搬运装置存在结构复杂、兼容性差、适应性差、效率低、可靠性低以及占用空间较大等问题。因此,本研究设计了一款样本架转向搬运装置,可有效解决样本架旋转搬运等问题。该装置主要由样本架搬运机构及样本架转向机构组成,能够实现多种轨道对不同样本架进行角度旋转、对接,并可实现全自动样本传送及与实验室生化仪器对接,形成流水线样本架内循环,解决目前设备结构复杂、兼容性差、适应性差、效率低、可靠性低及占用空间大等问题,提高了生化样本检测效率,减少了交叉污染,满足临床检验需要。 展开更多
关键词 样本 体外诊断 转向搬运 样本传输
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The Single Training Sample Extraction of Visual Evoked Potentials Based on Wavelet Transform
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作者 LIU Fang ZHANG Zhen +1 位作者 CHEN Wen-chao QIN Bing 《Chinese Journal of Biomedical Engineering(English Edition)》 2007年第4期170-178,共9页
Based on the good localization characteristic of the wavelet transform both in time and frequency domain, a de-noising method based on wavelet transform is presented, which can make the extraction of visual evoked pot... Based on the good localization characteristic of the wavelet transform both in time and frequency domain, a de-noising method based on wavelet transform is presented, which can make the extraction of visual evoked potentials in single training sample from the EEG background noise in favor of studying the changes between the single sample response happen. The information is probably related with the different function, appearance and pathologies of the brain. At the same time this method can also be used to remove those signal’s artifacts that do not appear with EP within the same scope of time or frequency. The traditional Fourier filter can hardly attain the similar result. This method is different from other wavelet de-noising methods in which different criteria are employed in choosing wavelet coefficient. It has a biggest virtue of noting the differences among the single training sample and making use of the characteristics of high time frequency resolution to reduce the effect of interference factors to a maximum extent within the time scope that EP appear. The experiment result proves that this method is not restricted by the signal-to-noise ratio of evoked potential and electroencephalograph (EEG) and even can recognize instantaneous event under the condition of lower signal-to-noise ratio, as well as recognize the samples which evoked evident response more easily. Therefore, more evident average evoked response could be achieved by de-nosing the signals obtained through averaging out the samples that can evoke evident responses than de-nosing the average of original signals. In addition, averaging methodology can dramatically reduce the number of record samples needed, thus avoiding the effect of behavior change during the recording process. This methodology pays attention to the differences among single training sample and also accomplishes the extraction of visual evoked potentials from single trainings sample. As a result, system speed and accuracy could be improved to a great extent if this methodology is applied to brain-computer interface system based on evoked responses. 展开更多
关键词 visual evoked potential signal extraction wavelet transform single training sample
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