A real-time, non-invasive, micro-optrode technique for detecting seed viability by using oxygen influx

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作者
Xia Xin
Yinglang Wan
Wenjun Wang
Guangkun Yin
Eric S. McLamore
Xinxiong Lu
机构
[1] National Genebank,
[2] Institute of Crop Science,undefined
[3] Chinese Academy of Agricultural Sciences,undefined
[4] Beijing 100081,undefined
[5] China,undefined
[6] College of Biological Sciences and Biotechnology,undefined
[7] Beijing Forestry University,undefined
[8] Beijing 100083,undefined
[9] China,undefined
[10] Xuyue (Beijing) Science and Technology Co.,undefined
[11] Ltd.,undefined
[12] Beijing 100080,undefined
[13] China,undefined
[14] Agricultural & Biological Engineering,undefined
[15] University of Florida,undefined
[16] Gainesville,undefined
[17] FL,undefined
[18] USA,undefined
[19] Current address: NO. 12,undefined
[20] Zhongguancun Nandajie,undefined
[21] Haidian,undefined
[22] Beijing,undefined
[23] China,undefined
[24] 100081.,undefined
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摘要
Quantifying seed viability is required for seed bank maintenance. The classical methods for detecting seed viability are time consuming and frequently cause seed damage and unwanted germination. We have established a novel micro-optrode technique (MOT) to measure seed viability in a quick and non-invasive manner by measuring the oxygen influxes of intact seeds, approximately 10 seconds to screen one seed. Here, we used soybean, wheat, and oilseed rape as models to test our method. After 3-hour imbibition, oxygen influxes were recorded in real-time with the total measurement taking less than 5 minutes. The results indicated a significantly positive correlation between oxygen influxes and viability in all 3 seed types. We also established a linear equation between oxygen influxes and seed viability for each seed type. For measurements, seeds were kept in the early imbibition stage without germination. Thus, MOT is a reliable, quick, and low-cost seed viability detecting technique.
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