测试香精的传递效果的顶空气相色谱-质谱法

来源 :第十二届中国香料香精学术研讨会 | 被引量 : 0次 | 上传用户:duchze
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目的:发展一种可靠的顶空气相色谱-质谱法,用于测试香精的传递效果.方法:选用三种模型香精分子(四氢芳樟醇,铃兰醛和突厥酮)开发和验证了该顶空气相质谱法的可靠性,包括线性测试范围、最低检测限、重现性和回收率.结果:四氢芳樟醇和铃兰醛的线性测试范围是40-400μg,突厥酮的线性测试范围是40-200μg.该方法最低检测限是80ng,重现性的偏差低于10%,回收率在70%左右.结论:该顶空气相色谱-质谱法可用于预测日化产品中的香精的传递效果.
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