Volume 1, Issue 1, December 2017, Page: 18-21
Simultaneous Determination of Each Component in the Salbcain Injection
Chung-Mi Jang, Pyongyang Medical College, Kim Il Sung University, Pyongyang, Democratic People’s Republic of Korea
Yang-Chun Ri, Pyongyang Medical College, Kim Il Sung University, Pyongyang, Democratic People’s Republic of Korea
Un-Chol Rim, Pyongyang Medical College, Kim Il Sung University, Pyongyang, Democratic People’s Republic of Korea
Myong-Il Ri, Pyongyang Medical College, Kim Il Sung University, Pyongyang, Democratic People’s Republic of Korea
Received: Feb. 24, 2017;       Accepted: Jun. 13, 2017;       Published: Jul. 26, 2017
DOI: 10.11648/j.plm.20170101.14      View  1304      Downloads  143
Abstract
It has determinated Sodium salicylate, Lidocaine hydrochloride and Thiamine hydro-chloride in the Salbcain injection by using an ultraviolet spectrophotometry and Kalman filter simultaneously, it has found that wavelength range for simultaneous determination were from 268.6 nm to 332.0 nm. And in this wavelength condition, this determination method for the Salbcain injection was accurate and precise (mean recovery: respectively 99.91%, 97.10% and 99.11%, coefficient of variation: respectively 0.06%, 0.99% and 0.24% of Sodium salicylate, Lidocaine hydrochloride and Thiamine hydrochloride). So it has could determinate the each component of the Salbcain injection simultaneously without chemical reagents.
Keywords
Neuralgic Drug, Salbcain Injection, Kalman Filter Method, Simultaneously Determination
To cite this article
Chung-Mi Jang, Yang-Chun Ri, Un-Chol Rim, Myong-Il Ri, Simultaneous Determination of Each Component in the Salbcain Injection, Pathology and Laboratory Medicine. Vol. 1, No. 1, 2017, pp. 18-21. doi: 10.11648/j.plm.20170101.14
Copyright
Copyright © 2017 Authors retain the copyright of this article.
This article is an open access article distributed under the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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