Journal
ANALYTICAL AND BIOANALYTICAL CHEMISTRY
Volume 407, Issue 1, Pages 265-277Publisher
SPRINGER HEIDELBERG
DOI: 10.1007/s00216-014-8036-9
Keywords
Liquid chromatography; Comprehensive; Two dimensional; Pharmaceutical analysis; Sensitivity; Degradation
Funding
- National Science Foundation [CHE-1213364]
- Division Of Chemistry
- Direct For Mathematical & Physical Scien [1213244] Funding Source: National Science Foundation
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In this paper, we describe the findings of a study aimed at assessing the detection sensitivity of comprehensive two-dimensional high-performance liquid chromatography (LCxLC) separation of a degraded active pharmaceutical ingredient (API) with UV absorption as the detection technique. Specifically, we have examined the impact of the volume and solvent composition (referred to as interface conditions) of fractions of first-dimension column effluent transferred to the second dimension for further separation on the ability to resolve and detect low-abundance compounds. Historically, LCxLC has been perceived as being inferior to 1D-LC from the point of view of detection sensitivity. In this work, we demonstrate that LCxLC is sufficiently sensitive to be useful in the pharmaceutical context where in general impurities present at 0.05 % (relative to the API concentration) should be quantified. Moreover, we find that this level of sensitivity is only attained under certain conditions: dilution of the first column effluent with weak solvent (water in this case) prior to injection into the second-dimension column is very beneficial because it promotes focusing of the analyte band in the second column, thereby improving the detection sensitivity of the LCxLC system; and, quantitation limits are also a strong function of peak location in the second-dimension separation window, where baseline disturbances near the dead time of the second column can limit reliable detection of low-abundance compounds.
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