Affiliation:
1. School of Pharmaceutical Sciences, SGRR University, Dehradun, 248001, India
2. Faculty of Pharmacy, DIT University,
Uttarakhand, 248009, India
Abstract
Objective:
This study aimed to design and statistically optimize the potential of intranasallydelivered
chitosan-wrapped linagliptin nanosuspension as an alternative approach for brain targeting for
enhancing cognitive behaviour, increasing its solubility/permeability characteristics, and reducing the side
effects.
Method:
Linagliptin nanosuspensions were prepared by the nanoprecipitation method. We investigated
the effects of independent variables, i.e., linagliptin concentration (D) and chitosan concentration (P), on
the dependent factors like % drug loading (R1), % entrapment efficiency (R2), and % drug release (R3)
via a central composite design. Furthermore, the optimized formulation was evaluated for surface morphology/
size, ex-vivo permeation study, in-vitro release study, and stability study.
Results:
The optimized formulation was further evaluated by different evaluation parameters such as
FESEM and TEM study of the optimized formulation (LS 1) showed spherical morphology. Mean particle
size (250.7 nm), charge (-16.3 mV), % entrapment efficiency (95.8 ± 1.45 %), and % drug loading
(35.78 ± 0.19 %) were determined. Saturation solubility (0.987 mg/ml), in vitro dissolution rate (89.65 ±
0.82 %), and ex vivo permeation (82.23 ± 1.25 %) of LS 1 were higher than pure linagliptin.
Conclusions:
Response surface methodology was applied successfully to obtain LS 1 as an optimized
formulation with enhanced solubility and dissolution characteristics at minimized dose, alleviating side
effects and with improvised cognitive effects. Thus, an efficient intranasal delivery platform of linagliptin
based on nanosuspension was designed for bypassing the BBB and delivering therapeutics directly to the
brain. This can be a futuristic approach for enhancing cognitive effects by linagliptin nanosuspension via
the intranasal route.
Publisher
Bentham Science Publishers Ltd.
Subject
General Engineering,General Materials Science
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