000 02593nam a2200157 4500
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082 _bP.38-43
100 _aPratiksha Akki
245 _aDESIGN, FORMULATION AND EVALUATION OF PIROXICAM TABLETs USING ARTIFICIAL NEURAL NETWORK
300 _aP.38-43
520 _a In the realm of pharmaceuticals, artificial intelligence (AI) denotes the application of automated algorithms to tasks traditionally associated with human cognitive abilities. An artificial neural network (ANN) serves as a simulation of the human brain, aiming to replicate both the structure and functionality of genuine neurons. Oral disintegrating tablets (ODTs), which can dissolve on the tongue in three minutes or less, are an unusual dosage form, particularly concerning the elderly and young patients. Formulation studies of ODTs face challenges, as they often depend on conventional laboratory trial-and-error methods and the expertise of pharmaceutical professionals. Unfortunately, this approach proves inefficient and timeconsuming. The primary focus of the present research was to create an artificial neural network (ANN) prediction model tailored for ODT formulations employing the wet granulation technique. A literature review was carried out by collecting 307 formulation data set to train the data. For the ODT formulation, the ANN predicted and practically obtained values were compared. Formulations were subjected to pre-compression and post-compression parameters due to oral disintegration; the focus was on assessment of disintegration period and rate of in vitro dissolution. Notably, in the case of the PF7 formulation, the predicted disintegration time was precisely 48.476 seconds, closely aligning with the obtained result of 45.1 seconds. Additionally, the in vitro dissolution rate was accurately predicted at 92.34%, with the actual result being 93.74%. Besides, this dissolution rate stands out as the highest among all the formulations examined. Experimental data revealed, the almost identical estimate for ODT formulations compared to the ANN prediction. The application of this prediction model could efficiently reduce the time and cost required to produce a pharmaceutical and consequently facilitate the advancement of a potent drug product
654 _aOral disintegrating tablets
_aartificial neural network
_aformulation prediction
_ainput
_ahidden layer
_aoutput
700 _aApoorva V.
773 0 _0125265
_9109908
_dMumbai Indian Drugs Manufacturer's Association
_tIndian Drugs
_x0019-462X
942 _cJA
999 _c131149
_d131149