iPADD: A Computational
Tool for Predicting Potential
Antidiabetic Drugs Using Machine Learning Algorithms
Posted on 2023-07-27 - 20:29
Diabetes mellitus is a chronic metabolic disease, which
causes
an imbalance in blood glucose homeostasis and further leads to severe
complications. With the increasing population of diabetes, there is
an urgent need to develop drugs to treat diabetes. The development
of artificial intelligence provides a powerful tool for accelerating
the discovery of antidiabetic drugs. This work aims to establish a
predictor called iPADD for discovering potential antidiabetic drugs.
In the predictor, we used four kinds of molecular fingerprints and
their combinations to encode the drugs and then adopted minimum-redundancy–maximum-relevance
(mRMR) combined with an incremental feature selection strategy to
screen optimal features. Based on the optimal feature subset, eight
machine learning algorithms were applied to train models by using
5-fold cross-validation. The best model could produce an accuracy
(Acc) of 0.983 with the area under the receiver operating characteristic
curve (auROC) value of 0.989 on an independent test set. To further
validate the performance of iPADD, we selected 65 natural products
for case analysis, including 13 natural products in clinical trials
as positive samples and 52 natural products as negative samples. Except
for abscisic acid, our model can give correct prediction results.
Molecular docking illustrated that quercetin and resveratrol stably
bound with the diabetes target NR1I2. These results are consistent
with the model prediction results of iPADD, indicating that the machine
learning model has a strong generalization ability. The source code
of iPADD is available at https://github.com/llllxw/iPADD.
CITE THIS COLLECTION
DataCiteDataCite
No result found
Liu, Xiao-Wei; Shi, Tian-Yu; Gao, Dong; Ma, Cai-Yi; Lin, Hao; Yan, Dan; et al. (2023). iPADD: A Computational
Tool for Predicting Potential
Antidiabetic Drugs Using Machine Learning Algorithms. ACS Publications. Collection. https://doi.org/10.1021/acs.jcim.3c00564