AI4ACEIP: A Computing
Tool to Identify Food Peptides
with High Inhibitory Activity for ACE by Merged Molecular Representation
and Rich Intrinsic Sequence Information Based on an Ensemble Learning
Strategy
posted on 2024-11-04, 18:43authored bySen Yang, Jiaqi Ni, Piao Xu
Hypertension is a common chronic
disorder and a major
risk factor
for cardiovascular diseases. Angiotensin-converting enzyme (ACE) converts
angiotensin I to angiotensin II, causing vasoconstriction and raising
blood pressure. Pharmacotherapy is the mainstay of traditional hypertension
treatment, leading to various negative side effects. Some food-derived
peptides can suppress ACE, named ACEIP with fewer undesirable effects.
Therefore, it is crucial to seek strong dietary ACEIP to aid in hypertension
treatment. In this article, we propose a new model called AI4ACEIP
to identify ACEIP. AI4ACEIP uses a novel two-layer stacked ensemble
architecture to predict ACEIP relying on integrated view features
derived from sequence, large language models, and molecular-based
information. The analysis of feature combinations reveals that four
selected integrated feature pairs exhibit enhancing performance for
identifying ACEIP. For finding meta models with strong abilities to
learn information from integrated feature pairs, PowerShap, a feature
selection method, is used to select 40 optimal feature and meta model
combinations. Compared with seven state-of-the-art methods on the
source and clear benchmark data sets, AI4ACEIP significantly outperformed
by 8.47 to 20.65% and 5.49 to 14.42% for Matthew’s correlation
coefficient. In brief, AI4ACEIP is a reliable model for ACEIP prediction
and is freely available at https://github.com/abcair/AI4ACEIP.