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Cited 1 time in webofscience Cited 2 time in scopus
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PECAN Predicts Patterns of Cancer Cell Cytostatic Activity of Natural Products Using Deep Learning

Authors
Gahl, MarthaKim, Hyun WooGlukhov, EvgeniaGerwick, William H.Cottrell, Garrison W.
Issue Date
Feb-2024
Publisher
American Chemical Society
Keywords
Biological Products; Cytostatic Agents; Antineoplastic Agent; Cytostatic Agent; Natural Product; Biological Product; Antiproliferative Activity; Article; Biological Activity; Cancer Cell; Cytostasis; Data Analysis; Deep Learning; Feed Forward Neural Network; Human; Human Cell; Machine Learning; Prediction; Prediction Engine For The Cytostatic Activity Of Natural Product Like Compounds; Predictive Model; Quantitative Structure Activity Relation; Validation Study; Carya; Neoplasm; Biological Products; Cytostatic Agents; Deep Learning; Humans; Neoplasms
Citation
Journal of Natural Products, v.87, no.3, pp 567 - 575
Pages
9
Indexed
SCIE
SCOPUS
Journal Title
Journal of Natural Products
Volume
87
Number
3
Start Page
567
End Page
575
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/21492
DOI
10.1021/acs.jnatprod.3c00879
ISSN
0163-3864
1520-6025
Abstract
Many machine learning techniques are used as drug discovery tools with the intent to speed characterization by determining relationships between compound structure and biological function. However, particularly in anticancer drug discovery, these models often make only binary decisions about the biological activity for a narrow scope of drug targets. We present a feed-forward neural network, PECAN (Prediction Engine for the Cytostatic Activity of Natural product-like compounds), that simultaneously classifies the potential antiproliferative activity of compounds against 59 cancer cell lines. It predicts the activity to be one of six categories, indicating not only if activity is present but the degree of activity. Using an independent subset of NCI data as a test set, we show that PECAN can reach 60.1% accuracy in a six-way classification and present further evidence that it classifies based on useful structural features of compounds using a "within-one" measure that reaches 93.0% accuracy.
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