Abstract

Pancreatic cancer (PANC) is a dangerous type of cancer that is a major cause of mortality worldwide and exhibits a remarkably poor prognosis. To date, discovering anti-PANC agents remains a very complex and expensive process. Computational approaches can accelerate the search for anti-PANC agents. We report for the first time two models that combined perturbation theory with machine learning via a multilayer perceptron network (PTML-MLP) to perform the virtual design and prediction of molecules that can simultaneously inhibit multiple PANC cell lines and PANC-related proteins, such as caspase-1, tumor necrosis factor-alpha (TNF-alpha), and the insulin-like growth factor 1 receptor (IGF1R). Both PTML-MLP models exhibited accuracies higher than 78%. Using the interpretation from one of the PTML-MLP models as a guideline, we extracted different molecular fragments desirable for the inhibition of the PANC cell lines and the aforementioned PANC-related proteins and then assembled some of those fragments to form three new molecules. The two PTML-MLP models predicted the designed molecules as potentially versatile anti-PANC agents through inhibition of the three PANC-related proteins and multiple PANC cell lines. Conclusions: This work opens new horizons for the application of the PTML modeling methodology to anticancer research.

Highlights

  • We report, for the first time, two perturbation theory and machine learning (PTML) models based on multi-layer perceptron networks (PTML-MLP)

  • All the steps necessary for the creation of a PTML-MLP model have been described in detail very recently [37,40]

  • IC50c is the concentration required for a chemical to inhibit cell viability by 50%. b Value of activity from which a molecule was labeled and considered as active (IAi(cj) = 1). c Refers to the targets. d Information related to the diverse experimental assays

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Summary

Introduction

Pancreatic cancer (PANC) is currently recognized as the seventh most significant cause of cancer-related deaths worldwide. In addition to being associated with a very poor prognosis, PANC presents five highly alarming aspects. The mortality rate of PANC almost equals its incidence rate, since PANC accounted for 458,918 new cases and 432,242 deaths in 2018 [1]. This is consistent with the overall 5-year survival rate of approximately 6%, which makes PANC the most lethal cancer of all [2]. The global burden involving this intractable neoplasm has more than doubled over the past 25 years [3]. PANC is characterized by the emergence of drug resistance [4]; this makes PANC difficult to treat

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