| Literature DB >> 35454948 |
Antonio Federico1,2, Michele Fratello1,2, Giovanni Scala3, Lena Möbus1,2, Alisa Pavel1,2, Giusy Del Giudice1,2, Michele Ceccarelli4, Valerio Costa5, Alfredo Ciccodicola5,6, Vittorio Fortino7, Angela Serra1,2, Dario Greco1,2,8.
Abstract
Despite remarkable efforts of computational and predictive pharmacology to improve therapeutic strategies for complex diseases, only in a few cases have the predictions been eventually employed in the clinics. One of the reasons behind this drawback is that current predictive approaches are based only on the integration of molecular perturbation of a certain disease with drug sensitivity signatures, neglecting intrinsic properties of the drugs. Here we integrate mechanistic and chemocentric approaches to drug repositioning by developing an innovative network pharmacology strategy. We developed a multilayer network-based computational framework integrating perturbational signatures of the disease as well as intrinsic characteristics of the drugs, such as their mechanism of action and chemical structure. We present five case studies carried out on public data from The Cancer Genome Atlas, including invasive breast cancer, colon adenocarcinoma, lung squamous cell carcinoma, hepatocellular carcinoma and prostate adenocarcinoma. Our results highlight paclitaxel as a suitable drug for combination therapy for many of the considered cancer types. In addition, several non-cancer-related genes representing unusual drug targets were identified as potential candidates for pharmacological treatment of cancer.Entities:
Keywords: cancer; cancer therapy; drug combinations; drug repositioning; druggability; network; systems pharmacology
Year: 2022 PMID: 35454948 PMCID: PMC9028433 DOI: 10.3390/cancers14082043
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
Figure 1Computational workflow for the detection of drug combinations strategy for drug repositioning.
Figure 2Network representation of the drug combinations in the considered cancers. The color of the edges indicates the cancer type. The thickness of the edges indicates the number of occurrences of the combination in the solutions of the genetic algorithm.
Figure 3Overview of drug combinations obtained for the cancers under consideration. (A)—invasive breast cancer (BRCA); (B)—prostate adenocarcinoma (PRAD); (C)—colon adenocarcinoma (COAD); (D)—lung squamous cell carcinoma (LUSC); (E)—hepatocellular carcinoma best pairs (LIHC).
Figure 4Trace plots showing the performance of the genetic algorithm in terms of stability of the obtained drug combinations. The color of the traces indicate the objective function that is optimized in the genetic algorithm.