Fuzzy optimization for identifying anti-cancer targets with few side effects in constraint-based models of head and neck cancer

R Soc Open Sci. 2022 Oct 26;9(10):220633. doi: 10.1098/rsos.220633. eCollection 2022 Oct.

Abstract

Computer-aided methods can be used to screen potential candidate targets and to reduce the time and cost of drug development. In most of these methods, synthetic lethality is used as a therapeutic criterion to identify drug targets. However, these methods do not consider the side effects during the identification stage. This study developed a fuzzy multi-objective optimization for identifying anti-cancer targets that not only evaluated cancer cell mortality, but also minimized side effects due to treatment. We identified potential anti-cancer enzymes and antimetabolites for the treatment of head and neck cancer (HNC). The identified one- and two-target enzymes were primarily involved in six major pathways, namely, purine and pyrimidine metabolism and the pentose phosphate pathway. Most of the identified targets can be regulated by approved drugs; thus, these drugs are potential candidates for drug repurposing as a treatment for HNC. Furthermore, we identified antimetabolites involved in pathways similar to those identified using a gene-centric approach. Moreover, HMGCR knockdown could not block the growth of HNC cells. However, the two-target combinations of (UMPS, HMGCR) and (CAD, HMGCR) could achieve cell mortality and improve metabolic deviation grades over 22% without reducing the cell viability grade.

Keywords: cancer cell metabolism; drug discovery; flux balance analysis; genome-scale metabolic model; hybrid differential evolution; multi-level optimization.

Associated data

  • figshare/10.6084/m9.figshare.c.6259595
  • Dryad/10.5061/dryad.wdbrv15s2