| Literature DB >> 30595969 |
Amy M Boddy1, Weini Huang2,3, Athena Aktipis4.
Abstract
PURPOSE: In this paper, we provide an overview of a life history theory and how it applies to cancer evolution. RECENTEntities:
Keywords: Cancer evolution; Ecology; Evolutionary theory; Life history trade-offs; Neoplastic progression
Year: 2018 PMID: 30595969 PMCID: PMC6290708 DOI: 10.1007/s40139-018-0188-4
Source DB: PubMed Journal: Curr Pathobiol Rep ISSN: 2167-485X
Measures of LH dynamics of a tumor. Here we draw from organismal life history (LH) theory to guide cellular LH parameters of a tumor and provide a list of potential cellular markers
| Organismal LH parameters | Cellular LH parameters | Potential cellular markers |
|---|---|---|
| Somatic maintenance | DNA damage/repair; | DNA damage assays [ |
| Reproduction | Proliferation | Ki67 [ |
| Migration | Cell motility | Mesenchymal markers, ECM markers [ |
| Metabolic Rate | Glycolysis, oxidative phosphorylation | Glucose uptake and lactate production [ |
| Lifespan | Telomere length, telomerase activity | Ratio of telomere length in cancer to non-cancer tissue [ |
| Extrinsic mortality | Apoptosis | Tunel staining [ |
| Predation | Immune markers | CD8+ T cells [ |
| Body mass | Tumor size | CT imaging |
| Population density | Tumor density | CT imaging |
| Environmental resources | Microenvironmental resources | Measure oxygen, glucose; hypoxia factors: HIF-1α, CA IX [ |
| Resource distribution | Angiogenesis; necrosis | VEGF [ |
| Somatic mutation rate | Somatic mutation rate | Multi-sample sequencing [ |
LH life history, ECM extracellular matrix, CT computerized tomography scan
Fig. 1Dynamical trade-offs between two traits of cells under evolutionary processes. When two traits of tumor cells, e.g., growth (-axis) and resistance to drug or ability to escape immune cell attack (x-axis) have a trade-off, the tumor cells evolve inside the gray area in the trait space. The improvement of resistance (trait 2) will lead to a cost of growth (trait 1). The shape of the trade-offs can be classified as linear, concave (initially weak and cheap trade-off), or convex (initially strong and costly trade-off) compared to the linear shape. It is critical for the diversity level of a tumor population. Tumor cells do not necessarily evolve along a trade-off curve with one specific shape. Instead, it is a dynamical process. For example, if the immune cells improve their ability to attack the tumor cells, the cost of the tumor cells to escape immune cells can increase over time, i.e., the tumor cells jump from an initially weaker (cheaper) trade-off curve to a stronger (more costly) one. This kind of dynamical trade-offs has been observed in bacteria populations when the bacteria cells evolve to escape the predation of ciliates