Systems Theory in Oncology: A Narrative Review of an Integrative Framework for Understanding Cancer Complexity
Abstract
1. Introduction
2. Methodology
3. Results and Discussions
3.1. Theoretical Foundations of Systems Theory
3.2. Applications in Oncology
3.3. The Tumor Cell as a Complex Adaptive System
- In diagnostics, for example, researchers are moving beyond single-molecule biomarkers to develop “network biomarkers” [35]. Rather than relying on the level of a single gene or protein, these signatures are based on the altered state of an entire interaction module or a ‘rewired’ sub-network. Such network-based classifiers are proving to be more robust for predicting patient prognosis or response to therapy, as they capture the collective, dysfunctional behavior of a pathway rather than a single, isolated component.
- In therapeutics, one of the most successful applications of a systems-level concept is the strategy of “synthetic lethality” [36]. This approach directly targets the fragility of the cancer network (a property discussed in Table 1). The prime clinical example is the use of PARP inhibitors (e.g., Olaparib) in patients with tumors harboring BRCA1 or BRCA2 mutations. Healthy cells possess redundant DNA repair pathways. Cancers with BRCA mutations have lost one of these pathways (homologous recombination). The PARP inhibitor drug systemically blocks a second, compensatory pathway (base excision repair). While healthy cells tolerate this inhibition by relying on their intact BRCA pathway, the cancer cells—lacking both redundant pathways—suffer catastrophic DNA damage and cell death. This is a quintessential systems-level intervention, as it targets a specific, context-dependent network vulnerability that exists only in the cancer subsystem, rather than targeting a single overactive oncogene.
3.4. Mathematical Modeling in Oncology
3.5. Genomic and Epigenomic Analysis
3.6. Cellular Interactions and the Tumor Microenvironment
3.7. Cancer Stem Cells
4. Challenges and Future Directions
- Model Reliability and Parameterization: A primary hurdle is model reliability, which is deeply tied to calibration and parameter identifiability. Mechanistic and multiscale models often depend on a large number of biological parameters (e.g., reaction rates, cell motility coefficients) that cannot be directly measured in a patient. This uncertainty, if not properly managed, can undermine the predictive accuracy of the model and complicate its clinical interpretation. This underscores the absolute necessity of embedding rigorous sensitivity analyses and quantitative uncertainty assessment as fundamental components of responsible model design.
- Validation in the Clinic: Secondly, external validation of these complex models remains exceptionally difficult. Ideal validation requires large, independent patient cohorts, but in oncology, these are often limited. Furthermore, ethical restrictions and the sheer scarcity of longitudinal datasets (i.e., data collected at multiple time points) that can capture dynamic disease progression make it incredibly challenging to confirm a model’s predictive accuracy in a real-world setting.
- The “Black Box” Problem: As models, particularly those using artificial intelligence, become more complex, their interpretability often decreases. There is a pressing need for explainable and auditable model architectures (XAI). For a clinician to trust and act on a model’s prediction, the model must be able to provide a clear, understandable rationale for its output. This aligns with the broader, critical debate on responsible and ethical AI in biomedical research.
- The Regulatory and Implementation Gap: Finally, even a well-calibrated and validated model faces a translational gap. At present, mechanistic and multiscale models are rarely applied directly in clinical decision making. This is largely due to the absence of standardized validation protocols and clear regulatory guidelines (e.g., from bodies like the FDA or EMA) for their development, approval, and implementation as medical devices.
5. Conclusions
- Understanding the tumor cell as an adaptive system, capable of structural and functional reorganization under stress conditions [72].
- Emphasizing the role of the tumor microenvironment as an active participant in disease progression [73].
- Defining cancer stem cells as strategic nodes in the hierarchy and plasticity of the tumor network [74].
- Last, but not least, it allows for anticipating points of systemic vulnerability, therapeutically exploitable by targeting key nodes or emergent properties of the network [75].
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| System Property | Essential Idea | Example/Detail | Relevance to Cancer |
|---|---|---|---|
| Nonlinearity | Small inputs can produce disproportionate effects. | A point mutation in a key gene triggering extensive oncogenesis. | Explains unpredictable tumor behavior; nonlinear models needed [9]. |
| Structural and Functional Interdependence | Components’ behavior depends on context and network interactions. | Protein activity depends on molecular context and feedback loops. | Genes/proteins cannot be studied in isolation for cancer biology [10]. |
| Feedback and Multiple Regulation | Negative feedback stabilizes systems; positive feedback amplifies instability. | Negative feedback maintains hormonal homeostasis; positive feedback accelerates tumor progression. | Targets for therapies to stabilize or disrupt tumor networks [11]. |
| Self-organization | Systems form organized structures without central control using energy (negative entropy). | Formation of invasive tumor structures or adaptive resistance. | Explains tumor resilience and adaptive behavior [12]. |
| Emergence | Properties arise from interactions, not from the sum of parts. | Tumor aggressiveness emerges from genome–environment–immune interactions. | Supports integrative modeling of cancer dynamics [13]. |
| Robustness and Fragility | Systems resist fluctuations via redundancy and plasticity but have exploitable weak points. | BRCA1/2-mutated tumors are robust via alternative DNA repair but fragile to PARP inhibition (synthetic lethality). | Identifies vulnerabilities for therapeutic targeting [14]. |
| Contextuality and Internal Determinism | System behavior shaped by environment but governed by internal rules; cancer retains reprogrammable logic. | Genetic/epigenetic algorithms guide cellular responses. | Enables prediction of tumor adaptation and evolution [15]. |
| Hierarchical Complexity | Organization spans multiple levels (genetic, molecular, cellular, tissue, systemic) with interdependence. | In metastatic melanoma: Genetic—BRAF/NRAS mutations activate MAPK signaling → Molecular—abnormal phosphorylation cascades and cytokine secretion → Cellular—melanoma cells interact with macrophages and T cells → Tissue—ECM remodeling and angiogenesis → Systemic—exosomes/cytokines prepare pre-metastatic niches. | Explains emergent properties and multi-scale tumor interactions [16]. |
| System Property | Essential Idea | Example/Detail | Relevance to Cancer |
|---|---|---|---|
| Nucleus | Identity and memory | Governs informational stability via transcriptional control, DNA repair, and epigenome maintenance; TP53, RB1, BRCA1/2 act as central regulators of system integrity. | Maintains genetic fidelity; mutations disrupt identity and promote oncogenesis [24]. |
| Endoplasmic reticulum (ER) & Ribosomes | Information processing | Translate and modulate cellular responses through protein synthesis; persistent UPR activation via IRE1, PERK, ATF6 supports tumor survival under stress (e.g., pancreatic adenocarcinoma). | Supports stress adaptation and protein quality control in cancer cells [25]. |
| Mitochondria | Energetic control | Metabolic reprogramming (Warburg effect): shift from oxidative phosphorylation to aerobic glycolysis for biosynthesis and hypoxia adaptation; involves HIF-1α, PDK1, HK2, PKM2. | Ensures energy supply and biosynthetic precursors for rapid proliferation [26]. |
| Plasma membrane | Boundaries and signaling | Regulates perception of stimuli and intercellular communication via EGFR, HER2, VEGFR receptors—often hyperactivated in breast, colorectal, and lung cancers. | Drives uncontrolled proliferation and signal transduction in tumors [27]. |
| Cytoskeleton & Golgi apparatus | Mechanical and chemical regulation | Govern migration, polarity, secretion; Rho GTPases (RhoA, Rac1) coordinate cytoskeletal reorganization during invasion/metastasis, especially in prostate and pancreatic cancers. | Enables tumor cell motility, invasion, and metastatic spread [28]. |
| Lysosomes & Autophagy | Entropy control and waste elimination | Maintain homeostasis via recycling; autophagy (mTOR, ATG5, ULK1) protective in early phases, supports survival in advanced melanoma and breast cancer. | Dual role: tumor suppression early, survival mechanism later [28,29]. |
| Golgi vesicles & Exosomes | Modularity and long-distance communication | Facilitate material and signal exchange; tumor-derived exosomes (Rab GTPases, ESCRT complexes) remodel microenvironment and evade immune response (gliomas, prostate cancer). | Supports microenvironment manipulation and immune evasion [30]. |
| Centrosomes, Cyclins & CDKs | Temporal coordination | Control cell cycle progression; dysregulation of Cyclin D1, CDK4/6 or centrosome amplification causes chromosomal instability (glioblastoma, triple-negative breast cancer). | Drives uncontrolled proliferation and genomic instability [31]. |
| Inter-organelle interactions | Adaptability | Integrated JAK/STAT, NF-κB, MAPK signaling networks regulate responses to inflammatory, nutritional, or therapeutic stimuli. | Coordinates adaptive responses under environmental or treatment pressures [32]. |
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Savencu, O.; Lișcu, H.-D.; Verga, N. Systems Theory in Oncology: A Narrative Review of an Integrative Framework for Understanding Cancer Complexity. Physiologia 2025, 5, 48. https://doi.org/10.3390/physiologia5040048
Savencu O, Lișcu H-D, Verga N. Systems Theory in Oncology: A Narrative Review of an Integrative Framework for Understanding Cancer Complexity. Physiologia. 2025; 5(4):48. https://doi.org/10.3390/physiologia5040048
Chicago/Turabian StyleSavencu, Olivian, Horia-Dan Lișcu, and Nicolae Verga. 2025. "Systems Theory in Oncology: A Narrative Review of an Integrative Framework for Understanding Cancer Complexity" Physiologia 5, no. 4: 48. https://doi.org/10.3390/physiologia5040048
APA StyleSavencu, O., Lișcu, H.-D., & Verga, N. (2025). Systems Theory in Oncology: A Narrative Review of an Integrative Framework for Understanding Cancer Complexity. Physiologia, 5(4), 48. https://doi.org/10.3390/physiologia5040048

