A Multidisciplinary Hyper-Modeling Scheme in Personalized In Silico Oncology: Coupling Cell Kinetics with Metabolism, Signaling Networks, and Biomechanics as Plug-In Component Models of a Cancer Digital Twin.
Eleni KolokotroniDaniel AblerAlokendra GhoshEleftheria TzamaliJames GroganEleni GeorgiadiPhilippe BüchlerRavi RadhakrishnanHelen ByrneVangelis SakkalisKaterina NikiforakiIoannis KaratzanisNigel J B McFarlaneDjibril KabaFeng DongRainer M BohleEckart MeeseNorbert GrafGeorgios S Stamatakosnull nullPublished in: Journal of personalized medicine (2024)
The massive amount of human biological, imaging, and clinical data produced by multiple and diverse sources necessitates integrative modeling approaches able to summarize all this information into answers to specific clinical questions. In this paper, we present a hypermodeling scheme able to combine models of diverse cancer aspects regardless of their underlying method or scale. Describing tissue-scale cancer cell proliferation, biomechanical tumor growth, nutrient transport, genomic-scale aberrant cancer cell metabolism, and cell-signaling pathways that regulate the cellular response to therapy, the hypermodel integrates mutation, miRNA expression, imaging, and clinical data. The constituting hypomodels, as well as their orchestration and links, are described. Two specific cancer types, Wilms tumor (nephroblastoma) and non-small cell lung cancer, are addressed as proof-of-concept study cases. Personalized simulations of the actual anatomy of a patient have been conducted. The hypermodel has also been applied to predict tumor control after radiotherapy and the relationship between tumor proliferative activity and response to neoadjuvant chemotherapy. Our innovative hypermodel holds promise as a digital twin-based clinical decision support system and as the core of future in silico trial platforms, although additional retrospective adaptation and validation are necessary.
Keyphrases
- papillary thyroid
- neoadjuvant chemotherapy
- squamous cell
- clinical decision support
- cell proliferation
- single cell
- electronic health record
- high resolution
- endothelial cells
- poor prognosis
- clinical trial
- signaling pathway
- locally advanced
- cell therapy
- big data
- palliative care
- lymph node
- radiation therapy
- randomized controlled trial
- squamous cell carcinoma
- machine learning
- study protocol
- childhood cancer
- mass spectrometry
- copy number
- case report
- binding protein
- pi k akt
- oxidative stress
- epithelial mesenchymal transition
- phase ii
- genome wide
- smoking cessation
- induced pluripotent stem cells
- clinical evaluation
- long non coding rna
- replacement therapy