Keyword search (4,164 papers available)

"Oncology" Keyword-tagged Publications:

Title Authors PubMed ID
1 A pilot randomized controlled trial comparing the feasibility and preliminary effects of different forms of exercise-related social support for older adult survivors of cancer Smith-Turchyn J; Sinclair S; O' Loughlin E; Innes A; Richardson J; Pillips S; Beauchamp M; Thabane L; Wrosch C; Sabiston CM; 41673350
PSYCHOLOGY
2 Deep learning-based feature discovery for decoding phenotypic plasticity in pediatric high-grade gliomas single-cell transcriptomics Abicumaran Uthamacumaran 40848317
PSYCHOLOGY
3 Translating Evidence-Based Self-Management Interventions Using a Stepped-Care Approach for Patients With Cancer and Their Caregivers: A Pilot Sequential Multiple Assignment Randomized Trial Design Lambert S; Moodie EEM; McCusker J; Lokhorst M; Harris C; Langmuir T; Belzile E; Laizner AM; Brahim LO; Wasserman S; Chehayeb S; Vickers M; Duncan L; Esplen MJ; Maheu C; Howell D; de Raad M; 39763142
PSYCHOLOGY
4 Cell Fate Dynamics Reconstruction Identifies TPT1 and PTPRZ1 Feedback Loops as Master Regulators of Differentiation in Pediatric Glioblastoma-Immune Cell Networks Abicumaran Uthamacumaran 39420135
PSYCHOLOGY
5 A Review of Mathematical and Computational Methods in Cancer Dynamics Uthamacumaran A; Zenil H; 35957879
PHYSICS
6 Dissecting cell fate dynamics in pediatric glioblastoma through the lens of complex systems and cellular cybernetics Abicumaran Uthamacumaran 35678918
PHYSICS
7 Acceptability of a structured diet and exercise weight loss intervention in breast cancer survivors living with an overweight condition or obesity: A qualitative analysis. Beckenstein H, Slim M, Kim H, Plourde H, Kilgour R, Cohen TR 33491338
PERFORM
8 Pain in long-term survivors of childhood cancer: A systematic review of the current state of knowledge and a call to action from the Children's Oncology Group. Schulte FSM, Patton M, Alberts NM, Kunin-Batson A, Olson-Bullis BA, Forbes C, Russell KB, Neville A, Heathcote LC, Karlson CW, Racine NM, Charnock C, Hocking MC, Banerjee P, Tutelman PR, Noel M, Krull KR 33112416
PSYCHOLOGY
9 A mixed-methods evaluation of a community physical activity program for breast cancer survivors. Sabiston CM, Fong AJ, O'Loughlin EK, Meterissian S 31217021
CONCORDIA

 

Title:A Review of Mathematical and Computational Methods in Cancer Dynamics
Authors:Uthamacumaran AZenil H
Link:https://pubmed.ncbi.nlm.nih.gov/35957879/
DOI:10.3389/fonc.2022.850731
Publication:Frontiers in oncology
Keywords:algorithmscancercomplex networkscomplexity sciencedynamical systemsinformation theoryinverse problemssystems oncology
PMID:35957879 Category: Date Added:2022-08-12
Dept Affiliation: PHYSICS
1 Department of Physics, Concordia University, Montreal, QC, Canada.
2 Machine Learning Group, Department of Chemical Engineering and Biotechnology, The University of Cambridge, Cambridge, United Kingdom.
3 The Alan Turing Institute, British Library, London, United Kingdom.
4 Oxford Immune Algorithmics, Reading, United Kingdom.
5 Algorithmic Dynamics Lab, Karolinska Institute, Stockholm, Sweden.
6 Algorithmic Nature Group, LABORES, Paris, France.

Description:

Cancers are complex adaptive diseases regulated by the nonlinear feedback systems between genetic instabilities, environmental signals, cellular protein flows, and gene regulatory networks. Understanding the cybernetics of cancer requires the integration of information dynamics across multidimensional spatiotemporal scales, including genetic, transcriptional, metabolic, proteomic, epigenetic, and multi-cellular networks. However, the time-series analysis of these complex networks remains vastly absent in cancer research. With longitudinal screening and time-series analysis of cellular dynamics, universally observed causal patterns pertaining to dynamical systems, may self-organize in the signaling or gene expression state-space of cancer triggering processes. A class of these patterns, strange attractors, may be mathematical biomarkers of cancer progression. The emergence of intracellular chaos and chaotic cell population dynamics remains a new paradigm in systems medicine. As such, chaotic and complex dynamics are discussed as mathematical hallmarks of cancer cell fate dynamics herein. Given the assumption that time-resolved single-cell datasets are made available, a survey of interdisciplinary tools and algorithms from complexity theory, are hereby reviewed to investigate critical phenomena and chaotic dynamics in cancer ecosystems. To conclude, the perspective cultivates an intuition for computational systems oncology in terms of nonlinear dynamics, information theory, inverse problems, and complexity. We highlight the limitations we see in the area of statistical machine learning but the opportunity at combining it with the symbolic computational power offered by the mathematical tools explored.





BookR developed by Sriram Narayanan
for the Concordia University School of Health
Copyright © 2011-2026
Cookie settings
Concordia University