SlideShare una empresa de Scribd logo
1 de 16
Mathematical Modelling
of Adaptive Therapy for
brain cancer
Name: Fatimah Al shehri
Reg.No: p126935
Supervisor’s Name: Dr.Mohd Almie bin Alias
 Introduction
 Problem Statement
 Research Question
 Research Objectives
 Literature Review
 Methodology
 Expected Results
 Gantt Chart
 References
 Cancer is a type of disease that can lead to death after a heart attack, The number of
deaths reached 10 million in the world in 2020.
 One of the main problems with cancer is that it is very invasive and disappear and come
back offer, which makes treatment difficult.
 Continuous therapy (CT) is a standard way of cancer treatment method involving consistent
drug dosages.
 Recently, Adaptive therapy (AT) has emerged as an innovative strategy, when treatment is
planned to stop when the cancer burden decreasing to specific value, and treatment restarts
when the burden returns to its initial point.
• While existing models often use (ODEs), this study propos advanced 1D and 2D continuous spatial
models with (PDEs) to capture spatial heterogeneity within cancer.
• Mathematical modles for (AT) are not a lot ,we need models condition under which situations (AT) is
better than (CT). Recent attempts to incorporate spatial distribution using 2D agent-based and hybrid
cellular automaton models have fallen short.
• lacking the ability to accurately represent the heterogeneity of drug nutrients, and other materials within a
tumor. There is a need for advanced modeling approaches that address these limitations and provide a
more realistic depiction of tumor dynamics
• Our problem statement focuses on developing 1D and 2D continuous spatial models using (PDEs),
specifically advection-reaction-diffusion equations.
• These equations will account for changes in drug-resistant cells, drug-sensitive cells, drug concentration,
and nutrient concentration within a tumor.This study will allow for a more accurate representation of the
effectiveness of (AT) over (CT)
 How can mathematical models be developed that provide continuous
representation and incorporate spatial variation in the distribution of
nutrients, drugs, and tumor cells?
 What are the methods that can be used to measure the effectiveness
of drug administration?
 How does competition between tumor cells modulate the relationship
between spatial variation in cell, nutrient and drug administrated
through (AT) and (CT)?
 What are the spatial conditions where (AT) can be more effective than
(CT)?
 To develop 1D and 2D continuous mathematical models with spatial variations in
the distribution of nutrient, drug, and tumor cells.
 To investigate the effects spatial variations (in the distribution of nutrients, drugs,
and tumor cells) on (i) time to progression of tumors and (ii) total drug doses
administered for both (CT) and (AT).
 To investigate how the nature and strength of competition between tumor cells
modulates the effects of spatial variations (in the distribution of nutrient, drug, and
tumor cells) on (i) time to progression of tumors and (ii) total drug doses
administered for both(AT) and (CT).
 To determine the spatial conditions where (AT) is more effective than (CT).
 Spatial variations in the distribution of tumor cells, nutrient and drug could affect
time to progression of tumor and total drug doses administered for both (AT) and
(CT).
 The nature and strength of tumor cell competition could change the effects of
spatial variations in the distribution of tumor cells, nutrient and drug on time to
progression of tumor and total drug doses administered for both (AT) and (CT).
 (AT) is more effective than (CT) when the competition between drug-resistant and
drug-sensitive cancer cells is increased by spatial variations in the distribution of
tumor cells, nutrient and drug.
Result
Topic
Researcher
Create 1D and 2D
continuous spatial modles
Areaction Diffusion model of cancer
invasion
Gatenby (1996)
Inability to represent the
heterogeneity of drug and...
2D Agent hybrid modles.
Anderson (1998)
A specific drug is
administrated to apatient can
affect the efficiency
Adaptive therapy
Frieden (2009)
This strategy offers anti-
cancer benefits and may
lessen drug resistance
Combination therapy in combating
cancer.
Mokhtari (2017)
Result
Topic
Researcher
Optimising cancer treatment
strategies
Recognise the spatial- temporal
complexities within the tumor is crucial
Norton (2019)
Influencing the efficacy of
(AT) and (CT)
The spatial distributation of cancer cells,...
Wang (2022)
• Development of general-Dimensional models
General methods
A continuous
Mathematical
models
(PDEs)
• Solving a 1D mathematical model:
Rewritten in one
dimension or not
Analytically and
numerically
• Solving 2D mathematical model
Numerical Finite difference
method
The general
Dimensional
Mathematical models
 Mathematical Model Development:
 Development 1D and 2D continuous spatial models based on (PDEs) for advection-reaction-diffusion
equations, account spatial variations in drug-resistant cells, drug-sensitive cells, drug concentration, and
nutrient concentration within tumors.
 Also, develop 1D and 2D continuous spatial models using PDEs to represent the heterogeneity of materials
within tumors.
 We need advanced modelling approaches that address these limitations.
 Provide a more realistic depiction of tumor dynamics.
 This study will allow for a more accurate representation of the effectiveness (AT) over (CT).
 Compare the result with output from experimental studies obtained from the reported tumor volume.
 We will also compare our output with those of the discrete models hybirid discrete models and ODEs.
 By altering parameter values obtained through estimation based methods, one can achieve the effects of
spatial variations in tumor cells, nutrients, and drugs.
 Incorporate (AT) for brain cancer and benefit MRI data contributes to the development of treatment
strategies for brain cancer.
 Mattiuzzi, C. & Lippi, G. 2020. Cancer statistics: A comparison between world health organization (WHO)
and global burden of disease (GBD). European Journal of Public Health 30(5): 1026–1027.
 Anderson, A. R. & Chaplain, M. A. 1998. Continuous and discrete mathematical models of tumor-induced
angiogenesis. Bulletin of Mathematical Biology 60(5): 857–899.
 Bacevic, K., Noble, R., Soffar, A., Wael Ammar, O., Boszonyik, B., Prieto, S., Vincent, C., Hochberg, M.
E., Krasinska, L. & Fisher, D. 2017. Spatial competition constrains resistance to targeted cancer therapy.
Nature Communications 8(1): 1995.
 Basanta, D. & Anderson, A. R. A. 2013. Exploiting ecological principles to better understand cancer
progression and treatment. Interface Focus 3(4): 20130020.
 Beck, J. S. 2020. Cognitive behavior therapy: Basics and beyond. Guilford Publications.
 Carlson, C. 2016. Effectiveness of the World Health Organization Cancer Pain Relief Guidelines: An
integrative review. Journal of Pain Research, Volume 9: 515–534.
 Cerrone, A., Hochhalter, J., Heber, G. & Ingraffea, A. 2014. On the effects of modeling as-manufactured
geometry: Toward digital twin. International Journal of Aerospace Engineering 2014.
 Chaplain, M. A. J. 1996. Avascular growth, angiogenesis and vascular growth in solid tumours: The
mathematical modelling of the stages of tumor development. Mathematical and Computer Modelling
23(6): 47–87.
Mathematical Modelling of Adaptive Therapy for braincancer.pptx

Más contenido relacionado

Similar a Mathematical Modelling of Adaptive Therapy for braincancer.pptx

Patrick-Grossmann_Radiomics_v5
Patrick-Grossmann_Radiomics_v5Patrick-Grossmann_Radiomics_v5
Patrick-Grossmann_Radiomics_v5Patrick Grossmann
 
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptx
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptxPrecision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptx
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptxDr. Rituparna Biswas
 
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docxalisondakintxt
 
Potentials of 3D models in anticancer drug screening
Potentials of 3D models in anticancer drug screeningPotentials of 3D models in anticancer drug screening
Potentials of 3D models in anticancer drug screeningAnjali R.
 
Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali Ganguly
 
Recent advances in cancer treatment.
Recent advances in cancer treatment.Recent advances in cancer treatment.
Recent advances in cancer treatment.lokeshrahate
 
Week12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetWeek12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetMusTapha KaMal FaSya
 
Research hotspot and frontier progress of cancer under the background of pre...
Research hotspot and frontier progress of cancer under the  background of pre...Research hotspot and frontier progress of cancer under the  background of pre...
Research hotspot and frontier progress of cancer under the background of pre...LucyPi1
 
Comparative dosimetry of forward and inverse treatment planning for Intensity...
Comparative dosimetry of forward and inverse treatment planning for Intensity...Comparative dosimetry of forward and inverse treatment planning for Intensity...
Comparative dosimetry of forward and inverse treatment planning for Intensity...iosrjce
 
Herbal and Synthetic Drug Combinations in Cancer Therapy A Review
Herbal and Synthetic Drug Combinations in Cancer Therapy A ReviewHerbal and Synthetic Drug Combinations in Cancer Therapy A Review
Herbal and Synthetic Drug Combinations in Cancer Therapy A Reviewijtsrd
 
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...Brainlab
 
Dosimetry-guided i-131 treatment
Dosimetry-guided i-131 treatment Dosimetry-guided i-131 treatment
Dosimetry-guided i-131 treatment Seza Gulec
 
Precision Medicine: Opportunities and Challenges for Clinical Trials
Precision Medicine: Opportunities and Challenges for Clinical TrialsPrecision Medicine: Opportunities and Challenges for Clinical Trials
Precision Medicine: Opportunities and Challenges for Clinical TrialsMedpace
 
Potential of Targeting Bone Metastases with Immunotherapies_Crimson Publishers
Potential of Targeting Bone Metastases with Immunotherapies_Crimson PublishersPotential of Targeting Bone Metastases with Immunotherapies_Crimson Publishers
Potential of Targeting Bone Metastases with Immunotherapies_Crimson PublishersCrimsonpublishersCancer
 
Dr Sandeep Roy paper on tumor regression
 Dr Sandeep Roy paper on tumor regression Dr Sandeep Roy paper on tumor regression
Dr Sandeep Roy paper on tumor regressionSandeep Roy
 
Amelia glioblastoma
Amelia glioblastomaAmelia glioblastoma
Amelia glioblastomaAmelia Wan
 
Balance etween quality and cost
Balance etween  quality and costBalance etween  quality and cost
Balance etween quality and costsummer elmorshidy
 
Adaptive radiotherapy in head and neck cancer
Adaptive radiotherapy in head and neck cancerAdaptive radiotherapy in head and neck cancer
Adaptive radiotherapy in head and neck cancerDr. Rituparna Biswas
 

Similar a Mathematical Modelling of Adaptive Therapy for braincancer.pptx (20)

Patrick-Grossmann_Radiomics_v5
Patrick-Grossmann_Radiomics_v5Patrick-Grossmann_Radiomics_v5
Patrick-Grossmann_Radiomics_v5
 
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptx
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptxPrecision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptx
Precision Radiotherapy: Tailoring Treatment for Individualised Cancer Care.pptx
 
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx
1The Effects of Anti-Cancer Drugs on Cancer Outcomes-S.docx
 
Potentials of 3D models in anticancer drug screening
Potentials of 3D models in anticancer drug screeningPotentials of 3D models in anticancer drug screening
Potentials of 3D models in anticancer drug screening
 
Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014
 
Recent advances in cancer treatment.
Recent advances in cancer treatment.Recent advances in cancer treatment.
Recent advances in cancer treatment.
 
THRIVE-stm2016-2
THRIVE-stm2016-2THRIVE-stm2016-2
THRIVE-stm2016-2
 
Week12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetWeek12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced dataset
 
Research hotspot and frontier progress of cancer under the background of pre...
Research hotspot and frontier progress of cancer under the  background of pre...Research hotspot and frontier progress of cancer under the  background of pre...
Research hotspot and frontier progress of cancer under the background of pre...
 
Comparative dosimetry of forward and inverse treatment planning for Intensity...
Comparative dosimetry of forward and inverse treatment planning for Intensity...Comparative dosimetry of forward and inverse treatment planning for Intensity...
Comparative dosimetry of forward and inverse treatment planning for Intensity...
 
Herbal and Synthetic Drug Combinations in Cancer Therapy A Review
Herbal and Synthetic Drug Combinations in Cancer Therapy A ReviewHerbal and Synthetic Drug Combinations in Cancer Therapy A Review
Herbal and Synthetic Drug Combinations in Cancer Therapy A Review
 
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...
Stereotactic Radiosurgery and Radiotherapy of Brain Metastases Clinical White...
 
Dosimetry-guided i-131 treatment
Dosimetry-guided i-131 treatment Dosimetry-guided i-131 treatment
Dosimetry-guided i-131 treatment
 
Precision Medicine: Opportunities and Challenges for Clinical Trials
Precision Medicine: Opportunities and Challenges for Clinical TrialsPrecision Medicine: Opportunities and Challenges for Clinical Trials
Precision Medicine: Opportunities and Challenges for Clinical Trials
 
Potential of Targeting Bone Metastases with Immunotherapies_Crimson Publishers
Potential of Targeting Bone Metastases with Immunotherapies_Crimson PublishersPotential of Targeting Bone Metastases with Immunotherapies_Crimson Publishers
Potential of Targeting Bone Metastases with Immunotherapies_Crimson Publishers
 
Dr Sandeep Roy paper on tumor regression
 Dr Sandeep Roy paper on tumor regression Dr Sandeep Roy paper on tumor regression
Dr Sandeep Roy paper on tumor regression
 
Amelia glioblastoma
Amelia glioblastomaAmelia glioblastoma
Amelia glioblastoma
 
Balance etween quality and cost
Balance etween  quality and costBalance etween  quality and cost
Balance etween quality and cost
 
EPMA published abstract
EPMA published abstractEPMA published abstract
EPMA published abstract
 
Adaptive radiotherapy in head and neck cancer
Adaptive radiotherapy in head and neck cancerAdaptive radiotherapy in head and neck cancer
Adaptive radiotherapy in head and neck cancer
 

Último

Lab Manual Arduino UNO Microcontrollar.docx
Lab Manual Arduino UNO Microcontrollar.docxLab Manual Arduino UNO Microcontrollar.docx
Lab Manual Arduino UNO Microcontrollar.docxRashidFaridChishti
 
Insurance management system project report.pdf
Insurance management system project report.pdfInsurance management system project report.pdf
Insurance management system project report.pdfKamal Acharya
 
Electrical shop management system project report.pdf
Electrical shop management system project report.pdfElectrical shop management system project report.pdf
Electrical shop management system project report.pdfKamal Acharya
 
Maher Othman Interior Design Portfolio..
Maher Othman Interior Design Portfolio..Maher Othman Interior Design Portfolio..
Maher Othman Interior Design Portfolio..MaherOthman7
 
Intelligent Agents, A discovery on How A Rational Agent Acts
Intelligent Agents, A discovery on How A Rational Agent ActsIntelligent Agents, A discovery on How A Rational Agent Acts
Intelligent Agents, A discovery on How A Rational Agent ActsSheetal Jain
 
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...Roi Lipman
 
Introduction to Artificial Intelligence and History of AI
Introduction to Artificial Intelligence and History of AIIntroduction to Artificial Intelligence and History of AI
Introduction to Artificial Intelligence and History of AISheetal Jain
 
Theory for How to calculation capacitor bank
Theory for How to calculation capacitor bankTheory for How to calculation capacitor bank
Theory for How to calculation capacitor banktawat puangthong
 
Final DBMS Manual (2).pdf final lab manual
Final DBMS Manual (2).pdf final lab manualFinal DBMS Manual (2).pdf final lab manual
Final DBMS Manual (2).pdf final lab manualBalamuruganV28
 
Piping and instrumentation diagram p.pdf
Piping and instrumentation diagram p.pdfPiping and instrumentation diagram p.pdf
Piping and instrumentation diagram p.pdfAshrafRagab14
 
Artificial Intelligence Bayesian Reasoning
Artificial Intelligence Bayesian ReasoningArtificial Intelligence Bayesian Reasoning
Artificial Intelligence Bayesian Reasoninghotman30312
 
Software Engineering - Modelling Concepts + Class Modelling + Building the An...
Software Engineering - Modelling Concepts + Class Modelling + Building the An...Software Engineering - Modelling Concepts + Class Modelling + Building the An...
Software Engineering - Modelling Concepts + Class Modelling + Building the An...Prakhyath Rai
 
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024EMMANUELLEFRANCEHELI
 
Research Methodolgy & Intellectual Property Rights Series 1
Research Methodolgy & Intellectual Property Rights Series 1Research Methodolgy & Intellectual Property Rights Series 1
Research Methodolgy & Intellectual Property Rights Series 1T.D. Shashikala
 
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...Lovely Professional University
 
Research Methodolgy & Intellectual Property Rights Series 2
Research Methodolgy & Intellectual Property Rights Series 2Research Methodolgy & Intellectual Property Rights Series 2
Research Methodolgy & Intellectual Property Rights Series 2T.D. Shashikala
 
BORESCOPE INSPECTION for engins CFM56.pdf
BORESCOPE INSPECTION for engins CFM56.pdfBORESCOPE INSPECTION for engins CFM56.pdf
BORESCOPE INSPECTION for engins CFM56.pdfomarzaboub1997
 
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...jiyav969
 
Operating System chapter 9 (Virtual Memory)
Operating System chapter 9 (Virtual Memory)Operating System chapter 9 (Virtual Memory)
Operating System chapter 9 (Virtual Memory)NareenAsad
 
Multivibrator and its types defination and usges.pptx
Multivibrator and its types defination and usges.pptxMultivibrator and its types defination and usges.pptx
Multivibrator and its types defination and usges.pptxalijaker017
 

Último (20)

Lab Manual Arduino UNO Microcontrollar.docx
Lab Manual Arduino UNO Microcontrollar.docxLab Manual Arduino UNO Microcontrollar.docx
Lab Manual Arduino UNO Microcontrollar.docx
 
Insurance management system project report.pdf
Insurance management system project report.pdfInsurance management system project report.pdf
Insurance management system project report.pdf
 
Electrical shop management system project report.pdf
Electrical shop management system project report.pdfElectrical shop management system project report.pdf
Electrical shop management system project report.pdf
 
Maher Othman Interior Design Portfolio..
Maher Othman Interior Design Portfolio..Maher Othman Interior Design Portfolio..
Maher Othman Interior Design Portfolio..
 
Intelligent Agents, A discovery on How A Rational Agent Acts
Intelligent Agents, A discovery on How A Rational Agent ActsIntelligent Agents, A discovery on How A Rational Agent Acts
Intelligent Agents, A discovery on How A Rational Agent Acts
 
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...
The battle for RAG, explore the pros and cons of using KnowledgeGraphs and Ve...
 
Introduction to Artificial Intelligence and History of AI
Introduction to Artificial Intelligence and History of AIIntroduction to Artificial Intelligence and History of AI
Introduction to Artificial Intelligence and History of AI
 
Theory for How to calculation capacitor bank
Theory for How to calculation capacitor bankTheory for How to calculation capacitor bank
Theory for How to calculation capacitor bank
 
Final DBMS Manual (2).pdf final lab manual
Final DBMS Manual (2).pdf final lab manualFinal DBMS Manual (2).pdf final lab manual
Final DBMS Manual (2).pdf final lab manual
 
Piping and instrumentation diagram p.pdf
Piping and instrumentation diagram p.pdfPiping and instrumentation diagram p.pdf
Piping and instrumentation diagram p.pdf
 
Artificial Intelligence Bayesian Reasoning
Artificial Intelligence Bayesian ReasoningArtificial Intelligence Bayesian Reasoning
Artificial Intelligence Bayesian Reasoning
 
Software Engineering - Modelling Concepts + Class Modelling + Building the An...
Software Engineering - Modelling Concepts + Class Modelling + Building the An...Software Engineering - Modelling Concepts + Class Modelling + Building the An...
Software Engineering - Modelling Concepts + Class Modelling + Building the An...
 
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024
NEWLETTER FRANCE HELICES/ SDS SURFACE DRIVES - MAY 2024
 
Research Methodolgy & Intellectual Property Rights Series 1
Research Methodolgy & Intellectual Property Rights Series 1Research Methodolgy & Intellectual Property Rights Series 1
Research Methodolgy & Intellectual Property Rights Series 1
 
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...
Activity Planning: Objectives, Project Schedule, Network Planning Model. Time...
 
Research Methodolgy & Intellectual Property Rights Series 2
Research Methodolgy & Intellectual Property Rights Series 2Research Methodolgy & Intellectual Property Rights Series 2
Research Methodolgy & Intellectual Property Rights Series 2
 
BORESCOPE INSPECTION for engins CFM56.pdf
BORESCOPE INSPECTION for engins CFM56.pdfBORESCOPE INSPECTION for engins CFM56.pdf
BORESCOPE INSPECTION for engins CFM56.pdf
 
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...
Vip ℂall Girls Karkardooma Phone No 9999965857 High Profile ℂall Girl Delhi N...
 
Operating System chapter 9 (Virtual Memory)
Operating System chapter 9 (Virtual Memory)Operating System chapter 9 (Virtual Memory)
Operating System chapter 9 (Virtual Memory)
 
Multivibrator and its types defination and usges.pptx
Multivibrator and its types defination and usges.pptxMultivibrator and its types defination and usges.pptx
Multivibrator and its types defination and usges.pptx
 

Mathematical Modelling of Adaptive Therapy for braincancer.pptx

  • 1. Mathematical Modelling of Adaptive Therapy for brain cancer Name: Fatimah Al shehri Reg.No: p126935 Supervisor’s Name: Dr.Mohd Almie bin Alias
  • 2.  Introduction  Problem Statement  Research Question  Research Objectives  Literature Review  Methodology  Expected Results  Gantt Chart  References
  • 3.  Cancer is a type of disease that can lead to death after a heart attack, The number of deaths reached 10 million in the world in 2020.  One of the main problems with cancer is that it is very invasive and disappear and come back offer, which makes treatment difficult.  Continuous therapy (CT) is a standard way of cancer treatment method involving consistent drug dosages.  Recently, Adaptive therapy (AT) has emerged as an innovative strategy, when treatment is planned to stop when the cancer burden decreasing to specific value, and treatment restarts when the burden returns to its initial point.
  • 4. • While existing models often use (ODEs), this study propos advanced 1D and 2D continuous spatial models with (PDEs) to capture spatial heterogeneity within cancer. • Mathematical modles for (AT) are not a lot ,we need models condition under which situations (AT) is better than (CT). Recent attempts to incorporate spatial distribution using 2D agent-based and hybrid cellular automaton models have fallen short. • lacking the ability to accurately represent the heterogeneity of drug nutrients, and other materials within a tumor. There is a need for advanced modeling approaches that address these limitations and provide a more realistic depiction of tumor dynamics • Our problem statement focuses on developing 1D and 2D continuous spatial models using (PDEs), specifically advection-reaction-diffusion equations. • These equations will account for changes in drug-resistant cells, drug-sensitive cells, drug concentration, and nutrient concentration within a tumor.This study will allow for a more accurate representation of the effectiveness of (AT) over (CT)
  • 5.  How can mathematical models be developed that provide continuous representation and incorporate spatial variation in the distribution of nutrients, drugs, and tumor cells?  What are the methods that can be used to measure the effectiveness of drug administration?  How does competition between tumor cells modulate the relationship between spatial variation in cell, nutrient and drug administrated through (AT) and (CT)?  What are the spatial conditions where (AT) can be more effective than (CT)?
  • 6.  To develop 1D and 2D continuous mathematical models with spatial variations in the distribution of nutrient, drug, and tumor cells.  To investigate the effects spatial variations (in the distribution of nutrients, drugs, and tumor cells) on (i) time to progression of tumors and (ii) total drug doses administered for both (CT) and (AT).  To investigate how the nature and strength of competition between tumor cells modulates the effects of spatial variations (in the distribution of nutrient, drug, and tumor cells) on (i) time to progression of tumors and (ii) total drug doses administered for both(AT) and (CT).  To determine the spatial conditions where (AT) is more effective than (CT).
  • 7.  Spatial variations in the distribution of tumor cells, nutrient and drug could affect time to progression of tumor and total drug doses administered for both (AT) and (CT).  The nature and strength of tumor cell competition could change the effects of spatial variations in the distribution of tumor cells, nutrient and drug on time to progression of tumor and total drug doses administered for both (AT) and (CT).  (AT) is more effective than (CT) when the competition between drug-resistant and drug-sensitive cancer cells is increased by spatial variations in the distribution of tumor cells, nutrient and drug.
  • 8. Result Topic Researcher Create 1D and 2D continuous spatial modles Areaction Diffusion model of cancer invasion Gatenby (1996) Inability to represent the heterogeneity of drug and... 2D Agent hybrid modles. Anderson (1998) A specific drug is administrated to apatient can affect the efficiency Adaptive therapy Frieden (2009) This strategy offers anti- cancer benefits and may lessen drug resistance Combination therapy in combating cancer. Mokhtari (2017)
  • 9. Result Topic Researcher Optimising cancer treatment strategies Recognise the spatial- temporal complexities within the tumor is crucial Norton (2019) Influencing the efficacy of (AT) and (CT) The spatial distributation of cancer cells,... Wang (2022)
  • 10. • Development of general-Dimensional models General methods A continuous Mathematical models (PDEs)
  • 11. • Solving a 1D mathematical model: Rewritten in one dimension or not Analytically and numerically
  • 12. • Solving 2D mathematical model Numerical Finite difference method The general Dimensional Mathematical models
  • 13.  Mathematical Model Development:  Development 1D and 2D continuous spatial models based on (PDEs) for advection-reaction-diffusion equations, account spatial variations in drug-resistant cells, drug-sensitive cells, drug concentration, and nutrient concentration within tumors.  Also, develop 1D and 2D continuous spatial models using PDEs to represent the heterogeneity of materials within tumors.  We need advanced modelling approaches that address these limitations.  Provide a more realistic depiction of tumor dynamics.  This study will allow for a more accurate representation of the effectiveness (AT) over (CT).  Compare the result with output from experimental studies obtained from the reported tumor volume.  We will also compare our output with those of the discrete models hybirid discrete models and ODEs.  By altering parameter values obtained through estimation based methods, one can achieve the effects of spatial variations in tumor cells, nutrients, and drugs.  Incorporate (AT) for brain cancer and benefit MRI data contributes to the development of treatment strategies for brain cancer.
  • 14.
  • 15.  Mattiuzzi, C. & Lippi, G. 2020. Cancer statistics: A comparison between world health organization (WHO) and global burden of disease (GBD). European Journal of Public Health 30(5): 1026–1027.  Anderson, A. R. & Chaplain, M. A. 1998. Continuous and discrete mathematical models of tumor-induced angiogenesis. Bulletin of Mathematical Biology 60(5): 857–899.  Bacevic, K., Noble, R., Soffar, A., Wael Ammar, O., Boszonyik, B., Prieto, S., Vincent, C., Hochberg, M. E., Krasinska, L. & Fisher, D. 2017. Spatial competition constrains resistance to targeted cancer therapy. Nature Communications 8(1): 1995.  Basanta, D. & Anderson, A. R. A. 2013. Exploiting ecological principles to better understand cancer progression and treatment. Interface Focus 3(4): 20130020.  Beck, J. S. 2020. Cognitive behavior therapy: Basics and beyond. Guilford Publications.  Carlson, C. 2016. Effectiveness of the World Health Organization Cancer Pain Relief Guidelines: An integrative review. Journal of Pain Research, Volume 9: 515–534.  Cerrone, A., Hochhalter, J., Heber, G. & Ingraffea, A. 2014. On the effects of modeling as-manufactured geometry: Toward digital twin. International Journal of Aerospace Engineering 2014.  Chaplain, M. A. J. 1996. Avascular growth, angiogenesis and vascular growth in solid tumours: The mathematical modelling of the stages of tumor development. Mathematical and Computer Modelling 23(6): 47–87.