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SUMMARY The spread of diseases has always been a threat to public health. It has not only caused serious problems for the survival of human beings and other species but also for the economic and social development of the human society. To prevent and to control these diseases, it is important to understand the mechanism of the spread and the transmission dynamics of the diseases and establish better strategies for useful predictions and guidance. Mathematical Epidemiology is an important approach to investigate the transmission dynamics of infectious diseases. It includes formulation of mathematical models to describe the mechanisms of disease transmission and dynamics of agents that cause the diseases. The mathematical models on diseases are based on population dynamics, behavior of disease transmissions, features of the infectious agents, and the connections with other social and physiologic factors. Mathematical models can give us good understanding of how infectious diseases spread and help us to identify more important and sensitive parameters, to make reliable predictions and provide useful prevention and control strategies and guidance through quantitative and qualitative analysis, sensitivity analysis, and numeric simulations. Keeping all the above points in view, this thesis is divided into seven chapters that deal with a mathematical model of infectious diseases like H 1N 1 flu, a mathematical model of malaria and some mathematical models on cancer growth and its treatment. These mathematical models are analysed using theory of nonlinear ordinary differential equations and computer simulations. Mathematical analyses of the model equations include boundedness of solutions, nature of equilibrium points i and their local and global study. To substantiate the analytical findings, the models are studied numerically using fourth order Runge-Kutta method and results are displayed graphically. A brief introduction of the chapters of the thesis is as follows: CHAPTER 1: INTRODUCTION This chapter introduces the basic concepts and ideas of mathematical modeling and mathematical epidemiology with some historical background in this area. In addition, this chapter also provides brief descriptions of terms, like region of attraction, equilibrium point, stability, Routh-Hurwitz stability criterion and Hopf bifurcation that are used in subsequent chapters. CHAPTER 2: MODELING H1N1 FLU WITH CONTACT TRACING AND ISOLATION This chapter deals with a nonlinear mathematical model that is proposed and analyzed to study the dynamics of 2009 H1N1 flu in a homogeneous population with constant immigration of susceptibles. The effect of contact tracing and isolation strategies in reducing the spread of H1N1 flu is considered. The model monitors the dynamics of five sub-populations namely susceptible with high infection risk, susceptible with reduced risk of infection, infective, quarantined and recovered individuals. The model analyses include the determination of equilibrium points and their stability in terms of the threshold parameter R0 . The analytical and numerical simulation results demonstrate that the maximum implementation of contact tracing and isolation strategies help in reducing infective class size and hence act as effective intervention strategies to control the disease from spreading. ii CHAPTER 3: A MATHEMATICAL MODEL FOR THE DYNAMICS OF MALARIA WITH IMMIGERATION OF INDIVIDUALS IN DIFFERENT COMPARTMENTS This chapter considers a host-vector mathematical model for the spread of malaria that incorporates recruitment of human population through a constant immigration, with a fraction of infective and exposed immigrants. It is found that in the presence of infective and exposed immigrants; a unique endemic equilibrium point exists for which the disease persists in the population but disease free equilibria cannot exist. However, when immigration of infective and exposed population is not allowed, disease free equilibrium also exists which is stable if basic reproduction ratio is less than one. Local stability conditions for the equilibria of the system with and without immigration of infectives and exposed population are determined by RouthHurwitz criterion. It is found that due to immigration of infective and exposed population in the community infective human population level rises. Our study shows that infective human population can be reduced by preventing mosquitoes to bite infective humans and by reducing the probability of transmission of infection from human to mosquitoes. CHAPTER 4: A GENERALISED PREY - PREDATOR MODEL OF CANCER GROWTH WITH THE EFFECT OF IMMUNOTHERAPY This chapter deals with the analysis of the system of nonlinear ordinary differential equations describing the interaction between cancer and immune cells during immunotherapy. It is observed that cancer cell population decreases considerably due to proliferation of lymphocytes mediated by immunotherapy. It is iii further found from our analysis that cancer population can be controlled easily if cancer is immunogenic that is, cancer cells possess distinctive surface markers called tumor-specific antigens. CHAPTER 5: A MATHEMATICAL MODEL OF CANCER GROWTH WITH THE EFFECT OF DELAY IN CELLULAR INTERACTION In this chapter, we propose and analyze a nonlinear mathematical model to study the interaction between tumor and immune cells. The model is extended by the inclusion of an intracellular delay effect. Stability of the steady states of model systems without and with delay is determined. Conditions for Hopf bifurcation of the system are determined. Moreover, critical value of delay is also found which acts as a bifurcation parameter. We have found that the key role is being played by the rate of conversion of resting cells to hunting cells and antigenicity of tumor cells in our model. It is also observed that the tumor cell population is large for low rate of conversion of resting cells to hunting cells or for small concentration of cytokines. The effect of tumor antigenicity is studied and it is observed from our analysis that lower is the antigenicity nastier is the tumor. For certain parameter values limit cycles are obtained. CHAPTER 6: MATHEMATICAL MODELING AND ANALYSIS OF CANCER VIROTHERAPY In chapter sixth, we study a nonlinear mathematical model to study the effect oncolytic virotherapy. We analyse complex interaction among growing cancer cells and replicating virus population. It is observed from our study that replication of oncolytic virus within cancer cells and their transmission to other cancer cells is iv responsible for the infection among more cancer cells and hence increase in the number of infected cancer cells. In this process number of uninfected cancer cells decrease automatically. Further, it is found that as cytotoxicity rate of oncolytic virus increase infected cancer cells decrease on the other hand uninfected cancer cells increase. Equilibrium level of infected cancer cells decrease because oncolytic virus kill cancer cells by infecting them. However, it is not able to annihilate the proliferation of cancer cells. Therefore, number of uninfected cancer cells keeps on proliferating in the human body. In addition, the model is extended by including the effect of antiviral immune response on the model. It is found that active proliferation of immune cells is helpful in eliminating cancer cells from the body. CHAPTER 7: CORRELATION BETWEEN HEPATITIS AND CANCER: A MATHEMATICAL MODEL In this chapter, a non – linear mathematical model is proposed and analyzed to demonstrate the relation between hepatitis and cancer with constant immigration of cancer patients in the community. Both the horizontal and vertical mode of transmission of hepatitis in the population is considered. Sensitivity analysis of the endemic equilibrium to changes in the value of the different parameters associated with the system is done. Modeling the effect of hepatitis virus infections among cancer patients and their impact on the increase in spread of hepatitis among the population is the novel feature of our model. It is concluded from the analysis that if the rate of transmission of hepatitis infection increases, the endemic level of infective population increases which can further be enhanced if risk of hepatitis infection among cancer patients also increases. Further, it is found from our analysis that v hepatitis infection leads to an increase in number of cancer patients in the population because of the progression of hepatitis B and C infection to liver cancer. RESEARCH PAPERS PUBLISHED/ACCEPTED/COMMUNICATED 1. Modeling H1N1 Flu with Contact Tracing and Quarantine, International Journal of Biomathematics, World Scientific Publishing Company, Vol. 5, No. 5, (September 2012), 1250038 (19 pages), ISSN (printed): 1793-5245. 2. A mathematical model for the dynamics of Malaria with immigration of different Compartments published in International Journal of Logic Based Intelligent Systems, © International Science Press, ISSN: 0975-4776, Vol. 4, No. 2, (JulyDecember 2010), pp.91-105. 3. A Generalised Prey - Predator Model of Cancer Growth with the Effect of Immunotherapy, accepted for publication in International Journal of Engineering, Science and Technology, ISSN No 4. Mathematical Modeling of Interaction between Tumor and Immune Cells (communicated). 5. Mathematical Modeling and Analysis of Tumor therapy with Oncolytic Virus, published in Applied Mathematics, Scientific research, ISSN Print: 2152-7385, ISSN Online: 2152-7393, Vol.2, No.1, (January 2011),pp.131-140. 6. Mathematical Modeling and Analysis of Tumor Therapy with Oncolytic Virus and Immune Cells (communicated). vi 7. Correlation between Hepatitis and Cancer: A Mathematical Model published in International Journal of Mathematics and Scientific Computing, ISSN No. 22315330, Vol. 1, No. 2, (2011), pp.79-86. vii