Research on the application of mathematical modeling in tumor immunology in the context of chemotherapy

Jiaming Zhou
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Abstract

Cancer is not only a highly detrimental disease but also a particularly grave health concern. Moreover, the current incidence and mortality rates in our country are far from encouraging, making the prevention and control situation very challenging. Therefore, identifying the most scientific and effective treatment methods has become one of our primary research focuses. This paper, building upon previous models and incorporating resistance factors, categorizes tumor cells into those that are sensitive to chemotherapy drugs and those that become resistant. Using MATLAB, we have adjusted various sensitivity parameters in the model to simulate the number of tumor cells over 40 days. This simulation aims to analyze the sensitivity levels of tumor cells to different parameters upon the inclusion of resistance factors. The initial data used for the simulation were derived from the original paper. Ultimately, our findings indicate that tumor cells are most sensitive to the chemotherapy drugs killing rate for normal tumor cells and the decay rate of the chemotherapy drug. Due to the drug resistance factor, the sensitivity of different parameters is influenced. For parameters related to chemotherapy drugs, the final results, when incorporating this factor, may deviate significantly from those of previous models without this factor. For instance, the decay rate of chemotherapy drugs might result in a larger total number of tumor cells or a steeper trend compared to previous findings.
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研究化疗背景下数学建模在肿瘤免疫学中的应用
癌症不仅是一种危害性极大的疾病,也是一个特别严重的健康问题。而且,我国目前的发病率和死亡率都不容乐观,防控形势十分严峻。因此,找出最科学、最有效的治疗方法已成为我们研究的重点之一。本文在以往模型的基础上,结合抗药性因素,将肿瘤细胞分为对化疗药物敏感的细胞和产生抗药性的细胞。我们利用 MATLAB,调整了模型中的各种敏感性参数,模拟了 40 天内肿瘤细胞的数量。该模拟旨在分析加入抗药性因素后,肿瘤细胞对不同参数的敏感程度。模拟所用的初始数据来自原始论文。最终,我们的研究结果表明,肿瘤细胞对化疗药物对正常肿瘤细胞的杀伤率和化疗药物的衰减率最为敏感。由于存在耐药性因素,不同参数的敏感性也会受到影响。对于与化疗药物相关的参数,在加入该因子后,最终结果可能会与之前未加入该因子的模型有明显偏差。例如,化疗药物的衰减率可能会导致肿瘤细胞总数增加,或者与之前的研究结果相比,肿瘤细胞的衰减趋势更加陡峭。
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