A mathematical model of breast cancer (ER+) with excess estrogen: A mixed treatments using ketogenic diet, endocrine therapy and immunotherapy

Hassnaa Akil, Nadia Idrissi Fatmi

Abstract


Breast cancer is a major public health problem and the most common diagnosed malignancy in woman. There have been significant developments in clinical approaches, and theoretical experimental to understand the interactions of cancer cells dynamics with the immune system, also developments on analytical and computational models to help provide insights into clinical observations for a better understanding of cancer cells, but more are needed, especially at the genetic and molecular levels mathematically. Treatments such as immunotherapy, chemotherapy, hormone therapy, radiotherapy, and gene therapy are the main strategies in the fight against breast cancer. The present study aims at investigating the effects of estrogen derived from recent models, but this time combined with immunotherapy as a way to treat or inhibit the cancer growth by a mathematical model of breast cancer in situ, governed by a simplified model of nonlinear-coupled ordinary differential equations, that combines important interactions between natural cells, tumor cells, immune cells, ketogenic diet in the presence of an anticancer drug. Another contribution was to introduce the inhibition effect ε for new results and conclusions, A qualitative study was performed and biological interpretations were included to understand the conditions of stability in a realistic way.

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Published: 2023-01-04

How to Cite this Article:

Hassnaa Akil, Nadia Idrissi Fatmi, A mathematical model of breast cancer (ER+) with excess estrogen: A mixed treatments using ketogenic diet, endocrine therapy and immunotherapy, Commun. Math. Biol. Neurosci., 2023 (2023), Article ID 1

Copyright © 2023 Hassnaa Akil, Nadia Idrissi Fatmi. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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