Review Article | DOI: https://doi.org/BRCA-RW-25-29
Elimination of Cancerous Tumors of Different Organs by Intelligent Cell Therapy and Spontaneous Regression
Abstract
Preparing the body's systems for spontaneous regression of cancer tumors with intelligent cell therapy is a modern and promising approach in oncology based on the use of specially modified cells of the immune system to recognize and destroy cancer cells. CAR-T cell therapy is a technology in which T lymphocytes are taken from a patient, genetically modified to express special receptors capable of recognizing antigens on the surface of tumor cells, and then returned to the body to fight cancer. TIL therapy uses lymphocytes extracted directly from the tumor, which are then activated and scaled in vitro and reintroduced into the patient to fight cancer cells. Dendritic cell vaccines stimulate the immune response against cancer. The advantages of intelligent cell therapy include high specificity and the ability to adapt to various tumor types. Elimination of cancer tumors using spontaneous regression provides a key to understanding the natural mechanisms of resistance to cancer cells and potential methods for their natural destruction. Spontaneous regression activates the immune system, which recognizes, modifies and destroys cancer cells. Hormonal changes inside tumor cells cause their spontaneous disappearance. Technological combination of intelligent cell therapy and spontaneous regression is a promising approach in the field of oncology and regenerative medicine. Firstly, the use of cognitive and artificial intelligence systems for diagnostics, monitoring and optimization of cell therapy, secondly, the implementation of machine learning algorithms and big data analysis to identify factors predisposing to spontaneous regression, thirdly, the development of individual therapy protocols based on predictive models, which increases the effectiveness and safety of treatment. Technological combination of intelligent cell therapy and spontaneous regression mechanisms opens new horizons for personalized treatment, increasing effectiveness and minimizing side effects. Increases the effectiveness of therapy by integrating natural regression processes, predicts spontaneous regression, stimulates immune mechanisms using motivated artificial intelligence. In the future, such approaches can become the basis for innovative methods of combating oncological and other serious diseases.
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