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Breast Cancer: Targeting of Steroid Hormones in Cancerogenesis and Diagnostics

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MDPI
DOI: 10.3390/ijms22115878

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breast cancer; steroid hormones; metabolomics

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Metabolomics is a promising analytical method for the diagnosis and prognosis of breast cancer, offering a comprehensive non-invasive approach. Targeted metabolomics of steroid hormones play a crucial role in the classification and development of breast cancer, with high potential for effective diagnosis and monitoring of disease progression.
Breast cancer is the most common malignancy in women with high mortality. Sensitive and specific methods for the detection, characterization and quantification of endogenous steroids in body fluids or tissues are needed for the diagnosis, treatment and prognosis of breast cancer and many other diseases. At present, non-invasive diagnostic methods are gaining more and more prominence, which enable a relatively fast and painless way of detecting many diseases. Metabolomics is a promising analytical method, the principle of which is the study and analysis of metabolites in biological material. It represents a comprehensive non-invasive diagnosis, which has a high potential for use in the diagnosis and prognosis of cancers, including breast cancer. This short review focuses on the targeted metabolomics of steroid hormones, which play an important role in the development and classification of breast cancer. The most commonly used diagnostic tool is the chromatographic method with mass spectrometry detection, which can simultaneously determine several steroid hormones and metabolites in one sample. This analytical procedure has a high potential in effective diagnosis of steroidogenesis disorders. Due to the association between steroidogenesis and breast cancer progression, steroid profiling is an important tool, as well as in monitoring disease progression, improving prognosis, and minimizing recurrence.

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