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Use of Machine Learning Techniques for Serial Assessment of Systemic Inflammatory Markers in Breast Cancer Patients
Sponsor: Federal University of São Paulo
Summary
Breast cancer is the most common cancer in women globally, with 2.3 million new cases diagnosed in 2020. Hormone receptor positive (HR+), human epidermal growth factor receptor 2 negative (HER2-) breast cancer is the most prevalent subtype, comprising 69% of all breast cancers in the USA. Within the tumor immune microenvironment, a higher intensity of myeloid cell infiltration and low levels of lymphocyte infiltration have been associated with worse outcomes. Markers in peripheral blood have emerged as predictive biomarkers that can be easily obtained non-invasively and at low cost. Experiments have confirmed the relative components of these tests (such as the immune cells) directly or indirectly participated in tumour occurrence, development, and immune escape, underscoring the potential use of laboratory tests as tumour biomarkers
Key Details
Gender
FEMALE
Age Range
18 Years - 75 Years
Study Type
OBSERVATIONAL
Enrollment
4500
Start Date
2024-08-01
Completion Date
2027-02
Last Updated
2025-03-12
Healthy Volunteers
No
Conditions
Interventions
Surgery (Mastectomy or quadrantectomy)
Surgery (mastectomy or quadrantectomy); Neoadjuvant chemotherapy
Locations (13)
Pablo Mandó
Buenos Aires, Buenos Aires, Argentina
Rosekeila Simoes Nomeline
Uberaba, Minas Gerais, Brazil
Tomás Reinert
Porto Alegre, Rio Grande do Sul, Brazil
Idam Oliveira Junior
Barretos, São Paulo, Brazil
César Cabello
Campinas, São Paulo, Brazil
Daniel Guimaraes Tiezzi
Ribeirão Preto, São Paulo, Brazil
Vasily Giannakeas
Toronto, Ontario, Canada
Salma Elashwah
Cairo, Egypt
Masahiro Takada
Osaka, Osaka, Japan
Masakazu Toi
Tokyo, Tokyo, Japan
Cynthia Mayte Villarreal Garza
Mexico City, Mexico
Wonshik Han
Seoul, South Korea
Cristina Saura
Madrid, Spain, Spain