Predicting environment effects on breast cancer by implementing machine learning
Muhammad Shoaib Farooq, Mehreen Ilyas

TL;DR
This study reviews how environmental factors influence breast cancer risk and employs machine learning algorithms like Random Forest and Logistic Regression to predict outcomes with high accuracy, highlighting their potential in survival analysis.
Contribution
It introduces the application of multiple machine learning algorithms to predict breast cancer risk based on environmental and lifestyle factors, demonstrating high accuracy.
Findings
Random Forest achieved 91% accuracy
Logistic Regression had a 0.901 ROC curve
Machine learning models show promise for breast cancer prediction
Abstract
The biggest Breast cancer is increasingly a major factor in female fatalities, overtaking heart disease. While genetic factors are important in the growth of breast cancer, new research indicates that environmental factors also play a substantial role in its occurrence and progression. The literature on the various environmental factors that may affect breast cancer risk, incidence, and outcomes is thoroughly reviewed in this study report. The study starts by looking at how lifestyle decisions, such as eating habits, exercise routines, and alcohol consumption, may affect hormonal imbalances and inflammation, two important factors driving the development of breast cancer. Additionally, it explores the part played by environmental contaminants such pesticides, endocrine-disrupting chemicals (EDCs), and industrial emissions, all of which have been linked to a higher risk of developing…
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Taxonomy
TopicsAir Quality and Health Impacts · Nutritional Studies and Diet · Air Quality Monitoring and Forecasting
MethodsLogistic Regression
