Breast Cancer Detection Using Machine Learning
This project uses machine learning techniques to predict whether a breast tumor is benign or malignant, offering healthcare providers a tool for faster and more accurate diagnoses. The project utilizes the Wisconsin Breast Cancer Dataset and evaluates the performance of three different models, with the Support Vector Machine (SVM) model achieving an impressive accuracy of 97.80%.
Goal
The primary objective is to:
- Automate early detection of breast cancer.
- Improve diagnostic speed.
- Reduce false positives.
- Lower healthcare costs.
Early and accurate identification of malignant tumors can lead to more efficient treatment, ultimately saving lives.
Technologies Used
- Python
- scikit-learn
- pandas
- Matplotlib
Key Models
- Logistic Regression
- Random Forest
- Support Vector Machine (SVM) (Achieved 97.80% accuracy)
Each model was evaluated and compared based on key performance metrics such as:
- Accuracy
- Precision
- Recall
- F1-Score
Explore the Full Project on GitHub
For the complete code, Jupyter Notebooks, and detailed documentation, visit the project repository on GitHub.
Feel free to fork the repository and contribute to the project! I welcome any improvements or suggestions.
Contact
If you have any questions or would like to collaborate, don’t hesitate to reach out via email: services@isaacgyane.com.
Suggestions for Enhancements in Gutenberg
- Add an Image Block: Include a chart or diagram that illustrates the model’s performance metrics.
- For example, upload a confusion matrix or accuracy comparison chart.
- Use a List Block for Features:
- Add specific features of the dataset used, such as
mean radius
,texture
,smoothness
, etc.
- Add specific features of the dataset used, such as
- Embed a GitHub Block:
- Directly embed the GitHub repository link using the GitHub block plugin or add a link preview.
- Add a Video Block: If you have a YouTube link that demonstrates the project, embed it using the YouTube block.
- Star Rating Block (Optional):
- Use a star rating block to highlight the project’s success visually.
This structure ensures your project description is easy to read and visually engaging when displayed on your WordPress page.
Interested in collaborating?
We are always open to new ideas and partnerships. Get in touch with us for further discussion!
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