Breast cancer is the leading cause of cancer-related death among women. Early prediction is crucial as it severely increases the survival rate. Although classical X-ray mammography is an established technique for screening, many eligible women do not consider this due to concerns about pain from breast compression. Electrical Impedance Tomography (EIT) is a technique that aims to visualize the conductivity distribution within the human body. As cancer has a greater conductivity than surrounding fatty tissue, it provides a contrast for image reconstruction. However, the interpretation of EIT images is still hard, due to the low spatial resolution. In this paper, we investigated three different classification models for the detection of breast cancer. This is important as EIT is a highly non-linear inverse problem and tends to produce reconstruction artifacts, which can be misinterpreted as, e.g., tumors. To aid in the interpretation of breast cancer EIT images, we compare three different classification models for breast cancer. We found that random forests and support vector machines performed best for this task.
Introduction To Algorithms By Thomas H. Cormen, Charles E
Route Split Criticism and Proposed Route Split Rewrite : r/WeCantStudy, bokutachi wa benkyou ga dekinai routes
Design and Analysis of Algorithms - GeeksforGeeks
Learn Classification and Types of Machine Learning Algorithms
Rigid Body Dynamics Algorithms
Algorithms, Free Full-Text
Algorithms, Free Full-Text
An AI agent plays tic-tac-toe (part 2): speeding up recursive, tic tac toe strategy
Buy The Formula: How Algorithms Solve All Our Problems . . . and Create More on ✓ FREE SHIPPING on qualified orders
The Formula: How Algorithms Solve All Our Problems . . . and Create More
Algorithm Flow Flowchart Template - Zen Flowchart