A Machine Vision Approach to Preliminary Skin Lesion Assessments
By: Ali Khreis, Ro'Yah Radaideh, Quinn McGill
Potential Business Impact:
Finds skin cancer faster than doctors.
Early detection of malignant skin lesions is critical for improving patient outcomes in aggressive, metastatic skin cancers. This study evaluates a comprehensive system for preliminary skin lesion assessment that combines the clinically established ABCD rule of dermoscopy (analyzing Asymmetry, Borders, Color, and Dermoscopic Structures) with machine learning classification. Using a 1,000-image subset of the HAM10000 dataset, the system implements an automated, rule-based pipeline to compute a Total Dermoscopy Score (TDS) for each lesion. This handcrafted approach is compared against various machine learning solutions, including traditional classifiers (Logistic Regression, Random Forest, and SVM) and deep learning models. While the rule-based system provides high clinical interpretability, results indicate a performance bottleneck when reducing complex morphology to five numerical features. Experimental findings show that transfer learning with EfficientNet-B0 failed significantly due to domain shift between natural and medical images. In contrast, a custom three-layer Convolutional Neural Network (CNN) trained from scratch achieved 78.5% accuracy and 86.5% recall on median-filtered images, representing a 19-point accuracy improvement over traditional methods. The results demonstrate that direct pixel-level learning captures diagnostic patterns beyond handcrafted features and that purpose-built lightweight architectures can outperform large pretrained models for small, domain-specific medical datasets.
Similar Papers
Skin Lesion Classification Using a Soft Voting Ensemble of Convolutional Neural Networks
CV and Pattern Recognition
Helps doctors find skin cancer faster and better.
Multimodal system for skin cancer detection
CV and Pattern Recognition
Finds skin cancer using regular phone pictures.
A Deep Learning Approach for Automated Skin Lesion Diagnosis with Explainable AI
CV and Pattern Recognition
Helps doctors spot skin cancer faster and better.