AI Outperformed Every Dermatologist In Dermoscopic Melanoma Diagnosis, Using An Optimized Deep-CNN Architecture With Custom Mini-Batch Logic And Loss Function
Melanoma, one of the most dangerous types of skin cancer, results in a very high mortality rate. Early detection and resection are two key points for a successful cure. Recent researches have used artificial intelligence to classify melanoma and nevus and to compare the assessment of these algorithms to that of dermatologists. However, training neural networks on an imbalanced dataset leads to imbalanced performance, the specicity is very high but the sensitivity is very low. This study proposes a method for improving melanoma prediction on an imbalanced dataset by reconstructed appropriate CNN architecture and optimized algorithms. The contributions involve three key features as custom loss function, custom mini‑batch logic, and reformed fully connected layers. In the experiment, the training dataset is kept up to date including 17,302 images of melanoma and nevus which is the largest dataset by far. The model performance is compared to that of 157 dermatologists from 12 university hospitals in Germany based on the same dataset. The experimental results prove that our proposed approach outperforms all 157 dermatologists and achieves higher performance than the state‑of‑the‑art approach with area under the curve of 94.4%, sensitivity of 85.0%, and specicity of 95.0%. Moreover, using the best threshold shows the most balanced measure compare to other researches, and is promisingly application to medical diagnosis, with sensitivity of 90.0% and specicity of 93.8%. To foster further research and allow for replicability, we made the source code and data splits of all our experiments publicly available.
Research paper: AI Outperformed Every Dermatologist In Dermoscopic Melanoma Diagnosis, Using An Optimized Deep-CNN Architecture With Custom Mini-Batch Logic And Loss Function
Tri Cong Pham, Chi Mai Luong, Van Dung Hoang & Antoine Doucet
3/5/2025
Efficient and Concise Explanations for Object Detection with Gaussian-Class Activation Mapping Explainer.jpg
NEW
Efficient and Concise Explanations for Object Detection with Gaussian-Class Activation Mapping Explainer
To address the challenges of providing quick and plausible explanations in Explainable AI (XAI) for object detection models, we introduce the Gaussian Class Activation Mapping Explainer (G-CAME).
Enhancing the Fairness and Performance of Edge Cameras with Explainable AI.avif
NEW
Enhancing the Fairness and Performance of Edge Cameras with Explainable AI
The rising use of Artificial Intelligence (AI) in human detection on Edge camera systems has led to accurate but complex models, challenging to interpret and debug.
Can Reinforcement Learning solve the Human Allocation Problem.jpg
NEW
Can Reinforcement Learning solve the Human Allocation Problem?
In recent years, reinforcement learning (RL) has emerged as a new, promising way to solve old problems. The algorithms’ role in finding approximate solutions in NP-hard complexity became crucial for developing modern intelligent decisions.
QaiDora Products
Trusted by
Contact us
Copyright by qaidora.com