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Related Concept Videos

Skin Cancer01:30

Skin Cancer

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Skin cancer is a type of cancer that occurs when there is an abnormal growth of skin cells, usually triggered by damage to the DNA within the skin cells. It is primarily caused by exposure to ultraviolet (UV) radiation from the sun or artificial sources like tanning beds. Skin cancer is the most common type of cancer worldwide, and its incidence continues to rise.
Basal Cell Carcinoma (BCC): BCC is the most common type of skin cancer, accounting for about 80% of cases. It typically develops in...
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Deep Learning-Based Nuclei Segmentation and Melanoma Detection in Skin Histopathological Image Using Test Image

Mohammadesmaeil Akbarpour1,2, Hamed Fazlollahiaghamalek3, Mahdi Barati1

  • 1Electrical and Computer Engineering, University of Alberta, Edmonton AB T6G 2R3, Canada.

Journal of Imaging
|August 27, 2025
PubMed
Summary
This summary is machine-generated.

This study introduces an AI-driven method for skin cancer diagnosis using deep neural networks to segment cell nuclei and detect melanoma in histopathological images, improving diagnostic efficiency.

Keywords:
deep neural networkshistopathological imagesmelanoma detectionnuclei segmentation

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Area of Science:

  • Digital Pathology
  • Computational Biology
  • Medical Imaging Analysis

Background:

  • Histopathological images are vital for skin cancer diagnosis but are very large, making manual analysis time-consuming.
  • Automated nuclei segmentation in histopathology is challenging due to variable cell boundaries.
  • Artificial Intelligence (AI) offers potential for computer-aided diagnosis (CAD) in skin cancer detection.

Purpose of the Study:

  • To develop a deep neural network (DNN)-based technique for automated nuclei segmentation and melanoma detection in histopathological images.
  • To expedite the diagnostic process by automating the identification and analysis of abnormal cell nuclei.

Main Methods:

  • A DNN-based approach was employed for nuclei segmentation.
  • Image augmentation using geometric operations enhanced robustness.
  • A morphological technique was applied to the segmented nuclei for melanoma detection.

Main Results:

  • The proposed technique achieved a Dice score of 91.61% for nuclei segmentation.
  • Melanoma detection accuracy reached a Dice score of 87.9%.
  • The method demonstrated effectiveness in analyzing nuclei distribution across tissue sections.

Conclusions:

  • The DNN-based technique provides an effective solution for nuclei segmentation and melanoma detection in histopathological images.
  • This AI-driven approach significantly improves the efficiency and accuracy of skin cancer diagnosis.
  • Automating these processes can accelerate comprehensive diagnostic assessments.