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Biomedical

Advanced Artificial Intelligence Techniques for Comprehensive Dermatological Image Analysis and Diagnosis

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Serra Aksoy,

Serra Aksoy

Institute of Computer Science, Ludwig Maximilian University of Munich (LMU), Oettingenstrasse 67, 80538 Munich, Germany


Pinar Demircioglu,

Pinar Demircioglu

Institute of Materials Science, Technical University of Munich (TUM), Boltzmannstr. 15, 85748 Garching b. Munich, Germany


Ismail Bogrekci

Ismail Bogrekci

Department of Mechanical Engineering, Aydin Adnan Menderes University (ADU), Aytepe, 09010 Aydin, Turkey


  Peer Reviewed

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© attribution CC-BY

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2026-02-09

Doi: https://doi.org/10.3390/dermato4040015

Abstract

With the growing complexity of skin disorders and the challenges of traditional diagnostic methods, AI offers exciting new solutions that can enhance the accuracy and efficiency of dermatological assessments. Reflectance Confocal Microscopy (RCM) stands out as a non-invasive imaging technique that delivers detailed views of the skin at the cellular level, proving its immense value in dermatology. The manual analysis of RCM images, however, tends to be slow and inconsistent. By combining artificial intelligence (AI) with RCM, this approach introduces a transformative shift toward precise, data-driven dermatopathology, supporting more accurate patient stratification, tailored treatments, and enhanced dermatological care. Advancements in AI are set to revolutionize this process. This paper explores how AI, particularly Convolutional Neural Networks (CNNs), can enhance RCM image analysis, emphasizing machine learning (ML) and deep learning (DL) methods that improve diagnostic accuracy and efficiency. The discussion highlights AI’s role in identifying and classifying skin conditions, offering benefits such as a greater consistency and a reduced strain on healthcare professionals. Furthermore, the paper explores AI integration into dermatological practices, addressing current challenges and future possibilities. The synergy between AI and RCM holds the potential to significantly advance skin disease diagnosis, ultimately leading to better therapeutic personalization and comprehensive dermatological care.

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Article usage: Feb-2026 to Feb-2026
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2026 February 11 11
Total 11 11
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copyright icon

© attribution CC-BY

  • 0

rating
11 Views

Added on

2026-02-09

Doi: https://doi.org/10.3390/dermato4040015

Related Subjects
Anatomy
Biochemistry
Epidemiology
Genetics
Neuroscience
Psychology
Oncology
Medicine
Musculoskeletal science
Pediatrics
Pathology
Pharmacology
Physiology
Psychiatry
Primary care
Women and reproductive health

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