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Correction: Luca et al. Global and Regional Diagnostic Results of Progress Toward Cervical Cancer Elimination, According to the WHO Strategy: A Systematic Literature Review with Narrative Synthesis. <i>Diagnostics</i> 2026, <i>16</i>, 1224.

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Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography
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Semi-Supervised Facial Acne Segmentation Using Bidirectional Copy-Paste.

Semin Kim1, Huisu Yoon1, Jongha Lee1

  • 1AI R&D Center, lululab, Dosan Dae-Ro 318, Seoul 06054, Republic of Korea.

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Summary
This summary is machine-generated.

This study introduces a new deep learning model for facial acne segmentation using bidirectional copy-paste semi-supervised learning. The method improves acne detection accuracy with minimal labeled data, offering a promising direction for dermatological analysis.

Keywords:
acne segmentationbidirectional copy–pastedeep learningsemantic segmentationsemi-supervised learning

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Area of Science:

  • Dermatology
  • Computer Vision
  • Artificial Intelligence

Background:

  • Facial acne is a common skin condition requiring early detection to prevent worsening.
  • Automated detection using deep learning shows promise but is hindered by the difficulty of acquiring sufficient labeled acne training data.
  • Existing semi-supervised methods for medical image segmentation often struggle with performance, particularly in the labeled data training component.

Purpose of the Study:

  • To propose a novel deep learning model for facial acne segmentation.
  • To address the challenge of limited labeled data in acne detection using a semi-supervised approach.
  • To enhance the performance of semi-supervised learning for facial acne segmentation.

Main Methods:

  • Developed a novel deep learning model for facial acne segmentation.
  • Utilized a bidirectional copy-paste semi-supervised learning technique to synthesize training images by exchanging foreground and background components between labeled and unlabeled datasets.
  • Implemented a new framework to directly compute training loss on labeled images, improving performance over previous methods.

Main Results:

  • The proposed method achieved a Dice score of 0.5205 in experiments using only 3% labeled data.
  • Demonstrated an improvement of 0.0151 to 0.0473 in Dice score compared to existing semi-supervised learning methods.
  • Showcased superior performance in facial acne segmentation, particularly under conditions of extreme data scarcity.

Conclusions:

  • The novel semi-supervised learning approach significantly improves facial acne segmentation performance.
  • The bidirectional copy-paste method offers an effective solution for training deep learning models with limited labeled dermatological data.
  • This research provides a valuable new direction for automated acne analysis and dermatological diagnostics.