Dugonik Bogdan, Golob Marjan, Marhl Marko, Dugonik Aleksandra
Faculty of Electrical Engineering and Computer Science, University of Maribor, Koroška Cesta 46, SI-2000 Maribor, Slovenia.
Faculty of Medicine, University of Maribor, Taborska ulica 8, SI-2000 Maribor, Slovenia.
J Imaging. 2025 Mar 31;11(4):107. doi: 10.3390/jimaging11040107.
The rising incidence of skin cancer, particularly melanoma, underscores the need for improved diagnostic tools in dermatology. Accurate imaging plays a crucial role in early detection, yet challenges related to color accuracy, image distortion, and resolution persist, leading to diagnostic errors. This study addresses these issues by evaluating color reproduction accuracy across various imaging devices and lighting conditions. Using a ColorChecker test chart, color deviations were measured through Euclidean distances (ΔE*, ΔC*), and nonlinear color differences (ΔE00, ΔC00), while the color rendering index (CRI) and television lighting consistency index (TLCI) were used to evaluate the influence of light sources on image accuracy. Significant color discrepancies were identified among mobile phones, DSLRs, and mirrorless cameras, with inadequate dermatoscope lighting systems contributing to further inaccuracies. We demonstrate practical applications, including manual camera adjustments, grayscale reference cards, post-processing techniques, and optimized lighting conditions, to improve color accuracy. This study provides applicable solutions for enhancing color accuracy in dermatological imaging, emphasizing the need for standardized calibration techniques and imaging protocols to improve diagnostic reliability, support AI-assisted skin cancer detection, and contribute to high-quality image databases for clinical and automated analysis.
皮肤癌,尤其是黑色素瘤发病率的上升,凸显了皮肤病学中改进诊断工具的必要性。精确成像在早期检测中起着至关重要的作用,但与色彩准确性、图像失真和分辨率相关的挑战依然存在,从而导致诊断错误。本研究通过评估各种成像设备和光照条件下的色彩再现准确性来解决这些问题。使用色彩校正测试图,通过欧几里得距离(ΔE*,ΔC*)和非线性色差(ΔE00,ΔC00)来测量颜色偏差,同时使用显色指数(CRI)和电视照明一致性指数(TLCI)来评估光源对图像准确性的影响。在手机、数码单反相机和无反相机之间发现了显著的颜色差异,而皮肤镜照明系统不足则导致了进一步的不准确。我们展示了实际应用,包括手动相机调整、灰度参考卡、后处理技术和优化的光照条件,以提高色彩准确性。本研究为提高皮肤病学成像中的色彩准确性提供了适用的解决方案,强调了标准化校准技术和成像协议对于提高诊断可靠性、支持人工智能辅助皮肤癌检测以及为临床和自动分析建立高质量图像数据库的必要性。