Jütte Lennart, González-Villà Sandra, Quintana Josep, Steven Martin, Garcia Rafael, Roth Bernhard
Hannover Centre for Optical Technologies, Leibniz University Hannover, Hannover, Germany.
Coronis Computing S.L., Girona, Spain.
Front Med (Lausanne). 2024 Oct 3;11:1445318. doi: 10.3389/fmed.2024.1445318. eCollection 2024.
The early detection and accurate monitoring of suspicious skin lesions are critical for effective dermatological diagnosis and treatment, particularly for reliable identification of the progression of nevi to melanoma. The traditional diagnostic framework, the ABCDE rule, provides a foundation for evaluating lesion characteristics by visual examination using dermoscopes. Simulations of skin lesion progression could improve the understanding of melanoma growth patterns.
This study aims to enhance lesion analysis and understanding of lesion progression by providing a simulated potential progression of nevi into melanomas.
The study generates a dataset of simulated lesion progressions, from nevi to simulated melanoma, based on a Cycle-Consistent Adversarial Network (Cycle-GAN) and frame interpolation. We apply an optical flow analysis to the generated dermoscopic image sequences, enabling the quantification of lesion transformation. In parallel, we evaluate changes in ABCDE rule metrics as example to assess the simulated evolution.
We present the first simulation of nevi progressing into simulated melanoma counterparts, consisting of 152 detailed steps. The ABCDE rule metrics correlate with the simulation in a natural manner. For the seven samples studied, the asymmetry metric increased by an average of 19%, the border gradient metric increased by an average of 63%, the convexity metric decreased by an average of 3%, the diameter increased by an average of 2%, and the color dispersion metric increased by an average of 45%. The diagnostic value of the ABCDE rule is enhanced through the addition of insights based on optical flow. The outward expansion of lesions, as captured by optical flow vectors, correlates strongly with the expected increase in diameter, confirming the simulation's fidelity to known lesion growth patterns. The heatmap visualizations further illustrate the degree of change within lesions, offering an intuitive visual proxy for lesion evolution.
The achieved simulations of potential lesion progressions could facilitate improved early detection and understanding of how lesions evolve. By combining the optical flow analysis with the established criteria of the ABCDE rule, this study presents a significant advancement in dermatoscopic diagnostics and patient education. Future research will focus on applying this integrated approach to real patient data, with the aim of enhancing the understanding of lesion progression and the personalization of dermatological care.
早期发现并准确监测可疑皮肤病变对于有效的皮肤病诊断和治疗至关重要,尤其是对于可靠识别痣向黑色素瘤的进展。传统的诊断框架,即ABCDE规则,为使用皮肤镜进行视觉检查评估病变特征提供了基础。皮肤病变进展的模拟可以增进对黑色素瘤生长模式的理解。
本研究旨在通过提供痣向黑色素瘤的模拟潜在进展,加强病变分析并增进对病变进展的理解。
该研究基于循环一致对抗网络(Cycle-GAN)和帧插值生成了一个从痣到模拟黑色素瘤的模拟病变进展数据集。我们对生成的皮肤镜图像序列应用光流分析,从而能够对病变转变进行量化。同时,我们评估ABCDE规则指标的变化作为评估模拟演变的示例。
我们展示了痣向模拟黑色素瘤对应物进展的首次模拟,包括152个详细步骤。ABCDE规则指标与模拟自然相关。对于所研究的七个样本,不对称性指标平均增加了19%,边界梯度指标平均增加了63%,凸度指标平均下降了3%,直径平均增加了2%,颜色分散指标平均增加了45%。基于光流的见解增强了ABCDE规则的诊断价值。光流向量捕捉到的病变向外扩展与预期的直径增加密切相关,证实了模拟对已知病变生长模式的逼真度。热图可视化进一步说明了病变内的变化程度,为病变演变提供了直观的视觉代理。
所实现的潜在病变进展模拟有助于改进早期检测并增进对病变如何演变的理解。通过将光流分析与ABCDE规则的既定标准相结合,本研究在皮肤镜诊断和患者教育方面取得了重大进展。未来的研究将专注于将这种综合方法应用于真实患者数据,以增强对病变进展的理解和皮肤病护理的个性化。