The Depth Estimation and Visualization of Dermatological Lesions: Development and Usability Study.

Q3 Medicine
JMIR dermatology Pub Date : 2024-12-18 DOI:10.2196/59839
Pranav Parekh, Richard Oyeleke, Tejas Vishwanath
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引用次数: 0

Abstract

Background: Thus far, considerable research has been focused on classifying a lesion as benign or malignant. However, there is a requirement for quick depth estimation of a lesion for the accurate clinical staging of the lesion. The lesion could be malignant and quickly grow beneath the skin. While biopsy slides provide clear information on lesion depth, it is an emerging domain to find quick and noninvasive methods to estimate depth, particularly based on 2D images.

Objective: This study proposes a novel methodology for the depth estimation and visualization of skin lesions. Current diagnostic methods are approximate in determining how much a lesion may have proliferated within the skin. Using color gradients and depth maps, this method will give us a definite estimate and visualization procedure for lesions and other skin issues. We aim to generate 3D holograms of the lesion depth such that dermatologists can better diagnose melanoma.

Methods: We started by performing classification using a convolutional neural network (CNN), followed by using explainable artificial intelligence to localize the image features responsible for the CNN output. We used the gradient class activation map approach to perform localization of the lesion from the rest of the image. We applied computer graphics for depth estimation and developing the 3D structure of the lesion. We used the depth from defocus method for depth estimation from single images and Gabor filters for volumetric representation of the depth map. Our novel method, called red spot analysis, measures the degree of infection based on how a conical hologram is constructed. We collaborated with a dermatologist to analyze the 3D hologram output and received feedback on how this method can be introduced to clinical implementation.

Results: The neural model plus the explainable artificial intelligence algorithm achieved an accuracy of 86% in classifying the lesions correctly as benign or malignant. For the entire pipeline, we mapped the benign and malignant cases to their conical representations. We received exceedingly positive feedback while pitching this idea at the King Edward Memorial Institute in India. Dermatologists considered this a potentially useful tool in the depth estimation of lesions. We received a number of ideas for evaluating the technique before it can be introduced to the clinical scene.

Conclusions: When we map the CNN outputs (benign or malignant) to the corresponding hologram, we observe that a malignant lesion has a higher concentration of red spots (infection) in the upper and deeper portions of the skin, and that the malignant cases have deeper conical sections when compared with the benign cases. This proves that the qualitative results map with the initial classification performed by the neural model. The positive feedback provided by the dermatologist suggests that the qualitative conclusion of the method is sufficient.

皮肤损伤的深度估计和可视化:发展和可用性研究。
背景:迄今为止,相当多的研究集中在将病变分类为良性或恶性。然而,为了准确的临床分期,需要快速估计病变的深度。病变可能是恶性的,并在皮肤下迅速生长。虽然活检切片提供了清晰的病变深度信息,但寻找快速且无创的方法来估计深度是一个新兴领域,特别是基于二维图像。目的:提出一种新的皮肤损伤深度估计和可视化方法。目前的诊断方法在确定皮肤内病变可能增殖的程度方面是近似的。使用颜色梯度和深度图,这种方法将给我们一个明确的估计和可视化过程的病变和其他皮肤问题。我们的目标是生成病变深度的3D全息图,以便皮肤科医生更好地诊断黑色素瘤。方法:我们首先使用卷积神经网络(CNN)进行分类,然后使用可解释的人工智能来定位负责CNN输出的图像特征。我们使用梯度类激活图方法从图像的其余部分执行病变的定位。我们应用计算机图形学进行深度估计和发展病变的三维结构。我们使用离焦深度法对单幅图像进行深度估计,并使用Gabor滤波器对深度图进行体积表示。我们的新方法,被称为红斑分析,根据锥形全息图的构造来测量感染程度。我们与皮肤科医生合作分析3D全息图输出,并收到关于如何将该方法引入临床实施的反馈。结果:神经模型加上可解释的人工智能算法,将病变正确分类为良性或恶性的准确率达到86%。对于整个管道,我们将良性和恶性病例映射到它们的圆锥表示。当我们在印度的爱德华国王纪念研究所提出这个想法时,我们收到了非常积极的反馈。皮肤科医生认为这是一个潜在的有用的工具,在深度估计病变。在将该技术引入临床之前,我们收到了许多评估该技术的想法。结论:当我们将CNN输出(良性或恶性)映射到相应的全息图时,我们观察到恶性病变在皮肤的上部和深层有更高浓度的红点(感染),并且与良性病例相比,恶性病例有更深的锥形切片。这证明了定性结果与神经模型进行的初始分类是一致的。皮肤科医生提供的积极反馈表明该方法的定性结论是充分的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.20
自引率
0.00%
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审稿时长
18 weeks
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