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利用人工智能实现光栅扫描光声介观成像中皮肤形态的全自动识别。

Fully automated identification of skin morphology in raster-scan optoacoustic mesoscopy using artificial intelligence.

机构信息

AIDEAS OÜ, Narva mnt 5, Tallinn, Harju maakond, 10117, Estonia.

Technische Universität München and Institute of Biological and Medical Imaging, Helmholtz Zentrum München, Ingolstädter Landstrasse 1, D-85764, Neuherberg, Germany.

出版信息

Med Phys. 2019 Sep;46(9):4046-4056. doi: 10.1002/mp.13725. Epub 2019 Aug 6.

Abstract

PURPOSE

Identification of morphological characteristics of skin lesions is of vital importance in diagnosing diseases with dermatological manifestations. This task is often performed manually or in an automated way based on intensity level. Recently, ultra-broadband raster-scan optoacoustic mesoscopy (UWB-RSOM) was developed to offer unique cross-sectional optical imaging of the skin. A machine learning (ML) approach is proposed here to enable, for the first time, automated identification of skin layers in UWB-RSOM data.

MATERIALS AND METHODS

The proposed method, termed SkinSeg, was applied to coronal UWB-RSOM images obtained from 12 human participants. SkinSeg is a multi-step methodology that integrates data processing and transformation, feature extraction, feature selection, and classification. Various image features and learning models were tested for their suitability at discriminating skin layers including traditional machine learning along with more advanced deep learning algorithms. An support vector machines-based postprocessing approach was finally applied to further improve the classification outputs.

RESULTS

Random forest proved to be the most effective technique, achieving mean classification accuracy of 86.89% evaluated based on a repeated leave-one-out strategy. Insights about the features extracted and their effect on classification accuracy are provided. The highest accuracy was achieved using a small group of four features and remained at the same level or was even slightly decreased when more features were included. Convolutional neural networks provided also promising results at a level of approximately 85%. The application of the proposed postprocessing technique was proved to be effective in terms of both testing accuracy and three-dimensional visualization of classification maps.

CONCLUSIONS

SkinSeg demonstrated unique potential in identifying skin layers. The proposed method may facilitate clinical evaluation, monitoring, and diagnosis of diseases linked to skin inflammation, diabetes, and skin cancer.

摘要

目的

识别皮肤病变的形态特征对于诊断具有皮肤表现的疾病至关重要。这项任务通常是手动或基于强度水平进行自动完成的。最近,超宽带光栅扫描光声介观成像技术(UWB-RSOM)被开发出来,以提供皮肤的独特横截面光学成像。本文提出了一种机器学习(ML)方法,首次实现了 UWB-RSOM 数据中皮肤层的自动识别。

材料和方法

所提出的方法称为 SkinSeg,应用于从 12 名人类参与者获得的冠状 UWB-RSOM 图像。SkinSeg 是一种多步骤方法,集成了数据处理和转换、特征提取、特征选择和分类。测试了各种图像特征和学习模型,以确定其在区分皮肤层方面的适用性,包括传统机器学习以及更先进的深度学习算法。最后应用了基于支持向量机的后处理方法来进一步提高分类输出的质量。

结果

随机森林被证明是最有效的技术,基于重复的留一法策略,平均分类准确率达到 86.89%。提供了关于提取特征及其对分类准确性的影响的见解。使用一小组四个特征可以获得最高的准确性,当包含更多特征时,准确性水平保持不变或略有下降。卷积神经网络也提供了有希望的结果,准确率约为 85%。所提出的后处理技术的应用在测试准确性和分类图的三维可视化方面都被证明是有效的。

结论

SkinSeg 显示出识别皮肤层的独特潜力。该方法可能有助于对与皮肤炎症、糖尿病和皮肤癌相关的疾病进行临床评估、监测和诊断。

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