基于Haar小波金字塔的黑色素瘤皮肤癌识别与机器学习集成算法

Sudeep D. Thepade, Gaurav Ramnani
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引用次数: 1

摘要

黑色素瘤是一种致命的皮肤癌。早期发现黑色素瘤可以显著提高患者的生存机会。早期发现黑色素瘤需要专业的医生。缺乏这样的专家医生是全球医疗保健系统的一个主要问题。在这种情况下,计算机辅助诊断可能是有用的。本文提出了一种基于皮肤镜皮肤图像的机器学习的黑色素瘤识别健康信息系统。该方法利用Haar小波金字塔对皮肤镜图像进行不同层次的特征提取。这些特征被用来训练用于黑色素瘤识别的机器学习算法和集合。考虑Haar小波金字塔的更高层次有助于加快识别过程。从Haar小波金字塔级4 × 4到16 × 16,性能逐渐提升,并进一步呈现边际提升。与使用单个机器学习算法相比,机器学习算法的集成在性能指标上表现出了提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Haar Wavelet Pyramid-Based Melanoma Skin Cancer Identification With Ensemble of Machine Learning Algorithms
Melanoma is a mortal type of skin cancer. Early detection of melanoma significantly improves the patient’s chances of survival. Detection of melanoma at an early juncture demands expert doctors. The scarcity of such expert doctors is a major issue with healthcare systems globally. Computer-assisted diagnostics may prove helpful in this case. This paper proposes a health informatics system for melanoma identification using machine learning with dermoscopy skin images. In the proposed method, the features of dermoscopy skin images are extracted using the Haar wavelet pyramid various levels. These features are employed to train machine learning algorithms and ensembles for melanoma identification. The consideration of higher levels of Haar Wavelet Pyramid helps speed up the identification process. It is observed that the performance gradually improves from the Haar wavelet pyramid level 4x4 to 16x16, and shows marginal improvement further. The ensembles of machine learning algorithms have shown a boost in performance metrics compared to the use of individual machine learning algorithms.
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