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The Application of Differing Machine Learning Algorithms and Their Related Performance in Detecting Skin Cancers and Melanomas

机译:不同机器学习算法的应用及其在检测皮肤癌和黑色素瘤中的相关性能

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摘要

Skin cancer, and its less common form melanoma, is a disease affecting a wide variety of people. Since it is usually detected initially by visual inspection, it makes for a good candidate for the application of machine learning. With early detection being key to good outcomes, any method that can enhance the diagnostic accuracy of dermatologists and oncologists is of significant interest. When comparing different existing implementations of machine learning against public datasets and several we seek to create, we attempted to create a more accurate model that can be readily adapted to use in clinical settings. We tested combinations of models, including convolutional neural networks (CNNs), and various layers of data manipulation, such as the application of Gaussian functions and trimming of images to improve accuracy. We also created more traditional data models, including support vector classification, K-nearest neighbor, Naive Bayes, random forest, and gradient boosting algorithms, and compared them to the CNN-based models we had created. Results had indicated that CNN-based algorithms significantly outperformed other data models we had created. Partial results of this work were presented at the CSET Presentations for Research Month at the Minnesota State University, Mankato.
机译:皮肤癌及其不太常见的黑色素瘤是一种影响多种人群的疾病。由于它通常最初通过目视检查来检测,因此它是机器学习应用的良好候选者。由于早期发现是获得良好结果的关键,因此任何可以提高皮肤科医生和肿瘤学家诊断准确性的方法都具有重要意义。在将机器学习的不同现有实现与我们试图创建的几个数据集进行比较时,我们试图创建一个更准确的模型,该模型可以很容易地适应临床环境。我们测试了模型的组合,包括卷积神经网络(CNN)和各种数据操作层,例如应用高斯函数和修剪图像以提高准确性。我们还创建了更传统的数据模型,包括支持向量分类、K 最近邻、朴素贝叶斯、随机森林和梯度提升算法,并将它们与我们创建的基于 CNN 的模型进行了比较。结果表明,基于CNN的算法明显优于我们创建的其他数据模型。这项工作的部分成果在明尼苏达州立大学曼凯托分校的CSET研究月演讲中公布。

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