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Feature Selection Study on Separate Multi-modal Datasets: Application on Cutaneous Melanoma

机译:单独的多模式数据集的特征选择研究:在皮肤黑色素瘤中的应用

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In this work, we study the behavior of a feature selection algorithm (backwards selection) using random forests, by fusing multi-modal data from different subjects. Two separate datasets related to cutaneous melanoma, obtained from image (dermoscopy) and non-image (microarray) sources are used. Imputations are applied in order to acquire a unified dataset, prior the effect of machine learning algorithms. The results suggest that application of the normal random imputation method acts as an additional variation factor, helping towards stability of potential recommended biomarkers. In addition, microarray-derived features were favorably selected as best predictors compared to image-derived features.
机译:在这项工作中,我们通过融合来自不同主题的多模式数据来研究使用随机森林的特征选择算法(向后选择)的行为。使用从图像(皮肤镜)和非图像(微阵列)来源获得的与皮肤黑色素瘤相关的两个独立数据集。应用插补以便在机器学习算法生效之前获取统一的数据集。结果表明,正常随机插补方法的应用是一个额外的变异因素,有助于提高潜在推荐生物标记的稳定性。此外,与图像衍生特征相比,微阵列衍生特征被选为最佳预测因子。

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