Alzheimers-Classification

上传者: 42117150 | 上传时间: 2022-11-17 14:31:56 | 文件大小: 979KB | 文件类型: ZIP
老年痴呆症分类 圣克拉拉大学高级设计项目2020-2021的资料库 贡献者:切尔西·费尔南德斯(Chelsea Fernandes),艾尤西·库马尔(Aiyushi Kumar),什里亚·文卡特(Shreya Venkatesh) 数据预处理 我们的数据来自ADNI,我们从中预处理原始数据以输入到我们的模型中。 以下预处理已完成: 平均认知测试数据(Convert_Ecog_Test_Values.ipynb) 合并各种csv文件(adni_merge_data.ipynb) 合并数据的规范化(normalize_data_3.ipynb) 数据分析 为了确定要从我们的数据集中删除哪些功能,完成了以下操作: 绘制直方图(Histogram_plot_grp_1.ipynb) 为每个功能绘制的箱线图(boxplots.uptnb) k倍交叉验证(kfold_crossvalid

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