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Personalized Colorectal Cancer Survivability Prediction with Machine Learning Methods*

机译:使用机器学习方法进行个性化大肠癌生存率预测 *

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In this work, we investigate the importance of ethnicity in colorectal cancer survivability prediction using machine learning techniques and the SEER cancer incidence database. We compare model performances for 2-year survivability prediction and feature importance rankings between Hispanic, White, and mixed patient populations. Our models consistently perform better on single-ethnicity populations and provide different feature importance rankings when trained in different populations. Additionally, we show our models achieve higher Area Under Curve (AUC) score than the best reported in the literature. We also apply imbalanced classification techniques to improve classification performance when the number of patients who have survived from colorectal cancer is much larger than who have not. These results provide evidence in favor for increased consideration of patient ethnicity in cancer survivability prediction, and for more personalized medicine in general.
机译:在这项工作中,我们调查了种族在使用机器学习技术和SEER癌症发病率数据库预测大肠癌生存能力的重要性。我们比较了2年生存率预测的模型性能以及西班牙裔,白人和混合患者人群之间的特征重要性排名。我们的模型在单族裔人群中始终表现更好,并且在不同人群中进行训练时提供不同的特征重要性排名。此外,我们显示出我们的模型比文献中报道的最好的具有更高的曲线下面积(AUC)分数。当结直肠癌幸存的患者人数比未结直肠癌幸存的患者人数多得多时,我们还应用不平衡分类技术来提高分类性能。这些结果提供了证据,有利于在癌症生存能力预测中增加对患者种族的考虑,以及一般而言更个性化的药物。

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