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首页> 外文期刊>PLoS Computational Biology >Improving Breast Cancer Survival Analysis through Competition-Based Multidimensional Modeling
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Improving Breast Cancer Survival Analysis through Competition-Based Multidimensional Modeling

机译:通过基于竞争的多维建模改善乳腺癌的生存分析

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Breast cancer is the most common malignancy in women and is responsible for hundreds of thousands of deaths annually. As with most cancers, it is a heterogeneous disease and different breast cancer subtypes are treated differently. Understanding the difference in prognosis for breast cancer based on its molecular and phenotypic features is one avenue for improving treatment by matching the proper treatment with molecular subtypes of the disease. In this work, we employed a competition-based approach to modeling breast cancer prognosis using large datasets containing genomic and clinical information and an online real-time leaderboard program used to speed feedback to the modeling team and to encourage each modeler to work towards achieving a higher ranked submission. We find that machine learning methods combined with molecular features selected based on expert prior knowledge can improve survival predictions compared to current best-in-class methodologies and that ensemble models trained across multiple user submissions systematically outperform individual models within the ensemble. We also find that model scores are highly consistent across multiple independent evaluations. This study serves as the pilot phase of a much larger competition open to the whole research community, with the goal of understanding general strategies for model optimization using clinical and molecular profiling data and providing an objective, transparent system for assessing prognostic models.
机译:乳腺癌是女性最常见的恶性肿瘤,每年导致数十万人死亡。与大多数癌症一样,它是一种异质性疾病,不同的乳腺癌亚型接受不同的治疗。根据分子和表型特征了解乳腺癌的预后差异是通过适当的治疗方法与疾病的分子亚型匹配来改善治疗的一种途径。在这项工作中,我们采用了基于竞争的方法,使用包含基因组和临床信息的大型数据集以及在线实时排行榜程序对乳腺癌的预后进行建模,该程序用于加快对建模团队的反馈并鼓励每个建模人员朝着实现目标迈进。排名较高的提交。我们发现,与当前同类最佳的方法相比,结合了基于专家先验知识选择的分子特征的机器学习方法可以提高生存预测,并且跨多个用户提交训练的集合模型在系统上优于集合中的单个模型。我们还发现,模型评分在多个独立评估中高度一致。这项研究是向整个研究界开放的更大规模竞争的试验阶段,其目的是了解使用临床和分子谱分析数据进行模型优化的一般策略,并为评估预后模型提供客观,透明的系统。

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