竞争挑战在个性化医疗中的作用

D. Krstajic, L. Buturovic
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摘要

人们普遍认为,个性化医疗将在未来的医疗保健中发挥关键作用。它以新技术为基础,使我们能够发现个体之间的遗传差异,从而使我们有机会确定可能从治疗中受益的患者。其进展的关键挑战之一是在公共领域可用的临床注释基因组数据量不足。为了解决这个问题,建立了一个名为逆向工程评估和方法对话(DREAM)的联盟,将更大的社区聚集在一起,共同研究该领域的主要问题。其主要想法是将更多的数据引入公共领域,并将个性化医疗问题作为有期限的竞争性挑战(竞赛),并为获胜者提供非商业奖励。来自世界各地的任何人都可以参与,来自世界一流大学的研究人员也加入了进来。在最新的挑战中,目标是利用临床(年龄、性别、实验室检测结果等)和基因组数据的组合,预测接受标准化疗方案治疗的急性髓系白血病患者的相关临床结果。比赛的最终结果于2014年10月公布。团队临床角色在预测缓解持续时间方面排名第三,在估计总生存率方面排名第四。我们谈话的目的是双重的。首先,我们展示了公开竞赛在科学领域的好处,尤其是在预测建模领域。其次,我们展示了参与挑战的经验教训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role of Competitive Challenges in Personalized Medicine
Personalized medicine is widely expected to play a key role in the future of healthcare. It is based on new technologies which enable us to find genetic differences between individuals and as a result give us a chance to identify patients likely to benefit from a treatment. One of the key challenges to its advance is insufficient amount of clinically-annotated genomic data available in the public domain. To address this issue, a consortium named Dialogue for Reverse Engineering Assessments and Methods (DREAM) was setup to bring the larger community to work together on major issues in the field. The main idea is to bring more data in the public domain and to pose personalized medicine problems as competitive challenges (competitions) with deadlines and non-commercial rewards for winners. Anybody from around the world is allowed to participate, and researchers from leading world universities have joined in. In the latest challenge the goal was to predict relevant clinical outcomes of Acute Myeloid Leukemia patients treated with standard chemotherapy regimen, using a combination of clinical (age, sex, lab test results etc.) and genomic data. The final results of the competition were released in October 2014. Team Clinical Persona placed third in predicting remission duration and fourth in estimating overall survival. The purpose of our talk is twofold. First, we show the benefits of public competitions in science and especially in predictive modeling. Second, we show our lessons from participating in the challenge.
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