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Medical Monkeys: A Crowdsourcing Approach to Medical Big Data

机译:医疗猴子:医疗大数据的众包方法

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Big data play a central role in eHealth and have been crucial for designing and implementing clinical decisions support systems. Those applications can avail on data analysis and response capabilities, often empowered by Machine Learning algorithms, which can help clinician in diagnostic as well as therapeutic decisions. On the other hand, in the context of eSociety, eCommunities can be essential actors for managing and structuring medical data. In fact, they can support in gathering, providing and labeling data. This last task is highly relevant for medical Big Data, as it is a key point for supervised Machine Learning algorithms, which need an extensive data annotation process. This improves prediction and analysis capabilities of the algorithms on large datasets. Our approach on the medical Big Data labeling problem is the design and prototyping of a crowdsourcing collaborative Web Application, used for the annotation of medical images, that we named Medical Monkeys. Under the principles of mutual advantage and collaboration researchers, online gamers, medical students and patients will be involved, within this platform, in a virtual and mutually beneficial cooperation for improving Machine Learning algorithms. Using our application on large scale data analysis, algorithms for image segmentation will become useful for clinical decisions support systems. Our application is the result of a collaboration of several universities and research institutes and has, as principal aim, the integration, in form of gaming tasks, of eCommunities for the implementation of a more accurate analysis and diagnostic on MRI or CT images.
机译:大数据在eHealth中扮演着核心角色,对于设计和实施临床决策支持系统至关重要。这些应用程序可以利用通常由机器学习算法增强的数据分析和响应功能,从而可以帮助临床医生进行诊断和治疗决策。另一方面,在电子社会的背景下,电子社区可以是管理和构建医疗数据的重要参与者。实际上,他们可以支持收集,提供和标记数据。这最后一项任务与医疗大数据高度相关,因为它是受监督的机器学习算法的关键点,需要大量的数据注释过程。这提高了对大型数据集的算法的预测和分析能力。我们在医疗大数据标签问题上的方法是设计和原型设计一个用于医疗图像注释的众包协作Web应用程序,我们将其命名为Medical Monkeys。在互惠互利和合作研究人员的原则下,在线游戏玩家,医学生和患者将在此平台内参与虚拟互利合作,以改善机器学习算法。使用我们在大规模数据分析中的应用程序,用于图像分割的算法将对临床决策支持系统有用。我们的应用是几所大学和研究机构合作的结果,并且其主要目标是以游戏任务的形式集成电子社区,以对MRI或CT图像实施更准确的分析和诊断。

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