首页> 外文会议>IEEE International Conference on Image Processing >INVESTIGATING THE BEST PERFORMING TASK CONDITIONS OF A MULTI-TASKING LEARNING MODEL IN HEALTHCARE USING CONVOLUTIONAL NEURAL NETWORKS: EVIDENCE FROM A PARKINSON'S DISEASE DATABASE
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INVESTIGATING THE BEST PERFORMING TASK CONDITIONS OF A MULTI-TASKING LEARNING MODEL IN HEALTHCARE USING CONVOLUTIONAL NEURAL NETWORKS: EVIDENCE FROM A PARKINSON'S DISEASE DATABASE

机译:使用卷积神经网络调查医疗保健中多任务学习模型的最佳表演任务条件:来自帕金森病数据库的证据

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This paper presents three conditions of Multi-Task Learning (MTL) model architectures based on Deep Neural Networks (DNNs) to predict the Parkinson's Disease (PD) from brain images. It also demonstrates the usefulness of incorporating additional patients' contextual epidemiological information (i.e. their age and sex). Our aim is to investigate which are the patients' clinical data, that when joined with the primary task could perform best and thus provide an improved computational PD prediction model. Our proposed model architectures are evaluated on a new medical dataset, which is presently under development. Our preliminary results suggest the robustness of our proposed systems to analyze and provide an accurate estimate of the status of the disease. Finally, we discuss the lessons learned from our experimental settings with respect to addressing several research questions such as the importance of selecting the auxiliary task(s) respectively, which is the best performing task combination to achieve such improved Parkinson's disease prediction, as well as whether all auxiliary tasks are equally effective.
机译:本文介绍了基于深神经网络(DNN)的多任务学习(MTL)模型架构的三种条件,以预测脑脑图像的帕金森病(PD)。它还展示了纳入额外患者的上下文流行病学信息的有用性(即,他们的年龄和性别)。我们的目标是调查患者的临床数据,当与主要任务加入时,可以最佳地执行,从而提供改进的计算PD预测模型。我们所提出的模型架构在新的医疗数据集上进行评估,目前正在开发。我们的初步结果表明我们所提出的系统的稳健性分析和提供了对疾病状态的准确估算。最后,我们讨论了我们在解决几个研究问题的实验环境中了解到的经验教训,例如分别选择辅助任务的重要性,这是实现如此改善的帕金森病预测的最佳性能组合,以及所有辅助任务是否同样有效。

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