联邦学习医疗区块链对医疗保健中非iid数据影响的思考

Zonyin Shae, Kun-Yi Chen, Chi-Yu Chang, Yuan-Yu Tsai, C. Chou, William I. Baskett, Chi-Ren Shyu, J. J. Tsai
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引用次数: 1

摘要

我们有一个共同的假设/信念,即聚合的高质量训练数据越多,由此产生的人工智能(AI)模型的性能就越好。然而,一般来说,这种普遍的信念在医疗领域并不正确,因为来自不同医院的医疗保健数据集通常不是相同分布的(非iid)。这对有效地将各个医院数据集聚合在一起提出了严峻的技术挑战。在这篇愿景论文中,我们不提供完整的解决方案,而是讨论一些问题和思考,目的是帮助有效的数据聚合和提高联邦学习(FL)人工智能模型的性能:(1)对医疗数据集的非iid程度进行基准测试和测量。(2)在FL数据聚合机制中加入非iid度度量。(3)在一组医疗数据集中寻找最优的全局模型创建策略。(4)调查FL学习优于集中式学习。本文将通过概述一种有远见的方法来探讨这些问题,该方法用于探索医疗区块链FL机制,以有效地聚合多个医疗保健系统的医疗数据,为具有广泛人口统计数据的大量人群提供服务。
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Thoughts on Non-IID Data Impact in Healthcare with Federated Learning Medical Blockchain
We share the common hypothesis/belief that the more aggregated good quality training data, the better the performance that can be attained by the resulting Artificial Intelligence (AI) model. However, this common belief, in general, is not true in the medical area, since healthcare data sets sourced from different hospitals are often not identically distributed (Non-IID). This imposes severe technical challenges for effectively aggregating the individual hospital data sets together. In this vision paper, instead of offering complete solutions, we will discuss some questions and food for thought with the goal of aiding effective data aggregation and improving federated learning (FL) AI model performance: (1) benchmark and measure the Non-IID degree of medical data sets. (2) include the Non-IID degree metrics in the FL data aggregation mechanism. (3) search for the optimal global model creation strategy among a group of many medical data sets. (4) investigate FL performance better than the centralized learning. This paper will discuss these questions by outlining a visionary approach for exploring a medical blockchain FL mechanism to effectively aggregate medical data across multiple healthcare systems to serve large populations with broad demographics.
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