Distributed Harmonization: Federated Clustered Batch Effect Adjustment and Generalization.

Bao Hoang, Yijiang Pang, Siqi Liang, Liang Zhan, Paul M Thompson, Jiayu Zhou
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Abstract

Independent and identically distributed (i.i.d.) data is essential to many data analysis and modeling techniques. In the medical domain, collecting data from multiple sites or institutions is a common strategy that guarantees sufficient clinical diversity, determined by the decentralized nature of medical data. However, data from various sites are easily biased by the local environment or facilities, thereby violating the i.i.d. rule. A common strategy is to harmonize the site bias while retaining important biological information. The COMBAT is among the most popular harmonization approaches and has recently been extended to handle distributed sites. However, when faced with situations involving newly joined sites in training or evaluating data from unknown/unseen sites, COMBAT lacks compatibility and requires retraining with data from all the sites. The retraining leads to significant computational and logistic overhead that is usually prohibitive. In this work, we develop a novel Cluster ComBat harmonization algorithm, which leverages cluster patterns of the data in different sites and greatly advances the usability of COMBAT harmonization. We use extensive simulation and real medical imaging data from ADNI to demonstrate the superiority of the proposed approach. Our codes are provided in https://github.com/illidanlab/distributed-cluster-harmonization.

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分布式协调:联邦集群批量效应调整和泛化。
独立且同分布(i.i.d.)的数据对许多数据分析和建模技术至关重要。在医疗领域,从多个地点或机构收集数据是一种常见的策略,可以保证足够的临床多样性,这是由医疗数据的分散性决定的。然而,来自不同地点的数据很容易受到当地环境或设施的影响,从而违反 i.i.d. 规则。一种常见的策略是在保留重要生物信息的同时,协调不同地点的偏差。COMBAT 是最常用的协调方法之一,最近已扩展到处理分布式站点。然而,当遇到在训练中涉及新加入的研究点或评估来自未知/未见研究点的数据时,COMBAT 缺乏兼容性,需要使用来自所有研究点的数据进行重新训练。重新训练会带来巨大的计算和物流开销,通常是难以承受的。在这项工作中,我们开发了一种新颖的集群 ComBat 协调算法,该算法利用不同地点数据的集群模式,大大提高了 COMBAT 协调的可用性。我们使用大量模拟和 ADNI 的真实医学影像数据来证明所提方法的优越性。我们的代码见 https://github.com/illidanlab/distributed-cluster-harmonization。
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