A Comparative Study of Performance Between Federated Learning and Centralized Learning Using Pathological Image of Endometrial Cancer.

Jong Chan Yeom, Jae Hoon Kim, Young Jae Kim, Jisup Kim, Kwang Gi Kim
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Abstract

Federated learning, an innovative artificial intelligence training method, offers a secure solution for institutions to collaboratively develop models without sharing raw data. This approach offers immense promise and is particularly advantageous for domains dealing with sensitive information, such as patient data. However, when confronted with a distributed data environment, challenges arise due to data paucity or inherent heterogeneity, potentially impacting the performance of federated learning models. Hence, scrutinizing the efficacy of this method in such intricate settings is indispensable. To address this, we harnessed pathological image datasets of endometrial cancer from four hospitals for training and evaluating the performance of a federated learning model and compared it with a centralized learning model. With optimal processing techniques (data augmentation, color normalization, and adaptive optimizer), federated learning exhibited lower precision but higher recall and Dice similarity coefficient (DSC) than centralized learning. Hence, considering the critical importance of recall in the context of medical image processing, federated learning is demonstrated as a viable and applicable approach in this field, offering advantages in terms of both performance and data security.

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利用子宫内膜癌病理图像进行联合学习与集中学习的性能比较研究
联合学习是一种创新的人工智能训练方法,它为机构在不共享原始数据的情况下合作开发模型提供了一种安全的解决方案。这种方法前景广阔,对于处理病人数据等敏感信息的领域尤其有利。然而,在面对分布式数据环境时,由于数据匮乏或固有的异质性,可能会影响联合学习模型的性能,从而带来挑战。因此,仔细研究这种方法在这种错综复杂的环境中的功效是必不可少的。为此,我们利用四家医院的子宫内膜癌病理图像数据集来训练和评估联合学习模型的性能,并将其与集中学习模型进行比较。在采用最佳处理技术(数据增强、颜色归一化和自适应优化器)的情况下,联合学习的精确度低于集中学习,但召回率和戴斯相似系数(DSC)却高于集中学习。因此,考虑到召回率在医学图像处理中的极端重要性,联合学习被证明是该领域中一种可行且适用的方法,在性能和数据安全方面都具有优势。
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