基于联邦学习的肝纤维化分级诊断

Yueying Zhou, Xinping Ren, Xiaoying Zheng, Yongxin Zhu, Kang Xu, Shijin Song, Li Tian
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引用次数: 0

摘要

肝纤维化是一个重要的预后因素,严重的肝纤维化可导致肝癌甚至死亡。临床上常用超声灰度图像和超声弹性图像对肝纤维化进行分级,判断肝纤维化的严重程度。然而,这两种诊断方法往往容易受到干扰,如个人经验或仪器的差异。此外,这些个体差异通常会导致每家医院的独立机器学习诊断模型相互冲突,这些医院的医疗数据由于数据隐私而不允许公开共享。为了解决诊断模型之间的冲突,我们提出了一种基于联邦学习的分层肝纤维化诊断方法,该方法利用跨医院多个用户的剪切波弹性图像,而不共享原始数据。我们的方法用中国上海肝纤维化患者的真实横波弹性图像进行了验证。实验结果表明,我们的方法能够对这些剪切波弹性图像进行预处理,在每个医院训练局部诊断模型,并安全地整合成一个共享的全局诊断模型,该模型仅包含数百个标记图像的小数据集,准确率超过70%。随着训练样本的增加,我们的方法有望进一步提高准确率。我们的方法将是第一个基于联合学习的肝纤维化诊断实践。
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Federated-Learning-based Hierarchical Diagnosis of Liver Fibrosis
Hepatic fibrosis is an important prognostic factor as severe liver fibrosis may lead to liver cancer or even death. To grade liver fibrosis, ultrasound gray-scale images and ultrasound elastic images are commonly used in clinical diagnosis to judge the severity of liver fibrosis. However, these two diagnoses methods are often vulnerable to disturbances, such as personal experience or instrument differences. Moreover, these individual differences usually lead to conflicting stand-alone machine learning diagnosis models at each hospital whose medical data are not allowed to share in public due to data privacy. To handle the conflicts among diagnosis models, we propose a federated learning based hierarchical diagnosis method of liver fibrosis by utilizing shear wave elasticity pictures of multiple users across hospitals without sharing the original data. Our method is validated with authentic shear wave elasticity pictures of hepatic fibrosis patients in Shanghai, China. Experimental results show that our method is able to preprocess these shear wave elasticity pictures, train local diagnosis models at each hospital and securely consolidate into a shared global diagnosis model whose accuracy is over 70% with only a small dataset containing a few hundreds of labeled pictures. Our method is expected to further improve in its accuracy with more training samples. Our method would be the first practice based on federated learning in liver fibrosis diagnosis.
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