Robustly federated learning model for identifying high-risk patients with postoperative gastric cancer recurrence.
Bao FengJiangfeng ShiLiebin HuangZhiqi YangShi-Ting FengJianpeng LiQinxian ChenHuimin XueXiangguang ChenCuixia WanQinghui HuEn-Ming CuiYehang ChenWansheng LongPublished in: Nature communications (2024)
The prediction of patient disease risk via computed tomography (CT) images and artificial intelligence techniques shows great potential. However, training a robust artificial intelligence model typically requires large-scale data support. In practice, the collection of medical data faces obstacles related to privacy protection. Therefore, the present study aims to establish a robust federated learning model to overcome the data island problem and identify high-risk patients with postoperative gastric cancer recurrence in a multicentre, cross-institution setting, thereby enabling robust treatment with significant value. In the present study, we collect data from four independent medical institutions for experimentation. The robust federated learning model algorithm yields area under the receiver operating characteristic curve (AUC) values of 0.710, 0.798, 0.809, and 0.869 across four data centres. Additionally, the effectiveness of the algorithm is evaluated, and both adaptive and common features are identified through analysis.
Keyphrases
- artificial intelligence
- big data
- machine learning
- deep learning
- computed tomography
- electronic health record
- healthcare
- patients undergoing
- systematic review
- clinical trial
- primary care
- data analysis
- positron emission tomography
- cross sectional
- magnetic resonance
- convolutional neural network
- image quality
- drug induced