A multi-center MRI dataset for bladder cancer and baseline evaluations of federated learning in its clinical application

Bladder cancer (BCa), as the most common malignant tumor of the urinary system, has received significant attention in research on the clinical application of artificial intelligence algorithms. Nevertheless, it has been observed that certain investigations employ data from diverse medical facilities...

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Hauptverfasser: Cao, Kangyang, Zou, Yujian, Zhang, Chang, Zhang, Weijing, Zhang, Jie, Wang, Guojie, Zhang, Chu, Lyu, Jiegeng, Sun, Yue, Zhang, Hongyuan, Huang, Bin, Deng, Lei, Li, Jianpeng, Huang, Bingsheng
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creator Cao, Kangyang
Zou, Yujian
Zhang, Chang
Zhang, Weijing
Zhang, Jie
Wang, Guojie
Zhang, Chu
Lyu, Jiegeng
Sun, Yue
Zhang, Hongyuan
Huang, Bin
Deng, Lei
Li, Jianpeng
Huang, Bingsheng
description Bladder cancer (BCa), as the most common malignant tumor of the urinary system, has received significant attention in research on the clinical application of artificial intelligence algorithms. Nevertheless, it has been observed that certain investigations employ data from diverse medical facilities to train models for BCa, thereby posing a potential risk of leaking patients' privacy. Ensuring the privacy of patients during the training of machine learning algorithms is a vital consideration that deserves significant attention. Federated learning (FL) is an emerging machine learning paradigm that enables multiple entities to collaboratively build machine learning models while preserving data privacy and security. In this study, we present a multi-center BCa magnetic resonance imaging (MRI) dataset,  aimed at evaluating the baseline performance of FL. The dataset comprises 275 three-dimensional bladder T2-weighted MRI scans collected from four medical centers, and each scan includes diagnostic pathological labels for muscle invasion and fine pixel-level annotations of tumor contours. Four FL methods are used to assess the baseline of the dataset for both the task of diagnosing muscle-invasive bladder cancer and automatic bladder tumor lesion segmentation.
doi_str_mv 10.5281/zenodo.10409144
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title A multi-center MRI dataset for bladder cancer and baseline evaluations of federated learning in its clinical application
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