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On the limits of cross-domain generalization in automated X-ray prediction

机译:关于自动X射线预测中跨域泛化的限制

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This large scale study focuses on quantifying what X-rays diagnostic prediction tasks generalize well across multiple different datasets. We present evidence that the issue of generalization is not due to a shift in the images but instead a shift in the labels. We study the cross-domain performance, agreement between models, and model representations. We find interesting discrepancies between performance and agreement where models which both achieve good performance disagree in their predictions as well as models which agree yet achieve poor performance. We also test for concept similarity by regularizing a network to group tasks across multiple datasets together and observe variation across the tasks. All code is made available online and data is publicly available: {https://github.com/mlmed/torchxrayvision}.
机译:这种大规模研究侧重于量化X射线诊断预测任务概遍跨多个不同数据集的概念。我们提出了证据表明泛化问题不是由于图像的换档,而是在标签中转变。我们研究了模型和模型表示之间的跨域性能,协议。我们在绩效和协议之间找到了有趣的差异,其中模特在他们的预测中取得了良好的表现不同意的模型以及同意且绩效不良的模型。我们还通过将网络正规化到将多个数据集组合在一起进行组任务并遵守任务的变化来测试概念相似度。所有代码都可以在线提供,数据可公开可用:{https://github.com/mlmed/torchxrayvision}。

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