Medical imaging is an important research field with many opportunities for improving patients' health. However, there are a number of challenges that are slowing down the progress of the field as a whole, such optimizing for publication. In this paper we reviewed several problems related to choosing datasets, methods, evaluation metrics, and publication strategies. With a review of literature and our own analysis, we show that at every step, potential biases can creep in. On a positive note, we also see that initiatives to counteract these problems are already being started. Finally we provide a broad range of recommendations on how to further these address problems in the future. For reproducibility, data and code for our analyses are available on \url{https://github.com/GaelVaroquaux/ml_med_imaging_failures}
翻译:医学成像是一个重要的研究领域,有许多改善病人健康的机会。然而,有一些挑战正在减缓整个领域的进展,如优化出版等。在本文件中,我们审查了与选择数据集、方法、评价指标和出版战略有关的一些问题。通过对文献和我们自己的分析,我们表明,在每一个步骤中,潜在的偏见都会蔓延。从积极的方面来看,我们也看到正在发起旨在解决这些问题的倡议。最后,我们就如何在今后进一步解决这些问题提出了广泛的建议。为了重新推广,我们的分析数据和代码可以在以下网址上查到:https://github.com/GaelVaroquaux/ml_med_imaging_failures}