作者
Joseph D Janizek, Gabriel Erion, Alex J DeGrave, Su-In Lee
发表日期
2020/4/2
图书
Proceedings of the ACM conference on health, inference, and learning
页码范围
69-79
简介
While deep learning has shown promise in the domain of disease classification from medical images, models based on state-of-the-art convolutional neural network architectures often exhibit performance loss due to dataset shift. Models trained using data from one hospital system achieve high predictive performance when tested on data from the same hospital, but perform significantly worse when they are tested in different hospital systems. Furthermore, even within a given hospital system, deep learning models have been shown to depend on hospital- and patient-level confounders rather than meaningful pathology to make classifications. In order for these models to be safely deployed, we would like to ensure that they do not use confounding variables to make their classification, and that they will work well even when tested on images from hospitals that were not included in the training data. We attempt to …
引用总数
201920202021202220232024138687
学术搜索中的文章
JD Janizek, G Erion, AJ DeGrave, SI Lee - Proceedings of the ACM conference on health …, 2020