Many Tasks Make Light Work: Learning to Localise Medical Anomalies from Multiple Synthetic Tasks

被引:7
作者
Baugh, Matthew [1 ]
Tan, Jeremy [2 ]
Mueller, Johanna P. [3 ]
Dombrowski, Mischa [3 ]
Batten, James [1 ]
Kainz, Bernhard [1 ,3 ]
机构
[1] Imperial Coll London, London, England
[2] Swiss Fed Inst Technol, Zurich, Switzerland
[3] Friedrich Alexander Univ Erlangen Nurnberg, Erlangen, Germany
来源
MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION, MICCAI 2023, PT I | 2023年 / 14220卷
基金
英国工程与自然科学研究理事会; 欧洲研究理事会;
关键词
SEGMENTATION; RADIOLOGY;
D O I
10.1007/978-3-031-43907-0_16
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
There is a growing interest in single-class modelling and out-of-distribution detection as fully supervised machine learning models cannot reliably identify classes not included in their training. The long tail of infinitely many out-of-distribution classes in real-world scenarios, e.g., for screening, triage, and quality control, means that it is often necessary to train single-class models that represent an expected feature distribution, e.g., from only strictly healthy volunteer data. Conventional supervised machine learning would require the collection of datasets that contain enough samples of all possible diseases in every imaging modality, which is not realistic. Self-supervised learning methods with synthetic anomalies are currently amongst the most promising approaches, alongside generative auto-encoders that analyse the residual reconstruction error. However, all methods suffer from a lack of structured validation, which makes calibration for deployment difficult and dataset-dependant. Our method alleviates this by making use of multiple visually-distinct synthetic anomaly learning tasks for both training and validation. This enables more robust training and generalisation. With our approach we can readily outperform state-of-the-art methods, which we demonstrate on exemplars in brain MRI and chest X-rays. Code is available at https://github.com/matt-baugh/many-tasks-make-light-work.
引用
收藏
页码:162 / 172
页数:11
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