Machine learning for medical imaging: methodological failures and recommendations for the future.
Gaël VaroquauxVeronika CheplyginaPublished in: NPJ digital medicine (2022)
Research in computer analysis of medical images bears many promises to improve patients' health. However, a number of systematic challenges are slowing down the progress of the field, from limitations of the data, such as biases, to research incentives, such as optimizing for publication. In this paper we review roadblocks to developing and assessing methods. Building our analysis on evidence from the literature and data challenges, we show that at every step, potential biases can creep in. On a positive note, we also discuss on-going efforts to counteract these problems. Finally we provide recommendations on how to further address these problems in the future.
Keyphrases
- mental health
- healthcare
- machine learning
- big data
- deep learning
- end stage renal disease
- electronic health record
- current status
- newly diagnosed
- ejection fraction
- public health
- high resolution
- systematic review
- clinical practice
- peritoneal dialysis
- artificial intelligence
- optical coherence tomography
- smoking cessation
- quality improvement
- convolutional neural network
- patient reported outcomes
- health information
- patient reported