Machine Learning for the Detection and Segmentation of Benign Tumors of the Central Nervous System: A Systematic Review.
Paul WindischCarole KoechliSusanne RogersChristina SchröderRobert FoersterDaniel Rudolf ZwahlenStephan B BodisPublished in: Cancers (2022)
Objectives : To summarize the available literature on using machine learning (ML) for the detection and segmentation of benign tumors of the central nervous system (CNS) and to assess the adherence of published ML/diagnostic accuracy studies to best practice. Methods : The MEDLINE database was searched for the use of ML in patients with any benign tumor of the CNS, and the records were screened according to PRISMA guidelines. Results : Eleven retrospective studies focusing on meningioma (n = 4), vestibular schwannoma (n = 4), pituitary adenoma (n = 2) and spinal schwannoma (n = 1) were included. The majority of studies attempted segmentation. Links to repositories containing code were provided in two manuscripts, and no manuscripts shared imaging data. Only one study used an external test set, which raises the question as to whether some of the good performances that have been reported were caused by overfitting and may not generalize to data from other institutions. Conclusions : Using ML for detecting and segmenting benign brain tumors is still in its infancy. Stronger adherence to ML best practices could facilitate easier comparisons between studies and contribute to the development of models that are more likely to one day be used in clinical practice.
Keyphrases
- deep learning
- clinical practice
- machine learning
- case control
- convolutional neural network
- primary care
- healthcare
- big data
- electronic health record
- systematic review
- blood brain barrier
- high resolution
- type diabetes
- loop mediated isothermal amplification
- label free
- body mass index
- skeletal muscle
- sensitive detection
- weight gain