Reproducibility in Machine Learning for Medical Imaging
- PMID: 37988537
- Bookshelf ID: NBK597469
- DOI: 10.1007/978-1-0716-3195-9_21
Reproducibility in Machine Learning for Medical Imaging
Excerpt
Reproducibility is a cornerstone of science, as the replication of findings is the process through which they become knowledge. It is widely considered that many fields of science are undergoing a reproducibility crisis. This has led to the publications of various guidelines in order to improve research reproducibility.
This didactic chapter intends at being an introduction to reproducibility for researchers in the field of machine learning for medical imaging. We first distinguish between different types of reproducibility. For each of them, we aim at defining it, at describing the requirements to achieve it, and at discussing its utility. The chapter ends with a discussion on the benefits of reproducibility and with a plea for a nondogmatic approach to this concept and its implementation in research practice.
Copyright 2023, The Author(s).
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References
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- Seab J, Jagust W, Wong S, Roos M, Reed BR, Budinger T (1988) Quantitative NMR measurements of hippocampal atrophy in Alzheimer’s disease. Magn Reson Med 8(2):200–208 - PubMed
-
- Varoquaux G, Colliot O (2022) Evaluating machine learning models and their diagnostic value. HAL preprint hal-03682454. https://hal.archives-ouvertes.fr/hal-03682454/
-
- Thibeau-Sutre E, Diaz M, Hassanaly R, Routier A, Dormont D, Colliot O, Burgos N (2022) ClinicaDL: an open-source deep learning software for reproducible neuroimaging processing. Comput Methods Prog Biomed 220:106818 - PubMed
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