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Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging.

Publication ,  Journal Article
Singh, V; Pencina, M; Einstein, AJ; Liang, JX; Berman, DS; Slomka, P
Published in: Sci Rep
July 14, 2021

As machine learning research in the field of cardiovascular imaging continues to grow, obtaining reliable model performance estimates is critical to develop reliable baselines and compare different algorithms. While the machine learning community has generally accepted methods such as k-fold stratified cross-validation (CV) to be more rigorous than single split validation, the standard research practice in medical fields is the use of single split validation techniques. This is especially concerning given the relatively small sample sizes of datasets used for cardiovascular imaging. We aim to examine how train-test split variation impacts the stability of machine learning (ML) model performance estimates in several validation techniques on two real-world cardiovascular imaging datasets: stratified split-sample validation (70/30 and 50/50 train-test splits), tenfold stratified CV, 10 × repeated tenfold stratified CV, bootstrapping (500 × repeated), and leave one out (LOO) validation. We demonstrate that split validation methods lead to the highest range in AUC and statistically significant differences in ROC curves, unlike the other aforementioned approaches. When building predictive models on relatively small data sets as is often the case in medical imaging, split-sample validation techniques can produce instability in performance estimates with variations in range over 0.15 in the AUC values, and thus any of the alternate validation methods are recommended.

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Published In

Sci Rep

DOI

EISSN

2045-2322

Publication Date

July 14, 2021

Volume

11

Issue

1

Start / End Page

14490

Location

England

Related Subject Headings

  • Reproducibility of Results
  • Myocardial Perfusion Imaging
  • Machine Learning
  • Image Processing, Computer-Assisted
  • Humans
  • Databases, Factual
  • Cardiovascular Diseases
  • Area Under Curve
 

Citation

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Singh, V., Pencina, M., Einstein, A. J., Liang, J. X., Berman, D. S., & Slomka, P. (2021). Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging. Sci Rep, 11(1), 14490. https://doi.org/10.1038/s41598-021-93651-5
Singh, Vikash, Michael Pencina, Andrew J. Einstein, Joanna X. Liang, Daniel S. Berman, and Piotr Slomka. “Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging.Sci Rep 11, no. 1 (July 14, 2021): 14490. https://doi.org/10.1038/s41598-021-93651-5.
Singh V, Pencina M, Einstein AJ, Liang JX, Berman DS, Slomka P. Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging. Sci Rep. 2021 Jul 14;11(1):14490.
Singh, Vikash, et al. “Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging.Sci Rep, vol. 11, no. 1, July 2021, p. 14490. Pubmed, doi:10.1038/s41598-021-93651-5.
Singh V, Pencina M, Einstein AJ, Liang JX, Berman DS, Slomka P. Impact of train/test sample regimen on performance estimate stability of machine learning in cardiovascular imaging. Sci Rep. 2021 Jul 14;11(1):14490.

Published In

Sci Rep

DOI

EISSN

2045-2322

Publication Date

July 14, 2021

Volume

11

Issue

1

Start / End Page

14490

Location

England

Related Subject Headings

  • Reproducibility of Results
  • Myocardial Perfusion Imaging
  • Machine Learning
  • Image Processing, Computer-Assisted
  • Humans
  • Databases, Factual
  • Cardiovascular Diseases
  • Area Under Curve