Back to Search Start Over

Expert-centered Evaluation of Deep Learning Algorithms for Brain Tumor Segmentation.

Authors :
Hoebel KV
Bridge CP
Ahmed S
Akintola O
Chung C
Huang RY
Johnson JM
Kim A
Ly KI
Chang K
Patel J
Pinho M
Batchelor TT
Rosen BR
Gerstner ER
Kalpathy-Cramer J
Source :
Radiology. Artificial intelligence [Radiol Artif Intell] 2024 Jan; Vol. 6 (1), pp. e220231.
Publication Year :
2024

Abstract

Purpose To present results from a literature survey on practices in deep learning segmentation algorithm evaluation and perform a study on expert quality perception of brain tumor segmentation. Materials and Methods A total of 180 articles reporting on brain tumor segmentation algorithms were surveyed for the reported quality evaluation. Additionally, ratings of segmentation quality on a four-point scale were collected from medical professionals for 60 brain tumor segmentation cases. Results Of the surveyed articles, Dice score, sensitivity, and Hausdorff distance were the most popular metrics to report segmentation performance. Notably, only 2.8% of the articles included clinical experts' evaluation of segmentation quality. The experimental results revealed a low interrater agreement (Krippendorff α, 0.34) in experts' segmentation quality perception. Furthermore, the correlations between the ratings and commonly used quantitative quality metrics were low (Kendall tau between Dice score and mean rating, 0.23; Kendall tau between Hausdorff distance and mean rating, 0.51), with large variability among the experts. Conclusion The results demonstrate that quality ratings are prone to variability due to the ambiguity of tumor boundaries and individual perceptual differences, and existing metrics do not capture the clinical perception of segmentation quality. Keywords: Brain Tumor Segmentation, Deep Learning Algorithms, Glioblastoma, Cancer, Machine Learning Clinical trial registration nos. NCT00756106 and NCT00662506 Supplemental material is available for this article. © RSNA, 2023.

Details

Language :
English
ISSN :
2638-6100
Volume :
6
Issue :
1
Database :
MEDLINE
Journal :
Radiology. Artificial intelligence
Publication Type :
Academic Journal
Accession number :
38197800
Full Text :
https://doi.org/10.1148/ryai.220231