Impact of imperfection in medical imaging data on deep learning-based segmentation performance: An experimental study using synthesized data

被引:4
作者
Gunes, Ayetullah Mehdi [1 ]
van Rooij, Ward [1 ]
Gulshad, Sadaf [2 ]
Slotman, Ben [1 ]
Dahele, Max [1 ]
Verbakel, Wilko [1 ]
机构
[1] Amsterdam UMC, Dept Radiat Oncol, De Boelelaan 1117, NL-1081 HV Amsterdam, Netherlands
[2] Univ Amsterdam, Fac Sci, Amsterdam, Netherlands
关键词
data imperfection; deep learning; parotid gland; segmentation; synthesized data; NECK-CANCER; HEAD; ORGANS; DELINEATION; RISK;
D O I
10.1002/mp.16437
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundClinical data used to train deep learning models are often not clean data. They can contain imperfections in both the imaging data and the corresponding segmentations. PurposeThis study investigates the influence of data imperfections on the performance of deep learning models for parotid gland segmentation. This was done in a controlled manner by using synthesized data. The insights this study provides may be used to make deep learning models better and more reliable. MethodsThe data were synthesized by using the clinical segmentations, creating a pseudo ground-truth in the process. Three kinds of imperfections were simulated: incorrect segmentations, low image contrast, and artifacts in the imaging data. The severity of each imperfection was varied in five levels. Models resulting from training sets from each of the five levels were cross-evaluated with test sets from each of the five levels. ResultsUsing synthesized data led to almost perfect parotid gland segmentation when no error was added. Lowering the quality of the parotid gland segmentations used for training substantially lowered the model performance. Additionally, lowering the image quality of the training data by decreasing the contrast or introducing artifacts made the resulting models more robust to data containing those respective kinds of data imperfection. ConclusionThis study demonstrated the importance of good-quality segmentations for deep learning training and it shows that using low-quality imaging data for training can enhance the robustness of the resulting models.
引用
收藏
页码:6421 / 6432
页数:12
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