Caughlin Kayla, Shahedi Maysam, Shoag Jonathan E, Barbieri Christopher, Margolis Daniel, Fei Baowei
Department of Bioengineering, The University of Texas at Dallas, Richardson, TX.
Department of Urology, Weill Cornell Medicine, New York, NY.
Proc SPIE Int Soc Opt Eng. 2021 Feb;11598. doi: 10.1117/12.2581963. Epub 2021 Feb 15.
Accurate segmentation of the prostate on computed tomography (CT) has many diagnostic and therapeutic applications. However, manual segmentation is time-consuming and suffers from high inter- and intra-observer variability. Computer-assisted approaches are useful to speed up the process and increase the reproducibility of the segmentation. Deep learning-based segmentation methods have shown potential for quick and accurate segmentation of the prostate on CT images. However, difficulties in obtaining manual, expert segmentations on a large quantity of images limit further progress. Thus, we proposed an approach to train a base model on a small, manually-labeled dataset and fine-tuned the model using unannotated images from a large dataset without any manual segmentation. The datasets used for pre-training and fine-tuning the base model have been acquired in different centers with different CT scanners and imaging parameters. Our fine-tuning method increased the validation and testing Dice scores. A paired, two-tailed t-test shows a significant change in test score ( = 0.017) demonstrating that unannotated images can be used to increase the performance of automated segmentation models.
在计算机断层扫描(CT)上准确分割前列腺有许多诊断和治疗应用。然而,手动分割耗时且观察者间和观察者内的变异性很高。计算机辅助方法有助于加快分割过程并提高分割的可重复性。基于深度学习的分割方法已显示出在CT图像上快速准确分割前列腺的潜力。然而,难以在大量图像上获得人工的、专家级的分割限制了进一步的进展。因此,我们提出了一种方法,在一个小的、人工标注的数据集上训练一个基础模型,并使用来自一个大数据集的未标注图像对该模型进行微调,而无需任何手动分割。用于预训练和微调基础模型的数据集是在不同中心使用不同的CT扫描仪和成像参数获取的。我们的微调方法提高了验证和测试的骰子系数得分。配对双尾t检验显示测试得分有显著变化(P = 0.017),表明未标注图像可用于提高自动分割模型的性能。