Performance of alternative manual and automated deep learning segmentation techniques for the prediction of benign and malignant lung nodules

被引:0
作者
Selby, Heather M. [1 ]
Mukherjee, Pritam [2 ]
Parham, Christopher [3 ]
Malik, Sachin B. [3 ]
Gevaert, Olivier [1 ]
Napel, Sandy [4 ]
Shah, Rajesh P. [3 ,4 ]
机构
[1] Stanford Univ, Stanford Ctr Biomed Informat BMIR, Sch Med, Stanford, CA USA
[2] Natl Inst Hlth Clin Ctr, Bethesda, MD USA
[3] Vet Affairs Palo Alto Hlth Care Syst, Palo Alto, CA 94304 USA
[4] Stanford Univ, Sch Med, Dept Radiol, Stanford, CA 94305 USA
基金
美国国家卫生研究院;
关键词
segmentation; lung nodules; computed tomography imaging; radiomics; machine learning; deep learning; RADIOMICS; CANCER; IMAGES;
D O I
10.1117/1.JMI.10.4.044006
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
Purpose We aim to evaluate the performance of radiomic biopsy (RB), best-fit bounding box (BB), and a deep-learning-based segmentation method called no-new-U-Net (nnU-Net), compared to the standard full manual (FM) segmentation method for predicting benign and malignant lung nodules using a computed tomography (CT) radiomic machine learning model.Materials and Methods A total of 188 CT scans of lung nodules from 2 institutions were used for our study. One radiologist identified and delineated all 188 lung nodules, whereas a second radiologist segmented a subset (n = 20) of these nodules. Both radiologists employed FM and RB segmentation methods. BB segmentations were generated computationally from the FM segmentations. The nnU-Net, a deep-learning-based segmentation method, performed automatic nodule detection and segmentation. The time radiologists took to perform segmentations was recorded. Radiomic features were extracted from each segmentation method, and models to predict benign and malignant lung nodules were developed. The Kruskal-Wallis and DeLong tests were used to compare segmentation times and areas under the curve (AUC), respectively.Results For the delineation of the FM, RB, and BB segmentations, the two radiologists required a median time (IQR) of 113 (54 to 251.5), 21 (9.25 to 38), and 16 (12 to 64.25) s, respectively (p = 0.04). In dataset 1, the mean AUC (95% CI) of the FM, RB, BB, and nnU-Net model were 0.964 (0.96 to 0.968), 0.985 (0.983 to 0.987), 0.961 (0.956 to 0.965), and 0.878 (0.869 to 0.888). In dataset 2, the mean AUC (95% CI) of the FM, RB, BB, and nnU-Net model were 0.717 (0.705 to 0.729), 0.919 (0.913 to 0.924), 0.699 (0.687 to 0.711), and 0.644 (0.632 to 0.657).Conclusion Radiomic biopsy-based models outperformed FM and BB models in prediction of benign and malignant lung nodules in two independent datasets while deep-learning segmentation-based models performed similarly to FM and BB. RB could be a more efficient segmentation method, but further validation is needed.
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页数:14
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