Deep Learning for Automated Segmentation of Liver Lesions at CT in Patients with Colorectal Cancer Liver Metastases

被引:75
作者
Vorontsov, Eugene [3 ,4 ]
Cerny, Milena [1 ,5 ]
Regnier, Philippe [5 ]
Di Jorio, Lisa [6 ]
Pal, Christopher J. [3 ,4 ]
Lapointe, Real [2 ]
Vandenbroucke-Menu, Franck [2 ]
Turcotte, Simon [2 ,5 ]
Kadoury, Samuel [4 ,5 ]
Tang, An [1 ,5 ]
机构
[1] Ctr Hosp Univ Montreal CHUM, Dept Radiol, 1000 Rue St Denis, Montreal, PQ H2X 0C2, Canada
[2] Ctr Hosp Univ Montreal CHUM, Dept Surg, Hepatopancreatobiliary & Liver Transplantat Div, 1000 Rue St Denis, Montreal, PQ H2X 0C2, Canada
[3] Montreal Inst Learning Algorithms MILA, Montreal, PQ, Canada
[4] Ecole Polytech, Montreal, PQ, Canada
[5] Ctr Rech Ctr Hosp Univ Montreal CRCHUM, Montreal, PQ, Canada
[6] Imagia Cybernet, Montreal, PQ, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
COMPUTED-TOMOGRAPHY; TUMOR SEGMENTATION; STATISTICS; RESECTION; SURVIVAL; MRI;
D O I
10.1148/ryai.2019180014
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Purpose: To evaluate the performance, agreement, and efficiency of a fully convolutional network (FCN) for liver lesion detection and segmentation at CT examinations in patients with colorectal liver metastases (CLMs). Materials and Methods: This retrospective study evaluated an automated method using an FCN that was trained, validated, and tested with 115, 15, and 26 contrast material-enhanced CT examinations containing 261, 22, and 105 lesions, respectively. Manual detection and segmentation by a radiologist was the reference standard. Performance of fully automated and user-corrected segmentations was compared with that of manual segmentations. The interuser agreement and interaction time of manual and user-corrected segmentations were assessed. Analyses included sensitivity and positive predictive value of detection, segmentation accuracy, Cohen kappa, Bland-Altman analyses, and analysis of variance. Results: In the test cohort, for lesion size smaller than 10 mm (n = 30), 10-20 mm (n = 35), and larger than 20 mm (n = 40), the detection sensitivity of the automated method was 10%, 71%, and 85%; positive predictive value was 25%, 83%, and 94%; Dice similarity coefficient was 0.14, 0.53, and 0.68; maximum symmetric surface distance was 5.2, 6.0, and 10.4 mm; and average symmetric surface distance was 2.7, 1.7, and 2.8 mm, respectively. For manual and user-corrected segmentation, k values were 0.42 (95% confidence interval: 0.24, 0.63) and 0.52 (95% confidence interval: 0.36, 0.72); normalized interreader agreement for lesion volume was -0.10 +/- 0.07 (95% confidence interval) and -0.10 +/- 0.08; and mean interaction time was 7.7 minutes +/- 2.4 (standard deviation) and 4.8 minutes +/- 2.1 (P <.001), respectively. Conclusion: Automated detection and segmentation of CLM by using deep learning with convolutional neural networks, when manually corrected, improved efficiency but did not substantially change agreement on volumetric measurements. (C) RSNA, 2019
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页数:10
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