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Navadgi S, Chang C C, Bartlett A, et al. Systematic review and meta-analysis of outcomes after liver resection in patients with hepatocellular carcinoma (HCC) with and without bile duct thrombus. HPB, 2016, 18 (4): 312–316. doi: 10.1016/j.hpb.2015.12.003
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[2] |
Lu W, Tang H, Yang Z, et al. A proposed modification for the Barcelona clinic liver cancer staging system: Adding bile duct tumor thrombus status in patients with hepatocellular carcinoma. The American Journal of Surgery, 2020, 220 (4): 965–971. doi: 10.1016/j.amjsurg.2020.04.003
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[3] |
Meng K W, Dong M, Zhang W G, et al. Clinical characteristics and surgical prognosis of hepatocellular carcinoma with bile duct invasion. Gastroenterology Research and Practice, 2014, 2014: 604971. doi: 10.1155/2014/604971
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[4] |
Wang D D, Wu L Q, Wang Z S. Prognosis of hepatocellular carcinoma with bile duct tumor thrombus after R0 resection: A matched study. Hepatobiliary & Pancreatic Diseases International, 2016, 15 (6): 626–632. doi: 10.1016/S1499-3872(16)60143-1
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[5] |
Wang C, Yang Y, Sun D, et al. Prognosis of hepatocellular carcinoma patients with bile duct tumor thrombus after hepatic resection or liver transplantation in Asian populations: A meta-analysis. PLoS One, 2017, 12 (5): e0176827. doi: 10.1371/journal.pone.0176827
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[6] |
Shao W, Sui C, Liu Z, et al. Surgical outcome of hepatocellular carcinoma patients with biliary tumor thrombi. World Journal of Surgical Oncology, 2011, 9: 2. doi: 10.1186/1477-7819-9-2
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[7] |
Rammohan A, Sathyanesan J, Rajendran K, et al. Bile duct thrombi in hepatocellular carcinoma: Is aggressive surgery worthwhile? HPB, 2015, 17 (6): 508–513. doi: 10.1111/hpb.12383
|
[8] |
Shiomi M, Kamiya J, Nagino M, et al. Hepatocellular carcinoma with biliary tumor thrombi: Aggressive operative approach after appropriate preoperative management. Surgery, 2001, 129 (6): 692–698. doi: 10.1067/msy.2001.113889
|
[9] |
Zhou X, Wang J, Tang M, et al. Hepatocellular carcinoma with hilar bile duct tumor thrombus versus hilar Cholangiocarcinoma on enhanced computed tomography: A diagnostic challenge. BMC Cancer, 2020, 20 (1): 54. doi: 10.1186/s12885-020-6539-7
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[10] |
Liu Q Y, Zhang W D, Chen J Y, et al. Hepatocellular carcinoma with bile duct tumor thrombus: Dynamic computed tomography findings and histopathologic correlation. Journal of Computer Assisted Tomography, 2011, 35: 187–194. doi: 10.1097/RCT.0b013e3182067f2e
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[11] |
Zeng H, Xu L, Wen J, et al. Hepatocellular carcinoma with bile duct tumor thrombus: a clinicopathological analysis of factors predictive of recurrence and outcome after surgery. Medicine, 2015, 94 (1): e364. doi: 10.1097/MD.0000000000000364
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[12] |
Liu Q, Chen J, Li H, et al. Hepatocellular carcinoma with bile duct tumor thrombi: Correlation of magnetic resonance imaging features to histopathologic manifestations. European Journal of Radiology, 2010, 76 (1): 103–109. doi: 10.1016/j.ejrad.2009.05.020
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Liu Q Y, Huang S Q, Chen J Y, et al. Small hepatocellular carcinoma with bile duct tumor thrombi: CT and MRI findings. Abdominal Imaging, 2010, 35 (5): 537–542. doi: 10.1007/s00261-009-9571-2
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[14] |
Wu J Y, Huang L M, Bai Y N, et al. Imaging features of hepatocellular carcinoma with bile duct tumor thrombus: A multicenter study. Frontiers in Oncology, 2021, 11: 723455. doi: 10.3389/fonc.2021.723455
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Yue-Hei Ng J, Hausknecht M, Vijayanarasimhan S, et al. Beyond short snippets: Deep networks for video classification. In: 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Boston, USA: IEEE, 2015: 4694–4702.
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Long J, Shelhamer E, Darrell T. Fully convolutional networks for semantic segmentation. In: 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Boston, USA: IEEE, 2015: 3431–3440.
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Goodfellow I, Pouget-Abadie J, Mirza M, et al. Generative adversarial networks. Communications of the ACM, 2020, 63 (11): 139–144. doi: 10.1145/3422622
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Kingma D P, Welling M. Auto-encoding variational Bayes. 2013. https://arxiv.org/abs/1312.6114 . Accessed February 1, 2022
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Pranata Y D, Wang K C, Wang J C, et al. Deep learning and SURF for automated classification and detection of calcaneus fractures in CT images. Computer Methods and Programs in Biomedicine, 2019, 171: 27–37. doi: 10.1016/j.cmpb.2019.02.006
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Li W, Jia F, Hu Q. Automatic segmentation of liver tumor in CT images with deep convolutional neural networks. Journal of Computer and Communications, 2015, 3 (11): 146–151. doi: 10.4236/jcc.2015.311023
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[21] |
Basu S, Wagstyl K, Zandifar A, et al. Early prediction of alzheimer’s disease progression using variational autoencoders. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2019. Cham: Springer, 2019: 205–213.
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[22] |
Zhang R, Tan S, Wang R, et al. Biomarker localization by combining CNN classifier and generative adversarial network. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2019. Switzerland: Springer, Cham, 2019: 209–217.
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[23] |
Ronneberger O, Fischer P, Brox T. U-net: Convolutional networks for biomedical image segmentation. In: Navab N, Hornegger J, Wells W, editors. Medical Image Computing and Computer-Assisted Intervention—MICCAI 2015. Switzerland: Springer, Cham, 2015: 234–241.
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[24] |
Vorontsov E, Tang A, Pal C, et al. Liver lesion segmentation informed by joint liver segmentation. In: 15th International Symposium on Biomedical Imaging (ISBI 2018). Washington, USA: IEEE, 2018: 1332–1335.
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Christ P F, Ettlinger F, Grün F, et al. Automatic liver and tumor segmentation of CT and MRI volumes using cascaded fully convolutional neural networks. 2017. https://arxiv.org/abs/1702.05970. Accessed January 12, 2022.
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[26] |
Alirr O I. Deep learning and level set approach for liver and tumor segmentation from CT scans. Journal of Applied Clinical Medical Physics, 2020, 21 (10): 200–209. doi: 10.1002/acm2.13003
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[27] |
Ren S, He K, Girshick R, et al. Faster R-CNN: Towards real-time object detection with region proposal networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2017, 39 (6): 1137–1149. doi: 10.1109/TPAMI.2016.2577031
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[28] |
Yang Z, Liu S, Hu H, et al. RepPoints: Point set representation for object detection. In: 2019 IEEE/CVF International Conference on Computer Vision (ICCV). Seoul, South Korea: IEEE, 2020: 9656–9665.
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[29] |
Kong T, Sun F, Liu H, et al. FoveaBox: Beyound anchor-based object detection. IEEE Transactions on Image Processing, 2020, 29: 7389–7398. doi: 10.1109/TIP.2020.3002345
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[30] |
Thian Y L, Li Y, Jagmohan P, et al. Convolutional neural networks for automated fracture detection and localization on wrist radiographs. Radiology: Artificial Intelligence, 2019, 1: e180001. doi: 10.1148/ryai.2019180001
|
[31] |
Olczak J, Fahlberg N, Maki A, et al. Artificial intelligence for analyzing orthopedic trauma radiographs: deep learning algorithms—Are they on par with humans for diagnosing fractures? Acta Orthopaedica, 2017, 88 (6): 581–586. doi: 10.1080/17453674.2017.1344459
|
[32] |
Kim D H, MacKinnon T. Artificial intelligence in fracture detection: transfer learning from deep convolutional neural networks. Clinical Radiology, 2018, 73 (5): 439–445. doi: 10.1016/j.crad.2017.11.015
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[33] |
Boot T, Irshad H. Diagnostic assessment of deep learning algorithms for detection and segmentation of lesion in mammographic images. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2020. Cham: Springer, 2020: 56–65.
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[34] |
Ho D, Imai K, King G, et al. Matchit: Nonparametric preprocessing for parametric causal inference. Journal of Statistical Software, 2011, 42 (8): 1–28. doi: 10.18637/jss.v042.i08
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Robin X, Turck N, Hainard A, et al. pROC: An open-source package for R and S+ to analyze and compare ROC curves. BMC Bioinformatics, 2011, 12 (1): 77. doi: 10.1186/1471-2105-12-77
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Tzutalin. Labelimg. 2015. https://github.com/tzutalin/labelImg. Accessed March 20, 2022.
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Liu W, Anguelov D, Erhan D, et al. SSD: Single shot multibox detector. In: Leibe B, Matas J, Sebe N, editors. Computer Vision–ECCV 2016. Cham: Springer, 2016: 21–37.
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Zhang S, Chi C, Yao Y, et al. Bridging the gap between anchor-based and anchor-free detection via adaptive training sample selection. In: 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Seattle, USA: IEEE, 2020: 9756–9765.
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He K, Zhang X, Ren S, et al. Deep residual learning for image recognition. In: 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Las Vegas, USA: IEEE, 2016: 770–778.
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Lin T Y, Dollár P, Girshick R, et al. Feature pyramid networks for object detection. In: 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Honolulu, USA: IEEE, 2017: 936–944.
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Pang J, Chen K, Shi J, et al. Libra R-CNN: Towards balanced learning for object detection. In: 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Long Beach, USA: IEEE, 2019: 821–830.
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Breiman L. Random forests. Machine Learning, 2001, 45: 5–32. doi: 10.1023/A:1010933404324
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Figure 2. The proposed AI pipeline for diagnosing BDTT. First, CT images in the portal venous phase with tumors were selected, then the selected images were center-cropped and resized to a unified size. After filtering and preprocessing, the trained DBD detector was applied to identify DBDs on the resulting images. Finally, a patient was diagnosed as HCC with BDTT if the image-level positive proportion (I-PP) was greater than the optimal threshold.
Figure 4. Flow chart of Faster R-CNN. The pre-processed CT images were first transformed via DAM, then CNN backbone extracted multiscale feature maps from the transformed image. Based on the extracted features, at the first stage, RPN output proposal regions which tend to contain DBDs, then at the second stage, R-CNN further classified the proposal regions and refined their coordinates as the final outputs.
Figure 5. Several examples of successfully detected DBDs: (a)–(d) were the ground truth annotations of CT images of four different HCC patients with BDTT (tumors were marked in ellipses and DBDs caused by BDTT were marked in rectangles); (a')–(d') were the corresponding bounding boxes output by Faster R-CNN.
Figure 6. Box plots of image-level positive proportions (I-PPs) for the case group and the matched control group. I-PPs were calculated from the output results of the three different detectors, respectively, and the P-values for difference comparison were calculated by the Wilcoxon Mann-Whitney test.
Figure 7. ROC curves of the proposed AI pipeline with Faster R-CNN (solid line), Reppoints (longdash line), Foveabox (dotdash line), and random forest (dotted line). The corresponding AUCs were 0.94, 0.92, 0.89, and 0.71, respectively. The corresponding sensitivities corresponding to the optimal threshold values were 0.81, 0.75, 0.88, and 0.69, respectively. The corresponding specificities corresponding to the optimal threshold values were 1.00, 0.94, 0.88, and 0.75, respectively.
Figure 8. The first row shows two samples of undetected DBDs: (al) tiny DBD and (a2) inconspicuous DBD. The second row shows three types of dominant false positive bounding boxes: (b1) DBD-like liver tumor region and (b2) gap between liver and other tissues, (b3) irrelevant structures outside the liver region
[1] |
Navadgi S, Chang C C, Bartlett A, et al. Systematic review and meta-analysis of outcomes after liver resection in patients with hepatocellular carcinoma (HCC) with and without bile duct thrombus. HPB, 2016, 18 (4): 312–316. doi: 10.1016/j.hpb.2015.12.003
|
[2] |
Lu W, Tang H, Yang Z, et al. A proposed modification for the Barcelona clinic liver cancer staging system: Adding bile duct tumor thrombus status in patients with hepatocellular carcinoma. The American Journal of Surgery, 2020, 220 (4): 965–971. doi: 10.1016/j.amjsurg.2020.04.003
|
[3] |
Meng K W, Dong M, Zhang W G, et al. Clinical characteristics and surgical prognosis of hepatocellular carcinoma with bile duct invasion. Gastroenterology Research and Practice, 2014, 2014: 604971. doi: 10.1155/2014/604971
|
[4] |
Wang D D, Wu L Q, Wang Z S. Prognosis of hepatocellular carcinoma with bile duct tumor thrombus after R0 resection: A matched study. Hepatobiliary & Pancreatic Diseases International, 2016, 15 (6): 626–632. doi: 10.1016/S1499-3872(16)60143-1
|
[5] |
Wang C, Yang Y, Sun D, et al. Prognosis of hepatocellular carcinoma patients with bile duct tumor thrombus after hepatic resection or liver transplantation in Asian populations: A meta-analysis. PLoS One, 2017, 12 (5): e0176827. doi: 10.1371/journal.pone.0176827
|
[6] |
Shao W, Sui C, Liu Z, et al. Surgical outcome of hepatocellular carcinoma patients with biliary tumor thrombi. World Journal of Surgical Oncology, 2011, 9: 2. doi: 10.1186/1477-7819-9-2
|
[7] |
Rammohan A, Sathyanesan J, Rajendran K, et al. Bile duct thrombi in hepatocellular carcinoma: Is aggressive surgery worthwhile? HPB, 2015, 17 (6): 508–513. doi: 10.1111/hpb.12383
|
[8] |
Shiomi M, Kamiya J, Nagino M, et al. Hepatocellular carcinoma with biliary tumor thrombi: Aggressive operative approach after appropriate preoperative management. Surgery, 2001, 129 (6): 692–698. doi: 10.1067/msy.2001.113889
|
[9] |
Zhou X, Wang J, Tang M, et al. Hepatocellular carcinoma with hilar bile duct tumor thrombus versus hilar Cholangiocarcinoma on enhanced computed tomography: A diagnostic challenge. BMC Cancer, 2020, 20 (1): 54. doi: 10.1186/s12885-020-6539-7
|
[10] |
Liu Q Y, Zhang W D, Chen J Y, et al. Hepatocellular carcinoma with bile duct tumor thrombus: Dynamic computed tomography findings and histopathologic correlation. Journal of Computer Assisted Tomography, 2011, 35: 187–194. doi: 10.1097/RCT.0b013e3182067f2e
|
[11] |
Zeng H, Xu L, Wen J, et al. Hepatocellular carcinoma with bile duct tumor thrombus: a clinicopathological analysis of factors predictive of recurrence and outcome after surgery. Medicine, 2015, 94 (1): e364. doi: 10.1097/MD.0000000000000364
|
[12] |
Liu Q, Chen J, Li H, et al. Hepatocellular carcinoma with bile duct tumor thrombi: Correlation of magnetic resonance imaging features to histopathologic manifestations. European Journal of Radiology, 2010, 76 (1): 103–109. doi: 10.1016/j.ejrad.2009.05.020
|
[13] |
Liu Q Y, Huang S Q, Chen J Y, et al. Small hepatocellular carcinoma with bile duct tumor thrombi: CT and MRI findings. Abdominal Imaging, 2010, 35 (5): 537–542. doi: 10.1007/s00261-009-9571-2
|
[14] |
Wu J Y, Huang L M, Bai Y N, et al. Imaging features of hepatocellular carcinoma with bile duct tumor thrombus: A multicenter study. Frontiers in Oncology, 2021, 11: 723455. doi: 10.3389/fonc.2021.723455
|
[15] |
Yue-Hei Ng J, Hausknecht M, Vijayanarasimhan S, et al. Beyond short snippets: Deep networks for video classification. In: 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Boston, USA: IEEE, 2015: 4694–4702.
|
[16] |
Long J, Shelhamer E, Darrell T. Fully convolutional networks for semantic segmentation. In: 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Boston, USA: IEEE, 2015: 3431–3440.
|
[17] |
Goodfellow I, Pouget-Abadie J, Mirza M, et al. Generative adversarial networks. Communications of the ACM, 2020, 63 (11): 139–144. doi: 10.1145/3422622
|
[18] |
Kingma D P, Welling M. Auto-encoding variational Bayes. 2013. https://arxiv.org/abs/1312.6114 . Accessed February 1, 2022
|
[19] |
Pranata Y D, Wang K C, Wang J C, et al. Deep learning and SURF for automated classification and detection of calcaneus fractures in CT images. Computer Methods and Programs in Biomedicine, 2019, 171: 27–37. doi: 10.1016/j.cmpb.2019.02.006
|
[20] |
Li W, Jia F, Hu Q. Automatic segmentation of liver tumor in CT images with deep convolutional neural networks. Journal of Computer and Communications, 2015, 3 (11): 146–151. doi: 10.4236/jcc.2015.311023
|
[21] |
Basu S, Wagstyl K, Zandifar A, et al. Early prediction of alzheimer’s disease progression using variational autoencoders. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2019. Cham: Springer, 2019: 205–213.
|
[22] |
Zhang R, Tan S, Wang R, et al. Biomarker localization by combining CNN classifier and generative adversarial network. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2019. Switzerland: Springer, Cham, 2019: 209–217.
|
[23] |
Ronneberger O, Fischer P, Brox T. U-net: Convolutional networks for biomedical image segmentation. In: Navab N, Hornegger J, Wells W, editors. Medical Image Computing and Computer-Assisted Intervention—MICCAI 2015. Switzerland: Springer, Cham, 2015: 234–241.
|
[24] |
Vorontsov E, Tang A, Pal C, et al. Liver lesion segmentation informed by joint liver segmentation. In: 15th International Symposium on Biomedical Imaging (ISBI 2018). Washington, USA: IEEE, 2018: 1332–1335.
|
[25] |
Christ P F, Ettlinger F, Grün F, et al. Automatic liver and tumor segmentation of CT and MRI volumes using cascaded fully convolutional neural networks. 2017. https://arxiv.org/abs/1702.05970. Accessed January 12, 2022.
|
[26] |
Alirr O I. Deep learning and level set approach for liver and tumor segmentation from CT scans. Journal of Applied Clinical Medical Physics, 2020, 21 (10): 200–209. doi: 10.1002/acm2.13003
|
[27] |
Ren S, He K, Girshick R, et al. Faster R-CNN: Towards real-time object detection with region proposal networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2017, 39 (6): 1137–1149. doi: 10.1109/TPAMI.2016.2577031
|
[28] |
Yang Z, Liu S, Hu H, et al. RepPoints: Point set representation for object detection. In: 2019 IEEE/CVF International Conference on Computer Vision (ICCV). Seoul, South Korea: IEEE, 2020: 9656–9665.
|
[29] |
Kong T, Sun F, Liu H, et al. FoveaBox: Beyound anchor-based object detection. IEEE Transactions on Image Processing, 2020, 29: 7389–7398. doi: 10.1109/TIP.2020.3002345
|
[30] |
Thian Y L, Li Y, Jagmohan P, et al. Convolutional neural networks for automated fracture detection and localization on wrist radiographs. Radiology: Artificial Intelligence, 2019, 1: e180001. doi: 10.1148/ryai.2019180001
|
[31] |
Olczak J, Fahlberg N, Maki A, et al. Artificial intelligence for analyzing orthopedic trauma radiographs: deep learning algorithms—Are they on par with humans for diagnosing fractures? Acta Orthopaedica, 2017, 88 (6): 581–586. doi: 10.1080/17453674.2017.1344459
|
[32] |
Kim D H, MacKinnon T. Artificial intelligence in fracture detection: transfer learning from deep convolutional neural networks. Clinical Radiology, 2018, 73 (5): 439–445. doi: 10.1016/j.crad.2017.11.015
|
[33] |
Boot T, Irshad H. Diagnostic assessment of deep learning algorithms for detection and segmentation of lesion in mammographic images. In: Medical Image Computing and Computer Assisted Intervention—MICCAI 2020. Cham: Springer, 2020: 56–65.
|
[34] |
Ho D, Imai K, King G, et al. Matchit: Nonparametric preprocessing for parametric causal inference. Journal of Statistical Software, 2011, 42 (8): 1–28. doi: 10.18637/jss.v042.i08
|
[35] |
Robin X, Turck N, Hainard A, et al. pROC: An open-source package for R and S+ to analyze and compare ROC curves. BMC Bioinformatics, 2011, 12 (1): 77. doi: 10.1186/1471-2105-12-77
|
[36] |
Development CoreR Team. R: A Language and Environment for Statistical Computing. Vienna, Austria, 2013.
|
[37] |
Tzutalin. Labelimg. 2015. https://github.com/tzutalin/labelImg. Accessed March 20, 2022.
|
[38] |
Redmon J, Divvala S, Girshick R, et al. You only look once: Unified, real-time object detection. In: 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Las Vegas, USA: IEEE, 2016: 779–788.
|
[39] |
Liu W, Anguelov D, Erhan D, et al. SSD: Single shot multibox detector. In: Leibe B, Matas J, Sebe N, editors. Computer Vision–ECCV 2016. Cham: Springer, 2016: 21–37.
|
[40] |
Zhang S, Chi C, Yao Y, et al. Bridging the gap between anchor-based and anchor-free detection via adaptive training sample selection. In: 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Seattle, USA: IEEE, 2020: 9756–9765.
|
[41] |
Lin T Y, Maire M, Belongie S, et al. Microsoft COCO: Common objects in context. In: Fleet D, Pajdla T, Schiele B, editors. Computer Vision–ECCV 2014. Cham: Springer, 2014: 740–755.
|
[42] |
He K, Zhang X, Ren S, et al. Deep residual learning for image recognition. In: 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Las Vegas, USA: IEEE, 2016: 770–778.
|
[43] |
Lin T Y, Dollár P, Girshick R, et al. Feature pyramid networks for object detection. In: 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Honolulu, USA: IEEE, 2017: 936–944.
|
[44] |
Pang J, Chen K, Shi J, et al. Libra R-CNN: Towards balanced learning for object detection. In: 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Long Beach, USA: IEEE, 2019: 821–830.
|
[45] |
Liu S, Qi L, Qin H, et al. Path aggregation network for instance segmentation. In: 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition. Salt Lake City, USA: IEEE, 2018: 8759–8768.
|
[46] |
Breiman L. Random forests. Machine Learning, 2001, 45: 5–32. doi: 10.1023/A:1010933404324
|