CT evaluation of extranodal extension of cervical lymph node metastases in patients with oral squamous cell carcinoma using deep learning classification

被引:63
作者
Ariji, Yoshiko [1 ]
Sugita, Yoshihiko [2 ]
Nagao, Toru [3 ]
Nakayama, Atsushi [4 ]
Fukuda, Motoki [1 ]
Kise, Yoshitaka [1 ]
Nozawa, Michihito [1 ]
Nishiyama, Masako [1 ]
Katumata, Akitoshi [5 ]
Ariji, Eiichiro [1 ]
机构
[1] Aichi Gakuin Univ, Sch Dent, Dept Oral & Maxillofacial Radiol, Chikusa Ku, 2-11 Suemori Dori, Nagoya, Aichi 4648651, Japan
[2] Aichi Gakuin Univ, Dept Oral Pathol, Sch Dent, Nagoya, Aichi, Japan
[3] Aichi Gakuin Univ, Dept Maxillofacial Surg, Sch Dent, Nagoya, Aichi, Japan
[4] Aichi Gakuin Univ, Dept Oral & Maxillofacial Surg, Sch Dent, Nagoya, Aichi, Japan
[5] Asahi Univ, Dept Oral Radiol, Sch Dent, Mizuho, Japan
关键词
Deep learning classification; Extranodal extension; Cervical lymph node metastasis; Oral squamous cell carcinoma; Computed tomography; EXTRACAPSULAR SPREAD; COMPUTED-TOMOGRAPHY; NEOPLASTIC SPREAD; NEURAL-NETWORK; NECK-CANCER; HEAD; ACCURACY; NECROSIS; GAME; GO;
D O I
10.1007/s11282-019-00391-4
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objective To clarify CT diagnostic performance in extranodal extension of cervical lymph node metastases using deep learning classification. Methods Seven-hundred and three CT images (178 with and 525 without extranodal extension) in 51 patients with cervical lymph node metastases from oral squamous cell carcinoma were enrolled in this study. CT images were cropped to an arbitrary size to include lymph nodes and surrounding tissues. All images were automatically divided into two datasets, assigning 80% as the training dataset and 20% as the testing dataset. The automated selection was repeated five times. Each training dataset was imported to a deep learning training system "DIGITS". Five learning models were created after 300 epochs of the learning process using a neural network "AlexNet". Each testing dataset was applied to each created learning model and resulting five performances were averaged as estimated diagnostic performances. A radiologist measured the minor axis and three radiologists evaluated central necrosis and irregular borders of each lymph node, and the diagnostic performances were obtained. Results The deep learning accuracy of extranodal extension was 84.0%. The radiologists' accuracies based on minor axis >= 11 mm, central necrosis, and irregular borders were 55.7%, 51.1% and 62.6%, respectively. Conclusions The deep learning diagnostic performance in extranodal extension was significantly higher than that of radiologists. This method is expected to improve diagnostic accuracy by further study with increasing the number of patients.
引用
收藏
页码:148 / 155
页数:8
相关论文
共 27 条
[1]   Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach [J].
Aerts, Hugo J. W. L. ;
Velazquez, Emmanuel Rios ;
Leijenaar, Ralph T. H. ;
Parmar, Chintan ;
Grossmann, Patrick ;
Cavalho, Sara ;
Bussink, Johan ;
Monshouwer, Rene ;
Haibe-Kains, Benjamin ;
Rietveld, Derek ;
Hoebers, Frank ;
Rietbergen, Michelle M. ;
Leemans, C. Rene ;
Dekker, Andre ;
Quackenbush, John ;
Gillies, Robert J. ;
Lambin, Philippe .
NATURE COMMUNICATIONS, 2014, 5
[2]   Accuracy of Preoperative Imaging in Detecting Nodal Extracapsular Spread in Oral Cavity Squamous Cell Carcinoma [J].
Aiken, A. H. ;
Poliashenko, S. ;
Beitler, J. J. ;
Chen, A. Y. ;
Baugnon, K. L. ;
Corey, A. S. ;
Magliocca, K. R. ;
Hudgins, P. A. .
AMERICAN JOURNAL OF NEURORADIOLOGY, 2015, 36 (09) :1776-1781
[3]  
Amin S, 2017, ASIA PACIF MICROWAVE, P57, DOI 10.1109/APMC.2017.8251376
[4]  
[Anonymous], 2014, Comput. Sci.
[5]   Contrast-enhanced computed tomography image assessment of cervical lymph node metastasis in patients with oral cancer by using a deep learning system of artificial intelligence [J].
Ariji, Yoshiko ;
Fukuda, Motoki ;
Kise, Yoshitaka ;
Nozawa, Michihito ;
Yanashita, Yudai ;
Fujita, Hiroshi ;
Katsumata, Akitoshi ;
Ariji, Eiichiro .
ORAL SURGERY ORAL MEDICINE ORAL PATHOLOGY ORAL RADIOLOGY, 2019, 127 (05) :458-463
[6]   Defining risk levels in locally advanced head and neck cancers:: A comparative analysis of concurrent postoperative radiation plus chemotherapy trials of the EORTC (#22931) and RTOG (#9501) [J].
Bernier, J ;
Cooper, JS ;
Pajak, TF ;
van Glabbeke, M ;
Bourhis, J ;
Forastiere, A ;
Ozsahin, EM ;
Jacobs, JR ;
Jassem, J ;
Ang, KK ;
Lefèbvre, JL .
HEAD AND NECK-JOURNAL FOR THE SCIENCES AND SPECIALTIES OF THE HEAD AND NECK, 2005, 27 (10) :843-850
[7]  
Carlton JA, 2017, NEURORADIOL J, V30, P222, DOI 10.1177/1971400917694048
[8]   Accuracy of Computed Tomography in the Prediction of Extracapsular Spread of Lymph Node Metastases in Squamous Cell Carcinoma of the Head and Neck [J].
Chai, Raymond L. ;
Rath, Tanya J. ;
Johnson, Jonas T. ;
Ferris, Robert L. ;
Kubicek, Gregory J. ;
Duvvuri, Umamaheswar ;
Branstetter, Barton F. .
JAMA OTOLARYNGOLOGY-HEAD & NECK SURGERY, 2013, 139 (11) :1187-1194
[9]   Residual Convolutional Neural Network for the Determination of IDH Status in Low- and High-Grade Gliomas from MR Imaging [J].
Chang, Ken ;
Bai, Harrison X. ;
Zhou, Hao ;
Su, Chang ;
Bi, Wenya Linda ;
Agbodza, Ena ;
Kavouridis, Vasileios K. ;
Senders, Joeky T. ;
Boaro, Alessandro ;
Beers, Andrew ;
Zhang, Biqi ;
Capellini, Alexandra ;
Liao, Weihua ;
Shen, Qin ;
Li, Xuejun ;
Xiao, Bo ;
Cryan, Jane ;
Ramkissoon, Shakti ;
Ramkissoon, Lori ;
Ligon, Keith ;
Wen, Patrick Y. ;
Bindra, Ranjit S. ;
Woo, John ;
Arnaout, Omar ;
Gerstner, Elizabeth R. ;
Zhang, Paul J. ;
Rosen, Bruce R. ;
Yang, Li ;
Huang, Raymond Y. ;
Kalpathy-Cramer, Jayashree .
CLINICAL CANCER RESEARCH, 2018, 24 (05) :1073-1081
[10]   Multi-column deep neural network for traffic sign classification [J].
Ciresan, Dan ;
Meier, Ueli ;
Masci, Jonathan ;
Schmidhuber, Juergen .
NEURAL NETWORKS, 2012, 32 :333-338