Computed tomography-based radiomic model at node level for the prediction of normal-sized lymph node metastasis in cervical cancer

•The metastatic status of lymph nodes in cervical cancer patients can be predicted.•Computed tomography-based radiomic model can identify the status of the normal-sized lymph node singly.•The model may help doctors to make staging and clinical decision, and realize individualized treatment. Radiomic...

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Veröffentlicht in:Translational oncology 2021-08, Vol.14 (8), p.101113-101113, Article 101113
Hauptverfasser: Liu, Yujia, Fan, Huijian, Dong, Di, Liu, Ping, He, Bingxi, Meng, Lingwei, Chen, Jiaming, Chen, Chunlin, Lang, Jinghe, Tian, Jie
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Sprache:eng
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Zusammenfassung:•The metastatic status of lymph nodes in cervical cancer patients can be predicted.•Computed tomography-based radiomic model can identify the status of the normal-sized lymph node singly.•The model may help doctors to make staging and clinical decision, and realize individualized treatment. Radiomic models have been demonstrated to have acceptable discrimination capability for detecting lymph node metastasis (LNM). We aimed to develop a computed tomography–based radiomic model and validate its usefulness in the prediction of normal-sized LNM at node level in cervical cancer. A total of 273 LNs of 219 patients from 10 centers were evaluated in this study. We randomly divided the LNs from the 2 centers with the largest number of LNs into the training and internal validation cohorts, and the rest as the external validation cohort. Radiomic features were extracted from the arterial and venous phase images. We trained an artificial neural network (ANN) to develop two single-phase models. A radiomic model reflecting the features of two-phase images was also built for directly predicting LNM in cervical cancer. Moreover, four state-of-the-art methods were used for comparison. The performance of all models was assessed using the area under the receiver operating characteristic curve (AUC). Among the models we built, the models combining the features of two phases surpassed the single-phase models, and the models generated by ANN had better performance than the others. We found that the radiomic model achieved the highest AUCs of 0.912 and 0.859 in the training and internal validation cohorts, respectively. In the external validation cohort, the AUC of the radiomic model was 0.800. We constructed a radiomic model that exhibited great ability in the prediction of LNM. The application of the model could optimize clinical staging and decision-making.
ISSN:1936-5233
1936-5233
DOI:10.1016/j.tranon.2021.101113