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- Title
Radiologists with MRI-based radiomics aids to predict the pelvic lymph node metastasis in endometrial cancer: a multicenter study.
- Authors
Yan, Bi Cong; Li, Ying; Ma, Feng Hua; Zhang, Guo Fu; Feng, Feng; Sun, Ming Hua; Lin, Guang Wu; Qiang, Jin Wei
- Abstract
<bold>Objective: </bold>To construct a MRI radiomics model and help radiologists to improve the assessments of pelvic lymph node metastasis (PLNM) in endometrial cancer (EC) preoperatively.<bold>Methods: </bold>During January 2014 and May 2019, 622 EC patients (age 56.6 ± 8.8 years; range 27-85 years) from five different centers (A to E) were divided into training set, validation set 1 (351 cases from center A), and validation set 2 (271 cases from centers B-E). The radiomics features were extracted basing on T2WI, DWI, ADC, and CE-T1WI images, and most related radiomics features were selected using the random forest classifier to build a radiomics model. The ROC curve was used to evaluate the performance of training set and validation sets, radiologists based on MRI findings alone, and with the aid of the radiomics model. The clinical decisive curve (CDC), net reclassification index (NRI), and total integrated discrimination index (IDI) were used to assess the clinical benefit of using the radiomics model.<bold>Results: </bold>The AUC values were 0.935 for the training set, 0.909 and 0.885 for validation sets 1 and 2, 0.623 and 0.643 for the radiologists 1 and 2 alone, and 0.814 and 0.842 for the radiomics-aided radiologists 1 and 2, respectively. The AUC, CDC, NRI, and IDI showed higher diagnostic performance and clinical net benefits for the radiomics-aided radiologists than for the radiologists alone.<bold>Conclusions: </bold>The MRI-based radiomics model could be used to assess the status of pelvic lymph node and help radiologists improve their performance in predicting PLNM in EC.<bold>Key Points: </bold>• A total of 358 radiomics features were extracted. The 37 most important features were selected using the random forest classifier. • The reclassification measures of discrimination confirmed that the radiomics-aided radiologists performed better than the radiologists alone, with an NRI of 1.26 and an IDI of 0.21 for radiologist 1 and an NRI of 1.37 and an IDI of 0.24 for radiologist 2.
- Subjects
LYMPHATIC metastasis; ENDOMETRIAL cancer; RADIOLOGISTS; METASTASIS; RANDOM forest algorithms; RESEARCH; RESEARCH methodology; LYMPH nodes; RETROSPECTIVE studies; MAGNETIC resonance imaging; MEDICAL cooperation; EVALUATION research; COMPARATIVE studies; ENDOMETRIAL tumors
- Publication
European Radiology, 2021, Vol 31, Issue 1, p411
- ISSN
0938-7994
- Publication type
journal article
- DOI
10.1007/s00330-020-07099-8