MDCT-Based Radiomics Features for the Differentiation of Serous Borderline Ovarian Tumors and Serous Malignant Ovarian Tumors. 2021

Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
Department of Gynecology, The Affiliated Hospital of Qingdao University, Qingdao, Shandong Province, People's Republic of China.

OBJECTIVE To investigate whether multidetector computed tomography (MDCT)-based radiomics features can discriminate between serous borderline ovarian tumors (SBOTs) and serous malignant ovarian tumors (SMOTs). METHODS Eighty patients with SBOTs and 102 patients with SMOTs, confirmed by pathology (training set: n = 127; validation set: n = 55) from December 2017 to June 2020, were enrolled in this study. The interclass correlation coefficient (ICC) and least absolute shrinkage and selection operator (LASSO) regression were applied to select radiomics parameters derived from MDCT images on the arterial phase (AP), venous phase (VP), and equilibrium phase (EP). Receiver operating characteristic (ROC) analysis of each selected parameter was carried out. Heat maps were created to illustrate the distribution of the radiomics parameters. Three models incorporating selected radiomics parameters generated by support vector machine (SVM) classifiers in each phase were analyzed by ROC and compared using the DeLong test. RESULTS The most predictive features selected by ICC and LASSO regression between SBOTs and SMOTs included 9 radiomics parameters on AP, VP, and EP each. Three models on AP, VP, and EP incorporating the selected features generated by SVM classifiers produced AUCs of 0.80 (accuracy, 0.75; sensitivity, 0.74; specificity, 0.75), 0.86 (accuracy, 0.78; sensitivity, 0.80; specificity, 0.75), and 0.73 (accuracy, 0.69; sensitivity, 0.71; specificity, 0.67), respectively. There were no significant differences in the AUCs among the three models (AP vs. VP, P = 0.199; AP vs. EP, P = 0.260; VP vs. EP, P = 0.793). CONCLUSIONS MDCT-based radiomics features could be used as biomarkers for the differentiation of SBOTs and SMOTs.

UI MeSH Term Description Entries

Related Publications

Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
January 1985, Zentralblatt fur Gynakologie,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
April 1986, Obstetrics and gynecology,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
February 2024, Journal of imaging informatics in medicine,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
November 1988, Cancer,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
December 2006, Zhonghua bing li xue za zhi = Chinese journal of pathology,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
January 1989, Arkhiv patologii,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
April 2018, AJR. American journal of roentgenology,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
July 1994, International journal of gynecological pathology : official journal of the International Society of Gynecological Pathologists,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
August 2004, Human pathology,
Xin-Ping Yu, and Lei Wang, and Hai-Yang Yu, and Yu-Wei Zou, and Chang Wang, and Jin-Wen Jiao, and Hao Hong, and Shuai Zhang
May 2000, Human pathology,
Copied contents to your clipboard!