1.Ultrasonic features of triple-negative breast cancer
Shichu TANG ; Zhiyuan WANG ; Tao OUYANG
Journal of Chinese Physician 2015;17(8):1197-1199
Objective To investigate the ultrasonic features of triple-negative breast cancer (TN-BC).Methods Ultrasonographic findings of 299 patients with pathologically confirmed breast cancer were analyzed retrospectively.Patients were divided into TNBC group (46 cases) and non-triple-negative breast cancer(NTNBC) group (253 cases) according to the expression of estrogen receptor (ER),progesterone receptor (PR),and human epidermal growth factor receptor 2 (HER2) that were determined with immunohistochemical staining.Each patient was ultrasonically analyzed.Results The ultrasonic images showed that TNBC group had a greater proportion in the mass with regular shape,clear boundary,or microlobulated relative to NTNBC group (P < 0.01).Calcification was significantly less in TNBC than NTNBC (P <0.01).Eight (17.3%)of 46 Cases of TNBC had BI-RADS sonographic features that favored the diagnosis of a benign condition.Conclusions Some of sonographic criteria for TNBC are more likely to be associated with benign lesions,ultrasound-guided biopsy should be recommended for such lesions.
2.Correlation between elastography score and strain rate ratio in breast small tumor
Zhiyuan WANG ; Tongming YANG ; Zehui WU ; Shichu TANG ; Xia LIANG ; Ang QIN ; Tao OUYANG ; Pengfei LIU ; Jun LIU
Journal of Central South University(Medical Sciences) 2010;35(9):928-932
Objective To explore the value of elastography score and strain rate ratio in the diagnosis of small breast malignant focus. Methods We retrospectively analyzed 22 patients with breast small malignant foci less than 10 mm. Ultrasound characteristics were summed up in breast small cancer. Results On elastogram, 2 patients scored 3, 14 scored 4 and 6 scored 5.The average strain rate ratio of all foci was 4.76, and there was correlation between it and elastography scores. Conclusion Ultrasonic elastography has important value in the diagnosis of breast small cancer.
3. Comparison of machine learning method and logistic regression model in prediction of acute kidney injury in severely burned patients
Chenqi TANG ; Junqiang LI ; Dayuan XU ; Xiaobin LIU ; Wenjia HOU ; Kaiyang LYU ; Shichu XIAO ; Zhaofan XIA
Chinese Journal of Burns 2018;34(6):343-348
Objective:
To build risk prediction models for acute kidney injury (AKI) in severely burned patients, and to compare the prediction performance of machine learning method and logistic regression model.
Methods:
The clinical data of 157 severely burned patients in August 2nd Kunshan factory aluminum dust explosion accident conforming to the inclusion criteria were collected. Patients suffering AKI within 90 days after admission were enrolled in group AKI, while the others were enrolled in non-AKI group. Single factor analysis was used to choose independent factors associated with AKI, including sex, age, admission time, features of basic injuries, initial score on admission, treatment condition, and mortality on post injury days 30, 60, and 90. Data were processed with Mann-Whitney