Yongqiao Xiao
Thomas Jefferson University Hospital
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Publication
Featured researches published by Yongqiao Xiao.
Medical Physics | 2015
Y Gong; J. Yu; V Yeung; J Palmer; Yan Yu; B Lu; L Babinsky; R Burkhart; B Leiby; V Siow; Harish Lavu; Ernest L. Rosato; Jordan M. Winter; Nancy L. Lewis; Ashwin Reddy Sama; Edith P. Mitchell; P.R. Anne; M Hurwitz; Charles J. Yeo; Voichita Bar-Ad; Yongqiao Xiao
Purpose: Artificial neural networks (ANN) can be used to discover complex relations within datasets to help with medical decision making. This study aimed to develop an ANN method to predict two-year overall survival of patients with peri-ampullary cancer (PAC) following resection. Methods: Data were collected from 334 patients with PAC following resection treated in our institutional pancreatic tumor registry between 2006 and 2012. The dataset contains 14 variables including age, gender, T-stage, tumor differentiation, positive-lymph-node ratio, positive resection margins, chemotherapy, radiation therapy, and tumor histology.After censoring for two-year survival analysis, 309 patients were left, of which 44 patients (∼15%) were randomly selected to form testing set. The remaining 265 cases were randomly divided into training set (211 cases, ∼80% of 265) and validation set (54 cases, ∼20% of 265) for 20 times to build 20 ANN models. Each ANN has one hidden layer with 5 units. The 20 ANN models were ranked according to their concordance index (c-index) of prediction on validation sets. To further improve prediction, the top 10% of ANN models were selected, and their outputs averaged for prediction on testing set. Results: By random division, 44 cases in testing set and the remaining 265 cases have approximately equal two-year survival rates, 36.4% and 35.5% respectively. The 20 ANN models, which were trained and validated on the 265 cases, yielded mean c-indexes as 0.59 and 0.63 on validation sets and the testing set, respectively. C-index was 0.72 when the two best ANN models (top 10%) were used in prediction on testing set. The c-index of Cox regression analysis was 0.63. Conclusion: ANN improved survival prediction for patients with PAC. More patient data and further analysis of additional factors may be needed for a more robust model, which will help guide physicians in providing optimal post-operative care. This project was supported by PA CURE Grant.
International Journal of Radiation Oncology Biology Physics | 2012
J Xie; J. Cao; W. Chen; Yunfeng Cui; James M. Galvin; Yan Yu; Yongqiao Xiao
International Journal of Radiation Oncology Biology Physics | 2014
Y Gong; Elizabeth Gore; Voichita Bar-Ad; M. Wheatley; F.P. Kong; J. Yu; T. Giaddui; W. Chen; Chen Hu; Rebecca Paulus; Yongqiao Xiao; Jeffrey D. Bradley
Medical Physics | 2015
Y Gong; J. Yu; Yongqiao Xiao
International Journal of Radiation Oncology Biology Physics | 2014
J. Yu; Voichita Bar-Ad; Y Gong; T. Giaddui; W. Chen; Chen Hu; James M. Galvin; Elizabeth Gore; M. Wheatley; F.P. Kong; Jeffrey D. Bradley; Yongqiao Xiao
International Journal of Radiation Oncology Biology Physics | 2013
A. Scheenstra; I.S. Grills; Andrew Hope; M. Guckenberg; Maria Werner-Wasik; J. Bissonnette; Yongqiao Xiao; Dong-Chun Yan; J. Belderbos; J.J. Sonke
International Journal of Radiation Oncology Biology Physics | 2012
Maria Werner-Wasik; J. Belderbos; Andrew Hope; M. Guckenberger; L. Kestin; Dong-Chun Yan; J.J. Sonke; J. Bissonette; Yongqiao Xiao; I. Siiner Grills
The Bodine Journal | 2010
Nitin Ohri; Yongqiao Xiao; Maria Werner-Wasik
Fuel and Energy Abstracts | 2010
I.S. Grills; Andrew Hope; M. Guckenberger; Larry L. Kestin; Maria Werner-Wasik; Dong-Chun Yan; J.J. Sonke; J. P. Bissonnette; Yongqiao Xiao; J. Belderbos
Fuel and Energy Abstracts | 2010
Larry L. Kestin; I.S. Grills; M. Guckenberger; J. Belderbos; Andrew Hope; Maria Werner-Wasik; J.J. Sonke; J. P. Bissonnette; Yongqiao Xiao; Dong-Chun Yan