作者
Pao-Jen Kuo, Shao-Chun Wu, Peng-Chen Chien, Shu-Shya Chang, Cheng-Shyuan Rau, Hsueh-Ling Tai, Shu-Hui Peng, Yi-Chun Lin, Yi-Chun Chen, Hsiao-Yun Hsieh, Ching-Hua Hsieh
发表日期
2018/3/3
期刊
Oncotarget
卷号
9
期号
17
页码范围
13768
出版商
Impact Journals, LLC
简介
Background
The aim of this study was to develop an effective surgical site infection (SSI) prediction model in patients receiving free-flap reconstruction after surgery for head and neck cancer using artificial neural network (ANN), and to compare its predictive power with that of conventional logistic regression (LR).
Materials and methods
There were 1,836 patients with 1,854 free-flap reconstructions and 438 postoperative SSIs in the dataset for analysis. They were randomly assigned tin ratio of 7: 3 into a training set and a test set. Based on comprehensive characteristics of patients and diseases in the absence or presence of operative data, prediction of SSI was performed at two time points (pre-operatively and post-operatively) with a feed-forward ANN and the LR models. In addition to the calculated accuracy, sensitivity, and specificity, the predictive performance of ANN and LR were assessed based on area under …
引用总数
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