Prediction of Multiple Organ Failure Complicated by Moderately Severe or Severe Acute Pancreatitis Based on Machine Learning: A Multicenter Cohort Study

Author:

Xu Fumin1,Chen Xiao2,Li Chenwenya3,Liu Jing4,Qiu Qiu5,He Mi4,Xiao Jingjing6,Liu Zhihui7,Ji Bingjun8,Chen Dongfeng1ORCID,Liu Kaijun1ORCID

Affiliation:

1. Department of Gastroenterology, Daping Hospital, Army Medical University, Chongqing 400042, China

2. Department of Nuclear Medicine, Daping Hospital, Army Medical University, Chongqing 400042, China

3. School of Basic Medical Sciences, Army Medical University, Chongqing 400038, China

4. College of Biomedical Engineering and Imaging Medicine, Army Medical University, Chongqing 400038, China

5. Department of Gastroenterology, People’s Hospital of Chongqing Hechuan, Chongqing 401520, China

6. Department of Medical Engineering, Xinqiao Hospital, Army Medical University, Chongqing 400038, China

7. Radiotherapy Center, Sunshine Union Hospital, Weifang, Shandong 261061, China

8. Imaging Center, Sunshine Union Hospital, Weifang, 261061 Shandong, China

Abstract

Background. Multiple organ failure (MOF) may lead to an increased mortality rate of moderately severe (MSAP) or severe acute pancreatitis (SAP). This study is aimed to use machine learning to predict the risk of MOF in the course of disease. Methods. Clinical and laboratory features with significant differences between patients with and without MOF were screened out by univariate analysis. Prediction models were developed for selected features through six machine learning methods. The models were internally validated with a five-fold cross-validation, and a series of optimal feature subsets were generated in corresponding models. A test set was used to evaluate the predictive performance of the six models. Results. 305 (68%) of 455 patients with MSAP or SAP developed MOF. Eighteen features with significant differences between the group with MOF and without it in the training and validation set were used for modeling. Interleukin-6 levels, creatinine levels, and the kinetic time were the three most important features in the optimal feature subsets selected by K-fold cross-validation. The adaptive boosting algorithm (AdaBoost) showed the best predictive performance with the highest AUC value (0.826; 95% confidence interval: 0.740 to 0.888). The sensitivity of AdaBoost (80.49%) and specificity of logistic regression analysis (93.33%) were the best scores among the six models in the test set. Conclusions. A predictive model of MOF complicated by MSAP or SAP was successfully developed based on machine learning. The predictive performance was evaluated by a test set, for which AdaBoost showed a satisfactory predictive performance. The study is registered with the China Clinical Trial Registry (Identifier: ChiCTR1800016079).

Funder

Undergraduate Scientific Research Cultivation Project of Army Medical University

Publisher

Hindawi Limited

Subject

Cell Biology,Immunology

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