Literature DB >> 27390221

An Effective Machine Learning Approach for Prognosis of Paraquat Poisoning Patients Using Blood Routine Indexes.

Huiling Chen1, Lufeng Hu2, Huaizhong Li3, Guangliang Hong4, Tao Zhang4,5, Jianshe Ma6, Zhongqiu Lu4.   

Abstract

The early identification of toxic paraquat (PQ) poisoning in patients is critical to ensure timely and accurate prognosis. Although plasma PQ concentration has been reported as a clinical indicator of PQ poisoning, it is not commonly applied in practice due to the inconvenient necessary instruments and operation. In this study, we explored the use of blood routine indexes to identify the degree of PQ toxicity and/or diagnose PQ poisoning in patients via machine learning approach. Specifically, we developed a method based on support vector machine combined with the feature selection technique to accurately predict PQ poisoning risk status, then tested the method on 79 (42 male and 37 female; 41 living and 38 deceased) patients. The detection method was rigorously evaluated against a real-world data set to determine its accuracy, sensitivity and specificity. Feature selection was also applied to identify the factors correlated with risk status, and the results showed that there are significant differences in blood routine indexes between dead and living PQ-poisoned individuals (p-value < 0.01). Feature selection also showed that the most important correlated indexes are white blood cell and neutrophils. In conclusion, the toxicity or prognosis of PQ poisoning can be preliminarily ascertained by blood routine testing without PQ concentration data, representing an additional tool and innovative approach to assess the prognosis of PQ poisoning.
© 2016 Nordic Association for the Publication of BCPT (former Nordic Pharmacological Society).

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Year:  2016        PMID: 27390221     DOI: 10.1111/bcpt.12638

Source DB:  PubMed          Journal:  Basic Clin Pharmacol Toxicol        ISSN: 1742-7835            Impact factor:   4.080


  7 in total

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Journal:  J Med Toxicol       Date:  2018-06-01

Review 2.  Point-of-care testing in the early diagnosis of acute pesticide intoxication: The example of paraquat.

Authors:  Ting-Yen Wei; Tzung-Hai Yen; Chao-Min Cheng
Journal:  Biomicrofluidics       Date:  2018-01-19       Impact factor: 2.800

3.  Diagnosing Coronavirus Disease 2019 (COVID-19): Efficient Harris Hawks-Inspired Fuzzy K-Nearest Neighbor Prediction Methods.

Authors:  Hua Ye; Peiliang Wu; Tianru Zhu; Zhongxiang Xiao; Xie Zhang; Long Zheng; Rongwei Zheng; Yangjie Sun; Weilong Zhou; Qinlei Fu; Xinxin Ye; Ali Chen; Shuang Zheng; Ali Asghar Heidari; Mingjing Wang; Jiandong Zhu; Huiling Chen; Jifa Li
Journal:  IEEE Access       Date:  2021-01-19       Impact factor: 3.367

4.  A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices.

Authors:  Lufeng Hu; Huaizhong Li; Zhennao Cai; Feiyan Lin; Guangliang Hong; Huiling Chen; Zhongqiu Lu
Journal:  PLoS One       Date:  2017-10-19       Impact factor: 3.240

5.  Derivation and validation of different machine-learning models in mortality prediction of trauma in motorcycle riders: a cross-sectional retrospective study in southern Taiwan.

Authors:  Pao-Jen Kuo; Shao-Chun Wu; Peng-Chen Chien; Cheng-Shyuan Rau; Yi-Chun Chen; Hsiao-Yun Hsieh; Ching-Hua Hsieh
Journal:  BMJ Open       Date:  2018-01-05       Impact factor: 2.692

Review 6.  Clinlabomics: leveraging clinical laboratory data by data mining strategies.

Authors:  Xiaoxia Wen; Ping Leng; Jiasi Wang; Guishu Yang; Ruiling Zu; Xiaojiong Jia; Kaijiong Zhang; Birga Anteneh Mengesha; Jian Huang; Dongsheng Wang; Huaichao Luo
Journal:  BMC Bioinformatics       Date:  2022-09-24       Impact factor: 3.307

Review 7.  Arterial lactate in predicting mortality after paraquat poisoning: A meta-analysis.

Authors:  Shilei Li; Danna Zhao; Yong Li; Jie Gao; Shunyi Feng
Journal:  Medicine (Baltimore)       Date:  2018-08       Impact factor: 1.817

  7 in total

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