Literature DB >> 33313112

The role of artificial intelligence in identifying asthma in pediatric inpatient setting.

Gang Yu1, Zheming Li1, Shuxian Li2, Jingling Liu2, Moyuan Sun3, Xiaoqing Liu3, Fenglei Sun3, Jie Zheng3, Yiming Li3, Yizhou Yu3, Qiang Shu4, Yingshuo Wang2,4.   

Abstract

BACKGROUND: The incidence of asthma in Chinese children has rapidly increased as a result of inadequate management. This is mainly due to the failure of many primary-level pediatricians to distinguish asthma from common respiratory diseases, such as bronchitis and pneumonia. Such misdiagnoses often lead to the abuse of antibiotics and systemic glucocorticoids. Additionally, if asthma is not diagnosed early, chronic airway inflammation results in lesions that not only hamper children's athletic abilities, but serve as the primary cause for adult chronic airway diseases, such as chronic obstructive pulmonary disease (COPD).
METHODS: A number of machine learning-based models including CatBoost, Logistic Regression, Naïve Bayes, and Support Vector Machines (SVM) have been developed to identify asthma via utilizing retrospective electronic medical records (EMRs) of patients. These models were evaluated independently using EMRs from both the Pulmonology Department and other departments of the Children's Hospital, Zhejiang University School of Medicine, China.
RESULTS: Two independent test sets were applied for performance evaluation. TestSet-1 consisted of 325 positive asthma cases and 428 negative cases from the Pulmonology Department. TestSet-2 was composed of 2,123 cases from non-pulmonology departments, and included 337 positive and 1,786 negative cases. Experimental results showed that the CatBoost model outperformed other models on both test sets with an accuracy of 84.7% and an area under the curve (AUC) of 90.9% on TestSet-1, and an accuracy of 96.7% and an AUC of 98.1% on TestSet-2.
CONCLUSIONS: The artificial intelligence (AI) model could rapidly and accurately identify asthma in general medical wards of children, and may aid primary pediatricians in the correct diagnoses of asthma. It possesses great clinical value and practical significance in improving the control rate of asthma in children, optimizing medical resources, and limiting the abuse of antibiotics and systemic glucocorticoids. 2020 Annals of Translational Medicine. All rights reserved.

Entities:  

Keywords:  Pediatric; artificial intelligence (AI); asthma; diagnostic assistant; machine learning

Year:  2020        PMID: 33313112      PMCID: PMC7723595          DOI: 10.21037/atm-20-2501a

Source DB:  PubMed          Journal:  Ann Transl Med        ISSN: 2305-5839


  7 in total

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Authors:  Rebecca Howard; Magnus Rattray; Mattia Prosperi; Adnan Custovic
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7.  Predicting phenotypes of asthma and eczema with machine learning.

Authors:  Mattia Cf Prosperi; Susana Marinho; Angela Simpson; Adnan Custovic; Iain E Buchan
Journal:  BMC Med Genomics       Date:  2014-05-08       Impact factor: 3.063

  7 in total
  2 in total

1.  Machine learning is an effective method to predict the 90-day prognosis of patients with transient ischemic attack and minor stroke.

Authors:  Si-Ding Chen; Jia You; Xiao-Meng Yang; Hong-Qiu Gu; Xin-Ying Huang; Huan Liu; Jian-Feng Feng; Yong Jiang; Yong-Jun Wang
Journal:  BMC Med Res Methodol       Date:  2022-07-16       Impact factor: 4.612

2.  Integration of Artificial Intelligence, Blockchain, and Wearable Technology for Chronic Disease Management: A New Paradigm in Smart Healthcare.

Authors:  Yi Xie; Lin Lu; Fei Gao; Shuang-Jiang He; Hui-Juan Zhao; Ying Fang; Jia-Ming Yang; Ying An; Zhe-Wei Ye; Zhe Dong
Journal:  Curr Med Sci       Date:  2021-12-24
  2 in total

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