Development of machine learning-based differential diagnosis model and risk prediction model of organ damage for severe Mycoplasma pneumoniae pneumonia in children.

Journal: Scientific reports
PMID:

Abstract

Severe Mycoplasma pneumoniae pneumonia (SMPP) poses significant diagnostic challenges due to its clinical features overlapping with those of other common respiratory diseases. This study aims to develop and validate machine learning (ML) models for the early identification of SMPP and the risk prediction for liver and heart damage in SMPP using accessible laboratory indicators. Cohort 1 was divided into SMPP group and other respiratory diseases group. Cohort 2 was divided into myocardial damage, liver damage, and non-damage groups. The models built using five ML algorithms were compared to screen the best algorithm and model. Receiver Operating Characteristic (ROC) curves, accuracy, sensitivity, and other performance indicators were utilized to evaluate the performance of each model. Feature importance and Shapley Additive Explanation (SHAP) values were introduced to enhance the interpretability of models. Cohort 3 was used for external validation. In Cohort 1, the SMPP differential diagnostic model developed using the LightGBM algorithm achieved the highest performance with AUC = 0.975. In Cohort 2, the LightGBM model demonstrated superior performance in distinguishing myocardial damage, liver damage, and non-damage in SMPP patients (accuracy = 0.814). Feature importance and SHAP values indicated that ALT and CK-MB emerged as pivotal contributors significantly influencing Model 2's output magnitude. The diagnostic and predictive abilities of the ML models were validated in Cohort 3, demonstrating the models had some clinical generalizability. The Model 1 and Model 2 constructed by LightGBM algorithm showed excellent ability in differential diagnosis of SMPP and risk prediction of organ damage in children.

Authors

  • Bing He
    School of Business, Jiangsu Ocean University, Haizhou District, Lianyungang, Jiangsu, China.
  • Xuewen Li
    SINAP: Shanghai Institute of Applied Physics Chinese Academy of Sciences, SSRF, 201210, CHINA.
  • Rongrong Dong
    Department of Laboratory Medicine, First Hospital of Jilin University, Changchun, 130021, China.
  • Han Yao
    School of Health Policy and Management, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing 100730, China.
  • Qi Zhou
  • Changyan Xu
    Medical Department, First Hospital of Jilin University, Changchun, 130021, China.
  • Chengming Shang
    Information center, First Hospital of Jilin University, Changchun, 130021, China.
  • Bo Zhao
    State Key Laboratory of Management and Control for Complex Systems, Institute of Automation, Chinese Academy of Sciences, Beijing, China.
  • Huiling Zhou
    Department of Laboratory Medicine, Meihekou Central Hospital, Meihekou, 135000, China.
  • Xinqiao Yu
    Department of Laboratory Medicine, Meihekou Central Hospital, Meihekou, 135000, China.
  • Jiancheng Xu
    School of Electronics and Information, Northwestern Polytechnic University, Xi'an, Shaanxi 710016, China.